Identifying Alzheimer's Disease Prediction Strategies of Convolutional Neural Network Classifiers using R2* Maps and Spectral Clustering
Journal:
arXiv
Published Date:
Jun 4, 2025
Abstract
Deep learning models have shown strong performance in classifying Alzheimer's
disease (AD) from R2* maps, but their decision-making remains opaque, raising
concerns about interpretability. Previous studies suggest biases in model
decisions, necessitating further analysis. This study uses Layer-wise Relevance
Propagation (LRP) and spectral clustering to explore classifier decision
strategies across preprocessing and training configurations using R2* maps. We
trained a 3D convolutional neural network on R2* maps, generating relevance
heatmaps via LRP and applied spectral clustering to identify dominant patterns.
t-Stochastic Neighbor Embedding (t-SNE) visualization was used to assess
clustering structure. Spectral clustering revealed distinct decision patterns,
with the relevance-guided model showing the clearest separation between AD and
normal control (NC) cases. The t-SNE visualization confirmed that this model
aligned heatmap groupings with the underlying subject groups. Our findings
highlight the significant impact of preprocessing and training choices on deep
learning models trained on R2* maps, even with similar performance metrics.
Spectral clustering offers a structured method to identify classification
strategy differences, emphasizing the importance of explainability in medical
AI.