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Exploiting machine learning for end-to-end drug discovery and development

机译:利用机器学习终端到底药物发现和发展

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摘要

A variety of machine learning methods such as naive Bayesian, support vector machines and more recently deep neural networks are demonstrating their utility for drug discovery and development. These leverage the generally bigger datasets created from high-throughput screening data and allow prediction of bioactivities for targets and molecular properties with increased levels of accuracy. We have only just begun to exploit the potential of these techniques but they may already be fundamentally changing the research process for identifying new molecules and/or repurposing old drugs. The integrated application of such machine learning models for end-to-end (E2E) application is broadly relevant and has considerable implications for developing future therapies and their targeting.
机译:各种机器学习方法,如天真贝叶斯,支持向量机等,最近的深度神经网络正在展示他们的药物发现和发展的效用。这些利用了从高吞吐量筛选数据创建的通常更大的数据集,并允许预测目标和分子特性的生物活体,提高精度水平。我们刚刚开始利用这些技术的潜力,但他们可能已经从根本上改变了鉴定新分子和/或重新施用旧药物的研究过程。这种机器学习模型的结束(E2E)应用程序的综合应用广泛相关,对发展未来的疗法及其定位具有相当大的影响。

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  • 来源
    《Nature Materials》 |2019年第5期|435-441|共7页
  • 作者单位

    Collaborat Pharmaceut Inc Raleigh NC 27606 USA;

    Collaborat Pharmaceut Inc Raleigh NC 27606 USA;

    Collaborat Pharmaceut Inc Raleigh NC 27606 USA;

    Collaborat Pharmaceut Inc Raleigh NC 27606 USA;

    Collaborat Pharmaceut Inc Raleigh NC 27606 USA|Rutgers Ctr Computat & Integrat Biol Camden NJ USA;

    Collaborat Pharmaceut Inc Raleigh NC 27606 USA;

    RTI Int Res Triangle Pk NC USA|Univ North Carolina Chapel Hill UNC Catalyst Rare Dis Eshelman Sch Pharm Chapel Hill NC USA;

    Mol Mat Informat Inc Montreal PQ Canada;

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