Towards to Robust and Generalized Medical Image Segmentation Framework
- URL: http://arxiv.org/abs/2108.03823v1
- Date: Mon, 9 Aug 2021 05:58:49 GMT
- Title: Towards to Robust and Generalized Medical Image Segmentation Framework
- Authors: Yurong Chen
- Abstract summary: We propose a novel two-stage framework for robust generalized segmentation.
In particular, an unsupervised Tile-wise AutoEncoder (T-AE) pretraining architecture is coined to learn meaningful representation.
Experiments of lung segmentation on multi chest X-ray datasets are conducted.
- Score: 17.24628770042803
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: To mitigate the radiologist's workload, computer-aided diagnosis with the
capability to review and analyze medical images is gradually deployed. Deep
learning-based region of interest segmentation is among the most exciting use
cases. However, this paradigm is restricted in real-world clinical applications
due to poor robustness and generalization. The issue is more sinister with a
lack of training data. In this paper, we address the challenge from the
representation learning point of view. We investigate that the collapsed
representations, as one of the main reasons which caused poor robustness and
generalization, could be avoided through transfer learning. Therefore, we
propose a novel two-stage framework for robust generalized segmentation. In
particular, an unsupervised Tile-wise AutoEncoder (T-AE) pretraining
architecture is coined to learn meaningful representation for improving the
generalization and robustness of the downstream tasks. Furthermore, the learned
knowledge is transferred to the segmentation benchmark. Coupled with an image
reconstruction network, the representation keeps to be decoded, encouraging the
model to capture more semantic features. Experiments of lung segmentation on
multi chest X-ray datasets are conducted. Empirically, the related experimental
results demonstrate the superior generalization capability of the proposed
framework on unseen domains in terms of high performance and robustness to
corruption, especially under the scenario of the limited training data.
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