Enhancing Foreground Boundaries for Medical Image Segmentation
- URL: http://arxiv.org/abs/2005.14355v1
- Date: Fri, 29 May 2020 00:50:08 GMT
- Title: Enhancing Foreground Boundaries for Medical Image Segmentation
- Authors: Dong Yang, Holger Roth, Xiaosong Wang, Ziyue Xu, Andriy Myronenko,
Daguang Xu
- Abstract summary: We propose a boundary enhancement loss to enforce additional constraints on optimizing machine learning models.
Our experimental results validate that our loss function are better than, or at least comparable to, other state-of-the-art loss functions in terms of segmentation accuracy.
- Score: 13.954358685870886
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Object segmentation plays an important role in the modern medical image
analysis, which benefits clinical study, disease diagnosis, and surgery
planning. Given the various modalities of medical images, the automated or
semi-automated segmentation approaches have been used to identify and parse
organs, bones, tumors, and other regions-of-interest (ROI). However, these
contemporary segmentation approaches tend to fail to predict the boundary areas
of ROI, because of the fuzzy appearance contrast caused during the imaging
procedure. To further improve the segmentation quality of boundary areas, we
propose a boundary enhancement loss to enforce additional constraints on
optimizing machine learning models. The proposed loss function is
light-weighted and easy to implement without any pre- or post-processing. Our
experimental results validate that our loss function are better than, or at
least comparable to, other state-of-the-art loss functions in terms of
segmentation accuracy.
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