Literature DB >> 35132582

The randomized marker method for single-case randomization tests: Handling data missing at random and data missing not at random.

Tamal Kumar De1, Patrick Onghena2.   

Abstract

Single-case experiments are frequently plagued by missing data problems. In a recent study, the randomized marker method was found to be valid and powerful for single-case randomization tests when the missing data were missing completely at random. However, in real-life experiments, it is difficult for researchers to ascertain the missing data mechanism. For analyzing such experiments, it is essential that the missing data handling method is valid and powerful for various missing data mechanisms. Hence, we examined the performance of the randomized marker method for data that are missing at random and data that are missing not at random. In addition, we compared the randomized marker method with multiple imputation, because the latter is often considered the gold standard among imputation techniques. To compare and evaluate these two methods under various simulation conditions, we calculated the type I error rate and statistical power in single-case randomization tests using these two methods of handling missing data and compared them to the type I error rate and statistical power using complete datasets. The results indicate that while multiple imputation presents an advantage in the presence of strongly correlated covariate data, the randomized marker method remains valid and results in sufficient statistical power for most of the missing data conditions simulated in this study.
© 2022. The Psychonomic Society, Inc.

Entities:  

Keywords:  Missing data; Randomization tests; Simulation; Single-case; Statistical power

Year:  2022        PMID: 35132582     DOI: 10.3758/s13428-021-01781-5

Source DB:  PubMed          Journal:  Behav Res Methods        ISSN: 1554-351X


  20 in total

Review 1.  Enhancing the scientific credibility of single-case intervention research: randomization to the rescue.

Authors:  Thomas R Kratochwill; Joel R Levin
Journal:  Psychol Methods       Date:  2010-06

Review 2.  Computing tools for implementing standards for single-case designs.

Authors:  Li-Ting Chen; Chao-Ying Joanne Peng; Ming-E Chen
Journal:  Behav Modif       Date:  2015-09-09

3.  How many imputations are really needed? Some practical clarifications of multiple imputation theory.

Authors:  John W Graham; Allison E Olchowski; Tamika D Gilreath
Journal:  Prev Sci       Date:  2007-06-05

4.  The n-of-1 randomized controlled trial: clinical usefulness. Our three-year experience.

Authors:  G H Guyatt; J L Keller; R Jaeschke; D Rosenbloom; J D Adachi; M T Newhouse
Journal:  Ann Intern Med       Date:  1990-02-15       Impact factor: 25.391

5.  Recommendations for Choosing Single-Case Data Analytical Techniques.

Authors:  Rumen Manolov; Mariola Moeyaert
Journal:  Behav Ther       Date:  2016-05-16

6.  Linear Trend in Single-Case Visual and Quantitative Analyses.

Authors:  Rumen Manolov
Journal:  Behav Modif       Date:  2017-08-17

7.  Methodological standards in single-case experimental design: Raising the bar.

Authors:  Jennifer B Ganz; Kevin M Ayres
Journal:  Res Dev Disabil       Date:  2018-04-12

8.  Handling missing data in randomization tests for single-case experiments: A simulation study.

Authors:  Tamal Kumar De; Bart Michiels; René Tanious; Patrick Onghena
Journal:  Behav Res Methods       Date:  2020-06

9.  Estimating individual treatment effects from multiple-baseline data: a Monte Carlo study of multilevel-modeling approaches.

Authors:  John M Ferron; Jennie L Farmer; Corina M Owens
Journal:  Behav Res Methods       Date:  2010-11

10.  An R package for single-case randomization tests.

Authors:  Isis Bulté; Patrick Onghena
Journal:  Behav Res Methods       Date:  2008-05
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