Chemistry-informed macromolecule graph representation for similarity computation, unsupervised and supervised learning

Mohapatra, Somesh and An, Joyce and Gómez-Bombarelli, Rafael (2022) Chemistry-informed macromolecule graph representation for similarity computation, unsupervised and supervised learning. Machine Learning: Science and Technology, 3 (1). 015028. ISSN 2632-2153

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Abstract

The near-infinite chemical diversity of natural and artificial macromolecules arises from the vast range of possible component monomers, linkages, and polymers topologies. This enormous variety contributes to the ubiquity and indispensability of macromolecules but hinders the development of general machine learning methods with macromolecules as input. To address this, we developed a chemistry-informed graph representation of macromolecules that enables quantifying structural similarity, and interpretable supervised learning for macromolecules. Our work enables quantitative chemistry-informed decision-making and iterative design in the macromolecular chemical space.

Item Type: Article
Subjects: Digital Academic Press > Multidisciplinary
Depositing User: Unnamed user with email support@digiacademicpress.org
Date Deposited: 11 Jul 2023 04:38
Last Modified: 17 May 2024 10:29
URI: http://science.researchersasian.com/id/eprint/1664

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