University of Canterbury, Christchurch, New Zealand.
Paediatric Feeding International, Sydney, Australia.
Behav Modif. 2022 Sep;46(5):1109-1136. doi: 10.1177/01454455211038208. Epub 2021 Aug 12.
Practitioners 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.
儿科喂养项目的从业者通常依赖于个案实验设计和直观观察来做出治疗决策(例如,是否改变或保留治疗方案)。然而,研究人员已经表明,这种做法仍然具有主观性,目前尚无共识来支持直观观察结果。为了解决这个问题,我们首次应用机器学习对儿科喂养治疗效果进行分析。一名患有自闭症谱系障碍的 5 岁男性参与了为期两周的家庭行为分析治疗计划。我们在修改后的反转设计中比较了机器学习和专家直观分析师对儿科喂养治疗效果的评估。直观分析师和机器学习模型对治疗的有效性的判断基本一致,整体一致性仍然很高。总的来说,结果表明机器学习可能为儿科喂养治疗评估中实施的个案实验设计分析提供额外的支持。