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Perturbation Theory Machine Learning Models: Theory, Regulatory Issues, and Applications to Organic Synthesis, Medicinal Chemistry, Protein Research, and Technology

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Machine Learning (ML) models are very useful to predict physicochemical properties of small organic molecules, proteins, proteomes, and complex systems. These methods may be useful to reduce the cost of research in terms of materials resources, time, and laboratory animal sacrifice. Recently different authors have reported Perturbation Theory (PT) methods combined with ML to obtain PTML (PT + ML) models. They have applied PTML models to the study of different biological systems and in technology as well. Here, we present one state-of- the-art review about the different applications of PTML models in Organic Synthesis, Medicinal Chemistry, Protein Research, and Technology. In this work, we also embrace an overview of regulatory issues for acceptance and validation of both: the Cheminformatics models, and the characterization of new Biomaterials. This is a main question in order to make scientific result self for humans and environment.

Keywords: Carbolithiations; Drug Discovery; Machine Learning; New Materials; OECD; Organic synthesis; Perturbation theory; Protein Targets; REACH; Regulatory issues

Document Type: Review Article

Publication date: 01 May 2018

This article was made available online on 28 August 2018 as a Fast Track article with title: "Perturbation Theory Machine Learning Models: Theory, Regulatory Issues, and Applications to Organic Synthesis, Medicinal Chemistry, Protein Research, and Technology".

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