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Physical activity and Baltic Sea diet are interactively related to higher life satisfaction in community-living older Finnish women: OSTPRE-FPS study

Published online by Cambridge University Press:  18 September 2019

Masoud Isanejad*
Affiliation:
Institute of Ageing & Chronic Disease, University of Liverpool, Liverpool L6 8TX, UK Kuopio Musculoskeletal Research Unit, University of Eastern Finland, FI-70211 Kuopio, Finland
Heli Koivumaa-Honkanen
Affiliation:
Department of Psychiatry, University of Eastern Finland, P.O. Box 1627, Kuopio, Finland Departments of Psychiatry: Kuopio University Hospital, Kuopio, Finland; and South-Savonia Hospital District, Mikkeli, Finland
Diana Ruiz de Santiago
Affiliation:
Kuopio Musculoskeletal Research Unit, University of Eastern Finland, FI-70211 Kuopio, Finland
Risto Honkanen
Affiliation:
Department of Orthopaedics and Traumatology, Kuopio University Hospital, FI-70211 Kuopio, Finland
Toni Rikkonen
Affiliation:
Kuopio Musculoskeletal Research Unit, University of Eastern Finland, FI-70211 Kuopio, Finland
Joonas Sirola
Affiliation:
Kuopio Musculoskeletal Research Unit, University of Eastern Finland, FI-70211 Kuopio, Finland Department of Orthopaedics and Traumatology, Kuopio University Hospital, FI-70211 Kuopio, Finland
Heikki Kröger
Affiliation:
Department of Orthopaedics and Traumatology, Kuopio University Hospital, FI-70211 Kuopio, Finland
Arja T. Erkkilä
Affiliation:
Institute of Public Health and Clinical Nutrition, University of Eastern Finland, FI-70211 Kuopio, Finland
*
*Corresponding author: Masoud Isanejad, email m.isanejad@liverpool.ac.uk
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Abstract

A healthful diet and sufficient physical activity (PA) are related to several health outcomes. However, there is a paucity of data on the association of PA and dietary pattern with life satisfaction (LS) in the older adults aged ≥65. The present study investigated the independent and combined association of PA and Baltic Sea diet (BSD) score with LS in older Finnish women. Subjects were 554 women aged 65–72 years from the Osteoporosis Risk Factor and Prevention – Fracture Prevention Study. Women reported the hours and type of PA and lifestyle factors via questionnaires and dietary intake using the 3-d food record. Adequate PA was considered according to WHO recommendation: PA = 0, 0 < PA < 2·5 and ≥2·5 h/week. BSD score was categorised as <13 or ≥13 based on the median score. LS was self-reported using LS scale with four items on current ‘interest’, ‘happiness in life’, ‘ease of living’ and ‘feelings of loneliness’ (range: 4–20, lower score representing higher satisfaction). After adjusting for the confounders, PA was statistically significantly associated with lower LS score (β coefficient = −0·207, P = 0·001), where women with PA ≥ 2·5 h/week had the lowest LS score followed by women with 0 < PA < 2·5 and PA = 0 (Pfor trend = 0·020). Association between BSD and LS was NS. Only among women with BSD score ≥ 13, but not BSD < 13, PA ≥ 2·5 h/week was statistically significantly associated with lower LS score (mean = 9·3), followed by 0 < PA < 2·5 (mean = 9·9) and PA = 0 groups (mean = 11·8) (Pfor trend = 0·033). In conclusion, adequate PA according to WHO recommendation independently and in combination with higher BSD score may be associated with higher LS in older women.

Type
Full Papers
Copyright
© The Authors 2019 

Most of the developed countries have unified the definition of ‘elderly’ or ‘older person’ for chronological age of 65 years and above(1). Nowadays this group of older people is experiencing greater longevity and has an increasing presence among the community in Europe(Reference Hiel, Beenackers and Renders2, Reference Diener and Chan3). Their subjective well-being has faced a significant increase in importance along with the concept of healthy ageing. It has been suggested that a high level of subjective well-being is associated with a decreased mortality and increased life expectancy(Reference Chida and Steptoe4, Reference Andrews and Withey5). In this context, life satisfaction (LS) was further introduced as an indicator of subjective well-being and quality of life(Reference Lukkala, Honkanen and Rauma6). Different assessment tools have been used to reflect the LS in older adults. In previous studies, where LS status was derived by a four-item self-reported LS scale, it has been shown that life dissatisfaction has been associated with different adverse health predictors, such as poor health behaviour, self-reported morbidity(Reference Koivumaa-Honkanen, Kaprio and Honkanen7) and low social support(Reference Koivumaa-Honkanen, Honkanen and Viinamäki8) as well as to be an independent predictor of psychiatric morbidity among general population(Reference Rissanen, Viinamäki and Honkalampi9, Reference Koivumaa-Honkanen, Koskenvuo and Honkanen10). Life dissatisfaction also predicted major depressive disorders and poor mental health(Reference Koivumaa-Honkanen, Honkanen and Viinamäki8, Reference Koivumaa-Honkanen, Koskenvuo and Honkanen10), morbidity, mortality, psychiatric and somatic disability(Reference Koivumaa-Honkanen, Koskenvuo and Honkanen10). In an interview, women who answered one-item question on LS of being unsatisfied had increased risk of cancer, stroke and type 2 diabetes compared with women who were very satisfied with life(Reference Feller, Teucher and Kaaks11).

Although there is much discussion on the factors that determine LS(Reference Amarantos, Martinez and Dwyer12, Reference Rejeski and Mihalko13), relatively little scientific evidence is available regarding the association of modifiable factors such as physical activity (PA) and diet with LS in older adults. Some evidence suggests that chronic illnesses are related to low LS, affective well-being and quality of life in old age(Reference Wikman, Wardle and Steptoe14). Thus, PA interventions could represent an effective behavioural strategy for mental health and enhance the quality of life in older adults(Reference Awick, Ehlers and Aguiñaga15, Reference Elavsky, McAuley and Motl16). However, to our knowledge studies that have assessed the relation of PA and LS in older adults are scarce. According to WHO recommendation, older adults (65 years and older) should have PA of at least 2·5 h/week in order to prevent physical function decline(17).

In addition, consuming varied diet is important for older adults to obtain all the nutrients needed to achieve good physical and mental health and reduced mortality(Reference Sánchez-Villegas, Henríquez-Sánchez and Ruiz-Canela18, Reference Sanchez-Villegas and Martínez-González19). In older adults, higher diet quality has been linked with various health outcomes, including reduced risk of chronic disease, age-related diseases, which potentially results in longevity(Reference Milaneschi, Bandinelli and Corsi20, Reference Edney, Burns and Danthiir21). In prospective studies, a potential protective role of diet quality against depressive symptoms has been suggested(Reference Rienks, Dobson and Mishra22, Reference Skarupski, Tangney and Li23). In a cross-sectional study, men with high adherence to Baltic Sea diet (BSD) were 40 % more likely than men with low adherence to be nondepressed(Reference Lengyel, Tate and Obirek Blatz24).

The Baltic Sea dietary pattern was introduced in 2013 to characterise healthy Nordic diet (Kanerva et al. 2013). A dietary score represents a summary value of consumed foods or nutrients and characterises a measure of a predefined (healthy) diet(Reference Hodge and Bassett25). Higher scores indicate better dietary quality and a higher intake of beneficial foods such as whole grains, vegetables, fruits and fish(Reference Hodge and Bassett25). BSD pattern includes healthy foods such as apples and berries, roots and cabbage, rye, oats and barley, low-fat dairy products, rapeseed oil and fish (e.g. salmon and Baltic herring) typically consumed in the Nordic countries, but it is low in processed meat, red meat and alcohol(Reference Kanerva, Kaartinen and Schwab26). According to the National FINRISK 2007 study, BSD was inversely associated with abdominal obesity among Finnish men(Reference Kanerva, Kaartinen and Schwab26). In Finnish women aged 65–72 years, BSD was associated with better overall physical performance(Reference Ruusunen, Lehto and Tolmunen27). However, there is paucity of data regarding the association of BSD with LS, and previous studies have focused on the association of dietary patterns and depression. The findings of a cross-sectional study design by Lengyel et al. suggested that the daily consumption of vegetables and fruits was associated with better self-rated health and greater LS(Reference Salovaara, Tuppurainen and Kärkkäinen28). Thus, it would be tempting to hypothesise that a healthy diet such as BSD may be associated with higher LS (and better subjective well-being). The objective of the present study was to evaluate both the independent and the combined association of PA and BSD with LS in older women.

Methods

Study population

Data of the present study were collected from the Osteoporosis Risk Factor and Prevention – Fracture Prevention Study (OSTPRE-FPS) (n 750), which was a 3-year intervention to investigate the effect of Ca and vitamin D supplementation on the incidence of falls and fractures among older women. The subjects were selected from the Finnish population-based OSTPRE cohort (n 13 100)(Reference Erkkilä, Jarvinen and Karvonen29). The inclusion criteria for the present study were similar to OSTPRE-FPS, which were age at a minimum of 65 years at the end of November 2002, living in the Kuopio Province at the onset of the trial, not belonging to the former OSTPRE bone densitometry sample and living in community. The willingness to participate in a Ca and vitamin D trial was enquired via a postal enquiry between August and December 2002. Of the 5407 volunteers, 3432 (63·5 %) were randomised into two groups of equal size without stratification or random allocation sequence by an independent statistician. The subjects were assigned to their groups by postal notification according to the randomisation. OSTPRE-FPS was conducted as an open-label trial. In total, 3432 women volunteered to participate in the study, and 750 women were randomly invited into this subsample for participating in detailed examinations including measurement of body composition, clinical and physical examinations and laboratory tests. The measurements took place between February 2003 and May 2004.

Data for PA from the self-reported questionnaire were available for 608 women, of which LS data were available for 562 (missing data due to selecting more than one answer). Data for BSD score components were available for 510 women (missing data due to not returning or answering the separate alcohol consumption questionnaire, which results in missing value for some BSD food components).

All clinical measurements were performed in Kuopio Musculoskeletal Research Unit of the Clinical Research Center, University of Kuopio. All participants provided written consent. The study was approved in October 2001 by the ethical committee of Kuopio University Hospital. The study was registered in Clinical trials.gov by the identification NCT00592917.

Dietary intake

Dietary intake was assessed using a 3-d food record based on the amount of food consumed. The questionnaire and the instructions were sent to participants beforehand and were returned on the visiting day. The 3-d food record questionnaire was collected for three consecutive days including 1 d in the weekend (Saturday or Sunday). In case of uncertainties in the food record, a nutritionist called the participant for additional information(Reference Isanejad, Sirola and Mursu30). Underreporting has previously been reported and none of the participants was excluded due to low energy intake(Reference Isanejad, Sirola and Mursu30). Consumption of food and the intake of nutrients were calculated using Nutrica program (version 2.5; Finnish Social Insurance Institute).

Baltic Sea diet score

The detailed calculation for BSD score has been explained previously in this article(Reference Koivumaa-Honkanen, Honkanen and Viinamaeki31). The BSD score consisted of nine components, of which five were food or food groups and four nutrient intake. The BSD score included positive components: (1) fruits and berries, (2) vegetables (root vegetables, legumes, nuts, mushrooms and vegetable products – potatoes excluded), (3) fibre from cereal products, (4) low-fat milk (skimmed milk and milk with fat content less than 2 %) and (5) total fish intake and a negative component (6) processed meat products (sausage), (7) total fat intake was expressed as a percentage of total energy intake (E %), (8) quality of fat intake was represented by calculating a ratio of PUFA and SFA. (9) Frequency of consumption of alcohol portions (1 portion = 12 g) was asked in a separate questionnaire. Construction of BSD score is summarised in online Supplementary Table S1. To calculate the BSD score, subjects were categorised into quartiles according to the BSD score components. For the positive components, 0 score was given to the lowest quartile, and a score of 3 was given to the highest quartile (Q1 = 0, Q2 = 1, Q3 = 2, Q4 = 3), scorings for negative components were reversed. For alcohol consumption, if alcohol intake was ≤12 g/d, a score of 1 was assigned, else 0 score. BSD score ranged from 0 to 25, higher points indicating higher adherence to BSD. Further, the BSD median intake (BSD < 13 v. BSD ≥ 13) was used as to create dichotomic variable and a balance number of women in each group.

Physical activity

PA data were collected via a self-administered questionnaire where participants were asked to report the type, hours and seasonality (winter and summer) of their PA. Types of PA included walking, cycling, skiing, swimming, aerobic exercise, sport balls, skating, floor ball, gymnastics and rowing. Weekly amount of PA in winter and summer were calculated and the average was used as an estimate of long-term PA. For further categorical analyses, we used the cut-off adapted according to WHO recommendations for the amount of PA per week in older adults(17). Women were categorised into PA = 0 h/week, 0 < PA < 2·5 h/week and PA ≥ 2·5 h/week. We have also introduced a continuous variable of PA as per 1-unit increase.

Life satisfaction

The main outcome of the present study is LS, which was previously strongly linked with depressive symptoms(Reference Koivumaa-Honkanen, Honkanen and Viinamäki8). It has also identified those with increased risk of several adverse health outcomes such as mortality(Reference Rissanen, Viinamäki and Honkalampi9), suicide(Reference Koivumaa-Honkanen, Viinamäki and Honkanen32) and both psychiatric and somatic disability(Reference Andrews and Withey33, Reference Campbell, Converse and Rodgers34). In brief, the scale assesses current interest and happiness in life, ease of living and feeling of loneliness ranging from 1 (‘very’) to 5 (‘not at all’) except for loneliness which ranges from 1 to 4, and it was reversed before computation of the sum of the LS score(Reference Allardt and Uusitalo35).

Confounders

Data regarding lifestyle were self-reported, such as income per month (euros), marital status (married, divorced, widowed and not married), smoking status (never, past and current), medical history, medications (including hormone therapy) and time since menopause(Reference Kärkkäinen, Tuppurainen and Salovaara36). We defined multi-morbidity as the presence of two or more of chronic conditions, including hypertension, hyperlipidaemia, CHD, diabetes, arthritis, osteoporosis, depression, chronic kidney disease and cancer. Height and weight were measured with participants wearing light indoor clothing without shoes, and BMI was calculated (kg/m2). Mobility was defined as normal if women were (a) fully capable of moving, (b) capable of moving but unable to run or (c) capable of walking 1 km at the most. It was defined as restricted when women were (a) capable of walking 100 m at the most, (b) moving only indoors or (c) incapable of moving.

Statistical analysis

Characteristics were compared with LS score quartile categories using Pearson’s χ 2 test for categorical variables and ANOVA for continuous variables. ANOVA was used for testing the LS in the BSD categories according to median score (BSD median score = 13) and three groups of PA. We calculated the standardised β coefficient by testing the regression of PA and BSD with LS score. An interaction term between BSD and PA was introduced into regression analyses with LS as an outcome, and the association was statistically significant in both unadjusted (P = 0·010) and adjusted (P = 0·003) models. PA was categorised into three groups as explained above. In addition, to include a balanced number of participants and ensure the statistical power, we used the median BSD score (= 13) in the categorical analyses.

The P for trend was calculated on a linear trend across PA and BSD interaction groups using the median value in each category as a continuous variable in a multivariable linear regression analysis with LS as continuous dependent variable. Further, univariate ANOVA was conducted to calculate means and standard deviations for LS across the BSD and PA interaction groups.

Analyses were adjusted for age (years) and energy intake (kJ/d), BMI (kg/m2), PA (h/week) (only when BSD was set as exposure), years since menopause, smoking status (current smoker), mobility status (normal and restricted), income per month (euros), multi-morbidity and marital status. All statistical analyses were executed using SPSS software version 24 for windows (IBM Corp.). Differences were considered statistically significant if P < 0·05.

Results

Main characteristics of women according to LS score quartile are presented in Table 1. Women belonging to the highest quartile of LS score (dissatisfied) had lower PA (h/week), had lower alcohol consumption and were less likely to be current smokers. The main PA reported were skiing, walking, cycling, swimming and aerobic exercise, which explained over 90 % of the weekly PA (data not shown), and accordingly they were used to compute the final PA variable in the present study.

Table 1. Characteristics and dietary factors of the participants according to life satisfaction (LS) score quartiles* (Mean values and standard deviations; numbers and percentages)

BSD, Baltic Sea diet.

* Characteristics were compared according to LS quartile as the outcome using Pearson’s χ 2 test for categorical variables and ANOVA for continuous variables.

Alcohol consumption as g/d was computed using the original variable, which was based on portions per d, where one portion was calculated as 12 g alcohol.

All macronutrients are energy adjusted.

Main characteristics are also presented according to PA and BSD groups (online Supplementary Tables S2 and S3). Women with PA = 0 h/week (n 77) had the highest BMI values and LS score but consumed less energy and protein when compared with their peers. Women with PA ≥ 2·5 h/week had lower BMI, lowest LS score (satisfied) and highest BSD score, energy and protein intake. Those with at least median BSD score (BSD ≥ 13) were more physically active and less often smokers.

We did not observe any statistically significant association between BSD as continuous variable or quartile categories with LS score (Table 2). In the analysis of continuous PA, we observed an inverse statistically significant association with LS score (β coefficient = −0·207, se = 0·037 and P for trend = 0·001). The univariate ANOVA subjects with PA ≥ 2·5 h/week showed statistically significant lower LS score (mean = 9·4) followed by 0 < PA < 2·5 (mean = 10·3) and PA = 0 groups (mean = 10·8) (P for trend = 0·020) (Fig. 1).

Table 2. Association of Baltic Sea diet (BSD) score and physical activity (PA) with continuous life satisfaction (LS) score (β Coefficients, standard errors and 95 % confidence intervals; mean values and standard deviations)

* Analyses were adjusted for age (years) and energy intake (kJ/d), BMI (kg/m2), PA (h/week) (only when BSD was set as exposure), years since menopause, smoking status (current smoker), mobility status (normal and restricted), income per month (euros), multi-morbidity and marital status.

Regression analysis was used to compute β coefficients, standard errors and 95 % CI.

Univariate ANOVA was used to compute means and standard deviations.

Fig. 1. Life satisfaction score according to physical activity groups. Values are means, with standard deviations represented by vertical bars. Univariate ANOVA adjusted for age (years), total energy intake (kJ/d), BMI (kg/m2), years since menopause, smoking status (current smoker), mobility status, income per month (euros), multi-morbidity and marital status. P for trend was calculated on a linear trend across physical activity groups using the median value in each group as a continuous variable in a multivariable linear regression analysis with life satisfaction as a continuous dependent variable.

Interaction of Baltic Sea diet and physical activity with life satisfaction

The interaction of PA and BSD was statistically significantly associated with lower LS score (P = 0·010 and full adjusted P = 0·003) (Table 2). Among women with BSD score ≥ 13, those with PA ≥ 2·5 h/week had statistically significantly lower LS score (mean = 9·3) followed by 0 < PA < 2·5 (mean = 9·9) and PA = 0 groups (mean = 11·8) (P for trend = 0·033). Whereas among women with BSD score <13, the association of PA with LS score was not statistically significant (P for trend = 0·069) (Fig. 2).

Fig. 2. Stratified association of physical activity (PA) with life satisfaction score according to Baltic Sea diet (BSD) score median value. Values are means, with standard deviations represented by vertical bars. Univariate ANOVA adjusted for age (years), total energy intake (kJ/d), BMI (kg/m2), years since menopause, smoking status (current smoker), mobility status, income per month (euros), multi-morbidity and marital status. P for trend was calculated on a linear trend across PA groups when analyses were stratified according to the median BSD score (<13 v. ≥13). The number of women in the groups (n 510) was: , PA = 0 h/week (BSD < 13, n 9 and BSD ≥ 13, n 22); , 0 < PA < 2·5 h/week (BSD < 13, n 84 and BSD ≥ 13, n 60); , PA ≥ 2·5 h/week (BSD < 13, n 157 and BSD ≥ 13, n 158).

Discussion

As the population gets older, health outcomes such as LS become progressively more important. The present study is the first to evaluate the independent and combined association of PA and BSD with LS in older women. Women with PA ≥ 2·5 had the lowest LS score (more satisfied) followed by 0 < PA < 2·5 and PA = 0 h/week groups. We did not observe statistically significant association between BSD as continuous variable and LS. In the stratified analysis, we observed that women with PA ≥ 2·5 h/week and BSD ≥ 13 (median) had the lowest LS score, while those with PA = 0 h/week and BSD < 13 had the highest LS score.

WHO recommends at least 150 min (2·5 h) per week of PA for older adults (aged 65 years and above) to maintain their physical fitness, which could promote both physical and mental health(17). The precise mechanisms by which PA may promote subjective well-being are yet to be determined. PA may enhance an individual’s positive emotions, which are an important element in protecting individuals from illnesses and promoting psychological and physical health(Reference Zhu and Mao37). PA appears to decrease symptoms of depression, anxiety and tension and improve mood. Findings from previous studies have suggested that PA was positively associated with quality of life in older adults(Reference Rejeski and Mihalko13, Reference Elavsky, McAuley and Motl16), where quality of life was assessed by the satisfaction with life scale. In addition, a recent study showed that during leisure time involving in at least mild PA (duration/frequency) was a significant predictor of LS for older adults with a high level of loneliness(Reference Fredrickson and Joiner38). LS was measured using Likert scale ranging from 1 (strongly disagree) to 7 (strongly agree), answering to the following question (‘In most ways, my life is close to ideal’). Our findings showed that sufficient PA according to WHO was associated with higher LS.

Studies on diet quality and LS in older adults are scarce. Mediterranean diet has been associated with lower depression rate in older adults(Reference Skarupski, Tangney and Li23). In a young population (17–30 years), LS has been positively associated with higher Mediterranean diet score, non-smoking, physical exercise, eating fruit and limiting fat intake(Reference Kim, Lee and Chun39). It is necessary to note the differences in the population age and LS assessment scales of previous studies. In community-dwelling Canadian older men, better self-rated health and greater LS were strongly associated with the daily consumption of vegetables and fruits(Reference Salovaara, Tuppurainen and Kärkkäinen28). LS was assessed with the following question: ‘How would you describe your satisfaction with life in general at present?’ with a five-point Likert scale ranging from excellent to bad satisfaction. Dietary consumption was estimated with exploratory questions, not with validated measures. In our study, higher BSD score was associated with beneficial health indicators such as less frequent smoking and more PA, but no association with the LS score was observed.

A healthful diet along with sufficient PA according to WHO recommendations can be the optimal way to promote physical and mental health in older people. One explanation for such an association can be that a better diet quality may be an indirect effect of increased health consciousness associated with adoption of regular exercise habit. Our findings suggested a statistically significant interaction between PA and BSD on the LS score. The most advantageous group, that is, those with PA ≥ 2·5 h/week and BSD score higher than median (BSD score ≥ 13) were most satisfied with their life. Although further prospective studies are required, this finding can carry a significant public health message that a combination of higher PA and BSD can be linked to the overall satisfaction of life.

Some limitations of the present study are to be considered. The data were initially collected in 2003–2004. Thus, it may be that some aspects of the data collection would not confer totally with current data collection methods, especially for studies with similar hypotheses. For practical reasons, PA questionnaires are currently the most commonly used assessment method in large population-based cohort studies. However, the agreement between different PA questionnaires for correctly revealing individuals as physically active (e.g. meeting the older adult PA recommendations of >2·5 h/week) is challenging(Reference Grant, Wardle and Steptoe40). In addition, a common limitation to this method is overreporting of PA. This might result in an overestimation of subjects to be allocated as sufficiently physically active when PA is assessed with self-report. Furthermore, although BSD score using computational method has been previously explained(Reference Koivumaa-Honkanen, Honkanen and Viinamaeki31), computing dietary scores such as BSD using the 3-d food record has limitations as it may not provide complete data on the habitual food consumption as well as the frequency of food consumption. It is noteworthy that energy intake among our study population was relatively low, which may be due to underreporting (conscious or unconscious) or reducing of their typical level of food intake(Reference Steene-Johannessen, Anderssen and Van der Ploeg41). However, none of the participants met the threshold to be excluded from analyses in terms of the basal metabolic rate as explained previously(Reference Lührmann, Herbert and Gaster42). As the participants were relatively young and rather healthy older women from a homogenous Finnish population, generalising the results to the entire older adult population should be done with caution. The present study could not capture temporal changes in the previous years, with respect to long-term diet, quality of life or health status, all of which could affect each other. Data analyses were adjusted for several possible confounders, yet the possibility of residual confounding cannot be excluded.

In conclusion, higher PA among older women may be associated with higher LS both independently and combined with a high BSD score. Studies like this may carry an important public health message that a combination of sufficient PA and a healthful diet quality might have beneficial relationship with the overall LS among older women. However, further longitudinal studies are warranted to increase the knowledge on the role of PA and diet in LS.

Acknowledgements

The authors would like to thank the participants, secretaries and nurses involved in the present study, with special thanks to Ville Koistinen (Institute of Public Health and Clinical Nutrition, University of Eastern Finland) for proofreading this manuscript.

The OSTPRE-FPS study was supported by the Finnish Cultural Foundation (Hulda Tossavainen Foundation), Sigrid Juselius Foundation, Academy of Finland and Kuopio University Hospital EVO grant. The present study was supported by grants from Finnish cultural foundation, Juho Vainio foundation (201710012) and Otto A. Malm foundation to M. I.

M. I. and A. T. E. had the main responsibility for data analysis, summarising results into tables and figures and writing the manuscript. Further, H. K.-H., D. R. S., R. H., T. R., J. S. and H. K. revised the manuscript for its scientific content.

The authors declare no conflicts of interest.

Supplementary material

For supplementary material referred to in this article, please visit https://doi.org/10.1017/S000711451900240X

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Figure 0

Table 1. Characteristics and dietary factors of the participants according to life satisfaction (LS) score quartiles* (Mean values and standard deviations; numbers and percentages)

Figure 1

Table 2. Association of Baltic Sea diet (BSD) score and physical activity (PA) with continuous life satisfaction (LS) score (β Coefficients, standard errors and 95 % confidence intervals; mean values and standard deviations)

Figure 2

Fig. 1. Life satisfaction score according to physical activity groups. Values are means, with standard deviations represented by vertical bars. Univariate ANOVA adjusted for age (years), total energy intake (kJ/d), BMI (kg/m2), years since menopause, smoking status (current smoker), mobility status, income per month (euros), multi-morbidity and marital status. Pfor trend was calculated on a linear trend across physical activity groups using the median value in each group as a continuous variable in a multivariable linear regression analysis with life satisfaction as a continuous dependent variable.

Figure 3

Fig. 2. Stratified association of physical activity (PA) with life satisfaction score according to Baltic Sea diet (BSD) score median value. Values are means, with standard deviations represented by vertical bars. Univariate ANOVA adjusted for age (years), total energy intake (kJ/d), BMI (kg/m2), years since menopause, smoking status (current smoker), mobility status, income per month (euros), multi-morbidity and marital status. Pfor trend was calculated on a linear trend across PA groups when analyses were stratified according to the median BSD score (<13 v. ≥13). The number of women in the groups (n 510) was: , PA = 0 h/week (BSD < 13, n 9 and BSD ≥ 13, n 22); , 0 < PA < 2·5 h/week (BSD < 13, n 84 and BSD ≥ 13, n 60); , PA ≥ 2·5 h/week (BSD < 13, n 157 and BSD ≥ 13, n 158).

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