A genotype-to-drug diffusion model for generation of tailored anti-cancer small molecules
- Author(s)
- Kim, Hyunho; Bae, Bongsung; Park, Minsu; Shin, Yewon; Ideker, Trey; Nam, Hojung
- Type
- Article
- Citation
- NATURE COMMUNICATIONS, v.16, no.1
- Issued Date
- 2025-07
- Abstract
- Despite advances in precision oncology, developing effective cancer therapeutics remains a significant challenge due to tumor heterogeneity and the limited availability of well-defined drug targets. Recent progress in generative artificial intelligence (AI) offers a promising opportunity to address this challenge by enabling the design of hit-like anti-cancer molecules conditioned on complex genomic features. We present Genotype-to-Drug Diffusion (G2D-Diff), a generative AI approach for creating small molecule-based drug structures tailored to specific cancer genotypes. G2D-Diff demonstrates exceptional performance in generating diverse, drug-like compounds that meet desired efficacy conditions for a given genotype. The model outperforms existing methods in diversity, feasibility, and condition fitness. G2D-Diff learns directly from drug response data distributions, ensuring reliable candidate generation without separate predictors. Its attention mechanism provides insights into potential cancer targets and pathways, enhancing interpretability. In triple-negative breast cancer case studies, G2D-Diff generated plausible hit-like candidates by focusing on relevant pathways. By combining realistic hit-like molecule generation with relevant pathway suggestions for specific genotypes, G2D-Diff represents a significant advance in AI-guided, personalized drug discovery. This approach has the potential to accelerate drug development for challenging cancers by streamlining hit identification.
- Publisher
- NATURE PORTFOLIO
- DOI
- 10.1038/s41467-025-60763-9
- URI
- https://scholar.gist.ac.kr/handle/local/31570
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