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Individual Morphological Brain Network Construction Based on Multivariate Euclidean Distances Between Brain Regions

机译:基于大脑区域之间多元欧氏距离的个体形态学脑网络构建

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摘要

Morphological brain network plays a key role in investigating abnormalities in neurological diseases such as mild cognitive impairment (MCI) and Alzheimer's disease (AD). However, most of the morphological brain network construction methods only considered a single morphological feature. Each type of morphological feature has specific neurological and genetic underpinnings. A combination of morphological features has been proven to have better diagnostic performance compared with a single feature, which suggests that an individual morphological brain network based on multiple morphological features would be beneficial in disease diagnosis. Here, we proposed a novel method to construct individual morphological brain networks for two datasets by calculating the exponential function of multivariate Euclidean distance as the evaluation of similarity between two regions. The first dataset included 24 healthy subjects who were scanned twice within a 3-month period. The topological properties of these brain networks were analyzed and compared with previous studies that used different methods and modalities. Small world property was observed in all of the subjects, and the high reproducibility indicated the robustness of our method. The second dataset included 170 patients with MCI (86 stable MCI and 84 progressive MCI cases) and 169 normal controls (NC). The edge features extracted from the individual morphological brain networks were used to distinguish MCI from NC and separate MCI subgroups (progressive vs. stable) through the support vector machine in order to validate our method. The results showed that our method achieved an accuracy of 79.65% (MCI vs. NC) and 70.59% (stable MCI vs. progressive MCI) in a one-dimension situation. In a multiple-dimension situation, our method improved the classification performance with an accuracy of 80.53% (MCI vs. NC) and 77.06% (stable MCI vs. progressive MCI) compared with the method using a single feature. The results indicated that our method could effectively construct an individual morphological brain network based on multiple morphological features and could accurately discriminate MCI from NC and stable MCI from progressive MCI, and may provide a valuable tool for the investigation of individual morphological brain networks.
机译:形态学脑网络在调查神经系统疾病(例如轻度认知障碍(MCI)和阿尔茨海默氏病(AD))的异常中起关键作用。然而,大多数形态学脑网络构建方法仅考虑单个形态学特征。每种形态特征都有特定的神经和遗传基础。形态学特征的组合已被证明比单个特征具有更好的诊断性能,这表明基于多种形态学特征的单个形态学脑网络在疾病诊断中将是有益的。在这里,我们通过计算多元欧几里德距离的指数函数作为两个区域之间的相似性评估,提出了一种新颖的方法来为两个数据集构建个体形态大脑网络。第一个数据集包括24名健康受试者,他们在3个月内进行了两次扫描。分析了这些大脑网络的拓扑特性,并将其与使用不同方法和方式的先前研究进行了比较。在所有受试者中均观察到较小的世界特性,并且高重复性表明我们方法的鲁棒性。第二个数据集包括170例MCI患者(86例稳定MCI和84例进行性MCI病例)和169例正常对照(NC)。从单个形态学脑网络中提取的边缘特征用于通过支持向量机将MCI与NC进行区分,并通过支持向量机将MCI子组(渐进与稳定)分开,以验证我们的方法。结果表明,在一维情况下,我们的方法的准确度达到了79.65%(MCI与NC)和70.59%(稳定MCI与进行性MCI)。在多维情况下,与使用单个功能的方法相比,我们的方法以80.53%(MCI与NC)和77.06%(稳定MCI与渐进MCI)的精度提高了分类性能。结果表明,我们的方法可以有效地构建基于多种形态学特征的个体形态学脑网络,可以准确地区分NC中的MCI和进行性MCI中的稳定MCI,为研究个体形态学脑网络提供了有价值的工具。

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