Department of Computer Science and Engineering, School of Engineering, Shiraz University, Shiraz, Iran.
J Neural Eng. 2010 Dec;7(6):066006. doi: 10.1088/1741-2560/7/6/066006. Epub 2010 Nov 3.
There is extensive overlap of clinical symptoms observed among children with bipolar mood disorder (BMD) and those with attention deficit hyperactivity disorder (ADHD). Thus, diagnosis according to clinical symptoms cannot be very accurate. It is therefore desirable to develop quantitative criteria for automatic discrimination between these disorders. This study is aimed at designing an efficient decision maker to accurately classify ADHD and BMD patients by analyzing their electroencephalogram (EEG) signals. In this study, 22 channels of EEGs have been recorded from 21 subjects with ADHD and 22 individuals with BMD. Several informative features, such as fractal dimension, band power and autoregressive coefficients, were extracted from the recorded signals. Considering the multimodal overlapping distribution of the obtained features, linear discriminant analysis (LDA) was used to reduce the input dimension in a more separable space to make it more appropriate for the proposed classifier. A piecewise linear classifier based on the extended classifier system for function approximation (XCSF) was modified by developing an adaptive mutation rate, which was proportional to the genotypic content of best individuals and their fitness in each generation. The proposed operator controlled the trade-off between exploration and exploitation while maintaining the diversity in the classifier's population to avoid premature convergence. To assess the effectiveness of the proposed scheme, the extracted features were applied to support vector machine, LDA, nearest neighbor and XCSF classifiers. To evaluate the method, a noisy environment was simulated with different noise amplitudes. It is shown that the results of the proposed technique are more robust as compared to conventional classifiers. Statistical tests demonstrate that the proposed classifier is a promising method for discriminating between ADHD and BMD patients.
躁郁症儿童和注意缺陷多动障碍(ADHD)儿童的临床症状有很大的重叠。因此,根据临床症状进行诊断不能非常准确。因此,希望开发出定量标准,以便自动区分这些疾病。本研究旨在通过分析脑电图(EEG)信号,设计一个有效的决策器,准确地对 ADHD 和 BMD 患者进行分类。在这项研究中,从 21 名 ADHD 患者和 22 名 BMD 患者中记录了 22 个通道的 EEG。从记录的信号中提取了分形维数、频带功率和自回归系数等信息特征。考虑到获得的特征的多模态重叠分布,使用线性判别分析(LDA)在更可分离的空间中减少输入维度,使其更适合于所提出的分类器。基于扩展分类器系统的分段线性分类器用于函数逼近(XCSF)被修改,通过开发一个自适应变异率来修改,该变异率与最佳个体的基因型含量及其在每一代的适应性成正比。所提出的算子在保持分类器群体多样性的同时,控制着探索和利用之间的权衡,以避免过早收敛。为了评估所提出方案的有效性,将提取的特征应用于支持向量机、LDA、最近邻和 XCSF 分类器。为了评估该方法,在不同的噪声幅度下模拟了一个噪声环境。结果表明,与传统分类器相比,所提出的技术结果更加稳健。统计检验表明,所提出的分类器是区分 ADHD 和 BMD 患者的一种很有前途的方法。