Amar Lamiaa A, Otifi Ahmed M, Mohamed Shimaa A
Department of Networks and Distributed Systems, Informatic Research Institute, City of Scientific Research and Technological Applications, SRTA-CITY, Alexandria, 21934, Egypt.
Department of Data Science, Faculty of Computers and Data Science, Alexandria University, Alexandria, 21554, Egypt.
Phys Eng Sci Med. 2025 Aug 26. doi: 10.1007/s13246-025-01609-y.
The prevalence of Attention-Deficit/Hyperactivity Disorder among children is rising, emphasizing the need for early and accurate diagnostic methods to address associated academic and behavioral challenges. Electroencephalography-based analysis has emerged as a promising noninvasive approach for detecting Attention-Deficit/Hyperactivity Disorder; however, utilizing the full range of electroencephalography channels often results in high computational complexity and an increased risk of model overfitting. This study presents a comparative investigation between a proposed multi-headed deep learning framework and a traditional baseline single-model approach for classifying Attention-Deficit/Hyperactivity Disorder using electroencephalography signals. Electroencephalography data were collected from 79 participants (42 healthy adults and 37 diagnosed with Attention-Deficit/Hyperactivity Disorder) across four cognitive states: resting with eyes open, resting with eyes closed, performing cognitive tasks, and listening to omniarmonic sounds. To reduce complexity, signals from only five strategically selected electroencephalography channels were used. The multi-headed approach employed parallel deep learning branches-comprising combinations of Bidirectional Long Short-Term Memory, Long Short-Term Memory, and Gated Recurrent Unit architectures-to capture inter-channel relationships and extract richer temporal features. Comparative analysis revealed that the combination of Long Short-Term Memory and Bidirectional Long Short-Term Memory within the multi-headed framework achieved the highest classification accuracy of 89.87%, significantly outperforming all baseline configurations. These results demonstrate the effectiveness of integrating multiple deep learning architectures and highlight the potential of multi-headed models for enhancing electroencephalography-based Attention-Deficit/Hyperactivity Disorder diagnosis.
儿童注意力缺陷多动障碍(ADHD)的患病率正在上升,这凸显了采用早期准确诊断方法来应对相关学业和行为挑战的必要性。基于脑电图的分析已成为一种有前景的检测注意力缺陷多动障碍的非侵入性方法;然而,使用所有脑电图通道往往会导致高计算复杂度和模型过拟合风险增加。本研究对一种提出的多头深度学习框架和一种传统的基线单模型方法进行了比较研究,以使用脑电图信号对注意力缺陷多动障碍进行分类。从79名参与者(42名健康成年人和37名被诊断患有注意力缺陷多动障碍者)中收集了脑电图数据,涵盖四种认知状态:睁眼休息、闭眼休息、执行认知任务以及聆听全谐波声音。为了降低复杂度,仅使用了从五个经过策略性选择的脑电图通道获取的信号。多头方法采用了并行深度学习分支,包括双向长短期记忆、长短期记忆和门控循环单元架构的组合,以捕捉通道间关系并提取更丰富的时间特征。对比分析表明,多头框架内长短期记忆和双向长短期记忆的组合实现了最高分类准确率89.87%,显著优于所有基线配置。这些结果证明了整合多种深度学习架构的有效性,并突出了多头模型在增强基于脑电图的注意力缺陷多动障碍诊断方面的潜力。