The authors are with the State Key Laboratory of Cognitive Neuroscience and Learning, Beijing Normal University, Beijing 100875, People's Republic of China.
J Neural Eng. 2019 Nov 19;16(6):066046. doi: 10.1088/1741-2552/ab3a0a.
Attention-deficit/hyperactivity disorder (ADHD) is one of the most prevalent neurobehavioral disorders. Studies have tried to find the neural correlations of ADHD with electroencephalography (EEG). Due to the heterogeneity in the ADHD population, a multivariate EEG profile is useful, and the detection of a personalized abnormality in EEG is urgently needed. Deep learning algorithms, especially convolutional neural network (CNN), have made tremendous progress recently, and are expected to solve the problem.
We adopted CNN techniques and a visualization technique named gradient-weighted class activation mapping (Grad-CAM) for detecting a personalized spatial-frequency abnormality in EEGs of ADHD children. A total of 50 children with ADHD (nine girls, mean age: 10.44 ± 0.75) and 57 controls who were matched for age and handedness were recruited. The power spectrum density of EEGs was used as input. We presented an intuitive form of representing multichannel EEG data that is trainable to CNN models. Personalized abnormalities were derived from ADHD children and were compared to the distributions of relative powers in different frequency bands.
We demonstrated that applying CNN techniques to ADHD identification is feasible, with an accuracy of 90.29% ± 0.58%. There were major differences in personalized spatial-frequency abnormalities between individuals affected by ADHD. The abnormalities were consistent with the power distributions in both group- and individual- level.
This study provided a novel method for detecting personalized spatial-frequency abnormalities of children with ADHD at a precise spatial-frequency resolution. We proposed a new form of representation of multichannel EEG data that is compatible with mainstream CNN architectures. We ensured that CNN models were interpretable and reliable relating to clinical practice by visualizing the decision-making process. We expect that detection of personalized abnormalities using deep learning techniques can facilitate the identification of potential neural pathways and the planning of targeted treatments for children with ADHD.
注意缺陷多动障碍(ADHD)是最常见的神经行为障碍之一。已有研究尝试通过脑电图(EEG)寻找 ADHD 的神经相关性。由于 ADHD 人群存在异质性,因此采用多变量 EEG 谱更为有效,且迫切需要检测 EEG 的个性化异常。深度学习算法,特别是卷积神经网络(CNN),最近取得了巨大进展,有望解决该问题。
我们采用 CNN 技术和一种名为梯度加权类激活映射(Grad-CAM)的可视化技术,以检测 ADHD 儿童 EEG 中的个性化空间频率异常。共招募了 50 名 ADHD 儿童(9 名女孩,平均年龄:10.44 ± 0.75)和 57 名年龄和利手相匹配的对照儿童。EEG 的功率谱密度作为输入。我们提出了一种直观的表示多通道 EEG 数据的形式,该形式可用于 CNN 模型训练。从 ADHD 儿童中得出个性化异常,并与不同频带的相对功率分布进行比较。
我们证明了将 CNN 技术应用于 ADHD 识别是可行的,准确率为 90.29% ± 0.58%。受 ADHD 影响的个体之间存在明显的个性化空间频率异常差异。这些异常与组水平和个体水平的功率分布一致。
本研究提供了一种新的方法,可在精确的空间频率分辨率下检测 ADHD 儿童的个性化空间频率异常。我们提出了一种新的多通道 EEG 数据表示形式,与主流 CNN 架构兼容。通过可视化决策过程,我们确保 CNN 模型具有可解释性和与临床实践的可靠性。我们期望使用深度学习技术检测个性化异常能够促进对 ADHD 儿童潜在神经通路的识别,并为他们制定针对性的治疗方案。