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AttentionAnatomy: A unified framework for whole-body organs at risk segmentation using multiple partially annotated datasets

Authors :
Yong Liu
Narisu Bai
Yang Liu
Xiaohui Xie
Shanlin Sun
Qian Huang
Xuming Chen
Hao Tang
Source :
ISBI
Publication Year :
2020

Abstract

Organs-at-risk (OAR) delineation in computed tomography (CT) is an important step in Radiation Therapy (RT) planning. Recently, deep learning based methods for OAR delineation have been proposed and applied in clinical practice for separate regions of the human body (head and neck, thorax, and abdomen). However, there are few researches regarding the end-to-end whole-body OARs delineation because the existing datasets are mostly partially or incompletely annotated for such task. In this paper, our proposed end-to-end convolutional neural network model, called \textbf{AttentionAnatomy}, can be jointly trained with three partially annotated datasets, segmenting OARs from whole body. Our main contributions are: 1) an attention module implicitly guided by body region label to modulate the segmentation branch output; 2) a prediction re-calibration operation, exploiting prior information of the input images, to handle partial-annotation(HPA) problem; 3) a new hybrid loss function combining batch Dice loss and spatially balanced focal loss to alleviate the organ size imbalance problem. Experimental results of our proposed framework presented significant improvements in both S{\o}rensen-Dice coefficient (DSC) and 95\% Hausdorff distance compared to the baseline model.<br />Comment: accepted by ISBI 2020 (4 pages, 2 figures)

Details

Language :
English
Database :
OpenAIRE
Journal :
ISBI
Accession number :
edsair.doi.dedup.....b2a015938ee5d75bb23ff7057224844a