贝叶斯结果选择模型。

Q1 Mathematics
Lms Journal of Computation and Mathematics Pub Date : 2023-01-01 Epub Date: 2023-03-29 DOI:10.1002/sta4.568
Khue-Dung Dang, Louise M Ryan, Richard J Cook, Tugba Akkaya Hocagil, Sandra W Jacobson, Joseph L Jacobson
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引用次数: 0

摘要

在精神病学和社会流行病学研究中,通常使用被认为与潜在兴趣结构相关的综合测试来测量多种不同的结果。在激励我们工作的研究中,研究人员想要评估子宫内酒精暴露对儿童认知和神经心理发展的影响,这是通过一系列不同的心理测试来评估的。对多重结果数据的统计分析可能具有挑战性,因为在同一个体上测量的结果不是独立的。此外,目前尚不清楚哪些结果会受到研究中暴露的影响。虽然研究人员通常会对哪些结果是重要的有一些假设,但需要一个框架来帮助确定对暴露敏感的结果,并量化相关的治疗或感兴趣的暴露效应。我们提出了这样一个框架,使用随机搜索变量选择的修改,一个流行的贝叶斯变量选择模型,并用它来量化暴露对受影响结果的总体影响。本文对该方法的性能进行了实证研究,并利用我们的激励研究数据进行了应用说明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian outcome selection modeling.

In psychiatric and social epidemiology studies, it is common to measure multiple different outcomes using a comprehensive battery of tests thought to be related to an underlying construct of interest. In the research that motivates our work, researchers wanted to assess the impact of in utero alcohol exposure on child cognition and neuropsychological development, which are evaluated using a range of different psychometric tests. Statistical analysis of the resulting multiple outcomes data can be challenging, because the outcomes measured on the same individual are not independent. Moreover, it is unclear, a priori, which outcomes are impacted by the exposure under study. While researchers will typically have some hypotheses about which outcomes are important, a framework is needed to help identify outcomes that are sensitive to the exposure and to quantify the associated treatment or exposure effects of interest. We propose such a framework using a modification of stochastic search variable selection, a popular Bayesian variable selection model and use it to quantify an overall effect of the exposure on the affected outcomes. The performance of the method is investigated empirically and an illustration is given through application using data from our motivating study.

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来源期刊
Lms Journal of Computation and Mathematics
Lms Journal of Computation and Mathematics MATHEMATICS, APPLIED-MATHEMATICS
CiteScore
2.60
自引率
0.00%
发文量
0
审稿时长
>12 weeks
期刊介绍: LMS Journal of Computation and Mathematics has ceased publication. Its final volume is Volume 20 (2017). LMS Journal of Computation and Mathematics is an electronic-only resource that comprises papers on the computational aspects of mathematics, mathematical aspects of computation, and papers in mathematics which benefit from having been published electronically. The journal is refereed to the same high standard as the established LMS journals, and carries a commitment from the LMS to keep it archived into the indefinite future. Access is free until further notice.
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