Ganai Umer Jon, Ratne Aditya, Bhushan Braj, Venkatesh K S
School of Liberal Studies and Media, UPES, Kandoli, Uttarakhand, India.
Department of Electrical Engineering, Indian Institute of Technology Kanpur, Kalyanpur, India.
Sci Rep. 2025 Jan 6;15(1):873. doi: 10.1038/s41598-025-85348-w.
Autism Spectrum Disorder (ASD) is a neurodevelopmental disorder diagnosed by clinicians and experts through questionnaires, observations, and interviews. Current diagnostic practices focus on social and communication impairments, which often emerge later in life. This delay in detection results in missed opportunities for early intervention. Gait, a motor behavior, has been previously shown to be aberrant in children with ASD and may be a biomarker for early detection and diagnosis of ASD. The current study assessed gait in children with ASD using a single RGB camera-based pose estimation method by MediaPipe (MP). Data from 32 children with ASD and 29 typically developing (TD) children were collected. The ASD group exhibited significantly reduced step length and right elbow° and increased right shoulder° relative to TD children. Four machine learning (ML) algorithms were employed to classify the ASD and TD children based on the statistically significant gait parameters. The binomial logistic regression (Logit) performed the best, with an accuracy of 0.82, in classifying the ASD and TD children. The present study demonstrates the use of gait analysis and ML techniques for the early detection of ASD.
自闭症谱系障碍(ASD)是一种神经发育障碍,由临床医生和专家通过问卷调查、观察和访谈进行诊断。目前的诊断方法侧重于社交和沟通障碍,这些障碍通常在儿童成长后期才会出现。这种检测延迟导致错过早期干预的机会。步态作为一种运动行为,此前已被证明在患有ASD的儿童中存在异常,可能是早期检测和诊断ASD的生物标志物。本研究使用基于单个RGB摄像头的MediaPipe(MP)姿态估计方法评估了ASD儿童的步态。收集了32名ASD儿童和29名发育正常(TD)儿童的数据。与TD儿童相比,ASD组的步长和右肘角度显著减小,右肩角度增大。采用四种机器学习(ML)算法,根据具有统计学意义的步态参数对ASD儿童和TD儿童进行分类。二项逻辑回归(Logit)在对ASD儿童和TD儿童进行分类时表现最佳,准确率为0.82。本研究证明了步态分析和ML技术在ASD早期检测中的应用。