Kernel-based testing for single-cell differential analysis

Team SBDM
Ghislain Durif
Authors

Ozier-Lafontaine, A.

Fourneaux, C.

Durif, G.

Arsenteva, P.

Vallot, C.

Gandrillon, O.

Gonin-Giraud, S.

Michel, B.

Picard, F.

Published

January 1, 2024

https://doi.org/10.1186/s13059-024-03255-1

@article{ozier-lafontaine2024,
    title = {Kernel-based testing for single-cell differential analysis},
    volume = {25},
    copyright = {2024 The Author(s)},
    issn = {1474-760X},
    url = {https://genomebiology.biomedcentral.com/articles/10.1186/s13059-024-03255-1},
    doi = {10.1186/s13059-024-03255-1},
    abstract = {Single-cell technologies offer insights into molecular feature distributions, but comparing them poses challenges. We propose a kernel-testing framework for non-linear cell-wise distribution comparison, analyzing gene expression and epigenomic modifications. Our method allows feature-wise and global transcriptome/epigenome comparisons, revealing cell population heterogeneities. Using a classifier based on embedding variability, we identify transitions in cell states, overcoming limitations of traditional single-cell analysis. Applied to single-cell ChIP-Seq data, our approach identifies untreated breast cancer cells with an epigenomic profile resembling persister cells. This demonstrates the effectiveness of kernel testing in uncovering subtle population variations that might be missed by other methods.},
    language = {en},
    number = {1},
    urldate = {2024-05-03},
    journal = {Genome Biology},
    author = {Ozier-Lafontaine, A. and Fourneaux, C. and Durif, G. and Arsenteva, P. and Vallot, C. and Gandrillon, O. and Gonin-Giraud, S. and Michel, B. and Picard, F.},
    month = dec,
    year = {2024},
    note = {Number: 1
Publisher: BioMed Central},
    pages = {1--21},
}