Literature DB >> 34001664

Detection of differentially abundant cell subpopulations in scRNA-seq data.

Jun Zhao1, Ariel Jaffe2, Henry Li2, Ofir Lindenbaum2, Esen Sefik3, Ruaidhrí Jackson4, Xiuyuan Cheng5, Richard A Flavell6,7, Yuval Kluger1,2.   

Abstract

Comprehensive and accurate comparisons of transcriptomic distributions of cells from samples taken from two different biological states, such as healthy versus diseased individuals, are an emerging challenge in single-cell RNA sequencing (scRNA-seq) analysis. Current methods for detecting differentially abundant (DA) subpopulations between samples rely heavily on initial clustering of all cells in both samples. Often, this clustering step is inadequate since the DA subpopulations may not align with a clear cluster structure, and important differences between the two biological states can be missed. Here, we introduce DA-seq, a targeted approach for identifying DA subpopulations not restricted to clusters. DA-seq is a multiscale method that quantifies a local DA measure for each cell, which is computed from its k nearest neighboring cells across a range of k values. Based on this measure, DA-seq delineates contiguous significant DA subpopulations in the transcriptomic space. We apply DA-seq to several scRNA-seq datasets and highlight its improved ability to detect differences between distinct phenotypes in severe versus mildly ill COVID-19 patients, melanomas subjected to immune checkpoint therapy comparing responders to nonresponders, embryonic development at two time points, and young versus aging brain tissue. DA-seq enabled us to detect differences between these phenotypes. Importantly, we find that DA-seq not only recovers the DA cell types as discovered in the original studies but also reveals additional DA subpopulations that were not described before. Analysis of these subpopulations yields biological insights that would otherwise be undetected using conventional computational approaches.

Entities:  

Keywords:  RNA-seq; local differential abundance; single cell

Year:  2021        PMID: 34001664     DOI: 10.1073/pnas.2100293118

Source DB:  PubMed          Journal:  Proc Natl Acad Sci U S A        ISSN: 0027-8424            Impact factor:   11.205


  9 in total

1.  Differential abundance testing on single-cell data using k-nearest neighbor graphs.

Authors:  Emma Dann; Neil C Henderson; Sarah A Teichmann; Michael D Morgan; John C Marioni
Journal:  Nat Biotechnol       Date:  2021-09-30       Impact factor: 54.908

2.  Inflammasome activation in infected macrophages drives COVID-19 pathology.

Authors:  Esen Sefik; Rihao Qu; Caroline Junqueira; Eleanna Kaffe; Haris Mirza; Jun Zhao; J Richard Brewer; Ailin Han; Holly R Steach; Benjamin Israelow; Holly N Blackburn; Sofia E Velazquez; Y Grace Chen; Stephanie Halene; Akiko Iwasaki; Eric Meffre; Michel Nussenzweig; Judy Lieberman; Craig B Wilen; Yuval Kluger; Richard A Flavell
Journal:  Nature       Date:  2022-04-28       Impact factor: 69.504

3.  The transcription factor HIF-1α mediates plasticity of NKp46+ innate lymphoid cells in the gut.

Authors:  Ewelina Krzywinska; Michal Sobecki; Shunmugam Nagarajan; Julian Zacharjasz; Murtaza M Tambuwala; Abigaelle Pelletier; Eoin Cummins; Dagmar Gotthardt; Joachim Fandrey; Yann M Kerdiles; Carole Peyssonnaux; Cormac T Taylor; Veronika Sexl; Christian Stockmann
Journal:  J Exp Med       Date:  2022-01-13       Impact factor: 17.579

4.  Processing single-cell RNA-seq datasets using SingCellaR.

Authors:  Guanlin Wang; Wei Xiong Wen; Adam J Mead; Anindita Roy; Bethan Psaila; Supat Thongjuea
Journal:  STAR Protoc       Date:  2022-04-01

5.  Activated SUMOylation restricts MHC class I antigen presentation to confer immune evasion in cancer.

Authors:  Uta M Demel; Marlitt Böger; Schayan Yousefian; Corinna Grunert; Le Zhang; Paul W Hotz; Adrian Gottschlich; Hazal Köse; Konstandina Isaakidis; Dominik Vonficht; Florian Grünschläger; Elena Rohleder; Kristina Wagner; Judith Dönig; Veronika Igl; Bernadette Brzezicha; Francis Baumgartner; Stefan Habringer; Jens Löber; Björn Chapuy; Carl Weidinger; Sebastian Kobold; Simon Haas; Antonia B Busse; Stefan Müller; Matthias Wirth; Markus Schick; Ulrich Keller
Journal:  J Clin Invest       Date:  2022-05-02       Impact factor: 19.456

6.  Global Gene Expression and Docking Profiling of COVID-19 Infection.

Authors:  Almas Jabeen; Nadeem Ahmad; Khalid Raza
Journal:  Front Genet       Date:  2022-04-11       Impact factor: 4.772

7.  HIV viral transcription and immune perturbations in the CNS of people with HIV despite ART.

Authors:  Shelli F Farhadian; Ofir Lindenbaum; Jun Zhao; Michael J Corley; Yunju Im; Hannah Walsh; Alyssa Vecchio; Rolando Garcia-Milian; Jennifer Chiarella; Michelle Chintanaphol; Rachela Calvi; Guilin Wang; Lishomwa C Ndhlovu; Jennifer Yoon; Diane Trotta; Shuangge Ma; Yuval Kluger; Serena Spudich
Journal:  JCI Insight       Date:  2022-07-08

8.  Mathematical model for the relationship between single-cell and bulk gene expression to clarify the interpretation of bulk gene expression data.

Authors:  Daigo Okada; Cheng Zheng; Jian Hao Cheng
Journal:  Comput Struct Biotechnol J       Date:  2022-09-05       Impact factor: 6.155

9.  A statistical framework for differential pseudotime analysis with multiple single-cell RNA-seq samples.

Authors:  Wenpin Hou; Zhicheng Ji; Zeyu Chen; E John Wherry; Stephanie C Hicks; Hongkai Ji
Journal:  bioRxiv       Date:  2021-07-12
  9 in total

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