| Literature DB >> 33756304 |
Duo Wang1, Ming Li2, Nir Ben-Shlomo3, C Eduardo Corrales4, Yu Cheng5, Tao Zhang6, Jagadeesan Jayender7.
Abstract
In medical image segmentation tasks, deep learning-based models usually require densely and precisely annotated datasets to train, which are time-consuming and expensive to prepare. One possible solution is to train with the mixed-supervised dataset, where only a part of data is densely annotated with segmentation map and the rest is annotated with some weak form, such as bounding box. In this paper, we propose a novel network architecture called Mixed-Supervised Dual-Network (MSDN), which consists of two separate networks for the segmentation and detection tasks respectively, and a series of connection modules between the layers of the two networks. These connection modules are used to extract and transfer useful information from the detection task to help the segmentation task. We exploit a variant of a recently designed technique called 'Squeeze and Excitation' in the connection module to boost the information transfer between the two tasks. Compared with existing model with shared backbone and multiple branches, our model has flexible and trainable feature sharing fashion and thus is more effective and stable. We conduct experiments on 4 medical image segmentation datasets, and experiment results show that the proposed MSDN model outperforms multiple baselines.Entities:
Keywords: Dual-network; Medical image segmentation; Mixed-supervised; Squeeze-and-excitation
Mesh:
Year: 2021 PMID: 33756304 PMCID: PMC8084108 DOI: 10.1016/j.compmedimag.2020.101841
Source DB: PubMed Journal: Comput Med Imaging Graph ISSN: 0895-6111 Impact factor: 4.790