학술논문

Mapping individual differences in cortical architecture using multi-view representation learning
Document Type
Conference
Source
2020 International Joint Conference on Neural Networks (IJCNN) Neural Networks (IJCNN), 2020 International Joint Conference on. :1-8 Jul, 2020
Subject
Bioengineering
Computing and Processing
General Topics for Engineers
Power, Energy and Industry Applications
Robotics and Control Systems
Signal Processing and Analysis
Functional magnetic resonance imaging
Task analysis
Predictive models
Feature extraction
Manifolds
Standards
Brain modeling
individual differences
multi-view representation learning
multimodal deep autoencoder
trace regression
Language
ISSN
2161-4407
Abstract
In neuroscience, understanding inter-individual differences has recently emerged as a major challenge, for which functional magnetic resonance imaging (fMRI) has proven invaluable. For this, neuroscientists rely on basic methods such as univariate linear correlations between single brain features and a score that quantifies either the severity of a disease or the subject’s performance in a cognitive task. However, to this date, task-fMRI and resting-state fMRI have been exploited separately for this question, because of the lack of methods to effectively combine them. In this paper, we introduce a novel machine learning method which allows combining the activation- and connectivity-based information respectively measured through these two fMRI protocols to identify markers of individual differences in the functional organization of the brain. It combines a multi-view deep autoencoder which is designed to fuse the two fMRI modalities into a joint representation space within which a predictive model is trained to guess a scalar score that characterizes the patient. Our experimental results demonstrate the ability of the proposed method to outperform competitive approaches and to produce interpretable and biologically plausible results.