Literature DB >> 33728334

A Myocardial Segmentation Method Based on Adversarial Learning.

Tao Wang1, Juanli Wang1, Jia Zhao2, Yanmin Zhang1,3.   

Abstract

Congenital heart defects (CHD) are structural imperfections of the heart or large blood vessels that are detected around birth and their symptoms vary wildly, with mild case patients having no obvious symptoms and serious cases being potentially life-threatening. Using cardiovascular magnetic resonance imaging (CMRI) technology to create a patient-specific 3D heart model is an important prerequisite for surgical planning in children with CHD. Manually segmenting 3D images using existing tools is time-consuming and laborious, which greatly hinders the routine clinical application of 3D heart models. Therefore, automatic myocardial segmentation algorithms and related computer-aided diagnosis systems have emerged. Currently, the conventional methods for automatic myocardium segmentation are based on deep learning, rather than on the traditional machine learning method. Better results have been achieved, however, difficulties still exist such as CMRI often has, inconsistent signal strength, low contrast, and indistinguishable thin-walled structures near the atrium, valves, and large blood vessels, leading to challenges in automatic myocardium segmentation. Additionally, the labeling of 3D CMR images is time-consuming and laborious, causing problems in obtaining enough accurately labeled data. To solve the above problems, we proposed to apply the idea of adversarial learning to the problem of myocardial segmentation. Through a discriminant model, some additional supervision information is provided as a guide to further improve the performance of the segmentation model. Experiment results on real-world datasets show that our proposed adversarial learning-based method had improved performance compared with the baseline segmentation model and achieved better results on the automatic myocardium segmentation problem.
Copyright © 2021 Tao Wang et al.

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Year:  2021        PMID: 33728334      PMCID: PMC7935602          DOI: 10.1155/2021/6618918

Source DB:  PubMed          Journal:  Biomed Res Int            Impact factor:   3.411


  10 in total

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Review 2.  A survey on deep learning in medical image analysis.

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Journal:  IEEE Trans Cybern       Date:  2016-08-02       Impact factor: 11.448

4.  Combining deep learning and level set for the automated segmentation of the left ventricle of the heart from cardiac cine magnetic resonance.

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Journal:  Med Image Anal       Date:  2016-05-26       Impact factor: 8.545

5.  A combined deep-learning and deformable-model approach to fully automatic segmentation of the left ventricle in cardiac MRI.

Authors:  M R Avendi; Arash Kheradvar; Hamid Jafarkhani
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6.  Development and Validation of a Deep Learning Algorithm for Detection of Diabetic Retinopathy in Retinal Fundus Photographs.

Authors:  Varun Gulshan; Lily Peng; Marc Coram; Martin C Stumpe; Derek Wu; Arunachalam Narayanaswamy; Subhashini Venugopalan; Kasumi Widner; Tom Madams; Jorge Cuadros; Ramasamy Kim; Rajiv Raman; Philip C Nelson; Jessica L Mega; Dale R Webster
Journal:  JAMA       Date:  2016-12-13       Impact factor: 56.272

7.  SegAN: Adversarial Network with Multi-scale L1 Loss for Medical Image Segmentation.

Authors:  Yuan Xue; Tao Xu; Han Zhang; L Rodney Long; Xiaolei Huang
Journal:  Neuroinformatics       Date:  2018-10

8.  Global, regional, and national incidence, prevalence, and years lived with disability for 310 diseases and injuries, 1990-2015: a systematic analysis for the Global Burden of Disease Study 2015.

Authors: 
Journal:  Lancet       Date:  2016-10-08       Impact factor: 79.321

Review 9.  Global, regional, and national incidence, prevalence, and years lived with disability for 301 acute and chronic diseases and injuries in 188 countries, 1990-2013: a systematic analysis for the Global Burden of Disease Study 2013.

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Journal:  Lancet       Date:  2015-06-07       Impact factor: 202.731

10.  Representation of cardiovascular magnetic resonance in the AHA / ACC guidelines.

Authors:  Florian von Knobelsdorff-Brenkenhoff; Guenter Pilz; Jeanette Schulz-Menger
Journal:  J Cardiovasc Magn Reson       Date:  2017-09-25       Impact factor: 5.364

  10 in total

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