Reconstructing the regulatory programs underlying the phenotypic plasticity of neural cancers
Journal article, 2024

Nervous system cancers exhibit diverse transcriptional cell states influenced by normal development, injury response, and growth. However, the understanding of these states' regulation and pharmacological relevance remains limited. Here we present "single-cell regulatory-driven clustering" (scregclust), a method that reconstructs cellular regulatory programs from extensive collections of single-cell RNA sequencing (scRNA-seq) data from both tumors and developing tissues. The algorithm efficiently divides target genes into modules, predicting key transcription factors and kinases with minimal computational time. Applying this method to adult and childhood brain cancers, we identify critical regulators and suggest interventions that could improve temozolomide treatment in glioblastoma. Additionally, our integrative analysis reveals a meta-module regulated by SPI1 and IRF8 linked to an immune-mediated mesenchymal-like state. Finally, scregclust's flexibility is demonstrated across 15 tumor types, uncovering both pan-cancer and specific regulators. The algorithm is provided as an easy-to-use R package that facilitates the exploration of regulatory programs underlying cell plasticity. The regulation and clinical importance of transcriptional cell states in nervous system cancers remain poorly understood. Here, the authors develop scregclust, a computational tool to reconstruct regulatory programs and perform clustering in single-cell RNA-seq data, which is applied to study adult and childhood brain cancers.

Author

Ida Larsson

Massachusetts Institute of Technology (MIT)

Harvard University

Dana-Farber Cancer Institute

Uppsala University

Felix Held

Chalmers, Mathematical Sciences, Applied Mathematics and Statistics

Gergana Popova

Uppsala University

Alper Koc

Uppsala University

Soumi Kundu

Uppsala University

Rebecka Jörnsten

Chalmers, Mathematical Sciences, Applied Mathematics and Statistics

Sven Nelander

Uppsala University

Nature Communications

2041-1723 (ISSN) 20411723 (eISSN)

Vol. 15 1 9699

Subject Categories

Cell and Molecular Biology

Bioinformatics (Computational Biology)

Cancer and Oncology

DOI

10.1038/s41467-024-53954-3

PubMed

39516198

Related datasets

URI: https://www.weizmann.ac.il/sites/3CA/

More information

Latest update

11/27/2024