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dc.contributor.authorTaylor, Tessa
dc.contributor.authorLanovaz, Marc
dc.date.accessioned2021-08-30T13:11:14Z
dc.date.availableNO_RESTRICTIONfr
dc.date.available2021-08-30T13:11:14Z
dc.date.issued2021-08-12
dc.identifier.urihttp://hdl.handle.net/1866/25504
dc.publisherSAGEfr
dc.subjectArtificial intelligencefr
dc.subjectInterrater agreementfr
dc.subjectMachine learningfr
dc.subjectRedistributionfr
dc.subjectVisual inspectionfr
dc.titleMachine learning to support visual inspection of data : a clinical applicationfr
dc.typeArticlefr
dc.contributor.affiliationUniversité de Montréal. Faculté des arts et des sciences. École de psychoéducationfr
dc.identifier.doi10.1177/01454455211038208
dcterms.abstractPractitioners in pediatric feeding programs often rely on single-case experimental designs and visual inspection to make treatment decisions (e.g., whether to change or keep a treatment in place). However, researchers have shown that this practice remains subjective, and there is no consensus yet on the best approach to support visual inspection results. To address this issue, we present the first application of a pediatric feeding treatment evaluation using machine learning to analyze treatment effects. A 5-year-old male with autism spectrum disorder participated in a 2-week home-based, behavior-analytic treatment program. We compared interrater agreement between machine learning and expert visual analysts on the effects of a pediatric feeding treatment within a modified reversal design. Both the visual analyst and the machine learning model generally agreed about the effectiveness of the treatment while overall agreement remained high. Overall, the results suggest that machine learning may provide additional support for the analysis of single-case experimental designs implemented in pediatric feeding treatment evaluations.fr
dcterms.isPartOfurn:ISSN:0145-4455fr
dcterms.isPartOfurn:ISSN:1552-4167fr
dcterms.languageengfr
UdeM.ReferenceFournieParDeposantTaylor, T., & Lanovaz, M. J. (2021). Machine learning to support visual inspection of data: A clinical application. Behavior Modification. https://doi.org/10.1177/01454455211038208fr
UdeM.VersionRioxxVersion acceptée / Accepted Manuscriptfr
oaire.citationTitleBehavior modificationfr


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