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IGESS: a statistical approach to integrating individual-level genotype data and summary statistics in genome-wide association studies

机译:IGESS:一种统计方法,可集成个体级基因型数据和基因组关联研究中的概述统计

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Motivation: Results from genome-wide association studies (GWAS) suggest that a complex phenotype is often affected by many variants with small effects, known as 'polygenicity'. Tens of thousands of samples are often required to ensure statistical power of identifying these variants with small effects. However, it is often the case that a research group can only get approval for the access to individual-level genotype data with a limited sample size (e.g. a few hundreds or thousands). Meanwhile, summary statistics generated using single-variant-based analysis are becoming publicly available. The sample sizes associated with the summary statistics datasets are usually quite large. How to make the most efficient use of existing abundant data resources largely remains an open question.
机译:动机:基因组 - 宽协会研究的结果表明复杂的表型通常受许多具有小效果的变种影响,称为“多种因素”。 通常需要成千上万的样品来确保鉴定具有小效果的这些变体的统计力。 但是,通常情况下,研究组只能获得具有有限的样本大小(例如几百或数千)的单独级基因型数据的批准。 同时,使用基于单变种的分析产生的摘要统计数据正在公开可用。 与摘要统计数据集关联的示例大小通常相当大。 如何使现有丰富的数据资源最有效地利用仍然是一个开放的问题。

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