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首页> 外文期刊>Biometrics: Journal of the Biometric Society : An International Society Devoted to the Mathematical and Statistical Aspects of Biology >Combining complete multivariate outcomes with incomplete covariate information: a latent class approach.
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Combining complete multivariate outcomes with incomplete covariate information: a latent class approach.

机译:将完整的多变量结果与不完整的协变量信息相结合:一种潜在的分类方法。

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摘要

This work was motivated by the need to combine outcome information from a reference population with risk factor information from a screened subpopulation in a setting where the analytic goal was to study the association between risk factors and multiple binary outcomes. To achieve such an analytic goal, this article proposes a two-stage latent class procedure that first summarizes the commonalities among outcomes using a reference population sample, then analyzes the association between outcomes and risk factors. It develops a pseudo-maximum likelihood approach to estimating model parameters. The performance of the proposed method is evaluated in a simulation study and in an illustrative analysis of data from the Women's Health and Aging Study, a recent investigation of the causes and course of disability in older women. Combining information in the proposed way is found to improve both accuracy and precision in summarizing multiple categorical outcomes, which effectively diminishes ambiguity and bias in making risk factor inferences.
机译:这项工作的动机是需要将参考人群的结果信息与筛选出的亚群的风险因素信息结合起来,而这种分析目标是研究风险因素与多种二元结果之间的关联。为了实现这一分析目标,本文提出了一个两阶段的潜在类别程序,该程序首先使用参考人群样本总结结果之间的共性,然后分析结果与风险因素之间的关联。它开发了一种伪最大似然方法来估计模型参数。拟议方法的性能在模拟研究中进行了评估,并在对妇女健康和老龄化研究的数据进行的示例性分析中进行了评估,该研究是对老年妇女残疾原因和病程的最新调查。发现以建议的方式组合信息可以提高汇总多个分类结果的准确性和准确性,这有效地减少了进行风险因素推断时的歧义和偏见。

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