45 Single-Subject Research Designs
Learning Objectives
- Describe the basic elements of a single-subject research design.
- Design simple single-subject studies using reversal and multiple-baseline designs.
- Explain how single-subject research designs address the issue of internal validity.
- Interpret the results of simple single-subject studies based on the visual inspection of graphed data.
General Features of Single-Subject Designs
Before looking at any specific single-subject research designs, it will be helpful to consider some features that are common to most of them. Many of these features are illustrated in Figure 10.1, which shows the results of a generic single-subject study. First, the dependent variable (represented on the y-axis of the graph) is measured repeatedly over time (represented by the x-axis) at regular intervals. Second, the study is divided into distinct phases, and the participant is tested under one condition per phase. The conditions are often designated by capital letters: A, B, C, and so on. Thus Figure 10.1 represents a design in which the participant was tested first in one condition (A), then tested in another condition (B), and finally retested in the original condition (A). (This is called a reversal design and will be discussed in more detail shortly.)
Another important aspect of single-subject research is that the change from one condition to the next does not usually occur after a fixed amount of time or number of observations. Instead, it depends on the participant’s behavior. Specifically, the researcher waits until the participant’s behavior in one condition becomes fairly consistent from observation to observation before changing conditions. This is sometimes referred to as the steady state strategy (Sidman, 1960)[1]. The idea is that when the dependent variable has reached a steady state, then any change across conditions will be relatively easy to detect. Recall that we encountered this same principle when discussing experimental research more generally. The effect of an independent variable is easier to detect when the “noise” in the data is minimized.
Reversal Designs
The most basic single-subject research design is the reversal design, also called the ABA design. During the first phase, A, a baseline is established for the dependent variable. This is the level of responding before any treatment is introduced, and therefore the baseline phase is a kind of control condition. When steady state responding is reached, phase B begins as the researcher introduces the treatment. There may be a period of adjustment to the treatment during which the behavior of interest becomes more variable and begins to increase or decrease. Again, the researcher waits until that dependent variable reaches a steady state so that it is clear whether and how much it has changed. Finally, the researcher removes the treatment and again waits until the dependent variable reaches a steady state. This basic reversal design can also be extended with the reintroduction of the treatment (ABAB), another return to baseline (ABABA), and so on.
The study by Hall and his colleagues employed an ABAB reversal design. Figure 10.2 approximates the data for Robbie. The percentage of time he spent studying (the dependent variable) was low during the first baseline phase, increased during the first treatment phase until it leveled off, decreased during the second baseline phase, and again increased during the second treatment phase.
Why is the reversal—the removal of the treatment—considered to be necessary in this type of design? Why use an ABA design, for example, rather than a simpler AB design? Notice that an AB design is essentially an interrupted time-series design applied to an individual participant. Recall that one problem with that design is that if the dependent variable changes after the treatment is introduced, it is not always clear that the treatment was responsible for the change. It is possible that something else changed at around the same time and that this extraneous variable is responsible for the change in the dependent variable. But if the dependent variable changes with the introduction of the treatment and then changes back with the removal of the treatment (assuming that the treatment does not create a permanent effect), it is much clearer that the treatment (and removal of the treatment) is the cause. In other words, the reversal greatly increases the internal validity of the study.
There are close relatives of the basic reversal design that allow for the evaluation of more than one treatment. In a multiple-treatment reversal design, a baseline phase is followed by separate phases in which different treatments are introduced. For example, a researcher might establish a baseline of studying behavior for a disruptive student (A), then introduce a treatment involving positive attention from the teacher (B), and then switch to a treatment involving mild punishment for not studying (C). The participant could then be returned to a baseline phase before reintroducing each treatment—perhaps in the reverse order as a way of controlling for carryover effects. This particular multiple-treatment reversal design could also be referred to as an ABCACB design.
In an alternating treatments design, two or more treatments are alternated relatively quickly on a regular schedule. For example, positive attention for studying could be used one day and mild punishment for not studying the next, and so on. Or one treatment could be implemented in the morning and another in the afternoon. The alternating treatments design can be a quick and effective way of comparing treatments, but only when the treatments are fast acting.
Multiple-Baseline Designs
There are two potential problems with the reversal design—both of which have to do with the removal of the treatment. One is that if a treatment is working, it may be unethical to remove it. For example, if a treatment seemed to reduce the incidence of self-injury in a child with an intellectual delay, it would be unethical to remove that treatment just to show that the incidence of self-injury increases. The second problem is that the dependent variable may not return to baseline when the treatment is removed. For example, when positive attention for studying is removed, a student might continue to study at an increased rate. This could mean that the positive attention had a lasting effect on the student’s studying, which of course would be good. But it could also mean that the positive attention was not really the cause of the increased studying in the first place. Perhaps something else happened at about the same time as the treatment—for example, the student’s parents might have started rewarding him for good grades. One solution to these problems is to use a multiple-baseline design, which is represented in Figure 10.3. There are three different types of multiple-baseline designs which we will now consider.
Multiple-Baseline Design Across Participants
In one version of the design, a baseline is established for each of several participants, and the treatment is then introduced for each one. In essence, each participant is tested in an AB design. The key to this design is that the treatment is introduced at a different time for each participant. The idea is that if the dependent variable changes when the treatment is introduced for one participant, it might be a coincidence. But if the dependent variable changes when the treatment is introduced for multiple participants—especially when the treatment is introduced at different times for the different participants—then it is unlikely to be a coincidence.
As an example, consider a study by Scott Ross and Robert Horner (Ross & Horner, 2009)[2]. They were interested in how a school-wide bullying prevention program affected the bullying behavior of particular problem students. At each of three different schools, the researchers studied two students who had regularly engaged in bullying. During the baseline phase, they observed the students for 10-minute periods each day during lunch recess and counted the number of aggressive behaviors they exhibited toward their peers. After 2 weeks, they implemented the program at one school. After 2 more weeks, they implemented it at the second school. And after 2 more weeks, they implemented it at the third school. They found that the number of aggressive behaviors exhibited by each student dropped shortly after the program was implemented at the student’s school. Notice that if the researchers had only studied one school or if they had introduced the treatment at the same time at all three schools, then it would be unclear whether the reduction in aggressive behaviors was due to the bullying program or something else that happened at about the same time it was introduced (e.g., a holiday, a television program, a change in the weather). But with their multiple-baseline design, this kind of coincidence would have to happen three separate times—a very unlikely occurrence—to explain their results.
Multiple-Baseline Design Across Behaviors
In another version of the multiple-baseline design, multiple baselines are established for the same participant but for different dependent variables, and the treatment is introduced at a different time for each dependent variable. Imagine, for example, a study on the effect of setting clear goals on the productivity of an office worker who has two primary tasks: making sales calls and writing reports. Baselines for both tasks could be established. For example, the researcher could measure the number of sales calls made and reports written by the worker each week for several weeks. Then the goal-setting treatment could be introduced for one of these tasks, and at a later time the same treatment could be introduced for the other task. The logic is the same as before. If productivity increases on one task after the treatment is introduced, it is unclear whether the treatment caused the increase. But if productivity increases on both tasks after the treatment is introduced—especially when the treatment is introduced at two different times—then it seems much clearer that the treatment was responsible.
Multiple-Baseline Design Across Settings
In yet a third version of the multiple-baseline design, multiple baselines are established for the same participant but in different settings. For example, a baseline might be established for the amount of time a child spends reading during his free time at school and during his free time at home. Then a treatment such as positive attention might be introduced first at school and later at home. Again, if the dependent variable changes after the treatment is introduced in each setting, then this gives the researcher confidence that the treatment is, in fact, responsible for the change.
Data Analysis in Single-Subject Research
In addition to its focus on individual participants, single-subject research differs from group research in the way the data are typically analyzed. As we have seen throughout the book, group research involves combining data across participants. Group data are described using statistics such as means, standard deviations, correlation coefficients, and so on to detect general patterns. Finally, inferential statistics are used to help decide whether the result for the sample is likely to generalize to the population. Single-subject research, by contrast, relies heavily on a very different approach called visual inspection. This means plotting individual participants’ data as shown throughout this chapter, looking carefully at those data, and making judgments about whether and to what extent the independent variable had an effect on the dependent variable. Inferential statistics are typically not used.
In visually inspecting their data, single-subject researchers take several factors into account. One of them is changes in the level of the dependent variable from condition to condition. If the dependent variable is much higher or much lower in one condition than another, this suggests that the treatment had an effect. A second factor is trend, which refers to gradual increases or decreases in the dependent variable across observations. If the dependent variable begins increasing or decreasing with a change in conditions, then again this suggests that the treatment had an effect. It can be especially telling when a trend changes directions—for example, when an unwanted behavior is increasing during baseline but then begins to decrease with the introduction of the treatment. A third factor is latency, which is the time it takes for the dependent variable to begin changing after a change in conditions. In general, if a change in the dependent variable begins shortly after a change in conditions, this suggests that the treatment was responsible.
In the top panel of Figure 10.4, there are fairly obvious changes in the level and trend of the dependent variable from condition to condition. Furthermore, the latencies of these changes are short; the change happens immediately. This pattern of results strongly suggests that the treatment was responsible for the changes in the dependent variable. In the bottom panel of Figure 10.4, however, the changes in level are fairly small. And although there appears to be an increasing trend in the treatment condition, it looks as though it might be a continuation of a trend that had already begun during baseline. This pattern of results strongly suggests that the treatment was not responsible for any changes in the dependent variable—at least not to the extent that single-subject researchers typically hope to see.
The results of single-subject research can also be analyzed using statistical procedures—and this is becoming more common. There are many different approaches, and single-subject researchers continue to debate which are the most useful. One approach parallels what is typically done in group research. The mean and standard deviation of each participant’s responses under each condition are computed and compared, and inferential statistical tests such as the t test or analysis of variance are applied (Fisch, 2001)[3]. (Note that averaging across participants is less common.) Another approach is to compute the percentage of non-overlapping data (PND) for each participant (Scruggs & Mastropieri, 2001)[4]. This is the percentage of responses in the treatment condition that are more extreme than the most extreme response in a relevant control condition. In the study of Hall and his colleagues, for example, all measures of Robbie’s study time in the first treatment condition were greater than the highest measure in the first baseline, for a PND of 100%. The greater the percentage of non-overlapping data, the stronger the treatment effect. Still, formal statistical approaches to data analysis in single-subject research are generally considered a supplement to visual inspection, not a replacement for it.
- Sidman, M. (1960). Tactics of scientific research: Evaluating experimental data in psychology. Boston, MA: Authors Cooperative. ↵
- Ross, S. W., & Horner, R. H. (2009). Bully prevention in positive behavior support. Journal of Applied Behavior Analysis, 42, 747–759. ↵
- Fisch, G. S. (2001). Evaluating data from behavioral analysis: Visual inspection or statistical models. Behavioral Processes, 54, 137–154. ↵
- Scruggs, T. E., & Mastropieri, M. A. (2001). How to summarize single-participant research: Ideas and applications. Exceptionality, 9, 227–244. ↵
In March 2019, two changes were made to the textbook.
- Image in 9.3 from Abery & Stancliffe was removed and the text was replaced with a different explanation for typology due to concerns about fair use of that image. It will also be removed from print, PDF, and e-reader editions printed after May 2019.
- Front matter was updated to indicate how to adapt the textbook using Pressbooks XML. Pressbooks XML was also added as a download option in the front matter.
In January 2019, a set of small revisions to this textbook were made from the original version published in August 2018. They include the following:
- New cover art
- Small textual changes, including grammar and proofing errors noted by students
- Changed theme to McLuhan
- Changed headings to Heading 1
- Resized images to fit better on print PDF
- Took out "chapter" from chapter titles for simplicity in navigation
- Clarifying revisions to framing in Chapter 1
- Created a print edition on Amazon
- Revised and updated ancillary materials
- Deleted preface from front matter
Future changes will be noted here. The next edition of this book is planned for Summer 2020.
In March 2019, two changes were made to the textbook.
- Image in 9.3 from Abery & Stancliffe was removed and the text was replaced with a different explanation for typology due to concerns about fair use of that image. It will also be removed from print, PDF, and e-reader editions printed after May 2019.
- Front matter was updated to indicate how to adapt the textbook using Pressbooks XML. Pressbooks XML was also added as a download option in the front matter.
In January 2019, a set of small revisions to this textbook were made from the original version published in August 2018. They include the following:
- New cover art
- Small textual changes, including grammar and proofing errors noted by students
- Changed theme to McLuhan
- Changed headings to Heading 1
- Resized images to fit better on print PDF
- Took out "chapter" from chapter titles for simplicity in navigation
- Clarifying revisions to framing in Chapter 1
- Created a print edition on Amazon
- Revised and updated ancillary materials
- Deleted preface from front matter
Future changes will be noted here. The next edition of this book is planned for Summer 2020.
This textbook would not be possible without the outstanding source textbooks. Dr. Blackstone’s textbook is an engaging, approachable, and rigorous work on undergraduate research methods, and I am grateful for her scholarship and generosity. It is also important to recognize the work of the Saylor Foundation in creating and sharing Dr. Blackstone’s textbook. Similarly, the Dr. Frederiksen and Dr. Phelps’ textbook is an important resource for any student seeking to understand literature reviews. The Rebus Community and Pressbooks are also invaluable contributors to the open textbook community.
I would like to thank two librarians, Jackie Delong of Washington College and Anita Walz of Virginia Tech, for making this book project possible. I would also like to thank my social work mentors and colleagues at Radford University and Virginia Commonwealth University, particularly Dr. Mary Katherine O’Connor and Dr. Sarah Kye Price, who fostered my interest in multi-paradigmatic research methods. Additionally, the support of Radford University and the Waldron College of Health and Human Services were invaluable during the writing of this manuscript.
The creation of this textbook would not have been possible without the assistance of student researchers and graduate assistants, who helped in the writing, editing, and testing of this textbook. In particular, I would like to thank Amanda Parsons, David Cacamis, Daniel Brooks, and Courtney Crenshaw. Students in my research methods courses further strengthened my understanding of how to teach this topic. I would like to thank Tommy Pennington who assisted with copyediting a draft of this text.
I am particularly indebted to Janine Gancy, MSW for her assistance in creating version 1.4 of this textbook. Janine did a remarkably thorough job proofreading and formatting the most recent edition of the textbook.
In addition, I would like to thank Melissa Ashman, an instructor of business communications at Kwantlen Polytechnic University, for her assistance in editing the 2018 version of this textbook. Janine Gancy's contributions as editor in 2020 have immensely improved the resource, and I am incredibly grateful for her help.
The Open Social Work Education logo was designed by Courtney Kupersmith.
I also would also like to dedicate this book to my wife, Emily, for carrying the weight of all of my academic projects, however crazy they are, and for carrying our future son. And to our cat, Chloe, thanks for being the best administrative assistant in the world.
This textbook would not be possible without the outstanding source textbooks. Dr. Blackstone’s textbook is an engaging, approachable, and rigorous work on undergraduate research methods, and I am grateful for her scholarship and generosity. It is also important to recognize the work of the Saylor Foundation in creating and sharing Dr. Blackstone’s textbook. Similarly, the Dr. Frederiksen and Dr. Phelps’ textbook is an important resource for any student seeking to understand literature reviews. The Rebus Community and Pressbooks are also invaluable contributors to the open textbook community.
I would like to thank two librarians, Jackie Delong of Washington College and Anita Walz of Virginia Tech, for making this book project possible. I would also like to thank my social work mentors and colleagues at Radford University and Virginia Commonwealth University, particularly Dr. Mary Katherine O’Connor and Dr. Sarah Kye Price, who fostered my interest in multi-paradigmatic research methods. Additionally, the support of Radford University and the Waldron College of Health and Human Services were invaluable during the writing of this manuscript.
The creation of this textbook would not have been possible without the assistance of student researchers and graduate assistants, who helped in the writing, editing, and testing of this textbook. In particular, I would like to thank Amanda Parsons, David Cacamis, Daniel Brooks, and Courtney Crenshaw. Students in my research methods courses further strengthened my understanding of how to teach this topic. I would like to thank Tommy Pennington who assisted with copyediting a draft of this text.
I am particularly indebted to Janine Gancy, MSW for her assistance in creating version 1.4 of this textbook. Janine did a remarkably thorough job proofreading and formatting the most recent edition of the textbook.
In addition, I would like to thank Melissa Ashman, an instructor of business communications at Kwantlen Polytechnic University, for her assistance in editing the 2018 version of this textbook. Janine Gancy's contributions as editor in 2020 have immensely improved the resource, and I am incredibly grateful for her help.
The Open Social Work Education logo was designed by Courtney Kupersmith.
I also would also like to dedicate this book to my wife, Emily, for carrying the weight of all of my academic projects, however crazy they are, and for carrying our future son. And to our cat, Chloe, thanks for being the best administrative assistant in the world.
Scientific Inquiry in Social Work was adapted by Dr. Matthew DeCarlo. Unless otherwise noted, Scientific Inquiry in Social Work is © 2018 by Matthew DeCarlo and is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 License (https://creativecommons.org/licenses/by-nc-sa/4.0/).
Attribution statement
The majority of this textbook, was adapted from Principles of Sociological Inquiry: Qualitative and Quantitative Methods by Dr. Amy Blackstone of the University of Maine. Dr. Blackstone’s text is available here: https://saylordotorg.github.io/text_principles-of-sociological-inquiry-qualitative-and-quantitative-methods/. The Blackstone textbook was published using a CC-BY-NC-SA 3.0 license (https://creativecommons.org/licenses/by-nc-sa/3.0/).
Most of the text for Chapters 2, 3, and 4 were remixed in from Dr. Linda Frederiksen and Dr. Sue F. Phelps’ Literature Reviews for Education and Nursing Graduate Students published by Pressbooks and the Rebus Community. Dr. Frederiksen and Dr. Phelps’ textbook can be accessed here: https://press.rebus.community/literaturereviewsedunursing/ The Frederiksen & Phelps textbook was published using a CC-BY 4.0 license (https://creativecommons.org/licenses/by/4.0/).
An attribution index in the back matter describes where each source textbook was used in this manuscript. Image attributions are provided in each chapter.
Cover art "Close up of beer bottles on wood" was created by Bruno Scramgnon and shared under a CC-0 license. The cover was created using Canva.