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Contrastive Learning with Continuous Proxy Meta-Data for 3D MRI Classification

Authors :
Dufumier, Benoit
Gori, Pietro
Victor, Julie
Grigis, Antoine
Wessa, Michel
Brambilla, Paolo
Favre, Pauline
Polosan, Mircea
McDonald, Colm
Piguet, Camille
Duchesnay, Edouard
Institut Polytechnique de Paris (IP Paris)
Département Images, Données, Signal (IDS)
Télécom ParisTech
Image, Modélisation, Analyse, GEométrie, Synthèse (IMAGES)
Laboratoire Traitement et Communication de l'Information (LTCI)
Institut Mines-Télécom [Paris] (IMT)-Télécom Paris-Institut Mines-Télécom [Paris] (IMT)-Télécom Paris
Service NEUROSPIN (NEUROSPIN)
Université Paris-Saclay-Direction de Recherche Fondamentale (CEA) (DRF (CEA))
Commissariat à l'énergie atomique et aux énergies alternatives (CEA)-Commissariat à l'énergie atomique et aux énergies alternatives (CEA)
Department of Diagnostics and Public Health [Verona] (UNIVR | DDSP)
Università degli studi di Verona = University of Verona (UNIVR)
INSERM U836, équipe 11, Fonctions cérébrales et neuromodulation
Service de Psychiatrie
CHU Grenoble-CHU Grenoble
Department of Life Sciences
Imperial College London
Université de Genève = University of Geneva (UNIGE)
Direction de Recherche Fondamentale (CEA) (DRF (CEA))
Commissariat à l'énergie atomique et aux énergies alternatives (CEA)-Commissariat à l'énergie atomique et aux énergies alternatives (CEA)-Université Paris-Saclay
University of Verona (UNIVR)
Université de Genève (UNIGE)
Source :
MICCAI, MICCAI, Sep 2021, Strasbourg (virtuel), France
Publication Year :
2021
Publisher :
HAL CCSD, 2021.

Abstract

Traditional supervised learning with deep neural networks requires a tremendous amount of labelled data to converge to a good solution. For 3D medical images, it is often impractical to build a large homogeneous annotated dataset for a specific pathology. Self-supervised methods offer a new way to learn a representation of the images in an unsupervised manner with a neural network. In particular, contrastive learning has shown great promises by (almost) matching the performance of fully-supervised CNN on vision tasks. Nonetheless, this method does not take advantage of available meta-data, such as participant's age, viewed as prior knowledge. Here, we propose to leverage continuous proxy metadata, in the contrastive learning framework, by introducing a new loss called y-Aware InfoNCE loss. Specifically, we improve the positive sampling during pre-training by adding more positive examples with similar proxy meta-data with the anchor, assuming they share similar discriminative semantic features.With our method, a 3D CNN model pre-trained on $10^4$ multi-site healthy brain MRI scans can extract relevant features for three classification tasks: schizophrenia, bipolar diagnosis and Alzheimer's detection. When fine-tuned, it also outperforms 3D CNN trained from scratch on these tasks, as well as state-of-the-art self-supervised methods. Our code is made publicly available here.<br />Comment: MICCAI 2021

Details

Language :
English
Database :
OpenAIRE
Journal :
MICCAI, MICCAI, Sep 2021, Strasbourg (virtuel), France
Accession number :
edsair.doi.dedup.....ceba855b6b6edf28f790268fc0d00ad6