Beyond the Hype: The Reality of Implementing AI to Drive Drug Discovery Success
药物发现
数据科学
计算机科学
生物信息学
生物
作者
Matthew Segall
出处
期刊:GEN biotechnology [Mary Ann Liebert, Inc.] 日期:2024-11-27卷期号:3 (6): 338-340
标识
DOI:10.1089/genbio.2024.0042
摘要
The integration of artificial intelligence (AI) in drug discovery promises to revolutionize the field by accelerating the development of effective and safe drug candidates. Despite increasing investment and partnerships in this space, the reality of implementing AI remains complex. In drug discovery chemistry, AI holds immense potential in generative chemistry, predictive modeling, and retrosynthetic analysis, yet challenges persist in ensuring the relevance, stability, and synthesizability of AI-derived structures. Demonstrating the value of AI requires robust, reproducible evidence from diverse projects, overcoming skepticism fueled by overhyped case studies. For widespread adoption, AI tools must be user-friendly, scalable, and capable of handling realistic data sets. Organizational changes are necessary to integrate AI into existing workflows effectively, augmenting the capabilities of chemists rather than replacing them. Overcoming these challenges and successfully deploying AI can significantly enhance decision-making in drug discovery, as evidenced by higher success rates in early clinical trials for AI-derived candidates.