Automated segmentation of long and short axis DENSE cardiovascular magnetic resonance for myocardial strain analysis using spatio-temporal convolutional neural networks
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Karl P. Kunze | D. Pennell | A. Young | A. Scott | R. Neji | K. Kunze | S. Nielles-Vallespin | M. Nazir | M. S. Nazir | Hugo Barbaroux | A. Young
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