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Combining explainable machine learning, demographic and multi-omic data to inform precision medicine strategies for inflammatory bowel disease

Inflammatory bowel diseases (IBDs), including ulcerative colitis and Crohn’s disease, affect several million individuals worldwide. These diseases are heterogeneous at the clinical, immunological and genetic levels and result from complex host and environmental interactions. Investigating drug effic...

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Autores principales: Gardiner, Laura-Jayne, Carrieri, Anna Paola, Bingham, Karen, Macluskie, Graeme, Bunton, David, McNeil, Marian, Pyzer-Knapp, Edward O.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8865677/
https://www.ncbi.nlm.nih.gov/pubmed/35196350
http://dx.doi.org/10.1371/journal.pone.0263248
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author Gardiner, Laura-Jayne
Carrieri, Anna Paola
Bingham, Karen
Macluskie, Graeme
Bunton, David
McNeil, Marian
Pyzer-Knapp, Edward O.
author_facet Gardiner, Laura-Jayne
Carrieri, Anna Paola
Bingham, Karen
Macluskie, Graeme
Bunton, David
McNeil, Marian
Pyzer-Knapp, Edward O.
author_sort Gardiner, Laura-Jayne
collection PubMed
description Inflammatory bowel diseases (IBDs), including ulcerative colitis and Crohn’s disease, affect several million individuals worldwide. These diseases are heterogeneous at the clinical, immunological and genetic levels and result from complex host and environmental interactions. Investigating drug efficacy for IBD can improve our understanding of why treatment response can vary between patients. We propose an explainable machine learning (ML) approach that combines bioinformatics and domain insight, to integrate multi-modal data and predict inter-patient variation in drug response. Using explanation of our models, we interpret the ML models’ predictions to infer unique combinations of important features associated with pharmacological responses obtained during preclinical testing of drug candidates in ex vivo patient-derived fresh tissues. Our inferred multi-modal features that are predictive of drug efficacy include multi-omic data (genomic and transcriptomic), demographic, medicinal and pharmacological data. Our aim is to understand variation in patient responses before a drug candidate moves forward to clinical trials. As a pharmacological measure of drug efficacy, we measured the reduction in the release of the inflammatory cytokine TNFα from the fresh IBD tissues in the presence/absence of test drugs. We initially explored the effects of a mitogen-activated protein kinase (MAPK) inhibitor; however, we later showed our approach can be applied to other targets, test drugs or mechanisms of interest. Our best model predicted TNFα levels from demographic, medicinal and genomic features with an error of only 4.98% on unseen patients. We incorporated transcriptomic data to validate insights from genomic features. Our results showed variations in drug effectiveness (measured by ex vivo assays) between patients that differed in gender, age or condition and linked new genetic polymorphisms to patient response variation to the anti-inflammatory treatment BIRB796 (Doramapimod). Our approach models IBD drug response while also identifying its most predictive features as part of a transparent ML precision medicine strategy.
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spelling pubmed-88656772022-02-24 Combining explainable machine learning, demographic and multi-omic data to inform precision medicine strategies for inflammatory bowel disease Gardiner, Laura-Jayne Carrieri, Anna Paola Bingham, Karen Macluskie, Graeme Bunton, David McNeil, Marian Pyzer-Knapp, Edward O. PLoS One Research Article Inflammatory bowel diseases (IBDs), including ulcerative colitis and Crohn’s disease, affect several million individuals worldwide. These diseases are heterogeneous at the clinical, immunological and genetic levels and result from complex host and environmental interactions. Investigating drug efficacy for IBD can improve our understanding of why treatment response can vary between patients. We propose an explainable machine learning (ML) approach that combines bioinformatics and domain insight, to integrate multi-modal data and predict inter-patient variation in drug response. Using explanation of our models, we interpret the ML models’ predictions to infer unique combinations of important features associated with pharmacological responses obtained during preclinical testing of drug candidates in ex vivo patient-derived fresh tissues. Our inferred multi-modal features that are predictive of drug efficacy include multi-omic data (genomic and transcriptomic), demographic, medicinal and pharmacological data. Our aim is to understand variation in patient responses before a drug candidate moves forward to clinical trials. As a pharmacological measure of drug efficacy, we measured the reduction in the release of the inflammatory cytokine TNFα from the fresh IBD tissues in the presence/absence of test drugs. We initially explored the effects of a mitogen-activated protein kinase (MAPK) inhibitor; however, we later showed our approach can be applied to other targets, test drugs or mechanisms of interest. Our best model predicted TNFα levels from demographic, medicinal and genomic features with an error of only 4.98% on unseen patients. We incorporated transcriptomic data to validate insights from genomic features. Our results showed variations in drug effectiveness (measured by ex vivo assays) between patients that differed in gender, age or condition and linked new genetic polymorphisms to patient response variation to the anti-inflammatory treatment BIRB796 (Doramapimod). Our approach models IBD drug response while also identifying its most predictive features as part of a transparent ML precision medicine strategy. Public Library of Science 2022-02-23 /pmc/articles/PMC8865677/ /pubmed/35196350 http://dx.doi.org/10.1371/journal.pone.0263248 Text en © 2022 Gardiner et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Gardiner, Laura-Jayne
Carrieri, Anna Paola
Bingham, Karen
Macluskie, Graeme
Bunton, David
McNeil, Marian
Pyzer-Knapp, Edward O.
Combining explainable machine learning, demographic and multi-omic data to inform precision medicine strategies for inflammatory bowel disease
title Combining explainable machine learning, demographic and multi-omic data to inform precision medicine strategies for inflammatory bowel disease
title_full Combining explainable machine learning, demographic and multi-omic data to inform precision medicine strategies for inflammatory bowel disease
title_fullStr Combining explainable machine learning, demographic and multi-omic data to inform precision medicine strategies for inflammatory bowel disease
title_full_unstemmed Combining explainable machine learning, demographic and multi-omic data to inform precision medicine strategies for inflammatory bowel disease
title_short Combining explainable machine learning, demographic and multi-omic data to inform precision medicine strategies for inflammatory bowel disease
title_sort combining explainable machine learning, demographic and multi-omic data to inform precision medicine strategies for inflammatory bowel disease
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8865677/
https://www.ncbi.nlm.nih.gov/pubmed/35196350
http://dx.doi.org/10.1371/journal.pone.0263248
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