Literature DB >> 34476863

Automated segmentation of biventricular contours in tissue phase mapping using deep learning.

Daming Shen1,2, Ashitha Pathrose1, Roberto Sarnari1, Allison Blake1, Haben Berhane1,2, Justin J Baraboo1,2, James C Carr1, Michael Markl1,2, Daniel Kim1,2.   

Abstract

Tissue phase mapping (TPM) is an MRI technique for quantification of regional biventricular myocardial velocities. Despite its potential, clinical use is limited due to the requisite labor-intensive manual segmentation of cardiac contours for all time frames. The purpose of this study was to develop a deep learning (DL) network for automated segmentation of TPM images, without significant loss in segmentation and myocardial velocity quantification accuracy compared with manual segmentation. We implemented a multi-channel 3D (three dimensional; 2D + time) dense U-Net that trained on magnitude and phase images and combined cross-entropy, Dice, and Hausdorff distance loss terms to improve the segmentation accuracy and suppress unnatural boundaries. The dense U-Net was trained and tested with 150 multi-slice, multi-phase TPM scans (114 scans for training, 36 for testing) from 99 heart transplant patients (44 females, 1-4 scans/patient), where the magnitude and velocity-encoded (Vx , Vy , Vz ) images were used as input and the corresponding manual segmentation masks were used as reference. The accuracy of DL segmentation was evaluated using quantitative metrics (Dice scores, Hausdorff distance) and linear regression and Bland-Altman analyses on the resulting peak radial and longitudinal velocities (Vr and Vz ). The mean segmentation time was about 2 h per patient for manual and 1.9 ± 0.3 s for DL. Our network produced good accuracy (median Dice = 0.85 for left ventricle (LV), 0.64 for right ventricle (RV), Hausdorff distance = 3.17 pixels) compared with manual segmentation. Peak Vr and Vz measured from manual and DL segmentations were strongly correlated (R ≥ 0.88) and in good agreement with manual analysis (mean difference and limits of agreement for Vz and Vr were -0.05 ± 0.98 cm/s and -0.06 ± 1.18 cm/s for LV, and -0.21 ± 2.33 cm/s and 0.46 ± 4.00 cm/s for RV, respectively). The proposed multi-channel 3D dense U-Net was capable of reducing the segmentation time by 3,600-fold, without significant loss in accuracy in tissue velocity measurements.
© 2021 John Wiley & Sons, Ltd.

Entities:  

Keywords:  deep learning (DL); image segmentation; multi-channel 3D dense U-Net; tissue phase mapping (TPM)

Mesh:

Year:  2021        PMID: 34476863      PMCID: PMC8795858          DOI: 10.1002/nbm.4606

Source DB:  PubMed          Journal:  NMR Biomed        ISSN: 0952-3480            Impact factor:   4.044


  47 in total

Review 1.  ACCF/ACR/AHA/NASCI/SCMR 2010 expert consensus document on cardiovascular magnetic resonance: a report of the American College of Cardiology Foundation Task Force on Expert Consensus Documents.

Authors:  W Gregory Hundley; David A Bluemke; J Paul Finn; Scott D Flamm; Mark A Fogel; Matthias G Friedrich; Vincent B Ho; Michael Jerosch-Herold; Christopher M Kramer; Warren J Manning; Manesh Patel; Gerald M Pohost; Arthur E Stillman; Richard D White; Pamela K Woodard
Journal:  J Am Coll Cardiol       Date:  2010-06-08       Impact factor: 24.094

2.  Reducing the Hausdorff Distance in Medical Image Segmentation With Convolutional Neural Networks.

Authors:  Davood Karimi; Septimiu E Salcudean
Journal:  IEEE Trans Med Imaging       Date:  2019-07-19       Impact factor: 10.048

3.  DAGAN: Deep De-Aliasing Generative Adversarial Networks for Fast Compressed Sensing MRI Reconstruction.

Authors:  Guang Yang; Simiao Yu; Hao Dong; Greg Slabaugh; Pier Luigi Dragotti; Xujiong Ye; Fangde Liu; Simon Arridge; Jennifer Keegan; Yike Guo; David Firmin; Jennifer Keegan; Greg Slabaugh; Simon Arridge; Xujiong Ye; Yike Guo; Simiao Yu; Fangde Liu; David Firmin; Pier Luigi Dragotti; Guang Yang; Hao Dong
Journal:  IEEE Trans Med Imaging       Date:  2018-06       Impact factor: 10.048

4.  Cardiac Magnetic Resonance Feature Tracking Global Longitudinal Strain and Prognosis After Heart Transplantation.

Authors:  Chetan Shenoy; Simone Romano; Andrew Hughes; Osama Okasha; Prabhjot S Nijjar; Pratik Velangi; Cindy M Martin; Mehmet Akçakaya; Afshin Farzaneh-Far
Journal:  JACC Cardiovasc Imaging       Date:  2020-06-17

5.  Semiautomated method for noise reduction and background phase error correction in MR phase velocity data.

Authors:  P G Walker; G B Cranney; M B Scheidegger; G Waseleski; G M Pohost; A P Yoganathan
Journal:  J Magn Reson Imaging       Date:  1993 May-Jun       Impact factor: 4.813

6.  K-t GRAPPA accelerated phase contrast MRI: Improved assessment of blood flow and 3-directional myocardial motion during breath-hold.

Authors:  Simon Bauer; Michael Markl; Daniela Föll; Maximilian Russe; Zoran Stankovic; Bernd Jung
Journal:  J Magn Reson Imaging       Date:  2013-03-21       Impact factor: 4.813

7.  Myocardial velocity, intra-, and interventricular dyssynchrony evaluated by tissue phase mapping in pediatric heart transplant recipients.

Authors:  Haben Berhane; Alexander Ruh; Nazia Husain; Joshua D Robinson; Cynthia K Rigsby; Michael Markl
Journal:  J Magn Reson Imaging       Date:  2019-09-12       Impact factor: 4.813

8.  Human heart: tagging with MR imaging--a method for noninvasive assessment of myocardial motion.

Authors:  E A Zerhouni; D M Parish; W J Rogers; A Yang; E P Shapiro
Journal:  Radiology       Date:  1988-10       Impact factor: 11.105

9.  Right ventricle segmentation from cardiac MRI: a collation study.

Authors:  Caroline Petitjean; Maria A Zuluaga; Wenjia Bai; Jean-Nicolas Dacher; Damien Grosgeorge; Jérôme Caudron; Su Ruan; Ismail Ben Ayed; M Jorge Cardoso; Hsiang-Chou Chen; Daniel Jimenez-Carretero; Maria J Ledesma-Carbayo; Christos Davatzikos; Jimit Doshi; Guray Erus; Oskar M O Maier; Cyrus M S Nambakhsh; Yangming Ou; Sébastien Ourselin; Chun-Wei Peng; Nicholas S Peters; Terry M Peters; Martin Rajchl; Daniel Rueckert; Andres Santos; Wenzhe Shi; Ching-Wei Wang; Haiyan Wang; Jing Yuan
Journal:  Med Image Anal       Date:  2014-10-28       Impact factor: 8.545

10.  Automated classification of Alzheimer's disease and mild cognitive impairment using a single MRI and deep neural networks.

Authors:  Silvia Basaia; Federica Agosta; Luca Wagner; Elisa Canu; Giuseppe Magnani; Roberto Santangelo; Massimo Filippi
Journal:  Neuroimage Clin       Date:  2018-12-18       Impact factor: 4.881

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