Patient-specific computational simulation of coronary artery bifurcation stenting

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作者
Shijia Zhao
Wei Wu
Saurabhi Samant
Behram Khan
Ghassan S. Kassab
Yusuke Watanabe
Yoshinobu Murasato
Mohammadali Sharzehee
Janaki Makadia
Daniel Zolty
Anastasios Panagopoulos
Francesco Burzotta
Francesco Migliavacca
Thomas W. Johnson
Thierry Lefevre
Jens Flensted Lassen
Emmanouil S. Brilakis
Deepak L. Bhatt
George Dangas
Claudio Chiastra
Goran Stankovic
Yves Louvard
Yiannis S. Chatzizisis
机构
[1] University of Nebraska Medical Center,Cardiovascular Biology and Biomechanics Laboratory, Cardiovascular Division
[2] California Medical Innovation Institute,Department of Cardiology
[3] Teikyo University Hospital,Department of Cardiology
[4] National Hospital Organization Kyushu Medical Center,Department of Cardiovascular Sciences
[5] Fondazione Policlinico Universitario A. Gemelli IRCCS Università Cattolica del Sacro Cuore,Laboratory of Biological Structure Mechanics (LaBS), Department of Chemistry, Materials and Chemical Engineering “Giulio Natta”
[6] Politecnico di Milano,Department of Cardiology, Bristol Heart Institute
[7] University Hospitals Bristol NHSFT and University of Bristol,Ramsay Générale de Santé
[8] Hopital Privé Jacques Cartier, Institut cardiovasculaire Paris Sud
[9] Odense Universitets Hospital and University of Southern Denmark,Department of Cardiology B
[10] Minneapolis Heart Institute,Brigham and Women’s Hospital
[11] Harvard Medical School,The Zena and Michael A. Wiener Cardiovascular Institute, Mount Sinai Hospital
[12] Icahn School of Medicine,PoliTo(BIO)Med Lab, Department of Mechanical and Aerospace Engineering
[13] Politecnico di Torino,Department of Cardiology
[14] Clinical Center of Serbia,undefined
[15] Institut Cardiovasculaire Paris Sud,undefined
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摘要
Patient-specific and lesion-specific computational simulation of bifurcation stenting is an attractive approach to achieve individualized pre-procedural planning that could improve outcomes. The objectives of this work were to describe and validate a novel platform for fully computational patient-specific coronary bifurcation stenting. Our computational stent simulation platform was trained using n = 4 patient-specific bench bifurcation models (n = 17 simulations), and n = 5 clinical bifurcation cases (training group, n = 23 simulations). The platform was blindly tested in n = 5 clinical bifurcation cases (testing group, n = 29 simulations). A variety of stent platforms and stent techniques with 1- or 2-stents was used. Post-stenting imaging with micro-computed tomography (μCT) for bench group and optical coherence tomography (OCT) for clinical groups were used as reference for the training and testing of computational coronary bifurcation stenting. There was a very high agreement for mean lumen diameter (MLD) between stent simulations and post-stenting μCT in bench cases yielding an overall bias of 0.03 (− 0.28 to 0.34) mm. Similarly, there was a high agreement for MLD between stent simulation and OCT in clinical training group [bias 0.08 (− 0.24 to 0.41) mm], and clinical testing group [bias 0.08 (− 0.29 to 0.46) mm]. Quantitatively and qualitatively stent size and shape in computational stenting was in high agreement with clinical cases, yielding an overall bias of < 0.15 mm. Patient-specific computational stenting of coronary bifurcations is a feasible and accurate approach. Future clinical studies are warranted to investigate the ability of computational stenting simulations to guide decision-making in the cardiac catheterization laboratory and improve clinical outcomes.
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