Institute of Psychology and Behavior, Henan University, Kaifeng, 475004, China.
School of Psychology, Henan University, Kaifeng, 475004, China.
Brain Topogr. 2024 May;37(3):410-419. doi: 10.1007/s10548-023-01010-6. Epub 2023 Oct 13.
Autism spectrum disorder (ASD) is not a discrete disorder and that symptoms of ASD (i.e., so-called "autistic traits") are found to varying degrees in the general population. Typically developing individuals with sub-clinical yet high-level autistic traits have similar abnormities both in behavioral performances and cortical activation patterns to individuals diagnosed with ASD. Thus it's crucial to develop objective and efficient tools that could be used in the assessment of autistic traits. Here, we proposed a novel machine learning-based assessment of the autistic traits using EEG microstate features derived from a brief resting-state EEG recording. The results showed that: (1) through the Least Absolute Shrinkage and Selection Operator (LASSO) algorithm and correlation analysis, the mean duration of microstate class D, the occurrence rate of microstate class A, the time coverage of microstate class D and the transition rate from microstate class B to D were selected to be crucial microstate features which could be used in autistic traits prediction; (2) in the support vector regression (SVR) model, which was constructed to predict the participants' autistic trait scores using these four microstate features, the out-of-sample predicted autistic trait scores showed a significant and good match with the self-reported scores. These results suggest that the resting-state EEG microstate analysis technique can be used to predict autistic trait to some extent.
自闭症谱系障碍(ASD)并不是一种离散的障碍,自闭症的症状(即所谓的“自闭症特征”)在普通人群中都有不同程度的发现。具有亚临床但高水平自闭症特征的典型发育个体在行为表现和皮质激活模式上与被诊断为 ASD 的个体具有相似的异常。因此,开发客观有效的工具来评估自闭症特征至关重要。在这里,我们提出了一种使用从短暂静息态 EEG 记录中提取的 EEG 微观状态特征的基于机器学习的自闭症特征评估方法。结果表明:(1)通过最小绝对收缩和选择算子(LASSO)算法和相关分析,选择微观状态类 D 的平均持续时间、微观状态类 A 的出现率、微观状态类 D 的时间覆盖范围和微观状态类 B 到 D 的转换率作为关键微观状态特征,可用于自闭症特征预测;(2)在支持向量回归(SVR)模型中,使用这四个微观状态特征构建了一个预测参与者自闭症特征评分的模型,样本外预测的自闭症特征评分与自我报告的评分具有显著的良好匹配。这些结果表明,静息态 EEG 微观状态分析技术可以在一定程度上用于预测自闭症特征。