Forder Bea Harris, Ardasheva Anastasia, Atha Karyna, Nentwich Hannah, Abhari Roxanna, Kartsonaki Christiana
Medical Sciences Division, University of Oxford, Oxford, UK.
Clinical Trials Service Unit and Epidemiological Studies Unit (CTSU), Nuffield, Department of Population Health (NDPH), Big Data Institute Building , University of Oxford, Old Road Campus, Oxford, OX3 7LF, UK.
Diagn Progn Res. 2025 Feb 4;9(1):3. doi: 10.1186/s41512-024-00178-0.
Endometrial cancer (EC) is the most prevalent gynaecological cancer in the UK with a rising incidence. Various models exist to predict the risk of developing EC, for different settings and prediction timeframes. This systematic review aims to provide a summary of models and assess their characteristics and performance.
A systematic search of the MEDLINE and Embase (OVID) databases was used to identify risk prediction models related to EC and studies validating these models. Papers relating to predicting the risk of a future diagnosis of EC were selected for inclusion. Study characteristics, variables included in the model, methods used, and model performance, were extracted. The Prediction model Risk-of-Bias Assessment Tool was used to assess model quality.
Twenty studies describing 19 models were included. Ten were designed for the general population and nine for high-risk populations. Three models were developed for premenopausal women and two for postmenopausal women. Logistic regression was the most used development method. Three models, all in the general population, had a low risk of bias and all models had high applicability. Most models had moderate (area under the receiver operating characteristic curve (AUC) 0.60-0.80) or high predictive ability (AUC > 0.80) with AUCs ranging from 0.56 to 0.92. Calibration was assessed for five models. Two of these, the Hippisley-Cox and Coupland QCancer models, had high predictive ability and were well calibrated; these models also received a low risk of bias rating.
Several models of moderate-high predictive ability exist for predicting the risk of EC, but study quality varies, with most models at high risk of bias. External validation of well-performing models in large, diverse cohorts is needed to assess their utility.
The protocol for this review is available on PROSPERO (CRD42022303085).
子宫内膜癌(EC)是英国最常见的妇科癌症,发病率呈上升趋势。存在多种模型可用于预测不同环境和预测时间范围内发生EC的风险。本系统评价旨在总结这些模型,并评估其特征和性能。
对MEDLINE和Embase(OVID)数据库进行系统检索,以确定与EC相关的风险预测模型及验证这些模型的研究。选取与预测未来EC诊断风险相关的论文纳入研究。提取研究特征、模型中包含的变量、所使用的方法以及模型性能。使用预测模型偏倚风险评估工具评估模型质量。
纳入了20项描述19种模型的研究。其中10项是针对一般人群设计的,9项是针对高危人群设计的。为绝经前女性开发了3种模型,为绝经后女性开发了2种模型。逻辑回归是最常用的开发方法。在一般人群中的3种模型偏倚风险较低,所有模型的适用性都较高。大多数模型具有中等(受试者工作特征曲线下面积(AUC)为0.60 - 0.80)或较高的预测能力(AUC > 0.80),AUC范围为0.56至0.92。对5种模型进行了校准评估。其中两种模型,即希皮斯利 - 考克斯模型和库普兰QCancer模型,具有较高的预测能力且校准良好;这些模型的偏倚风险评级也较低。
存在几种预测EC风险的中高预测能力模型,但研究质量各不相同,大多数模型存在较高的偏倚风险。需要在大型、多样化的队列中对表现良好的模型进行外部验证,以评估其效用。
本综述的方案可在PROSPERO(CRD42022303085)上获取。