Detection of senescence using machine learning algorithms based on nuclear features

Imanol Durán(MRC London Institute of Medical Sciences), Joaquim Pombo(MRC London Institute of Medical Sciences), Bin Sun(MRC London Institute of Medical Sciences), Suchira Gallage(German Cancer Research Center), Hiromi Kudo(Imperial College London), Domhnall McHugh(MRC London Institute of Medical Sciences), Laura Bousset(MRC London Institute of Medical Sciences), Jose Efren Barragan Avila(German Cancer Research Center), Roberta Forlano(Imperial College London), Pinelopi Manousou(Imperial College London), Mathias Heikenwälder(German Cancer Research Center), Dominic J. Withers(MRC London Institute of Medical Sciences), Santiago Vernia(MRC London Institute of Medical Sciences), Robert Goldin(Imperial College London), Jesús Gil(MRC London Institute of Medical Sciences)
Nature Communications
February 3, 2024
Cited by 72Open Access
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Abstract

Cellular senescence is a stress response with broad pathophysiological implications. Senotherapies can induce senescence to treat cancer or eliminate senescent cells to ameliorate ageing and age-related pathologies. However, the success of senotherapies is limited by the lack of reliable ways to identify senescence. Here, we use nuclear morphology features of senescent cells to devise machine-learning classifiers that accurately predict senescence induced by diverse stressors in different cell types and tissues. As a proof-of-principle, we use these senescence classifiers to characterise senolytics and to screen for drugs that selectively induce senescence in cancer cells but not normal cells. Moreover, a tissue senescence score served to assess the efficacy of senolytic drugs and identified senescence in mouse models of liver cancer initiation, ageing, and fibrosis, and in patients with fatty liver disease. Thus, senescence classifiers can help to detect pathophysiological senescence and to discover and validate potential senotherapies.


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