Local Spatiotemporal Representation Learning for Longitudinally-consistent Neuroimage Analysis

06/09/2022
by   Mengwei Ren, et al.
0

Recent self-supervised advances in medical computer vision exploit global and local anatomical self-similarity for pretraining prior to downstream tasks such as segmentation. However, current methods assume i.i.d. image acquisition, which is invalid in clinical study designs where follow-up longitudinal scans track subject-specific temporal changes. Further, existing self-supervised methods for medically-relevant image-to-image architectures exploit only spatial or temporal self-similarity and only do so via a loss applied at a single image-scale, with naive multi-scale spatiotemporal extensions collapsing to degenerate solutions. To these ends, this paper makes two contributions: (1) It presents a local and multi-scale spatiotemporal representation learning method for image-to-image architectures trained on longitudinal images. It exploits the spatiotemporal self-similarity of learned multi-scale intra-subject features for pretraining and develops several feature-wise regularizations that avoid collapsed identity representations; (2) During finetuning, it proposes a surprisingly simple self-supervised segmentation consistency regularization to exploit intra-subject correlation. Benchmarked in the one-shot segmentation setting, the proposed framework outperforms both well-tuned randomly-initialized baselines and current self-supervised techniques designed for both i.i.d. and longitudinal datasets. These improvements are demonstrated across both longitudinal neurodegenerative adult MRI and developing infant brain MRI and yield both higher performance and longitudinal consistency.

READ FULL TEXT

page 2

page 4

page 6

page 15

page 20

page 21

page 27

research
06/15/2023

Advancing Volumetric Medical Image Segmentation via Global-Local Masked Autoencoder

Masked autoencoder (MAE) has emerged as a promising self-supervised pret...
research
10/17/2021

Self-Supervised Learning for Binary Networks by Joint Classifier Training

Despite the great success of self-supervised learning with large floatin...
research
04/08/2022

Spatiotemporal Augmentation on Selective Frequencies for Video Representation Learning

Recent self-supervised video representation learning methods focus on ma...
research
07/15/2020

Self-Supervised Representation Learning for Detection of ACL Tear Injury in Knee MRI

The success and efficiency of Deep Learning based models for computer vi...
research
02/10/2022

Using Navigational Information to Learn Visual Representations

Children learn to build a visual representation of the world from unsupe...
research
12/16/2022

Improving self-supervised representation learning via sequential adversarial masking

Recent methods in self-supervised learning have demonstrated that maskin...
research
10/07/2022

Scalable Self-Supervised Representation Learning from Spatiotemporal Motion Trajectories for Multimodal Computer Vision

Self-supervised representation learning techniques utilize large dataset...

Please sign up or login with your details

Forgot password? Click here to reset