Department of Statistics, North Carolina State University, 2311 Stinson Drive, Raleigh, NC 27695-8203, USA.
Biostatistics. 2010 Apr;11(2):177-94. doi: 10.1093/biostatistics/kxp058. Epub 2010 Jan 19.
We propose a new methodological framework for the analysis of hierarchical functional data when the functions at the lowest level of the hierarchy are correlated. For small data sets, our methodology leads to a computational algorithm that is orders of magnitude more efficient than its closest competitor (seconds versus hours). For large data sets, our algorithm remains fast and has no current competitors. Thus, in contrast to published methods, we can now conduct routine simulations, leave-one-out analyses, and nonparametric bootstrap sampling. Our methods are inspired by and applied to data obtained from a state-of-the-art colon carcinogenesis scientific experiment. However, our models are general and will be relevant to many new data sets where the object of inference are functions or images that remain dependent even after conditioning on the subject on which they are measured. Supplementary materials are available at Biostatistics online.
我们提出了一种新的方法框架,用于分析层次功能数据,当层次结构中最低级别的函数相关时。对于小数据集,我们的方法导致计算算法比其最接近的竞争对手(秒与小时)效率高几个数量级。对于大数据集,我们的算法仍然快速,并且没有当前的竞争对手。因此,与已发表的方法相比,我们现在可以进行常规模拟、留一法分析和非参数引导抽样。我们的方法受到并应用于从最先进的结肠癌发生科学实验中获得的数据。但是,我们的模型是通用的,并且将与许多新数据集相关,其中推断的对象是在对其进行测量的主题上仍然依赖的函数或图像。补充材料可在生物统计学在线获取。