Discover the SciOpen Platform and Achieve Your Research Goals with Ease.
Search articles, authors, keywords, DOl and etc.
Early cerebrovascular events (CVEs) following transcatheter aortic valve replacement (TAVR) are severe complications, but effective methods for predicting and preventing these events have not been well established. A systematic review and meta-analysis were performed to identify significant predictors of early CVEs post-TAVR.
MEDLINE/Embase databases were searched for articles published between December 2015 and April 2023. Original studies evaluating predictors of CVEs within 30 days post-TAVR after adjusting for confounders were included. Two investigators independently extracted data following the PRISMA statement. Meta-analyses of multivariable data were performed using DerSimonian and Laird random-effects models, with results expressed as odds ratios (ORs) and 95% confidence intervals (CIs). Robustness was assessed via Harbord’s test, nonparametric trim-and-fill analysis, leave-one-out sensitivity analysis, the QUIPS quality assessment tools, meta-regression, and subgroup analyses.
Among the 74 included studies, multivariate meta-analyses identified 11 predictors of early CVEs, including 9 patient-level predictors-a CHA2DS2-VASc ≥ 5, no prior heart failure, diabetes, isolated aortic stenosis, carotid artery stenosis, peripheral artery disease, advanced age, New York Heart Association class ≥ III, and significant left ventricular outflow tract calcification-and 2 procedure-level predictors: the absence of cerebral embolization protection and post-dilation. Additionally, 10 patient-level factors and 5 procedure-level factors were not associated with early CVEs, although significant heterogeneity was observed in most analyses.
This study identified multiple patient-level and procedure-level factors associated or not associated with early CVEs after TAVR. These findings support the development of a comprehensive risk prediction model that can accommodate diverse patient populations and evolving procedural techniques, thereby enhancing clinical risk management strategies.
This is an open access article under the terms of the Creative Commons Attribution License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
Comments on this article