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有备无患:用于预测导管相关性冠状动脉和主动脉损伤的机器学习算法。

Forewarned Is Forearmed: Machine Learning Algorithms for the Prediction of Catheter-Induced Coronary and Aortic Injuries.

机构信息

Department of Invasive Cardiology and Interventional Radiology, St. Adalbert's Hospital, Copernicus PL, 80-462 Gdańsk, Poland.

Department of Cardiology, St. Vincent de Paul Hospital, Pomeranian Hospitals, 81-348 Gdynia, Poland.

出版信息

Int J Environ Res Public Health. 2022 Dec 18;19(24):17002. doi: 10.3390/ijerph192417002.

Abstract

Catheter-induced dissections (CID) of coronary arteries and/or the aorta are among the most dangerous complications of percutaneous coronary procedures, yet the data on their risk factors are anecdotal. Logistic regression and five more advanced machine learning techniques were applied to determine the most significant predictors of dissection. Model performance comparison and feature importance ranking were evaluated. We identified 124 cases of CID in electronic databases containing 84,223 records of diagnostic and interventional coronary procedures from the years 2000-2022. Based on the f1-score, Extreme Gradient Boosting (XGBoost) was found to have the optimal balance between positive predictive value (precision) and sensitivity (recall). As by the XGBoost, the strongest predictors were the use of a guiding catheter (angioplasty), small/stenotic ostium, radial access, hypertension, acute myocardial infarction, prior angioplasty, female gender, chronic renal failure, atypical coronary origin, and chronic obstructive pulmonary disease. Risk prediction can be bolstered with machine learning algorithms and provide valuable clinical decision support. Based on the proposed model, a profile of 'a perfect dissection candidate' can be defined. In patients with 'a clustering' of dissection predictors, a less aggressive catheter and/or modification of the access site should be considered.

摘要

冠状动脉和/或主动脉的导管相关性夹层(Catheter-induced dissections,CID)是经皮冠状动脉介入治疗中最危险的并发症之一,但关于其危险因素的数据仍属传闻。本研究采用逻辑回归和五种更先进的机器学习技术来确定夹层的最重要预测因素,并对模型性能比较和特征重要性排名进行评估。我们在电子数据库中确定了 124 例 CID,这些数据库包含了 2000 年至 2022 年期间 84223 例诊断性和介入性冠状动脉手术的记录。基于 f1 分数,极端梯度提升(Extreme Gradient Boosting,XGBoost)在阳性预测值(精准度)和灵敏度(召回率)之间取得了最佳平衡。根据 XGBoost 算法,最强的预测因素是使用引导导管(血管成形术)、小/狭窄的开口、桡动脉入路、高血压、急性心肌梗死、先前的血管成形术、女性、慢性肾衰竭、非典型冠状动脉起源和慢性阻塞性肺疾病。机器学习算法可增强风险预测,并为临床决策提供有价值的支持。基于所提出的模型,可以定义“完美夹层候选者”的特征。在具有“夹层预测因素聚类”的患者中,应考虑使用侵入性较小的导管和/或改变入路部位。

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