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Experimental Data Based Machine Learning Classification Models with Predictive Ability to Select in Vitro Active Antiviral and Non-Toxic Essential Oils

In the last decade essential oils have attracted scientists with a constant increase rate of more than 7% as witnessed by almost 5000 articles. Among the prominent studies essential oils are investigated as antibacterial agents alone or in combination with known drugs. Minor studies involved essenti...

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Autores principales: Sabatino, Manuela, Fabiani, Marco, Božović, Mijat, Garzoli, Stefania, Antonini, Lorenzo, Marcocci, Maria Elena, Palamara, Anna Teresa, De Chiara, Giovanna, Ragno, Rino
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7288128/
https://www.ncbi.nlm.nih.gov/pubmed/32466318
http://dx.doi.org/10.3390/molecules25102452
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author Sabatino, Manuela
Fabiani, Marco
Božović, Mijat
Garzoli, Stefania
Antonini, Lorenzo
Marcocci, Maria Elena
Palamara, Anna Teresa
De Chiara, Giovanna
Ragno, Rino
author_facet Sabatino, Manuela
Fabiani, Marco
Božović, Mijat
Garzoli, Stefania
Antonini, Lorenzo
Marcocci, Maria Elena
Palamara, Anna Teresa
De Chiara, Giovanna
Ragno, Rino
author_sort Sabatino, Manuela
collection PubMed
description In the last decade essential oils have attracted scientists with a constant increase rate of more than 7% as witnessed by almost 5000 articles. Among the prominent studies essential oils are investigated as antibacterial agents alone or in combination with known drugs. Minor studies involved essential oil inspection as potential anticancer and antiviral natural remedies. In line with the authors previous reports the investigation of an in-house library of extracted essential oils as a potential blocker of HSV-1 infection is reported herein. A subset of essential oils was experimentally tested in an in vitro model of HSV-1 infection and the determined IC(50)s and CC(50)s values were used in conjunction with the results obtained by gas-chromatography/mass spectrometry chemical analysis to derive machine learning based classification models trained with the partial least square discriminant analysis algorithm. The internally validated models were thus applied on untested essential oils to assess their effective predictive ability in selecting both active and low toxic samples. Five essential oils were selected among a list of 52 and readily assayed for IC(50) and CC(50) determination. Interestingly, four out of the five selected samples, compared with the potencies of the training set, returned to be highly active and endowed with low toxicity. In particular, sample CJM1 from Calaminta nepeta was the most potent tested essential oil with the highest selectivity index (IC(50) = 0.063 mg/mL, SI > 47.5). In conclusion, it was herein demonstrated how multidisciplinary applications involving machine learning could represent a valuable tool in predicting the bioactivity of complex mixtures and in the near future to enable the design of blended essential oil possibly endowed with higher potency and lower toxicity.
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spelling pubmed-72881282020-06-17 Experimental Data Based Machine Learning Classification Models with Predictive Ability to Select in Vitro Active Antiviral and Non-Toxic Essential Oils Sabatino, Manuela Fabiani, Marco Božović, Mijat Garzoli, Stefania Antonini, Lorenzo Marcocci, Maria Elena Palamara, Anna Teresa De Chiara, Giovanna Ragno, Rino Molecules Article In the last decade essential oils have attracted scientists with a constant increase rate of more than 7% as witnessed by almost 5000 articles. Among the prominent studies essential oils are investigated as antibacterial agents alone or in combination with known drugs. Minor studies involved essential oil inspection as potential anticancer and antiviral natural remedies. In line with the authors previous reports the investigation of an in-house library of extracted essential oils as a potential blocker of HSV-1 infection is reported herein. A subset of essential oils was experimentally tested in an in vitro model of HSV-1 infection and the determined IC(50)s and CC(50)s values were used in conjunction with the results obtained by gas-chromatography/mass spectrometry chemical analysis to derive machine learning based classification models trained with the partial least square discriminant analysis algorithm. The internally validated models were thus applied on untested essential oils to assess their effective predictive ability in selecting both active and low toxic samples. Five essential oils were selected among a list of 52 and readily assayed for IC(50) and CC(50) determination. Interestingly, four out of the five selected samples, compared with the potencies of the training set, returned to be highly active and endowed with low toxicity. In particular, sample CJM1 from Calaminta nepeta was the most potent tested essential oil with the highest selectivity index (IC(50) = 0.063 mg/mL, SI > 47.5). In conclusion, it was herein demonstrated how multidisciplinary applications involving machine learning could represent a valuable tool in predicting the bioactivity of complex mixtures and in the near future to enable the design of blended essential oil possibly endowed with higher potency and lower toxicity. MDPI 2020-05-25 /pmc/articles/PMC7288128/ /pubmed/32466318 http://dx.doi.org/10.3390/molecules25102452 Text en © 2020 by the authors. 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 (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Sabatino, Manuela
Fabiani, Marco
Božović, Mijat
Garzoli, Stefania
Antonini, Lorenzo
Marcocci, Maria Elena
Palamara, Anna Teresa
De Chiara, Giovanna
Ragno, Rino
Experimental Data Based Machine Learning Classification Models with Predictive Ability to Select in Vitro Active Antiviral and Non-Toxic Essential Oils
title Experimental Data Based Machine Learning Classification Models with Predictive Ability to Select in Vitro Active Antiviral and Non-Toxic Essential Oils
title_full Experimental Data Based Machine Learning Classification Models with Predictive Ability to Select in Vitro Active Antiviral and Non-Toxic Essential Oils
title_fullStr Experimental Data Based Machine Learning Classification Models with Predictive Ability to Select in Vitro Active Antiviral and Non-Toxic Essential Oils
title_full_unstemmed Experimental Data Based Machine Learning Classification Models with Predictive Ability to Select in Vitro Active Antiviral and Non-Toxic Essential Oils
title_short Experimental Data Based Machine Learning Classification Models with Predictive Ability to Select in Vitro Active Antiviral and Non-Toxic Essential Oils
title_sort experimental data based machine learning classification models with predictive ability to select in vitro active antiviral and non-toxic essential oils
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7288128/
https://www.ncbi.nlm.nih.gov/pubmed/32466318
http://dx.doi.org/10.3390/molecules25102452
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