Literature DB >> 30299231

Deep Learning-based Method for Fully Automatic Quantification of Left Ventricle Function from Cine MR Images: A Multivendor, Multicenter Study.

Qian Tao1, Wenjun Yan1, Yuanyuan Wang1, Elisabeth H M Paiman1, Denis P Shamonin1, Pankaj Garg1, Sven Plein1, Lu Huang1, Liming Xia1, Marek Sramko1, Jarsolav Tintera1, Albert de Roos1, Hildo J Lamb1, Rob J van der Geest1.   

Abstract

Purpose To develop a deep learning-based method for fully automated quantification of left ventricular (LV) function from short-axis cine MR images and to evaluate its performance in a multivendor and multicenter setting. Materials and Methods This retrospective study included cine MRI data sets obtained from three major MRI vendors in four medical centers from 2008 to 2016. Three convolutional neural networks (CNNs) with the U-NET architecture were trained on data sets of increasing variability: (a) a single-vendor, single-center, homogeneous cohort of 100 patients (CNN1); (b) a single-vendor, multicenter, heterogeneous cohort of 200 patients (CNN2); and (c) a multivendor, multicenter, heterogeneous cohort of 400 patients (CNN3). All CNNs were tested on an independent multivendor, multicenter data set of 196 patients. CNN performance was evaluated with respect to the manual annotations from three experienced observers in terms of (a) LV detection accuracy, (b) LV segmentation accuracy, and (c) LV functional parameter accuracy. Automatic and manual results were compared with the paired Wilcoxon test, Pearson correlation, and Bland-Altman analysis. Results CNN3 achieved the highest performance on the independent testing data set. The average perpendicular distance compared with manual analysis was 1.1 mm ± 0.3 for CNN3, compared with 1.5 mm ± 1.0 for CNN1 (P < .05) and 1.3 mm ± 0.6 for CNN2 (P < .05). The LV function parameters derived from CNN3 showed a high correlation (r2 ≥ 0.98) and agreement with those obtained by experts for data sets from different vendors and centers. Conclusion A deep learning-based method trained on a data set with high variability can achieve fully automated and accurate cine MRI analysis on multivendor, multicenter cine MRI data. © RSNA, 2018 See also the editorial by Colletti in this issue.

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Year:  2018        PMID: 30299231     DOI: 10.1148/radiol.2018180513

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


  43 in total

1.  Fully automated 3D aortic segmentation of 4D flow MRI for hemodynamic analysis using deep learning.

Authors:  Haben Berhane; Michael Scott; Mohammed Elbaz; Kelly Jarvis; Patrick McCarthy; James Carr; Chris Malaisrie; Ryan Avery; Alex J Barker; Joshua D Robinson; Cynthia K Rigsby; Michael Markl
Journal:  Magn Reson Med       Date:  2020-03-13       Impact factor: 4.668

2.  Convolutional Neural Network for Automated FLAIR Lesion Segmentation on Clinical Brain MR Imaging.

Authors:  M T Duong; J D Rudie; J Wang; L Xie; S Mohan; J C Gee; A M Rauschecker
Journal:  AJNR Am J Neuroradiol       Date:  2019-07-25       Impact factor: 3.825

Review 3.  Technical and clinical overview of deep learning in radiology.

Authors:  Daiju Ueda; Akitoshi Shimazaki; Yukio Miki
Journal:  Jpn J Radiol       Date:  2018-12-01       Impact factor: 2.374

Review 4.  Reference ranges ("normal values") for cardiovascular magnetic resonance (CMR) in adults and children: 2020 update.

Authors:  Nadine Kawel-Boehm; Scott J Hetzel; Bharath Ambale-Venkatesh; Gabriella Captur; Christopher J Francois; Michael Jerosch-Herold; Michael Salerno; Shawn D Teague; Emanuela Valsangiacomo-Buechel; Rob J van der Geest; David A Bluemke
Journal:  J Cardiovasc Magn Reson       Date:  2020-12-14       Impact factor: 5.364

5.  Effect of age and sex on fully automated deep learning assessment of left ventricular function, volumes, and contours in cardiac magnetic resonance imaging.

Authors:  Vincent Chen; Alex J Barker; Rotem Golan; Michael B Scott; Hyungkyu Huh; Qiao Wei; Alireza Sojoudi; Michael Markl
Journal:  Int J Cardiovasc Imaging       Date:  2021-06-29       Impact factor: 2.357

6.  A deep learning-based approach for automatic segmentation and quantification of the left ventricle from cardiac cine MR images.

Authors:  Hisham Abdeltawab; Fahmi Khalifa; Fatma Taher; Norah Saleh Alghamdi; Mohammed Ghazal; Garth Beache; Tamer Mohamed; Robert Keynton; Ayman El-Baz
Journal:  Comput Med Imaging Graph       Date:  2020-03-12       Impact factor: 4.790

7.  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

8.  Clinical Performance and Role of Expert Supervision of Deep Learning for Cardiac Ventricular Volumetry: A Validation Study.

Authors:  Tara A Retson; Evan M Masutani; Daniel Golden; Albert Hsiao
Journal:  Radiol Artif Intell       Date:  2020-07-08

9.  Preparing Medical Imaging Data for Machine Learning.

Authors:  Martin J Willemink; Wojciech A Koszek; Cailin Hardell; Jie Wu; Dominik Fleischmann; Hugh Harvey; Les R Folio; Ronald M Summers; Daniel L Rubin; Matthew P Lungren
Journal:  Radiology       Date:  2020-02-18       Impact factor: 11.105

10.  Deep Learning-based Automated Segmentation of Left Ventricular Trabeculations and Myocardium on Cardiac MR Images: A Feasibility Study.

Authors:  Axel Bartoli; Joris Fournel; Zakarya Bentatou; Gilbert Habib; Alain Lalande; Monique Bernard; Loïc Boussel; François Pontana; Jean-Nicolas Dacher; Badih Ghattas; Alexis Jacquier
Journal:  Radiol Artif Intell       Date:  2020-11-25
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