Literature DB >> 32076659

Implementation and Validation of a Three-dimensional Cardiac Motion Estimation Network.

Manuel A Morales1, David Izquierdo-Garcia1, Iman Aganj1, Jayashree Kalpathy-Cramer1, Bruce R Rosen1, Ciprian Catana1.   

Abstract

PURPOSE: To describe an unsupervised three-dimensional cardiac motion estimation network (CarMEN) for deformable motion estimation from two-dimensional cine MR images.
MATERIALS AND METHODS: A function was implemented using CarMEN, a convolutional neural network that takes two three-dimensional input volumes and outputs a motion field. A smoothness constraint was imposed on the field by regularizing the Frobenius norm of its Jacobian matrix. CarMEN was trained and tested with data from 150 cardiac patients who underwent MRI examinations and was validated on synthetic (n = 100) and pediatric (n = 33) datasets. CarMEN was compared to five state-of-the-art nonrigid body registration methods by using several performance metrics, including Dice similarity coefficient (DSC) and end-point error.
RESULTS: On the synthetic dataset, CarMEN achieved a median DSC of 0.85, which was higher than all five methods (minimum-maximum median [or MMM], 0.67-0.84; P < .001), and a median end-point error of 1.7, which was lower than (MMM, 2.1-2.7; P < .001) or similar to (MMM, 1.6-1.7; P > .05) all other techniques. On the real datasets, CarMEN achieved a median DSC of 0.73 for Automated Cardiac Diagnosis Challenge data, which was higher than (MMM, 0.33; P < .0001) or similar to (MMM, 0.72-0.75; P > .05) all other methods, and a median DSC of 0.77 for pediatric data, which was higher than (MMM, 0.71-0.76; P < .0001) or similar to (MMM, 0.77-0.78; P > .05) all other methods. All P values were derived from pairwise testing. For all other metrics, CarMEN achieved better accuracy on all datasets than all other techniques except for one, which had the worst motion estimation accuracy.
CONCLUSION: The proposed deep learning-based approach for three-dimensional cardiac motion estimation allowed the derivation of a motion model that balances motion characterization and image registration accuracy and achieved motion estimation accuracy comparable to or better than that of several state-of-the-art image registration algorithms.© RSNA, 2019Supplemental material is available for this article. 2019 by the Radiological Society of North America, Inc.

Entities:  

Year:  2019        PMID: 32076659      PMCID: PMC6677286          DOI: 10.1148/ryai.2019180080

Source DB:  PubMed          Journal:  Radiol Artif Intell        ISSN: 2638-6100


  18 in total

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5.  Estimation of cardiac motion in cine-MRI sequences by correlation transform optical flow of monogenic features distance.

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8.  MRXCAT: Realistic numerical phantoms for cardiovascular magnetic resonance.

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10.  3D/2D model-to-image registration by imitation learning for cardiac procedures.

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  5 in total

1.  A Convolutional Neural Network-based Deformable Image Registration Method for Cardiac Motion Estimation from Cine Cardiac MR Images.

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2.  DeepStrain: A Deep Learning Workflow for the Automated Characterization of Cardiac Mechanics.

Authors:  Manuel A Morales; Maaike van den Boomen; Christopher Nguyen; Jayashree Kalpathy-Cramer; Bruce R Rosen; Collin M Stultz; David Izquierdo-Garcia; Ciprian Catana
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3.  DeepStrain Evidence of Asymptomatic Left Ventricular Diastolic and Systolic Dysfunction in Young Adults With Cardiac Risk Factors.

Authors:  Manuel A Morales; Gert J H Snel; Maaike van den Boomen; Ronald J H Borra; Vincent M van Deursen; Riemer H J A Slart; David Izquierdo-Garcia; Niek H J Prakken; Ciprian Catana
Journal:  Front Cardiovasc Med       Date:  2022-04-11

4.  Real-time 3D motion estimation from undersampled MRI using multi-resolution neural networks.

Authors:  Maarten L Terpstra; Matteo Maspero; Tom Bruijnen; Joost J C Verhoeff; Jan J W Lagendijk; Cornelis A T van den Berg
Journal:  Med Phys       Date:  2021-10-26       Impact factor: 4.506

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  5 in total

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