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Gene trajectory inference for single-cell data by optimal transport metrics.

Publication ,  Journal Article
Qu, R; Cheng, X; Sefik, E; Stanley Iii, JS; Landa, B; Strino, F; Platt, S; Garritano, J; Odell, ID; Coifman, R; Flavell, RA; Myung, P; Kluger, Y
Published in: Nature biotechnology
February 2025

Single-cell RNA sequencing has been widely used to investigate cell state transitions and gene dynamics of biological processes. Current strategies to infer the sequential dynamics of genes in a process typically rely on constructing cell pseudotime through cell trajectory inference. However, the presence of concurrent gene processes in the same group of cells and technical noise can obscure the true progression of the processes studied. To address this challenge, we present GeneTrajectory, an approach that identifies trajectories of genes rather than trajectories of cells. Specifically, optimal transport distances are calculated between gene distributions across the cell-cell graph to extract gene programs and define their gene pseudotemporal order. Here we demonstrate that GeneTrajectory accurately extracts progressive gene dynamics in myeloid lineage maturation. Moreover, we show that GeneTrajectory deconvolves key gene programs underlying mouse skin hair follicle dermal condensate differentiation that could not be resolved by cell trajectory approaches. GeneTrajectory facilitates the discovery of gene programs that control the changes and activities of biological processes.

Duke Scholars

Published In

Nature biotechnology

DOI

EISSN

1546-1696

ISSN

1087-0156

Publication Date

February 2025

Volume

43

Issue

2

Start / End Page

258 / 268

Related Subject Headings

  • Single-Cell Analysis
  • Sequence Analysis, RNA
  • Mice
  • Hair Follicle
  • Gene Expression Profiling
  • Cell Lineage
  • Cell Differentiation
  • Animals
  • Algorithms
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Qu, R., Cheng, X., Sefik, E., Stanley Iii, J. S., Landa, B., Strino, F., … Kluger, Y. (2025). Gene trajectory inference for single-cell data by optimal transport metrics. Nature Biotechnology, 43(2), 258–268. https://doi.org/10.1038/s41587-024-02186-3
Qu, Rihao, Xiuyuan Cheng, Esen Sefik, Jay S. Stanley Iii, Boris Landa, Francesco Strino, Sarah Platt, et al. “Gene trajectory inference for single-cell data by optimal transport metrics.Nature Biotechnology 43, no. 2 (February 2025): 258–68. https://doi.org/10.1038/s41587-024-02186-3.
Qu R, Cheng X, Sefik E, Stanley Iii JS, Landa B, Strino F, et al. Gene trajectory inference for single-cell data by optimal transport metrics. Nature biotechnology. 2025 Feb;43(2):258–68.
Qu, Rihao, et al. “Gene trajectory inference for single-cell data by optimal transport metrics.Nature Biotechnology, vol. 43, no. 2, Feb. 2025, pp. 258–68. Epmc, doi:10.1038/s41587-024-02186-3.
Qu R, Cheng X, Sefik E, Stanley Iii JS, Landa B, Strino F, Platt S, Garritano J, Odell ID, Coifman R, Flavell RA, Myung P, Kluger Y. Gene trajectory inference for single-cell data by optimal transport metrics. Nature biotechnology. 2025 Feb;43(2):258–268.

Published In

Nature biotechnology

DOI

EISSN

1546-1696

ISSN

1087-0156

Publication Date

February 2025

Volume

43

Issue

2

Start / End Page

258 / 268

Related Subject Headings

  • Single-Cell Analysis
  • Sequence Analysis, RNA
  • Mice
  • Hair Follicle
  • Gene Expression Profiling
  • Cell Lineage
  • Cell Differentiation
  • Animals
  • Algorithms