Deep learning large-scale drug discovery and repurposing.
Min YuWeiming LiYunru YuYu ZhaoLizhi XiaoVolker Martin LauschkeYiyu ChengXingcai ZhangYi WangPublished in: Nature computational science (2024)
Large-scale drug discovery and repurposing is challenging. Identifying the mechanism of action (MOA) is crucial, yet current approaches are costly and low-throughput. Here we present an approach for MOA identification by profiling changes in mitochondrial phenotypes. By temporally imaging mitochondrial morphology and membrane potential, we established a pipeline for monitoring time-resolved mitochondrial images, resulting in a dataset comprising 570,096 single-cell images of cells exposed to 1,068 United States Food and Drug Administration-approved drugs. A deep learning model named MitoReID, using a re-identification (ReID) framework and an Inflated 3D ResNet backbone, was developed. It achieved 76.32% Rank-1 and 65.92% mean average precision on the testing set and successfully identified the MOAs for six untrained drugs on the basis of mitochondrial phenotype. Furthermore, MitoReID identified cyclooxygenase-2 inhibition as the MOA of the natural compound epicatechin in tea, which was successfully validated in vitro. Our approach thus provides an automated and cost-effective alternative for target identification that could accelerate large-scale drug discovery and repurposing.
Keyphrases
- drug discovery
- deep learning
- oxidative stress
- convolutional neural network
- drug administration
- single cell
- artificial intelligence
- induced apoptosis
- machine learning
- high resolution
- bioinformatics analysis
- optical coherence tomography
- rna seq
- cell proliferation
- high throughput
- climate change
- cell cycle arrest
- signaling pathway
- resistance training