A machine learning approach for understanding the metabolomics response of children with autism spectrum disorder to medical cannabis treatment

Abstract Autism spectrum disorder (ASD) is a neurodevelopmental condition impacting behavior, communication, social interaction and learning abilities. Medical cannabis (MC) treatment can reduce clinical symptoms in individuals with ASD. Cannabis-responsive biomarkers are metabolites found in saliva...

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Main Authors: Jean-Christophe Quillet, Michael Siani-Rose, Robert McKee, Bonni Goldstein, Myiesha Taylor, Itzhak Kurek
Format: Article
Language:English
Published: Nature Portfolio 2023-08-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-023-40073-0
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author Jean-Christophe Quillet
Michael Siani-Rose
Robert McKee
Bonni Goldstein
Myiesha Taylor
Itzhak Kurek
author_facet Jean-Christophe Quillet
Michael Siani-Rose
Robert McKee
Bonni Goldstein
Myiesha Taylor
Itzhak Kurek
author_sort Jean-Christophe Quillet
collection DOAJ
description Abstract Autism spectrum disorder (ASD) is a neurodevelopmental condition impacting behavior, communication, social interaction and learning abilities. Medical cannabis (MC) treatment can reduce clinical symptoms in individuals with ASD. Cannabis-responsive biomarkers are metabolites found in saliva that change in response to MC treatment. Previously we showed levels of these biomarkers in children with ASD successfully treated with MC shift towards the physiological levels detected in typically developing (TD) children, and potentially can quantify the impact. Here, we tested for the first time the capabilities of machine learning techniques applied to our dynamic, high-resolution and rich feature dataset of cannabis-responsive biomarkers from a limited number of children with ASD before and after MC treatment and a TD group to identify: (1) biomarkers distinguishing ASD and TD groups; (2) non-cannabinoid plant molecules with synergistic effects; and (3) biomarkers associated with specific cannabinoids. We found: (1) lysophosphatidylethanolamine can distinguish between ASD and TD groups; (2) novel phytochemicals contribute to the therapeutic effects of MC treatment by inhibition of acetylcholinesterase; and (3) THC- and CBD-associated cannabis-responsive biomarkers are two distinct groups, while CBG is associated with some biomarkers from both groups.
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spelling doaj.art-26f26e337e65469099a1eb0fde74671e2023-11-26T13:20:30ZengNature PortfolioScientific Reports2045-23222023-08-0113111310.1038/s41598-023-40073-0A machine learning approach for understanding the metabolomics response of children with autism spectrum disorder to medical cannabis treatmentJean-Christophe Quillet0Michael Siani-Rose1Robert McKee2Bonni Goldstein3Myiesha Taylor4Itzhak Kurek5Cannformatics, Inc.Cannformatics, Inc.Cannformatics, Inc.Cannformatics, Inc.Cannformatics, Inc.Cannformatics, Inc.Abstract Autism spectrum disorder (ASD) is a neurodevelopmental condition impacting behavior, communication, social interaction and learning abilities. Medical cannabis (MC) treatment can reduce clinical symptoms in individuals with ASD. Cannabis-responsive biomarkers are metabolites found in saliva that change in response to MC treatment. Previously we showed levels of these biomarkers in children with ASD successfully treated with MC shift towards the physiological levels detected in typically developing (TD) children, and potentially can quantify the impact. Here, we tested for the first time the capabilities of machine learning techniques applied to our dynamic, high-resolution and rich feature dataset of cannabis-responsive biomarkers from a limited number of children with ASD before and after MC treatment and a TD group to identify: (1) biomarkers distinguishing ASD and TD groups; (2) non-cannabinoid plant molecules with synergistic effects; and (3) biomarkers associated with specific cannabinoids. We found: (1) lysophosphatidylethanolamine can distinguish between ASD and TD groups; (2) novel phytochemicals contribute to the therapeutic effects of MC treatment by inhibition of acetylcholinesterase; and (3) THC- and CBD-associated cannabis-responsive biomarkers are two distinct groups, while CBG is associated with some biomarkers from both groups.https://doi.org/10.1038/s41598-023-40073-0
spellingShingle Jean-Christophe Quillet
Michael Siani-Rose
Robert McKee
Bonni Goldstein
Myiesha Taylor
Itzhak Kurek
A machine learning approach for understanding the metabolomics response of children with autism spectrum disorder to medical cannabis treatment
Scientific Reports
title A machine learning approach for understanding the metabolomics response of children with autism spectrum disorder to medical cannabis treatment
title_full A machine learning approach for understanding the metabolomics response of children with autism spectrum disorder to medical cannabis treatment
title_fullStr A machine learning approach for understanding the metabolomics response of children with autism spectrum disorder to medical cannabis treatment
title_full_unstemmed A machine learning approach for understanding the metabolomics response of children with autism spectrum disorder to medical cannabis treatment
title_short A machine learning approach for understanding the metabolomics response of children with autism spectrum disorder to medical cannabis treatment
title_sort machine learning approach for understanding the metabolomics response of children with autism spectrum disorder to medical cannabis treatment
url https://doi.org/10.1038/s41598-023-40073-0
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