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Diagnosis of Schizophrenia Patients Based on Brain Network Complexity Analysis of Resting-State fMRI

机译:基于脑网络复杂性分析的精神分裂症患者的诊断休息状态FMRI

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Schizophrenia is a chronic, severe, and disabling brain disorder. Approximate 1% of Americans have this illness. It typically occurred in young adulthood (15-45 year). Generally, schizophrenia patients usually could not identify reality and hallucination and it would make social and occupational dysfunctions. Until now, diagnosis of schizophrenia is based on observed behavior and the patient's reported experiences (Diagnostic and Statistical Manual of Mental Disorders, DSM-V). The aim of this study is to evaluate the feasibility of classifying schizophrenia and healthy people by analyzing physiological information. In this paper, resting-state fMRI (rfMRI) data from 69 schizophrenia patients and 72 healthy people were studied. Comparing to rfMRI, patients are not required to perform any task during the rfMRI experiment so that it reduces the difficulty of data collection. We estimated the correlation matrix of 116 regions of interesting (ROI) from automated anatomical labeling (AAL). Then the resultant correlation matrix is converted to the binary graph. The network complexity analysis is applied to the binary graph to estimate the largest connected components (LCC) and the complexity of the selected distinguishable connected components to differentiate abnormal brain regions of patients from normal brains of healthy people. Finally, the extract features were fed to the linear SVM for classification. Accuracy of the proposed method can reach 71.63% through leave-one-out cross validation. Experimental results demonstrate the feasibility of schizophrenia diagnosis based on the brain network complexity of the rfMRI.
机译:精神分裂症是慢性,严重,致残的脑障碍。近似1%的美国人有这种疾病。它通常发生在年轻的成年(15-45年)。一般来说,精神分裂症患者通常无法识别现实和幻觉,它会产生社会和职业功能障碍。到目前为止,精神分裂症的诊断是基于观察到的行为和患者报告的经验(精神障碍的诊断和统计手册,DSM-V)。本研究的目的是通过分析生理信息来评估分类精神分裂症和健康人的可行性。本文研究了69例精神分裂症患者和72名健康人员的休息状态FMRI(RFMRI)数据。与RFMRI相比,患者不需要在RFMRI实验期间执行任何任务,以便降低数据收集的难度。我们估计了来自自动解剖标记(AAL)的116个区域的相关矩阵(ROI)(AAL)。然后将得到的相关矩阵转换为二进制图。网络复杂性分析应用于二进制图以估计最大连接的组件(LCC)和所选择的可区分连接组分的复杂性,以区分患者的异常脑区域从健康人的正常大脑区分。最后,提取特征被馈送到线性SVM以进行分类。通过休假交叉验证,所提出的方法的准确性可以达到71.63%。实验结果表明,基于RFMRI的大脑网络复杂性的精神分裂症诊断的可行性。

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