Hierarchical Tissue-Based MRI Features with Explainable Machine Learning for Alzheimer’s Disease Classification

Authors

  • Muhammed B Ceesay Department of Physics, Faculty of Mathematics and Natural Sciences, Universitas Indonesia, Depok, 16424, Indonesia
  • Adhi Harmoko Saputro Department of Physics, Faculty of Mathematics and Natural Sciences, Universitas Indonesia, Depok, 16424, Indonesia https://orcid.org/0000-0001-6651-0669
  • Syahril Siregar Department of Physics, Faculty of Mathematics and Natural Sciences, Universitas Indonesia, Depok, 16424, Indonesia https://orcid.org/0000-0001-7976-5564

DOI:

https://doi.org/10.25077/jif.18.1.93-104.2026

Keywords:

Alzheimer’s disease, Cerebrospinal fluid, Hierarchical tissue atrophy, Machine learning, MRI biomarkers

Abstract

Alzheimer’s disease (AD) is a progressive neurodegenerative disorder characterized by multiscale structural brain degeneration. Many MRI-based machine learning approaches rely on coarse volumetric measures or black-box models with limited anatomical interpretability. This study aims to localize anatomically meaningful brain regions that discriminate AD from cognitively normal (CN) subjects using a hierarchical tissue-based (HTB) MRI framework. The method models gray matter (GM), white matter (WM), and cerebrospinal fluid (CSF) volumetric changes at lobar, gyral, and 246 fine-grained subregions defined by the Brainnetome atlas. T1-weighted MRI scans from 454 participants (227 AD, 227 CN) obtained from ADNI and MIRIAD were preprocessed using AC-PC alignment, N4 bias correction, skull stripping, and nonlinear registration to MNI space. A total of 561 HTB features were extracted to train Random Forest and XGBoost classifiers using five-fold stratified cross-validation with Bayesian hyperparameter optimization. The XGBoost model achieved the best performance (Accuracy: 79.74%, ROC-AUC: 85.07%), comparable to recent atlas-based MRI classification studies, while providing improved multiscale anatomical interpretability. SHAP analysis revealed consistent hierarchical atrophy patterns in hippocampal subregions, medial amygdala, and areas 35/36 and 28/34, demonstrating that hierarchical anatomical modeling with explainable machine learning enables transparent localization of clinically meaningful AD biomarkers without reliance on black-box architectures.

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Published

2026-03-01

How to Cite

Ceesay, M. B., Saputro, A. H., & Siregar, S. (2026). Hierarchical Tissue-Based MRI Features with Explainable Machine Learning for Alzheimer’s Disease Classification. JURNAL ILMU FISIKA | UNIVERSITAS ANDALAS, 18(1), 93–104. https://doi.org/10.25077/jif.18.1.93-104.2026

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