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Dietary patterns and glycaemic control among Qatari adults with type 2 diabetes

Published online by Cambridge University Press:  09 October 2020

Marwa Alaradi
Affiliation:
Human Nutrition Department, College of Health Sciences, QU Health, Qatar University, P.O. Box 2713, Doha, Qatar
Asma Ouagueni
Affiliation:
Human Nutrition Department, College of Health Sciences, QU Health, Qatar University, P.O. Box 2713, Doha, Qatar
Rim Khatib
Affiliation:
Human Nutrition Department, College of Health Sciences, QU Health, Qatar University, P.O. Box 2713, Doha, Qatar
Grace Attieh
Affiliation:
Human Nutrition Department, College of Health Sciences, QU Health, Qatar University, P.O. Box 2713, Doha, Qatar
Hiba Bawadi
Affiliation:
Human Nutrition Department, College of Health Sciences, QU Health, Qatar University, P.O. Box 2713, Doha, Qatar
Zumin Shi*
Affiliation:
Human Nutrition Department, College of Health Sciences, QU Health, Qatar University, P.O. Box 2713, Doha, Qatar
*
*Corresponding author: Email zumin@qu.edu.qa
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Abstract

Objective:

To assess the association between dietary patterns and glycaemic control among Qatari adults with type 2 diabetes (T2DM).

Design:

Cross-sectional analysis using data from the Qatar Biobank Study. Poor glycaemic control was defined as HbA1c ≥7·0 %. Dietary patterns were constructed using factor analysis based on habitual food intake assessed by a FFQ. Medication use was based on self-report. Multivariable logistic regression was used to assess the association.

Setting:

Qatar.

Participants:

Adults aged ≥18 years (n 1000) with known diabetes.

Result:

The mean age of the participants was 52·3 (sd 11·5) years. Overall, the prevalence of poor glycaemic control was 57·6 %, and 27·7 % of the participants were insulin users. Three dietary patterns were identified. The modern dietary pattern (high intake of fast food, croissants, white bread and cheese) was inversely associated with poor glycaemic control. The sd increments of the modern pattern had OR for poor glycaemic control of 0·86 (95 % CI 0·68, 1·08) in men and 0·76 (95 % CI 0·61, 0·95) in women. There was a significant interaction between the modern pattern and diabetes medication in men but not in women. In men without diabetes medication, the modern pattern was positively associated with poor glycaemic control with an OR of 2·35 (95 % CI 1·13, 4·87).

Conclusions:

Male diabetes patients took medication to control diabetes but ate more unhealthy food. In men who were not taking diabetes medication, modern dietary pattern was associated with poor glycaemic control. Promoting healthy eating should be encouraged especially among those under diabetes medication.

Type
Research paper
Copyright
© The Author(s), 2020. Published by Cambridge University Press on behalf of The Nutrition Society

The prevalence of type 2 diabetes (T2DM) has been increasing globally with approximately 425 million adults affected in 2017, and this number will reach 629 million by 2045(1). The Middle East and North Africa region has the highest prevalence of diabetes in the world(1). The latest data from the Qatar Biobank (QBB) study showed that the prevalence of diabetes mellitus in adults was 17·4 %(Reference Al Thani, Fthenou and Paparrodopoulos2). The high prevalence of diabetes brings a substantial economic and health burden to society(Reference Bener and Al-Hamaq3), including CVD and premature death(Reference Raghavan, Vassy and Ho4).

Poor control of diabetes is common and increases the risk of complications such as neuropathy disease, nephropathy, retinopathy and CVD(Reference Fowler5). More than 60 % of patients in the UAE, Bahrain, Saudi Arabia and Kuwait exhibited poor glycaemic control(Reference Alawadi, Abdelgadir and Bashier6Reference Alromaihi, Bastawrous and Bastawrous8). In Qatar, about 50 % of people with diabetes had poor glycaemic control as defined as HbA1c above 7 mmol/l(Reference Shi and Badi Abou-Samra9). Although genetics can affect the risk of diabetes and glycaemic control, lifestyle factors such as diet, physical activity, smoking and alcohol consumption are also associated with glycaemic control(Reference Resendiz-Abarca, Flores-Alfaro and Suarez-Sanchez10Reference Inada and Koga14). Dietary factors, such as high intake of fruits, vegetables, and fish, the Mediterranean diet, DASH diet can help glycaemic control, while high intake of saturated fats, salt and energy-dense Western diet is associated with poor glycaemic control(Reference Sarmento, Antonio and de Miranda15Reference Sadiya and Mnla17). One of the mechanisms by which poor diet affects glycaemic control is through obesity. Weight loss is a key determinant for glycaemic control among those with diabetes(Reference Rock, Flatt and Pakiz18). A network meta-analysis of fifty-six clinical trials found that compared with other eight dietary approaches (low-fat, Vegetarian, Mediterranean, high-protein, moderate-carbohydrate, low-carbohydrate, control, low glyacemic index (GI) and glycaemic load (GL), Palaeolithic), the Mediterranean diet is the most effective and efficacious dietary approach to improve glycaemic control in type 2 diabetes(Reference Schwingshackl, Chaimani and Hoffmann19). However, none of the fifty-six studies was conducted in the Arabic countries. As dietary habit is culture-specific, identification of dietary patterns which may affect glycaemic control is a key for diabetes management.

Similar to other Arabic countries, the diet in Qatar is characterised by high intake of energy and sugar. Based on a national survey, the mean intake of sugar was 153 g/d among Qatari residents(Reference Al-Thani, Al-Thani and Al-Mahdi20). Moreover, the intake of meat, refined carbohydrates and Na was high, while the intake of Ca and fibre-rich sources like fruits and vegetables was low(Reference Al-Thani, Al-Thani and Al-Mahdi20). Purchased food in Qatari households contains double the amount of protein and energy requirements, and the high intake of sugars and fat is due to the subsidy programme in the country(Reference Al-Thani, Al-Thani and Al-Mahdi20).

Unhealthy diet and a sedentary lifestyle contribute to the high prevalence of diabetes and obesity in Qatar(Reference Donnelly, Fung and Al-Thani21). More than 70 % of adults in Qatar were found to be overweight or obese(Reference Ullah, Mall and Rawi22). Posterior (data-driven approach as compared with knowledge-based method) dietary patterns using factor analysis, cluster analysis or reduced rank regression have been increasingly used in nutritional epidemiology as they may assess the overall dietary quality and reflect the interactions between foods and nutrients in the diet(Reference Martínez, Gómez-Díaz and González23,Reference Newby and Tucker24) . Little is known about the relationship between dietary patterns and glycaemic control in Qatar. So far, only one study has assessed the association between dietary patterns and glycaemic control based on the QBB study(Reference Shi and Badi Abou-Samra9). Low intake of Mg-related dietary pattern derived by reduced rank regression has been shown to be associated with poor glycaemic control(Reference Shi and Badi Abou-Samra9). No study has examined the interaction between dietary patterns and medication use in relation to glycaemic control. To address these issues, the aim of this study was to assess the association between dietary patterns using factor analysis, and glycaemic control among Qatari adults with type 2 diabetes.

Methods

Study design and sample

The QBB study is an ongoing population-based cohort study that started in 2012. It recruits those who have lived in Qatar for 15 years or more and are over the age of 18 years. The recruitment of participants was through the Internet, family and friends, or via social media. The study included a self-administered questionnaire and nurse interview. Data about sociodemographic information, lifestyle factors and dietary habits were collected using the questionnaire; data about family history of disease, health conditions and the use of medication were collected during the nurse interview with the participants. The participants were invited to the QBB facility in the Hamad Medical City to have all the health examinations done. Participants’ weight and height were measured using a Seca stadiometer by the research nurses. Furthermore, 60 ml of blood samples was taken and measured for a total of sixty-six biomarkers at the QBB facility(Reference Ibrahim, Qamar and Fituri25).

In the current study, a random sample of 1000 Qatari participants (500 men and 500 women) was selected from the whole database by the QBB management group. The sample size was determined by the fact that QBB provides 1000 samples to research projects conducted at institutions in Qatar for free. Selected participants included those aged 18 years and above with known diabetes who completed the FFQ and had complete exam data.

Outcome variables: poor glycaemic control as defined by HbA1c

Self-reported diabetes and diabetes-related information were determined based on the following questions: ‘Has a doctor ever told you that you had or have diabetes?’; ‘How old were you when your diabetes was first diagnosed?’; ‘Are you being treated for your diabetes? (1) No; (2) Don’t know; (3) Prefer not to answer; (4) Diet; (5) Increased physical activity; (6) Tablets; (7) Insulin.’ and ‘Did you start insulin within one year of your diagnosis of diabetes?’. Blood samples were measured for HbA1c and glucose levels. Poor glycaemic control was defined as HbA1c ≥7·0 %.

Exposure variable: dietary patterns

Dietary intake was assessed by a self-administered computerised FFQ. The dietary questionnaire was asked about dietary habits as well as modifications and consumption frequency of foods and beverages over the previous year(Reference Al Thani, Fthenou and Paparrodopoulos2). The FFQ included 102 food items and was adapted from the European Prospective Investigation into Cancer and Nutrition (EPIC) study; it has not been validated in Qatar. In the analysis, we grouped the items into thirty-eight food groups based on similarities of nutrient profiles or cooking methods between the food items (see online supplementary material, Supplemental Table 1). Frequency intake (times/week) of the thirty-eight food groups was used as the input variable to construct dietary patterns using factor analysis. The following criteria were used in determining the number of dietary patterns: (1) eigenvalue > 1; (2) a scree plot (see online supplementary material, Supplemental Fig. 1) and (3) the patterns should be interpretable based on the Qatar food culture. Varimax rotation was used to help the interpretation of the identified patterns. Participants were assigned pattern-specific factor scores. Scores for each pattern were calculated as the sum of the products of the factor loading coefficients and standardised weekly frequency intake of each food group associated with that pattern.

Covariates

The following variables were considered as covariates: education (low = primary and secondary school; medium = technical or professional school; high = university and postgraduate degree), age, gender, smoking and leisure time physical activity level. Physical activity (metabolic equivalent (MET) h/week) was assessed by the International Physical Activity Questionnaire. Participants with a BMI of 25–29·9 kg/m2 were defined as overweight. Obesity was defined as BMI of ≥30 kg/m2.

Statistical analysis

To compare the differences between groups, the χ 2 test was used for categorical variables and ANOVA for continuous variables. To assess the association between dietary patterns and glycaemic control, multivariable logistic regression was used. Two models were used: model 1 adjusted for age and gender; model 2 further adjusted for smoking, education, physical activity, BMI (continuous) and hypertension. Multiplicative interaction between gender, diabetes medication usage, diabetes duration (<10 years or ≥10 years) and dietary patterns was tested by adding a product term of these variables in a multivariable logistic regression model. A marginsplot command in Stata was used to visualise some of the interactions. Treating diabetes duration as a continuous variable did not change the findings. For simplicity, we categorised diabetes duration as a categorical variable. We did not conduct multiple imputation analysis as only two participants had missing values of food intake in some food items and were treated as no consumption. In total, fourteen men and 116 women had missing information on smoking and treated as non-smoking. We did not adjust for medication in multivariable model due to the interaction between diabetes medication and dietary pattern. All the data analyses were performed using STATA 15 (Stata Corporation), and statistical significance was considered at P-value < 0·05 (two-sided).

Results

The mean age of the participants was 52·3 (sd 11·5) years. Overall, the prevalence of poor glycaemic control was 57·6 % (60·8 % in men and 54·4 % in women) (Table 1). The mean diabetes duration was 12·6 (sd 9·4) years among 788 participants who reported duration. Overall, 27·7 % of the participants were insulin users (25·6 % in men and 29·8 % in women), and 74 % of men and women reported on a diet to prevent/manage chronic conditions. The prevalence of obesity was 44·0 % in men and 70·4 % in women.

Table 1 Sample characteristics by gender among people with diabetes attending Qatar Biobank study (n 1000)

Three dietary patterns were obtained (Table 2). Factor 1 (‘Modern’) was loaded heavily on croissants, white bread and cheese, breakfast cereal, butter, fast food and ice cream. Most of these food items are made from refined grains and sugar. Factor 2 (‘Prudent’) was characterised by a high intake of salad and raw vegetables, fresh fruit and canned or dried fruit and dates, cooked vegetables, yoghurt, and fish. Factor 3 (‘Traditional Food’) was mainly contributed by chicken, meat, fish dishes, biryani and fast food, Asian noodle, red meat, white rice and desserts. The three factors explained 14·5 % of the variance in intake.

Table 2 Factor loadings of dietary patterns

Supplement Table 2 shows the sample characteristics by levels of dietary pattern intakes. Compared with low intake of the modern dietary pattern, high intake was associated with high education levels and supplement use, but participants were less likely to have hypertension, poor glycaemic control or use diabetes and hypertension medications. Participants with high intake of the prudent dietary pattern were more likely to be highly educated, use supplements and frequent intake of fruits and vegetables. Age was inversely associated with modern dietary pattern intake but positively associated with traditional dietary pattern and prudent pattern intake.

The modern dietary pattern was inversely associated with poor glycaemic control in men but not in women after adjusting for age (Table 3). In the maximally adjusted model, for each unit increase of modern dietary pattern score, the OR for poor glycaemic control was 0·86 (95 % CI 0·68, 1·08) in men, 0·76 (95 % CI 0·61, 0·95) in women and 0·80 (95 % CI 0·68, 0·93) in genders combined. No significant associations between the prudent pattern and the traditional pattern with glycaemic control were found.

Table 3 Association between dietary patterns and poor glycaemic control among people with diabetes attending Qatar Biobank study (n 1000)

* Model 1 adjusted for age and gender (except gender-specific models).

Model 2 further for education, smoking, physical activity, BMI (continuous) and hypertension.

P values for interactions between diabetes duration and dietary patterns.

There was a significant interaction between gender, diabetes medication usage, with the modern dietary pattern in relation to poor glycaemic control (P for three-way interaction 0·006) (Fig. 1). In men, the modern dietary pattern was positively (OR 2·35 (95 % CI 1·13, 4·87)) associated with poor glycaemic control among those taking diabetes medication but inversely associated with poor glycaemic control among those without diabetes medication. There was also a significant interaction between the traditional dietary pattern and diabetes medication use in relation to poor glycaemic control in men (P for dietary pattern and diabetes medication two-way interaction in men 0·002); the pattern was positively associated with poor glycaemic control among those with diabetes medication but inversely associated with poor glycaemic control among those without diabetes medication. In women without diabetes medication, the prevalence of poor glycaemic control was low at all levels of dietary patterns intake.

Fig. 1 Interaction between dietary patterns, diabetes medication use and gender in relation to poor glycaemic control among people with diabetes attending Qatar Biobank Study (n 1000). Models adjusted for age, smoking, physical activity, education, BMI (continuous) and hypertension

Discussion

In this cross-sectional study of 1000 people with known diabetes, we constructed dietary patterns using factor analysis and examined the association between the identified dietary patterns and glycaemic control. The modern food pattern characterised by high intake of fast food, sugar and refined grains was inversely associated with poor glycaemic control. There was a significant interaction between the modern food pattern and diabetes medication use in men. No association between the traditional dietary pattern and poor glycaemic control was found in either men or women.

The three main dietary patterns identified in this study are comparable to other patterns identified in the region(Reference Esmaillzadeh, Kimiagar and Mehrabi26Reference Naja, Nasreddine and Itani28). The relationship between age and dietary pattern is also supported by other studies(Reference Naidoo, van Dam and Ng29). For example, young participants were more likely to follow the modern dietary pattern, while older participants were more likely to follow the prudent or traditional patterns. The traditional dietary pattern was characterised by high intake of biryani, chicken/meat/fish-mixed dish, fast food, Asian noodle, red meat and white rice. Those had high intake of traditional intake of traditional pattern were more likely to be smokers but less likely to use dietary supplement. The positive association between education and the modern dietary pattern is also found in other studies(Reference Hidaka, Hester and Bridges30).

The finding of an inverse association between the modern dietary pattern and poor glycaemic control in our study was inconsistent with other studies. In general, a modern dietary pattern characterised by high intake of processed energy-dense food is related to poor glycaemic control(Reference Sadiya and Mnla17). A cross-sectional study in the UAE found that fast-food consumption more than once a week had an OR of 1·83 (95 % CI 1·02, 3·3) for poor glycaemic control among diabetic patients(Reference Sadiya and Mnla17). However, in our study, high consumption of the modern dietary pattern was positively associated with poor glycaemic control among men not taking diabetes medication. It implies that the inverse association between the modern dietary pattern and poor glycaemic control could be due to diabetes medication. In fact, among those with high intake of the modern dietary pattern, the prevalence of insulin use was 30·8 % despite a low mean age (46·8 years). It raises a significant public health message that younger diabetic men take medication to control diabetes but eat more unhealthy food. It is also possible that men who consumed the modern dietary pattern were taking insulin due to poor glycaemic control resulting from the unhealthier diet.

It is worth noting that women who were not taking diabetes medication had a low prevalence of poor glycaemic control (Fig. 1). However, men who were not taking diabetes medication had a high prevalence of poor glycaemic control. This suggests that women who were not taking diabetes medication might have a healthier lifestyle and diet. Despite this gender difference, women still had a high prevalence of poor glycaemic control, which is also seen in other neighbouring countries(Reference Alzaheb and Altemani31).

A high prevalence of poor glycaemic control was observed in our study. This is consistent with findings from other Arabic countries including Kuwait (78·8 %) and Saudi Arabia (67·7 %)(Reference Al-Rasheedi7). The reason for the high prevalence of poor glycaemic control is unknown. It is unlikely due to the lack of diabetes medication or access to the medical service. In fact, a high proportion of the participants were on diabetes medication (only 16·8 % men and 19·2 % women were not on diabetes medication). A high burden of obesity in the region and sedentary behaviour could be the contributing factors. In our sample, the mean leisure time physical activity was very low (15·1 MET h/week in men and 5·8 MET h/week in women). Furthermore, unhealthy dietary habit (e.g. the mean sugar consumption in Qatar was 153 g/d) can also be a significant contributing factor. Sugar, rice and cooking oil are subsidised in Qatar. It is unknown to what degree this policy contributes to the burden of obesity and diabetes. Based on the factor loadings, modern dietary pattern had a high consumption of sugary food (e.g. ice cream, soft drink, dessert and chocolate). The main limitation of our study is the use of the FFQ without specifying portion sizes. We were unable to obtain data about the quantities of consumed foods and unable to adjust for energy intake in the analyses. However, the FFQ was adopted from the EPIC study with the incorporation of local food items. The limitations of FFQ have been well known (e.g. inaccurate measure of nutrients intake and limited number of food items included). On the other hand, FFQ can reflect the long-term habitual intake and can be used to rank individuals in large epidemiological studies. The FFQ used in the EPIC has been shown to have an acceptable relative validity(Reference Kroke, Klipstein-Grobusch and Voss32). The second limitation is the cross-sectional study design. Although we cannot make any conclusion about the causation, the findings of the current dietary patterns have strong public health significance. Third, we did not have detailed information on diabetes medication use (e.g. type and dose). However, the interaction between dietary pattern and diabetes medication use in relation to glycaemic control is unlikely changed if we had detailed information of diabetes medication use. Last, the three patterns explained only 14·5 % of the variance. However, it is common that in population-based studies, dietary patterns using factor analysis cannot explain most of the variation of the whole diet. The amount of variance explained by the dietary patterns depends on the number of food groups used to construct the dietary patterns: the higher the number of food groups, the lower the variance explained by the dietary patterns. We used thirty-eight food groups in our analysis, which is higher than other studies. The thirty-eight food groups most closely represented foods commonly consumed in Qatar. The study’s strength is our detailed information of disease history and lifestyle factors. Furthermore, blood samples were measured for HbA1C.

Conclusion

Poor glycaemic control is common in Qatari adults diagnosed with diabetes. Overall, the modern dietary pattern was inversely associated with poor glycaemic control, and this is likely due to the use of medication. In men who were not taking diabetes medication, the modern dietary pattern was positively associated, while the traditional pattern was inversely associated with poor glycaemic control. Promoting healthy eating should be encouraged especially among those taking diabetes medications.

Acknowledgements

Acknowledgements: We thank Qatar Biobank for providing us with the data needed for this research paper. We are also very grateful to all the participants of Qatar Biobank Study. Financial support: There is no financial support provided. Conflict of interest: The authors have no relevant financial interest in this article. Authorship: Conceptualisation: Z.S. Methodology: Z.S., M.A., A.O., R.K., G.A. and H.B. Formal analysis: Z.S. Resources: Z.S. Writing—original draft preparation: Z.S., M.A., A.O., R.K., G.A. and H.B. Writing, reviewing and editing: Z.S., M.A., A.O., R.K., G.A. and H.B. Supervision: Z.S. Project administration: Z.S. All authors read and approved the final version of the manuscript. Ethics of human subject participation: This study was conducted according to the guidelines laid down in the Declaration of Helsinki. Ethical approval of QBB was obtained from the Ethics Committee of Hamad Medical Corporation in 2011 then continued with the QBB Institutional Review Board (IRB) from 2017. All participants gave written informed consent before participation. The current study was approved under the IRB exempted category (Ex-2019-RES-ACC-0163-0086) by the QBB.

Supplementary material

For supplementary material accompanying this paper visit https://doi.org/10.1017/S1368980020003572

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Figure 0

Table 1 Sample characteristics by gender among people with diabetes attending Qatar Biobank study (n 1000)

Figure 1

Table 2 Factor loadings of dietary patterns

Figure 2

Table 3 Association between dietary patterns and poor glycaemic control among people with diabetes attending Qatar Biobank study (n 1000)

Figure 3

Fig. 1 Interaction between dietary patterns, diabetes medication use and gender in relation to poor glycaemic control among people with diabetes attending Qatar Biobank Study (n 1000). Models adjusted for age, smoking, physical activity, education, BMI (continuous) and hypertension

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