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评估基于人群的 HIV 影响评估调查中纳入调查结果的无应答加权调整。

Evaluating Nonresponse Weighting Adjustment for the Population-Based HIV Impact Assessment Surveys on Incorporating Survey Outcomes.

机构信息

Department of Epidemiology, ICAP at Columbia University, Mailman School of Public Health of Columbia University, New York, NY; and.

Statistics, Estimation and Modeling Team, Health Informatics, Data Management & Statistics Branch, Division of Global HIV & TB, Center for Global Health, US Centers for Disease Control and Prevention, Atlanta, GA.

出版信息

J Acquir Immune Defic Syndr. 2021 Aug 1;87(Suppl 1):S52-S56. doi: 10.1097/QAI.0000000000002636.

Abstract

BACKGROUND

The nonresponse weighting adjustment of the Population-based HIV Impact Assessment (PHIA) surveys uses the weighting class method in combination with a tree analysis to identify predictors significant to response propensity. Variable selection for this type of nonresponse adjustment identifies auxiliary variables correlated with response propensity alone and produces 1 set of weights applicable for all analyses of the survey data. An alternative approach identifies auxiliary variables correlated to both the response probability and selected key outcome variables. This approach may identify a different set of variables for the nonresponse adjustments and may produce more efficient estimates for the key outcome variables.

SETTING

The PHIA surveys from 2016 to 2017.

METHODS

Weighting class, joint-classification, and two-step modeling.

RESULTS

There was little difference among estimates produced by the alternative weighting methods and the PHIA estimates. The joint-classification method produced more efficient estimates (ie, smaller design effects) compared with the PHIA method, while the two-step method was inconclusive.

CONCLUSIONS

The efficiency of the estimates produced by the PHIA weighting method closely resembles those specifically targeted at key survey outcomes and serves well as a multipurpose weight.

摘要

背景

基于人群的艾滋病毒影响评估(PHIA)调查的无应答加权调整采用加权类方法结合树分析来确定对应答倾向有重要意义的预测因子。这种无应答调整的变量选择仅识别与应答倾向相关的辅助变量,并生成适用于调查数据所有分析的 1 组权重。另一种方法识别与应答概率和选定的关键结果变量都相关的辅助变量。这种方法可能会为无应答调整确定一组不同的变量,并可能为关键结果变量产生更有效的估计。

设置

2016 年至 2017 年的 PHIA 调查。

方法

加权类、联合分类和两步建模。

结果

替代加权方法和 PHIA 估计产生的估计值之间几乎没有差异。与 PHIA 方法相比,联合分类方法产生了更有效的估计值(即更小的设计效果),而两步法则没有明确的结论。

结论

PHIA 加权方法产生的估计值的效率与专门针对关键调查结果的估计值非常相似,是一种多用途的权重。

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