Parker Richard I
Department of Psychology, Texas A&M University, TX 77843-4225, USA.
Behav Ther. 2006 Dec;37(4):326-38. doi: 10.1016/j.beth.2006.01.007. Epub 2006 Aug 2.
There is need for objective and reliable single-case research (SCR) results in the movement toward evidence-based interventions (EBI), for inclusion in meta-analyses, and for funding accountability in clinical contexts. Yet SCR deals with data that often do not conform to parametric data assumptions and that yield results of low reliability. A resampling technique, the bootstrap, largely bypasses statistical assumptions and usually yields more reliable results. This study answers questions about the extent of need for the bootstrap in SCR and its impact on effect size reliability. The bootstrap was applied in Allison et al. mean shift analyses (Faith, Allison, & Gorman, 1997) to data from 166 published AB graphs. Results showed the bootstrap improved reliability of 88% of the analyses and reduced reliability of only 3%. The reliability improvement was large enough to be practically useful. The bootstrap was paired with a method for cleansing data of autocorrelation, which also proved effective. Pending replication, the findings encourage broad application within SCR of both the bootstrap and autocorrelation cleansing.
在迈向循证干预(EBI)的过程中,需要客观可靠的单病例研究(SCR)结果,以便纳入荟萃分析,并在临床环境中实现资金问责。然而,SCR处理的数据往往不符合参数数据假设,其结果的可靠性较低。一种重抽样技术——自助法,在很大程度上绕过了统计假设,通常能产生更可靠的结果。本研究回答了关于SCR中对自助法的需求程度及其对效应量可靠性影响的问题。自助法被应用于艾利森等人的均值漂移分析(费思、艾利森和戈尔曼,1997年),分析了166篇已发表的AB图中的数据。结果表明,自助法提高了88%的分析的可靠性,仅降低了3%的分析的可靠性。可靠性的提高幅度足以在实际中发挥作用。自助法与一种消除数据自相关的方法相结合,该方法也被证明是有效的。在等待重复验证的情况下,这些发现鼓励在SCR中广泛应用自助法和自相关消除法。