首页> 外文期刊>The Annals of Statistics: An Official Journal of the Institute of Mathematical Statistics >Nonparametric estimation of correlation functions in longitudinal and spatial data, with application to colon carcinogenesis experiments
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Nonparametric estimation of correlation functions in longitudinal and spatial data, with application to colon carcinogenesis experiments

机译:纵向和空间数据中相关函数的非参数估计及其在结肠癌发生实验中的应用

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摘要

In longitudinal and spatial studies, observations often demonstrate strong correlations that are stationary in time or distance lags, and the times or locations of these data being sampled may not be homogeneous. We propose a nonparametric estimator of the correlation function in such data, using kernel methods. We develop a pointwise asymptotic normal distribution for the proposed estimator, when the number of subjects is fixed and the number of vectors or functions within each subject goes to infinity. Based on the asymptotic theory, we propose a weighted block bootstrapping method for making inferences about the correlation function, where the weights account for the inhomogeneity of the distribution of the times or locations. The method is applied to a data set from a colon carcinogenesis study, in which colonic crypts were sampled from a piece of colon segment from each of the 12 rats in the experiment and the expression level of p27, an important cell cycle protein, was then measured for each cell within the sampled crypts. A simulation study is also provided to illustrate the numerical performance of the proposed method.
机译:在纵向和空间研究中,观测结果通常显示出很强的相关性,这些相关性在时间或距离滞后上是固定的,并且这些数据的采样时间或位置可能不一致。我们使用核方法提出了此类数据中相关函数的非参数估计器。当主题的数量固定并且每个主题内的矢量或函数的数量达到无穷大时,我们为拟议的估计量开发逐点渐近正态分布。基于渐近理论,我们提出了一种加权块自举方法来对相关函数进行推论,其中权重说明了时间或位置分布的不均匀性。将该方法应用于结肠癌发生研究的数据集,其中从实验中的12只大鼠的每只结肠片段中提取结肠隐窝,然后测定重要细胞周期蛋白p27的表达水平。对采样的隐窝中的每个单元进行测量。还提供了仿真研究来说明所提出方法的数值性能。

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