JOURNAL ARTICLE

Accurate integration of multiple heterogeneous single-cell RNA-seq data sets by learning contrastive biological variation

Yang ZhouQiongyu ShengJing QiJiao HuaBo YangLei WanShuilin Jin

Year: 2023 Journal:   Genome Research Vol: 33 (5)Pages: 750-762   Publisher: Cold Spring Harbor Laboratory Press

Abstract

For most biological and medical applications of single-cell transcriptomics, an integrative study of multiple heterogeneous single-cell RNA sequencing (scRNA-seq) data sets is crucial. However, present approaches are unable to integrate diverse data sets from various biological conditions effectively because of the confounding effects of biological and technical differences. We introduce single-cell integration (scInt), an integration method based on accurate, robust cell–cell similarity construction and unified contrastive biological variation learning from multiple scRNA-seq data sets. scInt provides a flexible and effective approach to transfer knowledge from the already integrated reference to the query. We show that scInt outperforms 10 other cutting-edge approaches using both simulated and real data sets, particularly in the case of complex experimental designs. Application of scInt to mouse developing tracheal epithelial data shows its ability to integrate development trajectories from different developmental stages. Furthermore, scInt successfully identifies functionally distinct condition-specific cell subpopulations in single-cell heterogeneous samples from a variety of biological conditions.

Keywords:
Data integration Biological data Biology Variation (astronomy) RNA-Seq Similarity (geometry) Computational biology Computer science Transcriptome Data mining Bioinformatics Artificial intelligence Genetics Gene Gene expression

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Citation History

Topics

Single-cell and spatial transcriptomics
Life Sciences →  Biochemistry, Genetics and Molecular Biology →  Molecular Biology
Cancer-related molecular mechanisms research
Life Sciences →  Biochemistry, Genetics and Molecular Biology →  Cancer Research
Immune cells in cancer
Life Sciences →  Immunology and Microbiology →  Immunology
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