Enhancing the Predictive Power of Machine Learning Models through a Chemical Space Complementary DEL Screening Strategy
收藏Figshare2024-10-23 更新2026-04-28 收录
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https://figshare.com/articles/dataset/Enhancing_the_Predictive_Power_of_Machine_Learning_Models_through_a_Chemical_Space_Complementary_DEL_Screening_Strategy/27287043
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DNA-encoded library (DEL) technology is an effective method for small molecule drug discovery, enabling high-throughput screening against target proteins. While DEL screening produces extensive data, it can reveal complex patterns not easily recognized by human analysis. Lead compounds from DEL screens often have higher molecular weights, posing challenges for drug development. This study refines traditional DELs by integrating alternative techniques like photocross-linking screening to enhance chemical diversity. Combining these methods improved predictive performance for small molecule identification models. Using this approach, we predicted active small molecules for BRD4 and p300, achieving hit rates of 26.7 and 35.7%. Notably, the identified compounds exhibit smaller molecular weights and better modification potential compared to traditional DEL molecules. This research demonstrates the synergy between DEL and AI technologies, enhancing drug discovery.
创建时间:
2024-10-23



