Julio Garcia1,2,3,4,5, Kailey Beckie1,2,3,4, Ali F Hassanabad1,2, Alireza Sojoudi6, James A White1,3. 1. Department of Cardiac Sciences, University of Calgary, Calgary, AB, Canada. 2. Department of Radiology, University of Calgary, Calgary, AB, Canada. 3. Stephenson Cardiac Imaging Centre, University of Calgary, AB, Canada. 4. Libin Cardiovascular Institute, University of Calgary, Calgary, AB, Canada. 5. Alberta Children's Hospital Research Institute, Calgary, AB, Canada. 6. Circle Cardiovascular Imaging, Advanced Technologies, Calgary, AB, Canada.
Abstract
BACKGROUND: Blood flow is a crucial measurement in the assessment of heart valve disease. Time-resolved flow using magnetic resonance imaging (4 D flow MRI) can provide a comprehensive assessment of heart valve hemodynamics but it relies in manual plane analysis. In this study, we aimed to demonstrate the feasibility of automate the detection and tracking of aortic and mitral valve planes to assess blood flow from 4 D flow MRI. METHODS: In this prospective study, a total of n = 106 subjects were enrolled: 19 patients with mitral disease, 65 aortic disease patients and 22 healthy controls. Machine learning was employed to detect aortic and mitral location and motion in a cine three-chamber plane and a perpendicular projection was co-registered to the 4 D flow MRI dataset to quantify flow volume, regurgitant fraction, and a peak velocity. Static and dynamic plane association and agreement were evaluated. Intra- and inter-observer, and scan-rescan reproducibility were also assessed. RESULTS: Aortic regurgitant fraction was elevated in aortic valve disease patients as compared with controls and mitral valve disease patients (p < 0.05). Similarly, mitral regurgitant fraction was higher in mitral valve patients (p < 0.05). Both aortic and mitral total flow were high in aortic patients. Static and dynamic were good (r > 0.6, p < 0.005) for aortic total flow and peak velocity, and mitral peak velocity and regurgitant fraction. All measurements showed good inter- and intra-observer, and scan-rescan reproducibility. CONCLUSION: We demonstrated that aortic and mitral hemodynamics can efficiently be quantified from 4 D flow MRI using assisted valve detection with machine learning.
BACKGROUND: Blood flow is a crucial measurement in the assessment of heart valve disease. Time-resolved flow using magnetic resonance imaging (4 D flow MRI) can provide a comprehensive assessment of heart valve hemodynamics but it relies in manual plane analysis. In this study, we aimed to demonstrate the feasibility of automate the detection and tracking of aortic and mitral valve planes to assess blood flow from 4 D flow MRI. METHODS: In this prospective study, a total of n = 106 subjects were enrolled: 19 patients with mitral disease, 65 aortic disease patients and 22 healthy controls. Machine learning was employed to detect aortic and mitral location and motion in a cine three-chamber plane and a perpendicular projection was co-registered to the 4 D flow MRI dataset to quantify flow volume, regurgitant fraction, and a peak velocity. Static and dynamic plane association and agreement were evaluated. Intra- and inter-observer, and scan-rescan reproducibility were also assessed. RESULTS: Aortic regurgitant fraction was elevated in aortic valve disease patients as compared with controls and mitral valve disease patients (p < 0.05). Similarly, mitral regurgitant fraction was higher in mitral valve patients (p < 0.05). Both aortic and mitral total flow were high in aortic patients. Static and dynamic were good (r > 0.6, p < 0.005) for aortic total flow and peak velocity, and mitral peak velocity and regurgitant fraction. All measurements showed good inter- and intra-observer, and scan-rescan reproducibility. CONCLUSION: We demonstrated that aortic and mitral hemodynamics can efficiently be quantified from 4 D flow MRI using assisted valve detection with machine learning.
Authors: See Hooi Ewe; Victoria Delgado; Rob van der Geest; Jos J M Westenberg; Marlieke L A Haeck; Tomasz G Witkowski; Dominique Auger; Nina Ajmone Marsan; Eduard R Holman; Albert de Roos; Martin J Schalij; Jeroen J Bax; Allard Sieders; Hans-Marc J Siebelink Journal: Am J Cardiol Date: 2013-05-15 Impact factor: 2.778
Authors: Rick A Nishimura; Catherine M Otto; Robert O Bonow; Blase A Carabello; John P Erwin; Robert A Guyton; Patrick T O'Gara; Carlos E Ruiz; Nikolaos J Skubas; Paul Sorajja; Thoralf M Sundt; James D Thomas Journal: Circulation Date: 2014-03-03 Impact factor: 29.690
Authors: Helmut Baumgartner; Volkmar Falk; Jeroen J Bax; Michele De Bonis; Christian Hamm; Per Johan Holm; Bernard Iung; Patrizio Lancellotti; Emmanuel Lansac; Daniel Rodriguez Muñoz; Raphael Rosenhek; Johan Sjögren; Pilar Tornos Mas; Alec Vahanian; Thomas Walther; Olaf Wendler; Stephan Windecker; Jose Luis Zamorano Journal: Eur Heart J Date: 2017-09-21 Impact factor: 29.983
Authors: Martin Penicka; Jan Vecera; Daniela C Mirica; Martin Kotrc; Radka Kockova; Guy Van Camp Journal: Circulation Date: 2017-12-21 Impact factor: 29.690
Authors: Saul G Myerson; Joanna d'Arcy; Jonathan P Christiansen; Laura E Dobson; Raad Mohiaddin; Jane M Francis; Bernard Prendergast; John P Greenwood; Theodoros D Karamitsos; Stefan Neubauer Journal: Circulation Date: 2016-05-17 Impact factor: 29.690
Authors: Jos J M Westenberg; Stijntje D Roes; Nina Ajmone Marsan; Nico M J Binnendijk; Joost Doornbos; Jeroen J Bax; Johan H C Reiber; Albert de Roos; Robert J van der Geest Journal: Radiology Date: 2008-10-10 Impact factor: 11.105
Authors: Michael Markl; Andreas Harloff; Thorsten A Bley; Maxim Zaitsev; Bernd Jung; Ernst Weigang; Mathias Langer; Jürgen Hennig; Alex Frydrychowicz Journal: J Magn Reson Imaging Date: 2007-04 Impact factor: 4.813
Authors: Patrick Geeraert; Fatemehsadat Jamalidinan; Fiona Burns; Kelly Jarvis; Michael S Bristow; Carmen Lydell; Silvia S Hidalgo Tobon; Benito de Celis Alonso; Paul W M Fedak; James A White; Julio Garcia Journal: Front Bioeng Biotechnol Date: 2022-01-13
Authors: Shirin Aliabadi; Alireza Sojoudi; Murad F Bandali; Michael S Bristow; Carmen Lydell; Paul W M Fedak; James A White; Julio Garcia Journal: Front Cardiovasc Med Date: 2022-08-24