Literature DB >> 32379315

BREM-SC: a bayesian random effects mixture model for joint clustering single cell multi-omics data.

Xinjun Wang1, Zhe Sun1, Yanfu Zhang2, Zhongli Xu3,4, Hongyi Xin3, Heng Huang2, Richard H Duerr5, Kong Chen5, Ying Ding1, Wei Chen1,3.   

Abstract

Droplet-based single cell transcriptome sequencing (scRNA-seq) technology, largely represented by the 10× Genomics Chromium system, is able to measure the gene expression from tens of thousands of single cells simultaneously. More recently, coupled with the cutting-edge Cellular Indexing of Transcriptomes and Epitopes by Sequencing (CITE-seq), the droplet-based system has allowed for immunophenotyping of single cells based on cell surface expression of specific proteins together with simultaneous transcriptome profiling in the same cell. Despite the rapid advances in technologies, novel statistical methods and computational tools for analyzing multi-modal CITE-Seq data are lacking. In this study, we developed BREM-SC, a novel Bayesian Random Effects Mixture model that jointly clusters paired single cell transcriptomic and proteomic data. Through simulation studies and analysis of public and in-house real data sets, we successfully demonstrated the validity and advantages of this method in fully utilizing both types of data to accurately identify cell clusters. In addition, as a probabilistic model-based approach, BREM-SC is able to quantify the clustering uncertainty for each single cell. This new method will greatly facilitate researchers to jointly study transcriptome and surface proteins at the single cell level to make new biological discoveries, particularly in the area of immunology.
© The Author(s) 2020. Published by Oxford University Press on behalf of Nucleic Acids Research.

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Year:  2020        PMID: 32379315      PMCID: PMC7293045          DOI: 10.1093/nar/gkaa314

Source DB:  PubMed          Journal:  Nucleic Acids Res        ISSN: 0305-1048            Impact factor:   16.971


  18 in total

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Journal:  Bioinformatics       Date:  2013-08-28       Impact factor: 6.937

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Journal:  Bioinformatics       Date:  2018-01-01       Impact factor: 6.937

3.  Multiplexed quantification of proteins and transcripts in single cells.

Authors:  Vanessa M Peterson; Kelvin Xi Zhang; Namit Kumar; Jerelyn Wong; Lixia Li; Douglas C Wilson; Renee Moore; Terrill K McClanahan; Svetlana Sadekova; Joel A Klappenbach
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4.  Multiplexed detection of proteins, transcriptomes, clonotypes and CRISPR perturbations in single cells.

Authors:  Eleni P Mimitou; Anthony Cheng; Antonino Montalbano; Stephanie Hao; Marlon Stoeckius; Mateusz Legut; Timothy Roush; Alberto Herrera; Efthymia Papalexi; Zhengqing Ouyang; Rahul Satija; Neville E Sanjana; Sergei B Koralov; Peter Smibert
Journal:  Nat Methods       Date:  2019-04-22       Impact factor: 28.547

5.  Discordant protein and mRNA expression in lung adenocarcinomas.

Authors:  Guoan Chen; Tarek G Gharib; Chiang-Ching Huang; Jeremy M G Taylor; David E Misek; Sharon L R Kardia; Thomas J Giordano; Mark D Iannettoni; Mark B Orringer; Samir M Hanash; David G Beer
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6.  Integrating single-cell transcriptomic data across different conditions, technologies, and species.

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9.  A Bayesian mixture model for clustering droplet-based single-cell transcriptomic data from population studies.

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  13 in total

Review 1.  Multi-omics integration in the age of million single-cell data.

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2.  SECANT: a biology-guided semi-supervised method for clustering, classification, and annotation of single-cell multi-omics.

Authors:  Xinjun Wang; Zhongli Xu; Haoran Hu; Xueping Zhou; Yanfu Zhang; Robert Lafyatis; Kong Chen; Heng Huang; Ying Ding; Richard H Duerr; Wei Chen
Journal:  PNAS Nexus       Date:  2022-08-19

Review 3.  Breaking the Immune Complexity of the Tumor Microenvironment Using Single-Cell Technologies.

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Authors:  Mirazul Islam; Bob Chen; Jeffrey M Spraggins; Ryan T Kelly; Ken S Lau
Journal:  Gastroenterology       Date:  2020-05-14       Impact factor: 22.682

5.  iSMNN: batch effect correction for single-cell RNA-seq data via iterative supervised mutual nearest neighbor refinement.

Authors:  Yuchen Yang; Gang Li; Yifang Xie; Li Wang; Taylor M Lagler; Yingxi Yang; Jiandong Liu; Li Qian; Yun Li
Journal:  Brief Bioinform       Date:  2021-09-02       Impact factor: 11.622

6.  Normalizing and denoising protein expression data from droplet-based single cell profiling.

Authors:  Matthew P Mulè; Andrew J Martins; John S Tsang
Journal:  Nat Commun       Date:  2022-04-19       Impact factor: 17.694

7.  A generalization of t-SNE and UMAP to single-cell multimodal omics.

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8.  Cobolt: integrative analysis of multimodal single-cell sequencing data.

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Review 9.  A Detailed Catalogue of Multi-Omics Methodologies for Identification of Putative Biomarkers and Causal Molecular Networks in Translational Cancer Research.

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Journal:  Int J Mol Sci       Date:  2021-03-10       Impact factor: 5.923

10.  An active learning approach for clustering single-cell RNA-seq data.

Authors:  Xiang Lin; Haoran Liu; Zhi Wei; Senjuti Basu Roy; Nan Gao
Journal:  Lab Invest       Date:  2021-07-09       Impact factor: 5.662

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