使用调查数据对并发自闭症和ADHD的个体诊断进行差异分类的挑战。

Aditi Jaiswal, Dennis P Wall, Peter Washington
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引用次数: 0

摘要

自闭症和注意力缺陷多动障碍(ADHD)是儿童时期最常见的两种神经发育疾病。提供一个特定的计算评估来区分这两者可能很困难,而且耗时。鉴于这两种疾病的共存率很高,我们需要一种可扩展的、可获得的方法来区分自闭症和ADHD的共存与个体诊断。第一步是确定一组核心特征,这些特征可以作为行为特征提取的基础。我们根据来自全国儿童健康调查的数据训练机器学习模型,以识别自动临床决策支持系统中的目标行为特征。在区分发育迟缓(自闭症或ADHD)与两者都不区分的二元任务上训练的模型,灵敏度为bbb92 %,特异性为>94%,而在自闭症与ADHD、两者都与无的四向分类任务上训练的模型,灵敏度为>65%,特异性为>66%。虽然二元模型的表现是值得尊敬的,但在自闭症和多动症的鉴别分类中相对较低的表现突出了在发育迟缓的临床决策支持工具中实现特异性的挑战。尽管如此,本研究证明了应用传统上不用于临床目的的行为问卷来支持儿科发育迟缓的数字筛查评估的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Challenges in the Differential Classification of Individual Diagnoses from Co-Occurring Autism and ADHD Using Survey Data.

Autism and Attention-Deficit Hyperactivity Disorder (ADHD) are two of the most commonly observed neurodevelopmental conditions in childhood. Providing a specific computational assessment to distinguish between the two can prove difficult and time intensive. Given the high prevalence of their co-occurrence, there is a need for scalable and accessible methods for distinguishing the co-occurrence of autism and ADHD from individual diagnoses. The first step is to identify a core set of features that can serve as the basis for behavioral feature extraction. We trained machine learning models on data from the National Survey of Children's Health to identify behaviors to target as features in automated clinical decision support systems. A model trained on the binary task of distinguishing either developmental delay (autism or ADHD) vs. neither achieved sensitivity >92% and specificity >94%, while a model trained on the 4-way classification task of autism vs. ADHD vs. both vs. none demonstrated >65% sensitivity and >66% specificity. While the performance of the binary model was respectable, the relatively low performance in the differential classification of autism and ADHD highlights the challenges that persist in achieving specificity within clinical decision support tools for developmental delays. Nevertheless, this study demonstrates the potential of applying behavioral questionnaires not traditionally used for clinical purposes towards supporting digital screening assessments for pediatric developmental delays.

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