开发重症监护病房住院病人静脉血栓栓塞风险评估工具。

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-01-01 DOI:10.1177/10760296241280624
Chuanlin Zhang, Jie Mi, Xueqin Wang, Ruiying Gan, Xinyi Luo, Zhi Nie, Xiaoya Chen, Zeju Zhang
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引用次数: 0

摘要

背景:重症监护病房患者的 VTE 发生率很高。美国胸科医师学会抗血栓实践指南建议对所有重症监护病房患者进行 VTE 风险评估。虽然有几种 VTE 风险评估工具可用于评估住院患者的风险因素,但还没有专门用于评估 ICU 患者 VTE 风险的有效工具:我们在 2018 年 6 月至 2022 年 10 月期间进行了一项回顾性队列研究。我们从一家混合型重症监护室收治的各种诊断患者的电子病历中获取了数据。采用多变量逻辑回归分析评估 VTE 的独立风险因素。采用受体操作特征曲线(ROC)分析不同工具的预测准确性:共纳入 566 例患者,其中 89 例(15.7%)发生 VTE,62.9% 为无症状 VTE。根据多变量分析确定的独立风险因素得出了一个预测模型(ICU-VTE 预测模型)。ICU-VTE 预测模型包括 8 个独立风险因素:VTE 病史(3 分)、固定时间≥4 天(3 分)、多次外伤(3 分)、年龄≥70 岁(2 分)、血小板计数 >250 × 103/μL (2 分)、中心静脉导管插入术(1 分)、有创机械通气(1 分)、呼吸衰竭或心力衰竭(1 分)。得分 0-4 分的患者发生 VTE 的风险较低(1.81%)。得分 5-6 分的患者属于中度风险,中度风险类别的 VTE 总发生率为 17.1%(几率比 [OR],11.1;95% 置信区间 [CI],4.2-29.4)。得分≥7 分者发生 VTE 的风险较高(44.1%)(OR,42.6;95% CI,16.4-110.3)。ICU-VTE 预测模型的曲线下面积(AUC)为 0.838,ICU-VTE 预测模型与其他三种工具的 AUC 差异具有统计学意义(ICU-VTE 评分,Z = 3.723,P P P 结论:我们在重症监护室住院患者中发现了获得性 VTE 的八个独立风险因素,并推导出一个新的 ICU-VTE 风险评估模型。该模型旨在预测 ICU 患者无症状 VTE。与现有工具相比,新模型具有更高的预测准确性。需要开展一项前瞻性研究,对该工具进行外部验证,并对重症监护室患者进行风险分层。
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Development of a Risk Assessment Tool for Venous Thromboembolism among Hospitalized Patients in the ICU.

Background: ICU patients have a high incidence of VTE. The American College of Chest Physicians antithrombotic practice guidelines recommend assessing the risk of VTE in all ICU patients. Although several VTE risk assessment tools exist to evaluate the risk factors among hospitalized patients, there is no validated tool specifically for assessing the risk of VTE in ICU patients.

Methods: A retrospective corhort study was conducted between June 2018 and October 2022. We obtained data from the electronic medical records of patients with a variety of diagnoses admitted to a mixed ICU. Multivariable logistic regression analysis was used to evaluate the independent risk factors of VTE. Receiver operating characteristic (ROC) curves were used to analyse the predictive accuracy of different tools.

Results: A total of 566 patients were included, and VTE occurred in 89 patients (15.7%), 62.9% was asymptomatic VTE. A prediction model (the ICU-VTE prediction model) was derived from the independent risk factors identified using multivariate analysis. The ICU-VTE prediction model included eight independent risk factors: history of VTE (3 points), immobilization ≥4 days (3 points), multiple trauma (3 points), age ≥70 years (2 points), platelet count >250 × 103/μL (2 points), central venous catheterization (1 point), invasive mechanical ventilation (1 point), and respiratory failure or heart failure (1 point). Patients with a score of 0-4 points had a low (1.81%) risk of VTE. Patients were at intermediate risk, scoring 5-6 points, and the overall incidence of VTE in the intermediate-risk category was 17.1% (odds ratio [OR], 11.1; 95% confidence interval [CI], 4.2-29.4). Those with a score ≥7 points had a high (44.1%) risk of VTE (OR, 42.6; 95% CI, 16.4-110.3). The area under the curve (AUC) of the ICU-VTE prediction model was 0.838, and the differences in the AUCs were statistically significant between the ICU-VTE prediction model and the other three tools (ICU-VTE score, Z = 3.723, P < 0.001; Caprini risk assessment model, Z = 6.212, P < 0.001; Padua prediction score, Z = 7.120, P < 0.001).

Conclusions: We identified eight independent risk factors for acquired VTE among hospitalized patients in the ICU, deriving a new ICU-VTE risk assessment model. The model aims to predict asymptomatic VTE in ICU patients. The new model has higher predictive accuracy than the current tools. A prospective study is required for external validation of the tool and risk stratification in ICU patients.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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