Literature DB >> 24480371

Segmentation of abdominal organs from CT using a multi-level, hierarchical neural network strategy.

M Alper Selver1.   

Abstract

Precise measurements on abdominal organs are vital prior to the important clinical procedures. Such measurements require accurate segmentation of these organs, which is a very challenging task due to countless anatomical variations and technical difficulties. Although, several features with various classifiers have been designed to overcome these challenges, abdominal organ segmentation via classification is still an emerging field in order to reach desired precision. Recent studies on multiple feature-classifier combinations show that hierarchical systems outperform composite feature-single classifier models. In this study, how hierarchical formations can translate to improved accuracy, when large size feature spaces are involved, is explored for the problem of abdominal organ segmentation. As a result, a semi-automatic, slice-by-slice segmentation method is developed using a novel multi-level and hierarchical neural network (MHNN). MHNN is designed to collect complementary information about organs at each level of the hierarchy via different feature-classifier combinations. Moreover, each level of MHNN receives residual data from the previous level. The residual data is constructed to preserve zero false positive error until the last level of the hierarchy, where only most challenging samples remain. The algorithm mimics analysis behaviour of a radiologist by using the slice-by-slice iteration, which is supported with adjacent slice similarity features. This enables adaptive determination of system parameters and turns into the advantage of online training, which is done in parallel to the segmentation process. Proposed design can perform robust and accurate segmentation of abdominal organs as validated by using diverse data sets with various challenges.
Copyright © 2013 Elsevier Ireland Ltd. All rights reserved.

Keywords:  Abdominal organ; CT; Hierarchical classification; Segmentation

Mesh:

Year:  2014        PMID: 24480371     DOI: 10.1016/j.cmpb.2013.12.008

Source DB:  PubMed          Journal:  Comput Methods Programs Biomed        ISSN: 0169-2607            Impact factor:   5.428


  4 in total

1.  Automatic abdominal multi-organ segmentation using deep convolutional neural network and time-implicit level sets.

Authors:  Peijun Hu; Fa Wu; Jialin Peng; Yuanyuan Bao; Feng Chen; Dexing Kong
Journal:  Int J Comput Assist Radiol Surg       Date:  2016-11-24       Impact factor: 2.924

2.  Comparison of semi-automatic and deep learning-based automatic methods for liver segmentation in living liver transplant donors.

Authors:  A Emre Kavur; Naciye Sinem Gezer; Mustafa Barış; Yusuf Şahin; Savaş Özkan; Bora Baydar; Ulaş Yüksel; Çağlar Kılıkçıer; Şahin Olut; Gözde Bozdağı Akar; Gözde Ünal; Oğuz Dicle; M Alper Selver
Journal:  Diagn Interv Radiol       Date:  2020-01       Impact factor: 2.630

3.  Direct quantification of epistemic and aleatoric uncertainty in 3D U-net segmentation.

Authors:  Craig K Jones; Guoqing Wang; Vivek Yedavalli; Haris Sair
Journal:  J Med Imaging (Bellingham)       Date:  2022-06-08

4.  Automatic Liver Segmentation from CT Images Using Single-Block Linear Detection.

Authors:  Lianfen Huang; Minghui Weng; Haitao Shuai; Yue Huang; Jianjun Sun; Fenglian Gao
Journal:  Biomed Res Int       Date:  2016-08-18       Impact factor: 3.411

  4 in total

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