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首页> 外文期刊>Engineering Applications of Artificial Intelligence >Presenting a new search strategy to select synchronization values for classifying bipolar mood disorders from schizophrenic patients
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Presenting a new search strategy to select synchronization values for classifying bipolar mood disorders from schizophrenic patients

机译:提出一种新的搜索策略以选择同步值以对精神分裂症患者的双相情感障碍进行分类

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摘要

There is a growing interest to employ synchronization methods to reveal natural connections among the brain lobes by measuring co-activations among EEC channels. Regarding high number of EEG channels, lots of synchronization indexes are determined between two by two channels leading to construct a high dimensional feature vector for each time frame. The objective of this paper is to propose an effective feature selection method to find discriminative synchronization indexes in order to classify patients with schizophrenia from those with bipolar mood disorder (BMD). The state-of-art synchronization methods from various domains such as phase-locking value (PLV), robust synchronization (RS), and synchronization likelihood (SL), were implemented to provide a rich feature set in order to classify the two groups. To increase the classification accuracy, a capable feature selection scheme is proposed entitled greedy overall relevancy (GOR) to select discriminative synchronization indexes. The elicited synchronization vectors of 53 subjects imposed to support vector machine (SVM) classifier and the classification result with and without applying GOR, provided 92.45% and 88.68% accuracy, respectively. Across-group variance (AGV) is chosen as a rival method to GOR; the selected features by AGV entered to the classifier resulting in 91.34% accuracy. Using pair T-test exhibits the significant superiority of GOR to AGV such that P-value determined less than 0.05. To the best of authors' knowledge, this is the first attempt to utilize the selected synchronization indexes as informative features applying to a classifier for diagnosing the psychiatric patients.
机译:使用同步方法通过测量EEC通道之间的共激活来揭示脑叶之间的自然联系的兴趣日益浓厚。关于大量的EEG通道,在两个到两个通道之间确定许多同步指标,从而为每个时间帧构建高维特征向量。本文的目的是提出一种有效的特征选择方法,以找到可鉴别的同步指标,以将精神分裂症患者与双相情感障碍患者(BMD)进行分类。实现了来自各个领域的最新同步方法,例如锁相值(PLV),鲁棒同步(RS)和同步可能性(SL),以提供丰富的功能集,以便对这两组进行分类。为了提高分类精度,提出了一种有能力的特征选择方案,名为“贪婪总体相关性”(GOR),以选择判别式同步索引。引入支持向量机(SVM)分类器的53个主题的同步向量以及使用和不使用GOR的分类结果分别提供了92.45%和88.68%的准确性。选择跨组方差(AGV)作为GOR的竞争方法;由AGV选择的特征输入到分类器中,从而获得91.34%的准确性。使用对T检验显示GOR较AGV显着优越,因此P值确定小于0.05。据作者所知,这是首次尝试将选定的同步索引用作信息特征,应用于分类器以诊断精神病患者。

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