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添加到基线预测模型中的术中变量可增强胸外科手术后高心血管风险患者心肌损伤的预测性能
Authors Lin S , Huang X , Zhang Y, Zhang X, Cheng E, Liu J
Received 27 February 2023
Accepted for publication 8 May 2023
Published 24 May 2023 Volume 2023:19 Pages 435—445
DOI https://doi.org/10.2147/TCRM.S408135
Checked for plagiarism Yes
Review by Single anonymous peer review
Peer reviewer comments 2
Editor who approved publication: Dr Deyun Wang
Purpose: Myocardial injury after non-cardiac surgery is closely related to major adverse cardiac and cerebrovascular event and is difficult to identify. This study aims to investigate how to predict the myocardial injury of thoracic surgery and whether intraoperative variables contribute to the prediction of myocardial injury.
Methods: The prospective study included adult patients with high cardiovascular risk who underwent elective thoracic surgery from May 2022 to October 2022. Multivariate logistic regression was used to establish a model with baseline variables and a model with baseline and intraoperative variables. We compare the predictive performance of two models for postoperative myocardial injury.
Results: In general, 31.5% (94 of 298) occurred myocardial injury. Age ≥ 65 years old, obesity, smoking, preoperative hsTnT, and one-lung ventilation time were independent predictors of myocardial injury. Compared with baseline model, the intraoperative variables improved model fit, modestly improved the reclassification (continuous net reclassification improvement 0.409, 95% CI, 0.169 to 0.648, P < 0.001, improved integrated discrimination 0.036, 95% CI, 0.011 to 0.062, P < 0.01) of myocardial injury cases, and achieved higher net benefit in decision curve analysis.
Conclusion: The risk stratification and anesthesia management of high-risk patients are essential. The addition of intraoperative variables to the baseline predictive model improved the performance of the overall model of myocardial injury and helped anesthesiologists screen out the patients at the greatest risk for myocardial injury and adjust anesthesia strategies.
Keywords: prediction model, myocardial injury, thoracic surgery, cardiovascular risk, hsTnT