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An Overview of Longitudinal Data Analysis Methods for Neurological Research

机译:神经学研究的纵向数据分析方法概述

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The purpose of this article is to provide a concise, broad and readily accessible overview of longitudinal data analysis methods, aimed to be a practical guide for clinical investigators in neurology. In general, we advise that older, traditional methods, including (1) simple regression of the dependent variable on a time measure, (2) analyzing a single summary subject level number that indexes changes for each subject and (3) a general linear model approach with a fixed-subject effect, should be reserved for quick, simple or preliminary analyses. We advocate the general use of mixed-random and fixed-effect regression models for analyses of most longitudinal clinical studies. Under restrictive situations or to provide validation, we recommend: (1) repeated-measure analysis of covariance (ANCOVA), (2) ANCOVA for two time points, (3) generalized estimating equations and (4) latent growth curve/structural equation models.
机译:本文的目的是提供纵向数据分析方法的简洁,广泛且易于访问的概述,旨在为神经病学的临床研究人员提供实用指南。一般而言,我们建议使用较旧的传统方法,包括:(1)在时间度量上对因变量进行简单回归;(2)分析索引每个主题变化的单个主题级别摘要;以及(3)通用线性模型具有固定主题效果的方法应保留用于快速,简单或初步的分析。我们主张将混合随机和固定效应回归模型用于大多数纵向临床研究的分析。在限制性条件下或为了提供验证,我们建议:(1)协方差(ANCOVA)的重复测量分析,(2)两个时间点的ANCOVA,(3)广义估计方程和(4)潜在增长曲线/结构方程模型。

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