基于机器学习的虚弱指数预测经皮冠状动脉介入治疗患者预后的发展和验证

IF 2.5 Q2 CARDIAC & CARDIOVASCULAR SYSTEMS IJC Heart and Vasculature Pub Date : 2024-12-01 DOI:10.1016/j.ijcha.2024.101511
John T.Y. Soong , L.F. Tan , Rodney Y.H. Soh , W.B. He , Andie H. Djohan , H.W. Sim , T.C. Yeo , H.C. Tan , Mark Y.Y. Chan , C.H. Sia , M.L. Feng
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引用次数: 0

摘要

经皮冠状动脉介入治疗(PCI)患者虚弱与死亡率增加相关。现有的可操作的脆弱性测量工具是有限的,并且需要资源密集型的过程。我们开发并验证了一种工具,通过收集PCI患者的数据来识别和分层虚弱,并探索其预测PCI后不良临床结果的预测能力。方法2014年至2015年,在三级中心接受半紧急或选择性PCI治疗的1732例患者纳入研究。包括人口统计学、合并症、调查和33±37个月的临床结果等变量进行分析。构建Logistic回归模型和极端梯度增强(XGBoost)机器学习模型来识别PCI后不良临床结果的预测因素。最终模型的预测概率用受试者工作特征曲线下面积(AUC)进行评估。结果通过模型分析,衰弱指数(FI)、年龄和性别是预测临床不良结局最重要的3个特征,其中FI贡献最大。调整后,FI预测PCI术后心源性死亡和院内死亡的几率仍然显著[1.94 (95% CI1.79-2.10);p & lt;0.001, 2.04(95% ci 1.87-2.23);p & lt;分别为0.001)。与logistic回归模型相比,XGBoost机器学习模型提高了PCI后心脏死亡[AUC 0.83(95% CI 0.80-0.86)]和住院死亡[AUC 0.83(95% CI 0.80-0.86)]的预测能力。结论:使用新型机器学习方法开发的模型对PCI后的重要临床结果具有良好的预测能力,并有可能在医院信息系统中实现自动化。
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Development and validation of machine learning-derived frailty index in predicting outcomes of patients undergoing percutaneous coronary intervention

Introduction

Frailty is associated with increased mortality in patients with percutaneous coronary intervention (PCI). Existing operationalized frailty measurement tools are limited and require resource intensive process. We developed and validated a tool to identify and stratify frailty using collected data for patients who underwent PCI and explored its predictive power to predict adverse clinical outcomes post PCI.

Methods

Between 2014 and 2015, 1,732 patients who underwent semi-urgent or elective PCI in a tertiary centre were included. Variables including demographics, co-morbidities, investigations and clinical outcomes to 33 ± 37 months were analysed. Logistic regression model and Extreme Gradient Boosting (XGBoost) machine learning model were constructed to identify predictors of adverse clinical outcomes post PCI. The final models’ predicted probabilities were assessed with area under receiver operating characteristic curve (AUC).

Results

With model analysis, frailty index (FI), age and gender were the 3 most important features for adverse clinical outcomes prediction, with FI contributing the most. After adjustment, the odds of FI to predict cardiac death and in-hospital death post PCI remained significant [1.94 (95 %CI1.79–2.10); p < 0.001, 2.04(95 %CI 1.87–2.23); p < 0.001 respectively]. The XGBoost machine learning models improved predictive power for cardiac death [AUC 0.83(95 %CI 0.80–0.86)] and in hospital death [AUC 0.83(95 %CI 0.80–0.86)] post PCI compared to logistic regression models.

Conclusion

The resultant model developed using novel machine learning methodologies had good predictive power for significant clinical outcomes post PCI with potential to be automated within hospital information systems.
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来源期刊
IJC Heart and Vasculature
IJC Heart and Vasculature Medicine-Cardiology and Cardiovascular Medicine
CiteScore
4.90
自引率
10.30%
发文量
216
审稿时长
56 days
期刊介绍: IJC Heart & Vasculature is an online-only, open-access journal dedicated to publishing original articles and reviews (also Editorials and Letters to the Editor) which report on structural and functional cardiovascular pathology, with an emphasis on imaging and disease pathophysiology. Articles must be authentic, educational, clinically relevant, and original in their content and scientific approach. IJC Heart & Vasculature requires the highest standards of scientific integrity in order to promote reliable, reproducible and verifiable research findings. All authors are advised to consult the Principles of Ethical Publishing in the International Journal of Cardiology before submitting a manuscript. Submission of a manuscript to this journal gives the publisher the right to publish that paper if it is accepted. Manuscripts may be edited to improve clarity and expression.
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