Department of Obstetrics and Gynecology, University Hospitals KU Leuven, Leuven, Belgium.
Ultrasound Obstet Gynecol. 2013 Jan;41(1):9-20. doi: 10.1002/uog.12323.
In order to ensure that ovarian cancer patients access appropriate treatment to improve the outcome of this disease, accurate characterization before any surgery on ovarian pathology is essential. The International Ovarian Tumor Analysis (IOTA) collaboration has standardized the approach to the ultrasound description of adnexal pathology. A prospectively collected large database enabled previously developed prediction models like the risk of malignancy index (RMI) to be tested and novel prediction models to be developed and externally validated in order to determine the optimal approach to characterize adnexal pathology preoperatively. The main IOTA prediction models (logistic regression model 1 (LR1) and logistic regression model 2 (LR2)) have both shown excellent diagnostic performance (area under the curve (AUC) values of 0.96 and 0.95, respectively) and outperform previous diagnostic algorithms. Their test performance almost matches subjective assessment by experienced examiners, which is accepted to be the best way to classify adnexal masses before surgery. A two-step strategy using the IOTA simple rules supplemented with subjective assessment of ultrasound findings when the rules do not apply, also reached excellent diagnostic performance (sensitivity 90%, specificity 93%) and misclassified fewer malignancies than did the RMI. An evidence-based approach to the preoperative characterization of ovarian and other adnexal masses should include the use of LR1, LR2 or IOTA simple rules and subjective assessment by an experienced examiner.
为确保卵巢癌患者获得适当的治疗以改善该疾病的预后,在对卵巢病理进行任何手术之前,准确描述是至关重要的。国际卵巢肿瘤分析(IOTA)协作组已经对附件病理学的超声描述方法进行了标准化。通过前瞻性收集大型数据库,使得先前开发的预测模型(如恶性风险指数(RMI))得以测试,并开发和外部验证新的预测模型,以确定术前描述附件病理的最佳方法。主要的 IOTA 预测模型(逻辑回归模型 1(LR1)和逻辑回归模型 2(LR2))均表现出出色的诊断性能(曲线下面积(AUC)值分别为 0.96 和 0.95),并且优于先前的诊断算法。它们的测试性能几乎与经验丰富的检查者的主观评估相匹配,这被认为是术前分类附件肿块的最佳方法。两步策略使用 IOTA 简单规则,并在规则不适用时补充对超声发现的主观评估,也达到了出色的诊断性能(敏感性 90%,特异性 93%),并且比 RMI 错误分类的恶性肿瘤更少。基于证据的术前卵巢和其他附件肿块特征描述方法应包括使用 LR1、LR2 或 IOTA 简单规则以及经验丰富的检查者的主观评估。