Yet Another ADNI Machine Learning Paper? Paving The Way Towards Fully-reproducible Research on Classification of Alzheimer's Disease
Jorge Samper-Gonz\'alez, Ninon Burgos, Sabrina Fontanella, Hugo, Bertin, Marie-Odile Habert, Stanley Durrleman, Theodoros Evgeniou, Olivier, Colliot

TL;DR
This paper introduces a reproducible framework for Alzheimer's disease classification using multimodal MRI and PET data from ADNI, enabling fair comparison of methods and improving research transparency.
Contribution
It provides a modular, open-source pipeline for reproducible AD classification experiments with standardized data processing and benchmarking tools.
Findings
Achieved up to 91% accuracy in AD vs CN classification.
Demonstrated the framework's flexibility with multiple classification techniques.
Enabled comprehensive benchmarking on large ADNI datasets.
Abstract
In recent years, the number of papers on Alzheimer's disease classification has increased dramatically, generating interesting methodological ideas on the use machine learning and feature extraction methods. However, practical impact is much more limited and, eventually, one could not tell which of these approaches are the most efficient. While over 90\% of these works make use of ADNI an objective comparison between approaches is impossible due to variations in the subjects included, image pre-processing, performance metrics and cross-validation procedures. In this paper, we propose a framework for reproducible classification experiments using multimodal MRI and PET data from ADNI. The core components are: 1) code to automatically convert the full ADNI database into BIDS format; 2) a modular architecture based on Nipype in order to easily plug-in different classification and feature…
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Taxonomy
MethodsSupport Vector Machine
