静息状态功能磁共振成像
计算机科学
支持向量机
相关性
分类器(UML)
功能连接
人工智能
模式识别(心理学)
动态功能连接
频域
皮尔逊积矩相关系数
机器学习
神经科学
数学
统计
心理学
计算机视觉
几何学
作者
Mohammed Isam Al-Hiyali,Norashikin Yahya,Ibrahima Faye,Alishba Sadiq,Mohamad Naufal Mohamad Saad
标识
DOI:10.1109/icftsc57269.2022.10039735
摘要
Alzheimer's disease (AD) is a slowly progressive neurological disorder associated with impaired functional connectivity of the brain. A common approach is to examine functional connectivity patterns (FC) for AD diagnosis either statically based on Pearson correlation coefficients (PCC) or dynamically based on time-frequency coefficients of resting-state fMRI BOLD signals. However, there is still a need to develop a AD diagnostic model with dynamic FC patterns that can improve the performance of the classifier. In this paper, a classification of AD from normal cases is proposed by combining a machine learning algorithm with dynamic FC patterns (DFC). The proposed method introduces a new feature vector for the maximum value of variation in the time-frequency domain, called (MWCF). Moreover, analysis of variance (ANOVA) is used to select the most informative features. Compared to previous studies, the proposed method outperforms state-of-the-art methods with an accuracy of 98.4%. The proposed method is an efficient predictor for the classification of AD vs. NC and can be used as a potential biomarker in AD diagnosis.
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