Literature DB >> 27516353

Neighborhood income and major depressive disorder in a large Dutch population: results from the LifeLines Cohort study.

Bart Klijs1, Eva U B Kibele2, Lea Ellwardt3, Marij Zuidersma4, Ronald P Stolk5, Rafael P M Wittek3, Carlos M Mendes de Leon6, Nynke Smidt5.   

Abstract

BACKGROUND: Previous studies are inconclusive on whether poor socioeconomic conditions in the neighborhood are associated with major depressive disorder. Furthermore, conceptual models that relate neighborhood conditions to depressive disorder have not been evaluated using empirical data. In this study, we investigated whether neighborhood income is associated with major depressive episodes. We evaluated three conceptual models. Conceptual model 1: The association between neighborhood income and major depressive episodes is explained by diseases, lifestyle factors, stress and social participation. Conceptual model 2: A low individual income relative to the mean income in the neighborhood is associated with major depressive episodes. Conceptual model 3: A high income of the neighborhood buffers the effect of a low individual income on major depressive disorder.
METHODS: We used adult baseline data from the LifeLines Cohort Study (N = 71,058) linked with data on the participants' neighborhoods from Statistics Netherlands. The current presence of a major depressive episode was assessed using the MINI neuropsychiatric interview. The association between neighborhood income and major depressive episodes was assessed using a mixed effect logistic regression model adjusted for age, sex, marital status, education and individual (equalized) income. This regression model was sequentially adjusted for lifestyle factors, chronic diseases, stress, and social participation to evaluate conceptual model 1. To evaluate conceptual models 2 and 3, an interaction term for neighborhood income*individual income was included.
RESULTS: Multivariate regression analysis showed that a low neighborhood income is associated with major depressive episodes (OR (95 % CI): 0.82 (0.73;0.93)). Adjustment for diseases, lifestyle factors, stress, and social participation attenuated this association (ORs (95 % CI): 0.90 (0.79;1.01)). Low individual income was also associated with major depressive episodes (OR (95 % CI): 0.72 (0.68;0.76)). The interaction of individual income*neighborhood income on major depressive episodes was not significant (p = 0.173).
CONCLUSIONS: Living in a low-income neighborhood is associated with major depressive episodes. Our results suggest that this association is partly explained by chronic diseases, lifestyle factors, stress and poor social participation, and thereby partly confirm conceptual model 1. Our results do not support conceptual model 2 and 3.

Entities:  

Keywords:  Depressive disorder; Income; Psychosocial deprivation; Residence characteristics; Socioeconomic factors

Mesh:

Year:  2016        PMID: 27516353      PMCID: PMC4982408          DOI: 10.1186/s12889-016-3332-2

Source DB:  PubMed          Journal:  BMC Public Health        ISSN: 1471-2458            Impact factor:   3.295


Background

Major depressive disorder is a mental disorder that is characterized by a severely depressed mood during most of the day, nearly every day, and a loss of interest in almost all activities [1]. Major depressive disorder is common in the general population and is a burden for the individual [2]. In the Global Burden of Disease Study, major depressive disorder is ranked fifth on the list of conditions associated with the largest burden of disease [2]. Various personal factors such as genes, adverse life events, personality traits, and somatic diseases are associated with major depressive episodes [3-6]. Furthermore, also factors in peoples’ environment, such as the neighborhood in which people live, can influence the risk of major depressive episodes [7]. Studies investigating the role of the neighborhood environment in the development of major depressive disorder have produced inconsistent results on whether living in a neighborhood of poorer socioeconomic conditions is associated with major depressive episodes [7-17]. Studies in New York City, Chicago and the metropolitan area of Paris have found that persons living in neighborhoods of lower socioeconomic status have a higher risk of depressive symptoms [7, 10, 11]. Other studies, however, have either failed to find a significant relationship between neighborhood socioeconomic conditions and mental health, or found that this association is fully explained by the socioeconomic position of individuals [13-17]. Various conceptual models have been proposed to explain the potential link between neighborhood conditions and major depressive episodes. In a systematic review, Kim proposed a model of absolute poverty in which unfavorable material and psychosocial conditions are concentrated in less affluent neighborhoods [18]. These unfavorable conditions are associated with the presence of chronic diseases, an unhealthy lifestyle, increased stress and lower social participation. In turn, each of these factors may give rise to episodes of major depression. Drawing on social comparison theory, others have proposed a model of relative poverty to explain the link between neighborhood conditions and major depressive episodes [19-22]. It is suggested that a low income relative to others increases the probability of negative self-evaluations and causes psychosocial stress and depression in the long run. Within the context of the neighborhood, this would mean that a low income is particularly problematic for individuals living in high-income neighborhoods. In contrast, the collective resources model suggests a beneficial effect of living in a high-income neighborhood for those with a low income [12, 23]. This model proposes that services, facilities and social capital are more widely available in rich than in poor areas. Individuals with a low income, who may be less in the position to purchase goods and services privately, may benefit from the collective resources in a high-income neighborhood. The various conceptual models proposed in the literature have rarely been evaluated on the basis of empirical data. Only one study has evaluated the collective resources and relative poverty models in a neighborhood context [12]. This study favored the collective resources model over the relative poverty model, but lacked power to draw definitive conclusions. Our aim is to investigate to what extent neighborhood income is associated with major depressive episodes. We evaluate three conceptual models linking neighborhood income to major depressive episodes. Conceptual model 1: The association between neighborhood income and major depressive episodes is explained by diseases, lifestyle factors, stress and social participation. Conceptual model 2: A low individual income relative to the mean income in the neighborhood is associated with major depressive episodes. Conceptual model 3: A high income of the neighborhood buffers the effect of a low individual income on major depressive disorder.

Methods

Study population

We used a first released baseline subsample of the Dutch LifeLines Cohort Study that included 71,514 participants who had been recruited between 2006 and 2012 [24-26]. The cohort profile of LifeLines is described elsewhere [25]. Briefly, LifeLines is a large representative population based cohort study aiming to investigate universal risk factors for multifactorial diseases that has been shown to be broadly representative for the adult population in the northern part of the Netherlands [26]. The recruitment of participants (N = 167,729) was carried out between 2006 and 2013. Informed consent was obtained from all individual participants included in the study. All participants visited one of the LifeLines research sites, where anthropometric and blood pressure measurements were taken and fasting (12 hours) blood samples were collected. Participants filled out extensive questionnaires including items on demographic and socioeconomic characteristics, chronic diseases, health behaviors, stress and social participation. The participants’ home addresses were geo-coded and linked with information on the neighborhood available through Statistics Netherlands [27]. We excluded 456 individuals (0.6 %) with missing information on major depressive episodes, which resulted in a study sample of 71,058 individuals.

Current episode of major depressive disorder

The Mini International Neuropsychiatric Interview (MINI) was used to assess the presence of a current (in past two weeks) major depressive episode according to standard criteria in the Diagnostic Statistical Manual (DSM)-IV [28]. The MINI is a validated and reliable brief structured oral interview for the major Axis I psychiatric disorders in DSM-IV and ICD-10, including major depressive episodes [28]. The interview assesses two core symptoms (consistently depressed or down; and much less interested in most things) and seven related symptoms (loss of appetite; trouble sleeping; talking or moving more slowly/restlessness; tiredness; feelings of worthlessness and guilt; difficulty concentrating or making decisions; and considering to hurt yourself/suicidal). A major depressive episode is established when a person has at least one main symptom and at least five symptoms in total. Interviews were administered by trained research assistants.

Neighborhood income and individual equalized income

Neighborhood income was defined as the mean disposable income in the neighborhood of individuals with an income during the entire year, for the year 2009. This information was available from Statistics Netherlands and was downloaded from the website (www.cbs.nl/nl-nl/dossier/nederland-regionaal/wijk-en-buurtstatistieken). The variable for neighborhood income was continuous with one point increase indicating 500 €/month higher income. LifeLines participants were asked to report their net household income according to eight categories (less than 750; 750–1000; 1000–1500; 1500–2000; 2000–2500; 2500–3000; 3000–3500; more than 3500 €/month). Furthermore, they were asked how many people live on this amount. The individual income was equalized according to the square root scale method, according to which the net household income is divided by square root of the number of persons living on this amount [29]. For this calculation, middle values of the income categories were used (€500 and €3750 for the outer categories). The resulting variable was used as a continuous indicator with one point increase indicating 500 €/month higher income. In our data, the Pearson’s correlation coefficient for neighborhood income and individual income was 0.17 (P < 0.001).

Chronic diseases and life style factors

A variety of diseases are associated with major depressive disorder [6]. In the questionnaire, study participants were asked to report on the current presence of osteoarthritis, rheumatoid arthritis, chronic obstructive pulmonary disease, diabetes mellitus, myocardial infarction, heart failure, cerebrovascular accident, Crohn’s disease, hepatitis, liver cirrhosis, multiple sclerosis, Parkinson’s disease, dementia and psoriasis was assessed. A variable indicating the number of these diseases present (none, one, two or more) was used in the analysis. Body mass index (BMI) was calculated using measured body weight and length (BMI = weight/length2) and was categorized into ‘underweight’ (<18.5 kg/m2), ‘normal weight’ (18.5–24.9 kg/m2), ‘overweight’ (25–29.9 kg/m2), and ‘obesity class I’ (30–35 kg/m2) and ‘obesity class II’ (> = 35 kg/m2). Using two questions asking “Have you ever smoked for a full year?” and “Do you currently smoke, or have you smoked during the past month?”, smoking behavior was categorized as ‘never’, ‘past’ and ‘current’ smoker. Study participants were asked to report the number of days per week on which they were active (i.e. cycling, gardening, doing odd jobs or sports activities) for at least half an hour. The answers were categorized into none, one, two, and three or more days per week. Alcohol consumption was assessed using two questions asking “How often (on how many days) did you consume alcohol during the past month?” and “On a day of drinking, how many alcoholic beverages did you take on average?”. Using these questions, alcohol consumption was categorized into ‘abstainer’, ‘moderately drinking’ (<=1 glass daily on average for females; <=2 glasses daily on average for males) and ‘heavily drinking’ (>1 glass daily on average for females; >2 glasses daily on average for males).

Acute and long-term stress

Acute and chronic stressors were measured using the List of Threatening Events (LTE) and the Long-term Difficulties Inventory (LDI) [30, 31]. The LTE measures the occurrence of 12 life events with established long-term consequences in the past year, such as the death of a close friend or relative. A continuous variable indicating the number of events in the past year (range 0–12) was used. The LDI consisted of 12 items evaluating to what extent various domains of life including housing, work, social relationships, free time, finances, health, school/study, and religion had been perceived as stressful during the last year. Respondents indicated how they experienced these aspects on a three-point scale (0 = not stressful, 1 = slightly stressful, 2 = very stressful). A sum score was calculated (range 0–24) with higher scores indicating higher stress from long-term difficulties. The test-retest correlations of the LTE and LDI in a two-year interval are 0.61 and 0.72. LDI scores have been shown to correlate with psychological distress (r = 0.42) and neuroticism (r = 0.39) [31]. In our data, Pearson’s correlation coefficient for acute and long-term stress was 0.32 (P < 0.001).

Social participation

The size of the social network was assessed as the average number of personal contacts in which personal matters were exchanged or discussed, either through written or oral communication, within a period of two weeks. A continuous variable was created with one point increase indicating five more personal contacts. To account for a non-linear relationship between the number of personal contacts and major depressive episodes, also a quadratic term for the number of personal contacts was used. Participation in organized clubs and groups was measured using a continuous variable (range 0–6) indicating the number of participations in sports clubs, neighborhood or social clubs, political parties, patient associations, church or religious communities, and other clubs. The quality of social contacts was assessed using nine items from the Social Production Function Instrument for Level of Well-Being (SPF-IL) measuring ‘affection’, ‘behavioral confirmation’ and ´status´ [32]. Answers could be given on a four-point scale ranging from never (0) to always (3). A sum score was calculated (range 0–27) with higher scores indicating higher social need fulfillment. The test-retest correlations of affection, behavioral confirmation and status are between 0.6 and 0.7 [31]. The SPF-IL score correlates with traditional measures of well-being (r = 0.6) [32].

Other control variables

Level of education was categorized as ‘tertiary’, (community or junior college, vocational technical institute, university), ‘upper secondary’ (senior general secondary, pre-university), ‘lower secondary’ (junior general secondary, senior secondary vocational) and ‘elementary’ (no education, elementary, prevocational, lower vocational). Age (in years) was measured on a continuous scale. Dichotomous variables were created for sex (male/female) and marital status (married or registered partnership; yes/no).

Statistical analysis

Characteristics of the study participants and the study participants’ neighborhoods were presented for all residential areas and according to neighborhood income. Univariate and multivariate mixed effect logistic regression models were used to assess the association between neighborhood income, individual income and major depressive episodes. A random intercept was included to account for clustered observations within neighborhoods. To evaluate the conceptual model of absolute poverty, a multivariate model was fitted with neighborhood income as main independent variable and major depressive episode as dependent variable (regression model 1). The model was adjusted for age, sex, marital status, individual income and education. This model was sequentially adjusted for chronic diseases and lifestyle factors (regression model 2), stress (regression model 3) and social participation (regression model 4), which explain the association between neighborhood income and major depressive episodes according to the absolute poverty model. The conceptual models of relative poverty and collective resources both assume an interactive effect of individual income and neighborhood income to the prevalence of major depressive episodes. According to the relative poverty model, the effect of lower individual income on major depressive episodes is stronger in neighborhoods of higher income. In a regression model this would yield a significant negative interaction effect of individual income*neighborhood income. According to the collective resources model, the effect of lower individual income is weaker in neighborhoods of higher income, which would yield a significant positive interaction of individual income*neighborhood income. To evaluate the conceptual models of relative poverty and collective resources, an interaction term of individual income*neighborhood income was added to model 1 (regression model 5). For all models, the standard deviation of the random intercept for neighborhood was presented. Merlo et al. recommend the median odds ratio as an indicator of the group level (neighborhood) variance in mixed effect logistic regression models [33]. However, the Stata function to calculate the median odds ratio (xtmrho) was incompatible with the multiple imputation procedure followed. Therefore, median odds ratios were only presented for the complete case analyses. Using model 1, the prevalence of major depressive episodes was estimated by neighborhood income and individual income (1st and 9th deciles). Missing values of all independent variables were imputed using multiple imputations, using the multivariate normal model function (mi impute mvn) of Stata. We used a multivariate normal model in which age, sex, major depressive episodes, number of chronic diseases, number of personal contacts, participation in clubs or groups and neighborhood income were the predictor variables. The percentage of missing values for each variable are shown in Table 1.
Table 1

Characteristics of study population

Neighborhood income
All residential areasLess than 1400 €/month1400-1599 €/month1600-1799 €/month1800 €/month or more
N710589315299701840013373
% Current major depressive episode2.53.32.82.31.6
Individual equivalized income
 Mean, sd1514 (568)1388 (556)1455 (554)1555 (570)1673 (565)
 % Missing15.116.315.914.313.7
Demographic characteristics
 Age (mean, sd)43.7 (11.6)42.1 (11.9)43.3 (11.6)44.1 (11.5)45.4 (11.3)
 % Female58.059.058.157.857.3
 % Married61.653.961.562.466.2
Highest education
 % Elementary2.23.12.61.61.5
 % Lower secondary26.130.329.323.519.4
 % Upper secondary39.740.741.140.035.4
 % Tertiary29.923.824.932.741.4
 % Missing2.22.22.22.22.3
Diseases
 % No disease77.075.476.077.979.0
 % One disease9.59.89.98.99.2
 % Two or more diseases13.514.914.113.211.8
Body mass index
 % < =18.5 kg/m20.80.80.80.80.7
 % 18.5 - 24.9 kg/m245.044.642.845.649.1
 % 25–29.9 kg/m238.836.939.239.438.3
 % 30.0 - 34.9 kg/m211.512.612.610.79.5
 % > =35 kg/m23.95.04.53.52.5
Physical activity (at least 30. min)
 % Physically inactive4.35.34.73.93.4
 % One day per week8.28.48.88.27.0
 % Two days per week11.211.511.411.410.5
 % Three or more days per week70.367.968.671.474.4
Smoking
 % Never smoking43.342.341.445.145.8
 % Formerly smoking28.826.828.229.231.0
 % Currently smoking22.326.124.020.818.0
 % Missing5.64.86.44.95.2
Alcohol consumptiona
 % Abstaining21.223.223.519.517.0
 % Moderately drinking61.460.458.563.765.3
 % Heavily drinking14.414.214.714.014.6
 % Missing3.02.23.22.93.1
Stress
 No. of threatening events in past year (LTE), 0–12 (mean, sd)1.1 (1.3)1.2 (1.4)1.1 (1.3)1.0 (1.3)1.0 (1.2)
 % Missing2.63.22.72.22.3
 Score on long-term difficulty inventory (LDI), 0–24 (mean, sd)2.4 (2.4)2.7 (2.5)2.4 (2.4)2.4 (2.3)2.3 (2.3)
 % Missing3.34.13.32.93.1
Social participation
 No. of personal contacts in past two weeks (mean, sd)18.2 (14.5)17.8 (14.6)18.1 (14.5)18.3 (14.4)18.8 (14.6)
 No. of participations in clubs or groups, 0–6 (mean, sd)0.9 (0.9)0.9 (0.9)0.9 (0.9)1.0 (0.9)0.9 (0.9)
 Score on social need fulfillment scale (SPF-IL), 0–27 (mean, sd)16.0 (3.5)15.7 (3.6)15.9 (3.6)16.0 (3.4)16.3 (3.4)
 % Missing3.74.43.93.43.2

aHeavily drinking is > = 14 (men) or > =7 alcoholic consumptions per week

Characteristics of study population aHeavily drinking is > = 14 (men) or > =7 alcoholic consumptions per week In the northern part of the Netherlands, a large part of the individuals aged 18–30 are students, who generally have a low income but a prospect of a high socioeconomic position. We performed a sensitivity analysis in which we evaluated to what extent the associations changed when individuals aged 18–30 years were excluded. A complete case analysis was performed to evaluate the potential impact of the imputation procedure on our substantive conclusions. Furthermore, we evaluated to what extent our results changed when ‘percentage of low income households’ (Z-standardized; disposable household income < 25,100 euro, set by Statistics Netherlands) instead of ‘mean income’ was used as in indicator of neighborhood poverty.

Results

Our study population consisted of 71,058 individuals with a mean age of 43.7 years (sd 11.6). Of the participants, 58.0 % were female and 61.6 % were married or had a registered partnership. The prevalence of major depressive episodes in our study population was 2.5 % and varied from 1.6 % in the high-income neighborhoods to 3.3 % in the low-income neighborhoods. In general, persons living in a low-income neighborhood were slightly younger, had a lower education, were more often married or had a registered partnership, had more diseases, an unhealthier lifestyle, more stressful life events and more long-term difficulties than persons living in a high-income neighborhood. Details of the background characteristics of our study population are presented in Table 1. Our study participants resided in 1893 different neighborhoods. The mean number of participants per neighborhood was 37.5 (range 1 to 1001). As compared with high-income neighborhoods, low-income neighborhoods were less frequently located in a strongly urbanized area with more than1500 addresses/km2 (25.6 % versus 32.6 %) and had a higher percentage of non-western migrants (9.6 % versus 5.1 %). The difference in the percentage of single occupied houses and residents older than 65 years was smaller than 3 %. Low-income neighborhoods had a smaller percentage of owner occupied houses, and a larger percentage of households receiving assistance benefits and households living below social minimum than high-income neighborhoods (all differences 4.8 % or more). Characteristics of the study participants’ neighborhoods are presented in Table 2.
Table 2

Characteristics of study participants’ neighborhoods

Neighborhood income
All residential areasLess than 1400 €/month1400-1599 €/month1600-1799 €/month1800 €/month or more
N1893289552484568
Demographic characteristics
 Neighborhoods in strongly urbanized area (N, %)a 456 (24.1)74 (25.6)104 (18.8)93 (19.2)185 (32.6)
 Non-western migrants (%, sd)5.5 (8.7)9.6 (14.6)4.8 (7.9)4.3 (6.5)5.1 (6.1)
 Single occupied households (%, sd)31.2 (15.2)33.8 (17.5)31.3 (13.8)29.9 (13.7)30.9 (16.2)
 Population older than 65 years (%, sd)15.1 (8.0)13.4 (6.2)15.1 (7.3)15.1 (7.6)15.8 (9.5)
Socioeconomic characteristics
 Owner occupied houses (%, sd)64.9 (20.6)55.6 (26.4)62.7 (19.2)67.3 (16.8)69.8 (19.5)
 Households receiving assistance benefits (%, sd)3.8 (3.5)7.0 (5.6)4.3 (3.2)2.9 (2.0)2.2 (1.9)
 Households living below social minimum (%, sd)b 8.1 (5.1)12.9 (6.6)8.7 (4.5)7.1 (3.8)6.1 (3.8)

aMore than 1500 addresses per km2. bDisposable household income less than 25100 per year

Characteristics of study participants’ neighborhoods aMore than 1500 addresses per km2. bDisposable household income less than 25100 per year Table 3 presents the results of the univariate and multivariate logistic regression analyses on major depressive episodes. In the univariate analyses, all variables were significantly associated with major depressive episodes, except for the interaction between neighborhood income and individual income. In the multivariate regression model adjusted for age, sex, marital status and education (regression model 1), higher neighborhood income (OR with 95 % CI is 0.82 (0.73;0.93)) and higher individual income (OR with 95 % CI is 0.72 (0.68;0.76)) were associated with major depressive episodes. Sequential adjustment for lifestyle and diseases (regression model 2), short-term and long-term stress (regression model 3), and social participation (regression model 4) attenuated the associations of neighborhood income and individual income with major depressive episodes (ORs with 95 % CI are 0.90 (0.97;1.01) for neighborhood income and 0.92 (0.87-0.98) for individual income). There was no significant interaction effect of neighborhood income*individual income to the prevalence of major depressive episodes (regression model 5). In regression model 4, low education, presence of chronic diseases, high body mass index, physical inactivity, current smoking, alcohol consumption, threatening events, long term difficulties, fewer personal contacts, few participations in organized clubs or groups and low social need fulfillment were all independently associated with major depressive episodes.
Table 3

Univariate and multivariate mixed effect logistic regression models on prevalence of current major depressive disorder

Evaluation of conceptual model of absolute povertyEvaluation of conceptual models of relative poverty and collective resources
Univariate logistic regression modelse Regression model 1Regression model 2Regression model 3Regression model 4Regression model 5
(OR with 95 % CI)(OR with 95 % CI)(OR with 95 % CI)(OR with 95 % CI)(OR with 95 % CI)(OR with 95 % CI)
Neighborhood and household income
 Neighborhood incomea 0.64 (0.57;0.73)0.82 (0.73;0.93)0.89 (0.79;1.00)0.87 (0.77;0.98)0.90 (0.79;1.01)0.69 (0.52;0.92)
 Individual equalized incomea 0.62 (0.59;0.65)0.72 (0.68;0.76)0.75 (0.71;0.80)0.89 (0.83;0.95)0.92 (0.87;0.98)0.59 (0.43;0.80)
 Neighborhood income*individual equalized income1.06 (0.96;1.18)d 1.07 (0.97;1.17)
Demographic characteristics
 Age0.99 (0.99;1.00)1.00 (1.00;1.00)1.00 (0.99;1.00)1.01 (1.01;1.02)1.01 (1.00;1.01)1.00 (1.00;1.00)
 Female1.62 (1.46;1.79)1.46 (1.32;1.62)1.38 (1.23;1.54)1.24 (1.10;1.39)1.27 (1.13;1.42)1.46 (1.31;1.62)
 Married0.53 (0.48;0.59)0.55 (0.49;0.61)0.58 (0.52;0.65)0.79 (0.71;0.88)0.80 (0.72;0.90)0.55 (0.49;0.61)
Highest education
 TertiaryRef.Ref.Ref.Ref.Ref.
 Upper secondary1.80 (1.55;2.08)1.42 (1.21;1.65)1.28 (1.09;1.50)1.50 (1.28;1.76)1.37 (1.17;1.61)1.42 (1.22;1.66)
 Lower secondary3.07 (2.65;3.55)2.44 (2.07;2.87)1.96 (1.66;2.32)2.58 (2.17;3.06)2.10 (1.76;2.50)2.45 (2.07;2.88)
 Elementary5.98 (4.76;7.51)4.03 (3.15;5.16)3.02 (2.35;3.90)3.99 (3.05;5.22)2.97 (2.26;3.90)4.05 (3.16;5.18)
Diseases
 No diseaseRef.Ref.Ref.
 One disease1.88 (1.63;2.16)1.61 (1.39;1.86)1.43 (1.23;1.66)1.43 (1.22;1.66)
 Two or more diseases2.23 (1.99;2.51)1.84 (1.63;2.07)1.42 (1.26;1.61)1.36 (1.20;1.55)
Body mass index
 <=18.5 kg/m21.98 (1.32;2.99)1.36 (0.89;2.06)1.39 (0.89;2.15)1.31 (0.84;2.04)
 18.5–24.9 kg/m2Ref.Ref.Ref.Ref.
 25–29.9 kg/m20.92 (0.82;1.03)0.95 (0.85;1.07)0.91 (0.80;1.02)0.92 (0.82;1.04)
 30.0–34.9 kg/m21.52 (1.32;1.75)1.30 (1.12;1.50)1.21 (1.04;1.41)1.20 (1.03;1.40)
 > = 35 kg/m22.82 (2.37;3.34)1.89 (1.58;2.25)1.57 (1.30;1.90)1.51 (1.25;1.84)
Physical activity (at least 30. minutes)
 Three or more days per weekRef.Ref.Ref.
 Two days per week1.06 (0.90;1.24)1.01 (0.85;1.21)1.03 (0.86;1.24)1.00 (0.84;1.21)
 One day per week1.48 (1.27;1.74)1.26 (1.07;1.47)1.26 (1.06;1.49)1.16 (0.97;1.38)
 Physically inactive2.22 (1.86;2.65)1.57 (1.28;1.92)1.58 (1.28;1.95)1.42 (1.15;1.75)
Smoking
 Never smokingRef.Ref.Ref.
 Formerly smoking1.01 (0.89;1.14)1.07 (0.93;1.22)0.99 (0.87;1.14)1.00 (0.87;1.14)
 Currently smoking2.12 (1.89;2.39)1.76 (1.55;2.00)1.45 (1.27;1.65)1.46 (1.28;1.67)
Alcohol consumptionb
 Abstaining2.11 (1.89;2.35)1.65 (1.47;1.84)1.70 (1.51;1.91)1.52 (1.34;1.71)
 Moderately drinkingRef.Ref.Ref.Ref.
 Heavily drinking1.21 (1.04;1.40)1.17 (1.00;1.36)1.22 (1.04;1.43)1.19 (1.01;1.40)
Stress
 No. of threatening events in past year (LTE)1.54 (1.50;1.57)1.18 (1.15;1.22)1.19 (1.16;1.23)
 Score on long-term difficulty inventory (LDI)1.38 (1.36;1.40)1.32 (1.30;1.34)1.27 (1.24;1.29)
Social participation
 No. of personal contacts in past two weeks0.64 (0.60;0.69)0.85 (0.79;0.91)
 No. of personal contacts in past two weeks squared c 1.04 (1.03;1.04)1.02 (1.01;1.02)
 No. of participations in clubs or groups0.65 (0.61;0.69)0.87 (0.86;0.89)
 Score on social need fulfillment scale (SPF-IL)0.80 (0.79;0.81)0.83 (0.77;0.88)
 sd random intercept neighborhood0.32 (0.24;0.41)0.28 (0.21;0.38)0.27 (0.19;0.38)0.24 (0.16;0.37)0.31 (0.24;0.41)

aContinuous variables in which one point equals 500 €/month. bHeavily drinking is > = 14 (men) or > =7 alcoholic consumptions per week. cA quadratic term for personal contacts was included because of a non-linear relationship with depression. dInteraction effect adjusted for neighborhood income and individual equalized income. eAll univariate logistic regression models include a random intercept for neighborhood

Univariate and multivariate mixed effect logistic regression models on prevalence of current major depressive disorder aContinuous variables in which one point equals 500 €/month. bHeavily drinking is > = 14 (men) or > =7 alcoholic consumptions per week. cA quadratic term for personal contacts was included because of a non-linear relationship with depression. dInteraction effect adjusted for neighborhood income and individual equalized income. eAll univariate logistic regression models include a random intercept for neighborhood Figure 1 presents the prevalence of major depressive episodes by neighborhood income and individual income using the coefficients estimated in model 1. The figure shows that the prevalence of major depressive episodes differs by neighborhood income and by individual income, but more so by individual income. Among persons with a low individual income, the prevalence of major depressive episodes is 0.9 percentage points higher for those living in a low-income neighborhood (4.4 %) than for those in a high-income neighborhood (3.6 %). The prevalence of major depressive episodes among persons in low-income neighborhoods is 2.8 percentage points higher for persons with a low individual income (4.4 %) than for those with a high individual income (1.7 %).
Fig. 1

Prevalence of major depressive episodes by neighborhood income and individual equivalized income

Prevalence of major depressive episodes by neighborhood income and individual equivalized income

Sensitivity analysis

Using the percentage of low-income households instead of the mean income in the neighborhood as an indicator of neighborhood poverty did not affect our results and conclusions. Also using complete cases only (N = 50,288) instead of imputed data, or excluding persons younger than 30 from our dataset did not alter our results (Table 4).
Table 4

Multivariate mixed logistic regression models using an alternative indicator of neighborhood poverty, and for complete cases and individuals older than 30 years

Evaluation of conceptual model of absolute povertyEvaluation of conceptual models of relative poverty and collective resources
Regression model 1Regression model 2Regression model 3Regression model 4Regression model 5
(OR with 95 % CI)(OR with 95 % CI)(OR with 95 % CI)(OR with 95 % CI)(OR with 95 % CI)
Alternative indicator of neighborhood poverty (N = 70982)
 Percentage low income households in neighborhood (Z-standardized)1.16 (1.09;1.23)1.12 (1.06;1.19)1.09 (1.03;1.15)1.08 (1.02;1.14)1.24 (1.09;1.42)
 Individual equalized income0.72 (0.68;0.77)0.75 (0.70;0.79)0.88 (0.83;0.94)0.91 (0.86;0.97)0.78 (0.67”0.92)
 Percentage low income households in neighborhood*individual equalized income0.98 (0.93;1.02)
 sd random intercept neighborhood0.30 (0.23;0.40)0.25 (0.17;0.36)0.23 (0.14;0.36)0.23 (0.14;0.37)0.30 (0.23;0.39)
Complete cases (N = 50288)
 Neighborhood income0.82 (0.71;0.94)0.89 (0.78;1.02)0.90 (0.79;1.04)0.93 (0.81;1.06)0.65 (0.46;0.91)
 Individual equalized income0.75 (0.71;0.80)0.77 (0.73;0.82)0.92 (0.86;0.98)0.95 (0.89;1.02)0.58 (0.40;0.82)
 Neighborhood income*individual equalized income1.09 (0.97;1.21)
 sd random intercept neighborhood0.29 (0.21;0.39)0.24 (0.16;0.39)0.22 (0.13;0.37)0.21 (0.12’0.38)0.28 (0.21;0.39)
Individuals older than 30 years (N = 61463)
 Neighborhood income0.84 (0.74;0.96)0.90 (0.79;1.02)0.89 (0.79;1.01)0.91 (0.80;1.03)0.74 (0.53;1.04)
 Individual equalized income0.70 (0.65;0.76)0.73 (0.68;0.78)0.87 (0.81;0.94)0.91 (0.85;0.98)0.61 (0.42;0.87)
 Neighborhood income*individual equalized income1.05 (0.94;1.17)
 sd random intercept neighborhood0.07 (0.03;0.18)0.02 (0.00;0.27)0.02 (0.00;0.40)0.02 (0.00;0.49)0.07 (0.03;0.18)
 Median odds ratio (MOR)1.281.151.151.141.28
Multivariate mixed logistic regression models using an alternative indicator of neighborhood poverty, and for complete cases and individuals older than 30 years

Discussion

Our aim was to investigate whether neighborhood income is associated with major depressive episodes. We evaluated three conceptual models linking neighborhood income to major depressive episodes. We found that living in a low-income neighborhood is associated with major depressive episodes. Our results partly confirm the model of absolute poverty, but suggest that besides chronic diseases, lifestyle factors, stress and social participation, other factors explain the link between neighborhood income and major depressive episodes [18]. We did not find an interactive effect of neighborhood income and individual income to major depressive episodes. This means that our results do not support the conceptual models of relative poverty and collective resources. Our study is one of the first studies showing that persons in low-income neighborhoods suffer more often from major depressive episodes than persons in high-income neighborhoods. Three previous studies have found a relationship between some indicator of socioeconomic conditions in the neighborhood and depressive symptomatology [7, 10, 11]. However, only one of these studies assessed depressive symptoms in relation to neighborhood income [7]. The study sample in this study (N = 7290), by Annequin et al., was ten times smaller than our study sample. Furthermore, the study was restricted to neighborhoods from the highly urbanized agglomeration of Paris, and self-report instead of face-to-face interviews, as in our study, was used to assess the presence of depressive symptoms [7]. Annequin et al. found that higher neighborhood income is associated with a lower prevalence of depressive symptoms, which is in line with our results [7]. In contrast with our study, they did not evaluate which individual factors explain this association [7]. In our analysis, the association between neighborhood income and major depressive episodes is only partly explained by diseases, lifestyle factors, stress and social participation, which suggests that Kim’s conceptual model of absolute poverty is insufficient to fully explain the differential distribution of major depressive episodes by neighborhood income [18]. In addition to the factors included in Kim’s model, studies have shown that personality traits, childhood experiences, and genetic factors play a role in the development of major depressive episodes [3-5]. Furthermore, few facilities, few parks, poor walkability, residential instability, and social fragmentation in the neighborhood are associated with determinants of major depressive disorder such as stress and physical inactivity [34-39]. A differential distribution by neighborhood income of each of these factors can further explain the association between neighborhood income and major depressive episodes.

Evaluation of data and methods

The prevalence of major depressive episodes in our study (2.5 %) is lower than in most other studies (5 to 10 %). This difference can be explained by the fact that we assessed the presence of major depressive episodes in the past two weeks, whereas other studies assessed the one-year prevalence [40, 41]. Strengths of our study include the large study population of 71,058 participants from almost 1900 neighborhoods in both rural and urban areas. Previous studies often evaluated socioeconomic conditions on a less detailed geographical level, such as income inequality at the country or state level [19, 42]. The presence of a major depressive episode was evaluated using a validated diagnostic interview, while many previous studies relied on self-report questionnaires [9, 10, 16]. Our study also has some limitations. First, socioeconomic status was operationalized solely based on income, as alternative indicators such as educational attainment were not available on the neighborhood level. Second, exposure to a certain neighborhood is typically long, whereas the measure of major depressive episodes covered a comparatively short time-span of two weeks only. Because of this, the effect of neighborhood socioeconomic status on severe and chronic forms of depression may have been underestimated. Third, the results produced in this research are based on cross-sectional data and thus, strictly speaking, do not allow causal inferences. A low individual income can be a cause as well as a consequence of major depressive episodes (reverse causation). Perhaps some of the study participants suffered from depression prior to moving to their neighborhood, or depression withheld them from moving to a neighborhood of higher income. Experiencing economic hardship can be a result of poor mental health and force individuals to seek for affordable places to live, i.e. in relatively poor areas. When investigating effects of relative poverty, a particular challenge is the selection of the appropriate reference group. In our study we used the mean income level in the neighborhood as a reference and found no evidence supporting an effect of relative poverty. However, people may compare themselves with individuals from a more restricted group in the same neighborhood or to individuals from the general population.

Conclusions

People living in low-income neighborhoods or with a low individual income more often suffer from major depressive episodes. This higher risk is partly explained by the presence of diseases, a less healthy lifestyle, stress and a lack of social participation. A low income relative to the mean income in the neighborhood is not associated with major depressive episodes. Living in a high-income neighborhood does not buffer the effect of a low individual income on major depressive episodes. Evidence from randomized controlled trials suggests that lifestyle programs combining behavior modification, physical activity and adjustment of diet; stress reduction programs; and social interventions can contribute to a healthier lifestyle, fewer stress, and higher social participation [43-45]. Targeting these interventions at the group at risk for developing major depressive episodes, i.e. persons who live in a low-income neighborhood and also have a low individual income, can be an efficient way to reduce the prevalence of major depressive episodes in the population.

Abbreviations

BMI, body mass index; DSM-IV, diagnostic and statistical manual of mental disorders, 4th edition; ICD-10, International Statistical Classification of Diseases and Related Health Problems, 10th edition; km, kilometers; LDI, long-term difficulties inventory; LTE, list of threatening events; MINI, Mini International Neuropsychiatric Interview
  40 in total

Review 1.  Associations between depression and specific childhood experiences of abuse and neglect: A meta-analysis.

Authors:  Maria Rita Infurna; Corinna Reichl; Peter Parzer; Adriano Schimmenti; Antonia Bifulco; Michael Kaess
Journal:  J Affect Disord       Date:  2015-09-26       Impact factor: 4.839

2.  Universal risk factors for multifactorial diseases: LifeLines: a three-generation population-based study.

Authors:  Ronald P Stolk; Judith G M Rosmalen; Dirkje S Postma; Rudolf A de Boer; Gerjan Navis; Joris P J Slaets; Johan Ormel; Bruce H R Wolffenbuttel
Journal:  Eur J Epidemiol       Date:  2007-12-13       Impact factor: 8.082

Review 3.  Physical activity, diet and behaviour modification in the treatment of overweight and obese adults: a systematic review.

Authors:  Anne Södlerlund; Annika Fischer; Titti Johansson
Journal:  Perspect Public Health       Date:  2009-05

4.  Highlights of the international consensus statement on major depressive disorder.

Authors:  David J Nutt
Journal:  J Clin Psychiatry       Date:  2011-06       Impact factor: 4.384

5.  Neighbourhood characteristics, individual level socioeconomic factors, and depressive symptoms in young adults: the CARDIA study.

Authors:  Claire Henderson; Ana V Diez Roux; David R Jacobs; Catarina I Kiefe; Delia West; David R Williams
Journal:  J Epidemiol Community Health       Date:  2005-04       Impact factor: 3.710

6.  Urban neighborhood poverty and the incidence of depression in a population-based cohort study.

Authors:  Sandro Galea; Jennifer Ahern; Arijit Nandi; Melissa Tracy; John Beard; David Vlahov
Journal:  Ann Epidemiol       Date:  2007-03       Impact factor: 3.797

Review 7.  Relationship between the physical environment and different domains of physical activity in European adults: a systematic review.

Authors:  Veerle Van Holle; Benedicte Deforche; Jelle Van Cauwenberg; Liesbet Goubert; Lea Maes; Nico Van de Weghe; Ilse De Bourdeaudhuij
Journal:  BMC Public Health       Date:  2012-09-19       Impact factor: 3.295

Review 8.  Interventions targeting social isolation in older people: a systematic review.

Authors:  Andy P Dickens; Suzanne H Richards; Colin J Greaves; John L Campbell
Journal:  BMC Public Health       Date:  2011-08-15       Impact factor: 3.295

9.  Global, regional, and national disability-adjusted life years (DALYs) for 306 diseases and injuries and healthy life expectancy (HALE) for 188 countries, 1990-2013: quantifying the epidemiological transition.

Authors:  Christopher J L Murray; Ryan M Barber; Kyle J Foreman; Ayse Abbasoglu Ozgoren; Foad Abd-Allah; Semaw F Abera; Victor Aboyans; Jerry P Abraham; Ibrahim Abubakar; Laith J Abu-Raddad; Niveen M Abu-Rmeileh; Tom Achoki; Ilana N Ackerman; Zanfina Ademi; Arsène K Adou; José C Adsuar; Ashkan Afshin; Emilie E Agardh; Sayed Saidul Alam; Deena Alasfoor; Mohammed I Albittar; Miguel A Alegretti; Zewdie A Alemu; Rafael Alfonso-Cristancho; Samia Alhabib; Raghib Ali; François Alla; Peter Allebeck; Mohammad A Almazroa; Ubai Alsharif; Elena Alvarez; Nelson Alvis-Guzman; Azmeraw T Amare; Emmanuel A Ameh; Heresh Amini; Walid Ammar; H Ross Anderson; Benjamin O Anderson; Carl Abelardo T Antonio; Palwasha Anwari; Johan Arnlöv; Valentina S Arsic Arsenijevic; Al Artaman; Rana J Asghar; Reza Assadi; Lydia S Atkins; Marco A Avila; Baffour Awuah; Victoria F Bachman; Alaa Badawi; Maria C Bahit; Kalpana Balakrishnan; Amitava Banerjee; Suzanne L Barker-Collo; Simon Barquera; Lars Barregard; Lope H Barrero; Arindam Basu; Sanjay Basu; Mohammed O Basulaiman; Justin Beardsley; Neeraj Bedi; Ettore Beghi; Tolesa Bekele; Michelle L Bell; Corina Benjet; Derrick A Bennett; Isabela M Bensenor; Habib Benzian; Eduardo Bernabé; Amelia Bertozzi-Villa; Tariku J Beyene; Neeraj Bhala; Ashish Bhalla; Zulfiqar A Bhutta; Kelly Bienhoff; Boris Bikbov; Stan Biryukov; Jed D Blore; Christopher D Blosser; Fiona M Blyth; Megan A Bohensky; Ian W Bolliger; Berrak Bora Başara; Natan M Bornstein; Dipan Bose; Soufiane Boufous; Rupert R A Bourne; Lindsay N Boyers; Michael Brainin; Carol E Brayne; Alexandra Brazinova; Nicholas J K Breitborde; Hermann Brenner; Adam D Briggs; Peter M Brooks; Jonathan C Brown; Traolach S Brugha; Rachelle Buchbinder; Geoffrey C Buckle; Christine M Budke; Anne Bulchis; Andrew G Bulloch; Ismael R Campos-Nonato; Hélène Carabin; Jonathan R Carapetis; Rosario Cárdenas; David O Carpenter; Valeria Caso; Carlos A Castañeda-Orjuela; Ruben E Castro; Ferrán Catalá-López; Fiorella Cavalleri; Alanur Çavlin; Vineet K Chadha; Jung-Chen Chang; Fiona J Charlson; Honglei Chen; Wanqing Chen; Peggy P Chiang; Odgerel Chimed-Ochir; Rajiv Chowdhury; Hanne Christensen; Costas A Christophi; Massimo Cirillo; Matthew M Coates; Luc E Coffeng; Megan S Coggeshall; Valentina Colistro; Samantha M Colquhoun; Graham S Cooke; Cyrus Cooper; Leslie T Cooper; Luis M Coppola; Monica Cortinovis; Michael H Criqui; John A Crump; Lucia Cuevas-Nasu; Hadi Danawi; Lalit Dandona; Rakhi Dandona; Emily Dansereau; Paul I Dargan; Gail Davey; Adrian Davis; Dragos V Davitoiu; Anand Dayama; Diego De Leo; Louisa Degenhardt; Borja Del Pozo-Cruz; Robert P Dellavalle; Kebede Deribe; Sarah Derrett; Don C Des Jarlais; Muluken Dessalegn; Samath D Dharmaratne; Mukesh K Dherani; Cesar Diaz-Torné; Daniel Dicker; Eric L Ding; Klara Dokova; E Ray Dorsey; Tim R Driscoll; Leilei Duan; Herbert C Duber; Beth E Ebel; Karen M Edmond; Yousef M Elshrek; Matthias Endres; Sergey P Ermakov; Holly E Erskine; Babak Eshrati; Alireza Esteghamati; Kara Estep; Emerito Jose A Faraon; Farshad Farzadfar; Derek F Fay; Valery L Feigin; David T Felson; Seyed-Mohammad Fereshtehnejad; Jefferson G Fernandes; Alize J Ferrari; Christina Fitzmaurice; Abraham D Flaxman; Thomas D Fleming; Nataliya Foigt; Mohammad H Forouzanfar; F Gerry R Fowkes; Urbano Fra Paleo; Richard C Franklin; Thomas Fürst; Belinda Gabbe; Lynne Gaffikin; Fortuné G Gankpé; Johanna M Geleijnse; Bradford D Gessner; Peter Gething; Katherine B Gibney; Maurice Giroud; Giorgia Giussani; Hector Gomez Dantes; Philimon Gona; Diego González-Medina; Richard A Gosselin; Carolyn C Gotay; Atsushi Goto; Hebe N Gouda; Nicholas Graetz; Harish C Gugnani; Rahul Gupta; Rajeev Gupta; Reyna A Gutiérrez; Juanita Haagsma; Nima Hafezi-Nejad; Holly Hagan; Yara A Halasa; Randah R Hamadeh; Hannah Hamavid; Mouhanad Hammami; Jamie Hancock; Graeme J Hankey; Gillian M Hansen; Yuantao Hao; Hilda L Harb; Josep Maria Haro; Rasmus Havmoeller; Simon I Hay; Roderick J Hay; Ileana B Heredia-Pi; Kyle R Heuton; Pouria Heydarpour; Hideki Higashi; Martha Hijar; Hans W Hoek; Howard J Hoffman; H Dean Hosgood; Mazeda Hossain; Peter J Hotez; Damian G Hoy; Mohamed Hsairi; Guoqing Hu; Cheng Huang; John J Huang; Abdullatif Husseini; Chantal Huynh; Marissa L Iannarone; Kim M Iburg; Kaire Innos; Manami Inoue; Farhad Islami; Kathryn H Jacobsen; Deborah L Jarvis; Simerjot K Jassal; Sun Ha Jee; Panniyammakal Jeemon; Paul N Jensen; Vivekanand Jha; Guohong Jiang; Ying Jiang; Jost B Jonas; Knud Juel; Haidong Kan; André Karch; Corine K Karema; Chante Karimkhani; Ganesan Karthikeyan; Nicholas J Kassebaum; Anil Kaul; Norito Kawakami; Konstantin Kazanjan; Andrew H Kemp; Andre P Kengne; Andre Keren; Yousef S Khader; Shams Eldin A Khalifa; Ejaz A Khan; Gulfaraz Khan; Young-Ho Khang; Christian Kieling; Daniel Kim; Sungroul Kim; Yunjin Kim; Yohannes Kinfu; Jonas M Kinge; Miia Kivipelto; Luke D Knibbs; Ann Kristin Knudsen; Yoshihiro Kokubo; Soewarta Kosen; Sanjay Krishnaswami; Barthelemy Kuate Defo; Burcu Kucuk Bicer; Ernst J Kuipers; Chanda Kulkarni; Veena S Kulkarni; G Anil Kumar; Hmwe H Kyu; Taavi Lai; Ratilal Lalloo; Tea Lallukka; Hilton Lam; Qing Lan; Van C Lansingh; Anders Larsson; Alicia E B Lawrynowicz; Janet L Leasher; James Leigh; Ricky Leung; Carly E Levitz; Bin Li; Yichong Li; Yongmei Li; Stephen S Lim; Maggie Lind; Steven E Lipshultz; Shiwei Liu; Yang Liu; Belinda K Lloyd; Katherine T Lofgren; Giancarlo Logroscino; Katharine J Looker; Joannie Lortet-Tieulent; Paulo A Lotufo; Rafael Lozano; Robyn M Lucas; Raimundas Lunevicius; Ronan A Lyons; Stefan Ma; Michael F Macintyre; Mark T Mackay; Marek Majdan; Reza Malekzadeh; Wagner Marcenes; David J Margolis; Christopher Margono; Melvin B Marzan; Joseph R Masci; Mohammad T Mashal; Richard Matzopoulos; Bongani M Mayosi; Tasara T Mazorodze; Neil W Mcgill; John J Mcgrath; Martin Mckee; Abigail Mclain; Peter A Meaney; Catalina Medina; Man Mohan Mehndiratta; Wubegzier Mekonnen; Yohannes A Melaku; Michele Meltzer; Ziad A Memish; George A Mensah; Atte Meretoja; Francis A Mhimbira; Renata Micha; Ted R Miller; Edward J Mills; Philip B Mitchell; Charles N Mock; Norlinah Mohamed Ibrahim; Karzan A Mohammad; Ali H Mokdad; Glen L D Mola; Lorenzo Monasta; Julio C Montañez Hernandez; Marcella Montico; Thomas J Montine; Meghan D Mooney; Ami R Moore; Maziar Moradi-Lakeh; Andrew E Moran; Rintaro Mori; Joanna Moschandreas; Wilkister N Moturi; Madeline L Moyer; Dariush Mozaffarian; William T Msemburi; Ulrich O Mueller; Mitsuru Mukaigawara; Erin C Mullany; Michele E Murdoch; Joseph Murray; Kinnari S Murthy; Mohsen Naghavi; Aliya Naheed; Kovin S Naidoo; Luigi Naldi; Devina Nand; Vinay Nangia; K M Venkat Narayan; Chakib Nejjari; Sudan P Neupane; Charles R Newton; Marie Ng; Frida N Ngalesoni; Grant Nguyen; Muhammad I Nisar; Sandra Nolte; Ole F Norheim; Rosana E Norman; Bo Norrving; Luke Nyakarahuka; In-Hwan Oh; Takayoshi Ohkubo; Summer L Ohno; Bolajoko O Olusanya; John Nelson Opio; Katrina Ortblad; Alberto Ortiz; Amanda W Pain; Jeyaraj D Pandian; Carlo Irwin A Panelo; Christina Papachristou; Eun-Kee Park; Jae-Hyun Park; Scott B Patten; George C Patton; Vinod K Paul; Boris I Pavlin; Neil Pearce; David M Pereira; Rogelio Perez-Padilla; Fernando Perez-Ruiz; Norberto Perico; Aslam Pervaiz; Konrad Pesudovs; Carrie B Peterson; Max Petzold; Michael R Phillips; Bryan K Phillips; David E Phillips; Frédéric B Piel; Dietrich Plass; Dan Poenaru; Suzanne Polinder; Daniel Pope; Svetlana Popova; Richie G Poulton; Farshad Pourmalek; Dorairaj Prabhakaran; Noela M Prasad; Rachel L Pullan; Dima M Qato; D Alex Quistberg; Anwar Rafay; Kazem Rahimi; Sajjad U Rahman; Murugesan Raju; Saleem M Rana; Homie Razavi; K Srinath Reddy; Amany Refaat; Giuseppe Remuzzi; Serge Resnikoff; Antonio L Ribeiro; Lee Richardson; Jan Hendrik Richardus; D Allen Roberts; David Rojas-Rueda; Luca Ronfani; Gregory A Roth; Dietrich Rothenbacher; David H Rothstein; Jane T Rowley; Nobhojit Roy; George M Ruhago; Mohammad Y Saeedi; Sukanta Saha; Mohammad Ali Sahraian; Uchechukwu K A Sampson; Juan R Sanabria; Logan Sandar; Itamar S Santos; Maheswar Satpathy; Monika Sawhney; Peter Scarborough; Ione J Schneider; Ben Schöttker; Austin E Schumacher; David C Schwebel; James G Scott; Soraya Seedat; Sadaf G Sepanlou; Peter T Serina; Edson E Servan-Mori; Katya A Shackelford; Amira Shaheen; Saeid Shahraz; Teresa Shamah Levy; Siyi Shangguan; Jun She; Sara Sheikhbahaei; Peilin Shi; Kenji Shibuya; Yukito Shinohara; Rahman Shiri; Kawkab Shishani; Ivy Shiue; Mark G Shrime; Inga D Sigfusdottir; Donald H Silberberg; Edgar P Simard; Shireen Sindi; Abhishek Singh; Jasvinder A Singh; Lavanya Singh; Vegard Skirbekk; Erica Leigh Slepak; Karen Sliwa; Samir Soneji; Kjetil Søreide; Sergey Soshnikov; Luciano A Sposato; Chandrashekhar T Sreeramareddy; Jeffrey D Stanaway; Vasiliki Stathopoulou; Dan J Stein; Murray B Stein; Caitlyn Steiner; Timothy J Steiner; Antony Stevens; Andrea Stewart; Lars J Stovner; Konstantinos Stroumpoulis; Bruno F Sunguya; Soumya Swaminathan; Mamta Swaroop; Bryan L Sykes; Karen M Tabb; Ken Takahashi; Nikhil Tandon; David Tanne; Marcel Tanner; Mohammad Tavakkoli; Hugh R Taylor; Braden J Te Ao; Fabrizio Tediosi; Awoke M Temesgen; Tara Templin; Margreet Ten Have; Eric Y Tenkorang; Abdullah S Terkawi; Blake Thomson; Andrew L Thorne-Lyman; Amanda G Thrift; George D Thurston; Taavi Tillmann; Marcello Tonelli; Fotis Topouzis; Hideaki Toyoshima; Jefferson Traebert; Bach X Tran; Matias Trillini; Thomas Truelsen; Miltiadis Tsilimbaris; Emin M Tuzcu; Uche S Uchendu; Kingsley N Ukwaja; Eduardo A Undurraga; Selen B Uzun; Wim H Van Brakel; Steven Van De Vijver; Coen H van Gool; Jim Van Os; Tommi J Vasankari; N Venketasubramanian; Francesco S Violante; Vasiliy V Vlassov; Stein Emil Vollset; Gregory R Wagner; Joseph Wagner; Stephen G Waller; Xia Wan; Haidong Wang; Jianli Wang; Linhong Wang; Tati S Warouw; Scott Weichenthal; Elisabete Weiderpass; Robert G Weintraub; Wang Wenzhi; Andrea Werdecker; Ronny Westerman; Harvey A Whiteford; James D Wilkinson; Thomas N Williams; Charles D Wolfe; Timothy M Wolock; Anthony D Woolf; Sarah Wulf; Brittany Wurtz; Gelin Xu; Lijing L Yan; Yuichiro Yano; Pengpeng Ye; Gökalp K Yentür; Paul Yip; Naohiro Yonemoto; Seok-Jun Yoon; Mustafa Z Younis; Chuanhua Yu; Maysaa E Zaki; Yong Zhao; Yingfeng Zheng; David Zonies; Xiaonong Zou; Joshua A Salomon; Alan D Lopez; Theo Vos
Journal:  Lancet       Date:  2015-08-28       Impact factor: 79.321

10.  Neighbourhood deprivation and health: does it affect us all equally?

Authors:  Mai Stafford; Michael Marmot
Journal:  Int J Epidemiol       Date:  2003-06       Impact factor: 7.196

View more
  9 in total

1.  Relative importance of perceived physical and social neighborhood characteristics for depression: a machine learning approach.

Authors:  Marco Helbich; Julian Hagenauer; Hannah Roberts
Journal:  Soc Psychiatry Psychiatr Epidemiol       Date:  2019-11-14       Impact factor: 4.328

2.  Residential segregation, neighborhood violence and disorder, and inequalities in anxiety among Jewish and Palestinian-Arab perinatal women in Israel.

Authors:  Nihaya Daoud; Samira Alfayumi-Zeadna; Aviad Tur-Sinai; Nabil Geraisy; Ilan Talmud
Journal:  Int J Equity Health       Date:  2020-12-09

3.  Knowledge, health beliefs and attitudes towards dementia and dementia risk reduction among the Dutch general population: a cross-sectional study.

Authors:  J Vrijsen; T F Matulessij; T Joxhorst; S E de Rooij; N Smidt
Journal:  BMC Public Health       Date:  2021-05-03       Impact factor: 3.295

4.  Association between housing environment and depressive symptoms among older people: a multidimensional assessment.

Authors:  Yuan Chen; Ping Yu Cui; Yi Yang Pan; Ya Xing Li; Nuremaguli Waili; Ying Li
Journal:  BMC Geriatr       Date:  2021-04-17       Impact factor: 3.921

5.  Association between dementia parental family history and mid-life modifiable risk factors for dementia: a cross-sectional study using propensity score matching within the Lifelines cohort.

Authors:  Joyce Vrijsen; Ameen Abu-Hanna; Sophia E de Rooij; Nynke Smidt
Journal:  BMJ Open       Date:  2021-12-20       Impact factor: 2.692

6.  Keeping up with the Wangs: individual and contextual influences on mental wellbeing and depressive symptoms in China.

Authors:  R Adele H Wang; Claire M A Haworth; Qiang Ren
Journal:  BMC Public Health       Date:  2022-03-29       Impact factor: 3.295

7.  The association between the presence of fast-food outlets and BMI: the role of neighbourhood socio-economic status, healthy food outlets, and dietary factors.

Authors:  Carel-Peter L van Erpecum; Sander K R van Zon; Ute Bültmann; Nynke Smidt
Journal:  BMC Public Health       Date:  2022-07-27       Impact factor: 4.135

8.  A spatial analysis of dietary patterns in a large representative population in the north of The Netherlands - the Lifelines cohort study.

Authors:  Louise H Dekker; Richard H Rijnks; Dirk Strijker; Gerjan J Navis
Journal:  Int J Behav Nutr Phys Act       Date:  2017-12-07       Impact factor: 6.457

9.  Not urbanization level but socioeconomic, physical and social neighbourhood characteristics are associated with presence and severity of depressive and anxiety disorders.

Authors:  Ellen Generaal; Erik J Timmermans; Jasper E C Dekkers; Johannes H Smit; Brenda W J H Penninx
Journal:  Psychol Med       Date:  2018-03-15       Impact factor: 7.723

  9 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.