Literature DB >> 36157595

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

Xinjun Wang1,2, Zhongli Xu3,4, Haoran Hu1, Xueping Zhou1, Yanfu Zhang5, Robert Lafyatis6, Kong Chen6, Heng Huang5, Ying Ding1, Richard H Duerr6, Wei Chen1,3.   

Abstract

The recent advance of single cell sequencing (scRNA-seq) technology such as Cellular Indexing of Transcriptomes and Epitopes by Sequencing (CITE-seq) allows researchers to quantify cell surface protein abundance and RNA expression simultaneously at single cell resolution. Although CITE-seq and other similar technologies have gained enormous popularity, novel methods for analyzing this type of single cell multi-omics data are in urgent need. A limited number of available tools utilize data-driven approach, which may undermine the biological importance of surface protein data. In this study, we developed SECANT, a biology-guided SEmi-supervised method for Clustering, classification, and ANnoTation of single-cell multi-omics. SECANT is used to analyze CITE-seq data, or jointly analyze CITE-seq and scRNA-seq data. The novelties of SECANT include (1) using confident cell type label identified from surface protein data as guidance for cell clustering, (2) providing general annotation of confident cell types for each cell cluster, (3) utilizing cells with uncertain or missing cell type label to increase performance, and (4) accurate prediction of confident cell types for scRNA-seq data. Besides, as a model-based approach, SECANT can quantify the uncertainty of the results through easily interpretable posterior probability, and our framework can be potentially extended to handle other types of multi-omics data. We successfully demonstrated the validity and advantages of SECANT via simulation studies and analysis of public and in-house datasets from multiple tissues. We believe this new method will be complementary to existing tools for characterizing novel cell types and make new biological discoveries using single-cell multi-omics data.
© The Author(s) 2022. Published by Oxford University Press on behalf of National Academy of Sciences.

Entities:  

Keywords:  CITE-Seq; scRNA-Seq; semi-supervised learning; single-cell multi-omics

Year:  2022        PMID: 36157595      PMCID: PMC9491696          DOI: 10.1093/pnasnexus/pgac165

Source DB:  PubMed          Journal:  PNAS Nexus        ISSN: 2752-6542


  37 in total

1.  Discrepant mRNA and Protein Expression in Immune Cells.

Authors:  Jiawei Li; Yi Zhang; Cheng Yang; Ruiming Rong
Journal:  Curr Genomics       Date:  2020-12       Impact factor: 2.236

Review 2.  Standardizing immunophenotyping for the Human Immunology Project.

Authors:  Holden T Maecker; J Philip McCoy; Robert Nussenblatt
Journal:  Nat Rev Immunol       Date:  2012-02-17       Impact factor: 53.106

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
Journal:  Nat Biotechnol       Date:  2017-08-30       Impact factor: 54.908

4.  Multiplex single cell profiling of chromatin accessibility by combinatorial cellular indexing.

Authors:  Darren A Cusanovich; Riza Daza; Andrew Adey; Hannah A Pliner; Lena Christiansen; Kevin L Gunderson; Frank J Steemers; Cole Trapnell; Jay Shendure
Journal:  Science       Date:  2015-05-07       Impact factor: 47.728

5.  Scalable, multimodal profiling of chromatin accessibility, gene expression and protein levels in single cells.

Authors:  Eleni P Mimitou; Caleb A Lareau; Kelvin Y Chen; Andre L Zorzetto-Fernandes; Yuhan Hao; Yusuke Takeshima; Wendy Luo; Tse-Shun Huang; Bertrand Z Yeung; Efthymia Papalexi; Pratiksha I Thakore; Tatsuya Kibayashi; James Badger Wing; Mayu Hata; Rahul Satija; Kristopher L Nazor; Shimon Sakaguchi; Leif S Ludwig; Vijay G Sankaran; Aviv Regev; Peter Smibert
Journal:  Nat Biotechnol       Date:  2021-06-03       Impact factor: 68.164

6.  SC3: consensus clustering of single-cell RNA-seq data.

Authors:  Vladimir Yu Kiselev; Kristina Kirschner; Michael T Schaub; Tallulah Andrews; Andrew Yiu; Tamir Chandra; Kedar N Natarajan; Wolf Reik; Mauricio Barahona; Anthony R Green; Martin Hemberg
Journal:  Nat Methods       Date:  2017-03-27       Impact factor: 28.547

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

Authors:  Zhe Sun; Li Chen; Hongyi Xin; Yale Jiang; Qianhui Huang; Anthony R Cillo; Tracy Tabib; Jay K Kolls; Tullia C Bruno; Robert Lafyatis; Dario A A Vignali; Kong Chen; Ying Ding; Ming Hu; Wei Chen
Journal:  Nat Commun       Date:  2019-04-09       Impact factor: 14.919

8.  Surface protein imputation from single cell transcriptomes by deep neural networks.

Authors:  Zilu Zhou; Chengzhong Ye; Jingshu Wang; Nancy R Zhang
Journal:  Nat Commun       Date:  2020-01-31       Impact factor: 14.919

9.  Integrated analysis of transcriptomic and proteomic data.

Authors:  Saad Haider; Ranadip Pal
Journal:  Curr Genomics       Date:  2013-04       Impact factor: 2.236

10.  Integrated analysis of multimodal single-cell data.

Authors:  Yuhan Hao; Stephanie Hao; Erica Andersen-Nissen; William M Mauck; Shiwei Zheng; Andrew Butler; Maddie J Lee; Aaron J Wilk; Charlotte Darby; Michael Zager; Paul Hoffman; Marlon Stoeckius; Efthymia Papalexi; Eleni P Mimitou; Jaison Jain; Avi Srivastava; Tim Stuart; Lamar M Fleming; Bertrand Yeung; Angela J Rogers; Juliana M McElrath; Catherine A Blish; Raphael Gottardo; Peter Smibert; Rahul Satija
Journal:  Cell       Date:  2021-05-31       Impact factor: 41.582

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