Cargando…

A Predictive Multimodal Framework to Alert Caregivers of Problem Behaviors for Children with ASD (PreMAC)

Autism Spectrum Disorder (ASD) impacts 1 in 54 children in the US. Two-thirds of children with ASD display problem behavior. If a caregiver can predict that a child is likely to engage in problem behavior, they may be able to take action to minimize that risk. Although experts in Applied Behavior An...

Descripción completa

Detalles Bibliográficos
Autores principales: Zheng, Zhaobo K., Staubitz, John E., Weitlauf, Amy S., Staubitz, Johanna, Pollack, Marney, Shibley, Lauren, Hopton, Michelle, Martin, William, Swanson, Amy, Juárez, Pablo, Warren, Zachary E., Sarkar, Nilanjan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7826816/
https://www.ncbi.nlm.nih.gov/pubmed/33430371
http://dx.doi.org/10.3390/s21020370
_version_ 1783640610816655360
author Zheng, Zhaobo K.
Staubitz, John E.
Weitlauf, Amy S.
Staubitz, Johanna
Pollack, Marney
Shibley, Lauren
Hopton, Michelle
Martin, William
Swanson, Amy
Juárez, Pablo
Warren, Zachary E.
Sarkar, Nilanjan
author_facet Zheng, Zhaobo K.
Staubitz, John E.
Weitlauf, Amy S.
Staubitz, Johanna
Pollack, Marney
Shibley, Lauren
Hopton, Michelle
Martin, William
Swanson, Amy
Juárez, Pablo
Warren, Zachary E.
Sarkar, Nilanjan
author_sort Zheng, Zhaobo K.
collection PubMed
description Autism Spectrum Disorder (ASD) impacts 1 in 54 children in the US. Two-thirds of children with ASD display problem behavior. If a caregiver can predict that a child is likely to engage in problem behavior, they may be able to take action to minimize that risk. Although experts in Applied Behavior Analysis can offer caregivers recognition and remediation strategies, there are limitations to the extent to which human prediction of problem behavior is possible without the assistance of technology. In this paper, we propose a machine learning-based predictive framework, PreMAC, that uses multimodal signals from precursors of problem behaviors to alert caregivers of impending problem behavior for children with ASD. A multimodal data capture platform, M2P3, was designed to collect multimodal training data for PreMAC. The development of PreMAC integrated a rapid functional analysis, the interview-informed synthesized contingency analysis (IISCA), for collection of training data. A feasibility study with seven 4 to 15-year-old children with ASD was conducted to investigate the tolerability and feasibility of the M2P3 platform and the accuracy of PreMAC. Results indicate that the M2P3 platform was well tolerated by the children and PreMAC could predict precursors of problem behaviors with high prediction accuracies.
format Online
Article
Text
id pubmed-7826816
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-78268162021-01-25 A Predictive Multimodal Framework to Alert Caregivers of Problem Behaviors for Children with ASD (PreMAC) Zheng, Zhaobo K. Staubitz, John E. Weitlauf, Amy S. Staubitz, Johanna Pollack, Marney Shibley, Lauren Hopton, Michelle Martin, William Swanson, Amy Juárez, Pablo Warren, Zachary E. Sarkar, Nilanjan Sensors (Basel) Article Autism Spectrum Disorder (ASD) impacts 1 in 54 children in the US. Two-thirds of children with ASD display problem behavior. If a caregiver can predict that a child is likely to engage in problem behavior, they may be able to take action to minimize that risk. Although experts in Applied Behavior Analysis can offer caregivers recognition and remediation strategies, there are limitations to the extent to which human prediction of problem behavior is possible without the assistance of technology. In this paper, we propose a machine learning-based predictive framework, PreMAC, that uses multimodal signals from precursors of problem behaviors to alert caregivers of impending problem behavior for children with ASD. A multimodal data capture platform, M2P3, was designed to collect multimodal training data for PreMAC. The development of PreMAC integrated a rapid functional analysis, the interview-informed synthesized contingency analysis (IISCA), for collection of training data. A feasibility study with seven 4 to 15-year-old children with ASD was conducted to investigate the tolerability and feasibility of the M2P3 platform and the accuracy of PreMAC. Results indicate that the M2P3 platform was well tolerated by the children and PreMAC could predict precursors of problem behaviors with high prediction accuracies. MDPI 2021-01-07 /pmc/articles/PMC7826816/ /pubmed/33430371 http://dx.doi.org/10.3390/s21020370 Text en © 2021 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
Zheng, Zhaobo K.
Staubitz, John E.
Weitlauf, Amy S.
Staubitz, Johanna
Pollack, Marney
Shibley, Lauren
Hopton, Michelle
Martin, William
Swanson, Amy
Juárez, Pablo
Warren, Zachary E.
Sarkar, Nilanjan
A Predictive Multimodal Framework to Alert Caregivers of Problem Behaviors for Children with ASD (PreMAC)
title A Predictive Multimodal Framework to Alert Caregivers of Problem Behaviors for Children with ASD (PreMAC)
title_full A Predictive Multimodal Framework to Alert Caregivers of Problem Behaviors for Children with ASD (PreMAC)
title_fullStr A Predictive Multimodal Framework to Alert Caregivers of Problem Behaviors for Children with ASD (PreMAC)
title_full_unstemmed A Predictive Multimodal Framework to Alert Caregivers of Problem Behaviors for Children with ASD (PreMAC)
title_short A Predictive Multimodal Framework to Alert Caregivers of Problem Behaviors for Children with ASD (PreMAC)
title_sort predictive multimodal framework to alert caregivers of problem behaviors for children with asd (premac)
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7826816/
https://www.ncbi.nlm.nih.gov/pubmed/33430371
http://dx.doi.org/10.3390/s21020370
work_keys_str_mv AT zhengzhaobok apredictivemultimodalframeworktoalertcaregiversofproblembehaviorsforchildrenwithasdpremac
AT staubitzjohne apredictivemultimodalframeworktoalertcaregiversofproblembehaviorsforchildrenwithasdpremac
AT weitlaufamys apredictivemultimodalframeworktoalertcaregiversofproblembehaviorsforchildrenwithasdpremac
AT staubitzjohanna apredictivemultimodalframeworktoalertcaregiversofproblembehaviorsforchildrenwithasdpremac
AT pollackmarney apredictivemultimodalframeworktoalertcaregiversofproblembehaviorsforchildrenwithasdpremac
AT shibleylauren apredictivemultimodalframeworktoalertcaregiversofproblembehaviorsforchildrenwithasdpremac
AT hoptonmichelle apredictivemultimodalframeworktoalertcaregiversofproblembehaviorsforchildrenwithasdpremac
AT martinwilliam apredictivemultimodalframeworktoalertcaregiversofproblembehaviorsforchildrenwithasdpremac
AT swansonamy apredictivemultimodalframeworktoalertcaregiversofproblembehaviorsforchildrenwithasdpremac
AT juarezpablo apredictivemultimodalframeworktoalertcaregiversofproblembehaviorsforchildrenwithasdpremac
AT warrenzacharye apredictivemultimodalframeworktoalertcaregiversofproblembehaviorsforchildrenwithasdpremac
AT sarkarnilanjan apredictivemultimodalframeworktoalertcaregiversofproblembehaviorsforchildrenwithasdpremac
AT zhengzhaobok predictivemultimodalframeworktoalertcaregiversofproblembehaviorsforchildrenwithasdpremac
AT staubitzjohne predictivemultimodalframeworktoalertcaregiversofproblembehaviorsforchildrenwithasdpremac
AT weitlaufamys predictivemultimodalframeworktoalertcaregiversofproblembehaviorsforchildrenwithasdpremac
AT staubitzjohanna predictivemultimodalframeworktoalertcaregiversofproblembehaviorsforchildrenwithasdpremac
AT pollackmarney predictivemultimodalframeworktoalertcaregiversofproblembehaviorsforchildrenwithasdpremac
AT shibleylauren predictivemultimodalframeworktoalertcaregiversofproblembehaviorsforchildrenwithasdpremac
AT hoptonmichelle predictivemultimodalframeworktoalertcaregiversofproblembehaviorsforchildrenwithasdpremac
AT martinwilliam predictivemultimodalframeworktoalertcaregiversofproblembehaviorsforchildrenwithasdpremac
AT swansonamy predictivemultimodalframeworktoalertcaregiversofproblembehaviorsforchildrenwithasdpremac
AT juarezpablo predictivemultimodalframeworktoalertcaregiversofproblembehaviorsforchildrenwithasdpremac
AT warrenzacharye predictivemultimodalframeworktoalertcaregiversofproblembehaviorsforchildrenwithasdpremac
AT sarkarnilanjan predictivemultimodalframeworktoalertcaregiversofproblembehaviorsforchildrenwithasdpremac