Redundancy Reduction in Semantic Segmentation of 3D Brain Tumor MRIs
- URL: http://arxiv.org/abs/2111.00742v1
- Date: Mon, 1 Nov 2021 07:39:06 GMT
- Title: Redundancy Reduction in Semantic Segmentation of 3D Brain Tumor MRIs
- Authors: Md Mahfuzur Rahman Siddiquee, Andriy Myronenko
- Abstract summary: This work is a modification of network training process that minimizes redundancy under perturbations.
We evaluated the method on BraTS 2021 validation board, and achieved 0.8600, 0.8868 and 0.9265 average dice for enhanced tumor core, tumor core and whole tumor.
Our team (NVAUTO) submission was the top performing in terms of ET and TC scores and within top 10 performing teams in terms of WT scores.
- Score: 2.946960157989204
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Another year of the multimodal brain tumor segmentation challenge (BraTS)
2021 provides an even larger dataset to facilitate collaboration and research
of brain tumor segmentation methods, which are necessary for disease analysis
and treatment planning. A large dataset size of BraTS 2021 and the advent of
modern GPUs provide a better opportunity for deep-learning based approaches to
learn tumor representation from the data. In this work, we maintained an
encoder-decoder based segmentation network, but focused on a modification of
network training process that minimizes redundancy under perturbations. Given a
set trained networks, we further introduce a confidence based ensembling
techniques to further improve the performance. We evaluated the method on BraTS
2021 validation board, and achieved 0.8600, 0.8868 and 0.9265 average dice for
enhanced tumor core, tumor core and whole tumor, respectively. Our team
(NVAUTO) submission was the top performing in terms of ET and TC scores and
within top 10 performing teams in terms of WT scores.
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