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Automated prediction of fibroblast phenotypes using mathematical descriptors of cellular features

Author

Listed:
  • Alex Khang

    (University of Colorado Boulder
    University of Colorado Boulder)

  • Abigail Barmore

    (University of Colorado Boulder
    University of Colorado Boulder)

  • Georgios Tseropoulos

    (University of Colorado Boulder
    University of Colorado Boulder)

  • Kaustav Bera

    (University of Colorado Boulder
    University of Colorado Boulder)

  • Dilara Batan

    (University of Colorado Boulder
    University of Colorado Boulder)

  • Kristi S. Anseth

    (University of Colorado Boulder
    University of Colorado Boulder)

Abstract

Fibrosis is caused by pathological activation of resident fibroblasts to myofibroblasts that leads to aberrant tissue stiffening and diminished function of affected organs with limited pharmacological interventions. Despite the prevalence of myofibroblasts in fibrotic tissue, existing methods to grade fibroblast phenotypes are typically subjective and qualitative, yet important for screening of new therapeutics. Here, we develop mathematical descriptors of cell morphology and intracellular structures to identify quantitative and interpretable cell features that capture the fibroblast-to-myofibroblast phenotypic transition in immunostained images. We train and validate models on features extracted from over 3000 primary heart valve interstitial cells and test their predictive performance on cells treated with the small molecule drugs 5-azacytidine and bisperoxovanadium (HOpic), which inhibited and promoted myofibroblast activation, respectively. Collectively, this work introduces an analytical framework that unveils key features associated with distinct fibroblast phenotypes via quantitative image analysis and is broadly applicable for high-throughput screening assays of candidate treatments for fibrotic diseases.

Suggested Citation

  • Alex Khang & Abigail Barmore & Georgios Tseropoulos & Kaustav Bera & Dilara Batan & Kristi S. Anseth, 2025. "Automated prediction of fibroblast phenotypes using mathematical descriptors of cellular features," Nature Communications, Nature, vol. 16(1), pages 1-17, December.
  • Handle: RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-58082-0
    DOI: 10.1038/s41467-025-58082-0
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