| Literature DB >> 32062155 |
Tao He1, Junjie Hu2, Ying Song3, Jixiang Guo2, Zhang Yi4.
Abstract
Automatic segmentation of organs at risk is crucial to aid diagnoses and remains a challenging task in medical image analysis domain. To perform the segmentation, we use multi-task learning (MTL) to accurately determine the contour of organs at risk in CT images. We train an encoder-decoder network for two tasks in parallel. The main task is the segmentation of organs, entailing a pixel-level classification in the CT images, and the auxiliary task is the multi-label classification of organs, entailing an image-level multi-label classification of the CT images. To boost the performance of the multi-label classification, we propose a weighted mean cross entropy loss function for the network training, where the weights are the global conditional probability between two organs. Based on MTL, we optimize the false positive filtering (FPF) algorithm to decrease the number of falsely segmented organ pixels in the CT images. Specifically, we propose a dynamic threshold selection (DTS) strategy to prevent true positive rates from decreasing when using the FPF algorithm. We validate these methods on the public ISBI 2019 segmentation of thoracic organs at risk (SegTHOR) challenge dataset and a private medical organ dataset. The experimental results show that networks using our proposed methods outperform basic encoder-decoder networks without increasing the training time complexity.Keywords: Encoder-decoder networks; Label dependence; Multi-label classification; Segmentation of organs at risk
Mesh:
Year: 2020 PMID: 32062155 DOI: 10.1016/j.media.2020.101666
Source DB: PubMed Journal: Med Image Anal ISSN: 1361-8415 Impact factor: 8.545