Vellore Institute of Technology, Chennai, TN, India.
Centre for Cyber Physical Systems, Vellore Institute of Technology, Chennai, TN, India.
Clin EEG Neurosci. 2023 Sep;54(5):461-471. doi: 10.1177/15500594211054990. Epub 2021 Nov 18.
Autism spectrum disorder (ASD) is a neurodevelopmental disorder characterized by impairment in sensory modulation. These sensory modulation deficits would ultimately lead them to difficulties in adaptive behavior and intellectual functioning. The purpose of this study was to observe changes in the nervous system with responses to auditory/visual and only audio stimuli in children with autism and typically developing (TD) through electroencephalography (EEG). In this study, 20 children with ASD and 20 children with TD were considered to investigate the difference in the neural dynamics. The neural dynamics could be understood by non-linear analysis of the EEG signal. In this research to reveal the underlying nonlinear EEG dynamics, recurrence quantification analysis (RQA) is applied. RQA measures were analyzed using various parameter changes in RQA computations. In this research, the cosine distance metric was considered due to its capability of information retrieval and the other distance metrics parameters are compared for identifying the best biomarker. Each computational combination of the RQA measure and the responding channel was analyzed and discussed. To classify ASD and TD, the resulting features from RQA were fed to the designed BiLSTM (bi-long short-term memory) network. The classification accuracy was tested channel-wise for each combination. T3 and T5 channels with neighborhood selection as FAN (fixed amount of nearest neighbors) and distance metric as cosine is considered as the best-suited combination to discriminate between ASD and TD with the classification accuracy of 91.86%, respectively.
自闭症谱系障碍 (ASD) 是一种神经发育障碍,其特征是感觉调节受损。这些感觉调节缺陷最终会导致他们在适应行为和智力功能方面出现困难。本研究旨在通过脑电图 (EEG) 观察自闭症和典型发育 (TD) 儿童对听觉/视觉和仅听觉刺激的神经系统反应变化。在这项研究中,考虑了 20 名自闭症儿童和 20 名典型发育儿童,以研究神经动力学的差异。可以通过 EEG 信号的非线性分析来理解神经动力学。在这项研究中,为了揭示潜在的非线性 EEG 动力学,应用了递归定量分析 (RQA)。使用 RQA 计算中的各种参数变化分析 RQA 测量值。在这项研究中,由于余弦距离度量具有信息检索能力,因此考虑了余弦距离度量,并且比较了其他距离度量参数以识别最佳生物标志物。分析和讨论了 RQA 测量值和响应通道的每个计算组合。为了对 ASD 和 TD 进行分类,将 RQA 的特征输入到设计的 BiLSTM(双长短期记忆)网络中。对每个组合进行通道分类精度测试。考虑到邻域选择为 FAN(固定数量的最近邻)和距离度量为余弦的 T3 和 T5 通道,是区分 ASD 和 TD 的最佳组合,分类准确率分别为 91.86%。