Literature DB >> 31714190

Three-dimensional Deep Convolutional Neural Networks for Automated Myocardial Scar Quantification in Hypertrophic Cardiomyopathy: A Multicenter Multivendor Study.

Ahmed S Fahmy1, Ulf Neisius1, Raymond H Chan1, Ethan J Rowin1, Warren J Manning1, Martin S Maron1, Reza Nezafat1.   

Abstract

Background Cardiac MRI late gadolinium enhancement (LGE) scar volume is an important marker for outcome prediction in patients with hypertrophic cardiomyopathy (HCM); however, its clinical application is hindered by a lack of measurement standardization. Purpose To develop and evaluate a three-dimensional (3D) convolutional neural network (CNN)-based method for automated LGE scar quantification in patients with HCM. Materials and Methods We retrospectively identified LGE MRI data in a multicenter (n = 7) and multivendor (n = 3) HCM study obtained between November 2001 and November 2011. A deep 3D CNN based on U-Net architecture was used for LGE scar quantification. Independent CNN training and testing data sets were maintained with a 4:1 ratio. Stacks of short-axis MRI slices were split into overlapping substacks that were segmented and then merged into one volume. The 3D CNN per-site and per-vendor performances were evaluated with respect to manual scar quantification performed in a core laboratory setting using Dice similarity coefficient (DSC), Pearson correlation, and Bland-Altman analyses. Furthermore, the performance of 3D CNN was compared with that of two-dimensional (2D) CNN. Results This study included 1073 patients with HCM (733 men; mean age, 49 years ± 17 [standard deviation]). The 3D CNN-based quantification was fast (0.15 second per image) and demonstrated excellent correlation with manual scar volume quantification (r = 0.88, P < .001) and ratio of scar volume to total left ventricle myocardial volume (%LGE) (r = 0.91, P < .001). The 3D CNN-based quantification strongly correlated with manual quantification of scar volume (r = 0.82-0.99, P < .001) and %LGE (r = 0.90-0.97, P < .001) for all sites and vendors. The 3D CNN identified patients with a large scar burden (>15%) with 98% accuracy (202 of 207) (95% confidence interval [CI]: 95%, 99%). When compared with 3D CNN, 2D CNN underestimated scar volume (r = 0.85, P < .001) and %LGE (r = 0.83, P < .001). The DSC of 3D CNN segmentation was comparable among different vendors (P = .07) and higher than that of 2D CNN (DSC, 0.54 ± 0.26 vs 0.48 ± 0.29; P = .02). Conclusion In the hypertrophic cardiomyopathy population, a three-dimensional convolutional neural network enables fast and accurate quantification of myocardial scar volume, outperforms a two-dimensional convolutional neural network, and demonstrates comparable performance across different vendors. © RSNA, 2019 Online supplemental material is available for this article.

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Year:  2019        PMID: 31714190      PMCID: PMC6939743          DOI: 10.1148/radiol.2019190737

Source DB:  PubMed          Journal:  Radiology        ISSN: 0033-8419            Impact factor:   11.105


  29 in total

1.  3-D Convolutional Neural Networks for Automatic Detection of Pulmonary Nodules in Chest CT.

Authors:  Aria Pezeshk; Sardar Hamidian; Nicholas Petrick; Berkman Sahiner
Journal:  IEEE J Biomed Health Inform       Date:  2018-11-09       Impact factor: 5.772

2.  Automated quantification of myocardial infarction using graph cuts on contrast delayed enhanced magnetic resonance images.

Authors:  Yingli Lu; Yuesong Yang; Kim A Connelly; Graham A Wright; Perry E Radau
Journal:  Quant Imaging Med Surg       Date:  2012-06

3.  Evaluation of state-of-the-art segmentation algorithms for left ventricle infarct from late Gadolinium enhancement MR images.

Authors:  Rashed Karim; Pranav Bhagirath; Piet Claus; R James Housden; Zhong Chen; Zahra Karimaghaloo; Hyon-Mok Sohn; Laura Lara Rodríguez; Sergio Vera; Xènia Albà; Anja Hennemuth; Heinz-Otto Peitgen; Tal Arbel; Miguel A Gonzàlez Ballester; Alejandro F Frangi; Marco Götte; Reza Razavi; Tobias Schaeffter; Kawal Rhode
Journal:  Med Image Anal       Date:  2016-01-28       Impact factor: 8.545

4.  Automated segmentation of myocardial scar in late enhancement MRI using combined intensity and spatial information.

Authors:  Qian Tao; Julien Milles; Katja Zeppenfeld; Hildo J Lamb; Jeroen J Bax; Johan H C Reiber; Rob J van der Geest
Journal:  Magn Reson Med       Date:  2010-08       Impact factor: 4.668

5.  Prevalence of hypertrophic cardiomyopathy in a general population of young adults. Echocardiographic analysis of 4111 subjects in the CARDIA Study. Coronary Artery Risk Development in (Young) Adults.

Authors:  B J Maron; J M Gardin; J M Flack; S S Gidding; T T Kurosaki; D E Bild
Journal:  Circulation       Date:  1995-08-15       Impact factor: 29.690

6.  Occurrence and frequency of arrhythmias in hypertrophic cardiomyopathy in relation to delayed enhancement on cardiovascular magnetic resonance.

Authors:  A Selcuk Adabag; Barry J Maron; Evan Appelbaum; Caitlin J Harrigan; Jacqueline L Buros; C Michael Gibson; John R Lesser; Constance A Hanna; James E Udelson; Warren J Manning; Martin S Maron
Journal:  J Am Coll Cardiol       Date:  2008-04-08       Impact factor: 24.094

7.  Statistical validation of image segmentation quality based on a spatial overlap index.

Authors:  Kelly H Zou; Simon K Warfield; Aditya Bharatha; Clare M C Tempany; Michael R Kaus; Steven J Haker; William M Wells; Ferenc A Jolesz; Ron Kikinis
Journal:  Acad Radiol       Date:  2004-02       Impact factor: 3.173

8.  Segmentation of Craniomaxillofacial Bony Structures from MRI with a 3D Deep-Learning Based Cascade Framework.

Authors:  Dong Nie; Li Wang; Roger Trullo; Jianfu Li; Peng Yuan; James Xia; Dinggang Shen
Journal:  Mach Learn Med Imaging       Date:  2017-09-07

9.  Automatic Multi-Organ Segmentation on Abdominal CT With Dense V-Networks.

Authors:  Eli Gibson; Francesco Giganti; Yipeng Hu; Ester Bonmati; Steve Bandula; Kurinchi Gurusamy; Brian Davidson; Stephen P Pereira; Matthew J Clarkson; Dean C Barratt
Journal:  IEEE Trans Med Imaging       Date:  2018-02-14       Impact factor: 10.048

10.  Quantification of LV function and mass by cardiovascular magnetic resonance: multi-center variability and consensus contours.

Authors:  Avan Suinesiaputra; David A Bluemke; Brett R Cowan; Matthias G Friedrich; Christopher M Kramer; Raymond Kwong; Sven Plein; Jeanette Schulz-Menger; Jos J M Westenberg; Alistair A Young; Eike Nagel
Journal:  J Cardiovasc Magn Reson       Date:  2015-07-28       Impact factor: 5.364

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  12 in total

1.  Impact of deep learning architectures on accelerated cardiac T1 mapping using MyoMapNet.

Authors:  Amine Amyar; Rui Guo; Xiaoying Cai; Salah Assana; Kelvin Chow; Jennifer Rodriguez; Tuyen Yankama; Julia Cirillo; Patrick Pierce; Beth Goddu; Long Ngo; Reza Nezafat
Journal:  NMR Biomed       Date:  2022-07-14       Impact factor: 4.478

2.  Deep Learning-Based Radiomics of B-Mode Ultrasonography and Shear-Wave Elastography: Improved Performance in Breast Mass Classification.

Authors:  Xiang Zhang; Ming Liang; Zehong Yang; Chushan Zheng; Jiayi Wu; Bing Ou; Haojiang Li; Xiaoyan Wu; Baoming Luo; Jun Shen
Journal:  Front Oncol       Date:  2020-08-28       Impact factor: 6.244

Review 3.  Recent Advances in Fibrosis and Scar Segmentation From Cardiac MRI: A State-of-the-Art Review and Future Perspectives.

Authors:  Yinzhe Wu; Zeyu Tang; Binghuan Li; David Firmin; Guang Yang
Journal:  Front Physiol       Date:  2021-08-03       Impact factor: 4.566

4.  Development and application of artificial intelligence in cardiac imaging.

Authors:  Beibei Jiang; Ning Guo; Yinghui Ge; Lu Zhang; Matthijs Oudkerk; Xueqian Xie
Journal:  Br J Radiol       Date:  2020-02-06       Impact factor: 3.039

5.  Landmark Detection in Cardiac MRI by Using a Convolutional Neural Network.

Authors:  Hui Xue; Jessica Artico; Marianna Fontana; James C Moon; Rhodri H Davies; Peter Kellman
Journal:  Radiol Artif Intell       Date:  2021-07-14

Review 6.  Artificial intelligence in the diagnosis and management of arrhythmias.

Authors:  Venkat D Nagarajan; Su-Lin Lee; Jan-Lukas Robertus; Christoph A Nienaber; Natalia A Trayanova; Sabine Ernst
Journal:  Eur Heart J       Date:  2021-10-07       Impact factor: 29.983

7.  Diagnostic utility of artificial intelligence for left ventricular scar identification using cardiac magnetic resonance imaging-A systematic review.

Authors:  Nikesh Jathanna; Anna Podlasek; Albert Sokol; Dorothee Auer; Xin Chen; Shahnaz Jamil-Copley
Journal:  Cardiovasc Digit Health J       Date:  2021-11-24

Review 8.  Artificial intelligence: improving the efficiency of cardiovascular imaging.

Authors:  Andrew Lin; Márton Kolossváry; Ivana Išgum; Pál Maurovich-Horvat; Piotr J Slomka; Damini Dey
Journal:  Expert Rev Med Devices       Date:  2020-06-16       Impact factor: 3.166

9.  Fully-automated global and segmental strain analysis of DENSE cardiovascular magnetic resonance using deep learning for segmentation and phase unwrapping.

Authors:  Sona Ghadimi; Daniel A Auger; Xue Feng; Changyu Sun; Craig H Meyer; Kenneth C Bilchick; Jie Jane Cao; Andrew D Scott; John N Oshinski; Daniel B Ennis; Frederick H Epstein
Journal:  J Cardiovasc Magn Reson       Date:  2021-03-11       Impact factor: 5.364

10.  Improved Quantification of Myocardium Scar in Late Gadolinium Enhancement Images: Deep Learning Based Image Fusion Approach.

Authors:  Ahmed S Fahmy; Ethan J Rowin; Raymond H Chan; Warren J Manning; Martin S Maron; Reza Nezafat
Journal:  J Magn Reson Imaging       Date:  2021-02-17       Impact factor: 4.813

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