Abstract

Efficient organ segmentation is the precondition of various quantitative analysis. Segmenting the pancreas from abdominal CT images is a challenging task because of its high anatomical variability in shape, size and location. What’s more, the pancreas only occupies a small portion in abdomen, and the organ border is very fuzzy. All these factors make the segmentation methods of other organs less suitable for pancreas. In this work, we propose a Markov Chain Monte Carlo (MCMC) guided convolutional neural network (CNN) approach, in order to handle such difficulties in morphological and photometric variabilities. Specifically, the proposed method mainly consists of three steps: First, registration is carried out to mitigate the body weight and location variability. Then, an MCMC scheme is designed to guide the adaptive selection of 3D patches, which are fed to the CNN for training. At the same time, the pancreas distribution is also learned for subsequent segmentation. Eventually, the same MCMC process guides the segmentation process with patch-wise predictions fused using a Bayesian voting scheme. This method is evaluated on the NIH pancreatic dataset including 82 abdominal contrast-enhanced CT volumes. We have achieved a competitive result of 78.13% Dice Similarity Coefficient value and 82.65% Recall value in testing data.

Highlights

  • Accurate organ segmentation is the prerequisite of many subsequent computer based analysis

  • Et al (2017); Fu et al (2018); Roth et al (2015); Farag et al (2017); Roth et al (2016a, 2018). This is mainly caused by several aspects: 1) the shape, size and position of the pancreas vary greatly among different patients in abdomen; 2) the contrast between the pancreas and surrounding tissue is weak; 3) pancreas is relatively soft and easy to be pushed by surrounding organs, which could result in large deformation; 4)pancreas occupies a very small portion in the CT image

  • The proposed aproach mainly consists of three parts: First, it locates pancreas in the abdominal CT image by image registraion, we get a irregular candidate region with a large number of background pixels being rejected and almost all foreground pixels being preserved; the Markov Chain Monte Carlo (MCMC) samples guide the training of the 3D convolutionation neural network (CNN) to classify pixels in the candidate region; in the segmentation, the MCMC guides the trained network to perform the fused segmentation across all the image domain

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Summary

Introduction

Accurate organ segmentation is the prerequisite of many subsequent computer based analysis. Et al (2017); Fu et al (2018); Roth et al (2015); Farag et al (2017); Roth et al (2016a, 2018) This is mainly caused by several aspects: 1) the shape, size and position of the pancreas vary greatly among different patients in abdomen; 2) the contrast between the pancreas and surrounding tissue is weak; 3) pancreas is relatively soft and easy to be pushed by surrounding organs, which could result in large deformation; 4)pancreas occupies a very small portion in the CT image. All these factors make accurate segmentation still a challenging task

Related works
Contribution of this paper
Method
Joint learning of appearence and location
MCMC sampling guided training with 3D CNN
Prior guided segmentation
Data Preprocessing
Experiments
Parameter optimization
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