Contrastive Graph Learning for Population-based fMRI Classification

03/26/2022
by   Xuesong Wang, et al.
0

Contrastive self-supervised learning has recently benefited fMRI classification with inductive biases. Its weak label reliance prevents overfitting on small medical datasets and tackles the high intraclass variances. Nonetheless, existing contrastive methods generate resemblant pairs only on pixel-level features of 3D medical images, while the functional connectivity that reveals critical cognitive information is under-explored. Additionally, existing methods predict labels on individual contrastive representation without recognizing neighbouring information in the patient group, whereas interpatient contrast can act as a similarity measure suitable for population-based classification. We hereby proposed contrastive functional connectivity graph learning for population-based fMRI classification. Representations on the functional connectivity graphs are "repelled" for heterogeneous patient pairs meanwhile homogeneous pairs "attract" each other. Then a dynamic population graph that strengthens the connections between similar patients is updated for classification. Experiments on a multi-site dataset ADHD200 validate the superiority of the proposed method on various metrics. We initially visualize the population relationships and exploit potential subtypes.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/17/2022

GATE: Graph CCA for Temporal SElf-supervised Learning for Label-efficient fMRI Analysis

In this work, we focus on the challenging task, neuro-disease classifica...
research
01/10/2022

Cross-view Self-Supervised Learning on Heterogeneous Graph Neural Network via Bootstrapping

Heterogeneous graph neural networks can represent information of heterog...
research
09/13/2020

Contrastive Self-supervised Learning for Graph Classification

Graph classification is a widely studied problem and has broad applicati...
research
02/21/2021

MedAug: Contrastive learning leveraging patient metadata improves representations for chest X-ray interpretation

Self-supervised contrastive learning between pairs of multiple views of ...
research
08/04/2022

Metadata-enhanced contrastive learning from retinal optical coherence tomography images

Supervised deep learning algorithms hold great potential to automate scr...
research
02/22/2022

Robust Hierarchical Patterns for identifying MDD patients: A Multisite Study

Many supervised machine learning frameworks have been proposed for disea...
research
12/27/2021

MHATC: Autism Spectrum Disorder identification utilizing multi-head attention encoder along with temporal consolidation modules

Resting-state fMRI is commonly used for diagnosing Autism Spectrum Disor...

Please sign up or login with your details

Forgot password? Click here to reset