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Maternal pre-pregnancy diet and prenatal depression: the mediating role of pre-pregnancy weight status and prenatal inflammation

Published online by Cambridge University Press:  27 May 2024

Elnaz Vaghef-Mehrabani
Affiliation:
Alberta Children’s Hospital Research Institute, University of Calgary, Calgary, AB, Canada Department of Pediatrics, Cumming School of Medicine, University of Calgary, Calgary, AB, Canada
Rhonda C. Bell
Affiliation:
Department of Agricultural, Food and Nutritional Science, University of Alberta, Edmonton, AB, Canada
Catherine J. Field
Affiliation:
Department of Agricultural, Food and Nutritional Science, University of Alberta, Edmonton, AB, Canada
Megan Jarman
Affiliation:
School of Psychology, College of Health and Life Sciences, Institute of Health and Neurodevelopment, Aston University, Birmingham, UK
Jenna L. Evanchuk
Affiliation:
Department of Agricultural, Food and Nutritional Science, University of Alberta, Edmonton, AB, Canada
Nicole Letourneau
Affiliation:
Faculty of Nursing, University of Calgary, Calgary, AB, Canada
Gerald F. Giesbrecht*
Affiliation:
Alberta Children’s Hospital Research Institute, University of Calgary, Calgary, AB, Canada Department of Pediatrics, Cumming School of Medicine, University of Calgary, Calgary, AB, Canada Department of Psychology, University of Calgary, Calgary, AB, Canada
*
*Corresponding author: Gerald F. Giesbrecht, email ggiesbre@ucalgary.ca
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Abstract

Depression is a common prenatal psychological complication. We aimed to investigate if maternal pre-pregnancy diet can impact prenatal depressive symptoms and the mediating role of pre-pregnancy BMI and inflammation. We used data (N 1141) from the Alberta Pregnancy Outcomes and Nutrition cohort study. We calculated Mediterranean diet adherence (MED) and dietary inflammatory index (DII) scores using data from pre-pregnancy FFQ. In the third-trimester, we assessed depressive symptoms using Edinburgh Postpartum Depression Scale (EPDS) and inflammation through serum C-reactive protein (CRP) levels. BMI was calculated from self-reported pre-pregnancy weight. Race-stratified analyses (white and people of colour) were run. We observed no association between MED or DII tertiles and depressive symptoms. However, white participants in the MED tertile-3 had lower risk of depression (EPDS < 10) compared with tertile-1 (OR = 0·56, 95 % CI, 0·33, 0·95). White individuals in MED tertile-3 had lower BMI (MD = –1·08; 95 % CI, −1·77, −0·39) and CRP (MD = –0·53; 95 % CI, −0·95, −0·11) than tertile-1, and those in DII tertile-2 (MD = 0·44; 95 % CI, 0·03, 0·84) and tertile-3 (MD = 0·42; 95 % CI, 0·01, 0·83) had higher CRP than tertile-1. Among people of colour, neither MED nor DII was associated with BMI or CRP, but BMI was negatively associated with depressive symptoms (β = –0·25, 95 % CI, −0·43, −0·06). We found no association between diet and depressive symptoms through BMI or CRP, in either race. Pre-pregnancy diet might affect the risk of prenatal depression in a race-specific way. Further research is required to explore the racial differences in the association between maternal diet and prenatal depressive symptoms/depression risk.

Type
Research Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2024. Published by Cambridge University Press on behalf of The Nutrition Society

Depression is one of the most common prenatal complications and impacts about 8·5–11·0 % of pregnant individuals(Reference Gaynes, Gavin and Meltzer-Brody1). Prenatal depression can increase the risk of pregnancy complications, operative delivery and postpartum depression(Reference Jahan, Went and Sultan2). It also has negative implications for the offspring including birth outcomes (e.g. preterm birth, small for gestational age, stillbirth and low birth weight) and child development and mental health(Reference Jahan, Went and Sultan2Reference Muzik and Borovska4). Prenatal depression is usually left untreated or undertreated because the anti-depressants commonly used may not be as effective(Reference Brown, Wilson and Ayre5), and risks associated with these medications(Reference Levinson-Castiel, Merlob and Linder6,Reference Hanley, Smolina and Mintzes7) may discourage physicians and mothers from using them during this sensitive developmental window. Given the high prevalence of prenatal depression and its adverse effects on both mothers and their children, it is crucial to understand the risk factors, as well as the probable pathological pathways involved, to help identify prevention strategies that could target those factors and pathways.

There is growing evidence that a healthy diet can improve mental health(Reference Grajek, Krupa-Kotara and Białek-Dratwa8), and reduce depressive symptoms in those struggling with depression(Reference Jacka, O’Neil and Opie9,Reference Sánchez-Villegas, Martínez-González and Estruch10) . Specifically, adherence to Mediterranean-style diet (MED) and dietary inflammatory index (DII) has been studied in association with depression. Mediterranean diet is a well-known anti-inflammatory diet, which includes plenty of plant-based foods (i.e. whole grain cereals, legumes, fruits and vegetables, nuts and herbs), moderate intake of seafood, dairy and poultry and limited amounts of red meat, sweets and red wine(Reference Guasch-Ferré and Willett11). Greater adherence to MED has been associated with lower depressive symptoms in various non-pregnant populations(Reference Oddo, Welke and McLeod12Reference Fan, Zhao and Deng15). DII is a literature-based dietary score that measures the potential effect of diet on one’s inflammatory status, with high and low scores reflecting pro-inflammatory and anti-inflammatory potential of diet, respectively(Reference Shivappa, Steck and Hurley16). Higher DII scores have been associated with greater depressive symptoms in non-pregnant populations particularly in women(Reference Wang, Zhou and Chen17,Reference Luo, Hu and Huang18) . Recent research suggests that these two dietary indices are also linked with prenatal depression. Greater adherence to MED during pregnancy has been linked with reduced prenatal depressive symptoms(Reference Gonzalez-Nahm, Marchesoni and Maity19). Little is known about the link between maternal DII and prenatal depression, but the following diets with lower inflammatory potential in mid-pregnancy have been associated with fewer prenatal depressive symptoms(Reference Wang, Yim and Lindsay20). The link between these dietary indices and depressive symptoms might be partially mediated through altered BMI(Reference Ma, Li and Zhan21) or circulating levels of inflammatory markers(Reference Gialluisi, Santonastaso and Bonaccio22).

Higher adherence to MED is associated with lower risk of overweight and obesity(Reference Lotfi, Saneei and Hajhashemy23) and higher DII scores are associated with increased risk of obesity in adults(Reference Hariharan, Odjidja and Scott24). Also, both adherence to MED and DII scores are associated with inflammatory biomarkers in the body. Adherence to MED apparently has the most prominent effect in reducing circulating inflammatory biomarkers including C-reactive protein (CRP), compared with other healthy dietary patterns(Reference Koelman, Egea Rodrigues and Aleksandrova25). In pregnant individuals, circulating levels of inflammatory markers in the 3rd trimester were lower in those who had higher adherence to MED during gestation(Reference Flor-Alemany, Acosta-Manzano and Migueles26). DII has been positively associated with inflammatory biomarkers including CRP in non-pregnant populations(Reference Shivappa, Hébert and Rietzschel27Reference Shivappa, Steck and Hurley29), and directly associated with serum CRP levels in the 2nd trimester of pregnancy(Reference Sen, Rifas-Shiman and Shivappa30). Although limited and not sufficiently replicated, pre-pregnancy weight status and prenatal inflammation might also affect the risk for prenatal depression(Reference Sha, Madaj and Keaton31Reference Zhou, Rao and Yang34). Taken together, the evidence linking MED adherence and DII scores to maternal BMI and prenatal inflammation, combined with the probable contribution of maternal BMI and inflammation to prenatal depression, suggests that maternal BMI and inflammation might mediate the association between maternal MED adherence and DII scores and parental depressive symptoms.

Research in non-pregnant individuals has shown that the obesity-depression association is race-specific, and higher BMI is positively associated with depressive symptoms in white women but not among other races(Reference Hicken, Lee and Mezuk35). Interestingly, Black women with obesity tend to have lower odds of depression compared with normal weight(Reference Hicken, Lee and Mezuk35). Also, while inflammatory profiles are generally similar amongst races, the trajectories of inflammatory markers might differ between racial groups throughout a healthy pregnancy(Reference Gillespie, Porter and Christian36). The higher prevalence of prenatal depression among racialised women(Reference Mukherjee, Trepka and Pierre-Victor37), and the racial differences in the diet-prenatal depression association(Reference Gonzalez-Nahm, Marchesoni and Maity19), obesity-depression association, and prenatal inflammatory trajectories underscores the importance of race-stratified analysis when exploring the association between maternal diet and prenatal depression mediated through maternal BMI and inflammation.

There is scant research on the association between pre-pregnancy diet and prenatal depressive symptoms, and race-stratified analyses are scarce. Furthermore, the probable mediating role of pre-pregnancy BMI and prenatal inflammation in the association between dietary inflammatory indices and prenatal depressive symptoms has been understudied. To address these gaps, the current study had two aims: (1) investigate the association between pre-pregnancy diet (exposure) and prenatal depression (outcome); (2) test whether this association is mediated through pre-pregnancy BMI or late pregnancy inflammation (mediators). We hypothesised that higher adherence to Mediterranean-style diet and lower inflammatory potential of consumed diet during pre-pregnancy is associated with lower depressive symptoms in late pregnancy through decreasing maternal pre-pregnancy BMI and prenatal systemic inflammation (Fig. 1).

Fig. 1. The study directed acyclic graph (DAG). SES, socio-economic status.

Methods

Study overview and participants

We used data from the Alberta Pregnancy Outcomes and Nutrition (APrON) study which is an ongoing longitudinal community cohort study that recruited pregnant individuals in their early- or mid-gestation between 2009 and 2012(Reference Kaplan, Giesbrecht and Leung38,Reference Letourneau, Aghajafari and Bell39) . Pregnant individuals < 27 weeks gestation and aged ≥ 16 years residing in/around Calgary or Edmonton, able to speak and read in English and willing to come for clinic visits were included in this cohort study (n 2189). Stationing research staff in high-volume maternity care and ultrasound clinics (specific to Calgary), distributing information across the city’s clinics (specific to Edmonton), posters in public areas (grocery stores, community centres, family physician offices), investigators talking about the study on local television/radio shows, newspapers, banners along roads, prenatal education classes, pregnancy and baby fairs, and word of mouth were methods used to recruit participants to the APrON study(Reference Kaplan, Giesbrecht and Leung38). The participants and their children have been followed since then through contacting them via phone or email. For the current study, we excluded participants with CRP greater than 19 mg/l (n 8), as this CRP level might be suggestive of acute infection/inflammation in pregnancy(Reference Letourneau, Aghajafari and Bell39), and those with unlikely daily calorie intakes of < 600 kcal or > 3500 kcal (n 53)(Reference Willett40).

Data collection

Pre-Pregnancy dietary assessment

A Food Frequency Questionnaire (FFQ) was used to collect data on pre-pregnancy diet. This 154-item semiquantitative FFQ was based on the National Cancer Institute’s Diet History Questionnaire for Canadians(Reference Csizmadi, Kahle and Ullman41) and has been validated for assessing pre-pregnancy diet(Reference Ramage, McCargar and Berglund42). The participants completed the FFQ during their first study visit to reduce recall bias. Details on this FFQ and how the dietary information collected were converted to frequency of consumption of the food items, and calories and nutrients have been previously published(Reference Jarman, Mathe and Ramazani43). Briefly, participants were asked to report their average frequency of consumption and portion sizes of foods and drinks during the 12 months prior to becoming pregnant. The frequency of consumption data was transformed into daily frequencies. Daily intake of calories and nutrients were derived using the FoodProcessor version 10·14(Reference Food Processor44), which linked data from the questionnaire to the Canadian Nutrient File. The calories and nutrient from all the items were summed to obtain the total daily intake(Reference Jarman, Mathe and Ramazani43). We used this data to calculate MED adherence and DII scores (study exposures) as outlined below.

Mediterranean diet (MED) adherence

To calculate the MED adherence (referred to as MED from hereafter) score, we followed the protocol by Trichopoulou et al. (Reference Trichopoulou, Costacou and Bamia45,Reference Trichopoulou, Kouris-Blazos and Wahlqvist46) and incorporated the modifications suggested by Fung et al., which were based on dietary patterns and eating behaviours that have been constantly linked with lower risks of chronic disease(Reference Fung, Hu and McCullough47). We considered the intake of the following 9 items in the calculation of MED score: vegetables (excluding potato products), legumes, fruits, nuts, whole grains, red and processed meat, fish, alcohol, and the monounsaturated: saturated fat ratio. For all the items except meats and alcohol, the participants with intake above the median intake received 1 point; otherwise, they received 0 points. For red and processed meats, the scoring was reverse (i.e. those with intake below the median received 1 point; otherwise, they received 0 points). We assigned 1 point for alcohol intake between 5 and 15 g/d. The MED scores could range between 0 and 9, with higher scores indicating higher adherence to the Mediterranean diet. We grouped the participants into tertiles based on their MED scores.

Dietary inflammatory index

DII assesses the inflammatory potential of diet one takes, based on 45 food parameters(Reference Shivappa, Steck and Hurley16). We had data on 29 of these food parameters from the APrON participants (online Supplementary Table 1). The APrON study pre-pregnancy FFQ did not capture data on the following DII components: Eugenol (mg), Garlic (g), Ginger (g), Onion (g), Saffron (g), Turmeric (mg), Green/black tea (g), Flavan-3-ol (mg), Flavones (mg), Flavonols (mg), Flavonones (mg), Anthocyanidins (mg), Isoflavones (mg), Pepper (g), Thyme/oregano (mg), Rosemary (mg). We followed the procedures described by Shivappa et al. (Reference Shivappa, Steck and Hurley16) to calculate the DII scores for each participant. Briefly, we used each participants’ intake data to calculate a z-score for each one of the food parameters based on the world average and standard deviation and converted the z-scores to percentile scores. We centered the percentile scores by doubling and subtracting 1 and multiplied the centered scores for each food parameter by the respective ‘overall food parameter-specific inflammatory effect score’ to obtain the ‘food parameter-specific DII score’. We summed all the ‘food parameter-specific DII scores’ to create the ‘overall DII score’ for each participant. Negative scores are indicative of anti-inflammatory diet whereas positive scores indicate pro-inflammatory diet. We grouped the participants into tertiles based on their overall DII scores.

Pre-Pregnancy BMI

Pre-pregnancy BMI (potential mediator in this study) was calculated as pre-pregnancy self-reported weight (kg) at first study visit (to reduce recall bias) divided by height squared (m2). Height was measured to the nearest 0·1 cm (Charder HM200P Portstad Portable Stadiometer, USA) at a prenatal study visit and by trained staff. Also, based on the pre-pregnancy BMI, we classified the participants as having underweight (< 18·5 kg/m2), normal weight (18·5–24·9 kg/m2) and overweight/obesity (≥ 25·0 kg/m2)(48).

Maternal C-reactive protein

CRP concentrations (potential mediator in this study) were measured in the third trimester blood samples that were collected by a phlebotomist at a mean of 32·5 weeks gestation (range: 27·0–39·0 weeks). Because any acute illness can increase CRP levels, participants were asked to report any symptoms of illness and were rescheduled as necessary. Blood samples were processed into serum and stored at −80°C until assays. Sandwich ELISA (R&D Systems®, Minneapolis, MN, USA) were used to measure serum concentrations of CRP (detection range: 15·6–2000 pg/ml). To ensure the resulting concentrations fell within the detection range, maternal serum samples were diluted 1 in 10 000 prior to their addition to plates. All samples were run in duplicate to determine CV where a CV of ≥ 10 required a re-analysis. If the concentration was above the reference range we diluted more, and if it was below the reference range, we diluted less (compared with the original dilution of 1:10 000) before repeating the assays.

Maternal depression

At the third trimester, participants reported depressive symptoms (study outcome) within the past 7 d on a scale of 0–3 using the ten-item Edinburgh Postpartum Depression Scale (EPDS). EPDS is the most extensively used instrument to screen prenatal and postpartum depression and has satisfactory validity, moderate to good reliability and a good to moderate correlation with other depression measures(Reference Cox, Holden and Sagovsky49,Reference Boyd, Le and Somberg50) . The overall score range on this scale is 0–30, with higher scores indicating a higher severity of depressive symptoms. We used the cut-off of 10 to identify individuals at risk of prenatal depression(Reference Levis, Negeri and Sun51).

Covariates

Age

Women of advanced age may have significantly higher rates of depression than younger women(Reference Muraca and Joseph52). Moreover, older women of reproductive age have better diet quality than their younger peers in many aspects including fat and salt intake(Reference Habibi, Livingstone and Edwards53), and younger age has been associated with lower prenatal diet quality(Reference Yu, Feng and Bédard54). Therefore, maternal age might confound the link between pre-pregnancy diet and prenatal depressive symptoms. Age was self-reported by the participants in our study.

SES

Socio-economic status (SES) can confound the association between maternal diet and prenatal depressive symptoms because low educational level and poor economic status may decrease diet quality in females(Reference Yu, Feng and Bédard54) and increase the risk of prenatal depression(Reference Goyal, Gay and Lee55). We averaged the z-scores of self-reported family annual income and maternal education and created a composite SES variable. SES scores with higher values represented lower socio-demographic risk (i.e. higher annual income and higher education).

Parity

Parity might affect maternal diet quality(Reference Yu, Feng and Bédard54) and the risk for developing prenatal depression(Reference Yang, Wu and Chen56). We included self-reported parity as a dichotomous variable in our analyses, 0 indicating primiparity (first-time mother) and 1 indicating multiparity.

Smoking

Prenatal smoking has been associated with antenatal depressive symptoms(Reference Cui, Kimura and Ikehara57). Individuals smoking during gestation have also shown lower levels of anti-inflammatory biomarkers compared with non-smokers(Reference Saadat, Zhang and Hyer58). Therefore, smoking was considered as a confounding factor in the association between maternal diet and prenatal depressive symptoms, mediated through inflammation (Fig. 1(b)).

Physical activity

Higher prenatal physical activity during pregnancy is associated with lower incidence and severity of depressive symptoms(Reference Kołomańska, Zarawski and Mazur-Bialy59). Also, light physical activity is associated with lower CRP concentrations in late pregnancy(Reference Tinius, Cahill and Cade60). Hence, we considered physical activity as a confounding factor in the association between maternal diet and prenatal depressive symptoms, mediated through inflammation (Fig. 1(b)). In the APrON study, prenatal physical activity was assessed using the Baecke questionnaire(Reference Kaplan, Giesbrecht and Leung38), which has been previously used to assess physical activity during pregnancy(Reference Guelinckx, Devlieger and Mullie61). The questionnaire assesses work, sport and leisure time activities excluding sport. Questions on work and leisure time are scored using a five-point Likert scale, while sports score is calculated based on the intensity and duration (time spent per week and the proportion of year spent playing) of sports. Scores for work, sport and leisure were calculated and added up to compute a total score(Reference Baecke, Burema and Frijters62).

Statistical analysis

Based on the study inclusion criteria and the data available for the participants at different timepoints, a sample of n 1141 were included in our study. We used SPSS version 26.0 (IBM Corp.) to analyse the data. We checked q-q and p-p plots and the skewness and kurtosis for study variables to assess the normality of distribution. We categorised the MED and DII scores into tertiles in our analyses (as opposed to treating them as continuous variables), because categorising dietary indices as categorical variables in nutritional research can enhance interpretability, capture non-linear relationships and reduce measurement error(Reference Willett, Howe and Kushi63). We conducted two sets of analyses: (1) stratified all our analyses by race (self-identified as white v. people of colour) and (2) ran pooled sample analyses and included race as an additional covariate. To test the association between pre-pregnancy MED and DII tertiles and prenatal depressive symptoms, we conducted analysis of covariance test. We also ran multivariable logistic regression using EPDS ≥ 10 as cut-off point to assess the association between diet and the risk of depression (covariates: maternal age, SES and parity). Before running the mediation analyses, we checked the associations between the exposure (pre-pregnancy diet) and the mediators (pre-pregnancy BMI and prenatal inflammation; path (a), and the associations between the mediators and the outcome (prenatal depressive symptoms; path (b)). Since the independent variable in our study (MED/DII tertiles) was categorical, these additional analyses allowed for better understanding of the between-tertile differences. To test the association between pre-pregnancy MED and DII tertiles and pre-pregnancy BMI or prenatal inflammation, we conducted analysis of covariance (covariates: maternal age and SES). We also conducted multinomial logistic regression (covariates: maternal age and SES) to test the association between pre-pregnancy MED and DII tertiles and BMI category (underweight, normal weight and overweight/obesity; normal weight set as reference group). We tested the association between pre-pregnancy BMI or prenatal inflammation and late-pregnancy depression using multivariable linear regression; maternal age and SES were included as covariates in both models and smoking and physical activity were additional covariates in the model testing the link between inflammation and depressive symptoms. Moreover, we ran ANCOVA (covariates: maternal age, SES, parity) to test the association between pre-pregnancy BMI categories and prenatal depressive symptoms. We conducted mediation analysis using Process Macro in SPSS to test if maternal pre-pregnancy BMI or prenatal inflammation mediated the association between pre-pregnancy diet and prenatal depression (independent variable: prenatal MED/DII tertiles; dependent variable: prenatal depressive symptoms, mediator: BMI or inflammation; Fig. 1). Maternal age, SES and parity were included as covariates in both models, and smoking and physical activity were additional covariates in the models testing the mediating role of inflammation in the association between maternal diet and depressive symptoms. P < 0·05 was considered statistically significant.

Results

All the reported results are based on the models adjusted for covariates indicated in “Statistical Analysis” section. We had different sample sizes for different aims because we included in each set of the analyses all those with valid data to sustain the maximum power possible. Table 1 summarises the characteristics of the participants included in the current study stratified by self-identified race. Participants who were self-identified as white (referred to as ‘white’ from hereafter) had significantly higher household annual income (P < 0·001), pre-pregnancy BMI (P = 0·003) and pre-pregnancy MED scores (P = 0·01) compared with those self-identified as ‘people of colour’. Please see online Supplementary Table 2 for the comparison of the characteristics of the APrON study participants included in the current study (n 1141) to those not included (n 1048).

Table 1. Study participants’ characteristics by self-identified race

MED, Mediterranean diet adherence; DII, dietary inflammatory index; CRP, C-reactive protein; EPDS, Edinburgh postpartum depression scale.

* EPDS score ≥ 10.

Higher pre-pregnancy MED scores were significantly correlated with lower pre-pregnancy DII scores (r (1141) = −0·59, P < 0·001). The tertiles of the pre-pregnancy MED and DII scores were also negatively correlated (χ2 (4, n 1141) = 391·37, P < 0·001).

Pre-Pregnancy diet and prenatal depression

We found no overall or pairwise associations (Fig. 2(a), (c), (f)) between MED tertiles and prenatal depressive symptoms neither in white individuals (F (2, 904) = 1·18, P = 0·308) nor in people of colour (F (2, 154) = 1·73, P = 0·181), or pooled sample (F (2, 1063) = 0·73, P = 0·480). Likewise, we found no overall or pairwise associations (Fig. 2(b), (d), (e)) between DII tertiles and prenatal depressive symptoms in white (F (2, 904) = 0·19, P = 0·825), people of colour (F (2, 154) = 2·00, P = 0·138) or the pooled sample (F (2, 1063) = 0·31, P = 0·730). However, when we tested the association between pre-pregnancy diet and the risk of depression (defined as EPDS scores 10 or above) through multivariable logistic regression analysis, white participants in the third MED tertile had 44 % decreased risk of late pregnancy depression compared with those in the first tertile (OR = 0·56, 95 % CI, 0·33, 0·95; Fig. 3(a)); no such association was observed for DII tertiles in white participants (Fig. 3(b)). We found no significant association between MED or DII tertiles and risk of prenatal depression in people of colour (Fig. 3). In the pooled analyses with race as a covariate, the association between pre-pregnancy diet and risk of prenatal depression did not reach statistical significance for MED tertiles (OR = 0·81, 95 % CI, 0·64, 1·02; Fig. 3(a)) and remained non-significant for DII tertiles (OR = 0·94, 95 % CI, 0·75, 1·17; Fig. 3(b)). The percentage of individuals at risk for prenatal depression, within each MED and DII tertile are presented in online Supplementary Fig. 1.

Fig. 2. Pre-pregnancy diet and third trimester EPDS score by self-identified race and pooled sample. Note: Results are based on analysis of covariance (ANCOVA) test (covariates: maternal age, SES, and parity; in the pooled sample analysis, race was included as an additional covariate). The data are presented as estimated marginal means and se. EPDS, Edinburgh postpartum depression scale; MED, Mediterranean diet adherence; DII, dietary inflammatory index; SES, socio-economic status. * P < 0·05.

Fig. 3. Pre-pregnancy diet and third trimester risk of depression (EPDS score ≥ 10) by self-identified race and pooled sample. Note: Results are based on multivariable logistic regression tests (covariates: maternal age, SES and parity; in the pooled sample analysis, race was included as an additional covariate). The data are presented as OR and 95 % CI. EPDS, Edinburgh postpartum depression scale; MED, Mediterranean diet adherence; DII, dietary inflammatory index; SES, socio-economic status. * P < 0·05.

Pre-Pregnancy diet and prenatal depression: mediation through pre-pregnancy BMI

Pre-pregnancy diet and BMI

There was a significant association between MED tertiles and pre-pregnancy BMI in white individuals (F (2, 938) = 4·76, P = 0·009), and those in the first tertile had significantly greater BMI compared with the third tertile (MD = 1·08; 95 % CI, 0·39, 1·77, Fig. 4(a)). There was no overall or pairwise associations between DII tertiles and pre-pregnancy BMI in white participants (F (2, 938) = 0·16, P = 0·849; Fig. 4(b)). Also, there was no overall or pairwise associations between MED (F (2, 164) = 0·99, P = 0·374) or DII (F (2, 164) = 0·80, P = 0·452) tertiles and pre-pregnancy BMI in people of colour (Fig. 4(c) and (d)). In the pooled sample, there was a significant association between MED tertiles and pre-pregnancy BMI (F (2, 1101) = 5·24, P = 0·005), and those in the first tertile had significantly greater BMI compared with those in the third tertile (MD = 1·03; 95 % CI, 0·40, 1·66, Fig. 4(e)). We observed no overall or pairwise associations between DII tertiles and pre-pregnancy BMI in the pooled sample (F (2, 1101) = 0·18, P = 0·836; Fig. 4(f)). Analyses with BMI as a categorical variable yielded similar results (please see online Supplementary material for details).

Fig. 4. Pre-pregnancy diet and pre-pregnancy BMI by self-identified race and pooled sample. Note: Results are based on analysis of covariance (ANCOVA) test (covariates: maternal age, SES and parity; in the pooled sample analysis, race was included as an additional covariate). The data are presented as estimated marginal means and se. MED, Mediterranean diet adherence; DII, dietary inflammatory index; SES, socio-economic status. * P < 0·05.

Pre-pregnancy BMI and prenatal depressive symptoms

Among white participants, pre-pregnancy BMI was not associated with prenatal depressive symptoms (β = 0·03, 95 % CI, −0·03, 0·09). Among people of colour, higher pre-pregnancy BMI was significantly associated with lower depressive symptoms in late pregnancy (β = −0·25, 95 % CI, −0·43, −0·06). In the pooled analyses, pre-pregnancy BMI was not associated with third prenatal depressive symptoms (β = −0·004, 95 % CI, −0·06, 0·05). Analyses with BMI as a categorical variable produced comparable results (please see online Supplementary material for details).

BMI as a mediator linking pre-pregnancy diet to prenatal depressive symptoms

We observed no significant indirect associations between maternal diet and prenatal depressive symptoms through pre-pregnancy BMI, in race-stratified or pooled sample analyses (Table 2). Due to the similarity of the findings with BMI as a continuous or categorical variable, and since mediation analysis in Process Macro would not allow for including a mediator as a categorical variable, we did not run the mediation analyses with BMI as a categorical variable.

Table 2. The association between maternal pre-pregnancy diet and prenatal depression: mediation through pre-pregnancy BMI

T, tertile; MED, Mediterranean diet adherence; DII, dietary inflammatory index; SES, socio-economic status.

* P values are not provided by Process Macro (SPSS) for indirect effects.

Results based on mediation analysis with categorical independent variable (Process Macro, SPSS). Models adjusted for maternal age, SES and parity. In the pooled sample analysis, race was included as an additional covariate.

Pre-Pregnancy diet and prenatal depression: mediation through prenatal inflammation

Pre-pregnancy diet and prenatal inflammation

There was a significant association between MED tertiles and CRP concentrations in white individuals (F (2, 944) = 3·24, P = 0·040), and those in the third tertile had significantly lower concentrations of CRP compared with those in the first tertile (MD = −0·53; 95 % CI, −0·95, −0·11; Fig. 5(a)). But we observed no overall (F (2, 164) = 0·02, P = 0·976) or pairwise association between MED tertiles and CRP concentrations in people of colour (Fig. 5(c)). There was no significant association between DII tertiles and CRP levels either in white participants (F (2, 944) = 2·85, P = 0·059), but those with DII scores in the second and third tertiles had significantly higher concentrations of CRP compared with those in the first tertile (MD = 0·44; 95 % CI, 0·03, 0·84; and MD = 0·42; 95 % CI, 0·01, 0·83, respectively; Fig. 5(b)). There were no significant overall (F (2, 164) = 1·31, P = 0·273) or pairwise associations between DII tertiles for CRP concentrations in people of colour (Fig. 5(d)).

Fig. 5. Pre-pregnancy diet and third trimester CRP by self-identified race and pooled sample. Note: Results are based on analysis of covariance (ANCOVA) test (covariates: maternal age and SES; in the pooled sample analysis, race was included as an additional covariate). The data are presented as estimated marginal means and se. CRP, C-reactive protein; MED, Mediterranean diet adherence; DII, dietary inflammatory index; SES, socio-economic status. * P < 0·05.

In the pooled sample analysis, there was no significant overall association between MED tertiles and prenatal CRP levels (F (2, 1107) = 2·60, P = 0·075), but those in the first tertile had significantly greater CRP concentrations compared with those in the third tertile (MD = 0·44; 95 % CI, 0·05, 0·82; Fig. 5(e)). We found a significant overall association between DII tertiles and prenatal CRP levels (F (2, 1107) = 3·03, P = 0·049) and a significant difference between those in the first and second tertiles (MD = –0·45; 95 % CI, –0·82, –0·08; Fig. 5(f)).

Prenatal inflammation and depressive symptoms

We observed no significant association between prenatal CRP concentrations and late-pregnancy depressive symptoms in white individuals (β = 0·05, 95 % CI, −0·04, 0·15), people of colour (β = −0·21, 95 % CI, −0·48, 0·06) or pooled sample (β = 0·01, 95 % CI, −0·08, 0·10).

Inflammation as a mediator linking pre-pregnancy diet to prenatal depressive symptoms

There was a significant difference in depressive symptoms between the first and second DII tertiles among people of colour (β = −1·90, 95 % CI, −3·64, −0·17). However, there were no significant associations between MED and DII tertiles and prenatal depressive symptoms through prenatal CRP, in neither racial group nor pooled sample (Table 3).

Table 3. The association between maternal pre-pregnancy diet and prenatal depression: mediation through CRP concentrations

CRP, C-reactive protein; T, tertile; MED, Mediterranean diet adherence; DII, dietary inflammatory index; SES, socio-economic status.

* P values are not provided by Process Macro (SPSS) for indirect effects.

Results based on mediation analysis with categorical independent variable (Process Macro, SPSS). Models adjusted for maternal age, SES, parity, smoking during pregnancy and physical activity in the third trimester. In the pooled sample analysis, race was included as an additional covariate.

Discussion

Maternal diet and prenatal depression

Based on our findings in this study, higher MED was not significantly associated with depressive symptoms in late pregnancy, but decreased the risk of prenatal depression (defined as EPDS ≥ 10) in white individuals. Other than a significant difference of depressive symptoms between the first and second DII tertiles among people of colour, we did not find a significant association between DII tertiles and prenatal depressive symptoms or risk of depression, in either racial group or pooled sample.

Many of the studies on the role of maternal diet in prenatal mental health have assessed maternal diet during pregnancy. The only study that investigated pre-pregnancy dietary patterns in association with prenatal depression found that merely the healthy dietary pattern and not the unhealthy dietary patterns were associated with depressive symptoms(Reference Vilela, Farias and Eshriqui64). Similarly, a systematic review of observational studies concluded that a healthy dietary pattern prior to or during pregnancy was inversely associated with prenatal depressive symptoms, but the association between an unhealthy dietary pattern and depression was not definitive(Reference Silva, Cobucci and Gonçalves65). Like these findings, we also observed that the healthy diet index (MED) and not the unhealthy diet index (high DII) in pre-pregnancy was linked with the risk of prenatal depression.

Only a few studies have addressed the association between MED and prenatal depression with none using pre-pregnancy MED. A longitudinal study observed no significant association between mid-pregnancy MED and either mid- or late-pregnancy depressive symptoms(Reference Flor-Alemany, Baena-García and Migueles66). Similarly, using data from a USA cohort study, Oddo et al. revealed that MED was not associated with decreased depressive symptoms(Reference Oddo, Moise and Welke67). However, the latter study showed that MED decreased the odds of high depressive symptoms defined as scores 10 and above on the Patient Health Questionnaire-9(Reference Oddo, Moise and Welke67). Similar to the Oddo et al. study(Reference Oddo, Moise and Welke67), we found that MED decreased the odds of depression (EPDS ≥ 10) but did not decrease depressive symptoms. Another cohort study, which is probably the only study that ran race-stratified analyses, showed that MED during early pregnancy was associated with lower likelihood of depressive mood in the first trimester particularly among Hispanic women(Reference Gonzalez-Nahm, Marchesoni and Maity19). Unlike the latter study, we observed that MED was associated with lower risk of prenatal depression only in white participants. It is noteworthy that we grouped all the races other than white into one category in our study (people of colour), which is a different classification of racial groups compared with the previous race-stratified study which included Hispanics and Black African Americans as two separate groups. Also, part of the discrepancy between findings of these studies might be explained by the notion that the socio-cultural settings in which the Mediterranean diet is consumed, and not just the diet itself, might be responsible for the beneficial health effects of MED(Reference Bonaccio, Iacoviello and Donati68).

While little is known about the link between DII and prenatal depression, studies in non-pregnant populations have found that higher DII is associated with increased incidence of depression and more depressive symptoms, particularly among women(Reference Li, Chen and Yao69,Reference Belliveau, Horton and Hereford70) . Interestingly, we found that among people of colour, those in the second DII tertile had lower depressive symptoms compared with the first tertile, when the model included maternal age, SES, parity, physical activity and smoking as covariates.

Maternal diet and prenatal depression: mediation through pre-pregnancy BMI

In our study, higher MED was associated with lower BMI in white participants, and higher maternal BMI was associated with lower depressive symptoms in people of colour; pre-pregnancy BMI did not mediate the association between maternal pre-pregnancy diet and prenatal depression.

Few studies have directly assessed the mediating role of BMI in the association between diet and depression. A cohort study including adolescents found that a healthy dietary pattern could protect against depression partially through reduced BMI(Reference Oddy, Allen and Trapp71). Also, a study among elderly people showed that higher DII scores were associated with a higher risk of depression, and the association was in part mediated by increased BMI(Reference Ma, Li and Zhan21). However, results from other studies that considered the probable effect of BMI in the association between diet and depression by adjusting for BMI or testing it as an effect modifier indicated that BMI might not account for the link(Reference Vermeulen, Stronks and Snijder72,Reference Lucas, Chocano-Bedoya and Shulze73) .

There is some evidence in the literature linking MED and DII to BMI and pre-pregnancy BMI to prenatal depression, suggesting a mediation role of BMI in the association between maternal diet and depression. Meta-analyses of randomised controlled trials and cohort studies have demonstrated that MED leads to a greater reduction of body weight in comparison with other diets(Reference Esposito, Kastorini and Panagiotakos74) and decreased risk of obesity(Reference Lotfi, Saneei and Hajhashemy23). Our results were in accord with these findings, as we also found that white women in the third tertile of MED had significantly lower pre-pregnancy BMI compared with those in the first tertile. Nonetheless, we did not observe a similar result among people of colour. This finding was in agreement with some prior research that showed MED was particularly helpful in reducing weight among white people, apparently because a non-adapted MED might not capture the traditional foods consumed by different races, and therefore would not provide an accurate picture of the association between MED and obesity in them(Reference Sotos-Prieto and Mattei75). Studies that have investigated the association between DII and body weight have come up with conflicting results. Among non-pregnant populations, some studies have found that those consuming a diet with high inflammatory potential have higher BMI compared with those with lower DII scores(Reference Zechun, Ling and Mengzi76), while others have shown that higher DII scores are not necessarily associated with higher BMI(Reference Karimbeiki, Alipoor and Yaseri77Reference Muhammad, van Baak and Mariman79). In a study among pregnant individuals, higher DII scores in the first trimester were associated with higher BMI(Reference Gainfort, Delahunt and Killeen80). It is probable that the method of dietary assessment attributed to the discrepant results, as studies that used dietary recalls or food diaries, which are more accurate methods of dietary intake assessment compared with FFQ, found a significant association between DII and BMI(Reference Zechun, Ling and Mengzi76,Reference Gainfort, Delahunt and Killeen80) , while those that used FFQ did not. The dietary assessment method in our study was FFQ, probably explaining the null results in terms of the association between DII and BMI.

Obesity has been shown to be associated with increased odds of prenatal depression(Reference Dachew, Ayano and Betts33). In a large birth cohort study by Sominsky et al., pre-pregnancy obesity was associated with increased EPDS scores in mid-gestation(Reference Sominsky, O’Hely and Drummond81). However, a prospective study in China found no significant correlation between pre-pregnancy BMI and prenatal depressive symptoms(Reference Zhou, Rao and Yang34), and a comparison of white and south Asian women in a British pregnancy cohort observed no significant association between BMI categories and depression, in neither racial group(Reference Insan, Slack and Heslehurst82). Conversely, a cohort study of Hispanic women found that overweight was associated with lower depressive symptoms across pregnancy(Reference Ertel, Silveira and Pekow83). Generally, it seems that the positive association between obesity and depression exists only among white women(Reference Hicken, Lee and Mezuk35). These racial differences in obesity–depression association might stem from the impact of social and cultural factors on body image and weight satisfaction among women(Reference Ertel, Huang and Rifas-Shiman84). Unlike the previous studies, we observed no significant association between obesity and depressive symptoms in white participants either. This might be explained by the different impact of obesity on distinct symptom domains of depression, as Chu et al. reported that overweight and obesity were associated with increased somatic symptoms but not cognitive-affective or overall depressive symptoms(Reference Chu, Cadar and Iob85). Which adds to the complexity of the association between pre-pregnancy BMI and prenatal depression is the probable mechanisms involved. A common pathway from obesity to depression is believed to be increased adiposity-derived inflammation in the body(Reference Fulton, Décarie-Spain and Fioramonti86), and Chu et al. study found that the association between obesity and somatic symptoms of depression was partially mediated through increased CRP(Reference Chu, Cadar and Iob85). However, like our study (data not shown), the Sominsky et al. study found no mediating role for inflammatory biomarkers in the association between pre-pregnancy obesity and prenatal depressive symptoms(Reference Sominsky, O’Hely and Drummond81).

Maternal diet and prenatal depression: mediation through prenatal inflammation

We found that higher MED was associated with lower inflammation, and higher DII was associated with higher inflammation in the third trimester in white individuals. However, the prenatal CRP levels were not associated with prenatal depressive symptoms and did not mediate the association between maternal diet and prenatal depressive symptoms.

MED has been studied extensively in association with inflammatory biomarkers. In a study among elderly subjects, MED was associated with lower CRP levels, but no association was observed between MED and other inflammatory biomarkers like IL-6(Reference Luciano, Mõttus and Starr87). Similarly, among adolescents and adults, higher MED was associated with lower concentrations of CRP, but not other inflammatory biomarkers(Reference Sureda, Bibiloni and Julibert88). Contrarywise, a study by Flor-Alemany et al. among pregnant individuals revealed that MED in mid-gestation was associated with lower levels of the pro-inflammatory biomarker TNF-α but not CRP or IL-6 levels in late pregnancy(Reference Flor-Alemany, Acosta-Manzano and Migueles89). Interestingly, in a study that conducted race-stratified analyses, higher MED significantly increased the pro-inflammatory biomarker IL-17A in Black African-American women(Reference Gonzalez-Nahm, Marchesoni and Maity19).

Regarding the association between DII and inflammation, our findings agreed with recent evidence that DII was associated with elevated CRP levels in non-pregnant populations(Reference Mohammadi, Hosseinikia and Ghaffarian-Bahraman90,Reference Lécuyer, Laouali and Viallon91) . However, DII scores calculated based on dietary data from both pre-pregnancy and prenatal periods (weighted means) were not associated with early-pregnancy inflammatory biomarkers in an ethnically diverse cohort(Reference McCullough, Miller and Calderwood92). In another pregnancy study, there was a significant difference in the second trimester CRP levels between those with low vs. high DII (based on the median scores) only among individuals with complicated pregnancy; there were no significant differences in the other trimesters, for other inflammatory cytokines or in non-complicated pregnancy(Reference Pieczyńska, Płaczkowska and Pawlik-Sobecka93). A study among Chinese pregnant women found a U shape association between DII scores and pro-inflammatory biomarkers in the third trimester, with circulating inflammatory cytokines first decreasing and then increasing with the increasing DII scores(Reference Cui, Zhang and Liu94). These inconsistent findings might be due to the different dietary assessment methods, different ways of DII calculation (point v. weighted mean), different study populations and the fact that the inflammatory status fluctuates during pregnancy, and there might be a buffering system to change the prenatal inflammatory status in response to external effectors like diet, to ensure a normal pregnancy(Reference Cui, Zhang and Liu94).

While a large body of evidence exists regarding the role of inflammation in the pathogenesis of depression, little is known if inflammation is also implicated in prenatal depression. A recent meta-analysis of prospective studies found that IL-6 had a stronger association than CRP with future depression(Reference Mac Giollabhui, Ng and Ellman95). Similarly, the only inflammatory biomarker associated with depressive symptoms at week 28 of gestation was IL-6, and CRP did not have a significant association with the EPDS scores(Reference Sominsky, O’Hely and Drummond81). Our study also found no association between CRP and prenatal depression, possibly indicating that only specific inflammatory biomarkers are implicated in prenatal depression pathophysiology. That we only assessed CRP in our study and both our dietary indices, especially MED, have shown more significant effect on reducing CRP levels than other inflammatory cytokines in different population (see above), while IL-6 seems to be the inflammatory biomarker implicated in depression might have been the main reason that we found no mediating role for inflammation in the association between maternal diet and prenatal depression. Moreover, many other factors should be taken into account when interpreting the association between inflammation and prenatal depression, including pregnancy complications, current or past stressors, social support, depression diagnosis prior to pregnancy and pharmacotherapies like antidepressants(Reference Sawyer96). In addition, some previous research suggests that central and not peripheral inflammation might be more strongly linked with depression, as higher levels of inflammatory cytokines in the cerebrospinal fluid, and not the plasma levels, were associated with augmented odds of prenatal depression(Reference Miller, Sakowicz and Roy97).

Strengths and limitations

Our study was among the first to investigate the mediating role of maternal BMI and inflammation in the association between maternal diet and prenatal depression. The race-stratified analyses were a main strength of the current study, as racial differences in this area of research are emerging. Moreover, by studying the pre-pregnancy diet, we were privileged to investigate the long-term and habitual diet of the participants in association with their risk of developing depressive symptoms in pregnancy because dietary intake is usually altered during pregnancy especially in early gestation. Also, the longitudinal assessment of the link between diet and depression allowed us to interpret the results from a causality point of view. A lot of the prior research has been cross-sectional, which limits understanding the direction of the association, as depression can also affect diet quality during pregnancy(Reference Avalos, Caan and Nance98,Reference Boutté, Turner-McGrievy and Wilcox99) .

As for any study, our work had some limitations. Although pre-pregnancy FFQ is the most commonly used method to assess dietary intake prior to pregnancy(Reference Wirawan, Yudhantari and Gayatri100), the recall bias associated with its use might limit the ability to definitively distinguish between pre-pregnancy and prenatal diet. Also, the pre-pregnancy FFQ that we used in the APrON study did not capture data on many items that contribute to the final DII score. Although it is common practice to use data on as many DII components as you have in your study and calculate the DII score based on that data(Reference Shivappa, Steck and Hurley16), lacking data on DII components that play a major role in people’s overall dietary inflammation might be a potential drawback. For instance, flavonoids have an important role in controlling inflammation in the body(Reference Maleki, Crespo and Cabanillas101), and not having data on them might have affected how accurately we have captured the link between diet and inflammation in our study. Especially that there are racial differences in contribution of dietary components to inflammatory potential of diet(Reference Piyathilake, Badiga and Chappell102). Another limitation of our study was that we had data only on serum CRP levels as a measure of prenatal inflammation in our main cohort, and CRP might not be very well linked to prenatal depression. Moreover, CRP data were only available from the third trimester, which further limits the ability to obtain a clear understanding of its probable role in the association between pre-pregnancy diet and prenatal depression. Another important disadvantage of our study was that the sample size was much smaller for the ‘people of colour’ group, which might have been responsible for most of the non-significant results for this racial group. A greater portion of the APrON participants had high income and education compared with Canada(Reference Letourneau, Aghajafari and Bell39), which reduces the generalisability of our results to the community. Residual confounding is also a limitation in our study, as we could not control for all the factors that might have affected the results, including history of depression diagnosis and antidepressants use.

Conclusion

In conclusion, pre-pregnancy diet might impact the odds of developing depression in late pregnancy. We observed this effect only in white individuals, but cannot suggest that pre-pregnancy diet would not impact depression risk in people of colour because the sample size was much smaller for this group in our cohort. Moreover, the dietary indices we used in our study and the data we had available on DII might not fully capture the inflammatory potential of the diet that different racial groups consume. Given the high prevalence of prenatal depression in all racial groups and its many adverse effects on mothers and their children and the resultant economic burden on the governments, it is suggested that further research explores the potential benefits of healthy dietary patterns in relation to prenatal mental health. Only then would healthcare systems be able to take steps in providing meaningful nutrition support to women before and during pregnancy and consider racial differences in their strategies. Although we did not find a significant mediating role for obesity and inflammation in this study, our findings do not rule out the possible mediating role of these factors. Future studies are encouraged to use more comprehensive assessment of inflammatory status in the body, FFQ that obtain data on all the DII components and adaptive MED (with components adapted to the study populations) to better reflect the adherence of people residing in non-Mediterranean countries to the healthy Mediterranean style diet.

Acknowledgements

We sincerely appreciate the participants of the APrON study, as well as all the APrON study team members and staff, who made this study possible. We also acknowledge Susan Goruk for her contribution to the CRP analysis.

The APrON study received funding from Alberta Innovates Health Solutions (Grant No. N/A), the Canadian Institutes of Health Research (CIHR; Operating Grants and No. 156069) and the Alberta Children’s Hospital Research Institute (ACHRI; Grant No. N/A), Canada. The funding sources had no role in study design, in the collection, analysis and interpretation of data, in the writing of the report or in the decision to submit the article for publication. Elnaz Vaghef-Mehrabani is supported by an ACHRI postdoctoral fellowship at the University of Calgary and the CIHR postdoctoral fellowship (No. 187823).

E. V-M.: Conceptualisation, data curation, methodology, formal analysis, visualization, project administration, validation, writing original draft and review and editing. R. C. B.: Funding acquisition, methodology, investigation, project administration and review and editing. C. J. F.: Funding acquisition, methodology, investigation, project administration and review and editing, Supervision. M. J.: Conceptualization, methodology and review and editing. J. L. E.: Methodology, investigation and review and editing. N. L.: Funding acquisition, investigation, and review and editing. G. F. G.: Conceptualization, funding acquisition, investigation, data curation, project administration, reviewing and editing and supervision.

The authors declare none.

This study was conducted according to the guidelines laid down in the Declaration of Helsinki, and all procedures involving human subjects were approved by the University of Calgary Health Research Ethics Board (REB14-1702) and University of Alberta Health Research Ethics Biomedical Panel (Pro00002954). Written informed consent was obtained from all subjects.

Supplementary material

For supplementary material/s referred to in this article, please visit https://doi.org/10.1017/S0007114524001028

References

Gaynes, BN, Gavin, N, Meltzer-Brody, S, et al. (2005) Perinatal depression: prevalence, screening accuracy, and screening outcomes. Evid Rep Technol Assess (Summ) 119, 18.Google Scholar
Jahan, N, Went, TR, Sultan, W, et al. (2021) Untreated depression during pregnancy and its effect on pregnancy outcomes: a systematic review. Cureus 13, e17251.Google ScholarPubMed
Rogers, A, Obst, S, Teague, SJ, et al. (2020) Association between maternal perinatal depression and anxiety and child and adolescent development: a meta-analysis. JAMA Pediatr 174, 10821092.CrossRefGoogle ScholarPubMed
Muzik, M & Borovska, S (2010) Perinatal depression: implications for child mental health. Ment Health Fam Med 7, 239247.Google ScholarPubMed
Brown, JVE, Wilson, CA, Ayre, K, et al. (2021) Antidepressant treatment for postnatal depression. Cochrane Database Syst Rev 2021, issue 2, CD013560.Google Scholar
Levinson-Castiel, R, Merlob, P, Linder, N, et al. (2006) Neonatal abstinence syndrome after in utero exposure to selective serotonin reuptake inhibitors in term infants. Arch Pediatr Adolesc Med 160, 173176.CrossRefGoogle ScholarPubMed
Hanley, GE, Smolina, K, Mintzes, B, et al. (2016) Postpartum hemorrhage and use of serotonin reuptake inhibitor antidepressants in pregnancy. Obstet Gynecol 127, 553561.CrossRefGoogle ScholarPubMed
Grajek, M, Krupa-Kotara, K, Białek-Dratwa, A, et al. (2022) Nutrition and mental health: a review of current knowledge about the impact of diet on mental health. Front Nutr 9, 943998.CrossRefGoogle ScholarPubMed
Jacka, FN, O’Neil, A, Opie, R, et al. (2017) A randomised controlled trial of dietary improvement for adults with major depression (the ‘smiles’ trial). BMC Med 15, 23.CrossRefGoogle ScholarPubMed
Sánchez-Villegas, A, Martínez-González, MA, Estruch, R, et al. (2013) Mediterranean dietary pattern and depression: the PREDIMED randomized trial. BMC Med 11, 112.CrossRefGoogle ScholarPubMed
Guasch-Ferré, M & Willett, WC (2021) The Mediterranean diet and health: a comprehensive overview. J Intern Med 290, 549566.CrossRefGoogle ScholarPubMed
Oddo, VM, Welke, L, McLeod, A, et al. (2022) Adherence to a Mediterranean diet is associated with lower depressive symptoms among U.S. Adults. Nutrients 14, 278.CrossRefGoogle Scholar
Adjibade, M, Assmann, KE, Andreeva, VA, et al. (2018) Prospective association between adherence to the Mediterranean diet and risk of depressive symptoms in the French SU.VI.MAX cohort. Eur J Nutr 57, 12251235.CrossRefGoogle Scholar
Hwang, YG, Pae, C, Lee, SH, et al. (2023) Relationship between Mediterranean diet and depression in South Korea: the Korea National Health and Nutrition Examination Survey. Front Nutr 10, 1219743.CrossRefGoogle ScholarPubMed
Fan, Y, Zhao, L, Deng, Z, et al. (2022) Non-linear association between Mediterranean diet and depressive symptom in U.S. Adults: a cross-sectional study. Front Psychiatry 13, 936283.CrossRefGoogle ScholarPubMed
Shivappa, N, Steck, SE, Hurley, TG, et al. (2014) Designing and developing a literature-derived, population-based dietary inflammatory index. Public Health Nutr 17, 16891696.CrossRefGoogle ScholarPubMed
Wang, J, Zhou, Y, Chen, K, et al. (2018) Dietary inflammatory index and depression: a meta-analysis. Public Health Nutr 22, 17.Google ScholarPubMed
Luo, L, Hu, J, Huang, R, et al. (2023) The association between dietary inflammation index and depression. Front Psychiatry 14, 1131802.CrossRefGoogle ScholarPubMed
Gonzalez-Nahm, S, Marchesoni, J, Maity, A, et al. (2022) Maternal Mediterranean diet adherence and its associations with maternal prenatal stressors and child growth. Curr Dev Nutr 6, nzac146.CrossRefGoogle Scholar
Wang, P, Yim, IS & Lindsay, KL (2023) Maternal diet quality and prenatal depressive symptoms: the moderating role of economic well-being. Nutrients 15, 2809.CrossRefGoogle Scholar
Ma, Y, Li, R, Zhan, W, et al. (2021) Role of BMI in the relationship between dietary inflammatory index and depression: an intermediary analysis. Front Med (Lausanne) 8, 748788.CrossRefGoogle ScholarPubMed
Gialluisi, A, Santonastaso, F, Bonaccio, M, et al. (2021) Circulating inflammation markers partly explain the link between the dietary inflammatory index and depressive symptoms. J Inflamm Res 14, 49554968.CrossRefGoogle ScholarPubMed
Lotfi, K, Saneei, P, Hajhashemy, Z, et al. (2022) Adherence to the Mediterranean diet, five-year weight change, and risk of overweight and obesity: a systematic review and dose-response meta-analysis of prospective cohort studies. Adv Nutr 13, 152166.CrossRefGoogle Scholar
Hariharan, R, Odjidja, EN, Scott, D, et al. (2022) The dietary inflammatory index, obesity, type 2 diabetes, and cardiovascular risk factors and diseases. Obes Rev 23, e13349.CrossRefGoogle ScholarPubMed
Koelman, L, Egea Rodrigues, C & Aleksandrova, K (2022) Effects of dietary patterns on biomarkers of inflammation and immune responses: a systematic review and meta-analysis of randomized controlled trials. Adv Nutr 13, 101115.CrossRefGoogle Scholar
Flor-Alemany, M, Acosta-Manzano, P, Migueles, JH, et al. (2023) Association of Mediterranean diet adherence during pregnancy with maternal and neonatal lipid, glycemic and inflammatory markers: the GESTAFIT project. Matern Child Nutr 19, e13454.CrossRefGoogle ScholarPubMed
Shivappa, N, Hébert, JR, Rietzschel, ER, et al. (2015) Associations between dietary inflammatory index and inflammatory markers in the Asklepios study. Br J Nutr 113, 665671.CrossRefGoogle ScholarPubMed
Kotemori, A, Sawada, N, Iwasaki, M, et al. (2021) Dietary inflammatory index is associated with inflammation in Japanese men. Front Nutr 8, 604296.CrossRefGoogle ScholarPubMed
Shivappa, N, Steck, SE, Hurley, TG, et al. (2014) A population-based dietary inflammatory index predicts levels of c-reactive protein in the seasonal variation of blood cholesterol study (seasons). Public Health Nutr 17, 18251833.CrossRefGoogle ScholarPubMed
Sen, S, Rifas-Shiman, S, Shivappa, N, et al. (2015) Dietary inflammatory index during pregnancy and maternal systemic inflammation. FASEB J 29, LB260.CrossRefGoogle Scholar
Sha, Q, Madaj, Z, Keaton, S, et al. (2022) Cytokines and tryptophan metabolites can predict depressive symptoms in pregnancy. Transl Psychiatry 12, 35.CrossRefGoogle ScholarPubMed
Pavlik, LB & Rosculet, K (2020) Maternal obesity and perinatal depression: an updated literature review. Cureus 12, e10736.Google ScholarPubMed
Dachew, BA, Ayano, G, Betts, K, et al. (2021) The impact of pre-pregnancy BMI on maternal depressive and anxiety symptoms during pregnancy and the postpartum period: a systematic review and meta-analysis. J Affect Disord 281, 321330.CrossRefGoogle ScholarPubMed
Zhou, X, Rao, L, Yang, D, et al. (2023) Effects of maternal pre-pregnancy body mass index and gestational weight gain on antenatal mental disorders in China: a prospective study. BMC Pregnancy Childbirth 23, 188.CrossRefGoogle Scholar
Hicken, MT, Lee, H, Mezuk, B, et al. (2013) Racial and ethnic differences in the association between obesity and depression in women. J Womens Health (Larchmt) 22, 445452.CrossRefGoogle ScholarPubMed
Gillespie, SL, Porter, K & Christian, LM (2016) Adaptation of the inflammatory immune response across pregnancy and postpartum in black and white women. J Reprod Immunol 114, 2731.CrossRefGoogle ScholarPubMed
Mukherjee, S, Trepka, MJ, Pierre-Victor, D, et al. (2016) Racial/ethnic disparities in antenatal depression in the United States: a systematic review. Matern Child Health J 20, 17801797.CrossRefGoogle ScholarPubMed
Kaplan, BJ, Giesbrecht, GF, Leung, BM, et al. (2014) The Alberta pregnancy outcomes and nutrition (apron) cohort study: rationale and methods. Matern Child Nutr 10, 4460.CrossRefGoogle ScholarPubMed
Letourneau, N, Aghajafari, F, Bell, RC, et al. (2022) The Alberta pregnancy outcomes and nutrition (apron) longitudinal study: cohort profile and key findings from the first three years. BMJ Open 12, e047503.CrossRefGoogle ScholarPubMed
Willett, W (2012) Nutritional Epidemiology. Oxford: Oxford University Press.CrossRefGoogle Scholar
Csizmadi, I, Kahle, L, Ullman, R, et al. (2007) Adaptation and evaluation of the national cancer institute’s diet history questionnaire and nutrient database for Canadian populations. Public Health Nutr 10, 8896.CrossRefGoogle ScholarPubMed
Ramage, SM, McCargar, LJ, Berglund, C, et al. (2015) Assessment of pre-pregnancy dietary intake with a food frequency questionnaire in Alberta women. Nutrients 7, 61556166.CrossRefGoogle ScholarPubMed
Jarman, M, Mathe, N, Ramazani, F, et al. (2018) Dietary patterns prior to pregnancy and associations with pregnancy complications. Nutrients 10, 914.CrossRefGoogle ScholarPubMed
Food Processor, S (2008) Food Processor Nutrition and Fitness Software. Salem, OR: Food Processor SQL Inc.Google Scholar
Trichopoulou, A, Costacou, T, Bamia, C, et al. (2003) Adherence to a Mediterranean diet and survival in a Greek population. N Engl J Med 348, 25992608.CrossRefGoogle Scholar
Trichopoulou, A, Kouris-Blazos, A, Wahlqvist, ML, et al. (1995) Diet and overall survival in elderly people. BMJ 311, 14571460.CrossRefGoogle ScholarPubMed
Fung, TT, Hu, FB, McCullough, ML, et al. (2006) Diet quality is associated with the risk of estrogen receptor–negative breast cancer in postmenopausal women. J Nutr 136, 466472.CrossRefGoogle ScholarPubMed
Cox, JL, Holden, JM & Sagovsky, R (1987) Detection of postnatal depression: development of the 10-item Edinburgh postnatal depression scale. Br J Psychiatry 150, 782786.CrossRefGoogle ScholarPubMed
Boyd, RC, Le, HN & Somberg, R (2005) Review of screening instruments for postpartum depression. Arch Women’s Ment Health 8, 141153.CrossRefGoogle ScholarPubMed
Levis, B, Negeri, Z, Sun, Y, et al. (2020) Accuracy of the Edinburgh Postnatal Depression Scale (EPDS) for screening to detect major depression among pregnant and postpartum women: systematic review and meta-analysis of individual participant data. BMJ 371, m4022.CrossRefGoogle ScholarPubMed
Muraca, GM & Joseph, KS (2014) The association between maternal age and depression. J Obstet Gynaecol Can 36, 803810.CrossRefGoogle ScholarPubMed
Habibi, N, Livingstone, KM, Edwards, S, et al. (2021) Do older women of reproductive age have better diet quality than younger women of reproductive age? Nutrients 13, 3830.CrossRefGoogle ScholarPubMed
Yu, Y, Feng, C, Bédard, B, et al. (2022) Diet quality during pregnancy and its association with social factors: 3D cohort study (Design, Develop, Discover). Matern Child Nutr 18, e13403.CrossRefGoogle ScholarPubMed
Goyal, D, Gay, C & Lee, KA (2010) How much does low socioeconomic status increase the risk of prenatal and postpartum depressive symptoms in first-time mothers? Womens Health Issues 20, 96104.CrossRefGoogle ScholarPubMed
Yang, K, Wu, J & Chen, X (2022) Risk factors of perinatal depression in women: a systematic review and meta-analysis. BMC Psychiatry 22, 63.CrossRefGoogle ScholarPubMed
Cui, M, Kimura, T, Ikehara, S, et al. (2020) Prenatal tobacco smoking is associated with postpartum depression in Japanese pregnant women: the Japan environment and children’s study. J Affect Disord 264, 7681.CrossRefGoogle ScholarPubMed
Saadat, N, Zhang, L, Hyer, S, et al. (2022) Psychosocial and behavioral factors affecting inflammation among pregnant African American women. Brain Behav Immun Health 22, 100452.CrossRefGoogle ScholarPubMed
Kołomańska, D, Zarawski, M & Mazur-Bialy, A (2019) Physical activity and depressive disorders in pregnant women-a systematic review. Medicina (Kaunas) 55, 212.CrossRefGoogle ScholarPubMed
Tinius, RA, Cahill, AG & Cade, WT (2017) Low-intensity physical activity is associated with lower maternal systemic inflammation during late pregnancy. J Obes Weight Loss Ther 7, 343.Google ScholarPubMed
Guelinckx, I, Devlieger, R, Mullie, P, et al. (2010) Effect of lifestyle intervention on dietary habits, physical activity, and gestational weight gain in obese pregnant women: a randomized controlled trial. Am J Clin Nutr 91, 373380.CrossRefGoogle ScholarPubMed
Baecke, JA, Burema, J & Frijters, JE (1982) A short questionnaire for the measurement of habitual physical activity in epidemiological studies. Am J Clin Nutr 36, 936942.CrossRefGoogle Scholar
Willett, WC, Howe, GR & Kushi, LH (1997) Adjustment for total energy intake in epidemiologic studies. Am J Clin Nutr 65, 1220S1228S; discussion 1229S–1231S.CrossRefGoogle ScholarPubMed
Vilela, AAF, Farias, DR, Eshriqui, I, et al. (2014) Prepregnancy healthy dietary pattern is inversely associated with depressive symptoms among pregnant Brazilian women. J Nutr 144, 16121618.CrossRefGoogle ScholarPubMed
Silva, DFO, Cobucci, RN, Gonçalves, AK, et al. (2019) Systematic review of the association between dietary patterns and perinatal anxiety and depression. BMC Pregnancy Childbirth 19, 212.CrossRefGoogle ScholarPubMed
Flor-Alemany, M, Baena-García, L, Migueles, JH, et al. (2022) Associations of Mediterranean diet with psychological ill-being and well-being throughout the pregnancy course: the GESTAFIT project. Qual Life Res 31, 27052716.CrossRefGoogle ScholarPubMed
Oddo, VM, Moise, C, Welke, L, et al. (2023) Mediterranean diet adherence and depressive symptoms among a nationally representative sample of pregnant women in the United States. J Nutr 153, 30413048.CrossRefGoogle Scholar
Bonaccio, M, Iacoviello, L, Donati, MB, et al. (2022) The tenth anniversary as a UNESCO world cultural heritage: an unmissable opportunity to get back to the cultural roots of the Mediterranean diet. Eur J Clin Nutr 76, 179183.CrossRefGoogle Scholar
Li, X, Chen, M, Yao, Z, et al. (2022) Dietary inflammatory potential and the incidence of depression and anxiety: a meta-analysis. J Health Popul Nutr 41, 24.CrossRefGoogle ScholarPubMed
Belliveau, R, Horton, S, Hereford, C, et al. (2022) Pro-inflammatory diet and depressive symptoms in the healthcare setting. BMC Psychiatry 22, 125.CrossRefGoogle ScholarPubMed
Oddy, WH, Allen, KL, Trapp, GSA, et al. (2018) Dietary patterns, body mass index and inflammation: pathways to depression and mental health problems in adolescents. Brain, Behavior, Immun 69, 428439.CrossRefGoogle ScholarPubMed
Vermeulen, E, Stronks, K, Snijder, MB, et al. (2017) A combined high-sugar and high-saturated-fat dietary pattern is associated with more depressive symptoms in a multi-ethnic population: the HELIUS (healthy life in an urban setting) study. Public Health Nutr 20, 23742382.CrossRefGoogle Scholar
Lucas, M, Chocano-Bedoya, P, Shulze, MB, et al. (2014) Inflammatory dietary pattern and risk of depression among women. Brain, Behavior, Immun 36, 4653.CrossRefGoogle ScholarPubMed
Esposito, K, Kastorini, C-M, Panagiotakos, DB, et al. (2011) Mediterranean diet and weight loss: meta-analysis of randomized controlled trials. Metab Syndrome Relat Disord 9, 112.CrossRefGoogle ScholarPubMed
Sotos-Prieto, M & Mattei, J (2018) Mediterranean diet and cardiometabolic diseases in racial/ethnic minority populations in the United States. Nutrients 10, 352.CrossRefGoogle ScholarPubMed
Zechun, X, Ling, W, Mengzi, S, et al. (2023) The mediating role of body mass index in the association between dietary inflammatory index and 10-year risk of CVD: a counterfactual mediation analysis. medRxiv, 2023.2006.2006.23291060.Google Scholar
Karimbeiki, R, Alipoor, E, Yaseri, M, et al. (2021) Association between the dietary inflammatory index and obesity in otherwise healthy adults: role of age and sex. Int J Clin Pract 75, e14567.CrossRefGoogle ScholarPubMed
Soltanieh, S, Salavatizadeh, M, Poustchi, H, et al. (2023) The association of Dietary Inflammatory Index (DII) and central obesity with Non-Alcoholic Fatty Liver Disease (NAFLD) in people with diabetes (T2DM). Heliyon 9, e13983.CrossRefGoogle ScholarPubMed
Muhammad, HFL, van Baak, MA, Mariman, EC, et al. (2019) Dietary inflammatory index score and its association with body weight, blood pressure, lipid profile, and leptin in Indonesian adults. Nutrients 11, 148.CrossRefGoogle ScholarPubMed
Gainfort, A, Delahunt, A, Killeen, SL, et al. (2023) Energy-adjusted dietary inflammatory index in pregnancy and maternal cardiometabolic health: findings from the ROLO study. AJOG Global Rep 3, 100214.CrossRefGoogle ScholarPubMed
Sominsky, L, O’Hely, M, Drummond, K, et al. (2023) Pre-pregnancy obesity is associated with greater systemic inflammation and increased risk of antenatal depression. Brain Behav Immun 113, 189202.CrossRefGoogle ScholarPubMed
Insan, N, Slack, E, Heslehurst, N, et al. (2020) Antenatal depression and anxiety and early pregnancy BMI among white British and South Asian women: retrospective analysis of data from the born in Bradford cohort. BMC Pregnancy Childbirth 20, 502.CrossRefGoogle ScholarPubMed
Ertel, KA, Silveira, ML, Pekow, PS, et al. (2015) Prepregnancy body mass index, gestational weight gain, and elevated depressive symptoms in a Hispanic cohort. Health Psychol 34, 274278.CrossRefGoogle Scholar
Ertel, KA, Huang, T, Rifas-Shiman, SL, et al. (2017) Perinatal weight and risk of prenatal and postpartum depressive symptoms. Ann Epidemiol 27, 695700.e691.CrossRefGoogle Scholar
Chu, K, Cadar, D, Iob, E, et al. (2023) Excess body weight and specific types of depressive symptoms: is there a mediating role of systemic low-grade inflammation? Brain, Behavior, Immun 108, 233244.CrossRefGoogle Scholar
Fulton, S, Décarie-Spain, L, Fioramonti, X, et al. (2022) The menace of obesity to depression and anxiety prevalence. Trends Endocrinol Metab 33, 1835.CrossRefGoogle ScholarPubMed
Luciano, M, Mõttus, R, Starr, JM, et al. (2012) Depressive symptoms and diet: their effects on prospective inflammation levels in the elderly. Brain, Behavior, Immun 26, 717720.CrossRefGoogle ScholarPubMed
Sureda, A, Bibiloni, MDM, Julibert, A, et al. (2018) Adherence to the Mediterranean diet and inflammatory markers. Nutrients 10, 62.CrossRefGoogle Scholar
Flor-Alemany, M, Acosta-Manzano, P, Migueles, JH, et al. (2023) Association of Mediterranean diet adherence during pregnancy with maternal and neonatal lipid, glycemic and inflammatory markers: the GESTAFIT project. Maternal Child Nutr 19, e13454.CrossRefGoogle ScholarPubMed
Mohammadi, S, Hosseinikia, M, Ghaffarian-Bahraman, A, et al. (2023) Dietary inflammatory index and elevated serum c-reactive protein: a systematic review and meta-analysis. Food Sci & Nutr 11, 57865798.CrossRefGoogle Scholar
Lécuyer, L, Laouali, N, Viallon, V, et al. (2023) Associations between dietary inflammatory scores and biomarkers of inflammation in the European Prospective Investigation into Cancer and Nutrition (EPIC) cohort. Clin Nutr 42, 11151125.CrossRefGoogle Scholar
McCullough, LE, Miller, EE, Calderwood, LE, et al. (2017) Maternal inflammatory diet and adverse pregnancy outcomes: circulating cytokines and genomic imprinting as potential regulators? Epigenet 12, 688697.CrossRefGoogle ScholarPubMed
Pieczyńska, J, Płaczkowska, S, Pawlik-Sobecka, L, et al. (2020) Association of dietary inflammatory index with serum il-6, il-10, and CRP concentration during pregnancy. Nutrients 12, 2789.CrossRefGoogle Scholar
Cui, T, Zhang, J, Liu, L, et al. (2023) Relationship between the dietary inflammatory index score and cytokine levels in Chinese pregnant women during the second and third trimesters. Nutrients 15, 194.CrossRefGoogle Scholar
Mac Giollabhui, N, Ng, TH, Ellman, LM, et al. (2021) The longitudinal associations of inflammatory biomarkers and depression revisited: systematic review, meta-analysis, and meta-regression. Mol Psychiatry 26, 33023314.CrossRefGoogle ScholarPubMed
Sawyer, KM (2021) The role of inflammation in the pathogenesis of perinatal depression and offspring outcomes. Brain, Behavior, Immun - Health 18, 100390.CrossRefGoogle Scholar
Miller, ES, Sakowicz, A, Roy, A, et al. (2019) Plasma and cerebrospinal fluid inflammatory cytokines in perinatal depression. Am J Obstet Gynecol 220, 271.e271–271.e210.Google Scholar
Avalos, LA, Caan, B, Nance, N, et al. (2020) Prenatal depression and diet quality during pregnancy. J Acad Nutr Diet 120, 972984.CrossRefGoogle ScholarPubMed
Boutté, AK, Turner-McGrievy, GM, Wilcox, S, et al. (2021) Associations of maternal stress and/or depressive symptoms with diet quality during pregnancy: a narrative review. Nutr Rev 79, 495517.CrossRefGoogle ScholarPubMed
Wirawan, F, Yudhantari, DGA & Gayatri, A (2023) Pre-pregnancy diet to maternal and child health outcome: a scoping review of current evidence. J Prev Med Public Health 56, 111127.CrossRefGoogle ScholarPubMed
Maleki, SJ, Crespo, JF & Cabanillas, B (2019) Anti-inflammatory effects of flavonoids. Food Chem 299, 125124.CrossRefGoogle ScholarPubMed
Piyathilake, CJ, Badiga, S, Chappell, AR, et al. (2021) Racial differences in dietary choices and their relationship to inflammatory potential in childbearing age women at risk for exposure to covid-19. Nutr Res 90, 112.CrossRefGoogle ScholarPubMed
Figure 0

Fig. 1. The study directed acyclic graph (DAG). SES, socio-economic status.

Figure 1

Table 1. Study participants’ characteristics by self-identified race

Figure 2

Fig. 2. Pre-pregnancy diet and third trimester EPDS score by self-identified race and pooled sample. Note: Results are based on analysis of covariance (ANCOVA) test (covariates: maternal age, SES, and parity; in the pooled sample analysis, race was included as an additional covariate). The data are presented as estimated marginal means and se. EPDS, Edinburgh postpartum depression scale; MED, Mediterranean diet adherence; DII, dietary inflammatory index; SES, socio-economic status. * P < 0·05.

Figure 3

Fig. 3. Pre-pregnancy diet and third trimester risk of depression (EPDS score ≥ 10) by self-identified race and pooled sample. Note: Results are based on multivariable logistic regression tests (covariates: maternal age, SES and parity; in the pooled sample analysis, race was included as an additional covariate). The data are presented as OR and 95 % CI. EPDS, Edinburgh postpartum depression scale; MED, Mediterranean diet adherence; DII, dietary inflammatory index; SES, socio-economic status. * P < 0·05.

Figure 4

Fig. 4. Pre-pregnancy diet and pre-pregnancy BMI by self-identified race and pooled sample. Note: Results are based on analysis of covariance (ANCOVA) test (covariates: maternal age, SES and parity; in the pooled sample analysis, race was included as an additional covariate). The data are presented as estimated marginal means and se. MED, Mediterranean diet adherence; DII, dietary inflammatory index; SES, socio-economic status. * P < 0·05.

Figure 5

Table 2. The association between maternal pre-pregnancy diet and prenatal depression: mediation through pre-pregnancy BMI

Figure 6

Fig. 5. Pre-pregnancy diet and third trimester CRP by self-identified race and pooled sample. Note: Results are based on analysis of covariance (ANCOVA) test (covariates: maternal age and SES; in the pooled sample analysis, race was included as an additional covariate). The data are presented as estimated marginal means and se. CRP, C-reactive protein; MED, Mediterranean diet adherence; DII, dietary inflammatory index; SES, socio-economic status. * P < 0·05.

Figure 7

Table 3. The association between maternal pre-pregnancy diet and prenatal depression: mediation through CRP concentrations

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