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HT-eQTL:大量人类组织中的综合表达数量性状基因座分析。

HT-eQTL: integrative expression quantitative trait loci analysis in a large number of human tissues.

机构信息

Department of Biostatistics, Mailman School of Public Health, Columbia University, 722 W 168 Street, New York, USA.

Center for Human Health and the Environment and Bioinformatics Research Center, North Carolina State University, 850 Main Campus Drive, Raleigh, 27695, USA.

出版信息

BMC Bioinformatics. 2018 Mar 9;19(1):95. doi: 10.1186/s12859-018-2088-3.

Abstract

BACKGROUND

Expression quantitative trait loci (eQTL) analysis identifies genetic markers associated with the expression of a gene. Most existing eQTL analyses and methods investigate association in a single, readily available tissue, such as blood. Joint analysis of eQTL in multiple tissues has the potential to improve, and expand the scope of, single-tissue analyses. Large-scale collaborative efforts such as the Genotype-Tissue Expression (GTEx) program are currently generating high quality data in a large number of tissues. However, computational constraints limit genome-wide multi-tissue eQTL analysis.

RESULTS

We develop an integrative method under a hierarchical Bayesian framework for eQTL analysis in a large number of tissues. The model fitting procedure is highly scalable, and the computing time is a polynomial function of the number of tissues. Multi-tissue eQTLs are identified through a local false discovery rate approach, which rigorously controls the false discovery rate. Using simulation and GTEx real data studies, we show that the proposed method has superior performance to existing methods in terms of computing time and the power of eQTL discovery.

CONCLUSIONS

We provide a scalable method for eQTL analysis in a large number of tissues. The method enables the identification of eQTL with different configurations and facilitates the characterization of tissue specificity.

摘要

背景

表达数量性状基因座(eQTL)分析确定与基因表达相关的遗传标记。大多数现有的 eQTL 分析和方法都在单个易于获得的组织(如血液)中研究关联。对多个组织中的 eQTL 进行联合分析有可能改善和扩展单组织分析的范围。像基因型-组织表达(GTEx)计划这样的大规模合作努力目前正在大量组织中生成高质量数据。然而,计算限制限制了全基因组多组织 eQTL 分析。

结果

我们在层次贝叶斯框架下开发了一种用于大量组织中 eQTL 分析的综合方法。模型拟合过程具有高度可扩展性,计算时间是组织数量的多项式函数。通过局部错误发现率方法识别多组织 eQTL,该方法严格控制错误发现率。通过模拟和 GTEx 真实数据研究,我们表明与现有方法相比,该方法在计算时间和 eQTL 发现的功效方面具有优越的性能。

结论

我们提供了一种用于大量组织中 eQTL 分析的可扩展方法。该方法能够识别具有不同配置的 eQTL,并有助于表征组织特异性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0d24/5845327/3a43ea64ecfe/12859_2018_2088_Fig1_HTML.jpg

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