Kidney segmentation using 3D U-Net localized with Expectation
Maximization
- URL: http://arxiv.org/abs/2003.09075v1
- Date: Fri, 20 Mar 2020 02:38:32 GMT
- Title: Kidney segmentation using 3D U-Net localized with Expectation
Maximization
- Authors: Omid Bazgir, Kai Barck, Richard A.D. Carano, Robby M. Weimer, Luke Xie
- Abstract summary: convolutional neural networks have been used to segment organs from large biomedical 3D images.
We propose a new framework to address some of the challenges for segmenting 3D MRI.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Kidney volume is greatly affected in several renal diseases. Precise and
automatic segmentation of the kidney can help determine kidney size and
evaluate renal function. Fully convolutional neural networks have been used to
segment organs from large biomedical 3D images. While these networks
demonstrate state-of-the-art segmentation performances, they do not immediately
translate to small foreground objects, small sample sizes, and anisotropic
resolution in MRI datasets. In this paper we propose a new framework to address
some of the challenges for segmenting 3D MRI. These methods were implemented on
preclinical MRI for segmenting kidneys in an animal model of lupus nephritis.
Our implementation strategy is twofold: 1) to utilize additional MRI diffusion
images to detect the general kidney area, and 2) to reduce the 3D U-Net kernels
to handle small sample sizes. Using this approach, a Dice similarity
coefficient of 0.88 was achieved with a limited dataset of n=196. This
segmentation strategy with careful optimization can be applied to various renal
injuries or other organ systems.
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