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Recurrenttime-to-eventmodels with ordinal outcomes

机译:具有序序结果的复发时间到事件表明

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A model to accommodate time-to-event ordinal outcomes was proposed by Berridge and Whitehead. Very few studies have adopted this approach, despite its appeal in incorporating several ordered categories of event outcome. More recently, there has been increased interest in utilizing recurrent events to analyze practical endpoints in the study of disease history and to help quantify the changing pattern of disease over time. For example, in studies of heart failure, the analysis of a single fatal event no longer provides sufficient clinical information to manage the disease. Similarly, the grade/frequency/severity of adverse events may be more important than simply prolonged survival in studies of toxic therapies in oncology. We propose an extension of the ordinal time-to-event model to allow for multiple/recurrent events in the case of marginal models (where all subjects are at risk for each recurrence, irrespective of whether they have experienced previous recurrences) and conditional models (subjects are at risk of a recurrence only if they have experienced a previous recurrence). These models rely on marginal and conditional estimates of the instantaneous baseline hazard and provide estimates of the probabilities of an event of each severity for each recurrence over time. We outline how confidence intervals for these probabilities can be constructed and illustrate how to fit these models and provide examples of the methods, together with an interpretation of the results.
机译:Berridge和Whitehead提出了一个适应事件顺序结果的时间模型。很少有研究采用这种方法,尽管它在纳入事件结果的几个有序类别方面具有吸引力。最近,人们越来越有兴趣利用复发事件来分析疾病史研究中的实际终点,并帮助量化疾病随时间变化的模式。例如,在心力衰竭研究中,对单一致命事件的分析不再提供足够的临床信息来管理该疾病。同样,在肿瘤学毒性治疗研究中,不良事件的等级/频率/严重程度可能比延长生存期更重要。我们建议扩展序贯事件时间模型,以考虑边缘模型(所有受试者在每次复发时都有风险,无论他们是否经历过以前的复发)和条件模型(受试者只有在经历过以前的复发时才有复发风险)情况下的多发/复发事件。这些模型依赖于瞬时基线危险的边际和条件估计,并提供了一段时间内每次复发的每种严重性事件的概率估计。我们概述了如何构造这些概率的置信区间,并说明了如何拟合这些模型,提供了方法的示例,以及对结果的解释。

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