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A Computer-Aided Diagnosis System With EEG Based on the P3b Wave During an Auditory Odd-Ball Task in Schizophrenia

机译:基于P3b波的精神分裂症听觉奇异球任务脑电图计算机辅助诊断系统

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Objective: To design a Computer-aided diagnosis (CAD) system using an optimized methodology over the P3b wave in order to objectively and accurately discriminate between healthy controls (HC) and schizophrenic subjects (SZ). Methods: We train, test, analyze, and compare various machine learning classification approaches optimized in terms of the correct classification rate (CCR), the degenerated Youden's index (DYI) and the area under the receiver operating curve (AUC). CAD system comprises five stages: electroencephalography (EEG) preprocessing, feature extraction, seven electrode groupings, discriminant feature selection, and binary classification. Results: With two optimal combinations of electrode grouping, filtering, feature selection algorithm, and classification machine, we get either a mean CCR = 93.42%, specificity = 0.9673, sensitivity = 0.8727, DYI = 0.9188, and AUC = 0.9567 (total-15 Hz-J5-MLP), or a mean CCR = 92.23%, specificity = 0.9499, sensitivity = 0.8838, DYI = 0.9162, and AUC = 0.9807 (right hemisphere-35 Hz-J5-SVM), which to our knowledge are higher than those available to date. Conclusions: We have verified that a more restrictive low-pass filtering achieves higher CCR as compared to others at higher frequencies in the P3b wave. In addition, results validate previous hypothesis about the importance of the parietal-temporal region, associated with memory processing, allowing us to identify powerful {feature,electrode} pairs in the diagnosis of schizophrenia, achieving higher CCR and AUC in classification of both right and left Hemispheres, and parietal-temporal EEG signals, like, for instance, the {PSE, P4} pair (J5 and mutual information feature selection). Significance: Diagnosis of schizophrenia is made thoroughly by psychiatrists but as any human-based decision that has a subjective component. This CAD system provides the human expert with an objective complimentary measure to help him in diagnosing schizophrenia.
机译:目的:设计一种计算机辅助诊断(CAD)系统,该系统在P3b波上使用优化的方法,以客观,准确地区分健康对照(HC)和精神分裂症受试者(SZ)。方法:我们训练,测试,分析和比较根据正确分类率(CCR),退化的尤登指数(DYI)和接收器工作曲线下面积(AUC)优化的各种机器学习分类方法。 CAD系统包括五个阶段:脑电图(EEG)预处理,特征提取,七个电极分组,判别特征选择和二进制分类。结果:通过电极分组,过滤,特征选择算法和分类机的两种最佳组合,我们得到的平均CCR = 93.42%,特异性= 0.9673,灵敏度= 0.8727,DYI = 0.9188,AUC = 0.9567(总共15 Hz-J5-MLP)或平均CCR = 92.23%,特异性= 0.9499,灵敏度= 0.8838,DYI = 0.9162和AUC = 0.9807(右半球-35 Hz-J5-SVM),据我们所知那些可用的。结论:我们已经证实,与P3b波中较高频率的其他滤波器相比,限制性更强的低通滤波实现了更高的CCR。此外,研究结果验证了先前关于顶颞叶区域重要性与记忆处理相关的假设,从而使我们能够在精神分裂症的诊断中识别强大的{特征,电极}对,从而在正确和正确分类中获得更高的CCR和AUC。左半球和顶颞叶EEG信号,例如{PSE,P4}对(J5和互信息特征选择)。启示:精神分裂症的诊断是由精神科医生彻底进行的,但是作为任何具有主观成分的基于人的决定。该CAD系统为人类专家提供了客观的补充措施,以帮助他诊断精神分裂症。

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