生物
表型
仿形(计算机编程)
计算生物学
形态学(生物学)
细胞生物学
遗传学
基因
计算机科学
操作系统
作者
Gregory P. Way,Maria Kost‐Alimova,Tsukasa Shibue,William F. Harrington,Stanley Gill,Federica Piccioni,Tim Becker,Hamdah Shafqat-Abbasi,William C. Hahn,Anne E. Carpenter,Francisca Vázquez,Shantanu Singh
标识
DOI:10.1091/mbc.e20-12-0784
摘要
Genetic and chemical perturbations impact diverse cellular phenotypes, including multiple indicators of cell health. These readouts reveal toxicity and antitumorigenic effects relevant to drug discovery and personalized medicine. We developed two customized microscopy assays, one using four targeted reagents and the other three targeted reagents, to collectively measure 70 specific cell health phenotypes including proliferation, apoptosis, reactive oxygen species, DNA damage, and cell cycle stage. We then tested an approach to predict multiple cell health phenotypes using Cell Painting, an inexpensive and scalable image-based morphology assay. In matched CRISPR perturbations of three cancer cell lines, we collected both Cell Painting and cell health data. We found that simple machine learning algorithms can predict many cell health readouts directly from Cell Painting images, at less than half the cost. We hypothesized that these models can be applied to accurately predict cell health assay outcomes for any future or existing Cell Painting dataset. For Cell Painting images from a set of 1500+ compound perturbations across multiple doses, we validated predictions by orthogonal assay readouts. We provide a web app to browse predictions: http://broad.io/cell-health-app. Our approach can be used to add cell health annotations to Cell Painting datasets.
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