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Reproducible evaluation of classification methods in Alzheimer's disease: Framework and application to MRI and PET data
- Source :
- NeuroImage, NeuroImage, Elsevier, 2018, 183, pp.504-521. ⟨10.1016/j.neuroimage.2018.08.042⟩, NeuroImage, Elsevier, 2018, 〈10.1016/j.neuroimage.2018.08.042〉, Hyper Article en Ligne, arXiv.org e-Print Archive, NeuroImage, 2018, 183, pp.504-521. ⟨10.1016/j.neuroimage.2018.08.042⟩
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Abstract
- International audience; A large number of papers have introduced novel machine learning and feature extraction methods for automatic classification of Alzheimer's disease (AD). However, while the vast majority of these works use the public dataset ADNI for evaluation, they are difficult to reproduce because different 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 (e.g. preprocessing, feature extraction or classification algorithms) provides a real improvement, if any. In the present paper, 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 a standard format (BIDS); ii) a modular set of preprocessing pipelines, feature extraction and classification methods, together with an evaluation framework, that provide a baseline for benchmarking the different components. We demonstrate the use of the framework for a large-scale evaluation on 1960 participants using T1 MRI and FDG PET data. In this evaluation, we assess the influence of different modalities, preprocessing, feature types (regional or voxel-based features), classifiers, training set sizes and datasets. Performances were in line with the state-of-the-art. FDG PET outperformed T1 MRI for all classification tasks. No difference in performance was found for the use of different atlases, image smoothing, partial volume correction of FDG PET images, or feature type. Linear SVM and L2-logistic regression resulted in similar performance and both outperformed random forests. The classification performance increased along with the number of subjects used for training. Classifiers trained on ADNI generalized well to AIBL and OASIS. All the code of the framework and the experiments is publicly available: general-purpose tools have been integrated into the Clinica software (www.clinica.run) and the paper-specific code is available at: https://github.com/aramis-lab/AD-ML.
- Subjects :
- FOS: Computer and information sciences
Male
Computer Science - Machine Learning
Open-source
Computer science
Datasets as Topic
computer.software_genre
Machine Learning (cs.LG)
030218 nuclear medicine & medical imaging
Machine Learning
0302 clinical medicine
Voxel
Statistics - Machine Learning
Image Processing, Computer-Assisted
Aged, 80 and over
Training set
Middle Aged
Alzheimer's disease
Classification
Reproducibility
Random forest
Neurology
Feature (computer vision)
Data Interpretation, Statistical
[ SCCO.NEUR ] Cognitive science/Neuroscience
Female
Smoothing
Positron emission tomography
[ INFO ] Computer Science [cs]
Cognitive Neuroscience
Feature extraction
Machine Learning (stat.ML)
Neuroimaging
[INFO] Computer Science [cs]
Set (abstract data type)
03 medical and health sciences
Atlases as Topic
Magnetic resonance imaging
Alzheimer Disease
Fluorodeoxyglucose F18
Humans
[INFO]Computer Science [cs]
Aged
business.industry
[SCCO.NEUR]Cognitive science/Neuroscience
[SCCO.NEUR] Cognitive science/Neuroscience
Pattern recognition
Statistical classification
Positron-Emission Tomography
Artificial intelligence
Radiopharmaceuticals
business
computer
030217 neurology & neurosurgery
Subjects
Details
- Language :
- English
- ISSN :
- 10538119 and 10959572
- Volume :
- 183
- Database :
- OpenAIRE
- Journal :
- NeuroImage
- Accession number :
- edsair.doi.dedup.....b3ce359c1704faf88d657d789ada7458
- Full Text :
- https://doi.org/10.1016/j.neuroimage.2018.08.042