函数主成分分析
主成分分析
功能数据分析
磁共振弥散成像
随机效应模型
数学
人口
纵向数据
组分(热力学)
混合模型
人工智能
模式识别(心理学)
计算机科学
统计
数据挖掘
荟萃分析
热力学
物理
内科学
放射科
磁共振成像
社会学
人口学
医学
作者
Sonja Greven,Ciprian M. Crainiceanu,Brian Caffo,Daniel S. Reich
摘要
We introduce models for the analysis of functional data observed at multiple time points. The dynamic behavior of functional data is decomposed into a time-dependent population average, baseline (or static) subject-specific variability, longitudinal (or dynamic) subject-specific variability, subject-visit-specific variability and measurement error. The model can be viewed as the functional analog of the classical longitudinal mixed effects model where random effects are replaced by random processes. Methods have wide applicability and are computationally feasible for moderate and large data sets. Computational feasibility is assured by using principal component bases for the functional processes. The methodology is motivated by and applied to a diffusion tensor imaging (DTI) study designed to analyze differences and changes in brain connectivity in healthy volunteers and multiple sclerosis (MS) patients. An R implementation is provided.87.
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