Towards continual learning in medical imaging

11/06/2018
by   Chaitanya Baweja, et al.
16

This work investigates continual learning of two segmentation tasks in brain MRI with neural networks. To explore in this context the capabilities of current methods for countering catastrophic forgetting of the first task when a new one is learned, we investigate elastic weight consolidation, a recently proposed method based on Fisher information, originally evaluated on reinforcement learning of Atari games. We use it to sequentially learn segmentation of normal brain structures and then segmentation of white matter lesions. Our findings show this recent method reduces catastrophic forgetting, while large room for improvement exists in these challenging settings for continual learning.

READ FULL TEXT
research
05/10/2021

Elastic Weight Consolidation (EWC): Nuts and Bolts

In this report, we present a theoretical support of the continual learni...
research
07/19/2021

Adversarial Continual Learning for Multi-Domain Hippocampal Segmentation

Deep learning for medical imaging suffers from temporal and privacy-rela...
research
04/30/2020

Importance Driven Continual Learning for Segmentation Across Domains

The ability of neural networks to continuously learn and adapt to new ta...
research
10/27/2022

Segmentation of Multiple Sclerosis Lesions across Hospitals: Learn Continually or Train from Scratch?

Segmentation of Multiple Sclerosis (MS) lesions is a challenging problem...
research
03/06/2019

Using World Models for Pseudo-Rehearsal in Continual Learning

The utility of learning a dynamics/world model of the environment in rei...
research
05/28/2018

Parallel Weight Consolidation: A Brain Segmentation Case Study

Collecting the large datasets needed to train deep neural networks can b...
research
02/09/2022

A Neural Network Model of Continual Learning with Cognitive Control

Neural networks struggle in continual learning settings from catastrophi...

Please sign up or login with your details

Forgot password? Click here to reset