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A three-step estimation procedure using local polynomial smoothing for inconsistently sampled longitudinal data

机译:针对局部采样的纵向数据使用局部多项式平滑的三步估计程序

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Parametric mixed-effects models are useful in longitudinal data analysis when the sampling frequencies of a response variable and the associated covariates are the same. We propose a three-step estimation procedure using local polynomial smoothing and demonstrate with data where the variables to be assessed are repeatedly sampled with different frequencies within the same time frame. We first insert pseudo data for the less frequently sampled variable based on the observed measurements to create a new dataset. Then standard simple linear regressions are fitted at each time point to obtain raw estimates of the association between dependent and independent variables. Last, local polynomial smoothing is applied to smooth the raw estimates. Rather than use a kernel function to assign weights, only analytical weights that reflect the importance of each raw estimate are used. The standard errors of the raw estimates and the distance between the pseudo data and the observed data are considered as the measure of the importance of the raw estimates. We applied the proposed method to a weight loss clinical trial, and it efficiently estimated the correlation between the inconsistently sampled longitudinal data. Our approach was also evaluated via simulations. The results showed that the proposed method works better when the residual variances of the standard linear regressions are small and the within-subjects correlations are high. Also, using analytic weights instead of kernel function during local polynomial smoothing is important when raw estimates have extreme values, or the association between the dependent and independent variable is nonlinear. Copyright (c) 2016 John Wiley & Sons, Ltd.
机译:当响应变量和相关协变量的采样频率相同时,参数混合效应模型可用于纵向数据分析。我们提出了使用局部多项式平滑的三步估计程序,并用数据证明了要评估的变量在同一时间范围内以不同的频率重复采样。我们首先根据观察到的测量值为不太频繁采样的变量插入伪数据,以创建新的数据集。然后,在每个时间点拟合标准简单线性回归,以获得因变量和自变量之间的关联的原始估计。最后,应用局部多项式平滑来平滑原始估计。除了使用核函数分配权重外,仅使用反映每个原始估计值重要性的分析权重。原始估算的标准误差以及伪数据和观测数据之间的距离被视为原始估算重要性的度量。我们将提出的方法应用于减肥临床试验,并有效地估计了前后不一致的纵向数据之间的相关性。我们的方法也通过仿真进行了评估。结果表明,当标准线性回归的剩余方差较小且对象内相关性较高时,该方法效果更好。同样,当原始估计值具有极高的值,或者因变量和自变量之间的关联为非线性时,在局部多项式平滑过程中使用分析权重代替核函数也很重要。版权所有(c)2016 John Wiley&Sons,Ltd.

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