Vanderbilt Kennedy Center/Treatment and Research Institute for Autism Spectrum Disorders, Vanderbilt University Medical Center, Nashville, TN, USA.
Department of Pediatrics, Vanderbilt University Medical Center, Nashville, TN, USA.
J Autism Dev Disord. 2021 Nov;51(11):4003-4012. doi: 10.1007/s10803-020-04857-x. Epub 2021 Jan 8.
Barriers to identifying autism spectrum disorder (ASD) in young children in a timely manner have led to calls for novel screening and assessment strategies. Combining computational methods with clinical expertise presents an opportunity for identifying patterns within large clinical datasets that can inform new assessment paradigms. The present study describes an analytic approach used to identify key features predictive of ASD in young children, drawn from large amounts of data from comprehensive diagnostic evaluations. A team of expert clinicians used these predictive features to design a set of assessment activities allowing for observation of these core behaviors. The resulting brief assessment underlies several novel approaches to the identification of ASD that are the focus of ongoing research.
及时识别儿童自闭症谱系障碍(ASD)的障碍促使人们呼吁采用新的筛查和评估策略。将计算方法与临床专业知识相结合,为识别大型临床数据集内的模式提供了机会,这些模式可以为新的评估模式提供信息。本研究描述了一种分析方法,用于从全面诊断评估的大量数据中识别出可预测幼儿 ASD 的关键特征。一组专家临床医生使用这些预测特征设计了一组评估活动,以便观察这些核心行为。由此产生的简短评估是正在进行的研究的重点,提出了几种识别 ASD 的新方法。