Gui Hongsheng, Li Miaoxin, Sham Pak C, Cherny Stacey S
Department of Psychiatry, The University of Hong Kong, Hong Kong, SAR, China.
BMC Res Notes. 2011 Oct 7;4:386. doi: 10.1186/1756-0500-4-386.
Though rooted in genomic expression studies, pathway analysis for genome-wide association studies (GWAS) has gained increasing popularity, since it has the potential to discover hidden disease pathogenic mechanisms by combining statistical methods with biological knowledge. Generally, algorithms or programs proposed recently can be categorized by different types of input data, null hypothesis or counts of analysis stages. Due to complexity caused by SNP, gene and pathway relationships, re-sampling strategies like permutation are always utilized to derive an empirical distribution for test statistics for evaluating the significance of candidate pathways. However, evaluation of these algorithms on real GWAS datasets and real biological pathway databases needs to be addressed before we apply them widely with confidence.
Two algorithms which use summary statistics from GWAS as input were implemented in KGG, a novel and user-friendly software tool for GWAS pathway analysis. Comparisons of these two algorithms as well as the other five selected algorithms were conducted by analyzing the WTCCC Crohn's Disease dataset utilizing the MsigDB canonical pathways. As a result of using permutation to obtain empirical p-value, most of these methods could control Type I error rate well, although some are conservative. However, the methods varied greatly in terms of power and running time, with the PLINK truncated set-based test being the most powerful and KGG being the fastest.
Raw data-based algorithms, such as those implemented in PLINK, are preferable for GWAS pathway analysis as long as computational capacity is available. It may be worthwhile to apply two or more pathway analysis algorithms on the same GWAS dataset, since the methods differ greatly in their outputs and might provide complementary findings for the studied complex disease.
尽管全基因组关联研究(GWAS)的通路分析起源于基因组表达研究,但由于它有潜力通过将统计方法与生物学知识相结合来发现隐藏的疾病致病机制,因而越来越受欢迎。一般来说,最近提出的算法或程序可以根据不同类型的输入数据、零假设或分析阶段的数量进行分类。由于单核苷酸多态性(SNP)、基因和通路关系所导致的复杂性,诸如置换等重采样策略总是被用于推导检验统计量的经验分布,以评估候选通路的显著性。然而,在我们有信心广泛应用这些算法之前,需要先在真实的GWAS数据集和真实的生物通路数据库上对其进行评估。
在KGG(一种用于GWAS通路分析的新颖且用户友好的软件工具)中实现了两种将GWAS的汇总统计量作为输入的算法。利用MsigDB标准通路分析WTCCC克罗恩病数据集,对这两种算法以及另外五种选定的算法进行了比较。由于使用置换来获得经验p值,尽管有些方法较为保守,但大多数方法都能很好地控制I型错误率。然而,这些方法在功效和运行时间方面差异很大,其中基于PLINK截断集的检验功效最强,而KGG运行速度最快。
只要计算能力允许,基于原始数据的算法(如PLINK中实现的算法)对于GWAS通路分析来说更可取。在同一个GWAS数据集上应用两种或更多种通路分析算法可能是值得的,因为这些方法的输出差异很大,可能会为所研究的复杂疾病提供互补的发现。