Source-free unsupervised domain adaptation for cross-modality abdominal multi-organ segmentation

11/24/2021
by   Jin Hong, et al.
0

It is valuable to achieve domain adaptation to transfer the learned knowledge from the source labeled CT dataset to the target unlabeled MR dataset for abdominal multi-organ segmentation. Meanwhile, it is highly desirable to avoid high annotation cost of target dataset and protect privacy of source dataset. Therefore, we propose an effective source-free unsupervised domain adaptation method for cross-modality abdominal multi-organ segmentation without accessing the source dataset. The process of the proposed framework includes two stages. At the first stage, the feature map statistics loss is used to align the distributions of the source and target features in the top segmentation network, and entropy minimization loss is used to encourage high confidence segmentations. The pseudo-labels outputted from the top segmentation network is used to guide the style compensation network to generate source-like images. The pseudo-labels outputted from the middle segmentation network is used to supervise the learning of the desired model (the bottom segmentation network). At the second stage, the circular learning and the pixel-adaptive mask refinement are used to further improve the performance of the desired model. With this approach, we achieve satisfactory performances on the segmentations of liver, right kidney, left kidney, and spleen with the dice similarity coefficients of 0.884, 0.891, 0.864, and 0.911, respectively. In addition, the proposed approach can be easily extended to the situation when there exists target annotation data. The performance improves from 0.888 to 0.922 in average dice similarity coefficient, close to the supervised learning (0.929), with only one labeled MR volume.

READ FULL TEXT

page 12

page 15

page 16

research
09/13/2021

Unsupervised domain adaptation for cross-modality liver segmentation via joint adversarial learning and self-learning

Liver segmentation on images acquired using computed tomography (CT) and...
research
12/04/2021

Unsupervised Adaptation of Semantic Segmentation Models without Source Data

We consider the novel problem of unsupervised domain adaptation of sourc...
research
02/01/2022

On the Benefits of Selectivity in Pseudo-Labeling for Unsupervised Multi-Source-Free Domain Adaptation

Due to privacy, storage, and other constraints, there is a growing need ...
research
10/10/2022

Unsupervised Domain Adaptive Fundus Image Segmentation with Few Labeled Source Data

Deep learning-based segmentation methods have been widely employed for a...
research
08/17/2023

Learning to In-paint: Domain Adaptive Shape Completion for 3D Organ Segmentation

We aim at incorporating explicit shape information into current 3D organ...
research
09/05/2020

User-Guided Domain Adaptation for Rapid Annotation from User Interactions: A Study on Pathological Liver Segmentation

Mask-based annotation of medical images, especially for 3D data, is a bo...
research
01/19/2021

Unsupervised Domain Adaptation from Axial to Short-Axis Multi-Slice Cardiac MR Images by Incorporating Pretrained Task Networks

Anisotropic multi-slice Cardiac Magnetic Resonance (CMR) Images are conv...

Please sign up or login with your details

Forgot password? Click here to reset