RRC ID 85967
著者 Urbanska M, Ge Y, Winzi M, Abuhattum S, Ali SS, Herbig M, Kräter M, Toepfner N, Durgan J, Florey O, Dori M, Calegari F, Lolo FN, del Pozo MÁ, Taubenberger A, Cannistraci CV, Guck J.
タイトル De novo identification of universal cell mechanics gene signatures.
ジャーナル Elife
Abstract Cell mechanical properties determine many physiological functions, such as cell fate specification, migration, or circulation through vasculature. Identifying factors that govern the mechanical properties is therefore a subject of great interest. Here, we present a mechanomics approach for establishing links between single-cell mechanical phenotype changes and the genes involved in driving them. We combine mechanical characterization of cells across a variety of mouse and human systems with machine learning-based discriminative network analysis of associated transcriptomic profiles to infer a conserved network module of five genes with putative roles in cell mechanics regulation. We validate in silico that the identified gene markers are universal, trustworthy, and specific to the mechanical phenotype across the studied mouse and human systems, and demonstrate experimentally that a selected target, CAV1, changes the mechanical phenotype of cells accordingly when silenced or overexpressed. Our data-driven approach paves the way toward engineering cell mechanical properties on demand to explore their impact on physiological and pathological cell functions.
巻・号 12
公開日 2025-2-17
DOI 10.7554/eLife.87930
PII 87930
PMID 39960760
PMC PMC11832173
MeSH Animals Biomechanical Phenomena Gene Expression Profiling Humans Machine Learning Mice Single-Cell Analysis Transcriptome*
IF 7.08
リソース情報
ヒト・動物細胞 ECC4(RCB0982) TGBC18TKB(RCB1196) WA-hT(RCB2279) A549(RCB0098) ECC10(RCB0983) MKN45(RCB1001) MKN1(RCB1003)