Ghasemi Elham, Ebrahimi Mansour, Ebrahimie Esmaeil
Institute of Biotechnology, Shiraz University, Shiraz, Iran.
School of Animal and Veterinary Sciences, The University of Adelaide, Adelaide, SA 5371 Australia.
Cogn Neurodyn. 2022 Dec;16(6):1335-1349. doi: 10.1007/s11571-021-09746-2. Epub 2022 Feb 15.
Accurate diagnosis of Attention-Deficit/Hyperactivity Disorder (ADHD) is a significant challenge. Misdiagnosis has significant negative medical side effects. Due to the complex nature of this disorder, there is no computational expert system for diagnosis. Recently, automatic diagnosis of ADHD by machine learning analysis of brain signals has received an increased attention. This paper aimed to achieve an accurate model to discriminate between ADHD patients and healthy controls by pattern discovery. Event-Related Potentials (ERP) data were collected from ADHD patients and healthy controls. After pre-processing, ERP signals were decomposed and features were calculated for different frequency bands. The classification was carried out based on each feature using seven machine learning algorithms. Important features were then selected and combined. To find specific patterns for each model, the classification was repeated using the proposed patterns. Results indicated that the combination of complementary features can significantly improve the performance of the predictive models. The newly developed features, defined based on band power, were able to provide the best classification using the Generalized Linear Model, Logistic Regression, and Deep Learning with the average accuracy and Receiver operating characteristic curve > %99.85 and > 0.999, respectively. High and low frequencies (Beta, Delta) performed better than the mid, frequencies in the discrimination of ADHD from control. Altogether, this study developed a machine learning expert system that minimises misdiagnosis of ADHD and is beneficial for the evaluation of treatment efficacy.
注意缺陷多动障碍(ADHD)的准确诊断是一项重大挑战。误诊会产生严重的负面医疗副作用。由于这种疾病的复杂性,目前尚无用于诊断的计算专家系统。最近,通过对脑信号进行机器学习分析来自动诊断ADHD受到了越来越多的关注。本文旨在通过模式发现实现一个准确的模型,以区分ADHD患者和健康对照。从ADHD患者和健康对照中收集了事件相关电位(ERP)数据。经过预处理后,对ERP信号进行分解,并计算不同频段的特征。使用七种机器学习算法基于每个特征进行分类。然后选择并组合重要特征。为了找到每个模型的特定模式,使用所提出的模式重复进行分类。结果表明,互补特征的组合可以显著提高预测模型的性能。基于频段功率定义的新开发特征,使用广义线性模型、逻辑回归和深度学习能够提供最佳分类,平均准确率和受试者工作特征曲线分别>99.85%和>0.999。在区分ADHD与对照时,高频和低频(β波、δ波)的表现优于中频。总之,本研究开发了一个机器学习专家系统,该系统可最大限度地减少ADHD的误诊,有助于评估治疗效果。