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Efficient and accurate causal inference with hidden confounders from genome-transcriptome variation data

机译:从基因组转录组变异数据中利用隐藏的混杂因素进行有效,准确的因果推断

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Mapping gene expression as a quantitative trait using whole genome-sequencing and transcriptome analysis allows to discover the functional consequences of genetic variation. We developed a novel method and ultra-fast software Findr for higly accurate causal inference between gene expression traits using cis-regulatory DNA variations as causal anchors, which improves current methods by taking into consideration hidden confounders and weak regulations. Findr outperformed existing methods on the DREAM5 Systems Genetics challenge and on the prediction of microRNA and transcription factor targets in human lymphoblastoid cells, while being nearly a million times faster. Findr is publicly available at https://github.com/lingfeiwang/findr.
机译:使用全基因组测序和转录组分析将基因表达作为定量特征进行定位,可以发现遗传变异的功能后果。我们开发了一种新颖的方法和超快速软件Findr,用于使用顺式调控DNA变异作为因果锚,从而在基因表达性状之间进行高准确度的因果推断,从而通过考虑隐藏的混杂因素和弱性法规来改进当前方法。 Findr在DREAM5系统遗传学挑战以及预测人类淋巴母细胞中microRNA和转录因子靶标方面优于现有方法,但速度快了近一百万倍。 Findr可在https://github.com/lingfeiwang/findr上公开获得。

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