基于状态空间模型的时间演化图表征及其在阿尔茨海默病检测中的应用

Himanshu Padole, S. Joshi, T. Gandhi
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引用次数: 0

摘要

基于脑成像数据图论分析的方法已广泛应用于各种脑疾病的检测,如阿尔茨海默病(AD)、自闭症谱系障碍等。但是,大多数传统的基于图的方法都假设所涉及的图信号是平稳的,而忽略了相关图连通性的时变性质。近年来有关动态脑连接网络的研究揭示了疾病状态下脑连接动态的改变,从而使其成为疾病检测的潜在生物标志物。在本文中,我们提出了一种使用图信号的状态空间表示来表征时变图的动态的新方法,其中动态大脑连接被建模为系统的状态,而输入图信号作为观察值。然后利用卡尔曼滤波算法得到状态转移矩阵来表征时变图连通性的动态特性。为了利用改变的大脑连接动态来检测AD,首先使用训练对象的状态转移矩阵来训练SVM分类器,然后使用该分类器将测试对象分类为正常对照或患有轻度认知障碍,即AD的早期阶段。使用来自ADNI数据集的静息状态fMRI数据验证了所提出模型的有效性,其中所提出的模型优于最先进的AD检测方法,可能是因为它能够有效地表征大脑连接动态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Characterization of Time Evolving Graph Using State-Space Modelling and its Application in Alzheimer's Disease Detection
Methods based on graph theoretical analysis of brain imaging data have been widely applied to detect various brain diseases like Alzheimer's disease (AD), autism spectrum disorder etc. But most of the conventional graph based methods assume the stationarity of the graph signals involved, neglecting the time varying nature of the associated graph connectivity. Recent studies involving the dynamic brain connectivity network revealed the altered brain connectivity dynamics in the disease state, thus making it a potential biomarker for the disease detection. In this paper, we propose a novel approach to characterize the dynamics of the time varying graph using the state-space representation of the graph signal, wherein the dynamic brain connectivity is modelled as a state of the system while the input graph signal serves as an observation. The dynamics of the time varying graph connectivity is then characterized by the state transition matrix which is obtained using the Kalman filtering algorithm. To detect AD using the altered brain connectivity dynamics, the SVM classifier is first trained using the state transition matrices of the training subjects, which is then used to classify a test subject as a normal control or having a mild cognitive impairment, the early stage of AD . The efficacy of the proposed model is verified using the resting state fMRI data from the ADNI dataset, wherein the proposed model outperformed state-of-the-art AD detection methods, possibly due to its ability to effectively characterize the brain connectivity dynamics.
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