静脉血栓栓塞综合风险评估模型。

IF 2.8 2区 医学 Q2 PERIPHERAL VASCULAR DISEASE
Mary Sixian Lin, Hilary Hayssen, Minerva Mayorga-Carlin, Shalini Sahoo, Tariq Siddiqui, Georges Jreij, Brian R Englum, Phuong Nguyen, Yelena Yesha, John David Sorkin, Brajesh K Lal
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引用次数: 0

摘要

目的:静脉血栓栓塞症(VTE)是可预防的住院相关发病率和死亡率的原因之一。预防 VTE 需要准确的风险分级。联邦机构强制要求对所有入院患者进行 VTE 风险评估。我们已经证明,广泛使用的 Caprini(30 个风险因素)和 Padua(11 个风险因素)VTE 风险评估模型 (RAM) 在用于所有普通入院患者时,对 VTE 的预测能力有限。在此,我们检验了将所有 23 种可用的 VTE 风险评估模型中的风险因子结合在一起是否能提高 VTE 风险预测能力:我们分析了 2016 年 1 月至 2021 年 12 月期间全国 1,298 家退伍军人事务机构收治的 1,282,014 名手术和非手术患者的首次住院数据。我们采用逻辑回归法,利用所有 23 个可用的 VTE RAM 中的风险因子来预测入院 90 天内的 VTE。受体运行特征曲线下面积(AUC)、灵敏度、特异性、阳性预测值(PPV)和阴性预测值(NPV)用于量化我们模型的预测能力。这些指标是在两个诊断阈值下计算的,这两个阈值分别是:1)灵敏度+特异性-1 的值最大化;2)PPV 最大化,并使用 McNemar 检验进行比较。德隆-德隆检验用于比较AUC:排除数据缺失者后,分析了 1,185,633 名患者(平均年龄 66 岁,93% 为男性,72% 为白人),其中 33,253 人(2.8%)患有 VTE(DVT[深静脉血栓],19,218 人,1.6%;PE[肺栓塞],10,190 人,0.9%;PE+DVT,3,845 人,0.3%)。我们的复合 RAM 包括 102 个风险因子,与 Caprini RAM 风险因子相比,对 VTE 的预测更准确(AUC 复合模型:0.74;AUC Caprini RAM:0.74):0.74;AUC Caprini 风险因子模型:0.63;pConclusions:0.63; p结论:使用来自所有可用 VTE RAM 的 102 个风险因子的复合模型,我们改进了对全国超过 100 万普通医院住院患者的 VTE 预测。然而,这两个模型的灵敏度或 PPV 都不足以成为预测 VTE 的可靠指标。我们证明了目前可用的 VTE 风险预测工具的局限性;没有一种可用的 RAM 可以在普通医院人群中广泛使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A composite risk assessment model for venous thromboembolism.

Objective: Venous thromboembolism (VTE) is a preventable cause of hospitalization-related morbidity and mortality. VTE prevention requires accurate risk stratification. Federal agencies mandated VTE risk assessment for all hospital admissions. We have shown that the widely used Caprini (30 risk factors) and Padua (11 risk factors) VTE risk-assessment models (RAMs) have limited predictive ability for VTE when used for all general hospital admissions. Here, we test whether combining the risk factors from all 23 available VTE RAMs improves VTE risk prediction.

Methods: We analyzed data from the first hospitalizations of 1,282,014 surgical and non-surgical patients admitted to 1298 Veterans Affairs facilities nationwide between January 2016 and December 2021. We used logistic regression to predict VTE within 90 days of admission using risk factors from all 23 available VTE RAMs. Area under the receiver operating characteristic curves (AUC), sensitivity, specificity, and positive (PPV) and negative predictive values (NPV) were used to quantify the predictive power of our models. The metrics were computed at two diagnostic thresholds that maximized (1) the value of sensitivity + specificity-1; and (2) PPV and were compared using McNemar's test. The Delong-Delong test was used to compare AUCs.

Results: After excluding those with missing data, 1,185,633 patients (mean age, 66 years; 93% male; and 72% White) were analyzed, of whom 33,253 (2.8%) had a VTE (deep venous thrombosis [DVT], n = 19,218, 1.6%; pulmonary embolism [PE], n = 10,190, 0.9%; PE + DVT, n = 3845, 0.3%). Our composite RAM included 102 risk factors and improved prediction of VTE compared with the Caprini RAM risk factors (AUC composite model: 0.74; AUC Caprini risk-factor model: 0.63; P < .0001). When the sum of sensitivity and specificity-1 was maximized, the composite model demonstrated small improvements in sensitivity, specificity and PPV; NPV was high in both models. When PPV was maximized, the PPV of the composite model was improved but remained low. The nature of the relationship between NPV and PPV precluded any further gain in PPV by sacrificing NPV and sensitivity.

Conclusions: Using a composite of 102 risk factors from all available VTE RAMs, we improved VTE prediction in a large, national cohort of >1 million general hospital admissions. However, neither model has a sensitivity or PPV that permits it to be a reliable predictor of VTE. We demonstrate the limits of currently available VTE risk prediction tools; no available RAM is ready for widespread use in the general hospital population.

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来源期刊
Journal of vascular surgery. Venous and lymphatic disorders
Journal of vascular surgery. Venous and lymphatic disorders SURGERYPERIPHERAL VASCULAR DISEASE&n-PERIPHERAL VASCULAR DISEASE
CiteScore
6.30
自引率
18.80%
发文量
328
审稿时长
71 days
期刊介绍: Journal of Vascular Surgery: Venous and Lymphatic Disorders is one of a series of specialist journals launched by the Journal of Vascular Surgery. It aims to be the premier international Journal of medical, endovascular and surgical management of venous and lymphatic disorders. It publishes high quality clinical, research, case reports, techniques, and practice manuscripts related to all aspects of venous and lymphatic disorders, including malformations and wound care, with an emphasis on the practicing clinician. The journal seeks to provide novel and timely information to vascular surgeons, interventionalists, phlebologists, wound care specialists, and allied health professionals who treat patients presenting with vascular and lymphatic disorders. As the official publication of The Society for Vascular Surgery and the American Venous Forum, the Journal will publish, after peer review, selected papers presented at the annual meeting of these organizations and affiliated vascular societies, as well as original articles from members and non-members.
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