A Clinical Validity-Preserving Machine Learning Approach for Behavioral Assessment of Autism Spectrum Disorder

A. A. Lawan, Nadire Cavus
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引用次数: 1

Abstract

Autism spectrum disorder (ASD) is a neuropsychiatric disorder associated with critical challenges related to social, communication, and behavioral issues. Recent studies have proposed machine learning (ML) techniques for rapid and accurate assessment of ASD. However, the mismatch between the ML techniques and the clinical basis of ASD assessment reduces the effectiveness of ML-based assessment tools. The present study proposed an approach that utilized the potential of ML modeling and preserved the clinical relevance of the assessment instrument used. Experimental results of the empirical scoring algorithm and multiple ML models employed revealed the possibility of achieving a clinically valid ML-based ASD assessment tool. This study provides a roadmap for real-life implementation of ML-based ASD screening and diagnostic tools that comprise few behavioral features and maintain clinical relevance.
一种保留临床有效性的机器学习方法用于自闭症谱系障碍的行为评估
自闭症谱系障碍(ASD)是一种与社会、沟通和行为问题相关的关键挑战相关的神经精神障碍。最近的研究提出了用于快速准确评估ASD的机器学习(ML)技术。然而,ML技术与ASD评估的临床基础之间的不匹配降低了基于ML的评估工具的有效性。本研究提出了一种利用ML建模潜力并保留所用评估工具临床相关性的方法。经验评分算法和所采用的多个ML模型的实验结果揭示了实现临床有效的基于ML的ASD评估工具的可能性。这项研究为基于ML的ASD筛查和诊断工具的实际实施提供了路线图,这些工具几乎没有行为特征,并保持临床相关性。
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