Xu Xiaowen, Chen Peiying, Xiang Yongsheng, Xie Zhongfeng, Yu Qiang, Zhou Xiang, Wang Peijun
Department of Medical Imaging, Tongji Hospital, Tongji University School of Medicine, Tongji University, Shanghai, China.
Front Aging Neurosci. 2022 Aug 11;14:965923. doi: 10.3389/fnagi.2022.965923. eCollection 2022.
Subjective cognitive decline (SCD) is considered the first stage of Alzheimer's disease (AD). Accurate diagnosis and the exploration of the pathological mechanism of SCD are extremely valuable for targeted AD prevention. However, there is little knowledge of the specific altered morphological network patterns in SCD individuals. In this present study, 36 SCD cases and 34 paired-matched normal controls (NCs) were recruited. The Jensen-Shannon distance-based similarity (JSS) method was implemented to construct and derive the attributes of multiple brain connectomes (i.e., morphological brain connections and global and nodal graph metrics) of individual morphological brain networks. A t-test was used to discriminate between the selected nodal graph metrics, while the leave-one-out cross-validation (LOOCV) was used to obtain consensus connections. Comparisons were performed to explore the altered patterns of connectome features. Further, the multiple kernel support vector machine (MK-SVM) was used for combining brain connectomes and differentiating SCD from NCs. We showed that the consensus connections and nodal graph metrics with the most discriminative ability were mostly found in the frontal, limbic, and parietal lobes, corresponding to the default mode network (DMN) and frontoparietal task control (FTC) network. Altered pattern analysis demonstrated that SCD cases had a tendency for modularity and local efficiency enhancement. Additionally, using the MK-SVM to combine the features of multiple brain connectomes was associated with optimal classification performance [area under the curve (AUC): 0.9510, sensitivity: 97.22%, specificity: 85.29%, and accuracy: 91.43%]. Therefore, our study highlighted the combination of multiple connectome attributes based on morphological brain networks and offered a valuable method for distinguishing SCD individuals from NCs. Moreover, the altered patterns of multidimensional connectome attributes provided a promising insight into the neuroimaging mechanism and early intervention in SCD subjects.
主观认知下降(SCD)被认为是阿尔茨海默病(AD)的第一阶段。准确诊断和探索SCD的病理机制对于针对性的AD预防具有极其重要的价值。然而,对于SCD个体中特定的形态学网络模式改变知之甚少。在本研究中,招募了36例SCD病例和34例配对匹配的正常对照(NC)。采用基于 Jensen-Shannon 距离的相似性(JSS)方法构建并推导个体形态学脑网络的多个脑连接组的属性(即形态学脑连接以及全局和节点图指标)。使用t检验区分所选的节点图指标,同时使用留一法交叉验证(LOOCV)来获得一致性连接。进行比较以探索连接组特征的改变模式。此外,使用多核支持向量机(MK-SVM)来结合脑连接组并区分SCD和NC。我们发现,具有最强判别能力的一致性连接和节点图指标大多出现在额叶、边缘叶和顶叶,对应于默认模式网络(DMN)和额顶叶任务控制(FTC)网络。改变模式分析表明,SCD病例有模块化和局部效率增强的趋势。此外,使用MK-SVM结合多个脑连接组的特征具有最佳分类性能[曲线下面积(AUC):0.9510,敏感性:97.22%,特异性:85.29%,准确性:91.43%]。因此,我们的研究强调了基于形态学脑网络的多个连接组属性的组合,并提供了一种区分SCD个体和NC的有价值方法。此外,多维连接组属性的改变模式为SCD受试者的神经影像机制和早期干预提供了有前景的见解。