Perochon Sam, Di Martino Matias, Aiello Rachel, Baker Jeffrey, Carpenter Kimberly, Chang Zhuoqing, Compton Scott, Davis Naomi, Eichner Brian, Espinosa Steven, Flowers Jacqueline, Franz Lauren, Gagliano Martha, Harris Adrianne, Howard Jill, Kollins Scott H, Perrin Eliana M, Raj Pradeep, Spanos Marina, Walter Barbara, Sapiro Guillermo, Dawson Geraldine
Department of Electrical and Computer Engineering, Duke University, Durham, NC, USA.
Department of Psychiatry and Behavioral Sciences, Duke University, Durham, NC, USA.
J Child Psychol Psychiatry. 2021 Sep;62(9):1120-1131. doi: 10.1111/jcpp.13381. Epub 2021 Feb 28.
This study is part of a larger research program focused on developing objective, scalable tools for digital behavioral phenotyping. We evaluated whether a digital app delivered on a smartphone or tablet using computer vision analysis (CVA) can elicit and accurately measure one of the most common early autism symptoms, namely failure to respond to a name call.
During a pediatric primary care well-child visit, 910 toddlers, 17-37 months old, were administered an app on an iPhone or iPad consisting of brief movies during which the child's name was called three times by an examiner standing behind them. Thirty-seven toddlers were subsequently diagnosed with autism spectrum disorder (ASD). Name calls and children's behavior were recorded by the camera embedded in the device, and children's head turns were coded by both CVA and a human.
CVA coding of response to name was found to be comparable to human coding. Based on CVA, children with ASD responded to their name significantly less frequently than children without ASD. CVA also revealed that children with ASD who did orient to their name exhibited a longer latency before turning their head. Combining information about both the frequency and the delay in response to name improved the ability to distinguish toddlers with and without ASD.
A digital app delivered on an iPhone or iPad in real-world settings using computer vision analysis to quantify behavior can reliably detect a key early autism symptom-failure to respond to name. Moreover, the higher resolution offered by CVA identified a delay in head turn in toddlers with ASD who did respond to their name. Digital phenotyping is a promising methodology for early assessment of ASD symptoms.
本研究是一个更大的研究项目的一部分,该项目专注于开发用于数字行为表型分析的客观、可扩展工具。我们评估了一款通过计算机视觉分析(CVA)在智能手机或平板电脑上运行的数字应用程序是否能够引发并准确测量最常见的早期自闭症症状之一,即对叫名无反应。
在一次儿科初级保健儿童健康检查中,910名17至37个月大的幼儿在iPhone或iPad上使用了一款应用程序,其中包含简短的影片,期间站在他们身后的检查者三次呼叫孩子的名字。随后,37名幼儿被诊断为自闭症谱系障碍(ASD)。设备内置的摄像头记录了叫名情况和儿童的行为,并且通过CVA和人工对儿童的转头情况进行编码。
发现对叫名反应的CVA编码与人工编码具有可比性。基于CVA,ASD儿童对自己名字的反应频率明显低于非ASD儿童。CVA还显示,那些确实对自己名字有反应的ASD儿童转头前的延迟时间更长。结合关于叫名反应频率和延迟的信息提高了区分有无ASD幼儿的能力。
在现实环境中,通过iPhone或iPad运行一款使用计算机视觉分析来量化行为的数字应用程序能够可靠地检测出早期自闭症的一个关键症状——对叫名无反应。此外,CVA提供的更高分辨率识别出了那些确实对自己名字有反应的ASD幼儿转头的延迟。数字表型分析是一种很有前景的ASD症状早期评估方法。