From Connectomic to Task-evoked Fingerprints: Individualized Prediction of Task Contrasts from Resting-state Functional Connectivity

08/07/2020
by   Gia H. Ngo, et al.
43

Resting-state functional MRI (rsfMRI) yields functional connectomes that can serve as cognitive fingerprints of individuals. Connectomic fingerprints have proven useful in many machine learning tasks, such as predicting subject-specific behavioral traits or task-evoked activity. In this work, we propose a surface-based convolutional neural network (BrainSurfCNN) model to predict individual task contrasts from their resting-state fingerprints. We introduce a reconstructive-contrastive loss that enforces subject-specificity of model outputs while minimizing predictive error. The proposed approach significantly improves the accuracy of predicted contrasts over a well-established baseline. Furthermore, BrainSurfCNN's prediction also surpasses test-retest benchmark in a subject identification task.

READ FULL TEXT

page 7

page 11

research
11/14/2022

High-Accuracy Machine Learning Techniques for Functional Connectome Fingerprinting and Cognitive State Decoding

The human brain is a complex network comprised of functionally and anato...
research
12/06/2021

Learning Personal Representations from fMRIby Predicting Neurofeedback Performance

We present a deep neural network method for learning a personal represen...
research
07/20/2017

Resting state fMRI functional connectivity-based classification using a convolutional neural network architecture

Machine learning techniques have become increasingly popular in the fiel...
research
12/21/2021

fMRI Neurofeedback Learning Patterns are Predictive of Personal and Clinical Traits

We obtain a personal signature of a person's learning progress in a self...

Please sign up or login with your details

Forgot password? Click here to reset