MicroCellClust: mining rare and highly specific subpopulations from single-cell expression data

Gerniers, Alexander;Bricard, Orian;Dupont, Pierre
(2021) Bioinformatics — Vol. 37, n° 19, p. 3220-3227 (2021)

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Authors
  • Gerniers, AlexanderUCLouvain
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  • Bricard, OrianUCLouvain
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Abstract
Motivation Identifying rare subpopulations of cells is a critical step in order to extract knowledge from single-cell expression data, especially when the available data is limited and rare subpopulations only contain a few cells. In this paper, we present a data mining method to identify small subpopulations of cells that present highly specific expression profiles. This objective is formalized as a constrained optimization problem that jointly identifies a small group of cells and a corresponding subset of specific genes. The proposed method extends the max-sum submatrix problem to yield genes that are, for instance, highly expressed inside a small number of cells, but have a low expression in the remaining ones. Results We show through controlled experiments on scRNA-seq data that the MicroCellClust method achieves a high F1 score to identify rare sub-populations of artificially planted human T cells. The effectiveness of MicroCellClust is confirmed as it reveals a subpopulation of CD4 T cells with a specific phenotype from breast cancer samples, and a subpopulation linked to a specific stage in the cell cycle from breast cancer samples as well. Finally, 3 rare subpopulations in mouse embryonic stem cells are also identified with MicroCellClust. These results illustrate the proposed method outperforms typical alternatives at identifying small subsets of cells with highly specific expression profiles.
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Citations

Gerniers, A., Bricard, O., & Dupont, P. (2021). MicroCellClust: mining rare and highly specific subpopulations from single-cell expression data. Bioinformatics, 37(19), 3220-3227. https://doi.org/10.1093/bioinformatics/btab239 (Original work published 2021)