Alzheimer’s Disease (AD), affecting over 55 million people globally, demands reliable diagnostic tools. Single-model approaches using CNNs and traditional ML face critical limitations. This study proposes two frameworks: a stacking-CNN ensemble (VGG-16, ResNet-101, DenseNet-121) and two voting ML ensembles (Voting[all]: KNN, RF, SVC, LR, XGBoost; Voting[few]: KNN, RF, XGBoost). Evaluated on 6,400 MRIs, Voting[few] achieved the highest classification metrics (97.8% accuracy; 0.984 MCC; 93.8% F1macro), outperforming individual CNNs, validated through Friedman-Nemenyi tests. Results suggest, in this context, that simpler ML models might better capture the inherent characteristics of MRI data for AD diagnosis.
Massimo Filippi, Federica Agosta, Giovanni B. Frisoni, Nicola De Stefano, Alberto Bizzi, Marco Bozzali, Andrea Falini, Maria A. Rocca, Sandro Sorbi, Carlo Caltagirone, Gioacchino Tedeschi
Loredana Storelli, Matteo Azzimonti, Mor Gueye, Paolo Preziosa, Carmen Vizzino, Gioacchino Tedeschi, Nicola De Stefano, Patrizià Pantano, Massimo Filippi, Maria A. Rocca
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