自闭症谱系障碍挑战行为的聚类分析

Elizabeth Stevens, Abigail Atchison, Laura Stevens, Esther Hong, D. Granpeesheh, Dennis R. Dixon, Erik J. Linstead
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引用次数: 24

摘要

我们对2116名自闭症谱系障碍儿童的样本进行了聚类分析,以确定在家庭和中心临床环境中观察到的具有挑战性的行为模式。这是迄今为止这类研究中规模最大的,也是第一个使用机器学习的研究,我们的研究结果表明,虽然多种具有挑战性的行为很常见,但在大多数情况下,会出现一种主导行为。此外,当我们分别在男性和女性样本上训练聚类模型时,也观察到这种趋势。这项工作为未来的研究提供了基础,以了解挑战性行为特征与学习结果的关系,最终目标是提供最有效、最短时间和成本的个性化治疗干预措施。
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A Cluster Analysis of Challenging Behaviors in Autism Spectrum Disorder
We apply cluster analysis to a sample of 2,116 children with Autism Spectrum Disorder in order to identify patterns of challenging behaviors observed in home and centerbased clinical settings. The largest study of this type to date, and the first to employ machine learning, our results indicate that while the presence of multiple challenging behaviors is common, in most cases a dominant behavior emerges. Furthermore, the trend is also observed when we train our cluster models on the male and female samples separately. This work provides a basis for future studies to understand the relationship of challenging behavior profiles to learning outcomes, with the ultimate goal of providing personalized therapeutic interventions with maximum efficacy and minimum time and cost.
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