Effect of modeling a multilevel structure on the Indian population to identify the factors influencing HIV infection

Nidhiya Menon, Binukumar Bhaskarapillai, A. Richardson
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Abstract

ABSTRACT Many studies have addressed the factors associated with HIV in the Indian population. Some of these studies have used sampling weights for the risk estimation of factors associated with HIV, but few studies have adjusted for the multilevel structure of survey data. The National Family Health Survey 3 collected data across India between 2005 and 2006. 38,715 females and 66,212 males with complete information were analyzed. To account for the correlations within clusters, a three-level model was employed. Bivariate and multivariable mixed effect logistic regression analysis were performed to identify factors associated with HIV. Intracluster correlation coefficients were used to assess the relatedness of each pair of variables within clusters. Variables pertaining to no knowledge of contraceptive methods, age at first marriage, wealth index and noncoverage of PSUs by Anganwadis were significant risk factors for HIV when the multileveled model was used for analysis. This study has identified the risk profile for HIV infection using an appropriate modeling strategy and has highlighted the consequences of ignoring the structure of the data. It offers a methodological guide towards an applied approach to the identification of future risk and the need to customize intervention to address HIV infection in the Indian population.
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对印度人口进行多层次结构建模以确定影响HIV感染的因素的效果
摘要许多研究都探讨了印度人群中与艾滋病毒相关的因素。其中一些研究使用了抽样权重来估计与艾滋病毒相关的因素的风险,但很少有研究对调查数据的多级结构进行了调整。全国家庭健康调查3收集了2005年至2006年间印度各地的数据。对38715名女性和66212名信息完整的男性进行了分析。为了说明集群内的相关性,采用了一个三级模型。进行双变量和多变量混合效应逻辑回归分析,以确定与HIV相关的因素。聚类内相关系数用于评估聚类内每对变量的相关性。当使用多层次模型进行分析时,与不了解避孕方法、初婚年龄、财富指数和Anganwadis的PSU非平均值有关的变量是感染HIV的重要风险因素。这项研究使用适当的建模策略确定了艾滋病毒感染的风险状况,并强调了忽视数据结构的后果。它为确定未来风险的应用方法以及为解决印度人口中的艾滋病毒感染而定制干预措施的必要性提供了方法指南。
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来源期刊
Biostatistics and Epidemiology
Biostatistics and Epidemiology Medicine-Health Informatics
CiteScore
1.80
自引率
0.00%
发文量
23
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