单例研究中基线结果数据的测量程序和特征的检查。

IF 2 3区 心理学 Q3 PSYCHOLOGY, CLINICAL
Behavior Modification Pub Date : 2023-11-01 Epub Date: 2019-08-02 DOI:10.1177/0145445519864264
James E Pustejovsky, Daniel M Swan, Kyle W English
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引用次数: 16

摘要

作为传统目测方法的补充,人们对使用统计方法分析数据和估计单例设计(SCDs)研究的效应大小指数越来越感兴趣。统计方法的有效性取决于其假设是否合理地表示了收集数据的过程,然而有证据表明,一些假设——特别是关于误差分布的正态性——可能不适合单一情况的数据。为了开发更合适的建模假设和统计方法,研究人员必须注意实际SCD数据的特征。在这项研究中,我们通过行为结果测量来研究scd的几个特征,以便为统计方法的发展提供信息。根据涵盖一系列干预措施和结果构建的七个系统综述的300多项研究的语料库,包括大约1800例病例,我们报告了研究设计的分布、结果测量程序的分布以及单例研究中使用的最常见测量类型的基线结果数据分布的特征。我们讨论了关于SCD研究结果分布的更现实假设的发展的影响,以及评估SCD数据统计分析技术性能的蒙特卡罗模拟研究的设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Examination of Measurement Procedures and Characteristics of Baseline Outcome Data in Single-Case Research.

There has been growing interest in using statistical methods to analyze data and estimate effect size indices from studies that use single-case designs (SCDs), as a complement to traditional visual inspection methods. The validity of a statistical method rests on whether its assumptions are plausible representations of the process by which the data were collected, yet there is evidence that some assumptions-particularly regarding normality of error distributions-may be inappropriate for single-case data. To develop more appropriate modeling assumptions and statistical methods, researchers must attend to the features of real SCD data. In this study, we examine several features of SCDs with behavioral outcome measures in order to inform development of statistical methods. Drawing on a corpus of over 300 studies, including approximately 1,800 cases, from seven systematic reviews that cover a range of interventions and outcome constructs, we report the distribution of study designs, distribution of outcome measurement procedures, and features of baseline outcome data distributions for the most common types of measurements used in single-case research. We discuss implications for the development of more realistic assumptions regarding outcome distributions in SCD studies, as well as the design of Monte Carlo simulation studies evaluating the performance of statistical analysis techniques for SCD data.

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来源期刊
Behavior Modification
Behavior Modification PSYCHOLOGY, CLINICAL-
CiteScore
5.30
自引率
0.00%
发文量
27
期刊介绍: For two decades, researchers and practitioners have turned to Behavior Modification for current scholarship on applied behavior modification. Starting in 1995, in addition to keeping you informed on assessment and modification techniques relevant to psychiatric, clinical, education, and rehabilitation settings, Behavior Modification revised and expanded its focus to include treatment manuals and program descriptions. With these features you can follow the process of clinical research and see how it can be applied to your own work. And, with Behavior Modification, successful clinical and administrative experts have an outlet for sharing their solutions in the field.
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