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Analysis of the joint effect of SNPs to identify independent loci and allelic heterogeneity in schizophrenia GWAS data

机译:分析SNP联合作用以鉴定精神分裂症GWAS数据中的独立基因座和等位基因异质性

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We have tested published methods for capturing allelic heterogeneity and identifying loci of joint effects to uncover more of the “hidden heritability” of schizophrenia (SCZ). We used two tools, cojo-GCTA and multi-SNP, to analyze meta-statistics from the latest genome-wide association study (GWAS) on SCZ by the Psychiatric Genomics Consortium (PGC). Stepwise regression on markers with p values ?7 in cojo-GCTA identified 96 independent signals. Eighty-five passed the genome-wide significance threshold. Cross-validation of cojo-GCTA by CLUMP was 76%, i.e., 26 of the loci identified by the PGC using CLUMP were found to be dependent on another locus by cojo-GCTA. The overlap between cojo-GCTA and multi-SNP was better (up to 92%). Three markers reached genome-wide significance (5?×?10?8) in a joint effect model. In addition, two loci showed possible allelic heterogeneity within 1-Mb genomic regions, while CLUMP analysis had identified 16 such regions. Cojo-GCTA identified fewer independent loci than CLUMP and seems to be more conservative, probably because it accounts for long-range LD and interaction effects between markers. These findings also explain why fewer loci with possible allelic heterogeneity remained significant after cojo-GCTA analysis. With multi-SNP, 86 markers were selected at the threshold 10?7. Multi-SNP identifies fewer independent signals, due to splitting of the data and use of smaller samples. We recommend that cojo-GCTA and multi-SNP are used for post-GWAS analysis of all traits to call independent loci. We conclude that only a few loci in SCZ show joint effects or allelic heterogeneity, but this could be due to lack of power for that data set.
机译:我们已经测试了已发布的方法,用于捕获等位基因异质性和鉴定联合效应基因座,以揭示精神分裂症(SCZ)的更多“隐藏遗传性”。我们使用了cojo-GCTA和multi-SNP这两种工具来分析来自Psychiatric Genomics Consortium(PGC)对SCZ进行的最新全基因组关联研究(GWAS)的元统计数据。在cojo-GCTA中,对p值为?7 的标记进行逐步回归可确定96个独立信号。八十五岁超过了全基因组重要性阈值。 CLUMP对cojo-GCTA的交叉验证率为76%,即,使用CLUMP的PGC鉴定出的基因座中有26个依赖于cojo-GCTA的另一个基因座。 cojo-GCTA和多SNP之间的重叠更好(高达92%)。在联合效应模型中,三个标记达到了全基因组意义(5?×?10 ?8 )。此外,两个基因座显示在1-Mb基因组区域内可能存在等位基因异质性,而CLUMP分析已鉴定出16个此类区域。 Cojo-GCTA所鉴定的独立基因座比CLUMP少,并且似乎更保守,可能是因为它解释了长期LD和标记之间的相互作用。这些发现也解释了为什么在进行cojo-GCTA分析后,具有较少可能的等位基因异质性的基因座仍然显着。使用多SNP,在10 ?7 阈值处选择了86个标记。由于数据分裂和使用较小的样本,Multi-SNP识别较少的独立信号。我们建议将cojo-GCTA和multi-SNP用于所有特征的GWAS后分析,以称为独立基因座。我们得出的结论是,SCZ中只有几个基因座显示出联合效应或等位基因异质性,但这可能是由于该数据集缺乏功能所致。

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