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Machine Learning Approach to Diagnose Schizophrenia Based on Effective Connectivity of Resting EEG Data

机译:基于休息EEG数据的有效连通性诊断精神分裂症的机器学习方法

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Schizophrenia is a severe mental disorder associated with neurobiological deficits. Despite the fact that the brain activity during tasks (i.e. P300 activities) are considered as biomarkers for diagnosing schizophrenia, brain activities at rest has the potential to reveal an intrinsic dysfunctionality in patients with schizophrenia and can be used to understand the cognitive deficits in these patients. In this study, we develop a machine learning (ML) algorithm based on eye closed resting-EEG data sets aiming to distinguish 63 schizophrenic patients (SCZs) from 70 healthy controls (HCs). The ML algorithm has three steps. In the first step an effective connectivity named symbolic transfer entropy (STE) is applied to the EEG waveforms. In the second step brain network properties are constructed from STE. In the third step the ML algorithm is applied to brain network properties to determine whether a set of features can be found that successfully discriminates SCZ from HC. The findings of this study revealed that the most discriminating features are shortest-path-length between different brain regions that could achieve an accuracy of 96.15%, with a sensitivity of 100% and specificity of 92.86% using 20% of data samples as test dataset that is not used for training. These findings imply that resting EEG could contribute to our ability to distinguish SCZs from HCs, and that the STE effective connectivity may prove to be a promising tool for the clinical diagnosis of schizophrenia.
机译:精神分裂症是一种严重的精神障碍与神经生物学缺陷相关。尽管任务期间的大脑活动(即P300活性)被视为用于诊断精神分裂症的生物标志物,但静止的脑活动有可能揭示精神分裂症患者的内在功能障碍,并且可用于理解这些患者的认知缺陷。在这项研究中,我们开发了一种基于眼睛关闭休息 - EEG数据集的机器学习(ML)算法,其旨在区分63例精神分裂症患者(SCZS)从70例健康对照(HCS)。 ML算法有三个步骤。在第一步中,将命名符号传输熵(STE)的有效连接应用于EEG波形。在第二步中,脑网络属性由STE构成。在第三步中,ML算法应用于大脑网络属性以确定是否可以找到成功识别来自HC的SCZ的一组特征。该研究的结果显示,最具判别特征是在不同脑区之间的最短路径长度,可以达到96.15%的准确性,灵敏度为100%和特异性,使用20%的数据样本作为测试数据集的敏感性为92.86%这不用于培训。这些发现意味着休息的脑电站可能有助于我们将SCZ与HCS区分开的能力,并且STE有效的连通性可能被证明是精神分裂症临床诊断的有希望的工具。

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