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首页> 外文期刊>Statistics in medicine >Flexible estimation of covariance function by penalized spline with application to longitudinal family data.
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Flexible estimation of covariance function by penalized spline with application to longitudinal family data.

机译:通过惩罚样条灵活地估计协方差函数,并将其应用于纵向族数据。

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Longitudinal data are routinely collected in biomedical research studies. A natural model describing longitudinal data decomposes an individual's outcome as the sum of a population mean function and random subject-specific deviations. When parametric assumptions are too restrictive, methods modeling the population mean function and the random subject-specific functions nonparametrically are in demand. In some applications, it is desirable to estimate a covariance function of random subject-specific deviations. In this work, flexible yet computationally efficient methods are developed for a general class of semiparametric mixed effects models, where the functional forms of the population mean and the subject-specific curves are unspecified. We estimate nonparametric components of the model by penalized spline (P-spline, Biometrics 2001; 57:253-259), and reparameterize the random curve covariance function by a modified Cholesky decomposition (Biometrics 2002; 58:121-128) which allows for unconstrained estimation of a positive-semidefinite matrix. To provide smooth estimates, we penalize roughness of fitted curves and derive closed-form solutions in the maximization step of an EM algorithm. In addition, we present models and methods for longitudinal family data where subjects in a family are correlated and we decompose the covariance function into a subject-level source and observation-level source. We apply these methods to the multi-level Framingham Heart Study data to estimate age-specific heritability of systolic blood pressure nonparametrically. Copyright (c) 2011 John Wiley & Sons, Ltd.
机译:纵向数据通常在生物医学研究中收集。一个描述纵向数据的自然模型将个体的结果分解为总体均值函数和特定于受试者的随机偏差之和。当参数假设过于严格时,就需要对总体均值函数和特定于随机主题的函数进行非参数建模的方法。在一些应用中,期望估计随机的受试者特定偏差的协方差函数。在这项工作中,为一般类别的半参数混合效应模型开发了灵活但计算效率高的方法,其中未指定总体均值的函数形式和特定对象的曲线。我们通过罚样条(P-spline,Biometrics 2001; 57:253-259)估计模型的非参数分量,并通过修改后的Cholesky分解(Biometrics 2002; 58:121-128)重新参数化随机曲线协方差函数正半定矩阵的无约束估计。为了提供平滑的估计,我们对拟合曲线的粗糙度进行了惩罚,并在EM算法的最大化步骤中得出了封闭形式的解。此外,我们介绍了纵向家庭数据的模型和方法,其中将一个家庭中的受试者相关联,并将协方差函数分解为一个受试者级别的源和观察级别的源。我们将这些方法应用于多级Framingham心脏研究数据,以非参数方式估计特定年龄的收缩压遗传性。版权所有(c)2011 John Wiley&Sons,Ltd.

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