Giannella Luca, Mfuta Kabala, Setti Tiziano, Cerami Lillo Bruno, Bergamini Ezio, Boselli Fausto
Local Health Authority of Reggio Emilia, Division of Obstetrics and Gynecology, Cesare Magati Hospital, Viale Martiri della Libertà 6, Scandiano, 42019 Reggio Emilia, Italy.
Institute of Obstetrics and Gynecology, Oncology Prevention Unit, University of Modena and Reggio Emilia, Via del Pozzo 71, 41124 Modena, Italy.
Biomed Res Int. 2014;2014:130569. doi: 10.1155/2014/130569. Epub 2014 Jun 3.
To develop and test a risk-scoring model for the prediction of endometrial cancer among symptomatic postmenopausal women at risk of intrauterine malignancy.
We prospectively studied 624 postmenopausal women with vaginal bleeding and endometrial thickness > 4 mm undergoing diagnostic hysteroscopy. Patient characteristics and endometrial assessment of women with or without endometrial cancer were compared. Then, a risk-scoring model, including the best predictors of endometrial cancer, was tested. Univariate, multivariate, and ROC curve analysis were performed. Finally, a split-sampling internal validation was also performed.
The best predictors of endometrial cancer were recurrent vaginal bleeding (odds ratio (OR) = 2.96), the presence of hypertension (OR = 2.01) endometrial thickness > 8 mm (OR = 1.31), and age > 65 years (OR = 1.11). These variables were used to create a risk-scoring model (RHEA risk-model) for the prediction of intrauterine malignancy, with an area under the curve of 0.878 (95% CI 0.842 to 0.908; P < 0.0001). At the best cut-off value (score ≥ 4), sensitivity and specificity were 87.5% and 80.1%, respectively.
Among symptomatic postmenopausal women with endometrial thickness > 4 mm, a risk-scoring model including patient characteristics and endometrial thickness showed a moderate diagnostic accuracy in discriminating women with or without endometrial cancer. Based on this model, a decision algorithm was developed for the management of such a population.
开发并测试一种风险评分模型,用于预测有子宫内恶性肿瘤风险的有症状绝经后女性患子宫内膜癌的情况。
我们对624例绝经后阴道出血且子宫内膜厚度>4mm并接受诊断性宫腔镜检查的女性进行了前瞻性研究。比较了患有或未患有子宫内膜癌的女性的患者特征和子宫内膜评估情况。然后,测试了一个包括子宫内膜癌最佳预测因素的风险评分模型。进行了单变量、多变量和ROC曲线分析。最后,还进行了拆分抽样内部验证。
子宫内膜癌的最佳预测因素为反复阴道出血(比值比(OR)=2.96)、高血压(OR = 2.01)、子宫内膜厚度>8mm(OR = 1.31)和年龄>65岁(OR = 1.11)。这些变量被用于创建一个预测子宫内恶性肿瘤的风险评分模型(RHEA风险模型),曲线下面积为0.878(95%CI 0.842至0.908;P<0.0001)。在最佳临界值(评分≥4)时,敏感性和特异性分别为87.5%和80.1%。
在有症状且子宫内膜厚度>4mm的绝经后女性中,一个包括患者特征和子宫内膜厚度的风险评分模型在区分患有或未患有子宫内膜癌的女性方面显示出中等诊断准确性。基于该模型,开发了一种针对此类人群管理的决策算法。