反应导向设计对单例实验设计基线计数结果的影响

Q2 Social Sciences
Daniel M. Swan, J. Pustejovsky, Natasha Beretvas
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引用次数: 17

摘要

在单例实验设计(SCED)研究中,研究人员通常根据迄今收集的基线数据是否稳定来选择何时开始治疗,使用所谓的响应导向设计。有证据表明,响应导向设计是常见的,研究人员已经描述了各种评估稳定性的标准。有了许多这些标准,对稳定性的判断可能会产生具有有限可变性的数据,这可能会对统计推断和效应大小估计产生影响。然而,很少有研究考察了响应导向设计对结果数据的影响。在应用和方法研究的基础上,我们描述了几种算法作为响应导向设计的模型。我们使用模拟方法来评估使用响应导向设计如何影响基线数据模式。模拟以频率计数的形式生成基线数据,这是sced中常见的一种结果。我们确定的大多数响应导向算法导致基线具有近似无偏的平均水平,但几乎所有这些算法都会导致基线方差的低估。我们讨论了在实践中使用响应导向设计的含义,以及作为实际研究实践表示的特定算法的合理性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The impact of response-guided designs on count outcomes in single-case experimental design baselines
Abstract In single-case experimental design (SCED) research, researchers often choose when to start treatment based on whether the baseline data collected so far are stable, using what is called a response-guided design. There is evidence that response-guided designs are common, and researchers have described a variety of criteria for assessing stability. With many of these criteria, making judgments about stability could yield data with limited variability, which may have consequences for statistical inference and effect size estimates. However, little research has examined the impact of response-guided design on the resulting data. Drawing on both applied and methodological research, we describe several algorithms as models for response-guided design. We use simulation methods to assess how using a response-guided design impacts the baseline data pattern. The simulations generate baseline data in the form of frequency counts, a common type of outcome in SCEDs. Most of the response-guided algorithms we identified lead to baselines with approximately unbiased mean levels, but nearly all of them lead to underestimates in the baseline variance. We discuss implications for the use of response-guided designs in practice and for the plausibility of specific algorithms as representations of actual research practice.
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来源期刊
Evidence-Based Communication Assessment and Intervention
Evidence-Based Communication Assessment and Intervention Social Sciences-Linguistics and Language
CiteScore
1.60
自引率
0.00%
发文量
18
期刊介绍: Evidence-Based Communication Assessment and Intervention (EBCAI) brings together professionals who work in clinical and educational practice as well as researchers from all disciplines to promote evidence-based practice (EBP) in serving individuals with communication impairments. The primary aims of EBCAI are to: Promote evidence-based practice (EBP) in communication assessment and intervention; Appraise the latest and best communication assessment and intervention studies so as to facilitate the use of research findings in clinical and educational practice; Provide a forum for discussions that advance EBP; and Disseminate research on EBP. We target speech-language pathologists, special educators, regular educators, applied behavior analysts, clinical psychologists, physical therapists, and occupational therapists who serve children or adults with communication impairments.
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