Genome-wide association studies of viral infections—A short guide to a successful experimental and statistical analysis

A. Butković, S. Elena
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引用次数: 1

Abstract

Genome-wide association studies (GWAS) have been gaining popularity over the last decade as they provide new insights into the genetic architecture of many disease-related traits. GWAS is based on the common disease common variant hypothesis, allowing identification of alleles associated with susceptibility and symptomatology of most common infectious diseases, such as AIDS, common cold, flu, and many others. It depends on the natural variation in a host population which can help identify genetic variants responsible for virus disease-related traits. Considering the prevalence of viruses in the ecosystem and their societal burden, identification of potential resistance loci or therapeutic targets is of great interest. Here, we highlight the most important points necessary for a successful GWAS of viral infectious diseases, focusing on the study design and various statistical methods used. Finally, we exemplify this application with studies done with human immunodeficiency virus type 1 and turnip mosaic virus.
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病毒感染的全基因组关联研究——成功的实验和统计分析的简短指南
全基因组关联研究(GWAS)在过去十年中越来越受欢迎,因为它们为许多疾病相关性状的遗传结构提供了新的见解。GWAS基于常见病常见变异假说,允许识别与大多数常见传染病的易感性和症状相关的等位基因,如艾滋病、普通感冒、流感和许多其他疾病。它取决于宿主群体的自然变异,这有助于识别导致病毒疾病相关特征的遗传变异。考虑到病毒在生态系统中的普遍性及其社会负担,识别潜在的耐药性基因座或治疗靶点具有重要意义。在这里,我们强调了成功进行病毒性传染病GWAS所需的最重要的几点,重点是研究设计和使用的各种统计方法。最后,我们通过对人类免疫缺陷病毒1型和芜菁花叶病毒的研究来举例说明这种应用。
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