论文标题
线性混合模型与两阶段方法:开发糖尿病肾脏疾病进展的预后模型
Linear mixed model vs two-stage methods: Developing prognostic models of diabetic kidney disease progression
论文作者
论文摘要
鉴定疾病进展的预后因素是医学研究的基石。对标记结果的重复评估通常用于评估疾病进展,主要的研究问题是确定与该标记的纵向轨迹相关的因素。我们的工作是由糖尿病肾脏疾病(DKD)的动机,在糖尿病性肾脏疾病(DKD)中,估计肾小球滤过率(EGFR)的连续测量是肾功能的纵向测量,并且对识别代谢物等因素(例如DKD进展的代谢物)具有显着兴趣。线性混合模型(LMM)具有串行标记结果(例如EGFR)是预后模型开发的标准方法,即通过评估时间和预后因素(例如代谢物)相互作用。但是,首先估算个体特异性EGFR斜率的两阶段方法,然后在具有代谢物的回归框架中将其用作预测因子作为预测因子,易于解释和实施应用研究人员。本文中,我们通过分析方法和模拟比较了LMM和两阶段方法,从偏差和平方误差方面进行了比较,从而允许不规则间隔的度量和缺失。我们的发现提供了有关何时两阶段方法是合适的LMM纵向预后建模替代方案的新见解。值得注意的是,我们的发现推广到其他疾病研究。
Identifying prognostic factors for disease progression is a cornerstone of medical research. Repeated assessments of a marker outcome are often used to evaluate disease progression, and the primary research question is to identify factors associated with the longitudinal trajectory of this marker. Our work is motivated by diabetic kidney disease (DKD), where serial measures of estimated glomerular filtration rate (eGFR) are the longitudinal measure of kidney function, and there is notable interest in identifying factors, such as metabolites, that are prognostic for DKD progression. Linear mixed models (LMM) with serial marker outcomes (e.g., eGFR) are a standard approach for prognostic model development, namely by evaluating the time and prognostic factor (e.g., metabolite) interaction. However, two-stage methods that first estimate individual-specific eGFR slopes, and then use these as outcomes in a regression framework with metabolites as predictors are easy to interpret and implement for applied researchers. Herein, we compared the LMM and two-stage methods, in terms of bias and mean squared error via analytic methods and simulations, allowing for irregularly spaced measures and missingness. Our findings provide novel insights into when two-stage methods are suitable longitudinal prognostic modeling alternatives to the LMM. Notably, our findings generalize to other disease studies.