描述单例实验设计研究中的缺失数据并评估单一估算方法。

IF 2 3区 心理学 Q3 PSYCHOLOGY, CLINICAL Behavior Modification Pub Date : 2024-05-01 Epub Date: 2024-02-19 DOI:10.1177/01454455241226879
Orhan Aydin
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引用次数: 0

摘要

在单例实验设计(SCEDs)研究中,由于在一段时间内重复测量,缺失数据是不可避免的。尽管如此,SCEDs 的实施者,如研究人员、教师、临床医生和学校心理学家,通常会在研究中忽略缺失数据。在使用SCEDs的干预研究中,或在包含SCEDs研究的专题荟萃分析研究中,如果不考虑缺失数据而进行分析,可能会导致结果偏差,影响个别或整体结果的有效性。此外,缺失也会影响 SCEDs 研究的可推广性。考虑到这些弊端,本研究旨在为 SCEDs 从业人员和研究人员提供有关单例数据缺失的描述性和咨询性信息。为了完成这项任务,本研究介绍了有关缺失数据机制、项目级和单位级缺失数据、计划缺失数据设计、SCEDs 中忽略缺失数据的弊端以及缺失数据处理方法的信息。由于缺失数据处理方法中的单一估算法不需要复杂的统计知识,易于使用,因此更容易被实践者和研究者使用,本研究通过使用真实和假设的数据样本,从干预效果大小和缺失数据率的角度对单一估算法进行了评估。本研究鼓励 SCEDs 实施者以及元分析人员在研究中遇到数据缺失时使用一些单一估算方法,以提高研究结果的可推广性和有效性。
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A Description of Missing Data in Single-Case Experimental Designs Studies and an Evaluation of Single Imputation Methods.

Missing data is inevitable in single-case experimental designs (SCEDs) studies due to repeated measures over a period of time. Despite this fact, SCEDs implementers such as researchers, teachers, clinicians, and school psychologists usually ignore missing data in their studies. Performing analyses without considering missing data in an intervention study using SCEDs or a meta-analysis study including SCEDs studies in a topic can lead to biased results and affect the validity of individual or overall results. In addition, missingness can undermine the generalizability of SCEDs studies. Considering these drawbacks, this study aims to give descriptive and advisory information to SCEDs practitioners and researchers about missing data in single-case data. To accomplish this task, the study presents information about missing data mechanisms, item level and unit level missing data, planned missing data designs, drawbacks of ignoring missing data in SCEDs, and missing data handling methods. Since single imputation methods among missing data handling methods do not require complicated statistical knowledge, are easy to use, and hence are more likely to be used by practitioners and researchers, the present study evaluates single imputation methods in terms of intervention effect sizes and missing data rates by using a real and hypothetical data sample. This study encourages SCEDs implementers, and also meta-analysts to use some of the single imputation methods to increase the generalizability and validity of the study results in case they encounter missing data in their studies.

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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.
期刊最新文献
A Quantitative Systematic Literature Review of Combination Punishment Literature: Progress Over the Last Decade. Using Instructions and Acoustic Feedback to Improve Staff Delivery of Behavior-Specific Praise in a Clinical Setting. Progressive Functional Analysis and Function-Based Intervention Via Telehealth: A Replication and Extension. Caregiver-Implemented Interventions to Improve Daily Living Skills for Individuals With Developmental Disabilities: A Systematic Review. Editor's Farewell.
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