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Discriminative analysis of schizophrenia using support vector machine and recursive feature elimination on structural MRI images

机译:使用支持向量机和结构特征MRI图像的递归特征消除对精神分裂症进行判别分析

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摘要

Structural abnormalities in schizophrenia (SZ) patients have been well documented with structural magnetic resonance imaging (MRI) data using voxel-based morphometry (VBM) and region of interest (ROI) analyses. However, these analyses can only detect group-wise differences and thus, have a poor predictive value for individuals. In the present study, we applied a machine learning method that combined support vector machine (SVM) with recursive feature elimination (RFE) to discriminate SZ patients from normal controls (NCs) using their structural MRI data. We first employed both VBM and ROI analyses to compare gray matter volume (GMV) and white matter volume (WMV) between 41 SZ patients and 42 age- and sex-matched NCs. The method of SVM combined with RFE was used to discriminate SZ patients from NCs using significant between-group differences in both GMV and WMV as input features. We found that SZ patients showed GM and WM abnormalities in several brain structures primarily involved in the emotion, memory, and visual systems. An SVM with a RFE classifier using the significant structural abnormalities identified by the VBM analysis as input features achieved the best performance (an accuracy of 88.4%, a sensitivity of 91.9%, and a specificity of 84.4%) in the discriminative analyses of SZ patients. These results suggested that distinct neuroanatomical profiles associated with SZ patients might provide a potential biomarker for disease diagnosis, and machine-learning methods can reveal neurobiological mechanisms in psychiatric diseases.
机译:精神分裂症(SZ)患者的结构异常已使用基于体素的形态计量学(VBM)和关注区域(ROI)分析,通过结构磁共振成像(MRI)数据得到了充分证明。但是,这些分析只能检测逐组差异,因此对个体的预测价值不佳。在本研究中,我们应用了一种结合支持向量机(SVM)和递归特征消除(RFE)的机器学习方法,以使用结构MRI数据将SZ患者与正常对照(NC)区别开来。我们首先使用VBM和ROI分析来比较41例SZ患者与42例年龄和性别匹配的NC患者之间的灰质量(GMV)和白质量(WMV)。使用SVM与RFE的方法,使用GMV和WMV的显着组间差异作为输入特征,将SZ患者与NC区分。我们发现SZ患者在几个主要涉及情绪,记忆和视觉系统的大脑结构中显示GM和WM异常。在SZ患者的判别分析中,具有RFE分类器的SVM使用VBM分析确定的重大结构异常作为输入特征,可实现最佳性能(准确度为88.4%,灵敏度为91.9%,特异性为84.4%)。 。这些结果表明,与SZ患者相关的独特的神经解剖学特征可能为疾病诊断提供了潜在的生物标记,并且机器学习方法可以揭示精神疾病的神经生物学机制。

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