预测心脏手术后重症监护室住院时间的多机构模型。

IF 4.9 1区 医学 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS Journal of Thoracic and Cardiovascular Surgery Pub Date : 2024-11-16 DOI:10.1016/j.jtcvs.2024.11.009
Alex M Wisniewski, Xin-Qun Wang, Grant Sutherland, Evan P Rotar, Raymond J Strobel, Andrew Young, Anthony V Norman, Jared Beller, Mohammed Quader, Nicholas R Teman
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引用次数: 0

摘要

目的:重症监护室的住院时间(ICU LOS)占心脏手术后住院费用的很大一部分。胸外科医师协会(STS)的风险计算器可预测总住院时间,但不能区分重症监护室和非重症监护室的时间。我们试图建立一个 ICU LOS 延长的预测模型:方法:纳入在区域协作组织内接受 STS 指数手术(2014-2021 年)的成人患者。ICU LOS延长的定义是术后ICU护理时间≥72小时。我们利用逻辑回归模型建立了一个 ICU LOS 延长的预测模型,其中包含了我们之前的单中心研究中确定的预先指定的风险因素。预测模型的内部验证采用引导重采样法。预测模型的性能通过辨别度和校准度进行评估:我们确定了符合纳入标准的 37,519 名患者,其中 11,801 名(31.5%)患者经历了 ICU 住院时间延长。从逻辑回归模型来看,ICU LOS 延长与除睡眠呼吸暂停外的所有预设因素均有显著相关性(所有 pConclusions):利用术前数据可以很准确地预测心脏手术后重症监护室住院时间的延长,有助于患者咨询和资源分配。通过使用全州范围的数据库,该模型的应用范围可扩展至其他实践。
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Multi-Institutional Model to Predict Intensive Care Unit Length of Stay after Cardiac Surgery.

Objective: Intensive care unit length of stay (ICU LOS) accounts for a large percent of inpatient cost following cardiac surgery. The Society of Thoracic Surgeons (STS) risk calculator predicts total LOS but does not discriminate between ICU and non-ICU time. We sought to develop a predictive model of prolonged ICU LOS.

Methods: Adult patients undergoing STS index operations within a regional collaborative (2014-2021) were included. Prolonged ICU LOS was defined as ICU care for ≥72 hours postoperatively. A logistic regression model was utilized to develop a prediction model for the prolonged ICU LOS with pre-specified risk factors identified from our previous single center study. Internal prediction model validation was determined by bootstrapping resampling method. The prediction model performance was assessed by measures of discrimination and calibration.

Results: We identified 37,519 patients that met inclusion criteria with 11,801 (31.5%) patients experiencing prolonged ICU stay. From the logistic regression model, there were significant associations between prolonged ICU LOS and all pre-specified factors except sleep apnea (all p<0.05). MELD, preoperative intra-aortic balloon pump use, and procedure types were the most significant predictors of prolonged ICU LOS (all p<0.0001). Our prediction model had not only a good discrimination power (bootstrapped-corrected C-index=0.71) but also excellent calibration (bootstrapped-corrected mean absolute error=0.005).

Conclusions: Prolonged ICU stay following cardiac surgery can be predicted with good predictive accuracy utilizing preoperative data and may aid in patient counseling and resource allocation. Through use of a state-wide database, the application of this model may extend to other practices.

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来源期刊
CiteScore
11.20
自引率
10.00%
发文量
1079
审稿时长
68 days
期刊介绍: The Journal of Thoracic and Cardiovascular Surgery presents original, peer-reviewed articles on diseases of the heart, great vessels, lungs and thorax with emphasis on surgical interventions. An official publication of The American Association for Thoracic Surgery and The Western Thoracic Surgical Association, the Journal focuses on techniques and developments in acquired cardiac surgery, congenital cardiac repair, thoracic procedures, heart and lung transplantation, mechanical circulatory support and other procedures.
期刊最新文献
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