Example Application of Single Case Experimental Designs in Psychology
A psychologist measuring the effect of a relaxation app on daily anxiety first makes the participant record the anxiety level daily for 10 days (baseline), then she gives the app to the participant for 14 days, and finally compares the profiles. If the anxiety level goes down only in the phase of the intervention, a causal effect is confirmed.
According to Epstein and Dallery (2022), SCED methodology have been systematically classified as a design family that consists of several experimental methods including reversal (A–B–A–B), multiple baseline, alternating treatments, and changing criterion designs, each of which can be applied to a particular research scenario.
SCEDs have been increasingly used in different fields because of their importance in personalized research and dealing with small sample size.
Example:
In the case of child neurorehabilitation, for instance, the loss of functional movements might differ for each individual child with the disorder. Different therapists may monitor the child’s progressive improvements on a daily basis and adjust the corresponding therapy (Krasny-Pacini, 2023).
The inception of SCEDs was the non-acceptance of group experiments’ shortcomings particularly in behaviour therapy where one client at a time treatment application is the norm (Aydin, 2024).
Different SCED methodology meet different research purposes.
A. Reversal Designs (A–B–A–B)
• Add and remove treatment and then add it again to confirm results.
• Used when the behaviour goes back to its original state after the treatment is stopped.
Example:
Assessing the use of a reward system to reduce noise in the classroom. If noise decreases during the treatment phase, increases during the no-treatment phase, and decreases again when treatment is given again, then the cause-and-effect relationship is very clear.
B. Multiple Baseline Designs
• Intervention is implemented one after the other in a staggered way across participants, behaviours, or settings.
• Use when: Withdrawal is not allowed (e.g., self-harm interventions).
Example:
A communication training program is done one by one in the case of three children with autism.
C. Alternating Treatment Designs
• Two or more interventions can be compared in a very short time.
• Use when: You want to know the best treatment very fast.
Example:
Flashcards vs. a mobile app for vocabulary learning are compared by changing sessions every day.
D. Changing Criterion Designs
Example:
Reducing caffeine intake by setting weekly decreasing limits.
Current research explains valid standards which improve the SCED validity.
Randomization
The bias can be reduced and casual inference can be strengthened by randomizing phase changes.
Tanious et al. (2024) reported that randomization prevents the researchers-driven phase timing and strengthen internal validity.
Example:
Choosing the day randomly to shift from baseline to treatments avoids unrequired manipulation.
Replication
The repeated demonstration of effects required by reliable SCED evidence (Kazdin, 2021).
Replicate across participants
Replicate across settings
Replicate across behaviours
Example:
Confidence in the treatment increases if an intervention strengthens fluency for three different students at various times.
High-Frequency Measurement
SCEDs Depends on current, various observation.
Jamshidi et al. (2023) reported that when the data is collected regularly or daily per session, meta-analysis show better effects.
Example:
Observing test assessment behaviour in classroom during every zoology class rather than twice a month.
Table:1 Key Scholarly Contributions to Single-Case Experimentation Research
|
Author(s) & Year |
Core Contribution |
Relevance to SCED Research |
|
Kazdin (2021) |
Defines SCED characteristics, strengths, and methodological standards. |
Establishes foundational SCED principles—repeated measurement, replication, causal inference. |
|
Aydin (2024) |
Provides a historical overview and explains why SCEDs are essential in modern research. |
Shows SCED evolution and value in individualized, small-sample behavioural studies. |
|
Epstein & Dallery (2022) |
Describes the “family” of SCED structures (AB, reversal, multiple baseline, etc.). |
Offers classification and practical selection of SCED types for researchers. |
|
Jamshidi et al. (2023) |
Systematic review on SCED meta-analyses, data structures, and statistical methods. |
Highlights advanced modelling, Tau-U, and multilevel meta-analysis for SCEDs. |
|
Tanious et al. (2024) |
Emphasizes the importance of randomization and replication in SCED validity. |
Strengthens methodological rigor by advocating randomized phase changes. |
|
Krasny-Pacini (2023) |
Applies SCEDs to child neurology and developmental disability rehabilitation. |
Demonstrates SCED usefulness in clinical and neurorehabilitation settings. |
|
Tanious & Manolov (2022) |
Introduces violin plots for SCED meta-analysis visualization. |
Enhances clarity of effect size interpretation across cases. |
|
Dowdy et al. (2022) |
Reviews visual analysis advancements and automated SCED graphing tools. |
Modernizes SCED data interpretation with structured and technological methods. |
|
Aydin (2024) |
Evaluates missing-data issues and imputation techniques in SCEDs. |
Offers strategies for maintaining analytic accuracy when data gaps occur. |
Recent developments have significantly improved the scientific precision of SCEDs.
Advancements in Visual & Statistical Analysis
Automated visual analysis tools detect level and trend changes (Dowdy et al., 2022).
Effect size methods like Tau-U improve statistical inference.
Violin plots illustrate effect-size distributions across cases (Tanious & Manolov, 2022).
Multilevel modelling strengthens SCED meta-analyses (Jamshidi et al., 2023).
Example:
A researcher evaluating treatment effects across 20 SCED studies uses violin plots to visualise variability instead of relying on simple averages.
Managing Missing Data
Because SCEDs require dense time-series data, missing measurements threaten validity.
Aydin (2024) emphasises:
Single imputation,
Sensitivity analysis, and
Improved data-collection practices.
Example:
If a participant misses two measurement days due to illness, imputation experimental methods can preserve analytic accuracy.
Where SCEDs Are Most Useful
Clinical psychology: evaluating exposure therapy or habit reduction
Neurorehabilitation: tracking motor improvement
Education: testing instructional strategies
Behaviour analysis: assessing reinforcement or punishment systems