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首页> 外文期刊>Neuroinformatics >Neuropsychological Testing and Structural Magnetic Resonance Imaging as Diagnostic Biomarkers Early in the Course of Schizophrenia and Related Psychoses
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Neuropsychological Testing and Structural Magnetic Resonance Imaging as Diagnostic Biomarkers Early in the Course of Schizophrenia and Related Psychoses

机译:神经心理测试和结构磁共振成像作为精神分裂症及相关精神病早期的诊断生物标志物

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Making an accurate diagnosis of schizophrenia and related psychoses early in the course of the disease is important for initiating treatment and counseling patients and families. In this study, we developed classification models for early disease diagnosis using structural MRI (sMRI) and neuropsychological (NP) testing. We used sMRI measurements and NP test results from 28 patients with recent-onset schizophrenia and 47 healthy subjects, drawn from the larger sample of the Mind Clinical Imaging Consortium. We developed diagnostic models based on Linear Discriminant Analysis (LDA) following two approaches; namely, (a) stepwise (STP) LDA on the original measurements, and (b) LDA on variables created through Principal Component Analysis (PCA) and selected using the Humphrey-Ilgen parallel analysis. Error estimation of the modeling algorithms was evaluated by leave-one-out external cross-validation. These analyses were performed on sMRI and NP variables separately and in combination. The following classification accuracy was obtained for different variables and modeling algorithms. sMRI only: (a) STP-LDA: 64.3% sensitivity and 76.6% specificity, (b) PCA-LDA: 67.9% sensitivity and 72.3% specificity. NP only: (a) STP-LDA: 71.4% sensitivity and 80.9% specificity, (b) PCA-LDA: 78.5% sensitivity and 91.5% specificity. Combined sMRI-NP: (a) STP-LDA: 64.3% sensitivity and 83.0% specificity, (b) PCA-LDA: 89.3% sensitivity and 93.6% specificity. (i) Maximal diagnostic accuracy was achieved by combining sMRI and NP variables. (ii) NP variables were more informative than sMRI, indicating that cognitive deficits can be detected earlier than volumetric structural abnormalities. (iii) PCA-LDA yielded more accurate classification than STP-LDA. As these sMRI and NP tests are widely available, they can increase accuracy of early intervention strategies and possibly be used in evaluating treatment response.
机译:在疾病的早期阶段对精神分裂症和相关的精神病做出准确的诊断,对于开始治疗并为患者和家庭提供咨询非常重要。在这项研究中,我们开发了使用结构MRI(sMRI)和神经心理学(NP)测试进行早期疾病诊断的分类模型。我们使用了sMRI测量结果和NP测试结果,这些结果来自28例近期发作的精神分裂症患者和47例健康受试者,这些受试者均来自Mind Clinical Imaging Consortium的较大样本。我们采用以下两种方法开发了基于线性判别分析(LDA)的诊断模型:即,(a)在原始测量中的逐步(STP)LDA,以及(b)在通过主成分分析(PCA)创建并使用汉弗莱-伊尔根并行分析选择的变量上的LDA。通过留一法外部交叉验证来评估建模算法的误差估计。这些分析分别对sMRI和NP变量进行组合分析。对于不同的变量和建模算法,获得了以下分类精度。仅适用于sMRI:(a)STP-LDA:灵敏度为64.3%,特异性为76.6%,(b)PCA-LDA:灵敏度为67.9%,特异性为72.3%。仅NP:(a)STP-LDA:灵敏度为71.4%,特异性为80.9%,(b)PCA-LDA:灵敏度为78.5%,特异性为91.5%。合并的sMRI-NP:(a)STP-LDA:灵敏度为64.3%,特异性为83.0%,(b)PCA-LDA:灵敏度为89.3%,特异性为93.6%。 (i)通过结合sMRI和NP变量获得最大的诊断准确性。 (ii)NP变量比sMRI具有更丰富的信息,表明认知缺陷可以比体积结构异常更早被发现。 (iii)PCA-LDA的分类比STP-LDA更为准确。由于这些sMRI和NP测试广泛可用,因此它们可以提高早期干预策略的准确性,并可能用于评估治疗反应。

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