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Depressive symptoms in urban population samples in Russia, Poland and the Czech Republic

Published online by Cambridge University Press:  02 January 2018

Martin Bobak*
Affiliation:
International Centre for Health and Society, University College London, UK
Hynek Pikhart
Affiliation:
International Centre for Health and Society, University College London, UK
Andrzej Pajak
Affiliation:
Jagiellonian University, Krakow, Poland
Ruzena Kubinova
Affiliation:
National Institute of Public Health, Prague, Czech Republic
Sofia Malyutina
Affiliation:
Institute of Internal Medicine, Novosibirsk, Russia
Helena Sebakova
Affiliation:
Regional Public Health Authority, Ostrava, Czech Republic
Roman Topor-Madry
Affiliation:
Jagiellonian University, Krakow, Poland
Yuri Nikitin
Affiliation:
Institute of Internal Medicine, Novosibirsk, Russia
Michael Marmot
Affiliation:
International Centre for Health and Society, University College London, UK
*
Dr Martin Bobak, International Centre for Health and Society, Department of Epidemiology and Public Health, University College London, 1–19 Torrington Place, London WCIE 6BT, UK. Tel: +44(0)20 7679 5613; fax: +44(0)20 7813 0242; e-mail: [email protected]
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Abstract

Background

Relatively little is known about depression in countries that were formerly part of the Soviet Union, especially Russia.

Aims

To investigate the rates and distribution of depressive symptoms in urban population samples in Russia, Poland and the Czech Republic.

Method

A cross-sectional study was conducted in randomly selected men and women aged 45–64 years (n=2151 intotal, response rate 69%) in Novosibirsk (Russia), Krakow (Poland) and Karvina (Czech Republic). The point prevalence of depressive symptoms in the past week was defined as a score of at least 16 on the Center for Epidemiological Studies Depression scale.

Results

In men the prevalence of depressive symptoms was 23% in Russia, 21% in Poland and 19% in the Czech Republic; in women the rates were 44%, 40% and 34% respectively. Depressive symptoms were positively associated with material deprivation, being unmarried and binge drinking. The association between education and depression was inverse in Poland and the Czech Republic but positive in Russia.

Conclusions

The prevalence of depressive symptoms in these eastern European urban populations was relatively high; as in other countries, it was associated with alcohol and several sociodemographic factors.

Type
Papers
Copyright
Copyright © 2006 The Royal College of Psychiatrists 

Mental health problems, including depression, are major contributors to ill health worldwide, and it has been projected that depression will become the most important cause of morbidity (Reference Murray and LopezMurray & Lopez, 1996). Despite the importance of this disorder, the rates and determinants of depression in many non-Western countries are not well understood. This is particularly so in the case of the former Soviet Union. In the wake of high mortality rates (Reference Shkolnikov, McKee and LeonShkolnikov et al, 2001; Reference Men, Brennan and BoffettaMen et al, 2003), including deaths from suicide (Reference MakinenMakinen, 2000; World Health Organization, 2002), questions were raised about depressive disorders in Russia. There are a few estimates of prevalence of depressive disorders or symptoms in Russia (Reference Charman and PervovaCharman & Pervova, 1996; Reference Jose, D'Anna and CafassoJose et al, 1998; Reference Pakriev, Vasar and AluojaPakriev et al, 1998a ), but the reliability of such estimates is unclear and direct comparison with other countries is difficult. To address this lack of evidence, we examined depressive symptoms in three formerly communist countries: Russia, Poland and the Czech Republic.

METHOD

Participants

The data come from the pilot for the Health, Alcohol and Psychosocial factors In Eastern Europe (HAPIEE) study, a cross-sectional study of urban population samples in Novosibirsk (Russia), Krakow (Poland) and the twin city Karvina-Havirov (Czech Republic) in 1999–2000 (Reference Bobak, Room and KubinovaBobak et al, 2004). In each city a sample of men and women aged 45–64 years, stratified by gender and 5-year age group, was randomly chosen from population registers (Czech Republic and Poland) or the electoral list (Russia), and selected individuals were invited to participate in the study. The study was approved by ethical committees in each country and at University College London. The data analysed in this report were collected by a structured questionnaire. In the Czech Republic and Poland the questionnaires were completed during home visits by trained community nurses. In Russia all questionnaires were completed in a clinic, because home visits to the first 50 participants were not successful (mainly because of fears of crime). The questionnaires were translated from English into each of the three languages, back-translated into English and checked for accuracy. Questionnaires were completed by the participants while a trained field worker was available for assistance. A total of 2185 persons completed the questionnaire; the response rates ranged from 65% in Poland to 71% in the Czech Republic (overall response rate 69%). In all countries, response rate increased with age and it was higher among women. We excluded the 34 respondents with missing data on age, gender or depressive symptoms from this analysis.

Measurements

Depressive symptoms were measured using the Center for Epidemiologic Studies Depression scale (CES–D; Reference RadloffRadloff, 1977). This scale consists of 20 self-reported items (presence of symptoms in the past week) and scores range between 0 and 60. The full scale was used in the analysis. The depression score was calculated if at least 16 out of 20 questions were answered; if fewer than 20 questions were answered, the score was recalculated to have values between 0 and 60. Cronbach's α coefficients of internal consistency were 0.86 in Poland, 0.81 in Russia and 0.86 in the Czech Republic.

Several social characteristics were used as covariates. Participants were grouped into four categories of attained education: primary or less, vocational (apprenticeship), secondary (A-level equivalent) and university degree. An indicator of material deprivation was assessed by questions about how often the person's household had difficulties in buying enough food or clothes and in paying bills for housing, heating and electricity; a deprivation score was calculated based on these questions. Experience of unemployment in the past 12 months was recorded for all respondents. Individuals were categorised by marital status as married/cohabiting, single, divorced or widowed. We also assessed crowding (more than one person per room), ownership of selected household items, self-perceived changes in participants’ income and material conditions since 1989, drinking alcohol at least once a week, mean dose of alcohol consumed per drinking session, and smoking (at least one cigarette a day).

Statistical analysis

Depressive symptoms were analysed initially as both continuous (the CES–D score) and dichotomous variables; in the latter, participants with CES–D scores of 16 and above were considered as having depressive symptoms (Reference Beekman, Deeg and van TilburgBeekman et al, 1995; Reference Ferketich, Schwartzbaum and FridFerketich et al, 2000). Because both analyses produced essentially identical results, findings on the dichotomised outcomes are reported here.

The analytical strategy was as follows. First, all relevant variables were cross-tabulated by country and gender, and descriptive measures were calculated. Second, we used logistic regression to estimate age-adjusted odds ratios of depressive symptoms by socio-economic and demographic variables, for men and women separately. Where continuous scales were used for explanatory variables, the results are reported for an increase by one standard deviation. Finally, the odds ratios of depressive symptoms by socio-demographic variables were adjusted for other social covariates, in order to take into account potential confounding. These final multivariate analyses were initially also conducted separately for each country, but there was no statistically significant interaction between country and the covariates, except that the relation between education and depressive symptoms in Russia was different from that of the other two countries (a model with interaction between education and country explained the data statistically significantly better than a model without such interaction). We therefore pooled the data from all three countries and included an interaction term between country and education. The multivariate results are thus based on data from all three countries. All analyses were performed using STATA version 8 for Windows.

RESULTS

Descriptive characteristics of the 2151 individuals with valid data are shown in Table 1. The mean depression score was higher in women than in men in all centres. The prevalence of depressive symptoms was around 20% in men and around 40% in women; in both genders both the score and prevalence were highest in Novosibirsk. The mean ages were similar in all three centres, but there were differences in socio-demographic characteristics and health behaviours between the centres. Most notably, about 60% of Russians rated the changes in their income and material circumstances after 1989 as ‘bad’ or ‘very bad’; this proportion was substantially lower in Poland and the Czech Republic.

Table 1 Characteristics of the study participants

Men Women
Russia (n=476) Poland (n=272) Czech Republic (n=310) P 1 Russia (n=467) Poland (n=280) Czech Republic (n=346) P 1
Depression score: mean (s.d.) 11.4 (7.1) 10.9 (7.7) 10.6 (7.9) 0.35 15.8 (9.8) 14.1 (9.8) 13.7 (10.6) 0.007
Depression score ≥ 16, % 23.1 21.3 18.7 0.34 43.9 39.6 34.1 0.020
Age, years: mean (s.d.) 55.6 (6.2) 55.5 (5.5) 55.1 (5.3) 0.51 55.7 (5.9) 54.5 (5.9) 54.7 (5.6) 0.007
Deprivation score: mean (s.d.) 3.0 (2.3) 1.8 (2.3) 1.7 (2.1) <0.001 3.8 (2.3) 2.0 (2.3) 2.0 (2.2) <0.001
Education, %
    Primary 14.5 6.3 9.7 11.4 8.9 32.1
    Vocational 16.2 19.9 57.1 <0.001 18.2 11.4 37.0 <0.001
    Secondary 34.2 33.8 24.5 44.5 42.5 25.4
    University 35.1 40.1 8.7 25.9 37.1 5.5
Marital status, %
    Married 87.8 80.4 83.6 62.5 64.5 70.8
    Single 2.3 7.8 3.9 0.004 7.1 7.9 2.3 0.004
    Divorced 7.4 6.6 9.7 13.5 15.8 15.3
    Widowed 2.5 5.2 2.9 16.9 11.8 11.6
Unemployment ever, %
    Never 75.3 83.3 85.2 75.6 88.0 66.1
    Up to 3 months in total 7.6 3.4 4.2 0.02 6.2 2.2 7.0 <0.001
    3 months to 1 year in total 7.8 6.7 5.8 7.9 7.6 9.9
    More than 1 year in total 9.3 6.7 4.8 10.3 2.2 17.1
Crowding: mean (s.d.)2 1.3 (0.5) 1.2 (0.6) 1.1 (0.5) <0.001 1.3 (0.6) 1.2 (0.6) 1.1 (0.6) <0.001
Impact of changes since 1989 on income, %
    Very good 0.8 6.3 4.9 0.2 3.6 3.0
    Good 16.8 23.9 29.7 13.3 20.4 27.8
    No change 20.2 29.8 33.3 <0.001 19.3 32.0 38.8 <0.001
    Bad 50.4 32.0 22.2 53.1 39.3 22.5
    Very bad 11.8 8.1 9.8 14.1 4.7 8.0
Number of household items: mean (s.d.)3 4.69 (1.32) 4.54 (1.54) -4 0.22 4.31 (1.14) 4.25 (1.48) -4 0.51
Smoking, % 50.3 39.0 43.9 0.01 4.5 34.4 29.0 <0.001
Drinking at least weekly, % 35.7 28.7 66.1 <0.001 4.9 7.5 22.5 <0.001
Dose of alcohol: mean
    0-19.9 g 13.2 36.3 21.4 42.6 69.6 48.1
    20-39.9 g 26.9 31.8 40.8 <0.001 50.1 23.4 36.8 <0.001
    40-79.9 g 35.1 21.7 27.4 6.4 5.9 11.3
    80+ g 24.8 10.1 10.4 0.9 1.1 3.9

After controlling for age, the presence of depressive symptoms was significantly associated with self-assessed material deprivation in all centres in both genders (Table 2). The association with education differed by country: there was an inverse relationship in Polish and Czech samples (although it did not reach statistical significance in men), but there was no clear association in Russian men and the association in Russian women was positive. Unmarried men, but not women, tended to have higher rates of depressive symptoms, but the pattern and significance differed between countries. There was no clear relationship between depressive symptoms and history of unemployment. People who drank large amounts of alcohol per drinking occasion had higher rates of depressive symptoms, although the country-specific estimates were not statistically significant. Among other variables, not reported in the table, negative rating of the changes after 1989 tended to be related to higher prevalence of depressive symptoms, but the relationship was not statistically significant in Russia or in Czech women. Depressive symptoms were not related to crowding, smoking, or drinking more often than once a week.

Table 2 Age-adjusted odds ratios for depressive symptoms (score of 16 or over on the Center for Epidemiologic Studies Depression scale)

Russia OR (95% CI) Poland OR (95% CI) Czech Republic OR (95% CI)
Men
    Deprivation per 1 s.d. increase 1.41 (1.13-1.76) 1.86 (1.39-2.47) 1.65 (1.22-2.23)
    Education
        Primary (baseline) 1 1 1
        Vocational 0.89 (0.40-2.00) 0.48 (0.14-1.59) 0.98 (0.37-2.58)
        Secondary 0.93 (0.46-1.85) 0.46 (0.15-1.42) 0.82 (0.28-2.40)
        University 1.36 (0.70-2.65) 0.34 (0.11-1.07) 0.69 (0.17-2.77)
        P for trend 0.22 0.10 0.47
    Marital status
        Married (baseline) 1 1 1
        Single 1.51 (0.39-5.87) 3.86 (1.52-9.90) 0.95 (0.20-4.52)
        Divorced 2.61 (1.27-5.36) 1.07 (0.32-3.52) 2.11 (0.90-4.92)
        Widowed 2.54 (0.78-8.24) 4.35 (1.39-13.67) 2.53 (0.60-10.61)
    Unemployment ever
        Never (baseline) 1 1 1
        Up to 3 months in total 1.06 (0.46-2.44) 0.59 (0.07-5.02) 2.04 (0.60-6.93)
        More than 3 months in total 1.37 (0.78-2.40) 2.26 (0.99-5.16) 1.24 (0.50-3.03)
        P for trend 0.28 0.07 0.48
    Mean dose of alcohol
        0-19.9 g 1 1 1
        20-39.9 g 1.04 (0.49-2.18) 0.52 (0.24-1.14) 0.78 (0.34-1.80)
        40-79.9 g 0.94 (0.46-1.94) 0.74 (0.33-1.67) 1.26 (0.55-2.93)
        80+ g 1.71 (0.83-3.54) 1.42 (0.55-3.69) 1.98 (0.72-5.44)
        P for trend 0.12 0.76 0.12
Women
    Deprivation per 1 s.d. increase 1.46 (1.20-1.77) 2.14 (1.61-2.83) 1.99 (1.53-2.59)
    Education
        Primary (baseline) 1 1 1
        Vocational 1.49 (0.72-3.10) 1.06 (0.36-3.13) 0.90 (0.53-1.55)
        Secondary 1.58 (0.82-3.02) 0.43 (0.18-1.05) 0.65 (0.35-1.19)
        University 2.00 (1.00-4.00) 0.23 (0.09-0.58) 0.29 (0.08-1.07)
        P for trend 0.06 <0.001 0.04
    Marital status
        Married (baseline) 1 1 1
        Single 1.51 (0.73-3.12) 0.85 (0.33-2.18) 0.28 (0.03-2.36)
        Divorced 1.01 (0.58-1.76) 2.16 (1.11-4.21) 1.86 (1.01-3.40)
        Widowed 1.65 (0.99-2.75) 1.57 (0.72-3.40) 1.82 (0.90-3.68)
    Unemployment ever
        Never (baseline) 1 1 1
        Up to 3 months in total 1.55 (0.72-3.33) 1.13 (0.18-6.94) 1.39 (0.58-3.32)
        More than 3 months in total 1.49 (0.91-2.44) 1.66 (0.68-4.05) 1.10 (0.66-1.83)
        P for trend 0.09 0.27 0.68
    Mean dose of alcohol
        0-19.9 g 1 1 1
        20-39.9 g 1.35 (0.91-1.99) 0.91 (0.50-1.65) 0.90 (0.55-1.50)
40+ g 2.00 (0.95-4.19) 2.26 (0.85-5.82) 1.53 (0.80-2.92)
        P for trend 0.04 0.29 0.36

Since socio-demographic characteristics are mutually correlated, we estimated their independent association with depressive symptoms in the pooled data (Table 3). After controlling for covariates, higher rates of depressive symptoms were found in women, people with higher levels of material deprivation, those divorced or widowed, and in people who consumed high doses of alcohol per drinking session. There was an interaction between education and country: higher education was associated with lower rates of depressive symptoms in the Czech Republic and Poland but with higher rates in Russia (P=0.003 for interaction). Unemployment, crowding and perception of changes in income since 1989 were not associated with depressive symptoms in the pooled data.

Table 3 Odds ratios of depressive symptoms by socio-demographic variables in the pooled data, adjusted for age, gender, country and all variables in table

OR (95% Cl)
Gender
    Men (baseline) 1
    Women 2.91 (2.20-3.86)
Deprivation per 1 s.d. increase 1.52 (1.36-1.71)
Marital status
    Married (baseline) 1
    Single 1.12 (0.71-1.78)
    Divorced 1.40 (1.02-1.91)
    Widowed 1.85 (1.30-2.65)
Unemployment ever
    Never (baseline) 1
    Up to 3 months in total 1.06 (0.69-1.63)
    More than 3 months in total 0.97 (0.73-1.28)
    P for trend 0.89
Crowding per 1 s.d. increase 0.93 (0.83-1.04)
Changes in income since 1989
    Very good/good (baseline) 1
    No change 0.79 (0.58-1.07)
    Bad/very bad 1.10 (0.82-1.46)
    P for trend 0.33
Smoking
    No (baseline) 1
    Yes 0.99 (0.77-1.26)
Mean dose of alcohol per session
    0-19.9 g (baseline) 1
    20-39.9 g 1.02 (0.80-1.30)
    40-79.9 g 1.30 (0.93-1.81)
    80+ g 2.01 (1.32-3.05)
    P for trend 0.003
Education1
    Russia
        Primary (baseline) 1
        Vocational 1.22 (0.70-2.12)
        Secondary 1.27 (0.78-2.06)
        University 1.99 (1.20-3.28)
        P for trend 0.004
    Poland
        Primary (baseline) 1
        Vocational 0.62 (0.22-1.69)
        Secondary 0.44 (0.17-1.11)
        University 0.36 (0.14-0.92)
        P for trend 0.02
    Czech Republic
        Primary (baseline) 1
        Vocational 0.82 (0.50-1.33)
        Secondary 0.74 (0.43-1.29)
        University 0.56 (0.22-1.41)
        P for trend 0.16

DISCUSSION

To our knowledge, these are the first estimates of the frequency of depressive symptoms in the general population in Russia that have been obtained using an internationally accepted instrument, and they are directly comparable with rates in other countries. We found that the prevalence of depressive symptoms was only marginally higher in Russia than in Poland and the Czech Republic. Depressive symptoms were associated with a number of personal characteristics; the association of depressive symptoms with education differed between countries.

Limitations of the study

Several limitations of the study need to be considered. First, the CES–D scale, like other screening instruments, is not perfect in measuring clinical depression; it has relatively low specificity (Reference Mulrow, Williams and GeretyMulrow et al, 1995), and our definition of depressive symptoms therefore includes mainly minor depression and psychological distress, rather than major or severe depression (Reference Beekman, Deeg and van TilburgBeekman et al, 1995). Although the CES–D is probably the most widely used and extensively validated instrument for the assessment of depressive symptoms in many countries (Reference Beekman, Deeg and van TilburgBeekman et al, 1995; Reference Mulrow, Williams and GeretyMulrow et al, 1995), including Poland (Reference Dojka, Gorkiewicz and PajakDojka et al, 2003) and the Czech Republic (Reference OseckaOsecka, 1999), it has not, to our knowledge, been used or formally validated in Russia. In theory, Russians might report depressive symptoms differently from other nationalities, but given the good internal consistency of the CES–D scale and the similarity of the distribution of depressive symptoms in the three populations, such a bias is unlikely.

Second, both depressive symptoms and the covariates were self-reported. Some of the covariates are subjective, such as the rating of the changes after 1989 and, to a lesser extent, deprivation. It is therefore possible that some cross-contamination between reporting of depressive symptoms and covariates occurred, which might have led to overestimation of the strength of the relationships. For example, depressed people might view the changes over the past 10 years more negatively than those without symptoms of depression. Although the weak association between depression and unemployment argues against a major presence of this bias, the cross-sectional design is certainly vulnerable to it.

Third, it is impossible to ascertain temporality in cross-sectional studies. For example, being divorced can lead to depression, but depression can also lead to marital problems and result in divorce. In our study, this situation could have influenced the relationship between depressive symptoms and marital status and, in theory, with deprivation. However, given that deprivation relates to the whole household, a direct effect of depression on material deprivation is probably limited.

Fourth, non-response bias should also be considered. In general, people who participate in health surveys are healthier than those who do not. Thus, the levels of depressive symptoms in our study are probably underestimated. However, assuming that the differences between respondents and non-respondents were similar in all countries, the comparisons between the populations are valid, even if the absolute prevalence rates were underestimated. The non-response bias should not affect the association between depressive symptoms and socio-demographic factors within the study sample.

Fifth, the sample size was relatively small, particularly for analyses conducted separately by gender and country. Given the numerous comparisons, some of the weaker associations within centres need to be interpreted cautiously. Results of the analyses of the pooled data, however, were based on sufficient numbers of participants, and should be statistically reliable.

Finally, it is possible that the selected urban centres were not entirely representative of the whole countries. Available data suggest that Novosibirsk is fairly typical of Russia in terms of social conditions, health and alcohol intake (Reference Nikitin and GerasimenkoNikitin & Gerasimenko, 1995; Reference NemtsovNemtsov, 2000; Reference Tchernina, Cornia and PanicciaTchernina, 2000). Compared with the national average, rates of ill health and deprivation in Krakow may be somewhat underestimated and in Karvina somewhat overestimated, but overall the health patterns in Novosibirsk, Krakow and Karvina-Havirov probably approximate well those for Russia, Poland and the Czech Republic respectively. It is therefore likely that the differences between the three populations reflect differences between countries.

Differences in depressive symptoms between the three populations

In both genders, the prevalence and mean score of depressive symptoms were somewhat higher in Russia than in the Czech Republic and Poland. The general turmoil associated with the social and economic transition affected Russia considerably more than Poland and the Czech Republic (Reference Klein and PomerKlein & Pomer, 2001; UNICEF, 2003), and such social upheaval can plausibly lead to psychological distress. In the light of the reported high – and increasing – levels of alcohol problems, suicide and poor general health status (Bobak et al, Reference Bobak, Pikhart and Rose2000, Reference Bobak, Room and Kubinova2004; Reference MakinenMakinen, 2000; Reference Shkolnikov, Cornia, Cornia and PanicciaShkolnikov & Cornia, 2000; Reference Shkolnikov, McKee and LeonShkolnikov et al, 2001; World Health Organization, 2002) and the low use of antidepressant treatment in Russia (Reference Simon, Fleck and LucasSimon et al, 2004), we expected to find substantially higher levels of depressive symptoms in Russia than in the other two countries. However, in our data depressive symptoms in Russia were not dramatically more common than in Poland. The CES–D score of 16 or above does not translate into clinical diagnostic criteria and it probably reflects largely psychological distress (Reference Beekman, Deeg and van TilburgBeekman et al, 1995), whereas it is major depression that has an impact on indices such as suicide rate. We therefore urge caution when extrapolating from minor depressive symptoms to all depressive disorders, including major depression.

Comparison of eastern Europe with other populations

Although there have been earlier studies of depression in central and eastern Europe, this report is, to our knowledge, the first that has investigated the prevalence of depressive symptoms in a general population sample in Russia and provided a direct comparison with other parts of the world. Community-based studies in western Europe show a wide range of prevalence rates of depressive symptoms, defined as 16 points or above on the CES–D scale: 39% and 12% in elderly Spanish women and men respectively (Reference Zunzunegui, Beland and OteroZunzunegui et al, 2001); 13% and 9% in older French men and women respectively (Reference Paterniti, Verdier-Taillefer and GenestePaterniti et al, 2000); and 39% in a British study (Reference Weich, Blanchard and PrinceWeich et al, 2002). Prevalence in elderly Europeans is usually between 10% and 15% (reviewed by Reference Beekman, Deeg and van TilburgBeekman et al, 1995). In the USA, studies using the CES–D instrument reported prevalence of depressive symptoms of 18% and 10% in women and men respectively (Reference Ferketich, Schwartzbaum and FridFerketich et al, 2000), but there are pronounced ethnic differences; in females, for example, the prevalence rates range from 14% in Chinese and Japanese Americans to 43% in Hispanic women (Reference Bromberger, Harlow and AvisBromberger et al, 2004). A recent study in Korea found a prevalence of depressive symptoms of 42% in women and 35% in men (Reference Kim, Jo and HwangKim et al, 2005). Several studies of depressive symptoms, not using the CES–D, in adolescents or in women around the time of childbirth reported higher levels of depressive symptoms in Russia than in Britain or the USA (Reference Charman and PervovaCharman & Pervova, 1996; Reference Dragonas, Golding, Greenwood, Dragonas, Golding and IgnatyevaDragonas et al, 1996; Reference Jose, D'Anna and CafassoJose et al, 1998). The differences between men and women were similar to results in other European and North American populations.

In this context, the rates found in Russia, Poland and the Czech Republic are relatively high but within the range reported internationally. As mentioned above, our measurement of outcome also includes a certain amount of general distress, and the relatively high rates of depressive symptoms may partly be due to the widespread dissatisfaction related to the social upheaval during the economic transformation period. A similar explanation has been proposed for the high rates of depressive symptoms in Korea found after the 1997 financial crisis (Reference Kim, Jo and HwangKim et al, 2005). The role of psychological distress, rather than major depression, in the high rates of depressive symptoms in this study is supported by an international study which found that prevalence of mood disorders (including major clinical depression) in Ukraine, a country affected by the transition even more than Russia, was similar to that in other European and North American countries (WHO World Mental Health Survey Consortium, 2005).

Socio-economic differentials within populations

In European and North American societies, depression is typically more common in lower socio-economic groups (Reference Lorant, Deliege and EatonLorant et al, 2003). In the eastern European populations surveyed in the present study, material deprivation was the most consistent predictor of depressive symptoms; the effects were present in all countries in both genders. The higher rates of depressive symptoms in unmarried than married people, particularly in women, are also consistent with studies in other populations (Reference van Grootheest, Beekman and Broese van Groenouvan Grootheest et al, 1999). Interestingly, the influence of education, which was previously found to predict well other outcomes in central and eastern Europe (Reference Bobak, Pikhart and RoseBobak et al, 2000; Reference Plavinski, Plavinskaya and KlimovPlavinski et al, 2003), differed between countries. In the Czech Republic and Poland, the levels of depressive symptoms tended to decline with increasing education, consistent with a previous study in the Czech Republic (Reference Dzurova, Smolova and DragomireckaDzurova et al, 2000). In Russia, however, the association was positive, mainly due to results in women. It is not clear what could explain such a positive association. It could be speculated that women with higher education, especially those who have to look after a family, might have suffered a relatively steeper decline in perceived social status during the societal transformation than men or women with low education. Unfortunately, our sample was too small to conduct more detailed or subgroup analyses within the Russian sample.

Alcohol has long been associated with depression (Reference Edwards, Marshall and CookEdwards et al, 1997; Reference Caan, Caan and De BellerocheCaan, 2002; Reference JenkinsJenkins, 2004). In our study drinking once a week or more often was not related to depressive symptoms, but the consumption of large amounts of alcohol per drinking session showed a strong association with depression. This is consistent with a report from the Udmurtia region of Russia of a strong link between depression and alcohol dependency (Reference Pakriev, Vasar and AluojaPakriev et al, 1998b ). It was suggested that the binge-drinking pattern is a particularly important determinant of health in eastern European populations (Reference Britton and McKeeBritton & McKee, 2000; Reference Bobak, Room and KubinovaBobak et al, 2004), and our results are consistent with this proposition.

In conclusion, our study does not suggest large differences in the rates of depressive symptoms between these eastern European urban populations. Although depression scores were marginally higher in Russia than in the other two countries, depressive symptoms do not seem to explain the high and increasing rates of ill health, mortality and suicide in Russia. Depressive symptoms were associated with binge drinking and a number of socio-demographic characteristics, but the direction of the educational gradient differed between countries. Larger studies would be needed to clarify this paradoxical finding and to provide more reliable estimates of the effects of social and behavioural factors on depression in these countries.

Clinical Implications and Limitations

CLINICAL IMPLICATIONS

  1. The prevalence of depressive symptoms in these central and eastern European urban populations was relatively high, but within the ranges reported from other countries.

  2. Depressive symptoms were slightly more common in Russia than in Poland and the Czech Republic.

  3. Depressive symptoms in all three countries were related to binge drinking, female gender, deprivation and divorced or widowed marital status; the direction of the association with education differed between countries.

LIMITATIONS

  1. As our definition of depressive symptoms also included general distress, extrapolation to major clinical depression is not straightforward.

  2. Both depressive symptoms and covariates were self-reported; this may lead to overestimation of the strength of the association between depression and some of the socio-demographic variables.

  3. The study examined urban population samples and the findings may therefore not be representative of rural areas or whole countries.

Acknowledgements

The study was funded by the Wellcome Trust. The authors’ work in eastern Europe is also supported by the MacArthur Initiative on Social Upheaval and health. M.M. is recipient of the UK Medical Research Council Research Professorship. The authors thank Dr Amanda Nicholson for helpful comments on various drafts of this paper.

Footnotes

Declaration of interest

None. Funding detailed in Acknowledgements.

References

Beekman, A. T., Deeg, D. J., van Tilburg, T., et al (1995) Major and minor depression in later life: a study of prevalence and risk factors. Journal of Affective Disorders, 36, 6575.Google Scholar
Bobak, M., Pikhart, H., Rose, R., et al (2000) Socioeconomic factors, material inequalities, and perceived control in self-rated health: cross-sectional data from seven post-communist countries. Social Science and Medicine, 51, 13431350.CrossRefGoogle ScholarPubMed
Bobak, M., Room, R., Kubinova, R., et al (2004) Contribution of alcohol consumption and drinking patterns to rates of alcohol-related problems in urban populations in Russia, Poland and the Czech Republic. A cross-sectional study. Journal of Epidemiology and Community Health, 58, 238242.CrossRefGoogle Scholar
Britton, A. & McKee, M. (2000) The relation between alcohol and cardiovascular disease in Eastern Europe: explaining the paradox. Journal of Epidemiology and Community Health, 54, 328332.CrossRefGoogle ScholarPubMed
Bromberger, J. T., Harlow, S., Avis, N., et al (2004) Racial/ethnic differences in the prevalence of depressive symptoms among middle-aged women: the Study of Women's Health Across the Nation (SWAN). American Journal of Public Health, 94, 13781385.Google Scholar
Caan, W. (2002) Alcohol and the mind. In Drink, Drugs and Dependence. From Science to Clinical Practice (eds Caan, W. & De Belleroche, J.), pp. 5168. London: Routledge.Google Scholar
Charman, T. & Pervova, I. (1996) Self-reported depressed mood in Russian and UK schoolchildren. A research note. Journal of Child Psychology and Psychiatry, 37, 879883.Google Scholar
Dojka, E., Gorkiewicz, M. & Pajak, A. (2003) Psychometric value of CES–D scale for the assessment of depression in Polish population. Psychiatria Polska, 37, 281292.Google Scholar
Dragonas, T., Golding, J., Greenwood, R., et al (1996) Stresses and strains, anxiety and depression during the first half of pregnancy. In Pregnancy in the 90s: The European Longitudinal Study of Pregnancy and Childhood (eds Dragonas, T., Golding, J., Ignatyeva, R., et al), pp. 3844. Bristol: Sansom.Google Scholar
Dzurova, D., Smolova, E. & Dragomirecka, E. (2000) Mental Health in the Sociodemographic Context. Results of a Sample Survey in the Czech Republic. Prague: Charles University.Google Scholar
Edwards, G., Marshall, E. J. & Cook, C. H. C. (1997) The Treatment of Drinking Problems. A Guide for the Helping Professions. Cambridge: Cambridge University Press.Google Scholar
Ferketich, A. K., Schwartzbaum, J. A., Frid, D. J., et al (2000) Depression as an antecedent to heart disease among women and men in the NHANES I study. National Health and Nutrition Examination Survey. Archives of Internal Medicine, 160, 12611268.CrossRefGoogle ScholarPubMed
Jenkins, R. (2004) WHO Guide to Mental and Neurological Health in Primary Care. London: Royal Society of Medicine Press.Google Scholar
Jose, P. E., D'Anna, C. A., Cafasso, L. L., et al (1998) Stress and coping among Russian and American early adolescents. Developmental Psychology, 34, 757769.CrossRefGoogle ScholarPubMed
Kim, E., Jo, S. A., Hwang, J. Y., et al (2005) A survey of depressive symptoms among South Korean adults after the Korean financial crisis of late 1997: prevalence and correlates. Annals of Epidemiology, 15, 145152.Google Scholar
Klein, L. R. & Pomer, M. (eds) (2001) The New Russia. Transition Gone Awry. Stanford, CA: Stanford University Press.Google Scholar
Lorant, V., Deliege, D., Eaton, W., et al (2003) Socioeconomic inequalities in depression: a meta-analysis. American Journal of Epidemiology, 157, 98112.Google Scholar
Makinen, L. H. (2000) Eastern European transition and suicide mortality. Social Science and Medicine, 51, 14051420.CrossRefGoogle ScholarPubMed
Men, T., Brennan, P., Boffetta, P., et al (2003) Russian mortality trends for 1991–2001: analysis by cause and region. BMJ, 327, 964969.CrossRefGoogle ScholarPubMed
Mulrow, C. D., Williams, J. W., Gerety, M. B., et al (1995) Case-finding instruments for depression in primary care settings. Annals of Internal Medicine, 122, 913921.Google Scholar
Murray, C. J. L. & Lopez, A. D. (1996) The Global Burden of Disease: A Comprehensive Assessment of Mortality and Disability from Diseases, Injuries, and Risk Factors in 1990 and Projected to 2020. Cambridge, MA: Harvard University Press.Google Scholar
Nemtsov, A. (2000) Estimates of total alcohol consumption in Russia, 1980–1994. Drugs and Alcohol Dependence, 58, 133143.Google Scholar
Nikitin, Y. P. & Gerasimenko, N. F. (1995) Health of Siberian Population [in Russian]. Novosibirsk: Siberian Branch of the Russian Academy of Medical Sciences.Google Scholar
Osecka, L. (1999) Skala Deprese CES–D–Psychometricka Analyza [Depression Scale CES–D: Psychometric Analysis; in Czech]. Brno: Czech Academy of Sciences.Google Scholar
Pakriev, S., Vasar, V., Aluoja, A., et al (1998a) Prevalence of mood disorders in the rural population of Udmurtia. Acta Psychiatrica Scandinavica, 97, 169174.Google Scholar
Pakriev, S., Vasar, V., Aluoja, A., et al (1998b) Prevalence of ICD–10 harmful use of alcohol and alcohol dependence among the rural population in Udmurtia. Alcohol and Alcoholism, 33, 255264.Google Scholar
Paterniti, S., Verdier-Taillefer, M.-H., Geneste, C., et al (2000) Low blood pressure and risk of depression in the elderly: a prospective community-based study. British Journal of Psychiatry, 176, 464467.CrossRefGoogle ScholarPubMed
Plavinski, S. L., Plavinskaya, S. I. & Klimov, A. N. (2003) Social factors and increase in mortality in Russia in the 1990s: prospective cohort study. BMJ, 326, 12401242.Google Scholar
Radloff, L. S. (1977) The CES–D scale: a self-report depression scale for research in the general population. Applied Psychological Measurement, 1, 385401.CrossRefGoogle Scholar
Shkolnikov, V. M. & Cornia, G. A. (2000) The population crisis and rising mortality in transitional Russia. In The Mortality Crisis in Transitional Economies (eds Cornia, G. A. & Paniccia, R.), pp. 253279. New York: Oxford University Press.Google Scholar
Shkolnikov, V., McKee, M. & Leon, D. A. (2001) Changes in life expectancy in Russia in the mid-1990s. Lancet, 357, 917921.CrossRefGoogle ScholarPubMed
Simon, G. E., Fleck, M., Lucas, R., et al (2004) Prevalence and predictors of depression treatment in an international primary care study. American Journal of Psychiatry, 161, 16261634.Google Scholar
Tchernina, N. (2000) Rising unemployment and coping strategies: the case of the Novosibirsk oblast in Russia. In The Mortality Crisis in Transitional Economies (eds Cornia, G. A. & Paniccia, R.), pp.151173. New York: Oxford University Press.Google Scholar
UNICEF (2003) Social Monitor 2003. Social Trends in Transition. Florence: UNICEF Innocenti Research Centre.Google Scholar
van Grootheest, D. S., Beekman, A. T., Broese van Groenou, M. I., et al (1999) Sex differences in depression after widowhood. Do men suffer more? Social Psychiatry and Psychiatric Epidemiology, 34, 391398.CrossRefGoogle ScholarPubMed
Weich, S., Blanchard, M., Prince, M., et al (2002) Mental health and the built environment: cross-sectional survey of individual and contextual risk factors for depression. British Journal of Psychiatry, 180, 428433.Google Scholar
World Health Organization (2002) Suicide Prevention in Europe: The WHO European Monitoring Survey on National Suicide Prevention Programmes and Strategies. Geneva: WHO.Google Scholar
World Health Organization World Mental Health Survey Consortium (2005) Prevalence, severity and unmet needs for treatment of mental disorders in the World Health Organization World Mental Health Survey. JAMA, 291, 25812590.Google Scholar
Zunzunegui, M. V., Beland, F. & Otero, A. (2001) Support from children, living arrangements, self-rated health and depressive symptoms of older people in Spain. International Journal of Epidemiology, 30, 10901099.Google Scholar
Figure 0

Table 1 Characteristics of the study participants

Figure 1

Table 2 Age-adjusted odds ratios for depressive symptoms (score of 16 or over on the Center for Epidemiologic Studies Depression scale)

Figure 2

Table 3 Odds ratios of depressive symptoms by socio-demographic variables in the pooled data, adjusted for age, gender, country and all variables in table

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