虚拟筛选
计算生物学
药物发现
支持向量机
配体(生物化学)
蛋白质配体
计算机科学
序列(生物学)
蛋白质测序
人工智能
化学
机器学习
生物信息学
生物
肽序列
生物化学
基因
受体
作者
Fei Wang,Dongxiang Liu,Heyao Wang,Cheng Luo,Mingyue Zheng,Hong Liu,Weiliang Zhu,Xiaomin Luo,Jian Zhang,Hualiang Jiang
摘要
The three-dimensional (3D) structures of most protein targets have not been determined so far, with many of them not even having a known ligand, a truly general method to predict ligand-protein interactions in the absence of three-dimensional information would be of great potential value in drug discovery. Using the support vector machine (SVM) approach, we constructed a model for predicting ligand-protein interaction based only on the primary sequence of proteins and the structural features of small molecules. The model, trained by using 15,000 ligand-protein interactions between 626 proteins and over 10,000 active compounds, was successfully used in discovering nine novel active compounds for four pharmacologically important targets (i.e., GPR40, SIRT1, p38, and GSK-3β). To our knowledge, this is the first example of a successful sequence-based virtual screening campaign, demonstrating that our approach has the potential to discover, with a single model, active ligands for any protein.
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