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Prototype-Based Compound Discovery Using Deep Generative Models

机译:基于原型的复合体发现,使用深生成模型

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摘要

Designing a new drug is a lengthy and expensive process. As the space of potential molecules is very large (Polishchuk, P.G.; Madzhidov, T. I.; Varnek, A. Estimation of the size of drug-like chemical space based on GDB-17 data. J. Comput.-Aided Mol. Des. 2013, 27, 675-679 10.1007/s10822-013-9672-4), a common technique during drug discovery is to start from a molecule which already has some of the desired properties. An interdisciplinary team of scientists generates hypothesis about the required changes to the prototype. In this work, we develop a deep-learning unsupervised-approach that automatically generates potential drug molecules given a prototype drug. We show that the molecules generated by the system are valid molecules and significantly different from the prototype drug. Out of the compounds generated by the system, we identified 35 known FDA-approved drugs. As an example, our system generated isoniazid, one of the main drugs for tuberculosis. We suggest several ranking functions for the generated molecules and present results that the top ten generated molecules per prototype drug contained in our retrospective experiments 23 known FDA-approved drugs.
机译:设计一种新药是一种漫长而昂贵的过程。随着潜在分子的空间非常大(Polishchuk,PG; Madzhidov,Ti; varnek,A。基于GDB-17数据估计药物状化学空间的大小。J.Cop.-辅助摩尔。DES。2013 ,27,675-679 10.1007 / s10822-013-9672-4),药物发现期间的常见技术是从已经具有一些所需性质的分子开始。跨学科的科学家团队为原型的所需变化产生假设。在这项工作中,我们开发了一种深度学习的无监督方法,可根据原型药物自动产生潜在的药物分子。我们表明系统产生的分子是有效的分子,与原型药物显着不同。除了系统产生的化合物中,我们确定了35名已知的FDA批准的药物。作为一个例子,我们的系统生成了ISONIAZID,是结核病的主要药物之一。我们建议产生的分子的几个排名功能,并存在结果,即我们的回顾性实验中包含的每种原型药物的前十个产生的分子23所熟知的FDA批准的药物。

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