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. 2019 Jun 12;6(1):2055102919854977. doi: 10.1177/2055102919854977

How to promote fruits, vegetables, and berries intake among patients with type 2 diabetes in primary care? A self-determination theory perspective

Anne M Koponen 1,2,, Nina Simonsen 1,2, Sakari Suominen 3,4
PMCID: PMC6563407  PMID: 31218074

Abstract

The results of this study showed the importance of autonomous motivation for healthy eating. Autonomous motivation and female gender were the determinants most strongly associated with fruits, vegetables, and berries intake among patients with type 2 diabetes. Other determinants of fruits, vegetables, and berries intake were high education, high social support, high age, and a strong sense of coherence. Autonomous motivation and self-care competence mediated the effect of perceived autonomy support from a physician on fruits, vegetables, and berries intake. Thus, physicians can promote patients’ fruits, vegetables, and berries intake by supporting their autonomous motivation and self-care competence. The results are in line with self-determination theory.

Keywords: adherence, diabetes, diet, fruit and vegetable intake, self-determination theory

Background

Type 2 diabetes is rapidly increasing all over the world. Approximately 415 million adult people already have diabetes, and this number is expected to rise to 642 million by 2040 (International Diabetes Federation, 2015). In Finland, 550,000 people have diabetes of which 91 percent is type 2 (National Institute for Health and Welfare (THL), 2016). Incidence of type 2 diabetes is related with overweight and obesity, which are major health problems worldwide, increasing also the risk of other chronic diseases such as coronary heart disease and ischemic stroke (Anderson et al., 2003; World Health Organization (WHO), 2018). Healthy eating decreases the risk of type 2 diabetes, and eating regulation is one of the main targets in diabetes care in order to reach glycemic control and to avoid diabetes-related complications (American Diabetes Association, 2014).

Despite many technical breakthroughs in health care, human behavior remains the key factor that determines optimal health outcomes (Ryan et al., 2008). This challenges researchers and health-care personnel to find out effective ways to promote long-term change in patients’ health behavior. Theory-based research is needed in order to recognize behavioral mediators of health outcomes. One important area of focus is patients’ experience and motivation (Ryan et al., 2008).

Eating regulation encompasses, besides weight management, behaviors such as choosing healthful foods (Verstuyf et al., 2012). Patients with diabetes are advised to eat foods rich in fiber such as vegetables, fruits, berries, and wholegrain corn, and low in hard fat, sugar, and salt (Finnish Diabetes Association, 2017). Several studies have shown that the Mediterranean diet is effective in improving glycemic control, weight loss, and good high-density lipoprotein (HDL) cholesterol. The Mediterranean diet is rich in fruits, vegetables, legumes, olive oil, and unrefined cereals, and low in meat and meat products, and, moreover, contains moderate amounts of dairy products (mostly cheese and yogurt), fish, and wine (Ajala et al., 2013; Esposito et al., 2009). Eating healthful food, a regular meal rhythm including breakfast, and avoidance of binge eating has been found to be associated with successful weight maintenance (Elfhag and Rössner, 2005).

Only a minority of patients with type 2 diabetes are likely to be intrinsically motivated to regulate their eating behavior. Intrinsic motivation means that the value of behavior is fully internalized, and motivation to perform the behavior is fully autonomous (self-determined). Intrinsically motivated individuals find healthy eating challenging and interesting, and regulate their eating behaviors because they take pleasure in fixing healthy meals (Pelletier et al., 2004; Ryan and Deci, 2000).

If the initiative for eating regulation comes from the health-care personnel, motivation for change comes outside of self and is not self-determined. Changing eating habits often involves physical and/or psychological discomfort and, thus, in many cases, is not inherently interesting or pleasurable (Verstuyf et al., 2012). Studies have shown that long-term change in eating behavior and maintenance of weight loss is difficult (Madden et al., 2008). However, the value of healthy eating should be internalized because without internalization, permanent behavior change is unlikely to happen (Ryan et al., 2008).

According to self-determination theory (SDT), individuals can be placed on a motivational continuum ranging from amotivation to intrinsic motivation. That is, motivation can vary from amotivation, or unwillingness, to passive compliance, and to active personal commitment (Ryan and Deci, 2000). Amotivated individuals find no interest or motivation to change their eating behavior. Externally regulated individuals are motivated to regulate their eating behavior in order to get rewards (e.g. positive comments) or avoid negative consequences (e.g. criticism). Individuals with introjected regulation feel ashamed or guilty if they eat unhealthy (Pelletier et al., 2004; Ryan et al., 2008). In identified regulation, motivation is based on persons’ belief that eating regulation is good for their health and well-being. In integrated regulation, the value of healthy eating is internalized even more strongly as one important value among other central values in the person’s life. In controlled motivation (external and introjected motivations), the predominant feeling is pressure, often associated with ambivalence, whereas feeling of willingness is more present in more autonomous forms of motivations (identified, integrated, and intrinsic motivations) (Ryan and Deci, 2000; Silva et al., 2014). Therefore, autonomous forms of motivations are more likely to lead to maintenance of change in eating behavior (Ryan et al., 2008).

Are health-care personnel able to promote internalization of the value of healthy eating habits? According to SDT, this is possible if the health-care climate is autonomy-supportive, that is, interaction with health-care personnel satisfies patients’ needs for autonomy (self-determination), competence (effectance), and relatedness (belonging). These three needs are seen to be basic psychological needs universal to all human beings (Ryan and Deci, 2000). Satisfaction of these needs is essential for psychological growth, integrity, and well-being. Feelings of being self-determined, competent, and related to others give sufficient energy to make and maintain the change in lifestyle (Silva et al., 2014; Williams et al., 2004). The SDT model assumes that an autonomy-supportive health-care climate increases patients’ perceived competence and autonomous regulation of behavior leading to maintained behavior change (Silva et al., 2008).

Health-care personnel can support patients’ sense of autonomy and autonomous motivation if they give meaningful rationale for health behavior change, listen to patients’ opinions, consider different options with them, and avoid an authoritarian and guilt-inducing attitude. Competence is best supported by collaborative goal-setting, considering optimal challenges and by giving practical guidance and informative non-judgmental feedback. Sense of relatedness is supported by showing genuine concern, respect, and empathy and by being available in case of need (Ryan et al., 2008; Silva et al., 2014).

Pelletier et al. (2004) found that women with a self-determined regulatory style were more successful in regulating their eating behaviors and more concerned by the quality, instead of quantity, of foods they ate, compared with women who reported a non-self-determined regulatory style. The intervention study by Williams et al. (1996) showed that autonomously motivated participants attended the dieting program more regularly and were more successful in losing weight and maintaining their weight loss at the 23-month follow-up. In addition, autonomy supportiveness of the health-care staff predicted participants’ autonomous motivation for weight loss. The studies by Silva et al. (2010) and Koponen et al. (2018b) showed similar results. Interventions that emphasize a person-centered and autonomy-supportive communication style have been proven to be successful in long-term maintenance of change in eating habits (Samdal et al., 2017). An autonomy-supportive health-care climate has been shown to be associated also with patients’ self-management behavior regarding medical adherence (Williams et al., 1998, 2009) and physical activity (Fortier et al., 2007).

Besides autonomy-supportive health-care climate, autonomous motivation, and self-care competence, many other life-context factors, such as depression and socioeconomic status, may also decrease or increase success in eating regulation. However, in studies based on SDT, the effects of these other factors have been widely overlooked. The prevalence of depressive symptoms has been shown to be higher in patients with type 2 diabetes than in the general population (Ali et al., 2006; Anderson et al., 2001; Nouwen et al., 2010), and an association between depressive symptoms and poor self-management of diabetes has been found in many studies (Ali et al., 2006; De Groot et al., 2001; Dirmaier et al., 2010; Egede and Ellis, 2010; Gonzalez et al., 2007). Low socioeconomic status predicts poor dietary habits (Laaksonen et al., 2007), whereas a strong sense of coherence may enhance competence to cope with chronic illness (Antonovsky, 1987). Significant others in the person’s social context may also enhance success in eating regulation if they are autonomy-supportive (Williams et al., 1998).

This study investigated (a) whether perceived autonomy support (from a physician), autonomous motivation, and self-care competence were associated with fruits, vegetables, and berries intake (FVBI) among patients with type 2 diabetes when the effects of other important life-context factors (perceived health, medication, duration of diabetes, mental health, stress, and social support) were controlled for and (b) whether autonomous motivation and self-care competence mediated the effect of perceived autonomy support on FVBI.

We hypothesized that (a) the positive association between perceived autonomy support, autonomous motivation, self-care competence, and FVBI remains even after the effect of the other important life-context factors is controlled for and (b) autonomous motivation and self-care competence mediate the effect of perceived autonomy support on FVBI.

Methods

Data collection

The respondents were first identified from the register of the Social Insurance Institution of Finland (Kela) in 2011. This Finnish government agency keeps the register of all persons who have entitlement to a special reimbursement for medicines because of chronic diseases such as diabetes. To be included in this study, the persons had to fulfill the following inclusion criteria:

  • (a) Had entitlement to a special reimbursement for medicines used in the treatment of type 2 diabetes (International Classification of Diseases, 10th revision (ICD-10) code, E11) in 2000–2010, and the right was valid in September 2011 and onward;

  • (b) Born between 1936 and 1991 (aged 20–75 years), alive, and had no safety prohibition at the time of the data collection;

  • (c) Finnish as native language;

  • (d) One of the five study municipalities as place of residence.

A total of 7575 persons have fulfilled the inclusion criteria. Based on power analysis, a sample of 5167 persons was collected: 2000 persons from each of the two large municipalities and all persons (i.e. 1167) from the three small municipalities. There were 2962 (57%) men and 2205 women (43%) in the sample, corresponding to the rate of sex in the total population of patients with type 2 diabetes in the study municipalities.

The first version of the questionnaire was tested by a pilot study (n = 50) in May 2011, and the final revised version was mailed to respondents in September 2011. Two reminders to non-respondents were sent out: the first one in October, and the second one with a new copy of the questionnaire in November. The final response rate was 56 percent (range = 54%–59% across municipalities, n = 2866). The response rate was associated with sex and age: women responded slightly more often (57%) than men (54%), and the response rate was highest (63%) in the oldest age group (65–75 years), lower (55%) in the age group of 55–64 years, and lowest (36%) in the age group of 20–54 years.

Ethical considerations

The research plan was accepted by the Ethical Committee of the Hjelt Institute, University of Helsinki, and the permission to conduct the study was received from Kela. The sample was collected by the qualified statistician who worked at Kela, and the questionnaires with an information letter were posted from Kela. The information letter emphasized that participating in this mail survey was voluntary. The respondents gave their consent to participate by the act of returning the questionnaire. Respondents filled questionnaires and returned them directly to the researchers by mail. Each questionnaire was provided with an identification number which was needed in order to check for non-response. Identity of respondents was not revealed to the researchers at any stage of the sample or data collection, and only the researchers saw the content of the questionnaires.

Respondents

The mean age of respondents was 63 (standard deviation (SD) = 8, range = 27–75) years, and 56 percent of them were men. Over half (56%) of the respondents were retired because of old age, 60 percent were married, and 60 percent had less than higher professional education. The majority (83%) of the respondents had a municipal primary-care health center as their primary-care place in diabetes care, and 74 percent used oral medication only for diabetes therapy (Table 1).

Table 1.

Sociodemographic background factors of respondents.

N %
Sex
 Man 1598 55.9
 Woman 1262 44.1
 Total 2860 100
 (Missing) (6)
Age (years)
 27–54 356 12.7
 55–64 1064 37.9
 65–75 1386 49.4
 Total 2806 100
 (Missing) (60)
Marital status
 Single 278 9.8
 Married 1698 59.8
 Cohabiting 191 6.7
 Divorced 421 14.8
 Widowed 251 8.8
 Total 2839 100
 (Missing) (27)
Professional education
 Upper secondary education (vocational school) or less 1671 59.8
 Higher education (college, polytechnic, university) 1121 40.2
 Total 2792 100
 (Missing) (74)
Principal activity
 Working 675 24.0
 Retired because of old age 1567 55.8
 Retired because of chronic illness 386 13.7
 Other 182 6.5
 Total 2810 100
 (Missing) (56)
Diabetes medication
 Oral medication 2043 73.8
 Insulin 145 5.2
 Oral medication + insulin 513 18.5
 Other (e.g. GLP-1 analog or no medical treatment) 66 2.4
 Total 2767 100
 (Missing) (99)
Service provider
 Municipal 2254 83.3
 Private 451 16.7
 Total 2705 100
 (Missing) (161)

GLP-1: glucagon-like peptide-1.

Numbers are based on survey responses. Data are missing due to non-response.

Measures

In this study, FVBI was the sum of intake of fruits, fresh vegetables, cooked vegetables, and berries during the last week (7 days). All measures used in the study are presented in Table 2. Cronbach’s alphas of the measures chosen for the final analyses varied from .75 to .95 and can be regarded acceptable (>.70) or excellent (>.80) (Andresen, 2000).

Table 2.

Measures used in the study.

Perceived autonomy support (from a physician) The short six-item form of Health Care Climate Questionnaire (HCCQ, n.d.) (range: 1 = fully disagree, 5 = fully agree; Cronbach’s alpha reliability α = .95). Example item: I feel that my physician has provided me choices and options (http://www.selfdeterminationtheory.org/).
Autonomous motivation Autonomous Regulation Scale B. Five items from the Treatment Self-Regulation Questionnaire (TSRQ, n.d.) (range: 1 = not at all true, 7 = very true; α = .83). Example item: The reason I follow my diet and exercise regularly is that I personally believe that these are important in remaining healthy (http://www.selfdeterminationtheory.org/).
Self-care competence The four-item Perceived Competence for Diabetes Scale (PCS, n.d.) (range: 1 = fully disagree, 5 = fully agree; α = .93). Example item: I feel confident in my ability to manage my diabetes (http://www.selfdeterminationtheory.org/).
Energy The four-item scale measuring energy during the last 4 weeks from the RAND-36-Item Survey, 1.0 (range = 0%–100%, α = .85). Example item: How much of the time during the past 4weeks did you have a lot of energy? (Hays et al., 1993).
Emotional well-being The five-item RAND-36 scale measuring emotional well-being during the last 4 weeks (range = 0%–100%; α = .84). Example item: How much of the time during the past 4weeks have you felt so down in the dumps that nothing could cheer you up? (Hays et al., 1993).
Sense of coherence The short 13-item scale (range: 1 = weak, 7 = strong; α = .80, five items reversed). Example item: Do you have feeling that you don’t really care about what goes on around you? (1 = very often, 7 = very seldom or never) (Antonovsky, 1987).
Depression Has a doctor ever said that you have or have had depression? 1 = no, 2 = yes
Life stress Experienced stress during the last year (12 months) in the 10 life areas, for example, own health and economic situation (range: 1 = not at all, 4 = very much). Based on the Living with Diabetes Study, School of Population Health, and University of Queensland (Donald et al., 2012).
Social support in diabetes A 12-item scale measuring support and help received from friends, relatives, and health-care personnel (range: 1 = fully disagree, 5 = fully agree; α = .75). Example item: When I feel bored, depressed, or desperate, my friends and family are ready to listen to me. (Toljamo, 1999). The scale is based on social support scales by Brandt and Weinert (1981), Goodenow et al. (1990), Norbeck et al. (1981, 1983), Stewart and Tilden (1995), and Weinert (1987).
Perceived health A single-item scale (range: 1 = very good, 5 = poor). The scale was dichotomized: 1 = good (1–3), 2 = poor (4–5).
Complications At least 1 of the 12 diabetes-related complications (e.g. kidney disease or neuropathy) mentioned (1 = yes, 2 = no). The list of the complications was based on the Living with Diabetes Study, School of Population Health, University of Queensland, and Finnish Diabetes Association (2017) (Donald et al., 2012; http://www.diabetes.fi/).
Fruits, vegetables, and berries intake How often during the last week (7 days) have you eaten (a) fresh vegetables or roots, (b) cooked vegetables or roots, (c) fruits, and (d) berries (range: 1 = not even once, 6 = 2 or more times a day? (Haapola et al., 2009)).

Averaged sum scales for perceived autonomy support, autonomous motivation, self-care competence, energy, emotional well-being, sense of coherence, life stress, social support in diabetes, and FVBI were calculated. The respondent was included in the analysis if she or he had answered at least to 70 percent of the items in the different scales. For example, on the six-item Health Care Climate Questionnaire (measuring perceived autonomy support), the respondent had to answer at least to four items, and the missing values were replaced with the mean counted from the existing values on that scale.

Statistical procedures

Descriptive statistics were estimated and the baseline associations between independent variables, covariates, and dependent variables were tested with Pearson’s chi-square tests, t-tests, or one-way analysis of variance depending on the measurement scale of the variable of interest. In the final analyses, multivariate linear regression analysis was used. The correlations between study variables were explored before further analyses by Pearson’s correlations. The level of statistical significance was set at p < .05. The variables to the regression models were chosen on theoretical and statistical basis. Of the independent variables that measured the same phenomena, such as mental health (energy, emotional well-being, diagnosed depression, and a sense of coherence), only the one that correlated most strongly with FVBI was chosen to the final linear regression analyses in order to avoid multicollinearity problems.

The averaged sum-scale measuring FVBI was normally distributed. The distribution of autonomy support, autonomous motivation, self-care competence, energy, emotional well-being, sense of coherence, and social support scales was skewed to the right, and the distribution of the life stress scale was skewed to the left but without influence on the analysis. Statistical requirements for normal distribution, linearity, and homoscedasticity of regression residuals were fulfilled. List-wise deletion of missing data was used.

In the mediation analyses between perceived autonomy support, autonomous motivation, self-care competence, and FVBI, the instructions reported by Baron and Kenny (1986) were followed. First, the mediator was regressed on the independent variable. Second, the dependent variable was regressed on the independent variable. Third, the dependent variable was regressed on both the independent variable and the mediator. A mediation exists if the predicted associations hold on each step of the analysis and if the effect of the independent variable on the dependent variable is less in the third step than in the second step. The mediation is perfect if the independent variable has no effect when the mediator is controlled. Statistical significance of the mediation was calculated by the Sobel test (Preacher and Leonardelli, 2001). SPSS version 23 was used.

Results

Preliminary analysis

A majority of the respondents (74%) assessed that they had received enough knowledge, advice, and guidance from their principal primary-care health center regarding healthy foods and a suitable diet for them, and a special diet had been recommended to 61 percent of the respondents. Over one-third (37%) reported that it was often or almost always difficult to follow the diet, and almost the same amount (36%) had not followed the recommended diet on a single day during the last week.

During the last week, 53 percent of the respondents had eaten fruits, 45 percent fresh vegetables, 23 percent berries, and 20 percent cooked vegetables at least once a day. FVBI was associated with obesity: 53 percent of those with smallest intake (the third with smallest intake) were obese compared with 44 percent with largest intake (the third with largest intake) (p < .001). Corresponding percentages regarding poor glycemic control (⩾7%) were 70 and 63 percent (p < .01) and regarding high blood pressure (⩾140/90) 45 and 32 percent (p < .001).

The four variables measuring mental health or positive personality orientation (energy, emotional well-being, diagnosed depression, and sense of coherence) correlated moderately or strongly with each other (–.38 to .78). Only the correlation between a sense of coherence and depression was quite weak (–.33). Correlations between the four variables and FVBI were weak. Of these four variables, a sense of coherence correlated most strongly with FVBI (.18, p < .001), whereas Pearson’s correlations between energy, emotional well-being and diagnosed depression, and FVBI were .14 (p < .001), .14 (p < .001), and –.04 (p < .05), respectively. Therefore, a sense of coherence was included as an independent variable to the multivariate linear regression analyses.

The three variables measuring physical health (perceived health, and the number of chronic diseases and diabetes complications) correlated with each other but quite weakly. Of these three variables, perceived health correlated most strongly with FVBI (–.12, p < .001), whereas Pearson’s correlations between the number of chronic diseases and diabetes complications and FVBI were .04 (p > .05) and –.06 (p < .01), respectively. Therefore, perceived health was included as an independent variable to the multivariate linear regression analyses.

Primary analyses

Table 3 shows that autonomous motivation and gender correlated most strongly with FVBI but the correlations were quite modest. In addition, social support, a sense of coherence, and self-care competence correlated positively with FVBI. The positive associations of female gender, autonomous motivation, social support, and a sense of coherence with FVBI remained even after the effects of other central life-context factors were controlled for. Other predictors of FVBI were high education and high age (Table 4). Autonomous motivation mediated the effect of autonomy support from a physician on self-care competence, which further mediated the effect of autonomous motivation on FVBI (Table 5).

Table 3.

Correlation matrix between study variables.

1 2 3 4 5 6 7 8 9 10 11 12
1. Perceived autonomy support
2. Autonomous motivation .24***
3. Self-care competence .31*** .40***
4. Gender
(1 = man, 2 = woman)
−.08*** .11*** −.02 ns.
5. Age .03 ns. .11*** .12*** .03*
6. Education
(1 = low, 2 = high)
−.00 ns. −.03 ns. −.03* −.02 ns. −.09***
7. Duration of diabetes −.02 ns. −.03 ns. −.01 ns. −.02 ns. .19*** −.02 ns.
8. Diabetes medication
(1 = oral medication only, 2 = other)
−.03 ns. −.03 ns. −.03 ns. −.06 *** −.12*** −.01 ns. .17***
9. Perceived health
(1 = good, 2 = poor)
−.22*** −.19*** −.25*** .03 ns. .06*** −.11*** .09*** .11***
10. Sense of coherence .22*** .23*** .31*** −.05 * .10*** .12*** −.05** −.09*** −.31***
11. Stress −.17*** −.08*** −.26*** .23*** −.35*** .06** −.02 ns. .09*** .23*** −.45***
12. Social support .41*** .34*** .33*** .02 ns. .08*** −.05* −.06** −.04* −.22*** .43*** −.28***
13. FVBI .07*** .28*** .17*** .23*** .12*** .12*** −.02 ns. −.04* −.12*** .18*** −.04* .19***

FVBI: fruits, vegetables, and berries intake.

*

p < .05; **p < .01; ***p < .001.

Table 4.

Multivariate linear regression models on the association of perceived autonomy support, autonomous motivation, self-care competence, and other important life-context factors with fruits, vegetables, and berries intake (FVBI).

Beta Beta Beta Beta
Perceived autonomy support from one’s physician −.01 ns. .00 ns. −.01 ns. −.05 ns.
Autonomous motivation .25*** .21*** .20*** .18***
Self-care competence .07*** .08*** .08*** .05 ns.
Gender
(1 = man, 2 = woman)
.21*** .21*** .19***
Age .10*** .10*** .10***
Professional education
(1 = low 2 = high)
.14*** .14*** .12***
Duration of diabetes −.01 ns. .01 ns.
Medication
(1 = oral medication only, 2 = other)
−.01 ns. −.01 ns.
Perceived health
(1 = good, 2 = poor)
−.05* −.04 ns.
Sense of coherence .09***
Stress .06*
Social support .11***
R 2 .08 15 .16 .17
N 2565 2467 2306 2039

ns.p > .05; * p < .05; ***p < .001.

Table 5.

Mediation analysis between perceived autonomy support from a physician, autonomous motivation, self-care competence, and fruits, vegetables, and berries intake (FVBI).

Beta n
1. Perceived autonomy support × autonomous motivation .24*** 2659
2. Perceived autonomy support × self-care competence .31*** 2659
3. Perceived autonomy support × self-care competence .23 *** 2624
Autonomous motivation × self-care competence .35***
Sobel test: z = 10.6, SE = .01, p = .000
1. Autonomous motivation × self-care competence .40*** 2719
2. Autonomous motivation × FVBI .28*** 2691
3. Autonomous motivation × FVBI .25 *** 2653
Self-care competence × FVBI .07**
Sobel test: z = 3.21, SE = .01, p = .001

The bold values indicate mediation, which exists if the predicted associations hold on each step of the analysis and if the effect of the independent variable on the dependent variable is less in the third step than in the second step.

1 = mediator regressed on the independent variable.

2 = dependent variable regressed on the independent variable.

3 = dependent variable regressed on both the independent variable and on the mediator.

**

p < .01; ***p < .001.

Discussion

This study investigated intake of fruits, vegetables, and berries among patients with type 2 diabetes and factors associated with it. The results showed that most of the respondents had received enough information, advice, and guidance on healthy eating in primary care. However, many found it difficult to follow the recommended diet, and all had not eaten fruits, vegetables, or berries every day. High FVBI was associated with less weight, better glycemic control, and lower blood pressure.

Female gender and autonomous motivation were the strongest determinants of FVBI. Also, higher education, social support, higher age, and a sense of coherence were positively associated with FVBI. Autonomy support from a physician was not directly associated with FVBI but through autonomous motivation and self-care competence as could be hypothesized based on SDT process model (Williams et al., 1998).

Previous studies similarly showed that autonomous motivation was the strongest predictor of health behavior among the variables studied in that context: physical activity, success in increasing physical activity, and success in weight management (Koponen et al., 2017, 2018a, 2018b). Autonomous motivation was more strongly associated with FVBI than self-care competence. This result is somewhat inconsistent with the results from other studies that stress the importance of self-efficacy for fruits and vegetable intake (Shaikh et al., 2008). In our study, self-care competence had a mediating role between autonomous motivation and FVBI.

Socioeconomic differences in FVBI have been found also in other studies (Baker and Wardle, 2003; Graham et al., 2018). One possible explanation for these differences is economic insecurity, which in lower socioeconomic positions may limit possibilities to choose healthy foods (Graham et al., 2018). The results of sex differences are in line with earlier studies revealing lower FVBI among men in general (De Irala-Estevez et al., 2000) and as a means to achieve weight control (Mulgrew et al., 2019). The important role of social support on FVBI has also been recognized (Anderson et al., 2003). Different health behaviors may have different predictors. In earlier studies (Koponen et al., 2017, 2018a), it was found that social support was negatively associated with physical activity. Those who need and get more social support in their diabetes care might be the ones who have worse health, and as poor health hinders physical activity, this could explain the negative association between social support and physical activity. Eating, however, possibly occurs more often in a family or work-related setting (Mata et al., 2011) and, thus, social support may be more important for choosing healthy food than for physical activity.

Of the four variables measuring mental health or positive personality orientation (energy, emotional well-being, diagnosed depression, and a sense of coherence), a sense of coherence was most strongly associated with FVBI. This result is in line with the results by Wainwright et al. (2007). However, our earlier studies showed that perceived energy was a better predictor of health behavior regarding physical activity, success in increasing physical activity, and success in weight management than a sense of coherence (Koponen et al., 2017, 2018a, 2018b). Perhaps, it takes more energy to increase one’s physical activity than to change one’s eating habits. Also, physical activity may in turn increase feelings of energy.

Many studies have found higher prevalence of depression among patients with diabetes compared with the whole population and an association between depression and poor self-care (Ali et al., 2006; Anderson et al., 2001; Nouwen et al., 2010). In our data, the prevalence of depression was also higher (22%) than in the whole population (5%) (Koponen et al., 2015; Pirkola et al., 2005). However, of the four affective variables, diagnosed depression was most weakly and a sense of coherence most strongly associated with FVBI. This result supports the view of Fisher et al. (2010) that minor affective variables are better predictors of self-care than a diagnosed major depressive disorder and is in line with results from our previous studies (Koponen et al., 2015, 2017, 2018a, 2018b).

Strengths and limitations of the study

One limitation of surveys is the fact that results are based on self-reports of respondents, and objective measurements to confirm these results are seldom available. In this study, we were able to evaluate the reliability of the results by comparing basic information (diagnosis age, duration of diabetes, medication, HbA1c-values, and body mass index (BMI)), reported by the patients, with register data from the whole country (Valle ja työryhmä, 2010) and with the electronic medical records from the municipal primary-care health centers in the study municipalities (Koponen et al., 2013a, 2013b). This comparison showed that percentiles, means, and medians of the mentioned variables, as reported by the patients in our survey, corresponded well with data from the other sources (Koponen et al., 2013a, 2013b; Valle ja työryhmä, 2010).

The cross-sectional data limit the possibility to make conclusions about directionality of the hypothesized relations. However, it is reasonable to believe that care provided by the primary-care health center had influenced patients’ motivation for FVBI. Almost all respondents (95%) had been at least 1 year and 84 percent over 2 years in care in their current and principal primary-care health center, and 75 percent had a family doctor or a “regular” doctor.

The large sample size, high response rate, high internal consistencies of the measures, and the possibility to control the effect of many important confounding factors were the strengths of this study. Previous studies based on SDT have largely overlooked these confounding factors. Future studies should consider also the role of additional factors in food choice and weight management, such as feelings of fatness and other body image variables (Mulgrew et al., 2019), and factors that help to overcome barriers between an intention to act and adoption of the planned behavior (Vézina-Im et al., 2019).

Conclusion

This study gave additional support for SDT by showing the central role of autonomous motivation for FVBI. Also, the effect of autonomy support from a physician on FVBI was mediated by autonomous motivation and self-care competence as could be predicted by the SDT process model. The results indicate that physicians can promote patients’ FVBI by focusing especially on supporting their autonomous motivation and self-care competence.

Acknowledgments

The authors thank the participants in this study for their cooperation and Ritva Laamanen (PhD) for participating in planning the research project.

Footnotes

Authors’ contributions: AMK, NS, and SS participated in planning the study. AMK formulated the initial hypotheses and conducted the statistical analyses. AMK and NS interpreted the results. AMK wrote the first draft of the manuscript and all the later versions. NS and SS reviewed and revised the manuscript. All the authors approved the final manuscript for submission to the journal.

Availability of data and materials: A license for collecting the data through Kela was granted for the present study. The data are not publicly available but a license can be requested from the data providers.

Declaration of Conflicting Interests: The author(s) declared no potential conflicts of interest with respect to the research, authorship, and/or publication of this article.

Ethical approval and consent to participate: The research plan was accepted by the Ethical Committee of the Hjelt Institute, University of Helsinki, and the permission to conduct the study was received from Kela. The respondents gave their consent to participate by the act of returning the questionnaire.

Funding: The author(s) disclosed receipt of the following financial support for the research, authorship, and/or publication of this article: This work was supported by the Social Insurance Institution of Finland, Samfundet Folkhälsan i Svenska Finland, and the Finnish Cultural Foundation, Varsinais-Suomi Regional Fund.

References

  1. Ajala O, English P, Pinkney J. (2013) Systematic review and meta-analysis of different dietary approaches to the management of type 2 diabetes. The American Journal of Clinical Nutrition 97(3): 505–516. [DOI] [PubMed] [Google Scholar]
  2. Ali S, Stone MA, Peters JL, et al. (2006) The prevalence of co-morbid depression in adults with Type 2 diabetes: A systematic review and meta-analysis. Diabetic Medicine 23(11): 1165–1173. [DOI] [PubMed] [Google Scholar]
  3. American Diabetes Association (2014) Standards of medical care in diabetes–2014. Diabetes Care 37: S14–S80. [DOI] [PubMed] [Google Scholar]
  4. Anderson JW, Kendall CW, Jenkins DJ. (2003) Importance of weight management in type 2 diabetes: Review with meta-analysis of clinical studies. Journal of the American College of Nutrition 22(5): 331–339. [DOI] [PubMed] [Google Scholar]
  5. Anderson RJ, Freedland KE, Clouse RE, et al. (2001) The prevalence of comorbid depression in adults with diabetes. Diabetes Care 24(6): 1069–1078. [DOI] [PubMed] [Google Scholar]
  6. Andresen EM. (2000) Criteria for assessing the tools of disability outcomes research. Archives of Physical Medicine and Rehabilitation 81: S15–S20. [DOI] [PubMed] [Google Scholar]
  7. Antonovsky A. (1987) Unraveling the Mystery of Health: How People Manage Stress and Stay Well. San Francisco, CA: Jossey-Bass. [Google Scholar]
  8. Autonomous Regulation Scale (n.d.) Treatment self-regulation questionnaire (TSRQ). Available at: http://www.selfdeterminationtheory.org
  9. Baker AH, Wardle J. (2003) Sex differences in fruit and vegetable intake in older adults. Appetite 40(3): 269–275. [DOI] [PubMed] [Google Scholar]
  10. Baron RM, Kenny DA. (1986) The moderator–mediator variable distinction in social psychological research: Conceptual, strategic, and statistical considerations. Journal of Personality and Social Psychology 51(6): 1173–1182. [DOI] [PubMed] [Google Scholar]
  11. Brandt PA, Weinert C. (1981) The PRQ-a social support measure. Nursing Research 30(5): 277–280. [PubMed] [Google Scholar]
  12. De Groot M, Anderson R, Freedland KE, et al. (2001) Association of depression and diabetes complications: A meta-analysis. Psychosomatic Medicine 63(4): 619–630. [DOI] [PubMed] [Google Scholar]
  13. De Irala-Estevez J, Groth M, Johansson L, et al. (2000) A systematic review of socio-economic differences in food habits in Europe: Consumption of fruit and vegetables. European Journal of Clinical Nutrition 54(9): 706–714. [DOI] [PubMed] [Google Scholar]
  14. Dirmaier J, Watzke B, Koch U, et al. (2010) Diabetes in primary care: Prospective associations between depression, nonadherence and glycemic control. Psychotherapy and Psychosomatics 79(3): 172–178. [DOI] [PubMed] [Google Scholar]
  15. Donald M, Dower J, Ware R, et al. (2012) Living with diabetes: Rationale, study design and baseline characteristics for an Australian prospective cohort study. BMC Public Health 12: 8. [DOI] [PMC free article] [PubMed] [Google Scholar]
  16. Egede LE, Ellis C. (2010) Diabetes and depression: Global perspectives. Diabetes Research and Clinical Practice 87(3): 302–312. [DOI] [PubMed] [Google Scholar]
  17. Elfhag K, Rössner S. (2005) Who succeeds in maintaining weight loss? A conceptual review of factors associated with weight loss maintenance and weight regain. Obesity Reviews 6(1): 67–85. [DOI] [PubMed] [Google Scholar]
  18. Esposito K, Maiorino MI, Di Palo C, et al. (2009) Adherence to a Mediterranean diet and glycaemic control in Type 2 diabetes mellitus. Diabetic Medicine 26(9): 900–907. [DOI] [PubMed] [Google Scholar]
  19. Finnish Diabetes Association (2017). Available at: http://www.diabetes.fi/
  20. Fisher L, Mullan JT, Arean P, et al. (2010) Diabetes distress but not clinical depression or depressive symptoms is associated with glycemic control in both cross-sectional and longitudinal analyses. Diabetes Care 33(1): 23–28. [DOI] [PMC free article] [PubMed] [Google Scholar]
  21. Fortier MS, Sweet SN, O’Sullivan TL, et al. (2007) A self-determination process model of physical activity adoption in the context of a randomized controlled trial. Psychology of Sport and Exercise 8(5): 741–757. [Google Scholar]
  22. Gonzalez JS, Safren SA, Cagliero E, et al. (2007) Depression, self-care, and medication adherence in type 2 diabetes. Diabetes Care 30(9): 2222–2227. [DOI] [PMC free article] [PubMed] [Google Scholar]
  23. Goodenow C, Reisine ST, Grady KE. (1990) Quality of social support and associated social and psychological functioning in women with rheumatoid arthritis. Health Psychology 9(3): 266–284. [DOI] [PubMed] [Google Scholar]
  24. Graham R, Stolte O, Hodgetts D, et al. (2018) Nutritionism and the construction of “poor choices” in families facing food insecurity. Journal of Health Psychology 23(14): 1863–1871. [DOI] [PubMed] [Google Scholar]
  25. Haapola I, Fogelholm M, Heinonen H, et al. (2009) Ikihyvä Päijät-Häme -tutkimus: perusraportti 2008. (Päijät-Hämeen sosiaali- ja terveysyhtymän julkaisuja; No. 70). Lahti: Päijät-Hämeen sosiaali- ja terveysyhtymä. [Google Scholar]
  26. Hays RD, Sherbourne CD, Mazel RM. (1993) The Rand 36-item health survey 1.0. Health Economics 2(3): 217–227. [DOI] [PubMed] [Google Scholar]
  27. Health Care Climate Questionnaire (HCCQ) (n.d.) Available at: http://www.selfdeterminationtheory.org
  28. International Diabetes Federation (2015) IDF Diabetes Atlas (8th edn). Available at: http://www.diabetesatlas.org/resources/2017-atlas.html
  29. Koponen AM, Simonsen N, Suominen S. (2017) Determinants of physical activity among patients with type 2 diabetes: The role of perceived autonomy support, autonomous motivation and self-care competence. Psychology, Health & Medicine 22(3): 332–344. [DOI] [PubMed] [Google Scholar]
  30. Koponen AM, Simonsen N, Suominen S. (2018. a) Success in increasing physical activity (PA) among patients with type 2 diabetes: A self-determination theory perspective. Health Psychology and Behavioral Medicine 6(1): 104–119. [DOI] [PMC free article] [PubMed] [Google Scholar]
  31. Koponen AM, Simonsen N, Suominen S. (2018. b) Success in weight management among patients with type 2 diabetes: Do perceived autonomy support, autonomous motivation and self-care competence play a role? Behavioral Medicine 44(2): 151–159. [DOI] [PubMed] [Google Scholar]
  32. Koponen AM, Simonsen N, Laamanen R, et al. (2015) Health care climate, perceived self-care competence and glycemic control among patients with type 2 diabetes in primary care. Health Psychology Open. Available at: https://www.ncbi.nlm.nih.gov/pubmed/28070353 [DOI] [PMC free article] [PubMed]
  33. Koponen AM, Simonsen N, Laamanen R, et al. (2013. a) Diabeteksen hyvä hoito–tutkimusprojektin loppuraportti [Good care in diabetes-project: Final Report]. Available at: https://www.kela.fi/documents/10180/1071853/Koponen_Diabeteksen_hyva_hoito.pdf/730f57b4-9342-4d06-a826-efff0205ce7e
  34. Koponen AM, Vahtera J, Virtanen M, et al. (2013. b) Job strain and supervisor support in primary care health centre and glycemic control among patients with type 2 diabetes—A cross-sectional study. BMJ Open 3: e002297. [DOI] [PMC free article] [PubMed] [Google Scholar]
  35. Laaksonen M, Talala K, Martelin T, et al. (2007) Health behaviours as explanations for educational level differences in cardiovascular and all-cause mortality: A follow-up of 60 000 men and women over 23 years. European Journal of Public Health 18(1): 38–43. [DOI] [PubMed] [Google Scholar]
  36. Madden SG, Loeb SJ, Smith CA. (2008) An integrative literature review of lifestyle interventions for the prevention of type II diabetes mellitus. Journal of Clinical Nursing 17(17): 2243–2256. [DOI] [PubMed] [Google Scholar]
  37. Mata J, Silva MN, Vieira PN, et al. (2011) Motivational “spill-over” during weight control: Increased self-determination and exercise intrinsic motivation predict eating self-regulation. Sport, Exercise and Performance Psychology 2011(1): S49–S59. [DOI] [PubMed] [Google Scholar]
  38. Mulgrew KE, Kannis-Dymand L, Hughes E, et al. (2019) Psychological factors associated with the use of weight management behaviours in young adults. Journal of Health Psychology 24(3): 337–350. [DOI] [PubMed] [Google Scholar]
  39. National Institute for Health and Welfare (THL) (2016) Available at: https://www.thl.fi/web/kansantaudit/diabetes/diabeteksen-yleisyys
  40. Norbeck JS, Lindsey AM, Carrieri VL. (1981) The development of an instrument to measure social support. Nursing Research 30(5): 264–269. [PubMed] [Google Scholar]
  41. Norbeck JS, Lindsey AM, Carrieri VL. (1983) Further development of the Norbeck Social Support Questionnaire: Normative data and validity testing. Nursing Research 32(1): 4–9. [PubMed] [Google Scholar]
  42. Nouwen A, Winkley K, Twisk J, et al. (2010) Type 2 diabetes mellitus as a risk factor for the onset of depression: A systematic review and meta-analysis. Diabetologia 53: 2480–2486. [DOI] [PMC free article] [PubMed] [Google Scholar]
  43. Pelletier LG, Dion SC, Slovinec-D’Angelo M, et al. (2004) Why do you regulate what you eat? Relationships between forms of regulation, eating behaviors, sustained dietary behavior change, and psychological adjustment. Motivation and Emotion 28(3): 245–277. [Google Scholar]
  44. Perceived Competence for Diabetes Scale (PCS) (n.d.) Available at: http://www.selfdeterminationtheory.org
  45. Pirkola SP, Isometsä E, Suvisaari J, et al. (2005) DSM-IV mood-, anxiety-and alcohol use disorders and their comorbidity in the Finnish general population. Social Psychiatry and Psychiatric Epidemiology 40(1): 1–10. [DOI] [PubMed] [Google Scholar]
  46. Preacher KJ, Leonardelli GJ. (2001) Calculation for the Sobel test. Available at: http://quantpsy.org/sobel/sobel.htm
  47. Ryan RM, Deci EL. (2000) Self-determination theory and the facilitation of intrinsic motivation, social development, and well-being. American Psychologist 55(1): 68–78. [DOI] [PubMed] [Google Scholar]
  48. Ryan RM, Patrick H, Deci EL, et al. (2008) Facilitating health behaviour change and its maintenance: Interventions based on self-determination theory. European Health Psychologist 10(1): 2–5. [Google Scholar]
  49. Samdal GB, Eide GE, Barth T, et al. (2017) Effective behaviour change techniques for physical activity and healthy eating in overweight and obese adults; systematic review and meta-regression analyses. International Journal of Behavioral Nutrition and Physical Activity 14(1): 42. [DOI] [PMC free article] [PubMed] [Google Scholar]
  50. Shaikh AR, Yaroch AL, Nebeling L, et al. (2008) Psychosocial predictors of fruit and vegetable consumption in adults: A review of the literature. American Journal of Preventive Medicine 34(6): 535–543. e11. [DOI] [PubMed] [Google Scholar]
  51. Silva MN, Markland D, Minderico CS, et al. (2008) A randomized controlled trial to evaluate self-determination theory for exercise adherence and weight control: Rationale and intervention description. BMC Public Health 8(1): 234. [DOI] [PMC free article] [PubMed] [Google Scholar]
  52. Silva MN, Marques MM, Teixeira PJ. (2014) Testing theory in practice: The example of self-determination theory-based interventions. European Health Psychologist 16(5): 171–180. [Google Scholar]
  53. Silva MN, Vieira PN, Coutinho SR, et al. (2010) Using self-determination theory to promote physical activity and weight control: A randomized controlled trial in women. Journal of Behavioral Medicine 33(2): 110–122. [DOI] [PubMed] [Google Scholar]
  54. Stewart MJ, Tilden VP. (1995) The contributions of nursing science to social support. International Journal of Nursing Studies 32(6): 535–544. [DOI] [PubMed] [Google Scholar]
  55. Toljamo M. (1999) Self-care among adults with insulin-treated diabetes mellitus. Doctoral dissertation. University of Oulu, Oulu: Available at: http://herkules.oulu.fi/isbn9514251180/isbn9514251180.pdf [Google Scholar]
  56. Valle ja työryhmä T. (2010) Diabeetikkojen hoitotasapaino Suomessa vuosina 2009–2010 [Glycemic control among patients with diabetes in Finland 2009–2010]. DEHKO-raportti, 5. Diabetesliitto: Available at: http://www.diabetes.fi/files/1488/DEHKO-raportti_2010_5_Diabeetikkojen_hoitotasapaino_Suomessa_vuosina_2009-2010.pdf [Google Scholar]
  57. Verstuyf J, Patrick H, Vansteenkiste M, et al. (2012) Motivational dynamics of eating regulation: A self-determination theory perspective. International Journal of Behavioral Nutrition and Physical Activity 9(1): 21. [DOI] [PMC free article] [PubMed] [Google Scholar]
  58. Vézina-Im L-A, Perron J, Lemieux S, et al. (2019) Promoting fruit and vegetable intake in childbearing age women at risk for gestational diabetes mellitus: A randomized controlled trial. Journal of Health Psychology 24(5): 600–612. [DOI] [PubMed] [Google Scholar]
  59. Wainwright NW, Surtees PG, Welch AA, et al. (2007) Healthy lifestyle choices: Could sense of coherence aid health promotion? Journal of Epidemiology & Community Health 61(10): 871–876. [DOI] [PMC free article] [PubMed] [Google Scholar]
  60. Weinert C. (1987) A social support measure: PRQ85. Nursing Research 36(5): 273–277. [PubMed] [Google Scholar]
  61. WHO (2018) Overweight and obesity. Available at: https://www.who.int/news-room/fact-sheets/detail/obesity-and-overweight
  62. Williams GC, Freedman ZR, Deci EL. (1998) Supporting autonomy to motivate patients with diabetes for glucose control. Diabetes Care 21(10): 1644–1651. [DOI] [PubMed] [Google Scholar]
  63. Williams GC, Grow VM, Freedman ZR, et al. (1996) Motivational predictors of weight loss and weight-loss maintenance. Journal of Personality and Social Psychology 70(1): 115–126. [DOI] [PubMed] [Google Scholar]
  64. Williams GC, McGregor HA, Zeldman A, et al. (2004) Testing a self-determination theory process model for promoting glycemic control through diabetes self-management. Health Psychology 23(1): 58–66. [DOI] [PubMed] [Google Scholar]
  65. Williams GC, Patrick H, Niemiec CP, et al. (2009) Reducing the health risks of diabetes how self-determination theory may help improve medication adherence and quality of life. The Diabetes Educator 35(3): 484–492. [DOI] [PMC free article] [PubMed] [Google Scholar]

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