Purpose: Echocardiography is the most commonly used modality for assessing the heart in clinical practice. In an echocardiographic exam, an ultrasound probe samples the heart from different orientations and positions, thereby creating different viewpoints for assessing the cardiac function. The determination of the probe viewpoint forms an essential step in automatic echocardiographic image analysis. Approach: In this study, convolutional neural networks are used for the automated identification of 14 different anatomical echocardiographic views (larger than any previous study) in a dataset of 8732 videos acquired from 374 patients. Differentiable architecture search approach was utilized to design small neural network architectures for rapid inference while maintaining high accuracy. The impact of the image quality and resolution, size of the training dataset, and number of echocardiographic view classes on the efficacy of the models were also investigated. Results: In contrast to the deeper classification architectures, the proposed models had significantly lower number of trainable parameters (up to 99.9% reduction), achieved comparable classification performance (accuracy 88.4% to 96%, precision 87.8% to 95.2%, recall 87.1% to 95.1%) and real-time performance with inference time per image of 3.6 to 12.6 ms. Conclusion: Compared with the standard classification neural network architectures, the proposed models are faster and achieve comparable classification performance. They also require less training data. Such models can be used for real-time detection of the standard views.
Purpose: Echocardiography is the most commonly used modality for assessing the heart in clinical practice. In an echocardiographic exam, an ultrasound probe samples the heart from different orientations and positions, thereby creating different viewpoints for assessing the cardiac function. The determination of the probe viewpoint forms an essential step in automatic echocardiographic image analysis. Approach: In this study, convolutional neural networks are used for the automated identification of 14 different anatomical echocardiographic views (larger than any previous study) in a dataset of 8732 videos acquired from 374 patients. Differentiable architecture search approach was utilized to design small neural network architectures for rapid inference while maintaining high accuracy. The impact of the image quality and resolution, size of the training dataset, and number of echocardiographic view classes on the efficacy of the models were also investigated. Results: In contrast to the deeper classification architectures, the proposed models had significantly lower number of trainable parameters (up to 99.9% reduction), achieved comparable classification performance (accuracy 88.4% to 96%, precision 87.8% to 95.2%, recall 87.1% to 95.1%) and real-time performance with inference time per image of 3.6 to 12.6 ms. Conclusion: Compared with the standard classification neural network architectures, the proposed models are faster and achieve comparable classification performance. They also require less training data. Such models can be used for real-time detection of the standard views.
Authors: Roberto M Lang; Luigi P Badano; Victor Mor-Avi; Jonathan Afilalo; Anderson Armstrong; Laura Ernande; Frank A Flachskampf; Elyse Foster; Steven A Goldstein; Tatiana Kuznetsova; Patrizio Lancellotti; Denisa Muraru; Michael H Picard; Ernst R Rietzschel; Lawrence Rudski; Kirk T Spencer; Wendy Tsang; Jens-Uwe Voigt Journal: Eur Heart J Cardiovasc Imaging Date: 2015-03 Impact factor: 6.875
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Authors: Matthew Botvinick; Sam Ritter; Jane X Wang; Zeb Kurth-Nelson; Charles Blundell; Demis Hassabis Journal: Trends Cogn Sci Date: 2019-04-16 Impact factor: 20.229
Authors: Elisabeth S Lane; Neda Azarmehr; Jevgeni Jevsikov; James P Howard; Matthew J Shun-Shin; Graham D Cole; Darrel P Francis; Massoud Zolgharni Journal: Comput Biol Med Date: 2021-04-06 Impact factor: 6.698
Authors: James P Howard; Jeremy Tan; Matthew J Shun-Shin; Dina Mahdi; Alexandra N Nowbar; Ahran D Arnold; Yousif Ahmad; Peter McCartney; Massoud Zolgharni; Nick W F Linton; Nilesh Sutaria; Bushra Rana; Jamil Mayet; Daniel Rueckert; Graham D Cole; Darrel P Francis Journal: J Med Artif Intell Date: 2020-03-25
Authors: Felix K Wegner; Maria L Benesch Vidal; Philipp Niehues; Kevin Willy; Robert M Radke; Philipp D Garthe; Lars Eckardt; Helmut Baumgartner; Gerhard-Paul Diller; Stefan Orwat Journal: J Clin Med Date: 2022-01-28 Impact factor: 4.241