Single Slice Thigh CT Muscle Group Segmentation with Domain Adaptation
and Self-Training
- URL: http://arxiv.org/abs/2212.00059v1
- Date: Wed, 30 Nov 2022 19:04:17 GMT
- Title: Single Slice Thigh CT Muscle Group Segmentation with Domain Adaptation
and Self-Training
- Authors: Qi Yang, Xin Yu, Ho Hin Lee, Leon Y. Cai, Kaiwen Xu, Shunxing Bao,
Yuankai Huo, Ann Zenobia Moore, Sokratis Makrogiannis, Luigi Ferrucci,
Bennett A. Landman
- Abstract summary: We propose an unsupervised domain adaptation pipeline with self-training to transfer labels from 3D MR to single CT slice.
On 152 withheld single CT thigh images, the proposed pipeline achieved a mean Dice of 0.888(0.041) across all muscle groups.
- Score: 19.86796625044402
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Objective: Thigh muscle group segmentation is important for assessment of
muscle anatomy, metabolic disease and aging. Many efforts have been put into
quantifying muscle tissues with magnetic resonance (MR) imaging including
manual annotation of individual muscles. However, leveraging publicly available
annotations in MR images to achieve muscle group segmentation on single slice
computed tomography (CT) thigh images is challenging.
Method: We propose an unsupervised domain adaptation pipeline with
self-training to transfer labels from 3D MR to single CT slice. First, we
transform the image appearance from MR to CT with CycleGAN and feed the
synthesized CT images to a segmenter simultaneously. Single CT slices are
divided into hard and easy cohorts based on the entropy of pseudo labels
inferenced by the segmenter. After refining easy cohort pseudo labels based on
anatomical assumption, self-training with easy and hard splits is applied to
fine tune the segmenter.
Results: On 152 withheld single CT thigh images, the proposed pipeline
achieved a mean Dice of 0.888(0.041) across all muscle groups including
sartorius, hamstrings, quadriceps femoris and gracilis. muscles
Conclusion: To our best knowledge, this is the first pipeline to achieve
thigh imaging domain adaptation from MR to CT. The proposed pipeline is
effective and robust in extracting muscle groups on 2D single slice CT thigh
images.The container is available for public use at
https://github.com/MASILab/DA_CT_muscle_seg
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