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Chemical reaction vector embeddings: towards predicting drug metabolism in the human gut microbiome

Bacteria in the human gut have the ability to activate, inactivate, and reactivate drugs with both intended and unintended effects. For example, the drug digoxin is reduced to the inactive metabolite dihydrodigoxin by the gut Actinobacterium E. lenta, and patients colonized with high levels of drug...

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Autores principales: Mallory, Emily K., Acharya, Ambika, Rensi, Stefano E., Turnbaugh, Peter J., Bright, Roselie A., Altman, Russ B.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5771676/
https://www.ncbi.nlm.nih.gov/pubmed/29218869
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author Mallory, Emily K.
Acharya, Ambika
Rensi, Stefano E.
Turnbaugh, Peter J.
Bright, Roselie A.
Altman, Russ B.
author_facet Mallory, Emily K.
Acharya, Ambika
Rensi, Stefano E.
Turnbaugh, Peter J.
Bright, Roselie A.
Altman, Russ B.
author_sort Mallory, Emily K.
collection PubMed
description Bacteria in the human gut have the ability to activate, inactivate, and reactivate drugs with both intended and unintended effects. For example, the drug digoxin is reduced to the inactive metabolite dihydrodigoxin by the gut Actinobacterium E. lenta, and patients colonized with high levels of drug metabolizing strains may have limited response to the drug. Understanding the complete space of drugs that are metabolized by the human gut microbiome is critical for predicting bacteria-drug relationships and their effects on individual patient response. Discovery and validation of drug metabolism via bacterial enzymes has yielded >50 drugs after nearly a century of experimental research. However, there are limited computational tools for screening drugs for potential metabolism by the gut microbiome. We developed a pipeline for comparing and characterizing chemical transformations using continuous vector representations of molecular structure learned using unsupervised representation learning. We applied this pipeline to chemical reaction data from MetaCyc to characterize the utility of vector representations for chemical reaction transformations. After clustering molecular and reaction vectors, we performed enrichment analyses and queries to characterize the space. We detected enriched enzyme names, Gene Ontology terms, and Enzyme Consortium (EC) classes within reaction clusters. In addition, we queried reactions against drug-metabolite transformations known to be metabolized by the human gut microbiome. The top results for these known drug transformations contained similar substructure modifications to the original drug pair. This work enables high throughput screening of drugs and their resulting metabolites against chemical reactions common to gut bacteria.
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spelling pubmed-57716762018-01-17 Chemical reaction vector embeddings: towards predicting drug metabolism in the human gut microbiome Mallory, Emily K. Acharya, Ambika Rensi, Stefano E. Turnbaugh, Peter J. Bright, Roselie A. Altman, Russ B. Pac Symp Biocomput Article Bacteria in the human gut have the ability to activate, inactivate, and reactivate drugs with both intended and unintended effects. For example, the drug digoxin is reduced to the inactive metabolite dihydrodigoxin by the gut Actinobacterium E. lenta, and patients colonized with high levels of drug metabolizing strains may have limited response to the drug. Understanding the complete space of drugs that are metabolized by the human gut microbiome is critical for predicting bacteria-drug relationships and their effects on individual patient response. Discovery and validation of drug metabolism via bacterial enzymes has yielded >50 drugs after nearly a century of experimental research. However, there are limited computational tools for screening drugs for potential metabolism by the gut microbiome. We developed a pipeline for comparing and characterizing chemical transformations using continuous vector representations of molecular structure learned using unsupervised representation learning. We applied this pipeline to chemical reaction data from MetaCyc to characterize the utility of vector representations for chemical reaction transformations. After clustering molecular and reaction vectors, we performed enrichment analyses and queries to characterize the space. We detected enriched enzyme names, Gene Ontology terms, and Enzyme Consortium (EC) classes within reaction clusters. In addition, we queried reactions against drug-metabolite transformations known to be metabolized by the human gut microbiome. The top results for these known drug transformations contained similar substructure modifications to the original drug pair. This work enables high throughput screening of drugs and their resulting metabolites against chemical reactions common to gut bacteria. 2018 /pmc/articles/PMC5771676/ /pubmed/29218869 Text en http://creativecommons.org/licenses/by-nc/4.0/ Open Access chapter published by World Scientific Publishing Company and distributed under the terms of the Creative Commons Attribution Non-Commercial (CC BY-NC) 4.0 License.
spellingShingle Article
Mallory, Emily K.
Acharya, Ambika
Rensi, Stefano E.
Turnbaugh, Peter J.
Bright, Roselie A.
Altman, Russ B.
Chemical reaction vector embeddings: towards predicting drug metabolism in the human gut microbiome
title Chemical reaction vector embeddings: towards predicting drug metabolism in the human gut microbiome
title_full Chemical reaction vector embeddings: towards predicting drug metabolism in the human gut microbiome
title_fullStr Chemical reaction vector embeddings: towards predicting drug metabolism in the human gut microbiome
title_full_unstemmed Chemical reaction vector embeddings: towards predicting drug metabolism in the human gut microbiome
title_short Chemical reaction vector embeddings: towards predicting drug metabolism in the human gut microbiome
title_sort chemical reaction vector embeddings: towards predicting drug metabolism in the human gut microbiome
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5771676/
https://www.ncbi.nlm.nih.gov/pubmed/29218869
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