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Research Letter: Body composition in subtypes of depression – a population-based survey

Published online by Cambridge University Press:  03 February 2011

S. E. SAARNI*
Affiliation:
Department of Mental Health and Substance Abuse Services, National Institute for Health and Welfare, Helsinki, Finland Department of Public Health, University of Helsinki, Helsinki, Finland
S. M. LEHTO
Affiliation:
Department of Psychiatry, Kuopio University Hospital and University of Eastern Finland, Kuopio, Finland
J. HINTIKKA
Affiliation:
Department of Psychiatry, Kuopio University Hospital and University of Eastern Finland, Kuopio, Finland
S. PIRKOLA
Affiliation:
Department of Psychiatry, Helsinki University Central Hospital and University of Helsinki, Helsinki, Finland
M. A. HELIÖVAARA
Affiliation:
Department of Mental Health and Substance Abuse Services, National Institute for Health and Welfare, Helsinki, Finland
J. LÖNNQVIST
Affiliation:
Department of Mental Health and Substance Abuse Services, National Institute for Health and Welfare, Helsinki, Finland Department of Psychiatry, Helsinki University Central Hospital and University of Helsinki, Helsinki, Finland
J. SUVISAARI
Affiliation:
Department of Mental Health and Substance Abuse Services, National Institute for Health and Welfare, Helsinki, Finland
S. I. SAARNI
Affiliation:
Department of Mental Health and Substance Abuse Services, National Institute for Health and Welfare, Helsinki, Finland Department of Psychiatry, Helsinki University Central Hospital and University of Helsinki, Helsinki, Finland
*
Address for correspondence: S. E. Saarni, M.D., Ph.D. Department of Mental Health and Substance Abuse Services, National Institute for Health and Welfare, PO Box 30, 00271 Helsinki, Finland (Email: [email protected])
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Abstract

Type
Correspondence
Copyright
Copyright © Cambridge University Press 2011

Introduction

Obesity and mood disorders are major public health problems, which seem to share pathophysiological pathways (Björntorp, Reference Björntorp2001; Anisman, Reference Anisman2009). In longitudinal studies obesity has been shown to predict depression (Roberts et al. Reference Roberts, Deleger, Strawbridge and Kaplan2003; Kasen et al. Reference Kasen, Cohen, Chen and Must2007) and weight gain to be associated with more severe depression (Noppa & Hallstrom, Reference Noppa and Hallstrom1981; Murphy et al. Reference Murphy, Horton, Burke, Monson, Laird, Lesage and Sobol2009). But also contradictory observations are reported (Friedman & Brownell, Reference Friedman and Brownell1995). Regardless of the extensive research in the field, the data on depression-related alterations in detailed body composition are scarce.

The symptom profile of depression modifies the biological correlates of depression. The typical features of melancholic depression are persistent depressive mood, worse symptoms in the morning, early morning awakenings, significant weight loss, psychomotor symptoms and excessive guilt. These features are more often seen in association with dexamethasone non-suppression and elevated cortisol levels (APA, 1994; Gold & Chrousos, Reference Gold and Chrousos2002), which in turn may lead to insulin resistance and deposition of visceral fat even in subjects without psychiatric disorders (Björntorp & Rosmond, Reference Björntorp and Rosmond1999). Some clinical studies have reported elevated visceral fat deposits in depressed patients with hypercortisolaemia (Weber-Hamann et al. Reference Weber-Hamann, Hentschel, Kniest, Deuschle, Colla, Lederbogen and Heuser2002) as well as in patients with melancholic depression (Thakore et al. Reference Thakore, Richards, Reznek, Martin and Dinan1997). Dysthymic disorder features long-lasting, chronically (minimum 2 years) depressed mood with changes in appetite, sleep, concentration, accompanied with fatigue and hopelessness, without fulfilling the diagnostic criteria of major depressive disorder (MDD). Subjects with dysthymia have been observed to have a less dysfunctional hypothalamic–pituitary–adrenal (HPA) axis compared with subjects with MDD (Oshima et al. Reference Oshima, Yamashita, Owashi, Murata, Tadokoro, Miyaoka, Kamijima and Higuchi2000), and therefore they could be considered less likely to develop depression-related adverse metabolic effects including central obesity.

The association between obesity and depression still remains highly controversial (McElroy et al. Reference McElroy, Kotwal, Malhotra, Nelson, Keck and Nemeroff2004). Large-scale epidemiological studies with careful anthropometric measures and psychiatric diagnostics are warranted in order to estimate the association between obesity and subtypes of depressive disorders in unselected populations (Hach et al. Reference Hach, Ruhl, Klose, Klotsche, Kirch and Jacobi2007). Therefore, we examined differences in detailed body composition in subjects without a depressive disorder, MDD with or without melancholic features, or dysthymia in a large unselected population-based sample.

Method

Health 2000 survey

The study data are derived from the Health 2000 survey, which comprehensively represents the Finnish population aged over 29 years (n=8028). The methods and basic results have been published elsewhere (Aromaa & Koskinen, Reference Aromaa, Koskinen, Aromaa and Koskinen2004; Heistaro, Reference Heistaro2008; available at www.terveys2000.fi). The survey consisted of a health interview, a thorough health examination with measurements, laboratory tests, a structured mental health interview and several self-report questionnaires. Data were collected during 2000 and 2001.

Psychiatric diagnostics

A Munich-Composite International Diagnostic Interview (M-CIDI; Wittchen et al. Reference Wittchen, Lachner, Wunderlich and Pfister1998) was performed on those attending the health examination, assessing the 12-month prevalence of major depressive episodes and dysthymia with DSM-IV criteria (APA, 1994; Pirkola et al. Reference Pirkola, Isometsä, Suvisaari, Aro, Joukamaa, Poikolainen, Koskinen, Aromaa and Lönnqvist2005; Saarni et al. Reference Saarni, Saarni, Suvisaari, Reunanen, Heliövaara and Lönnqvist2007). Based on the CIDI, three depressive disorder classes were formed: MDD with melancholic features (n=76), MDD without melancholic features (n=169) and dysthymic disorder (n=147) (including 53 with double depression, of which 23 had MDD with melancholic features).

Body composition

Weight and body composition were measured using the Inbody 3.0 segmental multi-frequency bioimpedance analyser (SMFBIA, Biospace Co. Ltd, South Korea) yielding measures of total body fat-free mass and fat percentage. In comparison with other body composition measurement methods such as dual X-ray analysis, underwater weighing (Malavolti et al. Reference Malavolti, Mussi, Poli, Fantuzzi, Salvioli, Battistini and Bedogni2003; Salmi, Reference Salmi2003; Salmi & Pekkarinen, Reference Salmi and Pekkarinen2004) and 2H2O/Br dilution (Sartorio et al. Reference Sartorio, Malavolti, Agosti, Marinone, Caiti, Battistini and Bedogni2005), the InBody 3.0 has been shown to be a reliable and accurate method for measuring body composition. Height was measured using a wall-mounted stadiometer. Waist circumference was measured standing, half way between the iliac crest and the lowest rib, at the end of light expiration; hip circumference was measured at the point of maximum girth. For obesity [body mass index (BMI) ⩾30 kg/m2] and abdominal obesity (waist circumference ⩾88 cm for women and ⩾102 cm for men) classifications we used the World Health Organization cut-off points (World Health Organization, 1995; Expert Panel on Detection, Evaluation, and Treatment of High Blood Cholesterol in Adults, 2001).

Response rates

The final sample consisted of 7977 individuals alive at the time of the health interview. The M-CIDI was performed with 6038 subjects (95% of those attending the comprehensive health examination). Of these, 33 subjects were excluded due to unreliable reporting, leaving 6005 subjects, which is 75.3% of the original sample. Compared with participants in the M-CIDI, those who only attended the home interview were found to score significantly more symptoms in the Beck Depression Inventory (BDI) and General Health Questionnaire (GHQ-12) (8.34 v. 7.00, p<0.001; 2.17 v. 1.80, p<0.001) They also had a slightly lower BMI (26.44 v. 27.0 kg/m2, p<0.001). There were no significant differences in waist circumference or waist-to-hip ratio between M-CIDI participants and non-participants. Bioimpedance was yielded for 5831 (73.1%) and BMI for 7208 (90.4%) participants.

Statistical methods

Analyses were conducted using the statistical software Stata 8.2 for Windows (StataCorp LP, USA). All analyses accounted for the two-stage sampling design. Post-stratification weights were used to correct for non-response and oversampling of people aged over 80 years (Aromaa & Koskinen, Reference Aromaa, Koskinen, Aromaa and Koskinen2004; Heistaro, Reference Heistaro2008). The confidence intervals (CI) for proportions were constructed using a logit transformation.

We used logistic regression for survey data to analyse the association between different diagnoses, obesity and abdominal obesity. Linear regression for survey data was used to analyse continuous variables. Subjects without MDD or dysthymia were used as the reference category, i.e. the controls could have had some other psychiatric disorder. Regression analyses were conducted in a step-wise manner. All covariates except BMI were entered as dummy variables. Separate models were created for each diagnostic group. No statistically significant gender interaction was found for any of the outcome measures and therefore gender-adjusted models were used.

Results

Subjects with dysthymia were more often abdominally obese (54.9 v. 40.6%, p<0.005), and had greater fat percentage (30.4 v. 27.4%, p<0.005) and fat mass (23.8 v. 21.5 kg, p<0.005) than the reference group. The reference group had greater fat-free mass (53.0 v. 51.1–43.5 kg, p<0.005) than all the depressive disorder groups (data not shown).

In the regression models (Table 1) subjects with dysthymia had an increased likelihood of being abdominally obese (waist circumference >88/102 cm; odds ratio 1.71, 95% CI 1.21–2.41), and an increased fat percentage (β =1.56%, 95% CI 0.33–2.80) and waist-to-hip ratio (β=0.02, 95% CI 0.01–0.03) compared with referents. Adjustment for BMI, education, diet, smoking, antidepressive or antipsychotic medication and income did not change this result. Differences in fat mass became statistically significant after BMI was added to the model. Differences in mean BMI (β=0.32 kg/m2, 95% CI −0.61 to 1.24) or waist circumference (β=1.54 cm, −0.69 to −3.78) were not statistically significant, nor were the differences in fat-free mass, or leg or arm muscle (data not shown).

Table 1. Results from the regression models; body composition in different subtypes of depression

Values are given as β coefficient (95% CI).

MDD, Major depressive disorder; BMI, body mass index; ref, reference; OR, odds ratio; CI, confidence interval.

a Adjusted for age and gender.

b Adjusted for age, gender and BMI.

c Adjusted for: age, gender, BMI, education, income, marital status, diet, smoking, antidepressive and antipsychotic medication.

* p⩽0.05, ** p⩽0.01.

Subjects with melancholic or non-melancholic depression did not differ from the population or from each other on any of the measures.

Discussion

This is the first population-based study comparing detailed body composition between different subtypes of depression. People with depressive disorders did not have increased BMI, but people with dysthymia had increased waist-to-hip ratio, increased fat percentage and were more often abdominally obese than the controls. This was also apparent after adjusting for BMI and for fat mass only after adjusting for BMI, indicating that dysthymia was associated with increased visceral and total body fat rather than body weight. Contrary to our expectations, MDD with melancholic features did not show any tendency for metabolically unfavourable changes in body composition.

Previous studies report contradictory results on the association between obesity and depression (Noppa & Hallstrom, Reference Noppa and Hallstrom1981; Friedman & Brownell, Reference Friedman and Brownell1995; Roberts et al. Reference Roberts, Deleger, Strawbridge and Kaplan2003; Murphy et al. Reference Murphy, Horton, Burke, Monson, Laird, Lesage and Sobol2009). Our results open a new interpretation by finding that some forms of depression are associated not with overweight as such, but with abdominal obesity. This view is supported by clinical studies examining cortisone metabolism or visceral fat deposits in subtypes of depression (Thakore et al. Reference Thakore, Richards, Reznek, Martin and Dinan1997; Oshima et al. Reference Oshima, Yamashita, Owashi, Murata, Tadokoro, Miyaoka, Kamijima and Higuchi2000; Gold & Chrousos, Reference Gold and Chrousos2002; Weber-Hamann et al. Reference Weber-Hamann, Hentschel, Kniest, Deuschle, Colla, Lederbogen and Heuser2002). The finding of increased abdominal obesity has public health importance, as abdominal obesity is especially harmful due to its promotion of insulin resistance, elevated triglycerides, diabetes and hypertension, all of which increase the risk of cardiovascular disease (Reaven, Reference Reaven1988).

Based on previous studies (Oshima et al. Reference Oshima, Yamashita, Owashi, Murata, Tadokoro, Miyaoka, Kamijima and Higuchi2000), we expected that subjects with MDD would have a greater degree of adverse changes in body composition compared with those with dysthymia or those without any psychiatric disorders. Nevertheless, some previous studies suggest that the duration of depressive symptoms may be more relevant with regard to depression-related biological alterations, than symptom severity (Lehto et al. Reference Lehto, Tolmunen, Kuikka, Valkonen-Korhonen, Joensuu, Saarinen, Vanninen, Ahola, Tiihonen and Lehtonen2008). Thus, being exposed to depression-related physiological changes such as HPA hyperactivity for an extended period of time could explain the observed adverse changes in body composition in dysthymia.

Compared with participants in the comprehensive health examination, those who did not attend the M-CIDI had somewhat higher GHQ-12 and BDI symptom scores and lower BMI without significant differences in waist circumference or waist-to-hip ratio. Based on this, it is possible that our findings slightly overestimate the effect of dysthymia on abdominal obesity. On the other hand, as the subjects with MDD or dysthymia were compared with the rest of the population, some control subjects had other psychiatric disorders (Pirkola et al. Reference Pirkola, Isometsä, Suvisaari, Aro, Joukamaa, Poikolainen, Koskinen, Aromaa and Lönnqvist2005). This may have weakened our findings, since schizophrenia and schizo-affective disorder are also associated with abdominal obesity (Saarni et al. Reference Saarni, Saarni, Fogelholm, Heliövaara, Perälä, Suvisaari and Lönnqvist2009).

A particular strength of our study is that both a structured psychiatric interview and detailed body composition measurement were carried out for a large population-based sample. We were also able to adjust for a large set of possible confounders. A weakness in the current study was conducting several statistical tests without correction. However, consistent results from different body composition measures that individuals with dysthymia have greater abdominal obesity but not greater BMI than controls reduces the risk of false positives due to multiple testing. The examination of melancholic and non-melancholic depression and dysthymia as separate subgroups made it possible to test the hypothesis of different body composition profiles among depressed subjects. However, the cross-sectional design of our study does not allow conclusions about possible causal pathways between abdominal obesity and dysthymia. Longitudinal studies with comprehensive psychiatric interviews and body composition measures are needed to further examine the possible interplay between body composition and depressive disorders.

Conclusions

Our results indicate that subtypes of depression, especially dysthymia, should be taken into account and studied separately when investigating associations between depressive disorders, obesity and metabolic adversities. BMI might not capture all metabolically unfavourable changes in body composition in these patient groups.

Acknowledgements

This study was supported by grants from the Foundation for Psychiatric Research and Gyllenberg Foundation (S.E.S.) and an Academy of Finland grant (no. 129434 to J.S.). The funding sources listed had no involvement in the study.

Declaration of Interest

None.

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Figure 0

Table 1. Results from the regression models; body composition in different subtypes of depression