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老年人社区的社会人口学特征与抑郁症状:老年精神病学中的多层次模型分析

Sociodemographic characteristics of the neighborhood and depressive symptoms in older adults: using multilevel modeling in geriatric psychiatry.

作者信息

Hybels Celia F, Blazer Dan G, Pieper Carl F, Burchett Bruce M, Hays Judith C, Fillenbaum Gerda G, Kubzansky Laura D, Berkman Lisa F

机构信息

Department of Psychiatry and Behavioral Sciences, Duke University Medical Center, Durham, North Carolina 27710, USA.

出版信息

Am J Geriatr Psychiatry. 2006 Jun;14(6):498-506. doi: 10.1097/01.JGP.0000194649.49784.29.

Abstract

OBJECTIVE

Neighborhood sociodemographic characteristics may be important to the mental health of older adults who have decreased mobility and fewer resources. Our objective was to examine the association between neighborhood context and level of depressive symptomatology in older adults in a diverse geographic region of central North Carolina.

METHODS

The sample included 2,998 adults 65 or older residing in 91 census tracts. Depressive symptoms were measured using the Center for Epidemiologic Studies-Depression scale (CES-D). Neighborhoods were characterized by five census-based characteristics: socioeconomic disadvantage, socioeconomic advantage, racial/ethnic heterogeneity, residential stability, and age structure.

RESULTS

In ecologic level analyses, level of census tract socioeconomic disadvantage was associated with increased depressive symptoms. To determine whether neighborhood context was associated with depressive symptoms independently of individual characteristics, the authors used multilevel modeling. The authors examined the ability of each of five neighborhood (level 2) characteristics to predict a level 1 outcome (CES-D symptoms) controlling for the effects of individual (level 1) characteristics. Younger age, being widowed, lower income, and having some functional limitations were associated with increased depression symptoms conditional on census tract random effects. However, none of the neighborhood characteristics was significantly associated with depression symptoms, conditional on census tract random effects, either unadjusted or adjusted for individual characteristics.

CONCLUSION

Any observed association between neighborhood sociodemographic characteristics and individual depressive symptoms in our sample may reflect the characteristics of the individuals who reside in the neighborhood rather than the neighborhood characteristics themselves. The use of multilevel modeling is important to separate these effects.

摘要

目的

邻里社会人口学特征对于行动能力下降且资源较少的老年人的心理健康可能很重要。我们的目的是在北卡罗来纳州中部一个多样化的地理区域,研究邻里环境与老年人抑郁症状水平之间的关联。

方法

样本包括居住在91个人口普查区的2998名65岁及以上的成年人。使用流行病学研究中心抑郁量表(CES-D)测量抑郁症状。邻里环境通过五个基于人口普查的特征来描述:社会经济劣势、社会经济优势、种族/民族异质性、居住稳定性和年龄结构。

结果

在生态水平分析中,人口普查区的社会经济劣势水平与抑郁症状增加有关。为了确定邻里环境是否独立于个体特征与抑郁症状相关,作者使用了多层次模型。作者检验了五个邻里(第2层)特征中的每一个预测第1层结果(CES-D症状)的能力,同时控制个体(第1层)特征的影响。在人口普查区随机效应的条件下,年龄较小、丧偶、收入较低以及有一些功能限制与抑郁症状增加有关。然而,在人口普查区随机效应的条件下,无论是未调整还是调整个体特征后,没有一个邻里特征与抑郁症状显著相关。

结论

在我们的样本中,邻里社会人口学特征与个体抑郁症状之间任何观察到的关联可能反映了居住在该邻里的个体的特征,而不是邻里特征本身。使用多层次模型对于区分这些影响很重要。

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