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首页> 外文期刊>American Journal of Epidemiology >Prediction of Multiple Recurrent Events: A Comparison of Extended Cox Models in Bladder Cancer
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Prediction of Multiple Recurrent Events: A Comparison of Extended Cox Models in Bladder Cancer

机译:多重复发事件的预测:膀胱癌扩展COX模型的比较

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Recurrence of bladder cancer can occur repeatedly in the same patient after treatment of the primary tumor. Models predicting the risk of a next recurrence may inform individualized decision-making on surveillance frequency. We aimed to assess the usefulness of extensions of the Cox proportional hazards model for repeated events in this context. We analyzed 531 Dutch patients with bladder cancer (1990-2012) with information on 7 prespecified predictors at the time of diagnosis of the primary and recurrent tumors. We considered 3 aspects of model variants: how to model time to the repeated events (calendar time, gap time, elapsed time); the number of preceding events (predictor, stratum variable); and the within-subject correlation (ignored in a simple Cox model, robust standard errors in a variance-correction model, random effect in a frailty model). First to fourth recurrences of bladder cancer occurred in 313, 174, 103, and 66 patients, respectively, with median calendar follow-up times of 1.1, 2.5, 3.8, and 4.5 years, respectively. We focused on gap time in the detailed analyses, allowing for clinically meaningful predictions. Variance-correction models may be useful if predictor selection is part of the model development. Frailty models may be useful when within-subject correlation is strong.
机译:在治疗原发性肿瘤后,在同一患者中可以反复发生膀胱癌的复发。预测下一个复发风险的模型可以在监控频率上通知个性化决策。我们旨在评估在这种背景下对重复事件的Cox比例危害模型的扩展的有用性。我们分析了531例膀胱癌(1990-2012)的荷兰患者(1990-2012),信息诊断初级和复发性肿瘤时的7例预定预测因子。我们考虑了模型变体的3个方面:如何模拟时间到重复事件(日历时间,差距时间,经过时间);前面事件的数量(预测器,Stratum变量);和内部相关性(在简单的Cox模型中忽略,方差 - 校正模型中的鲁棒标准错误,在脆弱模型中的随机效果)。首先,分别在313,174,103和66名患者中发生膀胱癌的第四次复发,分别为1.1,2.5,3.8和4.5岁的中位日历随访时间。我们专注于详细分析中的差距时间,允许临床上有意义的预测。如果预测器选择是模型开发的一部分,方差校正模型可能是有用的。当在内部相关性强大时,脆弱模型可能是有用的。

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