Study of Brain Network in Alzheimers Disease Using Wavelet-Based Graph Theory Method

Ali Khazaee, Abdolreza Mohammadi, Ruairi Oreally
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Abstract

Alzheimer's disease (AD) is a neurodegenerative disorder marked by memory loss and cognitive decline, making early detection vital for timely intervention. However, early diagnosis is challenging due to the heterogeneous presentation of symptoms. Resting-state fMRI (rs-fMRI) captures spontaneous brain activity and functional connectivity, which are known to be disrupted in AD and mild cognitive impairment (MCI). Traditional methods, such as Pearson's correlation, have been used to calculate association matrices, but these approaches often overlook the dynamic and non-stationary nature of brain activity. In this study, we introduce a novel method that integrates discrete wavelet transform (DWT) and graph theory to model the dynamic behavior of brain networks. By decomposing rs-fMRI signals using DWT, our approach captures the time-frequency representation of brain activity, allowing for a more nuanced analysis of the underlying network dynamics. Graph theory provides a robust mathematical framework to analyze these complex networks, while machine learning is employed to automate the discrimination of different stages of AD based on learned patterns from different frequency bands. We applied our method to a dataset of rs-fMRI images from the Alzheimer's Disease Neuroimaging Initiative (ADNI) database, demonstrating its potential as an early diagnostic tool for AD and for monitoring disease progression. Our statistical analysis identifies specific brain regions and connections that are affected in AD and MCI, at different frequency bands, offering deeper insights into the disease's impact on brain function.
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用小波图论方法研究阿尔茨海默氏症患者的大脑网络
阿尔茨海默病(AD)是一种以记忆力减退和认知能力下降为特征的神经退行性疾病,因此早期发现对及时干预至关重要。然而,由于症状表现的异质性,早期诊断具有挑战性。静息态 fMRI(rs-fMRI)可捕捉自发的脑活动和功能连接,而众所周知,AD 和轻度认知障碍(MCI)会破坏这些活动和功能连接。传统方法,如皮尔逊相关法,已被用于计算关联矩阵,但这些方法往往忽略了大脑活动的动态和非稳态性质。在本研究中,我们介绍了一种整合了离散小波变换(DWT)和图论的新方法来模拟脑网络的动态行为。通过使用 DWT 对 rs-fMRI 信号进行分解,我们的方法捕捉到了大脑活动的时频表示,从而可以对潜在的网络动态进行更细致的分析。图论为分析这些复杂的网络提供了一个强大的数学框架,而机器学习则被用来根据从不同频段学习到的模式自动区分注意力缺失症的不同阶段。我们将我们的方法应用于阿尔茨海默病神经成像倡议(ADNI)数据库中的rs-fMRI图像数据集,证明了它作为AD早期诊断工具和监测疾病进展的潜力。我们的统计分析确定了AD和MCI在不同频段受影响的特定脑区和脑连接,为深入了解该疾病对大脑功能的影响提供了依据。
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