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Enabling automated device size selection for transcatheter aortic valve implantation

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Abstract
The number of transcatheter aortic valve implantation (TAVI) procedures is expected to increase significantly in the coming years. Improving efficiency will become essential for experienced operators performing large TAVI volumes, while new operators will require training and may benefit from accurate support. In this work, we present a fast deep learning method that can predict aortic annulus perimeter and area automatically from aortic annular plane images. We propose a method combining two deep convolutional neural networks followed by a postprocessing step. The models were trained with 355 patients using modern deep learning techniques, and the method was evaluated on another 118 patients. The method was validated against an interoperator variability study of the same 118 patients. The differences between the manually obtained aortic annulus measurements and the automatic predictions were similar to the differences between two independent observers (paired diff. of 3.3 +/- 16.8 mm(2) vs. 1.3 +/- 21.1 mm(2) for the area and a paired diff. of 0.6 +/- 1.7 mm vs. 0.2 +/- 2.5 mm for the perimeter). The area and perimeter were used to retrieve the suggested prosthesis sizes for the Edwards Sapien 3 and the Medtronic Evolut device retrospectively. The automatically obtained device size selections accorded well with the device sizes selected by operator 1. The total analysis time from aortic annular plane to prosthesis size was below one second. This study showed that automated TAVI device size selection using the proposed method is fast, accurate, and reproducible. Comparison with the interobserver variability has shown the reliability of the strategy, and embedding this tool based on deep learning in the preoperative planning routine has the potential to increase the efficiency while ensuring accuracy.
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REPLACEMENT

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MLA
Astudillo, Patricio, et al. “Enabling Automated Device Size Selection for Transcatheter Aortic Valve Implantation.” JOURNAL OF INTERVENTIONAL CARDIOLOGY, vol. 2019, 2019, doi:10.1155/2019/3591314.
APA
Astudillo, P., Mortier, P., Bosmans, J., De Backer, O., De Jaegere, P., De Beule, M., & Dambre, J. (2019). Enabling automated device size selection for transcatheter aortic valve implantation. JOURNAL OF INTERVENTIONAL CARDIOLOGY, 2019. https://doi.org/10.1155/2019/3591314
Chicago author-date
Astudillo, Patricio, Peter Mortier, Johan Bosmans, Ole De Backer, Peter De Jaegere, Matthieu De Beule, and Joni Dambre. 2019. “Enabling Automated Device Size Selection for Transcatheter Aortic Valve Implantation.” JOURNAL OF INTERVENTIONAL CARDIOLOGY 2019. https://doi.org/10.1155/2019/3591314.
Chicago author-date (all authors)
Astudillo, Patricio, Peter Mortier, Johan Bosmans, Ole De Backer, Peter De Jaegere, Matthieu De Beule, and Joni Dambre. 2019. “Enabling Automated Device Size Selection for Transcatheter Aortic Valve Implantation.” JOURNAL OF INTERVENTIONAL CARDIOLOGY 2019. doi:10.1155/2019/3591314.
Vancouver
1.
Astudillo P, Mortier P, Bosmans J, De Backer O, De Jaegere P, De Beule M, et al. Enabling automated device size selection for transcatheter aortic valve implantation. JOURNAL OF INTERVENTIONAL CARDIOLOGY. 2019;2019.
IEEE
[1]
P. Astudillo et al., “Enabling automated device size selection for transcatheter aortic valve implantation,” JOURNAL OF INTERVENTIONAL CARDIOLOGY, vol. 2019, 2019.
@article{8628278,
  abstract     = {{The number of transcatheter aortic valve implantation (TAVI) procedures is expected to increase significantly in the coming years. Improving efficiency will become essential for experienced operators performing large TAVI volumes, while new operators will require training and may benefit from accurate support. In this work, we present a fast deep learning method that can predict aortic annulus perimeter and area automatically from aortic annular plane images. We propose a method combining two deep convolutional neural networks followed by a postprocessing step. The models were trained with 355 patients using modern deep learning techniques, and the method was evaluated on another 118 patients. The method was validated against an interoperator variability study of the same 118 patients. The differences between the manually obtained aortic annulus measurements and the automatic predictions were similar to the differences between two independent observers (paired diff. of 3.3 +/- 16.8 mm(2) vs. 1.3 +/- 21.1 mm(2) for the area and a paired diff. of 0.6 +/- 1.7 mm vs. 0.2 +/- 2.5 mm for the perimeter). The area and perimeter were used to retrieve the suggested prosthesis sizes for the Edwards Sapien 3 and the Medtronic Evolut device retrospectively. The automatically obtained device size selections accorded well with the device sizes selected by operator 1. The total analysis time from aortic annular plane to prosthesis size was below one second. This study showed that automated TAVI device size selection using the proposed method is fast, accurate, and reproducible. Comparison with the interobserver variability has shown the reliability of the strategy, and embedding this tool based on deep learning in the preoperative planning routine has the potential to increase the efficiency while ensuring accuracy.}},
  articleno    = {{3591314}},
  author       = {{Astudillo, Patricio and Mortier, Peter and Bosmans, Johan and De Backer, Ole and De Jaegere, Peter and De Beule, Matthieu and Dambre, Joni}},
  issn         = {{0896-4327}},
  journal      = {{JOURNAL OF INTERVENTIONAL CARDIOLOGY}},
  keywords     = {{REPLACEMENT}},
  language     = {{eng}},
  pages        = {{7}},
  title        = {{Enabling automated device size selection for transcatheter aortic valve implantation}},
  url          = {{http://doi.org/10.1155/2019/3591314}},
  volume       = {{2019}},
  year         = {{2019}},
}

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