Su Wan-Chun, Mutersbaugh John, Huang Wei-Lun, Bhat Anjana, Gandjbakhche Amir
National Institutes of Health.
University of Delaware.
Res Sq. 2024 Mar 4:rs.3.rs-3959596. doi: 10.21203/rs.3.rs-3959596/v1.
Autism Spectrum Disorder (ASD) is among the most prevalent neurodevelopmental disorders, yet the current diagnostic procedures rely on behavioral analyses and interviews and lack objective screening methods. This study seeks to address this gap by integrating upper limb kinematics and deep learning methods to identify potential biomarkers that could be validated in younger age groups in the future to enhance the identification of ASD. Forty-one school-age children, with and without an ASD diagnosis (Mean age ± SE = 10.3 ± 0.4; 12 Females), participated in the study. A single Inertial Measurement Unit (IMU) was affixed to the child's wrist as they engaged in a continuous reaching and placing task. Deep learning techniques were employed to classify children with and without ASD. Our findings suggest delays in motor planning and control in school-age children compared to healthy adults. Compared to TD children, children with ASD exhibited poor motor planning and control as seen by greater number of movement units, more movement overshooting, and prolonged time to peak velocity/acceleration. Compensatory movement strategies such as greater velocity and acceleration were also seen in the ASD group. More importantly, using Multilayer Perceptron (MLP) model, we demonstrated an accuracy of ~ 78.1% in classifying children with and without ASD. These findings underscore the potential use of studying upper limb movement kinematics during goal-directed arm movements and deep learning methods as valuable tools for classifying and, consequently, aiding in the diagnosis and early identification of ASD upon further validation in younger children.
自闭症谱系障碍(ASD)是最常见的神经发育障碍之一,但目前的诊断程序依赖于行为分析和访谈,缺乏客观的筛查方法。本研究旨在通过整合上肢运动学和深度学习方法来填补这一空白,以识别潜在的生物标志物,这些生物标志物未来可在更年幼的年龄组中得到验证,以加强对ASD的识别。41名学龄儿童参与了这项研究,其中有和没有ASD诊断(平均年龄±标准误=10.3±0.4;12名女性)。当儿童进行连续的伸手和放置任务时,将一个惯性测量单元(IMU)固定在其手腕上。采用深度学习技术对患有和未患有ASD的儿童进行分类。我们的研究结果表明,与健康成年人相比,学龄儿童在运动规划和控制方面存在延迟。与发育正常(TD)儿童相比,患有ASD的儿童表现出较差的运动规划和控制,表现为运动单元数量更多、运动超调更多以及达到峰值速度/加速度的时间延长。在ASD组中还观察到了诸如更大速度和加速度等代偿性运动策略。更重要的是,使用多层感知器(MLP)模型,我们在对患有和未患有ASD的儿童进行分类时展示了约78.1%的准确率。这些发现强调了在目标导向的手臂运动过程中研究上肢运动学以及深度学习方法作为有价值工具的潜在用途,这些工具可用于分类,并因此在对年幼儿童进行进一步验证后有助于ASD的诊断和早期识别。