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A review on machine learning approaches and trends in drug discovery

Journal

COMPUTATIONAL AND STRUCTURAL BIOTECHNOLOGY JOURNAL
Volume 19, Issue -, Pages 4538-4558

Publisher

ELSEVIER
DOI: 10.1016/j.csbj.2021.08.011

Keywords

Machine Learning; Drug Discovery; Cheminformatics; QSAR; Molecular Descriptors; Deep Learning

Funding

  1. Conselleria de Cultura, Educacion e Universidades from Xunta de Galicia through ERDF Funds
  2. ERDF Operational Pro-gramme Galicia
  3. Secretaria Xeral de Universidades [ED431G 2019/01]

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In recent years, machine learning techniques have been widely used in drug discovery to improve efficiency and reduce costs. To achieve the goals set by the Precision Medicine initiative, higher requirements have been proposed for the robustness, standardization, and reproducibility of computational methods.
Drug discovery aims at finding new compounds with specific chemical properties for the treatment of diseases. In the last years, the approach used in this search presents an important component in computer science with the skyrocketing of machine learning techniques due to its democratization. With the objectives set by the Precision Medicine initiative and the new challenges generated, it is necessary to establish robust, standard and reproducible computational methodologies to achieve the objectives set. Currently, predictive models based on Machine Learning have gained great importance in the step prior to preclinical studies. This stage manages to drastically reduce costs and research times in the discovery of new drugs. This review article focuses on how these new methodologies are being used in recent years of research. Analyzing the state of the art in this field will give us an idea of where chemin-formatics will be developed in the short term, the limitations it presents and the positive results it has achieved. This review will focus mainly on the methods used to model the molecular data, as well as the biological problems addressed and the Machine Learning algorithms used for drug discovery in recent years. (C) 2021 The Author(s). Published by Elsevier B.V.

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