Management of superficial venous thrombosis based on individual risk profiles: protocol for the development and validation of three prognostic prediction models in large primary care cohorts.

F S van Royen, M van Smeden, K G M Moons, F H Rutten, G J Geersing
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引用次数: 2

Abstract

Background: Superficial venous thrombosis (SVT) is considered a benign thrombotic condition in most patients. However, it also can cause serious complications, such as clot progression to deep venous thrombosis (DVT) and pulmonary embolism (PE). Although most SVT patients are encountered in primary healthcare, studies on SVT nearly all were focused on patients seen in the hospital setting. This paper describes the protocol of the development and external validation of three prognostic prediction models for relevant clinical outcomes in SVT patients seen in primary care: (i) prolonged (painful) symptoms within 14 days since SVT diagnosis, (ii) for clot progression to DVT or PE within 45 days and (iii) for clot recurrence within 12 months.

Methods: Data will be used from four primary care routine healthcare registries from both the Netherlands and the UK; one UK registry will be used for the development of the prediction models and the remaining three will be used as external validation cohorts. The study population will consist of patients ≥18 years with a diagnosis of SVT. Selection of SVT cases will be based on a combination of ICPC/READ/Snowmed coding and free text clinical symptoms. Predictors considered are sex, age, body mass index, clinical SVT characteristics, and co-morbidities including (history of any) cardiovascular disease, diabetes, autoimmune disease, malignancy, thrombophilia, pregnancy or puerperium and presence of varicose veins. The prediction models will be developed using multivariable logistic regression analysis techniques for models i and ii, and for model iii, a Cox proportional hazards model will be used. They will be validated by internal-external cross-validation as well as external validation.

Discussion: There are currently no prediction models available for predicting the risk of serious complications for SVT patients presenting in primary care settings. We aim to develop and validate new prediction models that should help identify patients at highest risk for complications and to support clinical decision making for this understudied thrombo-embolic disorder. Challenges that we anticipate to encounter are mostly related to performing research in large, routine healthcare databases, such as patient selection, endpoint classification, data harmonisation, missing data and avoiding (predictor) measurement heterogeneity.

Abstract Image

基于个体风险概况的浅静脉血栓管理:在大型初级保健队列中开发和验证三种预后预测模型的方案。
背景:在大多数患者中,浅静脉血栓形成(SVT)被认为是良性血栓形成。然而,它也会引起严重的并发症,如血栓发展为深静脉血栓形成(DVT)和肺栓塞(PE)。虽然大多数SVT患者是在初级卫生保健中遇到的,但关于SVT的研究几乎都集中在医院环境中看到的患者。本文描述了在初级保健中观察到的SVT患者相关临床结果的三种预后预测模型的开发和外部验证方案:(i) SVT诊断后14天内延长(疼痛)症状,(ii) 45天内血栓进展为DVT或PE, (iii) 12个月内血栓复发。方法:数据将来自荷兰和英国的四个初级保健常规医疗保健登记处;一个英国注册中心将用于开发预测模型,其余三个将用作外部验证队列。研究人群将包括年龄≥18岁且诊断为SVT的患者。SVT病例的选择将基于ICPC/READ/Snowmed编码和免费文本临床症状的组合。考虑的预测因素包括性别、年龄、体重指数、临床SVT特征和合并症,包括(任何)心血管疾病、糖尿病、自身免疫性疾病、恶性肿瘤、血栓形成、妊娠或产褥期以及静脉曲张的存在。对于模型i和ii,将使用多变量逻辑回归分析技术开发预测模型,对于模型iii,将使用Cox比例风险模型。它们将通过内部-外部交叉验证和外部验证进行验证。讨论:目前没有预测模型可用于预测在初级保健机构就诊的SVT患者发生严重并发症的风险。我们的目标是开发和验证新的预测模型,以帮助识别并发症风险最高的患者,并支持对这种未充分研究的血栓栓塞性疾病的临床决策。我们预计会遇到的挑战主要与在大型常规医疗保健数据库中进行研究有关,例如患者选择、终点分类、数据协调、缺失数据和避免(预测因子)测量异质性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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