Literature DB >> 21303741

A probabilistic model for automatic segmentation of the esophagus in 3-D CT scans.

Johannes Feulner1, S Kevin Zhou, Matthias Hammon, Sascha Seifert, Martin Huber, Dorin Comaniciu, Joachim Hornegger, Alexander Cavallaro.   

Abstract

Being able to segment the esophagus without user interaction from 3-D CT data is of high value to radiologists during oncological examinations of the mediastinum. The segmentation can serve as a guideline and prevent confusion with pathological tissue. However, limited contrast to surrounding structures and versatile shape and appearance make segmentation a challenging problem. This paper presents a multistep method. First, a detector that is trained to learn a discriminative model of the appearance is combined with an explicit model of the distribution of respiratory and esophageal air. In the next step, prior shape knowledge is incorporated using a Markov chain model. We follow a "detect and connect" approach to obtain the maximum a posteriori estimate of the approximate esophagus shape from hypothesis about the esophagus contour in axial image slices. Finally, the surface of this approximation is nonrigidly deformed to better fit the boundary of the organ. The method is compared to an alternative approach that uses a particle filter instead of a Markov chain to infer the approximate esophagus shape, to the performance of a human observer and also to state of the art methods, which are all semiautomatic. Cross-validation on 144 CT scans showed that the Markov chain based approach clearly outperforms the particle filter. It segments the esophagus with a mean error of 1.80 mm in less than 16 s on a standard PC. This is only 1 mm above the interobserver variability and can compete with the results of previously published semiautomatic methods.

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Year:  2011        PMID: 21303741     DOI: 10.1109/TMI.2011.2112372

Source DB:  PubMed          Journal:  IEEE Trans Med Imaging        ISSN: 0278-0062            Impact factor:   10.048


  6 in total

1.  Quantitative measurement of contrast enhancement of esophageal squamous cell carcinoma on clinical MDCT.

Authors:  Rui Li; Tian-Wu Chen; Li-Ying Wang; Li Zhou; Hang Li; Xiao-Li Chen; Chun-Ping Li; Xiao-Ming Zhang; Ru-Hui Xiao
Journal:  World J Radiol       Date:  2012-04-28

2.  A Learning-Based CT Prostate Segmentation Method via Joint Transductive Feature Selection and Regression.

Authors:  Yinghuan Shi; Yaozong Gao; Shu Liao; Daoqiang Zhang; Yang Gao; Dinggang Shen
Journal:  Neurocomputing       Date:  2016-01-15       Impact factor: 5.719

3.  [Automatic segmentation and annotation in radiology].

Authors:  P Dankerl; A Cavallaro; M Uder; M Hammon
Journal:  Radiologe       Date:  2014-03       Impact factor: 0.635

4.  Atlas ranking and selection for automatic segmentation of the esophagus from CT scans.

Authors:  Jinzhong Yang; Benjamin Haas; Raymond Fang; Beth M Beadle; Adam S Garden; Zhongxing Liao; Lifei Zhang; Peter Balter; Laurence Court
Journal:  Phys Med Biol       Date:  2017-11-14       Impact factor: 3.609

5.  Fully automated esophagus segmentation with a hierarchical deep learning approach.

Authors:  Roger Trullo; Caroline Petitjean; Dong Nie; Dinggang Shen; Su Ruan
Journal:  Conf Proc IEEE Int Conf Signal Image Process Appl       Date:  2017-12-01

6.  Generalizable cone beam CT esophagus segmentation using physics-based data augmentation.

Authors:  Sadegh R Alam; Tianfang Li; Pengpeng Zhang; Si-Yuan Zhang; Saad Nadeem
Journal:  Phys Med Biol       Date:  2021-03-04       Impact factor: 3.609

  6 in total

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