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A novel strategy for prediction of human plasma protein binding using machine learning techniques

机译:采用机器学习技术预测人血浆蛋白质结合的新策略

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摘要

Plasma protein binding (PPB) is a key player of drug ADME (absorption, distribution, metabolism, elimination) behaviors, enabling PPB to have significant impact on drug efficacy and toxicity. As drug discovery enters the era of rational drug design, it is desirable to use in silico model to predict PPB so as to achieve rapid initial screening for potential candidate compounds prior to further time-consuming and costly in vitro and in vivo experimental assay. In this study, a global quantitative structure-activity relationship (QSAR) model of PPB was built on the basis of a large training set comprising more than 5000 compounds to represent large structural diversity. The uneven distribution of PPB was often rectified by two mathematical transformations of PPB but this led to a decrease in prediction accuracy a the lower binding level. To resolve this problem, we proposed a novel strategy to build models for different binding levels. The best model yielded much lower mean absolute error (MAE) of 0.076 on the test set than published models and the MAE was further reduced to 0.041 a the high level of binding (0.8-1). The models also performed excellent in the validation set containing some compounds from traditional Chinese medicine. In addition, the applicability domain was determined to identify new compounds which are appropriate for prediction using our built models. In conclusion, this study developed a novel strategy to construct robust QSAR model for PPB prediction which could be used by chemists to predict the PPB of candidate compounds efficiently and make structural modification in the early stage of drug development.
机译:血浆蛋白结合(PPB)是药物Adme(吸收,分布,代谢,消除)行为的关键球员,使PPB能够对药物疗效和毒性产生重大影响。由于药物发现进入了合理的药物设计时代,希望在硅模型中使用以预测PPB,以便在体外耗时和昂贵和体内实验测定之前实现潜在的候选化合物的快速初始筛选。在本研究中,基于包含超过5000个化合物的大型训练集来构建PPB的全局定量结构 - 活动关系(QSAR)模型,以表示大结构多样性。 PPB的不均匀分布通常由PPB的两个数学变换进行整流,但这导致预测精度降低了较低的结合水平。为了解决这个问题,我们提出了一种新的策略来构建不同绑定水平的模型。测试装置上的最佳模型产生的比例低于0.076的误差(MAE),而不是已发表的模型,并且MAE进一步降低至0.041A的高水平结合(0.8-1)。该模型还在含有来自中药中的一些化合物的验证装置中进行了优异的。此外,确定适用性域以识别适用于使用我们的建筑模型的预测的新化合物。总之,本研究开发了一种新的策略,用于构建PPB预测的强大QSAR模型,该方法可以用化学家使用,以有效地预测候选化合物的PPB,并在药物发育早期进行结构改性。

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