Issue 5, 2023

Deep representation learning determines drug mechanism of action from cell painting images

Abstract

Fluorescent-based microscopy screens carry a broad range of phenotypic information about how compounds affect cellular biology. From changes in cellular morphology observed in these screens, one key area of medicinal interest is determining a compound's mechanism of action. However, much of this phenotypic information is subtle and difficult to quantify. Hence, creating quantitative embeddings that can measure cellular response to compound perturbation has been a key area of research. Here we present a deep learning enabled encoder called MOAProfiler that captures phenotypic features for determining mechanism of action from Cell Painting images. We compared our method with both the traditional gold-standard means of feature encoding via CellProfiler and a deep learning encoder called DeepProfiler. The results, on two independent and biologically different datasets, indicated that MOAProfiler encoded MOA-specific features that allowed for more accurate clustering and classification of compounds over hundreds of different MOAs.

Graphical abstract: Deep representation learning determines drug mechanism of action from cell painting images

Supplementary files

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Article information

Article type
Paper
Submitted
05 Apr 2023
Accepted
09 Aug 2023
First published
16 Aug 2023
This article is Open Access
Creative Commons BY license

Digital Discovery, 2023,2, 1354-1367

Deep representation learning determines drug mechanism of action from cell painting images

D. R. Wong, D. J. Logan, S. Hariharan, R. Stanton, D. Clevert and A. Kiruluta, Digital Discovery, 2023, 2, 1354 DOI: 10.1039/D3DD00060E

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