Artificial Intelligence for High Content Imaging in Drug Discovery
Overview
Authors
Affiliations
Artificial intelligence (AI) and high-content imaging (HCI) are contributing to advancements in drug discovery, propelled by the recent progress in deep neural networks. This review highlights AI's role in analysis of HCI data from fixed and live-cell imaging, enabling novel label-free and multi-channel fluorescent screening methods, and improving compound profiling. HCI experiments are rapid and cost-effective, facilitating large data set accumulation for AI model training. However, the success of AI in drug discovery also depends on high-quality data, reproducible experiments, and robust validation to ensure model performance. Despite challenges like the need for annotated compounds and managing vast image data, AI's potential in phenotypic screening and drug profiling is significant. Future improvements in AI, including increased interpretability and integration of multiple modalities, are expected to solidify AI and HCI's role in drug discovery.
Ali M, Benfante V, Basirinia G, Alongi P, Sperandeo A, Quattrocchi A J Imaging. 2025; 11(2).
PMID: 39997561 PMC: 11856378. DOI: 10.3390/jimaging11020059.
High-throughput solutions in tumor organoids: from culture to drug screening.
Zuo J, Fang Y, Wang R, Liang S, Liang S Stem Cells. 2024; 43(1).
PMID: 39460616 PMC: 11811636. DOI: 10.1093/stmcls/sxae070.
Cell Painting Gallery: an open resource for image-based profiling.
Weisbart E, Kumar A, Arevalo J, Carpenter A, Cimini B, Singh S Nat Methods. 2024; 21(10):1775-1777.
PMID: 39223397 PMC: 11466682. DOI: 10.1038/s41592-024-02399-z.
Evaluating batch correction methods for image-based cell profiling.
Arevalo J, Su E, Ewald J, van Dijk R, Carpenter A, Singh S Nat Commun. 2024; 15(1):6516.
PMID: 39095341 PMC: 11297288. DOI: 10.1038/s41467-024-50613-5.