Universal Segmentation of 33 Anatomies
Pengbo Liu, Yang Deng, Ce Wang, Yuan Hui, Qian Li, Jun Li, Shiwei Luo,, Mengke Sun, Quan Quan, Shuxin Yang, You Hao, Honghu Xiao, Chunpeng Zhao,, Xinbao Wu, and S. Kevin Zhou

TL;DR
This paper introduces a universal segmentation model for 33 anatomical structures in medical images, leveraging multiple partially labeled datasets and a novel cross-patch transformer to improve contextual understanding and generalization.
Contribution
It presents a new approach to train a single model across multiple datasets with partial labels and introduces a large-scale vertebra dataset, along with a cross-patch transformer for better context integration.
Findings
Successful training on 7 datasets with 2,800 volumes
Achieved strong generalization on open-source datasets
Enhanced segmentation accuracy with the cross-patch transformer
Abstract
In the paper, we present an approach for learning a single model that universally segments 33 anatomical structures, including vertebrae, pelvic bones, and abdominal organs. Our model building has to address the following challenges. Firstly, while it is ideal to learn such a model from a large-scale, fully-annotated dataset, it is practically hard to curate such a dataset. Thus, we resort to learn from a union of multiple datasets, with each dataset containing the images that are partially labeled. Secondly, along the line of partial labelling, we contribute an open-source, large-scale vertebra segmentation dataset for the benefit of spine analysis community, CTSpine1K, boasting over 1,000 3D volumes and over 11K annotated vertebrae. Thirdly, in a 3D medical image segmentation task, due to the limitation of GPU memory, we always train a model using cropped patches as inputs instead a…
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Taxonomy
TopicsMedical Imaging and Analysis · Spine and Intervertebral Disc Pathology · Spinal Fractures and Fixation Techniques
