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A Marginal Approach to Reduced-Rank Penalized Spline Smoothing With Application to Multilevel Functional Data

机译:减少边际惩罚样条平滑的边际方法在多级功能数据中的应用

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Multilevel functional data are collected in many biomedical studies. For example, in a study of the effect of Nimodipine on patients with subarachnoid hemorrhage (SAH), patients underwent multiple 4-hr treatment cycles. Within each treatment cycle, subjects' vital signs were reported every 10 min. These data have a natural multilevel structure with treatment cycles nested within subjects and measurements nested within cycles. Most literature on nonparametric analysis of such multilevel functional data focuses on conditional approaches using functional mixed effects models. However, parameters obtained from the conditional models do not have direct interpretations as population average effects. When population effects are of interest, we may employ marginal regression models. In this work, we propose marginal approaches to fit multilevel functional data through penalized spline generalized estimating equation (penalized spline GEE). The procedure is effective for modeling multilevel correlated generalized outcomes as well as continuous outcomes without suffering from numerical difficulties. We provide a variance estimator robust to misspecification of correlation structure. We investigate the large sample properties of the penalized spline GEE estimator with multilevel continuous data and show that the asymptotics falls into two categories. In the small knots scenario, the estimated mean function is asymptotically efficient when the true correlation function is used and the asymptotic bias does not depend on the working correlation matrix. In the large knots scenario, both the asymptotic bias and variance depend on the working correlation. We propose a new method to select the smoothing parameter for penalized spline GEE based on an estimate of the asymptotic mean squared error (MSE). We conduct extensive simulation studies to examine property of the proposed estimator under different correlation structures and sensitivity of the variance estimation to the choice of smoothing parameter. Finally, we apply the methods to the SAH study to evaluate a recent debate on discontinuing the use of Nimodipine in the clinical community. Supplementary materials for this article are available online.
机译:在许多生物医学研究中收集了多级功能数据。例如,在一项尼莫地平对蛛网膜下腔出血(SAH)患者的影响研究中,患者经历了多个4小时的治疗周期。在每个治疗周期内,每10分钟报告一次受试者的生命体征。这些数据具有自然的多层结构,其中治疗周期嵌套在受试者体内,而测量值嵌套在周期内。关于此类多级功能数据的非参数分析的大多数文献都集中于使用功能混合效应模型的条件方法。但是,从条件模型获得的参数不能直接解释为人口平均效应。当对人口影响感兴趣时,我们可以采用边际回归模型。在这项工作中,我们提出了通过惩罚样条广义估计方程(惩罚样条GEE)拟合多级功能数据的边际方法。该程序可有效地建模多级相关的广义结果以及连续结果,而不会遇到数字困难。我们提供了对相关结构的错误指定具有鲁棒性的方差估计器。我们研究了带有多级连续数据的惩罚样条GEE估计量的大样本属性,并表明渐近性分为两类。在小节场景中,当使用真正的相关函数并且渐近偏差不依赖于工作相关矩阵时,估计的均值函数是渐近有效的。在大节的情况下,渐近偏差和方差均取决于工作相关性。我们提出了一种新的方法来选择基于渐近均方误差(MSE)估计的惩罚样条GEE的平滑参数。我们进行了广泛的仿真研究,以检验拟议估计量在不同相关结构下的性质以及方差估计对平滑参数选择的敏感性。最后,我们将这些方法应用于SAH研究,以评估最近关于在临床社区中停用尼莫地平的争论。可在线获得本文的补充材料。

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