Ehrman Thomas M, Barlow David J, Hylands Peter J
Pharmaceutical Sciences Research Division and Centre for Natural Medicines Research, King's College London, Franklin-Wilkins Building, 150 Stamford Street, London SE1 9NH, United Kingdom.
J Chem Inf Model. 2007 Mar-Apr;47(2):264-78. doi: 10.1021/ci600289v.
Random Forest, a form of multiple decision trees, has been used to screen a database of Chinese herbal constituents for potential inhibitors against several therapeutically important molecular targets. These comprise cyclic adenosine 3'-5'-monophosphate phosphodiesterases, protein kinase A, cyclooxygenases, lipoxygenases, aldose reductase, and three HIV targets-integrase, protease, and reverse transcriptase. In addition, compounds were identified which may inhibit the expression of inducible nitric oxide synthase and/or nitric oxide production in vivo. A total of 240 Chinese herbs containing 8264 compounds were screened in silico, including many used on a regular basis in traditional Chinese medicine. Active compounds were selected from another database of 2597 phytochemicals and related natural products with known target affinities and covered a wide range of structural classes. Random Forest was found to perform well, even on highly unbalanced data characteristic of ligand-based screening where the compounds to be screened are far more numerous than the number of active compounds used in training. Despite a conservative screening protocol, a wide variety of compounds from Chinese herbs were hit. Of particular interest were the relatively large number of herbs predicted to inhibit multiple targets, as well as a number which appeared to contain inhibitors of the same target from different phytochemical classes. The latter point to the possibility that individual species may make use of alternative phytochemical strategies in target inhibition. A literature search provided evidence to support 83 herb-target predictions.
随机森林是一种多决策树形式,已被用于筛选中药成分数据库,以寻找针对几种具有重要治疗意义的分子靶点的潜在抑制剂。这些靶点包括环磷酸腺苷磷酸二酯酶、蛋白激酶A、环氧化酶、脂氧化酶、醛糖还原酶以及三种HIV靶点——整合酶、蛋白酶和逆转录酶。此外,还鉴定出了可能在体内抑制诱导型一氧化氮合酶表达和/或一氧化氮生成的化合物。通过计算机模拟筛选了总共240种含有8264种化合物的中药,其中包括许多中医常用的药材。活性化合物从另一个包含2597种具有已知靶点亲和力的植物化学物质和相关天然产物的数据库中选出,涵盖了广泛的结构类别。结果发现,即使在基于配体筛选的高度不平衡数据上,随机森林也表现良好,在这种筛选中,待筛选的化合物数量远远多于训练中使用的活性化合物数量。尽管采用了保守的筛选方案,但仍筛选出了多种来自中药的化合物。特别值得关注的是,预计有相对大量的草药能抑制多个靶点,还有一些草药似乎含有来自不同植物化学类别的同一靶点的抑制剂。后者表明单个物种可能利用不同的植物化学策略来抑制靶点。文献检索为83种草药-靶点预测提供了支持证据。