1. DeepCRE: Transforming Drug R&D via AI-Driven Cross-drug Response Evaluation
- Author
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Wu, Yushuai, Zhang, Ting, Zhou, Hao, Wu, Hainan, Sunchu, Hanwen, Hu, Lei, Chen, Xiaofang, Zhao, Suyuan, Liu, Gaochao, Sun, Chao, Zhang, Jiahuan, Luo, Yizhen, Liu, Peng, Nie, Zaiqing, Wu, Yushuai, Zhang, Ting, Zhou, Hao, Wu, Hainan, Sunchu, Hanwen, Hu, Lei, Chen, Xiaofang, Zhao, Suyuan, Liu, Gaochao, Sun, Chao, Zhang, Jiahuan, Luo, Yizhen, Liu, Peng, and Nie, Zaiqing
- Abstract
The fields of therapeutic application and drug research and development (R&D) both face substantial challenges, i.e., the therapeutic domain calls for more treatment alternatives, while numerous promising pre-clinical drugs have failed in clinical trials. One of the reasons is the inadequacy of Cross-drug Response Evaluation (CRE) during the late stages of drug R&D. Although in-silico CRE models bring a promising solution, existing methodologies are restricted to early stages of drug R&D, such as target and cell-line levels, offering limited improvement to clinical success rates. Herein, we introduce DeepCRE, a pioneering AI model designed to predict CRE effectively in the late stages of drug R&D. DeepCRE outperforms the existing best models by achieving an average performance improvement of 17.7% in patient-level CRE, and a 5-fold increase in indication-level CRE, facilitating more accurate personalized treatment predictions and better pharmaceutical value assessment for indications, respectively. Furthermore, DeepCRE has identified a set of six drug candidates that show significantly greater effectiveness than a comparator set of two approved drugs in 5/8 colorectal cancer organoids. This demonstrates the capability of DeepCRE to systematically uncover a spectrum of drug candidates with enhanced therapeutic effects, highlighting its potential to transform drug R&D.
- Published
- 2024