狼牙棒
部分流量储备
医学
四分位间距
狭窄
接收机工作特性
放射科
心脏病学
曲线下面积
内科学
计算机断层血管造影
血管造影
心肌梗塞
经皮冠状动脉介入治疗
冠状动脉造影
作者
Philipp L. von Knebel Doeberitz,Carlo N. De Cecco,U. Joseph Schoepf,Moritz H. Albrecht,Marly van Assen,Domenico De Santis,Jeffrey Gaskins,Simon S. Martin,Maximilian J. Bauer,Ullrich Ebersberger,Dante A. Giovagnoli,Ákos Varga‐Szemes,Richard R. Bayer,Stefan O. Schönberg,Christian Tesche
标识
DOI:10.1016/j.amjcard.2019.07.061
摘要
This study investigated the impact of coronary CT angiography (cCTA)-derived plaque markers and machine-learning-based CT-derived fractional flow reserve (CT-FFR) to identify adverse cardiac outcome. Data of 82 patients (60 ± 11 years, 62% men) who underwent cCTA and invasive coronary angiography (ICA) were analyzed in this single-center retrospective, institutional review board-approved, HIPAA-compliant study. Follow-up was performed to record major adverse cardiac events (MACE). Plaque quantification of lesions responsible for MACE and control lesions was retrospectively performed semiautomatically from cCTA together with machine-learning based CT-FFR. The discriminatory value of plaque markers and CT-FFR to predict MACE was evaluated. After a median follow-up of 18.5 months (interquartile range 11.5 to 26.6 months), MACE was observed in 18 patients (21%). In a multivariate analysis the following markers were predictors of MACE (odds ratio [OR]): lesion length (OR 1.16, p = 0.018), low-attenuation plaque (<30 HU) (OR 4.59, p = 0.003), Napkin ring sign (OR 2.71, p = 0.034), stenosis ≥50% (OR 3.83, p 0.042), and CT-FFR ≤0.80 (OR 7.78, p = 0.001). Receiver operating characteristics analysis including stenosis ≥50%, plaque markers and CT-FFR ≤0.80 (Area under the curve 0.94) showed incremental discriminatory power over stenosis ≥50% alone (Area under the curve 0.60, p <0.0001) for the prediction of MACE. cCTA-derived plaque markers and machine-learning CT-FFR demonstrate predictive value to identify MACE. In conclusion, combining plaque markers with machine-learning CT-FFR shows incremental discriminatory power over cCTA stenosis grading alone.
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