Cross-Domain Medical Image Translation by Shared Latent Gaussian Mixture Model

07/14/2020
by   Yingying Zhu, et al.
1

Current deep learning based segmentation models often generalize poorly between domains due to insufficient training data. In real-world clinical applications, cross-domain image analysis tools are in high demand since medical images from different domains are often needed to achieve a precise diagnosis. An important example in radiology is generalizing from non-contrast CT to contrast enhanced CTs. Contrast enhanced CT scans at different phases are used to enhance certain pathologies or organs. Many existing cross-domain image-to-image translation models have been shown to improve cross-domain segmentation of large organs. However, such models lack the ability to preserve fine structures during the translation process, which is significant for many clinical applications, such as segmenting small calcified plaques in the aorta and pelvic arteries. In order to preserve fine structures during medical image translation, we propose a patch-based model using shared latent variables from a Gaussian mixture model. We compare our image translation framework to several state-of-the-art methods on cross-domain image translation and show our model does a better job preserving fine structures. The superior performance of our model is verified by performing two tasks with the translated images - detection and segmentation of aortic plaques and pancreas segmentation. We expect the utility of our framework will extend to other problems beyond segmentation due to the improved quality of the generated images and enhanced ability to preserve small structures.

READ FULL TEXT

page 2

page 7

research
05/22/2020

Image Translation by Latent Union of Subspaces for Cross-Domain Plaque Detection

Calcified plaque in the aorta and pelvic arteries is associated with cor...
research
08/07/2023

Cooperative Colorization: Exploring Latent Cross-Domain Priors for NIR Image Spectrum Translation

Near-infrared (NIR) image spectrum translation is a challenging problem ...
research
05/24/2018

Image-to-image translation for cross-domain disentanglement

Deep image translation methods have recently shown excellent results, ou...
research
03/05/2021

Self-Attentive Spatial Adaptive Normalization for Cross-Modality Domain Adaptation

Despite the successes of deep neural networks on many challenging vision...
research
09/05/2018

A Unified Feature Disentangler for Multi-Domain Image Translation and Manipulation

We present a novel and unified deep learning framework which is capable ...
research
06/17/2018

MedGAN: Medical Image Translation using GANs

Image-to-image translation is considered a next frontier in the field of...
research
05/10/2022

Disentangling A Single MR Modality

Disentangling anatomical and contrast information from medical images ha...

Please sign up or login with your details

Forgot password? Click here to reset