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A prediction model for cognitive performance in health ageing using diffusion tensor imaging with graph theory

机译:图论的扩散张量成像在健康老龄化认知能力预测模型中的应用

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摘要

In this study, we employed diffusion tensor imaging (DTI) to construct brain structural network and then derive the connection matrices from 96 healthy elderly subjects. The correlation analysis between these topological properties of network based on graph theory and the Cognitive Abilities Screening Instrument (CASI) index were processed to extract the significant network characteristics. These characteristics were then integrated to estimate the models by various machine-learning algorithms to predict user's cognitive performance. From the results, linear regression model and Gaussian processes model showed presented better abilities with lower mean absolute errors of 5.8120 and 6.25 to predict the cognitive performance respectively. Moreover, these extracted topological properties of brain structural network derived from DTI also could be regarded as the bio-signatures for further evaluation of brain degeneration in healthy aged and early diagnosis of mild cognitive impairment (MCI).
机译:在这项研究中,我们采用扩散张量成像(DTI)来构建大脑结构网络,然后从96位健康的老年受试者中得出连接矩阵。基于图论对网络的这些拓扑特性与认知能力筛选工具(CASI)指标之间的相关性进行分析,以提取重要的网络特征。这些特征然后通过各种机器学习算法进行集成,以估计模型,从而预测用户的认知表现。从结果来看,线性回归模型和高斯过程模型显示出更好的能力,分别具有较低的平均绝对误差5.8120和6.25来预测认知表现。此外,这些提取的源自DTI的大脑结构网络的拓扑特性也可以视为进一步评估健康老年人脑退化和轻度认知障碍(MCI)早期诊断的生物特征。

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