LEP: A Statistical Method Integrating Individual-Level and Summary-Level Data of the Same Trait From Different Populations

Mingwei Dai, Jin Liu, Can Yang
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Abstract

Statistical approaches for integrating multiple data sets in genome-wide association studies (GWASs) are increasingly important. Proper utilization of more relevant information is expected to improve statistical efficiency in the analysis. Among these approaches, LEP was proposed for joint analysis of individual-level data and summary-level data in the same population by leveraging pleiotropy. The key idea of LEP is to explore correlation of the association status among different data sets while accounting for the heterogeneity. In this commentary, we show that LEP is applicable to integrate individual-level data and summary-level data of the same trait from different populations, providing new insights into the genetic architecture of different populations.
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LEP:一种整合来自不同种群的同一性状的个体水平和汇总水平数据的统计方法
在全基因组关联研究(GWASs)中,整合多个数据集的统计方法越来越重要。预期适当地利用更多有关的资料将提高分析的统计效率。在这些方法中,LEP被提出利用多效性对同一人群的个体水平数据和汇总水平数据进行联合分析。LEP的核心思想是在考虑异质性的同时,探索不同数据集之间关联状态的相关性。在这篇评论中,我们表明LEP适用于整合来自不同群体的同一性状的个体水平数据和汇总水平数据,为不同群体的遗传结构提供了新的见解。
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