Optimizing Drug Screening with Machine Learning

Chen Lin, Zhou Xiaoxiao
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Abstract

Drug screening is the process by which potential drugs are identified and optimized before the selection of a candidate drug to progress to clinical trials. To find drug candidates with good pharmacokinetic properties and adequate safety in the human body, pharmaceutical researchers need to comprehensively consider the biological activity of compounds and their influence on the human body. More specifically, only when the compound has good biological activity and ADMET (i.e., absorption, distribution, metabolism, excretion, and toxicity) properties can it qualify as a drug candidate.To improve the efficiency of drug screening, we propose a drug candidate screening approach based on machine learning methods, which not only discovers appropriate compounds but also reveals the potential effects of molecular descriptor (i.e., features) values on the properties of compounds. First, an accurate prediction model is trained based on independent variables (i.e., feature values) and dependent variables (i.e., bioactivity values or ADMET properties). Second, we use a feature interpretation algorithm to pick out features with a significant impact on the dependent variables. Third, we search for the approximate optimal values of these important features and analyze their numerical ranges that are beneficial to obtaining better bioactivity and ADMET properties. Experimental results demonstrate that our scheme is accurate, efficient, and reliable.
用机器学习优化药物筛选
药物筛选是在选择候选药物进行临床试验之前确定和优化潜在药物的过程。为了寻找具有良好药动学特性和在人体内足够安全性的候选药物,药学研究者需要综合考虑化合物的生物活性及其对人体的影响。更具体地说,只有当化合物具有良好的生物活性和ADMET(即吸收、分布、代谢、排泄和毒性)特性时,它才有资格成为候选药物。为了提高药物筛选的效率,我们提出了一种基于机器学习方法的候选药物筛选方法,该方法不仅可以发现合适的化合物,还可以揭示分子描述符(即特征)值对化合物性质的潜在影响。首先,基于自变量(即特征值)和因变量(即生物活性值或ADMET属性)训练准确的预测模型。其次,我们使用特征解释算法来挑选对因变量有显著影响的特征。第三,我们寻找这些重要特征的近似最优值,并分析它们的数值范围,这有利于获得更好的生物活性和ADMET特性。实验结果表明,该方案准确、高效、可靠。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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