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Integration of Structural and Functional MRI Features Improves Mild Cognitive Impairment (MCI) Detection

机译:整合结构和功能性MRI功能可改善轻度认知障碍(MCI)检测

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Structural magnetic resonance imaging (sMRI) and functional MRI (fMRI) based features toward identification of mild cognitive impairment (MCI) status has gained popularity due to its non-invasiveness allowing repeated measurements. Despite of this great potential, however an effort to integrate the sMRI- and fMRI-based features to increase MCI detection accuracy has been limited. In this study, we were motivated to investigate whether the detection capability of the MCI status can be improved via the integration of feature sets from sMRI and fMRI data. The characteristic traits of regional volumes and level of neuronal activity of the brain associated with the MCI in comparison to healthy control were exploited using sMRI and fMRI data, respectively, in which these characteristic traits (i.e., biomarkers) were identified from group comparison via two-sample t-test. In the subsequent classification phase, the MCI status were automatically detected using a support vector machine (SVM) algorithm employing the identified sMRI- and fMRI-driven biomarkers as input features vectors. The results indicate that the fMRI-based biomarkers appear to increase the detection accuracy of the MCI status than the sMRI-based biomarkers. Moreover, the integrated feature sets using the sMRI- and fMRI-based biomarkers constantly showed superior performance than the feature sets based on the fMRI-driven biomarkers. This study successfully demonstrated an anecdotal evidence that the integration of the sMRI and fMRI modalities can provide a supplemental information toward diagnosis of the MCI status compared to either the sMRI or fMRI modality.
机译:基于结构磁共振成像(sMRI)和功能性MRI(fMRI)的特征可识别轻度认知障碍(MCI)状态,由于其无创性允许重复测量而受到欢迎。尽管具有巨大的潜力,但是将基于sMRI和基于fMRI的功能集成以提高MCI检测精度的努力受到了限制。在这项研究中,我们有动机研究是否可以通过整合sMRI和fMRI数据中的特征集来提高MCI状态的检测能力。与健康对照相比,分别使用sMRI和fMRI数据开发了与健康对照相比与MCI相关的区域体积和大脑神经元活动水平的特征,其中通过两个组的比较确定了这些特征(即生物标志物) -样本t检验。在随后的分类阶段,使用支持向量机(SVM)算法自动检测MCI状态,该算法采用已识别的sMRI和fMRI驱动的生物标记物作为输入特征向量。结果表明,与基于sMRI的生物标记相比,基于fMRI的生物标记似乎提高了MCI状态的检测准确性。此外,使用基于sMRI和fMRI的生物标记的集成特征集始终显示出比基于fMRI驱动的生物标记的特征集更高的性能。这项研究成功地证明,与sMRI或fMRI模式相比,sMRI和fMRI模式的整合可以为MCI状态的诊断提供补充信息。

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