Institute of Automation, Chinese Academy of Sciences, Brainnetome Center and National Laboratory of Pattern Recognition, Beijing, 100190, China.
University of Chinese Academy of Sciences, Beijing, 100049, China.
Eur Child Adolesc Psychiatry. 2023 Nov;32(11):2223-2234. doi: 10.1007/s00787-022-02068-6. Epub 2022 Aug 22.
Attention-deficit/hyperactivity disorder (ADHD) is a prevalent neurodevelopmental disorder in children, usually categorized as three subtypes, predominant inattention (ADHD-I), predominant hyperactivity-impulsivity (ADHD-HI), and a combined subtype (ADHD-C). Yet, common and unique abnormalities of electroencephalogram (EEG) across different subtypes remain poorly understood. Here, we leveraged microstate characteristics and power features to investigate temporal and frequency abnormalities in ADHD and its subtypes using high-density EEG on 161 participants (54 ADHD-Is and 53 ADHD-Cs and 54 healthy controls). Four EEG microstates were identified. The coverage of salience network (state C) were decreased in ADHD compared to HC (p = 1.46e-3), while the duration and contribution of frontal-parietal network (state D) were increased (p = 1.57e-3; p = 1.26e-4). Frequency power analysis also indicated that higher delta power in the fronto-central area (p = 6.75e-4) and higher power of theta/beta ratio in the bilateral fronto-temporal area (p = 3.05e-3) were observed in ADHD. By contrast, remarkable subtype differences were found primarily on the visual network (state B), of which ADHD-C have higher occurrence and coverage than ADHD-I (p = 9.35e-5; p = 1.51e-8), suggesting that children with ADHD-C might exhibit impulsivity of opening their eyes in an eye-closed experiment, leading to hyper-activated visual network. Moreover, the top discriminative features selected from support vector machine model with recursive feature elimination (SVM-RFE) well replicated the above results, which achieved an accuracy of 72.7% and 73.8% separately in classifying ADHD and two subtypes. To conclude, this study highlights EEG microstate dynamics and frequency features may serve as sensitive measurements to detect the subtle differences in ADHD and its subtypes, providing a new window for better diagnosis of ADHD.
注意缺陷多动障碍(ADHD)是一种常见的儿童神经发育障碍,通常分为三种亚型,即主要注意力不集中(ADHD-I)、主要多动冲动(ADHD-HI)和混合型(ADHD-C)。然而,不同亚型的脑电图(EEG)的常见和独特异常仍知之甚少。在这里,我们利用微状态特征和功率特征,利用 161 名参与者(54 名 ADHD-I 和 53 名 ADHD-C 和 54 名健康对照组)的高密度 EEG 研究 ADHD 及其亚型的时间和频率异常。确定了四个 EEG 微状态。与 HC 相比,ADHD 中突显网络(状态 C)的覆盖范围减少(p=1.46e-3),而额顶网络(状态 D)的持续时间和贡献增加(p=1.57e-3;p=1.26e-4)。频域功率分析还表明,额中央区域的 delta 功率较高(p=6.75e-4),双侧额颞区域的 theta/beta 比值功率较高(p=3.05e-3)。相比之下,主要在视觉网络(状态 B)中发现了显著的亚型差异,其中 ADHD-C 的出现和覆盖范围高于 ADHD-I(p=9.35e-5;p=1.51e-8),表明 ADHD-C 儿童在闭眼实验中可能表现出睁眼冲动,导致视觉网络过度活跃。此外,支持向量机模型(SVM)与递归特征消除(RFE)相结合的特征选择方法(SVM-RFE)选择的最佳鉴别特征很好地复制了上述结果,在分类 ADHD 和两种亚型时,准确率分别达到 72.7%和 73.8%。总之,本研究强调了 EEG 微状态动力学和频域特征可作为检测 ADHD 及其亚型细微差异的敏感测量指标,为 ADHD 的更好诊断提供了新的窗口。