Predicting the Conversion from Mild Cognitive Impairment to Alzheimer's Disease Using Graph Frequency Bands and Functional Connectivity-Based Features.

Jafar Zamani, Alireza Talesh Jafadideh
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Abstract

Accurate prediction of the progression from mild cognitive impairment (MCI) to Alzheimer's disease (AD) is crucial for disease management. Machine learning techniques have demonstrated success in classifying AD and MCI cases, particularly with the use of resting-state functional magnetic resonance imaging (rs-fMRI) data.This study utilized three years of rs-fMRI data from the ADNI, involving 142 patients with stable MCI (sMCI) and 136 with progressive MCI (pMCI). Graph signal processing was applied to filter rs-fMRI data into low, middle, and high frequency bands. Connectivity-based features were derived from both filtered and unfiltered data, resulting in a comprehensive set of 100 features, including global graph metrics, minimum spanning tree (MST) metrics, triadic interaction metrics, hub tendency metrics, and the number of links. Feature selection was enhanced using particle swarm optimization (PSO) and simulated annealing (SA). A support vector machine (SVM) with a radial basis function (RBF) kernel and a 10-fold cross-validation setup were employed for classification. The proposed approach demonstrated superior performance, achieving optimal accuracy with minimal feature utilization. When PSO selected five features, SVM exhibited accuracy, specificity, and sensitivity rates of 77%, 70%, and 83%, respectively. The identified features were as follows: (Mean of clustering coefficient, Mean of strength)/Radius/(Mean Eccentricity, and Modularity) from low/middle/high frequency bands of graph. The study highlights the efficacy of the proposed framework in identifying individuals at risk of AD development using a parsimonious feature set. This approach holds promise for advancing the precision of MCI to AD progression prediction, aiding in early diagnosis and intervention strategies.

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利用图形频带和基于功能连接性的特征预测从轻度认知障碍到阿尔茨海默病的转变
准确预测轻度认知障碍(MCI)到阿尔茨海默病(AD)的进展对于疾病管理至关重要。机器学习技术在对AD和MCI病例进行分类方面取得了成功,尤其是在使用静息态功能磁共振成像(rs-fMRI)数据方面。这项研究利用了ADNI的三年rs-fMRI数据,其中包括142名稳定型MCI(sMCI)患者和136名进展型MCI(pMCI)患者。图形信号处理将 rs-fMRI 数据过滤成低、中、高频段。从过滤和未过滤的数据中得出了基于连接性的特征,从而形成了一套包含 100 个特征的综合特征集,其中包括全局图指标、最小生成树(MST)指标、三元交互指标、中心倾向指标和链接数。使用粒子群优化(PSO)和模拟退火(SA)增强了特征选择。在进行分类时,采用了带有径向基函数(RBF)内核的支持向量机(SVM)和 10 倍交叉验证设置。所提出的方法表现出卓越的性能,以最小的特征利用率获得了最佳的准确性。当 PSO 选择五个特征时,SVM 的准确率、特异性和灵敏度分别为 77%、70% 和 83%。确定的特征如下(聚类系数平均值、强度平均值)/半径/(偏心率平均值和模块性)。该研究强调了所提出的框架在使用简约特征集识别有患注意力缺失症风险的个体方面的功效。这种方法有望提高从 MCI 到 AD 进展预测的精确度,有助于早期诊断和干预策略。
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