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Machine Learning Data Augmentation as a Tool to Enhance Quantitative Composition–Activity Relationships of Complex Mixtures. A New Application to Dissect the Role of Main Chemical Components in Bioactive Essential Oils

Scientific investigation on essential oils composition and the related biological profile are continuously growing. Nevertheless, only a few studies have been performed on the relationships between chemical composition and biological data. Herein, the investigation of 61 assayed essential oils is re...

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Autores principales: Ragno, Alessio, Baldisserotto, Anna, Antonini, Lorenzo, Sabatino, Manuela, Sapienza, Filippo, Baldini, Erika, Buzzi, Raissa, Vertuani, Silvia, Manfredini, Stefano
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8537614/
https://www.ncbi.nlm.nih.gov/pubmed/34684861
http://dx.doi.org/10.3390/molecules26206279
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author Ragno, Alessio
Baldisserotto, Anna
Antonini, Lorenzo
Sabatino, Manuela
Sapienza, Filippo
Baldini, Erika
Buzzi, Raissa
Vertuani, Silvia
Manfredini, Stefano
author_facet Ragno, Alessio
Baldisserotto, Anna
Antonini, Lorenzo
Sabatino, Manuela
Sapienza, Filippo
Baldini, Erika
Buzzi, Raissa
Vertuani, Silvia
Manfredini, Stefano
author_sort Ragno, Alessio
collection PubMed
description Scientific investigation on essential oils composition and the related biological profile are continuously growing. Nevertheless, only a few studies have been performed on the relationships between chemical composition and biological data. Herein, the investigation of 61 assayed essential oils is reported focusing on their inhibition activity against Microsporum spp. including development of machine learning models with the aim of highlining the possible chemical components mainly related to the inhibitory potency. The application of machine learning and deep learning techniques for predictive and descriptive purposes have been applied successfully to many fields. Quantitative composition–activity relationships machine learning-based models were developed for the 61 essential oils tested as Microsporum spp. growth modulators. The models were built with in-house python scripts implementing data augmentation with the purpose of having a smoother flow between essential oils’ chemical compositions and biological data. High statistical coefficient values (Accuracy, Matthews correlation coefficient and F(1) score) were obtained and model inspection permitted to detect possible specific roles related to some components of essential oils’ constituents. Robust machine learning models are far more useful tools to reveal data augmentation in comparison with raw data derived models. To the best of the authors knowledge this is the first report using data augmentation to highlight the role of complex mixture components, in particular a first application of these data will be for the development of ingredients in the dermo-cosmetic field investigating microbial species considering the urge for the use of natural preserving and acting antimicrobial agents.
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spelling pubmed-85376142021-10-24 Machine Learning Data Augmentation as a Tool to Enhance Quantitative Composition–Activity Relationships of Complex Mixtures. A New Application to Dissect the Role of Main Chemical Components in Bioactive Essential Oils Ragno, Alessio Baldisserotto, Anna Antonini, Lorenzo Sabatino, Manuela Sapienza, Filippo Baldini, Erika Buzzi, Raissa Vertuani, Silvia Manfredini, Stefano Molecules Article Scientific investigation on essential oils composition and the related biological profile are continuously growing. Nevertheless, only a few studies have been performed on the relationships between chemical composition and biological data. Herein, the investigation of 61 assayed essential oils is reported focusing on their inhibition activity against Microsporum spp. including development of machine learning models with the aim of highlining the possible chemical components mainly related to the inhibitory potency. The application of machine learning and deep learning techniques for predictive and descriptive purposes have been applied successfully to many fields. Quantitative composition–activity relationships machine learning-based models were developed for the 61 essential oils tested as Microsporum spp. growth modulators. The models were built with in-house python scripts implementing data augmentation with the purpose of having a smoother flow between essential oils’ chemical compositions and biological data. High statistical coefficient values (Accuracy, Matthews correlation coefficient and F(1) score) were obtained and model inspection permitted to detect possible specific roles related to some components of essential oils’ constituents. Robust machine learning models are far more useful tools to reveal data augmentation in comparison with raw data derived models. To the best of the authors knowledge this is the first report using data augmentation to highlight the role of complex mixture components, in particular a first application of these data will be for the development of ingredients in the dermo-cosmetic field investigating microbial species considering the urge for the use of natural preserving and acting antimicrobial agents. MDPI 2021-10-17 /pmc/articles/PMC8537614/ /pubmed/34684861 http://dx.doi.org/10.3390/molecules26206279 Text en © 2021 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
Ragno, Alessio
Baldisserotto, Anna
Antonini, Lorenzo
Sabatino, Manuela
Sapienza, Filippo
Baldini, Erika
Buzzi, Raissa
Vertuani, Silvia
Manfredini, Stefano
Machine Learning Data Augmentation as a Tool to Enhance Quantitative Composition–Activity Relationships of Complex Mixtures. A New Application to Dissect the Role of Main Chemical Components in Bioactive Essential Oils
title Machine Learning Data Augmentation as a Tool to Enhance Quantitative Composition–Activity Relationships of Complex Mixtures. A New Application to Dissect the Role of Main Chemical Components in Bioactive Essential Oils
title_full Machine Learning Data Augmentation as a Tool to Enhance Quantitative Composition–Activity Relationships of Complex Mixtures. A New Application to Dissect the Role of Main Chemical Components in Bioactive Essential Oils
title_fullStr Machine Learning Data Augmentation as a Tool to Enhance Quantitative Composition–Activity Relationships of Complex Mixtures. A New Application to Dissect the Role of Main Chemical Components in Bioactive Essential Oils
title_full_unstemmed Machine Learning Data Augmentation as a Tool to Enhance Quantitative Composition–Activity Relationships of Complex Mixtures. A New Application to Dissect the Role of Main Chemical Components in Bioactive Essential Oils
title_short Machine Learning Data Augmentation as a Tool to Enhance Quantitative Composition–Activity Relationships of Complex Mixtures. A New Application to Dissect the Role of Main Chemical Components in Bioactive Essential Oils
title_sort machine learning data augmentation as a tool to enhance quantitative composition–activity relationships of complex mixtures. a new application to dissect the role of main chemical components in bioactive essential oils
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8537614/
https://www.ncbi.nlm.nih.gov/pubmed/34684861
http://dx.doi.org/10.3390/molecules26206279
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