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Some unexamined aspects of analysis of covariance in pretest-posttest studies

机译:前测-后测研究中协方差分析的一些未审查方面

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摘要

The use of an analysis of covariance (ANCOVA) model in a pretest-posttest setting deserves to be studied separately from its use in other (non-pretest-posttest) settings. For pretest-post test studies, the following points are made in this article: (a) If the familiar change from baseline model accurately describes the data-generating mechanism for a, randomized study then it is impossible for unequal slopes to exist. Conversely, if unequal slopes exist, then it implies that the change from baseline model as a data-generating mechanism is inappropriate. An alternative data-generating model should be identified and the validity of the ANCOVA model should be demonstrated. (b) Under the usual assumptions of equal pretest and posttest within-subject error variances, the ratio of the standard error of a treatment contrast from a change from baseline analysis to that from ANCOVA is less than 2 1/2. (c) For an observational study it is possible for unequal slopes to exist even if the change from baseline model describes the data-generating mechanism. (d) Adjusting for the pretest variable in observational studies may actually introduce bias where none previously existed.
机译:在前测-后测设置中使用协方差分析(ANCOVA)模型应该与在其他(非测前-后测)设置中使用协方差分析模型分开研究。对于前测后测研究,本文提出以下几点:(a)如果从基线模型开始的熟悉变化准确地描述了随机研究的数据生成机制,则不可能存在不相等的斜率。相反,如果存在不相等的斜率,则表明从基线模型作为数据生成机制的更改是不合适的。应该确定替代的数据生成模型,并应证明ANCOVA模型的有效性。 (b)在受试者前后误差均等的通常假设下,从基线分析变化到ANCOVA变化的治疗对比标准误差比率小于2 1/2。 (c)对于观察性研究,即使基线模型的变化描述了数据生成机制,也可能存在不相等的斜率。 (d)在观察性研究中调整前测变量实际上可能在以前不存在的地方引入偏见。

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