Alhussen Ahmed, Alutaibi Ahmed Ibrahim, Sharma Sunil Kumar, Khan Ahmad Raza, Ahmad Fuzail, Tejani Ghanshyam G
Department of Computer Engineering, College of Computer and Information Sciences, Majmaah University, Al-Majmaah, 11952, Saudi Arabia.
Department of Information Systems, College of Computer and Information Sciences, Majmaah University, Majmaah, 11952, Saudi Arabia.
Sci Rep. 2025 Feb 26;15(1):6967. doi: 10.1038/s41598-025-90649-1.
The ADHD detector analyzes behavioral, cognitive, or physiological data (e.g., EEG, eye-tracking, or surveys) to identify patterns associated with ADHD symptoms. This work offers a more sophisticated method of detecting ADHD by overcoming the main drawbacks of existing approaches in terms of data processing, detection accuracy, and computational time. The work is inspired by the fact that Deep Learning (DL) frameworks could transform the existing detection systems of ADHD. In the proposed framework, there is a new NeuroDCT-ICA module for the preprocessing of raw EEG data, which guarantees the elimination of noise and extraction of informative features. Moreover, the method introduces a novel RhinoFish Optimization (RFO) algorithm for selecting optimal features, which enhance the data processing capacity and the stability of the system. As a core of the approach, there is the ADHD-AttentionNet - the deep learning-based model aimed at improving the accuracy and confidence of ADHD identification. The model is validated with the standard metrics, and the performance of the model is outstanding as it has high accuracy of 98.52%, F-score of 98.26% and specificity of 98.16%. These outcomes show that the proposed model yields better accuracy in detecting ADHD related patterns.
注意力缺陷多动障碍(ADHD)检测器分析行为、认知或生理数据(如脑电图、眼动追踪或调查问卷),以识别与ADHD症状相关的模式。这项工作通过克服现有方法在数据处理、检测准确性和计算时间方面的主要缺点,提供了一种更复杂的ADHD检测方法。这项工作的灵感来自于深度学习(DL)框架可以改变现有的ADHD检测系统这一事实。在所提出的框架中,有一个新的NeuroDCT-ICA模块用于原始脑电图数据的预处理,这保证了噪声的消除和信息特征的提取。此外,该方法引入了一种新颖的犀角鱼优化(RFO)算法来选择最优特征,这提高了数据处理能力和系统的稳定性。作为该方法的核心,有ADHD-AttentionNet——一种基于深度学习的模型,旨在提高ADHD识别的准确性和可信度。该模型通过标准指标进行了验证,其性能出色,准确率高达98.52%,F值为98.26%,特异性为98.16%。这些结果表明,所提出的模型在检测ADHD相关模式方面具有更高的准确性。