Research Division, Institute of Mental Health, Singapore, 10 Buangkok View, Singapore, 539747, Singapore.
Health Services & Outcomes Research, National Healthcare Group, 3 Fusionopolis Link, Singapore, 138543, Singapore.
Sci Rep. 2018 Sep 14;8(1):13858. doi: 10.1038/s41598-018-32290-9.
Structural brain abnormalities in schizophrenia have been well characterized with the application of univariate methods to magnetic resonance imaging (MRI) data. However, these traditional techniques lack sensitivity and predictive value at the individual level. Machine-learning approaches have emerged as potential diagnostic and prognostic tools. We used an anatomically and spatially regularized support vector machine (SVM) framework to categorize schizophrenia and healthy individuals based on whole-brain gray matter densities estimated using voxel-based morphometry from structural MRI scans. The regularized SVM model yielded recognition accuracy of 86.6% in the training set of 127 individuals and validation accuracy of 83.5% in an independent set of 85 individuals. A sequential region-of-interest (ROI) selection step was adopted for feature selection, improving recognition accuracy to 92.0% in the training set and 89.4% in the validation set. The combined model achieved 96.6% sensitivity and 74.1% specificity. Seven ROIs were identified as the optimal discriminatory subset: the occipital fusiform gyrus, middle frontal gyrus, pars opercularis of the inferior frontal gyrus, anterior superior temporal gyrus, superior frontal gyrus, left thalamus and left lateral ventricle. These findings demonstrate the utility of spatial and anatomical priors in SVM for neuroimaging analyses in conjunction with sequential ROI selection in the recognition of schizophrenia.
利用磁共振成像 (MRI) 数据的单变量方法,已经很好地描述了精神分裂症的结构性脑异常。然而,这些传统技术在个体水平上缺乏敏感性和预测价值。机器学习方法已经成为潜在的诊断和预后工具。我们使用基于体素的形态学从结构 MRI 扫描中估计的全脑灰质密度,使用解剖和空间正则化支持向量机 (SVM) 框架来对精神分裂症患者和健康个体进行分类。正则化 SVM 模型在 127 名个体的训练集中的识别准确率为 86.6%,在 85 名个体的独立集中的验证准确率为 83.5%。采用顺序感兴趣区域 (ROI) 选择步骤进行特征选择,将训练集的识别准确率提高到 92.0%,验证集的识别准确率提高到 89.4%。联合模型的灵敏度为 96.6%,特异性为 74.1%。确定了七个 ROI 作为最佳判别子集:枕梭状回、额中回、额下回的眶部、前上颞叶、额上回、左侧丘脑和左侧侧脑室。这些发现表明,在 SVM 中,空间和解剖先验与顺序 ROI 选择相结合,在精神分裂症的识别中具有神经影像学分析的实用性。