MultiSC: a deep learning pipeline for analyzing multiomics single-cell data
Document Type
Article
Publication Date
11-1-2024
Abstract
Single-cell technologies enable researchers to investigate cell functions at an individual cell level and study cellular processes with higher resolution. Several multi-omics single-cell sequencing techniques have been developed to explore various aspects of cellular behavior. Using NEAT-seq as an example, this method simultaneously obtains three kinds of omics data for each cell: gene expression, chromatin accessibility, and protein expression of transcription factors (TFs). Consequently, NEAT-seq offers a more comprehensive understanding of cellular activities in multiple modalities. However, there is a lack of tools available for effectively integrating the three types of omics data. To address this gap, we propose a novel pipeline called MultiSC for the analysis of MULTIomic Single-Cell data. Our pipeline leverages a multimodal constraint autoencoder (single-cell hierarchical constraint autoencoder) to integrate the multi-omics data during the clustering process and a matrix factorization–based model (scMF) to predict target genes regulated by a TF. Moreover, we utilize multivariate linear regression models to predict gene regulatory networks from the multi-omics data. Additional functionalities, including differential expression, mediation analysis, and causal inference, are also incorporated into the MultiSC pipeline. Extensive experiments were conducted to evaluate the performance of MultiSC. The results demonstrate that our pipeline enables researchers to gain a comprehensive view of cell activities and gene regulatory networks by fully leveraging the potential of multiomics single-cell data. By employing MultiSC, researchers can effectively integrate and analyze diverse omics data types, enhancing their understanding of cellular processes.
Identifier
85205755839 (Scopus)
Publication Title
Briefings in Bioinformatics
External Full Text Location
https://doi.org/10.1093/bib/bbae492
e-ISSN
14774054
ISSN
14675463
PubMed ID
39376034
Issue
6
Volume
25
Grant
ACI-1548562
Fund Ref
National Institutes of Health
Recommended Citation
Lin, Xiang; Jiang, Siqi; Gao, Le; Wei, Zhi; and Wang, Junwen, "MultiSC: a deep learning pipeline for analyzing multiomics single-cell data" (2024). Faculty Publications. 113.
https://digitalcommons.njit.edu/fac_pubs/113