中文版 | English
Title

scMoMaT jointly performs single cell mosaic integration and multi-modal bio-marker detection

Author
Corresponding AuthorZhang,Xiuwei
Publication Years
2023-12-01
DOI
Source Title
EISSN
2041-1723
Volume14Issue:1
Abstract

Single cell data integration methods aim to integrate cells across data batches and modalities, and data integration tasks can be categorized into horizontal, vertical, diagonal, and mosaic integration, where mosaic integration is the most general and challenging case with few methods developed. We propose scMoMaT, a method that is able to integrate single cell multi-omics data under the mosaic integration scenario using matrix tri-factorization. During integration, scMoMaT is also able to uncover the cluster specific bio-markers across modalities. These multi-modal bio-markers are used to interpret and annotate the clusters to cell types. Moreover, scMoMaT can integrate cell batches with unequal cell type compositions. Applying scMoMaT to multiple real and simulated datasets demonstrated these features of scMoMaT and showed that scMoMaT has superior performance compared to existing methods. Specifically, we show that integrated cell embedding combined with learned bio-markers lead to cell type annotations of higher quality or resolution compared to their original annotations.

URL[Source Record]
Indexed By
Language
English
Important Publications
NI Journal Papers
SUSTech Authorship
Others
Funding Project
Division of Biological Infrastructure[DBI-2019771] ; National Institute of General Medical Sciences[R35GM143070]
Scopus EID
2-s2.0-85146794804
Data Source
Scopus
Citation statistics
Cited Times [WOS]:0
Document TypeJournal Article
Identifierhttp://kc.sustech.edu.cn/handle/2SGJ60CL/430773
DepartmentDepartment of Biology
生命科学学院
Affiliation
1.School of Computational Science and Engineering,Georgia Institute of Technology,Atlanta,United States
2.School of Mathematics,Georgia Institute of Technology,Atlanta,United States
3.Department of Information Systems and Analytics,National University of Singapore,Singapore,Singapore
4.Department of Biology,Southern University of Science and Technology,Shenzhen,Guangdong,China
5.Bioengineering Program,Georgia Institute of Technology,Atlanta,United States
6.Wellcome Sanger Institute,Hinxton,United Kingdom
7.Cancer Research UK Barts Center,London,United Kingdom
Recommended Citation
GB/T 7714
Zhang,Ziqi,Sun,Haoran,Mariappan,Ragunathan,et al. scMoMaT jointly performs single cell mosaic integration and multi-modal bio-marker detection[J]. Nature Communications,2023,14(1).
APA
Zhang,Ziqi.,Sun,Haoran.,Mariappan,Ragunathan.,Chen,Xi.,Chen,Xinyu.,...&Zhang,Xiuwei.(2023).scMoMaT jointly performs single cell mosaic integration and multi-modal bio-marker detection.Nature Communications,14(1).
MLA
Zhang,Ziqi,et al."scMoMaT jointly performs single cell mosaic integration and multi-modal bio-marker detection".Nature Communications 14.1(2023).
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