Wong Alyssa Sze-Wai, Cheung Chun Wai, Fung Linda Wen-Ying, Lao Terence Tzu-Hsi, Mol Ben Willem J, Sahota Daljit Singh
Department of Obstetrics and Gynaecology, The Chinese University of Hong Kong, Prince of Wales Hospital, Hong Kong SAR.
Department of Obstetrics and Gynaecology, Women's & Children's Hospital, The University of Adelaide, Australia.
Eur J Obstet Gynecol Reprod Biol. 2016 Aug;203:220-4. doi: 10.1016/j.ejogrb.2016.05.004. Epub 2016 Jun 15.
To develop and assess the accuracy of risk prediction models to diagnose endometrial cancer in women having postmenopausal bleeding (PMB).
A retrospective cohort study of 4383 women in a One-stop PMB clinic from a university teaching hospital in Hong Kong. Clinical risk factors, transvaginal ultrasonic measurement of endometrial thickness (ET) and endometrial histology were obtained from consecutive women between 2002 and 2013. Two models to predict risk of endometrial cancer were developed and assessed, one based on patient characteristics alone and a second incorporated ET with patient characteristics. Endometrial histology was used as the reference standard. The split-sample internal validation and bootstrapping technique were adopted. The optimal threshold for prediction of endometrial cancer by the final models was determined using a receiver-operating characteristics (ROC) curve and Youden Index. The diagnostic gain was compared to a reference strategy of measuring ET only by comparing the AUC using the Delong test.
Out of 4383 women with PMB, 168 (3.8%) were diagnosed with endometrial cancer. ET alone had an area under curve (AUC) of 0.92 (95% confidence intervals [CIs] 0.89-0.94). In the patient characteristics only model, independent predictors of cancer were age at presentation, age at menopause, body mass index, nulliparity and recurrent vaginal bleeding. The AUC and Youdens Index of the patient characteristic only model were respectively 0.73 (95% CI 0.67-0.80) and 0.72 (Sensitivity=66.5%; Specificity=68.9%; +ve LR=2.14; -ve LR=0.49). ET, age at presentation, nulliparity and recurrent vaginal bleeding were independent predictors in the patient characteristics plus ET model. The AUC and Youdens Index of the patient characteristic plus ET model where respectively 0.92 (95% CI 0.88-0.96) and 0.71 (Sensitivity=82.7%; Specificity=88.3%; +ve LR=6.38; -ve LR=0.2). Comparison of AUC indicated that a history alone model was inferior to a model using ET alone (difference=0.19, 95% CI 0.15-0.24; p<0.0001) and History plus ET (difference=0.19, 95% CI 0.16-0.23, p<0.0001) and history plus ET was similar to that of using ET alone (difference=0.001 95% CI -0.015 to 0.0018, p=0.84).
A risk model using only patient characteristics showed fair diagnostic accuracy. Addition of patient characteristics to ET did not improve the diagnostic accuracy as compared to ET alone in our cohort.
开发并评估用于诊断绝经后出血(PMB)女性子宫内膜癌的风险预测模型的准确性。
对香港一所大学教学医院一站式PMB诊所的4383名女性进行回顾性队列研究。收集了2002年至2013年间连续就诊女性的临床风险因素、经阴道超声测量的子宫内膜厚度(ET)和子宫内膜组织学检查结果。开发并评估了两种预测子宫内膜癌风险的模型,一种仅基于患者特征,另一种将ET与患者特征相结合。以子宫内膜组织学检查结果作为参考标准。采用样本分割内部验证和自抽样技术。使用受试者工作特征(ROC)曲线和尤登指数确定最终模型预测子宫内膜癌的最佳阈值。通过使用德龙检验比较AUC,将诊断增益与仅测量ET的参考策略进行比较。
在4383名有PMB的女性中,168名(3.8%)被诊断为子宫内膜癌。仅ET的曲线下面积(AUC)为0.92(95%置信区间[CI]0.89 - 0.94)。在仅基于患者特征的模型中,癌症的独立预测因素为就诊时年龄、绝经年龄、体重指数、未生育和反复阴道出血。仅基于患者特征模型的AUC和尤登指数分别为0.73(95%CI 0.67 - 0.80)和0.72(敏感性 = 66.5%;特异性 = 68.9%;阳性似然比 = 2.14;阴性似然比 = 0.49)。在患者特征加ET模型中,ET、就诊时年龄、未生育和反复阴道出血是独立预测因素。患者特征加ET模型的AUC和尤登指数分别为0.92(95%CI 0.88 - 0.96)和0.71(敏感性 = 82.7%;特异性 = 88.3%;阳性似然比 = 6.38;阴性似然比 = 0.2)。AUC比较表明,仅病史模型劣于仅使用ET的模型(差异 = 0.19,95%CI 0.15 - 0.24;p < 0.0001)以及病史加ET模型(差异 = 0.19,95%CI 0.16 - 0.23,p < 0.0001),而病史加ET模型与仅使用ET的模型相似(差异 = 0.001,95%CI -0.015至0.0018,p = 0.84)。
仅使用患者特征的风险模型显示出尚可的诊断准确性。在我们的队列中,与单独使用ET相比,将患者特征与ET相结合并未提高诊断准确性。