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Computation-Assisted Identification of Bioactive Compounds in Botanical Extracts: A Case Study of Anti-Inflammatory Natural Products from Hops

The slow pace of discovery of bioactive natural products can be attributed to the difficulty in rapidly identifying them in complex mixtures such as plant extracts. To overcome these hurdles, we explored the utility of two machine learning techniques, i.e., Elastic Net and Random Forests, for identi...

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Autores principales: Brown, Kevin S., Jamieson, Paige, Wu, Wenbin, Vaswani, Ashish, Alcazar Magana, Armando, Choi, Jaewoo, Mattio, Luce M., Cheong, Paul Ha-Yeon, Nelson, Dylan, Reardon, Patrick N., Miranda, Cristobal L., Maier, Claudia S., Stevens, Jan F.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9312012/
https://www.ncbi.nlm.nih.gov/pubmed/35883889
http://dx.doi.org/10.3390/antiox11071400
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author Brown, Kevin S.
Jamieson, Paige
Wu, Wenbin
Vaswani, Ashish
Alcazar Magana, Armando
Choi, Jaewoo
Mattio, Luce M.
Cheong, Paul Ha-Yeon
Nelson, Dylan
Reardon, Patrick N.
Miranda, Cristobal L.
Maier, Claudia S.
Stevens, Jan F.
author_facet Brown, Kevin S.
Jamieson, Paige
Wu, Wenbin
Vaswani, Ashish
Alcazar Magana, Armando
Choi, Jaewoo
Mattio, Luce M.
Cheong, Paul Ha-Yeon
Nelson, Dylan
Reardon, Patrick N.
Miranda, Cristobal L.
Maier, Claudia S.
Stevens, Jan F.
author_sort Brown, Kevin S.
collection PubMed
description The slow pace of discovery of bioactive natural products can be attributed to the difficulty in rapidly identifying them in complex mixtures such as plant extracts. To overcome these hurdles, we explored the utility of two machine learning techniques, i.e., Elastic Net and Random Forests, for identifying the individual anti-inflammatory principle(s) of an extract of the inflorescences of the hops (Humulus lupulus) containing hundreds of natural products. We fractionated a hop extract by column chromatography to obtain 40 impure fractions, determined their anti-inflammatory activity using a macrophage-based bioassay that measures inhibition of iNOS-mediated formation of nitric oxide, and characterized the chemical composition of the fractions by flow-injection HRAM mass spectrometry and LC-MS/MS. Among the top 10 predictors of bioactivity were prenylated flavonoids and humulones. The top Random Forests predictor of bioactivity, xanthohumol, was tested in pure form in the same bioassay to validate the predicted result (IC(50) 7 µM). Other predictors of bioactivity were identified by spectral similarity with known hop natural products using the Global Natural Products Social Networking (GNPS) algorithm. Our machine learning approach demonstrated that individual bioactive natural products can be identified without the need for extensive and repetitive bioassay-guided fractionation of a plant extract.
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spelling pubmed-93120122022-07-26 Computation-Assisted Identification of Bioactive Compounds in Botanical Extracts: A Case Study of Anti-Inflammatory Natural Products from Hops Brown, Kevin S. Jamieson, Paige Wu, Wenbin Vaswani, Ashish Alcazar Magana, Armando Choi, Jaewoo Mattio, Luce M. Cheong, Paul Ha-Yeon Nelson, Dylan Reardon, Patrick N. Miranda, Cristobal L. Maier, Claudia S. Stevens, Jan F. Antioxidants (Basel) Article The slow pace of discovery of bioactive natural products can be attributed to the difficulty in rapidly identifying them in complex mixtures such as plant extracts. To overcome these hurdles, we explored the utility of two machine learning techniques, i.e., Elastic Net and Random Forests, for identifying the individual anti-inflammatory principle(s) of an extract of the inflorescences of the hops (Humulus lupulus) containing hundreds of natural products. We fractionated a hop extract by column chromatography to obtain 40 impure fractions, determined their anti-inflammatory activity using a macrophage-based bioassay that measures inhibition of iNOS-mediated formation of nitric oxide, and characterized the chemical composition of the fractions by flow-injection HRAM mass spectrometry and LC-MS/MS. Among the top 10 predictors of bioactivity were prenylated flavonoids and humulones. The top Random Forests predictor of bioactivity, xanthohumol, was tested in pure form in the same bioassay to validate the predicted result (IC(50) 7 µM). Other predictors of bioactivity were identified by spectral similarity with known hop natural products using the Global Natural Products Social Networking (GNPS) algorithm. Our machine learning approach demonstrated that individual bioactive natural products can be identified without the need for extensive and repetitive bioassay-guided fractionation of a plant extract. MDPI 2022-07-19 /pmc/articles/PMC9312012/ /pubmed/35883889 http://dx.doi.org/10.3390/antiox11071400 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Brown, Kevin S.
Jamieson, Paige
Wu, Wenbin
Vaswani, Ashish
Alcazar Magana, Armando
Choi, Jaewoo
Mattio, Luce M.
Cheong, Paul Ha-Yeon
Nelson, Dylan
Reardon, Patrick N.
Miranda, Cristobal L.
Maier, Claudia S.
Stevens, Jan F.
Computation-Assisted Identification of Bioactive Compounds in Botanical Extracts: A Case Study of Anti-Inflammatory Natural Products from Hops
title Computation-Assisted Identification of Bioactive Compounds in Botanical Extracts: A Case Study of Anti-Inflammatory Natural Products from Hops
title_full Computation-Assisted Identification of Bioactive Compounds in Botanical Extracts: A Case Study of Anti-Inflammatory Natural Products from Hops
title_fullStr Computation-Assisted Identification of Bioactive Compounds in Botanical Extracts: A Case Study of Anti-Inflammatory Natural Products from Hops
title_full_unstemmed Computation-Assisted Identification of Bioactive Compounds in Botanical Extracts: A Case Study of Anti-Inflammatory Natural Products from Hops
title_short Computation-Assisted Identification of Bioactive Compounds in Botanical Extracts: A Case Study of Anti-Inflammatory Natural Products from Hops
title_sort computation-assisted identification of bioactive compounds in botanical extracts: a case study of anti-inflammatory natural products from hops
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9312012/
https://www.ncbi.nlm.nih.gov/pubmed/35883889
http://dx.doi.org/10.3390/antiox11071400
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