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矩阵反演和子集选择 (MISS):一种用于绘制小鼠大脑中不同细胞类型图谱的流水线。

Matrix Inversion and Subset Selection (MISS): A pipeline for mapping of diverse cell types across the murine brain.

机构信息

Department of Radiology, University of California, San Francisco, CA 94143.

Department of Radiology, Weill Cornell Medicine of Cornell University, New York, NY 10065.

出版信息

Proc Natl Acad Sci U S A. 2022 Apr 5;119(14):e2111786119. doi: 10.1073/pnas.2111786119. Epub 2022 Apr 1.

Abstract

The advent of increasingly sophisticated imaging platforms has allowed for the visualization of the murine nervous system at single-cell resolution. However, current experimental approaches have not yet produced whole-brain maps of a comprehensive set of neuronal and nonneuronal types that approaches the cellular diversity of the mammalian cortex. Here, we aim to fill in this gap in knowledge with an open-source computational pipeline, Matrix Inversion and Subset Selection (MISS), that can infer quantitatively validated distributions of diverse collections of neural cell types at 200-μm resolution using a combination of single-cell RNA sequencing (RNAseq) and in situ hybridization datasets. We rigorously demonstrate the accuracy of MISS against literature expectations. Importantly, we show that gene subset selection, a procedure by which we filter out low-information genes prior to performing deconvolution, is a critical preprocessing step that distinguishes MISS from its predecessors and facilitates the production of cell-type maps with significantly higher accuracy. We also show that MISS is generalizable by generating high-quality cell-type maps from a second independently curated single-cell RNAseq dataset. Together, our results illustrate the viability of computational approaches for determining the spatial distributions of a wide variety of cell types from genetic data alone.

摘要

越来越复杂的成像平台的出现使得可以以单细胞分辨率可视化小鼠神经系统。然而,目前的实验方法尚未产生接近哺乳动物皮层细胞多样性的全面神经元和非神经元类型的全脑图谱。在这里,我们旨在通过开源计算管道 Matrix Inversion and Subset Selection(MISS)填补这一知识空白,该管道可以使用单细胞 RNA 测序(RNAseq)和原位杂交数据集的组合,以 200-μm 的分辨率推断出定量验证的不同神经细胞类型的分布。我们严格证明了 MISS 对文献预期的准确性。重要的是,我们表明,基因子集选择是在进行去卷积之前过滤掉低信息量基因的过程,这是一个关键的预处理步骤,它将 MISS 与其前身区分开来,并促进了具有显著更高准确性的细胞类型图谱的生成。我们还表明,通过从第二个独立编辑的单细胞 RNAseq 数据集生成高质量的细胞类型图谱,MISS 是通用的。总之,我们的结果表明,仅从遗传数据确定各种细胞类型的空间分布的计算方法是可行的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/03c3/9168512/bf2bad09db85/pnas.2111786119fig01.jpg

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