Abstract

BackgroundSuperficial 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.MethodsData 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.DiscussionThere 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.

Highlights

  • Superficial venous thrombosis (SVT) is considered a benign thrombotic condition in most patients

  • Prognostic prediction of more severe SVT patients seen in hospital settings is not generalizable to SVT patients seen in primary care

  • We present the protocol for the development and external validation of three prognostic prediction models for three different clinical outcomes of SVT in primary care: (i) prolonged symptoms within 14 days since SVT diagnosis, (ii) for clot progression within 45 days and (iii) for clot recurrence within 12 months

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Summary

Introduction

Superficial venous thrombosis (SVT) is considered a benign thrombotic condition in most patients. A study in referred SVT patients reported an incidence rate of 0.64 per 1000 person-years [2], while a study performed in primary care using routine clinical data estimated a much higher incidence rate of 1.31 per 1000 personyears follow-up, a number similar to the incidence rates of DVT and PE [3, 4]. This difference in incidence rates can be explained, at least in part, by selective referral of patients with the most severe SVT signs and symptoms, and possibly a VTE history. Prognostic prediction of more severe SVT patients seen in hospital settings is not generalizable to SVT patients seen in primary care

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