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gespeR: a statistical model for deconvoluting off-target-confounded RNA interference screens

机译:gespeR:用于解卷积杂乱无章的RNA干扰筛选的统计模型

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摘要

Small interfering RNAs (siRNAs) exhibit strong off-target effects, which confound the gene-level interpretation of RNA interference screens and thus limit their utility for functional genomics studies. Here, we present gespeR, a statistical model for reconstructing individual, gene-specific phenotypes. Using 115,878 siRNAs, single and pooled, from three companies in three pathogen infection screens, we demonstrate that deconvolution of image-based phenotypes substantially improves the reproducibility between independent siRNA sets targeting the same genes. Genes selected and prioritized by gespeR are validated and shown to constitute biologically relevant components of pathogen entry mechanisms and TGF-β signaling. gespeR is available as a Bioconductor R-package.
机译:小型干扰RNA(siRNA)表现出较强的脱靶效应,这混淆了RNA干扰筛选的基因水平解释,因此限制了它们在功能基因组学研究中的用途。在这里,我们介绍gespeR,这是一种用于重建个体,基因特异性表型的统计模型。在三个病原体感染筛选中,使用来自三个公司的115,878个siRNA(单个和合并),我们证明基于图像的表型去卷积可显着提高针对相同基因的独立siRNA集之间的可重复性。验证了由gespeR选择并确定优先顺序的基因,并证明它们构成病原体进入机制和TGF-β信号传导的生物学相关成分。 gespeR可作为Bioconductor R包装使用。

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