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Improved dynamic predictions from joint models of longitudinal and survival data with time‐varying effects using P‐splines

机译:利用P样分,从纵向和生存数据的联合模型改进了动态预测

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Summary In the field of cardio‐thoracic surgery, valve function is monitored over time after surgery. The motivation for our research comes from a study which includes patients who received a human tissue valve in the aortic position. These patients are followed prospectively over time by standardized echocardiographic assessment of valve function. Loss of follow‐up could be caused by valve intervention or the death of the patient. One of the main characteristics of the human valve is that its durability is limited. Therefore, it is of interest to obtain a prognostic model in order for the physicians to scan trends in valve function over time and plan their next intervention, accounting for the characteristics of the data. Several authors have focused on deriving predictions under the standard joint modeling of longitudinal and survival data framework that assumes a constant effect for the coefficient that links the longitudinal and survival outcomes. However, in our case, this may be a restrictive assumption. Since the valve degenerates, the association between the biomarker with survival may change over time. To improve dynamic predictions, we propose a Bayesian joint model that allows a time‐varying coefficient to link the longitudinal and the survival processes, using P‐splines. We evaluate the performance of the model in terms of discrimination and calibration, while accounting for censoring.
机译:发明内容在心脏胸外科手术领域,手术后的时间监测阀门功能。我们研究的动机来自一项研究,包括在主动脉位置接受人类组织瓣膜的患者。通过标准化的超声心动图评估瓣膜功能,这些患者随时随之而来。随访失去可能是由瓣膜干预或患者的死亡引起的。人阀的主要特性之一是其耐久性受到限制。因此,获得预后模型是有意义的,以便医生随着时间的推移扫描阀门功能的趋势并计划下一干预,占数据的特征。若干作者集中于在纵向和生存数据框架的标准联合建模下获得预测,该数据框架假设对连接纵向和生存结果的系数的恒定效果。但是,在我们的情况下,这可能是限制性的假设。由于瓣膜退化,生物标志物与存活之间的关联可能随时间变化。为了提高动态预测,我们提出了一种贝叶斯联合模型,其允许使用p样分的时变系数来连接纵向和生存过程。我们在歧视和校准方面评估模型的性能,同时核对审查。

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