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fMRI based computer aided diagnosis of schizophrenia using fuzzy kernel feature extraction and hybrid feature selection

机译:基于功能核磁共振的模糊核特征提取和混合特征选择计算机辅助诊断精神分裂症

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Functional magnetic resonance imaging (fMRI) is a useful technique for capturing deformities in brain activity patterns of several disorders. Schizophrenia is one such serious psychiatric disorder that, in absence of any standard diagnostic tests, is detected from behavioural symptoms observed externally. Thus, fMRI can be used for building an effective decision model for computer aided diagnosis of schizophrenia. However, fMRI data has huge dimension compared with the number of subjects; therefore it is essential to reduce the data dimension to avoid poor generalisation performance of the decision model. In the present work, we propose a three-phase dimension reduction that comprises of segmentation of voxels of 3-D spatial maps (independent component score-maps or beta-maps) into anatomical brain regions; feature extraction from each region using a novel fuzzy kernel principal component analysis; and a novel hybrid (filter-cum-wrapper) feature selection for determining a reduced subset of discriminative features. These features are used as input to support vector machine classifier for learning a decision model. The method is carried out within leave-one-out cross-validation. Classification accuracy, sensitivity, and specificity are utilised to estimate the performance on two different balanced datasets D1 and D2 (respectively acquired on 1.5 T and 3 T scanners). Both the datasets contain fMRI data of age-matched healthy subjects and schizophrenia patients for auditory oddball task, obtained from FBIRN multisite dataset. The proposed method attains best classification accuracy of 95.6% and 96.0% for D1 and D2 respectively. The proposed method shows enhanced performance over the state-of-the-art methods. Further, the discriminative brain regions identified are in accordance with the findings in related literature and may be used as potential biomarkers.
机译:功能磁共振成像(fMRI)是一种用于捕获几种疾病的大脑活动模式中的畸形的有用技术。精神分裂症是一种严重的精神疾病,在没有任何标准诊断测试的情况下,可以从外部观察到的行为症状中检测出精神分裂症。因此,功能磁共振成像可用于建立有效的决策模型,用于计算机辅助精神分裂症的诊断。然而,与受试者数量相比,fMRI数据具有巨大的维度。因此,必须减少数据维,以避免决策模型泛化性能差。在目前的工作中,我们提出了一个三维尺寸缩减方法,包括将3D空间图(独立分量计分图或β图)的体素分割成解剖脑区域。使用新颖的模糊核主成分分析从每个区域提取特征;以及一种新颖的混合(过滤器和包装器)特征选择,用于确定鉴别特征的减少子集。这些功能用作支持学习决策模型的向量机分类器的输入。该方法在留一法交叉验证中执行。利用分类准确性,敏感性和特异性来估计两个不同的平衡数据集D1和D2(分别在1.5 T和3 T扫描仪上获取)的性能。这两个数据集均包含从FBIRN多站点数据集获取的年龄相匹配的健康受试者和精神分裂症患者的听觉奇异球任务的fMRI数据。所提方法对D1和D2的最佳分类精度分别为95.6%和96.0%。所提出的方法显示出比现有方法更高的性能。此外,所识别的区分性脑区域根据相关文献中的发现,并且可以用作潜在的生物标记。

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