Akgüller Ömer, Balcı Mehmet Ali, Cioca Gabriela
Department of Mathematics, Faculty of Science, Mugla Sitki Kocman University, Muğla 48000, Turkey.
Preclinical Department, Faculty of Medicine, Lucian Blaga University of Sibiu, 550024 Sibiu, Romania.
Diagnostics (Basel). 2025 Jan 10;15(2):153. doi: 10.3390/diagnostics15020153.
: Alzheimer's disease is a progressive neurological condition marked by a decline in cognitive abilities. Early diagnosis is crucial but challenging due to overlapping symptoms among impairment stages, necessitating non-invasive, reliable diagnostic tools. : We applied information geometry and manifold learning to analyze grayscale MRI scans classified into No Impairment, Very Mild, Mild, and Moderate Impairment. Preprocessed images were reduced via Principal Component Analysis (retaining 95% variance) and converted into statistical manifolds using estimated mean vectors and covariance matrices. Geodesic distances, computed with the Fisher Information metric, quantified class differences. Graph Neural Networks, including Graph Convolutional Networks (GCN), Graph Attention Networks (GAT), and GraphSAGE, were utilized to categorize impairment levels using graph-based representations of the MRI data. : Significant differences in covariance structures were observed, with increased variability and stronger feature correlations at higher impairment levels. Geodesic distances between No Impairment and Mild Impairment (58.68, p<0.001) and between Mild and Moderate Impairment (58.28, p<0.001) are statistically significant. GCN and GraphSAGE achieve perfect classification accuracy (precision, recall, F1-Score: 1.0), correctly identifying all instances across classes. GAT attains an overall accuracy of 59.61%, with variable performance across classes. : Integrating information geometry, manifold learning, and GNNs effectively differentiates AD impairment stages from MRI data. The strong performance of GCN and GraphSAGE indicates their potential to assist clinicians in the early identification and tracking of Alzheimer's disease progression.
阿尔茨海默病是一种以认知能力下降为特征的进行性神经疾病。早期诊断至关重要,但由于损伤阶段之间症状重叠,具有挑战性,因此需要非侵入性、可靠的诊断工具。
我们应用信息几何和流形学习来分析分类为无损伤、极轻度、轻度和中度损伤的灰度磁共振成像(MRI)扫描。预处理后的图像通过主成分分析进行降维(保留95%的方差),并使用估计的均值向量和协方差矩阵转换为统计流形。使用费希尔信息度量计算的测地距离量化了类别差异。利用包括图卷积网络(GCN)、图注意力网络(GAT)和图采样聚合(GraphSAGE)在内的图神经网络,使用MRI数据的基于图的表示对损伤水平进行分类。
观察到协方差结构存在显著差异,在较高损伤水平下变异性增加且特征相关性更强。无损伤与轻度损伤之间的测地距离(58.68,p<0.001)以及轻度与中度损伤之间的测地距离(58.28,p<0.001)具有统计学意义。GCN和GraphSAGE实现了完美的分类准确率(精确率、召回率、F1分数:1.0),正确识别了所有类别的实例。GAT的总体准确率为59.61%,各分类的表现有所不同。
整合信息几何、流形学习和图神经网络能够有效地从MRI数据中区分阿尔茨海默病的损伤阶段。GCN和GraphSAGE的强大性能表明它们有潜力协助临床医生早期识别和跟踪阿尔茨海默病的进展。