Khazaee Ali, Ebrahimzadeh Ata, Babajani-Feremi Abbas
Department of Electrical Engineering, University of Bojnord, Bojnord, Iran.
Department of Electrical Engineering, Babol University of Technology, Babol, Iran.
Behav Brain Res. 2017 Mar 30;322(Pt B):339-350. doi: 10.1016/j.bbr.2016.06.043. Epub 2016 Jun 23.
Brain network alterations in patients with Alzheimer's disease (AD) has been the subject of much investigation, but the biological mechanisms underlying these alterations remain poorly understood. Here, we aim to identify the changes in brain networks in patients with AD and mild cognitive impairment (MCI), and provide an accurate algorithm for classification of these patients from healthy control subjects (HC) by using a graph theoretical approach and advanced machine learning methods. Multivariate Granger causality analysis was performed on resting-state functional magnetic resonance imaging (rs-fMRI) data of 34 AD, 89 MCI, and 45 HC to calculate various directed graph measures. The graph measures were used as the original feature set for the machine learning algorithm. Filter and wrapper feature selection methods were applied to the original feature set to select an optimal subset of features. An accuracy of 93.3% was achieved for classification of AD, MCI, and HC using the optimal features and the naïve Bayes classifier. We also performed a hub node analysis and found that the number of hubs in HC, MCI, and AD were 12, 10, and 9, respectively, suggesting that patients with AD experience disturbance of critical communication areas in their brain network as AD progresses. The findings of this study provide insight into the neurophysiological mechanisms underlying MCI and AD. The proposed classification method highlights the potential of directed graph measures of rs-fMRI data for identification of the early stage of AD.
阿尔茨海默病(AD)患者的脑网络改变一直是众多研究的主题,但这些改变背后的生物学机制仍知之甚少。在此,我们旨在识别AD和轻度认知障碍(MCI)患者脑网络的变化,并通过使用图论方法和先进的机器学习方法,提供一种准确的算法来将这些患者与健康对照者(HC)区分开来。对34例AD患者、89例MCI患者和45例HC的静息态功能磁共振成像(rs-fMRI)数据进行多变量格兰杰因果分析,以计算各种有向图指标。这些图指标被用作机器学习算法的原始特征集。将滤波和包装特征选择方法应用于原始特征集,以选择最佳特征子集。使用最佳特征和朴素贝叶斯分类器对AD、MCI和HC进行分类,准确率达到了93.3%。我们还进行了枢纽节点分析,发现HC、MCI和AD中的枢纽节点数量分别为12个、10个和9个,这表明随着AD的进展,AD患者的脑网络关键通信区域会受到干扰。本研究结果为深入了解MCI和AD背后的神经生理机制提供了依据。所提出的分类方法突出了rs-fMRI数据的有向图指标在识别AD早期阶段的潜力。