Reproducible evaluation of classification methods in Alzheimer's disease: framework and application to MRI and PET data
Jorge Samper-Gonz\'alez, Ninon Burgos, Simona Bottani, Sabrina, Fontanella, Pascal Lu, Arnaud Marcoux, Alexandre Routier, J\'er\'emy Guillon,, Michael Bacci, Junhao Wen, Anne Bertrand, Hugo Bertin, Marie-Odile Habert,, Stanley Durrleman, Theodoros Evgeniou

TL;DR
This paper introduces a standardized framework for reproducible evaluation of Alzheimer's disease classification methods using MRI and PET data, enabling objective comparison and benchmarking across multiple datasets and methods.
Contribution
It provides an open, modular framework for reproducible AD classification experiments, including data conversion, preprocessing, and evaluation, applied to large-scale datasets.
Findings
FDG PET outperforms T1 MRI in classification accuracy
Performance improves with larger training datasets
Linear SVM and L2-logistic regression perform similarly and better than random forests
Abstract
A large number of papers have introduced novel machine learning and feature extraction methods for automatic classification of AD. However, they are difficult to reproduce because key components of the validation are often not readily available. These components include selected participants and input data, image preprocessing and cross-validation procedures. The performance of the different approaches is also difficult to compare objectively. In particular, it is often difficult to assess which part of the method provides a real improvement, if any. We propose a framework for reproducible and objective classification experiments in AD using three publicly available datasets (ADNI, AIBL and OASIS). The framework comprises: i) automatic conversion of the three datasets into BIDS format, ii) a modular set of preprocessing pipelines, feature extraction and classification methods, together…
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