An active learning approach for clustering single-cell RNA-seq data
Document Type
Article
Publication Date
3-1-2022
Abstract
Single-cell RNA sequencing (scRNA-seq) data has been widely used to profile cellular heterogeneities with a high-resolution picture. Clustering analysis is a crucial step of scRNA-seq data analysis because it provides a chance to identify and uncover undiscovered cell types. Most methods for clustering scRNA-seq data use an unsupervised learning strategy. Since the clustering step is separated from the cell annotation and labeling step, it is not uncommon for a totally exotic clustering with poor biological interpretability to be generated—a result generally undesired by biologists. To solve this problem, we proposed an active learning (AL) framework for clustering scRNA-seq data. The AL model employed a learning algorithm that can actively query biologists for labels, and this manual labeling is expected to be applied to only a subset of cells. To develop an optimal active learning approach, we explored several key parameters of the AL model in the experiments with four real scRNA-seq datasets. We demonstrate that the proposed AL model outperformed state-of-the-art unsupervised clustering methods with less than 1000 labeled cells. Therefore, we conclude that AL model is a promising tool for clustering scRNA-seq data that allows us to achieve a superior performance effectively and efficiently.
Identifier
85109957236 (Scopus)
Publication Title
Laboratory Investigation
External Full Text Location
https://doi.org/10.1038/s41374-021-00639-w
e-ISSN
15300307
ISSN
00236837
PubMed ID
34244616
First Page
227
Last Page
235
Issue
3
Volume
102
Grant
UL1TR003017
Fund Ref
National Institutes of Health
Recommended Citation
Lin, Xiang; Liu, Haoran; Wei, Zhi; Roy, Senjuti Basu; and Gao, Nan, "An active learning approach for clustering single-cell RNA-seq data" (2022). Faculty Publications. 3086.
https://digitalcommons.njit.edu/fac_pubs/3086