Literature DB >> 31285883

A novel risk assessment model for venous thromboembolism after major thoracic surgery: a Chinese single-center study.

Bo Tian1, Hui Li1, Songping Cui1, Chunfeng Song1, Tong Li1, Bin Hu1.   

Abstract

BACKGROUND: Venous thromboembolism (VTE) is an insidious disease with significant morbidity and mortality. We conducted a retrospective single-center study on patients who underwent thoracic surgery and developed a novel VTE risk assessment model (RAM).
METHODS: Patients who underwent thoracic surgery between July 2016 and December 2017 (n=533) at the Beijing Chao-Yang Hospital were enrolled in this study. None of the patients received any prophylaxis perioperatively. Lower limbs Doppler ultrasonography was performed before and after surgery for deep venous thrombosis (DVT) confirmation. Patients with new postoperative DVT, typical symptoms of pulmonary embolism (PE), or high Caprini score (≥9) underwent further computer tomography pulmonary angiography (CTPA) examination for PE. Caprini, Rogers, Padua, and Khorana RAM were used for all of the patients. A novel RAM of VTE, which we called Chao-Yang VTE RAM, was developed according to the logistic regression analysis.
RESULTS: The overall incidence of VTE after thoracic surgery was 8.4% (45 of 533). Among the 45 VTE patients, 86.7% have DVT and 13.3% have DVT + PE. Age ≥60 (OR 4.51, 95% CI: 2.09-9.71, P=0.000) has an independent risk factor for VTE. The areas under the receiver operating characteristic (ROC) curve of Caprini, Rogers, Padua, Khorana, and Chao-Yang models were 0.74 (P<0.0001), 0.52 (P=0.62), 0.69 (P<0.0001), 0.64 (P=0.0017), and 0.80 (P<0.0001), respectively. The VTE incidence in the low-, moderate-, and high-risk groups predicted with Chao-Yang scores was 1.3% (3 of 230), 8.4% (14 of 166), and 20.4% (28 of 137); these were 1.6% (3 of 192), 11.9% (38 of 318), and 17.4% (4 of 23), respectively, when using the Caprini criteria. The high-risk group had a significantly higher incidence than the low- and moderate-risk groups (P=0.000). Additionally, as the number of risk factors increased, the incidence of VTE increased from 1.2% to 50.0%.
CONCLUSIONS: The incidence of VTE in patients who underwent major thoracic surgery was high in our series. Based on a retrospective single-center population study, we developed a novel prediction model to identify patients receiving thoracic surgery with different risks for VTE events.

Entities:  

Keywords:  Venous thromboembolism (VTE); incidence; prediction model; thoracic surgery

Year:  2019        PMID: 31285883      PMCID: PMC6588735          DOI: 10.21037/jtd.2019.05.11

Source DB:  PubMed          Journal:  J Thorac Dis        ISSN: 2072-1439            Impact factor:   2.895


  26 in total

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8.  Prevention of venous thromboembolism: American College of Chest Physicians Evidence-Based Clinical Practice Guidelines (8th Edition).

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Review 9.  American Society of Clinical Oncology guideline: recommendations for venous thromboembolism prophylaxis and treatment in patients with cancer.

Authors:  Gary H Lyman; Alok A Khorana; Anna Falanga; Daniel Clarke-Pearson; Christopher Flowers; Mohammad Jahanzeb; Ajay Kakkar; Nicole M Kuderer; Mark N Levine; Howard Liebman; David Mendelson; Gary Raskob; Mark R Somerfield; Paul Thodiyil; David Trent; Charles W Francis
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10.  Multivariable predictors of postoperative venous thromboembolic events after general and vascular surgery: results from the patient safety in surgery study.

Authors:  Selwyn O Rogers; Ravi K Kilaru; Patrick Hosokawa; William G Henderson; Michael J Zinner; Shukri F Khuri
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