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一种用于生长曲线分析的荟萃分析方法。

A meta-analytic approach to growth curve analysis.

作者信息

Figueredo A J, Brooks A J, Leff H S, Sechrest L

机构信息

Department of Psychology, University of Arizona, Tucson 84721-0068, USA.

出版信息

Psychol Rep. 2000 Oct;87(2):441-65. doi: 10.2466/pr0.2000.87.2.441.

Abstract

A meta-analytic approach to growth curve analysis is described and illustrated by applying it to the evaluation of the Arizona Pilot Project, an experimental project for financing the treatment of the severely mentally ill. In this approach to longitudinal data analysis, each individual subject for which repeated measures are obtained is initially treated as a separate case study for analysis. This approach has at least two distinct advantages. First, it does not assume a balanced design (equal numbers of repeated observations) across all subjects; to accommodate a variable number of observations for each subject, individual growth curve parameters are differentially weighted by the number of repeated measures on which they are based. Second, it does not assume homogeneity of treatment effects (equal slopes) across all subjects. Individual differences in growth curve parameters representing potentially unequal developmental rates through time are explicitly modeled. A meta-analytic approach to growth curve analysis may be the optimal analytical strategy for longitudinal studies where either (1) a balanced design is not feasible or (2) an assumption of homogeneity of treatment effects across all individuals is theoretically indefensible. In our evaluation of the Arizona Pilot Project, individual growth curve parameters were obtained for each of the 13 rationally derived subscales of the New York Functional Assessment Survey, over time, by linear regression analysis. The slopes, intercepts, and residuals obtained for each individual were then subjected to meta-analytic causal modeling. Using factor analytic models and then general linear models for the latent constructs, the growth curve parameters of all individuals were systematically related to each other via common factors and predicted based on hypothesized exogenous causal factors. The same two highly correlated common factors were found for all three growth curve parameters analyzed, a general psychological factor and a general functional factor. The factor patterns were found to be nearly identical across the separate analyses of individual intercepts, slopes, and residuals. Direct effects on the unique factors of each subscale of the New York Functional Assessment Survey were tested for each growth curve parameter by including the common factors as hierarchically prior predictors in the structural model for each of the indicator variables, thus statistically controlling for any indirect effect produced on the indicator through the common factors. The exogenous predictors modeled were theoretically specified orthogonal contrasts for Method of Payment (comparing Arizona Pilot Project treatment or "capitation" to traditional or "fee-for-service" care as a control), Treatment Administration Site (comparing various locations within treatment or control groups), Pretreatment Assessment (comparing general functional level at intake as assigned by an Outside Assessment Team), and various interactions among these main effects. The intercepts, representing the initial status of individual subjects on both the two common factors and the 13 unique factors of the subscales of the New York Functional Assessment Survey, were found to vary significantly across many of the various different treatment conditions, treatment administration sites, and pretreatment functional levels. This indicated a severe threat to the validity of the originally intended design of the Arizona Pilot Project as a randomized experiment. When the systematic variations were statistically controlled by including intercepts as hierarchically prior predictors in the structural models for slopes, recasting the experiment as a nonequivalent groups design, the effects of the intercepts on the slopes were found to be both statistically significant and substantial in magnitude. (ABSTRACT TRUNCATED)

摘要

本文描述了一种用于生长曲线分析的元分析方法,并通过将其应用于亚利桑那试点项目的评估进行了说明。该项目是一个为严重精神疾病患者治疗提供资金的实验项目。在这种纵向数据分析方法中,每个获得重复测量值的个体受试者最初都被视为一个单独的案例进行分析。这种方法至少有两个明显的优点。首先,它不假定所有受试者的设计是平衡的(重复观察次数相等);为了适应每个受试者不同数量的观察值,个体生长曲线参数根据其所基于的重复测量次数进行不同加权。其次,它不假定所有受试者的治疗效果是同质的(斜率相等)。明确建立了代表随时间潜在不平等发育速率的生长曲线参数的个体差异模型。对于纵向研究,当(1)平衡设计不可行或(2)假定所有个体的治疗效果同质在理论上站不住脚时,生长曲线分析的元分析方法可能是最佳分析策略。在我们对亚利桑那试点项目的评估中,通过线性回归分析,随时间为纽约功能评估调查的13个合理推导的子量表中的每一个获得了个体生长曲线参数。然后,对每个个体获得的斜率、截距和残差进行元分析因果建模。使用因子分析模型,然后针对潜在结构使用一般线性模型,所有个体的生长曲线参数通过共同因子系统地相互关联,并基于假设的外生因果因子进行预测。对于所分析的所有三个生长曲线参数,发现了相同的两个高度相关的共同因子,一个一般心理因子和一个一般功能因子。在对个体截距、斜率和残差的单独分析中,发现因子模式几乎相同。通过将共同因子作为每个指标变量结构模型中的分层先验预测因子,对纽约功能评估调查每个子量表的独特因子的直接效应进行了检验,从而在统计上控制了通过共同因子对指标产生的任何间接效应。所建模的外生预测因子在理论上是指定的支付方式的正交对比(将亚利桑那试点项目治疗或“按人头付费”与传统或“按服务收费”护理作为对照进行比较)、治疗管理地点(比较治疗组或对照组内的不同地点)、治疗前评估(比较外部评估团队指定的入院时的一般功能水平)以及这些主要效应之间的各种相互作用。发现代表个体受试者在纽约功能评估调查子量表的两个共同因子和13个独特因子上的初始状态的截距,在许多不同的治疗条件、治疗管理地点和治疗前功能水平上有显著差异。这表明亚利桑那试点项目最初作为随机实验的设计有效性受到严重威胁。当通过在斜率的结构模型中纳入截距作为分层先验预测因子来对系统变化进行统计控制,将实验重新构建为非等效组设计时,发现截距对斜率的影响在统计上是显著的,且幅度很大。(摘要截断)

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