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Prediction of long-term cumulative incidences based on short-term parametric model for competing risks: application in early breast cancer

机译:基于短期参数模型竞争风险的长期累积发生率预测:在早期乳腺癌中的应用

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Use of parametric statistical models can be a solution to reduce the follow-up period time required to estimate long-term survival. Mould and Boag were the first to use the lognormal model. Competing risks methodology seems more suitable when a particular event type is of interest than classical survival analysis. The objective was to evaluate the ability of the Jeong and Fine model to predict long-term cumulative incidence. Survival data recorded by Institut Curie (Paris) from 4761 breast cancer patients treated and followed between 1981 and 2013 were used. Long-term cumulative incidence rates predicted by the model using short-term follow-up data were compared to non-parametric estimation using complete follow-up data. 20- or 25-year cumulative incidence rates for loco-regional recurrence and distant metastasis predicted by the model using a maximum of 10 years of follow-up data had a maximum difference of around 6 % compared to non-parametric estimation. Prediction rates were underestimated for the third and composite event (contralateral or second cancer or death). Predictive ability of Jeong and Fine model on breast cancer data was generally good considering the short follow-up period time used for the estimation especially when a proportion of patient did not experience loco-regional recurrence or distant metastasis.
机译:使用参数统计模型可以作为减少估计长期生存所需的随访时间的解决方案。 Mold和Boag是第一个使用对数正态模型的人。当特定事件类型值得关注时,竞争风险方法似乎比经典生存分析更合适。目的是评估Jeong和Fine模型预测长期累积发生率的能力。使用居里研究所(巴黎)从1981年至2013年之间接受治疗和随访的4761名乳腺癌患者记录的生存数据。该模型使用短期随访数据预测的长期累积发生率与使用完整随访数据进行的非参数估计进行了比较。该模型使用最多10年的随访数据预测的局部区域复发和远处转移的20或25年累积发生率与非参数估计相比,最大差异约为6%。对第三次和第二次复合事件(对侧或第二次癌症或死亡)的预测率被低估了。考虑到评估所用的随访时间短,Jeong和Fine模型对乳腺癌数据的预测能力通常较好,特别是当一部分患者未经历局部复发或远处转移时。

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