Abstract
Background
Obesity and mental health issues are two of the most prevalent global public health issues for a significant portion of people. The purpose of this study was to investigate the relationship between obesity indicators and mental health in Tehran-dwelling Iranian adults.
Methods
We conducted a cross-sectional study on healthy Iranian adults using a convenience sampling technique. The short form of the Depression Anxiety and Stress Scale (DASS-21) was used to measure the outcome, and independent variables included body mass index (BMI), waist-to-hip ratio (WHR), waist-to-height ratio (WHtR), body adiposity index (BAI), and a body shape index (ABSI). The relationship between obesity and mental health was investigated using a multivariate logistic regression model. The non-linear dose-response relationships were evaluated using restricted cubic splines (RCS) with three knots. The Benjamini-Hochberg procedure was used to adjust for multiple testing.
Results
In our study of 434 participants, females made up 52% of the participants, with a mean age of 38.57 years. In all, 54.6%, 53.9%, and 56.6% were classified as having anxiety, depression, and stress respectively. Logistic regression analysis showed that the odds of mental health components including anxiety, depression, or stress was not significantly different across the tertiles of the obesity indicators. We observed a significant dose-response relationship between BAI and ABSI and the risk of anxiety (PBenjamini-Hochberg 0.028 > Pdose-response 0.023) and stress (PBenjamini-Hochberg 0.028 > Pdose-response 0.003) but not depression (PBenjamini-Hochberg 0.014 < Pdose-response 0.018). The lowest risk for anxiety was observed in people with a BAI of 28% and ABSI equal to 0.079. The risk of stress seemed to increase beyond an ABSI of 0.086.
Conclusion
Our findings showed no direct linear association between obesity indices and anxiety. However, a dose-response relationship was observed between BAI and ABSI and the risk of anxiety and stress, indicating the need for further investigation.
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Background
One billion people worldwide are estimated to suffer from a mental illness, according to a recent survey [1]. The prevalence of mental illness in the WHO Eastern Mediterranean Region, which includes several Middle Eastern countries, was found to be 10.3% for current prevalence, 4.5% for lifetime prevalence, and 6.0% for period prevalence. In the WHO Eastern Mediterranean Region, which includes various Middle Eastern countries, the current prevalence of mental illness was found to be 10.3%, lifetime prevalence was 4.5%, and period prevalence was 6.0% [2]. These rates are expected to rise due to ongoing wars and conflicts [3]. Depression and anxiety disorders are the most common mental illnesses in the Middle East [2, 3]. Mental disorders in the region were associated with 11.9 million disability-adjusted life years (DALYs) from 1990 to 2013, with Palestine, Djibouti, and Somalia recording the highest [3]. The prevalence of mental health disorders has increased in Iran, as it has in many other countries. According to estimates, there were roughly 20.0% mental health disorders among adults aged 15 and older in 1999 [4] and 23.4% in 2015 [5]. Furthermore, a recent population-based study carried out in Iran between December 2019 and February 2020 on 24,584 adults over the age of 15 discovered that the prevalence of mental disorders was 29.7% [6], indicating a trend in the upward direction over time. Accumulating evidence shows the link between mental and physical health. The fact that physical health may affect mental health and vice versa is becoming more widely recognized [7]. Numerous factors, including an individual’s body composition (being overweight or obese) [8,9,10,11], living with chronic diseases [12], and pandemic diseases such as COVID-19 [13], have been implicated as risk factors for developing mental disorders.
Obesity is a major public health concern, and it is affecting both developed and developing countries [14,15,16]. On a global scale, overweight and obesity were responsible for approximately 120 million disability-adjusted life years (DALYs) and 4.0 million deaths in 2015 [17]. Obesity prevalence tripled between 1975 and 2016, with 13% of adults globally (11% of males and 15% of women) obese in 2016 [18]. Obesity prevalence in Middle Eastern countries was estimated to be 21.17% in a recent comprehensive review and meta-analysis [19]. According to the combined estimate, 22.41% of Iranians were obese. The prevalence of obesity decreased from 22.41% (from 2000 to 2006) to 17.74% (from 2007 to 2013) according to trend analysis. However, the prevalence rose to 25.98% between 2014 and 2020 [19].
For a considerable number of people, obesity and mental health disorders co-occur, making them two of the most common global public health challenges [20, 21]. Obesity is a condition in which there is an abnormal or excessive accumulation of fat in the body, which can be harmful to one’s health. However, relying solely on the body mass index (BMI) to determine obesity may not accurately reflect the diverse characteristics of the population affected by this condition. BMI does not differentiate between fat mass and lean body mass, which can lead to overestimating fat in muscular athletes while underestimating muscle loss in older individuals [22, 23].
New anthropometric indices are being constantly developed to accurately predict body adiposity. The most notable of these are the body adiposity index (BAI) and the body shape index (ABSI).
ABSI, a novel index calculated using waist circumference, BMI, and height to predict visceral fat, was developed by Krakauer and Krakauer [24] with reported superiority in comparison to BMI and waist circumference (WC) for predicting morbidity and mortality. While a study showed that ABSI was not a good index for identifying morbidity-related risk factors [25], some researchers have shown that ABSI is closely related to metabolic diseases [26, 27]. Using WC and height, Bergman and colleagues proposed another novel tool, the body adiposity index (BAI), for evaluating adiposity [28]. With few reports that have confirmed the usefulness of BAI in the Asian population [29,30,31], several studies elsewhere have reported conflicting results [32,33,34,35,36,37,38,39].
Studies on the relationship between obesity and mental health status have been the subject of conflicting reports [8,9,10,11, 40,41,42,43]. Additionally, few studies have assessed this relationship using new anthropometric measures as indicators of obesity [44, 45], and to the best of our knowledge, there are no published reports on the association of obesity with mental health in any population comparing multiple novel anthropometric indices in a dose-response manner. Therefore, this study aimed to investigate the dose-response association between obesity and mental disorders (anxiety, depression, and stress) in Iranian adults.
Methods
Study design and selection of participants
This cross-sectional study was conducted among apparently healthy Iranian subjects between the ages of 20 and 59 years using a convenience sampling technique. These subjects were all residents of Tehran. Furthermore, pregnant and lactating women, diabetics, cancer patients, patients with cardiovascular disease, rheumatoid arthritis, chronic liver disease, and liver disease patients, as well as subjects with a history of stroke and heart attack, were not included in the study. Additionally, subjects suffering from Alzheimer’s and Parkinson’s disease, as well as subjects on special diets, were not included.
Sample size determination
To calculate sample size, we used a 40% prevalence of mental health disorders with a power of 95% and an error margin of 5% using an online sample size calculator: http://www.raosoft.com/samplesize.html. The 40% prevalence estimate used in the sample size calculations in this study was based on the results of a previous investigation of the prevalence of mental health disorders among Iranian adults [46]. Based on this method, we needed 363 subjects for this study.
Mental health
To measure the outcome, we used the Depression, Anxiety, and Stress Scale (DASS-21) in its short form. This self-report scale is specifically designed to evaluate the core symptoms of common mental health disorders, such as depression, anxiety, and stress. It comprises 21 items, with seven items allocated to each domain. Participants assess their experience over the past week and rate each item on a four-point scale. Using the Likert scoring system of 0-1-2-3, scores range from 0 to 63, with lower scores indicating better mental health status [47].
The factor structure and psychometric properties of the Persian version of the Depression Anxiety Stress Scale-21 (P-DASS-21) have been investigated and confirmed as a valid and reliable tool for evaluating depression, anxiety, and stress in non-clinical Iranian samples [47, 48]. The study [47] established the validity of the P-DASS-21 in three ways: confirmatory factor analysis, convergent validity, and discriminant validity. The confirmatory factor analysis tested the adequacy of the three-factor solution of the DASS-21 and yielded an acceptable descriptive fit based on predetermined cutoffs. The DASS-21 scales’ convergent validity was investigated by comparing them to other measures known to measure similar constructs and substantial positive correlations were discovered. The discriminant validity of the DASS-21 Anxiety and Stress scales was examined by comparing diagnostic categories, and the results supported the hypotheses that patients with mood disorders, Generalized Anxiety Disorder (GAD), and Obsessive-Compulsive Disorder (OCD) would score significantly higher on the Anxiety and Stress scales than non-clinical individuals. Furthermore, the P-DASS-21 has been demonstrated to have adequate internal consistency, with Cronbach alpha values of 0.85, 0.85, and 0.94 for depression, anxiety, and stress, and 0.94 for the total DASS-21 score [47]. The intra-class correlation coefficients ranged from 0.77 to 0.89 [47] indicating strong test-retest reliability. Therefore, the DASS-21 has been validated and found to be a reliable tool for evaluating depression, anxiety, and stress in Iranian populations.
Anthropometrics
Body weight was measured with light clothes without shoes using a digital scale (Seca 808, Germany) to the nearest 0.1 kg. Height was measured using a stadiometer (Seca, Germany) to the nearest 0.1 cm. Waist circumference, hip circumference, and neck circumference (all in centimeters) were assessed using non-stretchable tape measures to the nearest 0.1 cm. We then computed BMI by dividing weight (kg) by height (m) squared [49]. WHR was calculated by dividing waist circumference (cm) by hip circumference (cm). WHtR, on the other hand, was calculated by dividing waist circumference (cm) by the individual’s height (cm). BAI and ABSI were calculated by using height, waist and hip circumference, and BMI as below [28, 29, 50]:
Covariates
To evaluate the factors that could affect the outcome, we collected socio-demographic data such as age, gender, education, marital status, smoking habits (individuals who have never smoked or have stopped smoking were classified as never/ former smokers, whereas those who currently smoke were classified as smokers), medical history, use of drugs or supplements, and menopause status. Additionally, we utilized the International Physical Activity Questionnaire (IPAQ) to measure the physical activity level of the subjects. We categorized the participants into three groups based on their activity level: those who did not engage in any physical activity, those who were moderately active (1–3 h per week), and those who were active (more than 3 h per week). The International Physical Activity Questionnaire (IPAQ) has been translated and validated in the Iranian population, with studies reporting good reliability and validity of the questionnaire [51] among healthy Iranian adults. The result of the study indicated that all domains of the questionnaire met the minimum reliability standards (intra-class correlation [ICC] > 0.7), except for Leisure-time physical activity [51].
Statistical analysis
The STATA Statistical Software (StataMP 15. Stata Corp., College Station, TX: StataCorp LP) was used to perform all statistical analyses. The Q-Q plot and the Kolmogorov-Smirnov test were used to determine the data’s normality. The comparison between mental health’s status was done by independent t-test and χ2 tests for continuous and categorical variables, respectively. To investigate the independent relationship between obesity and mental health and to account for potential confounding variables, a multivariate logistic regression model was used. The univariate model was unadjusted. We adjusted for potential covariates including age, sex, educational level, and marital status in model 1. Model 2 was further adjusted for smoking status, occupation, living status, diabetes, and physical activity level. To analyze the trend of ORs for BMI, WHR, WHtR, BAI, and ABSI, each of the variables was analyzed as tertiles in the logistic regression analysis.
We applied restricted cubic splines (RCS) with three knots to determine non-linear relationships in regression models between mental health and BMI, WHR, WHtR, BAI, or ABSI. The RCS models were adjusted for age, sex, education level, marital status, smoking, occupation, living status, diabetes, and physical activity. To account for multiple tests, we applied the Benjamini-Hochberg procedure [52] and set a 2-sided 5% alpha error threshold.
Ethics statement
Those who met the criteria and agreed to participate in the study were included and signed informed consent. The study protocol was approved by the Research Ethics Committee of Tehran University of Medical Sciences (Ethics No: IR.TUMS.MEDICINE.REC.1401.325).
Results
The general characteristics of the study participants, divided into their mental health status, are listed in Table 1. Overall, we included a total of 434 subjects in our study, of whom 237 (54.6%), 234 (53.9%), and 246 (56.6%) were classified as having anxiety, depression, and stress respectively. 52% of our study participants were female. The mean age of our subjects was 38.57 years with a standard deviation of 9.67 years. We observed statistically significant differences between subjects with and without anxiety based on their gender (P = 0.02), level of education (P = 0.007), and employment status (P = 0.001). Subjects grouped under stress were significantly different in terms of age and gender (P = 0.006), marital status (P = 0.04), level of education (P = 0.02), employment (P = 0.004), and smoking status (P = 0.03). The mean of the anthropometric characteristics was not statistically significantly different between any of the groups.
Table 2 shows the results of a logistic regression analysis investigating the relationship between mental health status (anxiety, depression, and stress) and BMI, WHR, WHtR, BAI, and ABSI classified by tertiles. There were no significant differences in the odds of anxiety, depression, or stress across the tertiles of obesity indicators. These non-significant effects remained even after adjusting for potential covariates including age, sex, education level, marital status, smoking, occupation, living status, diabetes, and physical activity. The adjusted p-values (using the Benjamini-Hochberg procedure) in the final model confirmed the non-significant results.
Figs. 1, 2, 3, 4 and 5 show the RCS models after adjusting for age, sex, education level, marital status, smoking, occupation, living status, diabetes, and physical activity. This study failed to observe any significant dose-response association between mental health status and BMI, WHR, or WHtR, which are depicted in Figs. 1 and 2, and 3, respectively. Fig. 4 shows a linear dose-response association between BAI and mental health. We observed a positive dose-response relationship between BAI and the risk of depression (Pdose−response = 0.018), anxiety (Pdose−response = 0.023), and stress (Pdose−response = 0.003). The results for the observed associations were further confirmed by the Benjamini-Hochberg procedure to handle multiple testing adjustments for anxiety (PBenjamini−Hochberg 0.028 > Pdose−response 0.023) and stress (PBenjamini−Hochberg 0.028 > Pdose−response 0.003) but not depression (PBenjamini−Hochberg 0.014 < Pdose−response 0.018).
Fig. 5 also shows a non-linear does-response association between ABSI and mental health. Our study revealed a U-shaped, non-linear inverse dose-response association between ABSI and the risk of anxiety (Pdose−response < 0.001) and stress (Pdose−response = 0.003). We found that an ABSI value of around 0.079 indicated the lowest risk for stress, but the risk of stress seemed to increase beyond an ABSI of 0.086. We confirmed these findings using the Benjamini-Hochberg procedure for both anxiety (Pdose−response; < 0.001 < PBenjamini−Hochberg 0.014) and stress (Pdose−response; 0.003 < PBenjamini−Hochberg 0.028).
Discussion
We observed no evidence of a direct linear association between obesity indices (BMI, WHR, WHtR, BAI, and ABSI) and the risk of mental health disorders among our study subjects. However, we found a dose-response association between anxiety and stress with ABSI and BAI.
There is disagreement over the link between obesity and mental health disorders as some studies show significant effects [53,54,55,56,57] while others do not [56, 58, 59].
Our study’s findings are consistent with earlier studies by Zedler et al. [56] and Grundy et al. [59]. These studies did not find a correlation between mental health disorders and obesity when using various measures such as WHtR and BMI. Additionally, Bruffaerts et al. found no significant association between mental disorders, including anxiety, and BMI [58]. In contrast to our results, a recent study from the Netherlands Mental Health Survey and Incidence Study-2 found obesity, based on BMI, to be a significant risk factor for the onset of anxiety disorders during a three-year follow-up period [53]. Other studies have also observed a significant association between WHR and WHtR and depression and anxiety, particularly among women [56, 57].
Meanwhile, other studies have also suggested a dose-response association between obesity and mental disorders. Ma et al. [60]. , found a significant U-shape correlation between BMI, WHtR, and depression, specifically, people with slightly overweight had the lowest risk of depression. Another meta-analysis of longitudinal studies found that obesity at baseline increased the risk of depression at follow-up, with a pooled odds ratio (OR) of 1.55 [61]. This association was stronger than the association between depression and overweight, suggesting a dose-response gradient [61]. Furthermore, a meta-analysis of 51 studies found that obesity was associated with an increased risk of anxiety, with the effect being stronger among women and in clinical samples [62].
Although the anthropometric indices did not show any linear association with the mental health status, similar to the above studies, we found a non-linear dose-response association between anxiety and stress and ABSI and BAI. According to previous reports, ABSI and BAI, as indicators of obesity and are more accurate predictors of different types of obesity than traditional indices [24, 28]. They haven’t, however, been widely applied in studies on mental health.
As far as we know, no previous research has explored the association between BAI and mental health disorders. Our study revealed a significant correlation between higher BAI scores and increased levels of anxiety, depression, and stress. The Benjamini-Hochberg procedure provided additional evidence supporting the dose-response relationship between BAI and anxiety and stress, but not depression.
To date, there have been limited investigations into the correlation between ABSI and mental well-being, and the results have been inconsistent [44, 45]. In research conducted by Lofti et al. [44], they observed that anxiety was linked to ABSI in women but not men. Previously, Hadi and colleagues [45] conducted a study that did not find any significant association between ABSI and anxiety. The reason for the disparity in findings among these studies could be due to differences in the study population, including sample size and participants. Hadi et al.‘s study [45] which had only 307 participants, focused solely on overweight and obese individuals, with a vast majority (approximately 81%) being female, possibly explaining the lack of correlation. In contrast, our study, similar to Lotfi et al.‘s [44] included participants with varying weight statuses and a larger sample size. Furthermore, we gathered and analyzed data on several potential confounding variables, such as education level, smoking habits, employment status, living situation, diabetes status, and physical activity level, in addition to age and gender, which Hadi et al. only considered.
Some potential biological and psychological factors might explain the observed relationship between the BAI and ABSI and anxiety and stress in our study. BAI and ABSI have a strong correlation with visceral fat [24]. Through a larger production of inflammatory cytokines, including C-reactive protein and interleukin 6, visceral adipose tissue may play a significant role in the link between BAI and ABSI and anxiety and stress [63, 64]. These inflammatory cytokines can increase oxidative damage and systemic inflammation [65]. The pathophysiology of anxiety has been linked to an increase in oxidative stress markers in the brain, such as glutathione and malondialdehyde, in overweight and obese individuals [66]. Chronic stress can also result in dysregulation of the hypothalamic-pituitary-adrenal axis, which results in higher cortisol levels and is linked to obesity and anxiety [67, 68]. Another potential contributing factor is dysregulation of the hypothalamic-pituitary-adrenal system, which would cause the corticotropin hormone to produce an excessive increase in cortisol and result in a persistent hypercortisolism state that causes abdominal obesity and anxiety symptoms [69]. Additionally, it has been suggested that stigmatization, weight discrimination, and a lack of social support may negatively impact obese people, causing psychological stress and the subsequent development of anxiety [70,71,72].
Limitations
Our investigation has some limitations that need to be acknowledged. Firstly, as it is a cross-sectional study, we cannot establish a cause-and-effect relationship. Additionally, it is plausible that anxiety and stress symptoms may have emerged after the onset of obesity. Hence, it is advisable to exercise caution while extrapolating the results to a broader population. Lastly, there is a possibility that there are some unidentified factors that may have influenced the observed link.
Although our study has some limitations, it also has several advantages. It is the first to investigate the correlation between mental illness and obesity by comparing various traditional and novel anthropometric indices. We assessed mental health using validated questionnaires and had trained personnel evaluate the anthropometric traits. Additionally, we considered several potential confounding factors in our analysis and used the Benjamini-Hochberg method to adjust for multiple tests.
Conclusion
Anxiety and stress showed a non-linear dose-response correlation with BAI and ABSI in the adult population of Iran, while no correlation was found with BMI, WHR, or WHtR. Therefore, we propose that further investigation should be conducted on BAI and ABSI in a larger sample size to confirm the causal relationship, determine their usefulness, and integrate them into the standard clinical assessment of anxiety.
Data availability
The datasets used during the current study are available from the corresponding author upon reasonable request.
Abbreviations
- DASS:
-
Depression Anxiety and Stress Scale
- WHR:
-
Waist-to-hip ratio
- WHtR:
-
Waist-to-height ratio
- BAI:
-
Body adiposity index
- ABSI:
-
A body shape index
- RCS:
-
Restricted cubic splines
- WC:
-
Waist circumference
- IPAQ:
-
International Physical Activity Questionnaire
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The authors acknowledge the study participants for their cooperation and assistance.
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Research conception and design were by ATJ, SS-b and KDj. ATJ, BJG, AM, MF, RN, SG, and NB conducted the data collection and entry. Statistical analysis and interpretation of data were performed by ATJ, AJ and SS-b. ATJ wrote the manuscript. Revision of the manuscript for important intellectual content was carried out by SS-b and KDj. All authors read and approved the final version of the manuscript.
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Jibril, A.T., Ganjeh, B.J., Mirrafiei, A. et al. Dose-response association of obesity and risk of mental health among tehranian residents: result of a cross-sectional study. BMC Public Health 24, 1444 (2024). https://doi.org/10.1186/s12889-024-18670-z
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DOI: https://doi.org/10.1186/s12889-024-18670-z