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A Novel Brain Network Construction Method for Exploring Age-Related Functional Reorganization

机译:探索与年龄相关的功能重组的新型脑网络构建方法

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摘要

The human brain undergoes complex reorganization and changes during aging. Using graph theory, scientists can find differences in topological properties of functional brain networks between young and elderly adults. However, these differences are sometimes significant and sometimes not. Several studies have even identified disparate differences in topological properties during normal aging or in age-related diseases. One possible reason for this issue is that existing brain network construction methods cannot fully extract the “intrinsic edges” to prevent useful signals from being buried into noises. This paper proposes a new subnetwork voting (SNV) method with sliding window to construct functional brain networks for young and elderly adults. Differences in the topological properties of brain networks constructed from the classic and SNV methods were consistent. Statistical analysis showed that the SNV method can identify much more statistically significant differences between groups than the classic method. Moreover, support vector machine was utilized to classify young and elderly adults; its accuracy, based on the SNV method, reached 89.3%, significantly higher than that with classic method. Therefore, the SNV method can improve consistency within a group and highlight differences between groups, which can be valuable for the exploration and auxiliary diagnosis of aging and age-related diseases.
机译:人脑在衰老过程中会经历复杂的重组和变化。使用图论,科学家可以发现年轻人和老年人之间功能性大脑网络的拓扑特性差异。但是,这些差异有时很重要,有时却没有。几项研究甚至已经确定了正常衰老过程中或与年龄相关的疾病在拓扑特性方面的差异。出现此问题的一个可能原因是,现有的大脑网络构建方法无法完全提取“本征边缘”,以防止有用的信号被掩盖在噪音中。本文提出了一种新的带有滑动窗口的子网络投票(SNV)方法,以构建针对年轻人和老年人的功能性大脑网络。由经典方法和SNV方法构建的大脑网络的拓扑特性差异是一致的。统计分析表明,与经典方法相比,SNV方法可以识别出两组之间的统计学差异。此外,利用支持向量机对年轻人和老年人进行分类。根据SNV方法,其准确性达到89.3%,大大高于传统方法。因此,SNV方法可以提高组内的一致性并突出组间的差异,这对于探索和辅助诊断衰老和与年龄相关的疾病非常有价值。

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