亲缘关系
计算机科学
人工智能
结合亲和力
自动停靠
机器学习
生物信息学
对接(动物)
一般化
化学
配体(生物化学)
鉴定(生物学)
药物发现
训练集
语言模型
深度学习
秩(图论)
计算生物学
蛋白质配体
数量结构-活动关系
随机森林
作者
Rohan Gorantla,Aryo Pradipta Gema,Ian Xi Yang,Álvaro Serrano‐Morrás,Benjamin Suutari,Jordi Juárez‐Jiménez,Antonia S. J. S. Mey
标识
DOI:10.1021/acs.jcim.5c02063
摘要
Accurate in silico prediction of protein-ligand binding affinity is essential for efficient hit identification in large molecular libraries. Commonly used structure-based methods such as docking often fail to rank compounds effectively, and free energy-based approaches, while accurate, are too computationally intensive for large-scale screening. Existing deep learning models struggle to generalize to new targets or drugs, and current evaluation methods often do not accurately reflect real-world performance. We introduce BALM, a deep learning framework that predicts binding affinity using pretrained protein and ligand language models. We also propose improved evaluation strategies with diverse data sets and metrics to assess model performance to new targets better. Using a curated version of BindingDB, BALM shows generalization to unseen drugs, scaffolds, and targets. In few-shot learning scenarios for targets such as USP7 and Mpro, it outperforms traditional machine learning and docking methods, including AutoDock Vina. Adoption of our target-based evaluation methods will allow a more stringent evaluation of machine learning-based scoring tools. Our binding affinity prediction framework shows good performance, is computationally efficient, and is highly adaptable within this evaluation setting, making it practical for early-stage drug discovery screening.
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