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首页> 外文期刊>NeuroImage: Clinical >Identifying first-episode drug na?ve patients with schizophrenia with or without auditory verbal hallucinations using whole-brain functional connectivity: A pattern analysis study
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Identifying first-episode drug na?ve patients with schizophrenia with or without auditory verbal hallucinations using whole-brain functional connectivity: A pattern analysis study

机译:使用全脑功能连通性鉴定首发药物初治型精神分裂症患者是否患有听觉幻觉:模式分析研究

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Many studies have focused on patients with schizophrenia with or without auditory verbal hallucinations (AVHs), but due to the complexity of schizophrenia, biologically based diagnosis of patients with schizophrenia remains unsolved. The objectives of this study are to classify between first-episode drug-na?ve patients with schizophrenia and healthy controls, and to classify between patients with and without AVHs. Resting state fMRI data from 41 patients with schizophrenia (22 with and 19 without AVHs) and 23 normal controls (NC) were included to compute functional connectivity between brain regions. Classifiers based on support vector machine (SVM) were developed to classify patients with schizophrenia from NC, as well as between the two subgroups of patients. The classification accuracy was evaluated with a leave-one-out cross-validation (LOOCV) strategy. The accuracy in discriminating both subgroups of patients from NC was 81.3%, with 92.0% (sensitivity) and 65.2% (specificity) for the patients and NC, respectively. The classification accuracy in discriminating patients with and without AVHs was 75.6%, with 77.3% (sensitivity) and 73.9% (specificity) for patients with and without AVHs, respectively. The results suggest that functional connectivity provided good discriminative power not only for identifying patients with schizophrenia among NC, but also in discriminating patients with schizophrenia with and without AVHs. Highlights ? Normal controls, schizophrenia patients with and without AVHs were successfully classified. ? Using LOOCV, the classifier achieved an accuracy of groups of 81.3% for all the three groups of subjects. ? Patients with AVHs were differentiated with those without AVHs with an accuracy of 75.6%. ? The proposed may help with the clinical diagnosis of schizophrenia patients.
机译:许多研究集中于患有或不患有听觉幻觉(AVH)的精神分裂症患者,但是由于精神分裂症的复杂性,基于生物学的精神分裂症患者诊断仍未解决。这项研究的目的是对首次发作的初治精神分裂症患者和健康对照进行分类,并对有或没有AVHs的患者进行分类。包括41位精神分裂症患者(22位有AVH和19位无AVH)和23位正常对照(NC)的静息状态fMRI数据,以计算大脑区域之间的功能连接性。开发了基于支持向量机(SVM)的分类器,以对来自NC的精神分裂症患者以及患者的两个亚组进行分类。使用留一法交叉验证(LOOCV)策略评估分类准确性。区分两个亚组患者与NC的准确度分别为82.0%(敏感性)和65.2%(特异性)。区分有和没有AVH的患者的分类准确度分别为75.6%,有和没有AVH的患者分别为77.3%(敏感性)和73.9%(特异性)。结果表明,功能连通性不仅提供了良好的判别能力,不仅可以识别NC患者中的精神分裂症患者,而且可以区分具有和不具有AVH的精神分裂症患者。强调 ?正常对照,有无AVHs的精神分裂症患者已成功分类。 ?使用LOOCV,分类器对所有三组受试者的组准确率达到81.3%。 ? AVH患者与非AVH患者的区分度为75.6%。 ?所提出的建议可能有助于精神分裂症患者的临床诊断。

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