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附件包块患者卵巢癌预测工具的开发:血浆纤维蛋白原的价值

Development of a tool for prediction of ovarian cancer in patients with adnexal masses: Value of plasma fibrinogen.

作者信息

Seebacher Veronika, Aust Stefanie, D'Andrea David, Grimm Christoph, Reiser Elisabeth, Tiringer Denise, Von Mersi Hannah, Polterauer Stephan, Reinthaller Alexander, Helmy-Bader Samir

机构信息

Department for Gynecology and Gynecologic Oncology, Gynecologic Cancer Unit, Comprehensive Cancer Centre, Medical University of Vienna, Vienna, Austria.

Department of Urology, Medical University of Vienna, Vienna, Austria.

出版信息

PLoS One. 2017 Aug 24;12(8):e0182383. doi: 10.1371/journal.pone.0182383. eCollection 2017.

Abstract

OBJECTIVE

To develop a tool for individualized risk estimation of presence of cancer in women with adnexal masses, and to assess the added value of plasma fibrinogen.

STUDY DESIGN

We performed a retrospective analysis of a prospectively maintained database of 906 patients with adnexal masses who underwent cystectomy or oophorectomy. Uni- and multivariate logistic regression analyses including pre-operative plasma fibrinogen levels and established predictors were performed. A nomogram was generated to predict the probability of ovarian cancer. Internal validation with split-sample analysis was performed. Decision curve analysis (DCA) was then used to evaluate the clinical net benefit of the prediction model.

RESULTS

Ovarian cancer including borderline tumours was found in 241 (26.6%) patients. In multivariate analysis, elevated plasma fibrinogen, elevated CA-125, suspicion for malignancy on ultrasound, and postmenopausal status were associated with ovarian cancer and formed the basis for the nomogram. The overall predictive accuracy of the model, as measured by AUC, was 0.91 (95% CI 0.87-0.94). DCA revealed a net benefit for using this model for predicting ovarian cancer presence compared to a strategy of treat all or treat none.

CONCLUSION

We confirmed the value of plasma fibrinogen as a strong predictor for ovarian cancer in a large cohort of patients with adnexal masses. We developed a highly accurate multivariable model to help in the clinical decision-making regarding the presence of ovarian cancer. This model provided net benefit for a wide range of threshold probabilities. External validation is needed before a recommendation for its use in routine practice can be given.

摘要

目的

开发一种用于评估附件包块女性患癌个体风险的工具,并评估血浆纤维蛋白原的附加价值。

研究设计

我们对一个前瞻性维护的包含906例接受囊肿切除术或卵巢切除术的附件包块患者的数据库进行了回顾性分析。进行了单变量和多变量逻辑回归分析,纳入术前血浆纤维蛋白原水平及已确定的预测指标。生成了列线图以预测卵巢癌的概率。采用拆分样本分析进行内部验证。然后使用决策曲线分析(DCA)评估预测模型的临床净效益。

结果

241例(26.6%)患者被发现患有卵巢癌,包括交界性肿瘤。在多变量分析中,血浆纤维蛋白原升高、CA - 125升高、超声怀疑恶性以及绝经后状态与卵巢癌相关,并构成列线图的基础。该模型以AUC衡量的总体预测准确性为0.91(95%CI 0.87 - 0.94)。DCA显示,与全治疗或全不治疗策略相比,使用该模型预测卵巢癌存在具有净效益。

结论

我们证实了血浆纤维蛋白原在一大群附件包块患者中作为卵巢癌强预测指标的价值。我们开发了一个高度准确的多变量模型,以帮助在卵巢癌存在问题上进行临床决策。该模型在广泛的阈值概率范围内提供了净效益。在推荐其用于常规实践之前,需要进行外部验证。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3d45/5570374/6e8785abb0c7/pone.0182383.g001.jpg

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