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Dynamic Prediction of Renal Failure Using Longitudinal Biomarkers in a Cohort Study of Chronic Kidney Disease

机译:慢性肾病队列研究中使用纵向生物标记物动态预测肾衰竭

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摘要

In longitudinal studies, prognostic biomarkers are often measured longitudinally. It is of both scientific and clinical interest to predict the risk of clinical events, such as disease progression or death, using these longitudinal biomarkers as well as other time-dependent and time-independent information about the patient. The prediction is dynamic in the sense that it can be made at any time during the follow-up, adapting to the changing at-risk population and incorporating the most recent longitudinal data. One approach is to build a joint model of longitudinal predictor variables and time to the clinical event, and draw predictions from the posterior distribution of the time to event conditional on longitudinal history. Another approach is to use the landmark model, which is a system of prediction models that evolve with the follow-up time. We review the pros and cons of the two approaches, and present a general analytical framework using the landmark approach. The proposed framework allows the measurement times of longitudinal data to be irregularly spaced and differ between subjects. We propose a unified kernel weighting approach for estimating the model parameters, calculating predicted probabilities, and evaluating prediction accuracy through double time-dependent Receiver Operating Characteristics (ROC) curves. We illustrate the proposed analytical framework using the African American Study of Kidney Disease and Hypertension (AASK) to develop a landmark model for dynamic prediction of end stage renal diseases or death among patients with chronic kidney disease.
机译:在纵向研究中,预后生物标志物通常是纵向测量的。使用这些纵向生物标记以及有关患者的其他时间依赖性和时间依赖性信息来预测临床事件(例如疾病进展或死亡)的风险具有科学和临床意义。预测是动态的,可以在随访期间的任何时间进行,以适应不断变化的高风险人群并结合最新的纵向数据。一种方法是建立纵向预测变量和临床事件发生时间的联合模型,并根据纵向历史从事件发生时间的后验分布中得出预测。另一种方法是使用界标模型,该模型是随跟踪时间而发展的预测模型系统。我们回顾了这两种方法的利弊,并提出了使用地标性方法的一般分析框架。所提出的框架允许纵向数据的测量时间不规则地间隔并且在对象之间不同。我们提出了一种统一的内核加权方法,用于估计模型参数,计算预测概率以及通过与时间相关的双倍接收器工作特性(ROC)曲线评估预测准确性。我们使用非裔美国人肾脏疾病和高血压研究(AASK)来说明拟议的分析框架,以开发一个具有里程碑意义的模型,用于动态预测终末期肾脏疾病或慢性肾脏病患者的死亡。

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