Aikat Vikram, Carpenter Kimberly L H, Babu Pradeep Raj Krishnappa, Di Martino J Matias, Espinosa Steven, Compton Scott, Davis Naomi, Franz Lauren, Spanos Marina, Sapiro Guillermo, Dawson Geraldine
Department of Computer Science, Duke University, Durham, North Carolina, USA.
Department of Psychiatry and Behavioral Sciences, Duke University, Durham, North Carolina, USA.
Autism Res. 2025 Jun;18(6):1217-1233. doi: 10.1002/aur.70032. Epub 2025 Apr 2.
There is a critical need for scalable and objective tools for autism screening and outcome monitoring, which can be used alongside traditional caregiver and clinical measures. To address this need, we developed SenseToKnow, a tablet- or smartphone-based digital phenotyping application (app), which uses computer vision and touch data to measure several autism-related behavioral features, such as social attention, facial and head movements, and visual-motor skills. Our previous work demonstrated that the SenseToKnow app can accurately detect and quantify behavioral signs of autism in 18-40-month-old toddlers. In the present study, we administered the SenseToKnow app on an iPad to 149 preschool- and school-age children (45 neurotypical and 104 autistic) between 3 and 8 years of age. Results revealed significant group differences between autistic and neurotypical children in terms of several behavioral features, which remained after controlling for sex and age. Repeat administration with a subgroup demonstrated stability in the individual digital phenotypes. Examining correlations between the Vineland Adaptive Behavior Scales and individual digital phenotypes, we found that autistic children with higher levels of communication, daily living, socialization, motor, and adaptive skills exhibited higher levels of social attention and coordinated gaze with speech, less frequent head movements, higher complexity of facial movements, higher overall attention, lower blink rates, and higher visual motor skills, demonstrating convergent validity between app features and clinical measures. App features were also significantly correlated with ratings on the Social Responsiveness Scale. These results suggest that the SenseToKnow app can be used as an accessible, scalable, and objective digital tool to measure autism-related behaviors in preschool- and school-age children.
迫切需要可扩展且客观的自闭症筛查和结果监测工具,这些工具可与传统的照料者和临床测量方法一起使用。为满足这一需求,我们开发了SenseToKnow,这是一款基于平板电脑或智能手机的数字表型应用程序(app),它利用计算机视觉和触摸数据来测量几种与自闭症相关的行为特征,如社交注意力、面部和头部动作以及视觉运动技能。我们之前的研究表明,SenseToKnow应用程序能够准确检测和量化18至40个月大幼儿的自闭症行为迹象。在本研究中,我们在iPad上对149名3至8岁的学龄前和学龄儿童(45名神经典型儿童和104名自闭症儿童)使用了SenseToKnow应用程序。结果显示,在几种行为特征方面,自闭症儿童和神经典型儿童之间存在显著的组间差异,在控制性别和年龄后差异依然存在。对一个亚组进行重复测量显示个体数字表型具有稳定性。通过检查文兰适应性行为量表与个体数字表型之间的相关性,我们发现,在沟通、日常生活、社交、运动和适应技能水平较高的自闭症儿童表现出更高水平的社交注意力和与言语协调的注视、较少的头部动作、更复杂的面部动作、更高的整体注意力、更低的眨眼率以及更高的视觉运动技能,这表明应用程序特征与临床测量之间具有聚合效度。应用程序特征也与社交反应量表的评分显著相关。这些结果表明,SenseToKnow应用程序可用作一种可获取、可扩展且客观的数字工具,以测量学龄前和学龄儿童与自闭症相关的行为。