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A Combination of Metabolomics and Machine Learning Results in the Identification of a New Cyst Nematode Hatching Factor

Potato Cyst Nematodes (PCNs) are an economically important pest for potato growers. A crucial event in the life cycle of the nematode is hatching, after which the juvenile will move toward the host root and infect it. The hatching of PCNs is induced by known and unknown compounds in the root exudate...

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Autores principales: Vlaar, Lieke E., Thiombiano, Benjamin, Abedini, Davar, Schilder, Mario, Yang, Yuting, Dong, Lemeng
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9229034/
https://www.ncbi.nlm.nih.gov/pubmed/35736484
http://dx.doi.org/10.3390/metabo12060551
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author Vlaar, Lieke E.
Thiombiano, Benjamin
Abedini, Davar
Schilder, Mario
Yang, Yuting
Dong, Lemeng
author_facet Vlaar, Lieke E.
Thiombiano, Benjamin
Abedini, Davar
Schilder, Mario
Yang, Yuting
Dong, Lemeng
author_sort Vlaar, Lieke E.
collection PubMed
description Potato Cyst Nematodes (PCNs) are an economically important pest for potato growers. A crucial event in the life cycle of the nematode is hatching, after which the juvenile will move toward the host root and infect it. The hatching of PCNs is induced by known and unknown compounds in the root exudates of host plant species, called hatching factors (HFs, induce hatching independently), such as solanoeclepin A (solA), or hatching stimulants (HSs, enhance hatching activity of HFs). Unraveling the identity of unknown HSs and HFs and their natural variation is important for the selection of cultivars that produce low amounts of HFs and HSs, thus contributing to more sustainable agriculture. In this study, we used a new approach aimed at the identification of new HFs and HSs for PCNs in potato. Hereto, root exudates of a series of different potato cultivars were analyzed for their PCN hatch-inducing activity and their solA content. The exudates were also analyzed using untargeted metabolomics, and subsequently the data were integrated using machine learning, specifically random forest feature selection, and Pearson’s correlation testing. As expected, solA highly correlates with hatching. Furthermore, this resulted in the discovery of a number of metabolite features present in the root exudate that correlate with hatching and solA content, and one of these is a compound of m/z 526.18 that predicts hatching even better than solA with both data methods. This compound’s involvement in hatch stimulation was confirmed by the fractionation of three representative root exudates and hatching assays with the resulting fractions. Moreover, the compound shares mass fragmentation similarity with solA, and we therefore assume it has a similar structure. With this work, we show that potato likely produces a solA analogue, and we contribute to unraveling the hatch-inducing cocktail exuded by plant roots.
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spelling pubmed-92290342022-06-25 A Combination of Metabolomics and Machine Learning Results in the Identification of a New Cyst Nematode Hatching Factor Vlaar, Lieke E. Thiombiano, Benjamin Abedini, Davar Schilder, Mario Yang, Yuting Dong, Lemeng Metabolites Article Potato Cyst Nematodes (PCNs) are an economically important pest for potato growers. A crucial event in the life cycle of the nematode is hatching, after which the juvenile will move toward the host root and infect it. The hatching of PCNs is induced by known and unknown compounds in the root exudates of host plant species, called hatching factors (HFs, induce hatching independently), such as solanoeclepin A (solA), or hatching stimulants (HSs, enhance hatching activity of HFs). Unraveling the identity of unknown HSs and HFs and their natural variation is important for the selection of cultivars that produce low amounts of HFs and HSs, thus contributing to more sustainable agriculture. In this study, we used a new approach aimed at the identification of new HFs and HSs for PCNs in potato. Hereto, root exudates of a series of different potato cultivars were analyzed for their PCN hatch-inducing activity and their solA content. The exudates were also analyzed using untargeted metabolomics, and subsequently the data were integrated using machine learning, specifically random forest feature selection, and Pearson’s correlation testing. As expected, solA highly correlates with hatching. Furthermore, this resulted in the discovery of a number of metabolite features present in the root exudate that correlate with hatching and solA content, and one of these is a compound of m/z 526.18 that predicts hatching even better than solA with both data methods. This compound’s involvement in hatch stimulation was confirmed by the fractionation of three representative root exudates and hatching assays with the resulting fractions. Moreover, the compound shares mass fragmentation similarity with solA, and we therefore assume it has a similar structure. With this work, we show that potato likely produces a solA analogue, and we contribute to unraveling the hatch-inducing cocktail exuded by plant roots. MDPI 2022-06-16 /pmc/articles/PMC9229034/ /pubmed/35736484 http://dx.doi.org/10.3390/metabo12060551 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
Vlaar, Lieke E.
Thiombiano, Benjamin
Abedini, Davar
Schilder, Mario
Yang, Yuting
Dong, Lemeng
A Combination of Metabolomics and Machine Learning Results in the Identification of a New Cyst Nematode Hatching Factor
title A Combination of Metabolomics and Machine Learning Results in the Identification of a New Cyst Nematode Hatching Factor
title_full A Combination of Metabolomics and Machine Learning Results in the Identification of a New Cyst Nematode Hatching Factor
title_fullStr A Combination of Metabolomics and Machine Learning Results in the Identification of a New Cyst Nematode Hatching Factor
title_full_unstemmed A Combination of Metabolomics and Machine Learning Results in the Identification of a New Cyst Nematode Hatching Factor
title_short A Combination of Metabolomics and Machine Learning Results in the Identification of a New Cyst Nematode Hatching Factor
title_sort combination of metabolomics and machine learning results in the identification of a new cyst nematode hatching factor
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9229034/
https://www.ncbi.nlm.nih.gov/pubmed/35736484
http://dx.doi.org/10.3390/metabo12060551
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