Single-nucleus cross-tissue molecular reference maps to decipher disease gene function
Author:
Eraslan GokcenORCID, Drokhlyansky EugeneORCID, Anand ShankaraORCID, Subramanian AyshwaryaORCID, Fiskin EvgenijORCID, Slyper MichalORCID, Wang JialiORCID, Wittenberghe Nicholas VanORCID, Rouhana John M.ORCID, Waldman JuliaORCID, Ashenberg OrrORCID, Dionne DanielleORCID, Win Thet Su, Cuoco Michael S.ORCID, Kuksenko OlenaORCID, Branton Philip A.ORCID, Marshall Jamie L.ORCID, Greka AnnaORCID, Getz GadORCID, Segrè Ayellet V.ORCID, Aguet FrançoisORCID, Rozenblatt-Rosen OritORCID, Ardlie Kristin G.ORCID, Regev AvivORCID
Abstract
AbstractUnderstanding the function of genes and their regulation in tissue homeostasis and disease requires knowing the cellular context in which genes are expressed in tissues across the body. Single cell genomics allows the generation of detailed cellular atlases in human tissues, but most efforts are focused on single tissue types. Here, we establish a framework for profiling multiple tissues across the human body at single-cell resolution using single nucleus RNA-Seq (snRNA-seq), and apply it to 8 diverse, archived, frozen tissue types (three donors per tissue). We apply four snRNA-seq methods to each of 25 samples from 16 donors, generating a cross-tissue atlas of 209,126 nuclei profiles, and benchmark them vs. scRNA-seq of comparable fresh tissues. We use a conditional variational autoencoder (cVAE) to integrate an atlas across tissues, donors, and laboratory methods. We highlight shared and tissue-specific features of tissue-resident immune cells, identifying tissue-restricted and non-restricted resident myeloid populations. These include a cross-tissue conserved dichotomy between LYVE1- and HLA class II-expressing macrophages, and the broad presence of LAM-like macrophages across healthy tissues that is also observed in disease. For rare, monogenic muscle diseases, we identify cell types that likely underlie the neuromuscular, metabolic, and immune components of these diseases, and biological processes involved in their pathology. For common complex diseases and traits analyzed by GWAS, we identify the cell types and gene modules that potentially underlie disease mechanisms. The experimental and analytical frameworks we describe will enable the generation of large-scale studies of how cellular and molecular processes vary across individuals and populations.
Publisher
Cold Spring Harbor Laboratory
Reference107 articles.
1. Alsaigh, T. , Evans, D. , Frankel, D. , & Torkamani, A. (2020). Decoding the transcriptome of atherosclerotic plaque at single-cell resolution. In bioRxiv (p. 2020.03.03.968123). https://doi.org/10.1101/2020.03.03.968123 2. Ayaub, E. A. , Poli, S. , Ng, J. , Adams, T. , Schupp, J. , Quesada-Arias, L. , Poli, F. , Cosme, C. , Robertson, M. , Martinez-Manzano, J. , Liang, X. , Villalba, J. , Lederer, J. , Chu, S. G. , Raby, B. A. , Washko, G. , Coarfa, C. , Perrella, M. A. , El-Chemaly, S. , … Rosas, I. O. (2021). Single Cell RNA-seq and Mass Cytometry Reveals a Novel and a Targetable Population of Macrophages in Idiopathic Pulmonary Fibrosis. In bioRxiv (p. 2021.01.04.425268). https://doi.org/10.1101/2021.01.04.425268 3. Exploiting the GTEx resources to decipher the mechanisms at GWAS loci;GTEx GWAS Working Group;Genome Biology,2021 4. Differential activation of natriuretic peptide receptors modulates cardiomyocyte proliferation during development 5. The 2021 version of the gene table of neuromuscular disorders (nuclear genome);Neuromuscular Disorders: NMD,2020
Cited by
23 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|