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Use of machine learning to shorten observation-based screening and diagnosis of autism

The Autism Diagnostic Observation Schedule-Generic (ADOS) is one of the most widely used instruments for behavioral evaluation of autism spectrum disorders. It is composed of four modules, each tailored for a specific group of individuals based on their language and developmental level. On average,...

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Autores principales: Wall, D P, Kosmicki, J, DeLuca, T F, Harstad, E, Fusaro, V A
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Nature Publishing Group 2012
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3337074/
https://www.ncbi.nlm.nih.gov/pubmed/22832900
http://dx.doi.org/10.1038/tp.2012.10
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author Wall, D P
Kosmicki, J
DeLuca, T F
Harstad, E
Fusaro, V A
author_facet Wall, D P
Kosmicki, J
DeLuca, T F
Harstad, E
Fusaro, V A
author_sort Wall, D P
collection PubMed
description The Autism Diagnostic Observation Schedule-Generic (ADOS) is one of the most widely used instruments for behavioral evaluation of autism spectrum disorders. It is composed of four modules, each tailored for a specific group of individuals based on their language and developmental level. On average, a module takes between 30 and 60 min to deliver. We used a series of machine-learning algorithms to study the complete set of scores from Module 1 of the ADOS available at the Autism Genetic Resource Exchange (AGRE) for 612 individuals with a classification of autism and 15 non-spectrum individuals from both AGRE and the Boston Autism Consortium (AC). Our analysis indicated that 8 of the 29 items contained in Module 1 of the ADOS were sufficient to classify autism with 100% accuracy. We further validated the accuracy of this eight-item classifier against complete sets of scores from two independent sources, a collection of 110 individuals with autism from AC and a collection of 336 individuals with autism from the Simons Foundation. In both cases, our classifier performed with nearly 100% sensitivity, correctly classifying all but two of the individuals from these two resources with a diagnosis of autism, and with 94% specificity on a collection of observed and simulated non-spectrum controls. The classifier contained several elements found in the ADOS algorithm, demonstrating high test validity, and also resulted in a quantitative score that measures classification confidence and extremeness of the phenotype. With incidence rates rising, the ability to classify autism effectively and quickly requires careful design of assessment and diagnostic tools. Given the brevity, accuracy and quantitative nature of the classifier, results from this study may prove valuable in the development of mobile tools for preliminary evaluation and clinical prioritization—in particular those focused on assessment of short home videos of children—that speed the pace of initial evaluation and broaden the reach to a significantly larger percentage of the population at risk.
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spelling pubmed-33370742012-04-25 Use of machine learning to shorten observation-based screening and diagnosis of autism Wall, D P Kosmicki, J DeLuca, T F Harstad, E Fusaro, V A Transl Psychiatry Original Article The Autism Diagnostic Observation Schedule-Generic (ADOS) is one of the most widely used instruments for behavioral evaluation of autism spectrum disorders. It is composed of four modules, each tailored for a specific group of individuals based on their language and developmental level. On average, a module takes between 30 and 60 min to deliver. We used a series of machine-learning algorithms to study the complete set of scores from Module 1 of the ADOS available at the Autism Genetic Resource Exchange (AGRE) for 612 individuals with a classification of autism and 15 non-spectrum individuals from both AGRE and the Boston Autism Consortium (AC). Our analysis indicated that 8 of the 29 items contained in Module 1 of the ADOS were sufficient to classify autism with 100% accuracy. We further validated the accuracy of this eight-item classifier against complete sets of scores from two independent sources, a collection of 110 individuals with autism from AC and a collection of 336 individuals with autism from the Simons Foundation. In both cases, our classifier performed with nearly 100% sensitivity, correctly classifying all but two of the individuals from these two resources with a diagnosis of autism, and with 94% specificity on a collection of observed and simulated non-spectrum controls. The classifier contained several elements found in the ADOS algorithm, demonstrating high test validity, and also resulted in a quantitative score that measures classification confidence and extremeness of the phenotype. With incidence rates rising, the ability to classify autism effectively and quickly requires careful design of assessment and diagnostic tools. Given the brevity, accuracy and quantitative nature of the classifier, results from this study may prove valuable in the development of mobile tools for preliminary evaluation and clinical prioritization—in particular those focused on assessment of short home videos of children—that speed the pace of initial evaluation and broaden the reach to a significantly larger percentage of the population at risk. Nature Publishing Group 2012-04 2012-04-10 /pmc/articles/PMC3337074/ /pubmed/22832900 http://dx.doi.org/10.1038/tp.2012.10 Text en Copyright © 2012 Macmillan Publishers Limited http://creativecommons.org/licenses/by-nc-nd/3.0/ This work is licensed under the Creative Commons Attribution-NonCommercial-No Derivative Works 3.0 Unported License. To view a copy of this license, visit http://creativecommons.org/licenses/by-nc-nd/3.0/
spellingShingle Original Article
Wall, D P
Kosmicki, J
DeLuca, T F
Harstad, E
Fusaro, V A
Use of machine learning to shorten observation-based screening and diagnosis of autism
title Use of machine learning to shorten observation-based screening and diagnosis of autism
title_full Use of machine learning to shorten observation-based screening and diagnosis of autism
title_fullStr Use of machine learning to shorten observation-based screening and diagnosis of autism
title_full_unstemmed Use of machine learning to shorten observation-based screening and diagnosis of autism
title_short Use of machine learning to shorten observation-based screening and diagnosis of autism
title_sort use of machine learning to shorten observation-based screening and diagnosis of autism
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3337074/
https://www.ncbi.nlm.nih.gov/pubmed/22832900
http://dx.doi.org/10.1038/tp.2012.10
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