2018
DOI: 10.1002/gepi.22110
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Integrating eQTL data with GWAS summary statistics in pathway‐based analysis with application to schizophrenia

Abstract: Many genetic variants affect complex traits through gene expression, which can be exploited to boost statistical power and enhance interpretation in genome-wide association studies (GWASs) as demonstrated by the transcriptome-wide association study (TWAS) approach. Furthermore, due to polygenic inheritance, a complex trait is often affected by multiple genes with similar functions as annotated in gene pathways. Here, we extend TWAS from gene-based analysis to pathway-based analysis: we integrate public pathway… Show more

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Cited by 23 publications
(26 citation statements)
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“…We used a stringent Bonferroni cutoff (0:05=500 ¼ 1 3 10 24 ) for pathway-based analysis. For comparison, we applied a new method (Wu and Pan 2018), which extends TWAS from gene-based to pathwaybased analysis. Briefly, we applied the weighted SPU(1) and SPU(2) tests, in which each of the SNPs in the genes (or their extended regions) belonging to a pathway is weighted by its estimated cis-effect size on the gene expression based on an eQTL data set.…”
Section: Statistical Testsmentioning
confidence: 99%
“…We used a stringent Bonferroni cutoff (0:05=500 ¼ 1 3 10 24 ) for pathway-based analysis. For comparison, we applied a new method (Wu and Pan 2018), which extends TWAS from gene-based to pathwaybased analysis. Briefly, we applied the weighted SPU(1) and SPU(2) tests, in which each of the SNPs in the genes (or their extended regions) belonging to a pathway is weighted by its estimated cis-effect size on the gene expression based on an eQTL data set.…”
Section: Statistical Testsmentioning
confidence: 99%
“…If we focus on data from transcriptomewide association studies, we can set the weights of WSS and the elements of the diagonal of matrix A as the corresponding estimated cis-effects on gene expression. Then, the two methods WSS and SSU contained in our method become PathSPU(1) and PathSPU(2) method proposed by Wu and Pan (2018). Therefore, the OWC is an optimally weighted combination test that can reach maximized power.…”
Section: Discussionmentioning
confidence: 99%
“…If we believe that the causal SNPs would be subject to "purifying selection" and thus appear less frequently in the population than neutral SNPs, we set w m = 1/ p m (1 − p m ), where p m denotes the minor allele frequency (MAF) of the m th variant, and obtain L W = L(1/ p 1 (1 − p 1 ), · · · , 1/ p M (1 − p M )), which is the weighted sum statistic (WSS) (Madsen and Browning, 2009). If we assume that the values of the weights W come from gene expression or functional annotation data, the test degenerates into the PathSPU(1) test (Wu and Pan 2018). We know that S(w 1 , · · · , w M ) follows central chi-square distribution with 1 degree of freedom (χ 2 1 ) and L(w 1 , · · · , w M ) follows multivariate normal distribution with mean 0 and covariance matrix W RW under the null hypothesis when the choice of the weight function W is not proportional to Z.…”
Section: Gene-based Testsmentioning
confidence: 99%
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“…A limitation of all of the above approaches is that they treat all genes within the focal gene‐set equally, even though there is substantial external prior information about the relative importance of a gene within a gene‐set and incorporating such prior information may substantially increase power (Genovese, Roeder, & Wasserman, 2006; Ma & Wei, 2019; Pan, Kwak, & Wei, 2015; Roeder & Wasserman, 2009; Wu & Pan, 2018) Genic intolerance (Petrovski, Wang, Heinzen, Allen, & Goldstein, 2013), network centrality (Barabási & Albert, 1999; Goh et al, 2007; White & Smyth, 2003), and gene expression in disease relevant tissues are examples of sources of prior information that can be used to quantify the relative importance of genes within gene‐sets. We discuss these sources of prior information in detail in the materials and methods section below.…”
Section: Introductionmentioning
confidence: 99%