| Literature DB >> 34662515 |
Hyun Woo Kim1, Mingxun Wang2,3, Christopher A Leber1, Louis-Félix Nothias2, Raphael Reher1,4, Kyo Bin Kang5, Justin J J van der Hooft6, Pieter C Dorrestein2, William H Gerwick1,2, Garrison W Cottrell7.
Abstract
Computational approaches such as genome and metabolome mining are becoming essential to natural products (NPs) research. Consequently, a need exists for an automated structure-type classification system to handle the massive amounts of data appearing for NP structures. An ideal semantic ontology for the classification of NPs should go beyond the simple presence/absence of chemical substructures, but also include the taxonomy of the producing organism, the nature of the biosynthetic pathway, and/or their biological properties. Thus, a holistic and automatic NP classification framework could have considerable value to comprehensively navigate the relatedness of NPs, and especially so when analyzing large numbers of NPs. Here, we introduce NPClassifier, a deep-learning tool for the automated structural classification of NPs from their counted Morgan fingerprints. NPClassifier is expected to accelerate and enhance NP discovery by linking NP structures to their underlying properties.Entities:
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Year: 2021 PMID: 34662515 PMCID: PMC8631337 DOI: 10.1021/acs.jnatprod.1c00399
Source DB: PubMed Journal: J Nat Prod ISSN: 0163-3864 Impact factor: 4.803