Department of Vascular Surgery, Maastricht University Medical Centre, Maastricht, the Netherlands.
European Vascular Centre Aachen-Maastricht, University Hospital RWTH Aachen, Aachen, Germany.
J Vasc Surg Venous Lymphat Disord. 2022 Sep;10(5):1028-1036.e3. doi: 10.1016/j.jvsv.2022.04.009. Epub 2022 May 27.
Early and accurate prediction and diagnosis of deep vein thrombosis (DVT) is essential to allow for immediate treatment and reduce potential complications. However, all potentially strong risk factors have not been included in pretest probability assessments such as the Wells score. In addition, the Wells score might not be suitable for use in primary care because it was developed for secondary care. We hypothesized that the addition of more risk factors for DVT to existing diagnostic approaches could improve the prediction of DVT.
All consecutive patients suspected of having DVT from 2004 to 2016 in a primary care setting were included in our retrospective study. All the patients had undergone Wells score, D-dimer, and duplex ultrasound assessments. The available recorded data of the patients were used to develop a model to predict DVT.
Of 3381 eligible patients, 489 (14.5%) had confirmed DVT. The developed model, which included the D-dimer level, Wells score, gender, anticoagulation use, age, and family history of venous thrombosis, was able to distinguish patients with DVT among those with suspected DVT with a sensitivity of 82% (95% confidence interval, 78%-86%) and specificity of 82% (95% confidence interval, 80%-83%).
The proposed model was able to predict for the presence of DVT among all patients with suspected DVT in a primary care setting with reasonable accuracy. Further validation in prospective studies is required.
早期准确地预测和诊断深静脉血栓形成(DVT)对于立即进行治疗并减少潜在并发症至关重要。然而,所有潜在的强风险因素并未包含在预测评分中,如 Wells 评分。此外,由于 Wells 评分是为二级护理开发的,因此可能不适合在初级保健中使用。我们假设在现有的诊断方法中加入更多的 DVT 风险因素可以提高 DVT 的预测能力。
本回顾性研究纳入了 2004 年至 2016 年在初级保健环境中疑似患有 DVT 的所有连续患者。所有患者均接受了 Wells 评分、D-二聚体和双功超声检查。使用患者的可用记录数据来开发预测 DVT 的模型。
在 3381 名符合条件的患者中,489 名(14.5%)确诊为 DVT。所开发的模型包括 D-二聚体水平、Wells 评分、性别、抗凝治疗、年龄和静脉血栓形成家族史,能够在疑似 DVT 患者中区分出患有 DVT 的患者,其敏感性为 82%(95%置信区间,78%-86%),特异性为 82%(95%置信区间,80%-83%)。
该模型能够在初级保健环境中对所有疑似 DVT 患者的 DVT 存在情况进行合理准确的预测。需要前瞻性研究进一步验证。