CYAIFeb 21, 2021

AI-Augmented Behavior Analysis for Children with Developmental Disabilities: Building Towards Precision Treatment

arXiv:2102.10635v21 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of efficient behavioral analysis for clinicians treating autism and related disabilities, though it appears incremental as it builds on existing AI and digital technologies.

The paper tackles the burden on clinicians in analyzing behavioral data for children with developmental disabilities by introducing an AI-augmented platform that automates data collection and analysis, aiming to provide personalized treatment plans and improve intervention quality.

Autism spectrum disorder is a developmental disorder characterized by significant social, communication, and behavioral challenges. Individuals diagnosed with autism, intellectual, and developmental disabilities (AUIDD) typically require long-term care and targeted treatment and teaching. Effective treatment of AUIDD relies on efficient and careful behavioral observations done by trained applied behavioral analysts (ABAs). However, this process overburdens ABAs by requiring the clinicians to collect and analyze data, identify the problem behaviors, conduct pattern analysis to categorize and predict categorical outcomes, hypothesize responsiveness to treatments, and detect the effects of treatment plans. Successful integration of digital technologies into clinical decision-making pipelines and the advancements in automated decision-making using Artificial Intelligence (AI) algorithms highlights the importance of augmenting teaching and treatments using novel algorithms and high-fidelity sensors. In this article, we present an AI-Augmented Learning and Applied Behavior Analytics (AI-ABA) platform to provide personalized treatment and learning plans to AUIDD individuals. By defining systematic experiments along with automated data collection and analysis, AI-ABA can promote self-regulative behavior using reinforcement-based augmented or virtual reality and other mobile platforms. Thus, AI-ABA could assist clinicians to focus on making precise data-driven decisions and increase the quality of individualized interventions for individuals with AUIDD.

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