Learning from partially labeled data for multi-organ and tumor segmentation

11/13/2022
by   Yutong Xie, et al.
0

Medical image benchmarks for the segmentation of organs and tumors suffer from the partially labeling issue due to its intensive cost of labor and expertise. Current mainstream approaches follow the practice of one network solving one task. With this pipeline, not only the performance is limited by the typically small dataset of a single task, but also the computation cost linearly increases with the number of tasks. To address this, we propose a Transformer based dynamic on-demand network (TransDoDNet) that learns to segment organs and tumors on multiple partially labeled datasets. Specifically, TransDoDNet has a hybrid backbone that is composed of the convolutional neural network and Transformer. A dynamic head enables the network to accomplish multiple segmentation tasks flexibly. Unlike existing approaches that fix kernels after training, the kernels in the dynamic head are generated adaptively by the Transformer, which employs the self-attention mechanism to model long-range organ-wise dependencies and decodes the organ embedding that can represent each organ. We create a large-scale partially labeled Multi-Organ and Tumor Segmentation benchmark, termed MOTS, and demonstrate the superior performance of our TransDoDNet over other competitors on seven organ and tumor segmentation tasks. This study also provides a general 3D medical image segmentation model, which has been pre-trained on the large-scale MOTS benchmark and has demonstrated advanced performance over BYOL, the current predominant self-supervised learning method. Code will be available at <https://git.io/DoDNet>.

READ FULL TEXT

page 2

page 3

page 4

page 10

page 11

page 12

research
11/20/2020

DoDNet: Learning to segment multi-organ and tumors from multiple partially labeled datasets

Due to the intensive cost of labor and expertise in annotating 3D medica...
research
02/21/2021

Medical Transformer: Gated Axial-Attention for Medical Image Segmentation

Over the past decade, Deep Convolutional Neural Networks have been widel...
research
03/04/2021

CoTr: Efficiently Bridging CNN and Transformer for 3D Medical Image Segmentation

Convolutional neural networks (CNNs) have been the de facto standard for...
research
02/28/2022

A Multi-scale Transformer for Medical Image Segmentation: Architectures, Model Efficiency, and Benchmarks

Transformers have emerged to be successful in a number of natural langua...
research
12/21/2022

Investigation of Network Architecture for Multimodal Head-and-Neck Tumor Segmentation

Inspired by the recent success of Transformers for Natural Language Proc...
research
12/23/2021

Omni-Seg: A Single Dynamic Network for Multi-label Renal Pathology Image Segmentation using Partially Labeled Data

Computer-assisted quantitative analysis on Giga-pixel pathology images h...
research
03/04/2022

Universal Segmentation of 33 Anatomies

In the paper, we present an approach for learning a single model that un...

Please sign up or login with your details

Forgot password? Click here to reset