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使用CLEANER对单细胞CRISPR筛选中环境引导RNA进行表征和生物信息学筛选。

Characterization and bioinformatic filtering of ambient gRNAs in single-cell CRISPR screens using CLEANSER.

作者信息

Liu Siyan, Hamilton Marisa C, Cowart Thomas, Barrera Alejandro, Bounds Lexi R, Nelson Alexander C, Doty Richard W, Allen Andrew S, Crawford Gregory E, Majoros William H, Gersbach Charles A

机构信息

Computational Biology and Bioinformatics, Duke University, Durham, NC, USA.

Department of Biomedical Engineering, Duke University, Durham, NC, USA.

出版信息

bioRxiv. 2024 Sep 4:2024.09.04.611293. doi: 10.1101/2024.09.04.611293.

Abstract

Recent technological developments in single-cell RNA-seq CRISPR screens enable high-throughput investigation of the genome. Through transduction of a gRNA library to a cell population followed by transcriptomic profiling by scRNA-seq, it is possible to characterize the effects of thousands of genomic perturbations on global gene expression. A major source of noise in scRNA-seq CRISPR screens are ambient gRNAs, which are contaminating gRNAs that likely originate from other cells. If not properly filtered, ambient gRNAs can result in an excess of false positive gRNA assignments. Here, we utilize CRISPR barnyard assays to characterize ambient gRNA noise in single-cell CRISPR screens. We use these datasets to develop and train CLEANSER, a mixture model that identifies and filters ambient gRNA noise. This model takes advantage of the bimodal distribution between native and ambient gRNAs and includes both gRNA and cell-specific normalization parameters, correcting for confounding technical factors that affect individual gRNAs and cells. The output of CLEANSER is the probability that a gRNA-cell assignment is in the native distribution over the ambient distribution. We find that ambient gRNA filtering methods impact differential gene expression analysis outcomes and that CLEANSER outperforms alternate approaches by increasing gRNA-cell assignment accuracy.

摘要

单细胞RNA测序CRISPR筛选技术的最新发展使得对基因组进行高通量研究成为可能。通过将gRNA文库转导至细胞群体,然后利用单细胞RNA测序进行转录组分析,就能够表征数千种基因组扰动对全局基因表达的影响。单细胞RNA测序CRISPR筛选中一个主要的噪声来源是环境gRNA,即可能源自其他细胞的污染性gRNA。如果未进行适当过滤,环境gRNA可能会导致过多的gRNA假阳性分配。在这里,我们利用CRISPR谷仓分析来表征单细胞CRISPR筛选中的环境gRNA噪声。我们使用这些数据集来开发和训练CLEANER,这是一种识别和过滤环境gRNA噪声的混合模型。该模型利用了天然gRNA和环境gRNA之间的双峰分布,并包括gRNA和细胞特异性归一化参数,校正了影响单个gRNA和细胞的混杂技术因素。CLEANER的输出是gRNA-细胞分配处于天然分布而非环境分布的概率。我们发现环境gRNA过滤方法会影响差异基因表达分析结果,并且CLEANER通过提高gRNA-细胞分配准确性优于其他方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/336f/11398468/82adb8a742f8/nihpp-2024.09.04.611293v1-f0002.jpg

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