Systematic review and meta-analysis of current risk models in predicting short-term mortality after transcatheter aortic valve replacement

医学 荟萃分析 优势比 统计的 阀门更换 危险分层 内科学 统计 数学 狭窄
作者
Tariq Jamal Siddiqi,Muhammad Usman,Muhammad Shahzeb Khan,Muhammad Farhan Ali Khan,Haris Riaz,Safi U. Khan,M. Hassan Murad,Clifford J. Kavinsky,Rami Doukky,Ankur Kalra,Milind Y. Desai,Deepak L. Bhatt
出处
期刊:Eurointervention [European Association of Percutaneous Cardiovascular Interventions]
卷期号:15 (17): 1497-1505 被引量:5
标识
DOI:10.4244/eij-d-19-00636
摘要

The aim of this study was to evaluate the performance of risk stratification models (RSMs) in predicting short-term mortality after transcatheter aortic valve replacement (TAVR).MEDLINE and Scopus were queried to identify studies which validated RSMs designed to assess 30-day or in-hospital mortality after TAVR. Discrimination and calibration were assessed using C-statistics and observed/expected ratios (OERs), respectively. C-statistics were pooled using a random-effects inverse-variance method, while OERs were pooled using the Peto odds ratio. A good RSM is defined as one with a C-statistic >0.7 and an OER close to 1.0. Twenty-four studies (n=68,215 patients) testing 11 different RSMs were identified. Discrimination of all RSMs was poor (C-statistic <0.7); however, certain TAVR-specific RSMs such as the in-hospital STS/ACC TVT (C-statistic=0.65) and STT (C-statistic=0.66) predicted individual mortality more reliably than surgical models (C-statistic range=0.59-0.61). A good calibration was demonstrated by the in-hospital STS/ACC TVT (OER=0.99), 30-day STS/ACC TVT (OER=1.08) and STS (OER=1.01) models. Baseline dialysis (OER: 2.64 [1.88, 3.70]; p<0.001) was the strongest predictor of mortality.This study demonstrates that the STS/ACC TVT model (in-hospital and 30-day) and the STS model have accurate calibration, making them useful for comparison of centre-level risk-adjusted mortality. In contrast, the discriminative ability of currently available models is limited.

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