STEMI-OP住院死亡率预测算法:接受初级PCI的老年患者虚弱综合机器学习

IF 6 Q2 GERIATRICS & GERONTOLOGY
Tan Van Nguyen, Quyen The Nguyen, Huong Quynh Nguyen, Nghia Thuong Nguyen, Khai Duc Luong, Lan Hoang Do Thi, Tu Cam Nguyen, Thuan Hoang Vo, Phan Huu Le, Phuc Thien Tran, Thanh Dinh Le
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引用次数: 0

摘要

尽管医疗保健取得了进步,但接受初级经皮冠状动脉介入治疗(PCI)的st段抬高型心肌梗死(STEMI)老年患者目前面临着很高的住院死亡率。传统的预后模型主要是在老年参与者较少的高加索人群中开发的,使用经典的统计方法,可能在东南亚环境中表现不佳。本研究探讨了对基于人工智能的风险评估模型(STEMI- op算法)的需求,该模型专为越南60岁及以上的STEMI患者在初次PCI后设计。使用pci术前和术后特征开发和验证机器学习(ML)模型,并使用先进的特征选择技术来识别关键预测因子。采用SHapley加性解释和因果随机森林来提高特征和结果之间的可解释性和因果关系,强调预测住院死亡率的关键因素,包括Killip分类、临床虚弱量表、血糖水平和肌酐水平。采用ElasticNet回归的CatBoost模型进行pci前预测,采用Ridge回归的Random Forest模型进行pci后预测,与传统风险评分相比,AUC值分别达到92.16%和95.10%,优于GRACE 2.0评分(83.48%)和CADILLAC评分(87.01%)。STEMI- op算法结合了脆弱性和先进的ML技术,产生了更精确、个性化的风险评估,可以增强临床决策,改善接受初级PCI治疗的老年STEMI患者的预后。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

STEMI-OP in-hospital mortality prediction algorithms: Frailty-integrated machine learning in older patients undergoing primary PCI.

STEMI-OP in-hospital mortality prediction algorithms: Frailty-integrated machine learning in older patients undergoing primary PCI.

STEMI-OP in-hospital mortality prediction algorithms: Frailty-integrated machine learning in older patients undergoing primary PCI.

STEMI-OP in-hospital mortality prediction algorithms: Frailty-integrated machine learning in older patients undergoing primary PCI.

Despite advances in medical care, older patients with ST-elevation myocardial infarction (STEMI) undergoing primary percutaneous coronary intervention (PCI) currently face high in-hospital mortality rates. Traditional prognostic models, primarily developed in Caucasian populations with fewer older participants and using classical statistical approaches, may not perform well in Southeast Asian settings. This study explores the need for artificial intelligence-based risk assessment models-the STEMI-OP algorithms-designed explicitly for STEMI patients aged 60 and older following primary PCI in Vietnam. Machine learning (ML) models were developed and validated using pre- and post-PCI features, with advanced feature selection techniques to identify key predictors. SHapley Additive exPlanations and Causal Random Forests were employed to improve interpretability and causal relationships between features and outcomes, highlighting the key factors, including the Killip classification, the Clinical Frailty Scale, glucose levels, and creatinine levels in predicting in-hospital mortality. The CatBoost model with ElasticNet regression for pre-PCI prediction and the Random Forest model with Ridge regression post-PCI prediction demonstrated significantly superior performance compared to traditional risk scores, achieving AUC values of 92.16% and 95.10%, respectively, outperforming the GRACE 2.0 score (83.48%) and the CADILLAC score (87.01%). By incorporating frailty and employing advanced ML techniques, the STEMI-OP algorithms produced more precise, personalized risk assessments that could enhance clinical decision-making and improve outcomes for older STEMI patients undergoing primary PCI.

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