Doctor Khoshrav P, McKeever Chaundy, Wu Di, Phadnis Aditya, Plawecki Martin H, Nurnberger John I, José Jorge V
Manning College of Information and Computer Sciences, University of Massachusetts, Amherst, MA, 01003, USA.
Physics Department, College of Arts and Sciences, Indiana University, Bloomington, IN, 47405-7105, USA.
Sci Rep. 2025 Jul 8;15(1):20269. doi: 10.1038/s41598-025-04294-9.
Early diagnostic assessments of neurodivergent disorders (NDD), remains a major clinical challenge. We address this problem by pursuing the hypothesis that there is important cognitive information about NDD conditions contained in the way individuals move, when viewed at millisecond time scales. We approach the NDD assessment problem in two complementary ways. First, we applied supervised deep learning (DL) techniques to identify participants with autism spectrum disorder (ASD), attention-deficit/hyperactivity disorder (ADHD), comorbid ASD + ADHD, and neurotypical (NT) development. We measured linear and angular kinematic variables, using high-definition kinematic Bluetooth sensors, while participants performed the reaching protocol to targets appearing on a touch screen monitor. The DL technique was carried out only on the raw kinematic data. The area under the receiver operator characteristics curve suggests that we can predict, with high accuracy, NDD participant's conditions. Second, we filtered the high frequency electronic sensor noise in the recorded kinematic data leaving the participants' physiological characteristic random fluctuations. We quantified these fluctuations by their biometric Fano Factor and Shannon Entropy from a histogram distribution built from the magnitude difference between consecutive extrema unique to each participant, suggesting a relationship to the severity of their condition. The DL may be used as complementary tools for early evaluation of new participants by providers and the new biometrics allow for quantitative subtyping of NDDs according to severity.
对神经发育障碍(NDD)的早期诊断评估仍然是一项重大的临床挑战。我们通过探究以下假设来解决这个问题:当以毫秒时间尺度观察时,个体的运动方式中包含有关NDD状况的重要认知信息。我们以两种互补的方式来解决NDD评估问题。首先,我们应用监督深度学习(DL)技术来识别患有自闭症谱系障碍(ASD)、注意力缺陷多动障碍(ADHD)、共病ASD + ADHD以及神经典型(NT)发育的参与者。在参与者执行针对出现在触摸屏显示器上的目标的伸手协议时,我们使用高清运动蓝牙传感器测量线性和角运动学变量。DL技术仅对原始运动学数据进行。接收器操作特征曲线下的面积表明,我们可以高精度地预测NDD参与者的状况。其次,我们对记录的运动学数据中的高频电子传感器噪声进行滤波,留下参与者的生理特征随机波动。我们通过生物统计法诺因子和香农熵对这些波动进行量化,这些波动来自根据每个参与者特有的连续极值之间的幅度差异构建的直方图分布,这表明与他们病情的严重程度有关。DL可以作为提供者早期评估新参与者的补充工具,新的生物特征识别方法允许根据严重程度对NDD进行定量亚型分类。