4.7 Article

Biomechanical Identification of High-Risk Patients Requiring Permanent Pacemaker After Transcatheter Aortic Valve Replacement

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/fbioe.2021.615090

关键词

transcatheter aortic valve replacement; atrioventricular block; calcification; stress; finite element method

资金

  1. National Institutes of Health (NIH) [5R01DE027027-04, 5U01AR069395-05]

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This study utilized biomechanical stresses and machine learning methods to accurately predict the risk of AVB after TAVR, optimizing valve size and shape to improve clinical outcomes. The combination of biomechanical properties and machine learning significantly enhanced the prediction of surgical results.
Background Cardiac conduction disturbance requiring new permanent pacemaker implantation (PPI) is an important complication of TAVR that has been associated with increased mortality. It is extremely challenging to optimize the valve size alone to prevent a complete atrioventricular block (AVB). Methods In this study, we randomly took 48 patients who underwent TAVR and had been followed for at least 2 years to assess the risk of AVB. CT images of 48 patients with TAVR were analyzed using three-dimensional (3D) anatomical models of the aortic valve apparatus. The stresses were formulated according to loading force and tissue properties. Support vector regression (SVR) was used to model the relationship between AVB risk and biomechanical stresses. To avoid AVB, overlapping regions on the prosthetic valve where AV bundle passes will be removed as cylindrical sector with the angle theta. Thus, the optimization of the valve shape will be predicted with the joint optimization of the theta and valve size R. Results The average AVB risk prediction accuracy was 83.33% in the range from 0.8-0.85 with 95% CI for all cases; specifically, 85.71% for Group A (no AVB), and 80.0% for Group B (undergoing AVB after the TAVR). Conclusions This model can estimate the optimal valve size and shape to avoid the risk of AVB after TAVR. This optimization may eliminate the excessive stresses to keep the normal function of both AV bundle and valve leaflets, leading to a favorable clinical outcome. The combination of biomechanical properties and machine learning method substantially improved prediction of surgical results.

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