A Bayesian Rate Ratio Effect Size to Quantify Intervention Effects for Count Data in Single Case Experimental Research

IF 2.1 4区 心理学 Q1 EDUCATION, SPECIAL Behavioral Disorders Pub Date : 2020-06-19 DOI:10.1177/0198742920930704
Prathiba Natesan Batley, Smita Shukla Mehta, J. Hitchcock
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引用次数: 10

Abstract

Single case experimental design (SCED) is an indispensable methodology when evaluating intervention efficacy. Despite long-standing success with using visual analyses to evaluate SCED data, this method has limited utility for conducting meta-analyses. This is critical because meta-analyses should drive practice and policy in behavioral disorders more than evidence derived from individual SCEDs. Even when analyzing data from individual studies, there is merit to using multiple analytic methods since statistical analyses in SCED can be challenging given small sample sizes and autocorrelated data. These complexities are exacerbated when using count data, which are common in SCEDs. Bayesian methods can be used to develop new statistical procedures that may address these challenges. The purpose of the present study was to formulate a within-subject Bayesian rate ratio effect size (BRR) for autocorrelated count data that would obviate the need for small sample corrections. This effect size is the first step toward building a between-subject rate ratio that can be used for meta-analyses. We illustrate this within-subject effect size using real data for an ABAB design and provide codes for practitioners who may want to compute BRR.
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用贝叶斯率比效应量量化单例实验研究中计数数据的干预效果
单例实验设计(SCED)是评价干预效果的一种不可或缺的方法。尽管长期以来使用视觉分析来评估SCED数据取得了成功,但这种方法在进行荟萃分析方面的效用有限。这一点至关重要,因为荟萃分析应该推动行为障碍的实践和政策,而不是来自个体SCED的证据。即使在分析单个研究的数据时,使用多种分析方法也是有好处的,因为在小样本量和自相关数据的情况下,SCED的统计分析可能具有挑战性。使用SCED中常见的计数数据会加剧这些复杂性。贝叶斯方法可用于开发新的统计程序,以应对这些挑战。本研究的目的是为自相关计数数据制定受试者内贝叶斯比率效应大小(BRR),以避免小样本校正的需要。这个效应大小是建立可用于荟萃分析的受试者之间比率的第一步。我们使用ABAB设计的真实数据在受试者效应大小内说明了这一点,并为可能想要计算BRR的从业者提供了代码。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.90
自引率
0.00%
发文量
11
期刊介绍: Behavioral Disorders is sent to all members of the Council for Children with Behavioral Disorders (CCBD), a division of the Council for Exceptional Children (CEC). All CCBD members must first be members of CEC.
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