Machine learning recognises senescence in glioblastoma and discovers senescence-inducing compounds

Avatar
Poster
Voice is AI-generated
Connected to paperThis paper is a preprint and has not been certified by peer review

Machine learning recognises senescence in glioblastoma and discovers senescence-inducing compounds

Authors

Martin, L.; Irving, A.; Suwanlikit, Y.; Morrison, G.; Elliott, R. J. R.; Carragher, N.; Pollard, S.; Chandra, T.

Abstract

Senescence is a cell-intrinsic tumour suppressive response. A one-two-punch cancer treatment strategy aims to induce senescence in cancerous cells before removing them with a senolytic. It is important to accurately recognise senescent cells to investigate the feasibility of such a treatment strategy and identify compounds that induce senescence in cancer. We focus specifically on the terminal brain cancer glioblastoma, firstly identifying senescent glioblastoma cells with conventional stains, before training a machine learning model to distinguish senescent cells using only a DAPI nuclear stain. To demonstrate how our method can aid drug discovery, we apply our pipeline to existing glioblastoma high-throughput phenotypic drug screening imaging data to identify compounds that induce senescence in glioblastoma and verify these predictions experimentally.

Follow Us on

0 comments

Add comment