Worm Perturb-Seq: massively parallel whole-animal RNAi and RNA-seq.

Hefei Zhang, Xuhang Li, Dongyuan Song, Onur Yukselen, Shivani Nanda, Alper Kucukural, Jingyi Jessica Li, Manuel Garber, Albertha J M Walhout
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Abstract

The transcriptome provides a highly informative molecular phenotype to connect genotype to phenotype and is most frequently measured by RNA-sequencing (RNA-seq). Therefore, an ultimate goal is to perturb every gene and measure changes in the transcriptome. However, this remains challenging, especially in intact organisms due to different experimental and computational challenges. Here, we present 'Worm Perturb-Seq (WPS)', which provides high-resolution RNA-seq profiles for hundreds of replicate perturbations at a time in a living animal. WPS introduces multiple experimental advances that combine strengths of bulk and single cell RNA-seq, and that further provides an analytical framework, EmpirDE, that leverages the unique power of the large WPS datasets. EmpirDE identifies differentially expressed genes (DEGs) by using gene-specific empirical null distributions, rather than control conditions alone, thereby systematically removing technical biases and improving statistical rigor. We applied WPS to 103 Caenhorhabditis elegans nuclear hormone receptors (NHRs) to delineate a Gene Regulatory Network (GRN) and found that this GRN presents a striking 'pairwise modularity' where pairs of NHRs regulate shared target genes. We envision that the experimental and analytical advances of WPS should be useful not only for C. elegans, but will be broadly applicable to other models, including human cells.

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蠕虫微扰测序:大规模并行全动物RNAi和RNA-seq。
转录组提供了一个高度信息丰富的分子表型,将基因型与表型联系起来,最常用的方法是rna测序(RNA-seq)。因此,最终目标是干扰每个基因并测量转录组的变化。然而,这仍然具有挑战性,特别是在完整的生物体中,由于不同的实验和计算挑战。在这里,我们提出了“蠕虫扰动序列(WPS)”,它提供了高分辨率的rna序列图谱,一次在活的动物中复制数百个扰动。WPS引入了多种实验进展,结合了大量和单细胞RNA-seq的优势,并进一步提供了一个分析框架,即利用大型WPS数据集的独特功能的EmpirDE。通过使用基因特异性的经验零分布(而不是单独的控制条件)来识别差异表达基因(deg),从而系统地消除了技术偏差并提高了统计严谨性。我们将WPS应用于103个秀丽隐杆线虫核激素受体(nhr)来描绘一个基因调控网络(GRN),并发现该GRN呈现出惊人的“成对模块化”,其中成对的nhr调节共享的靶基因。我们设想WPS的实验和分析进展不仅对秀丽隐杆线虫有用,而且将广泛适用于其他模型,包括人类细胞。
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