| Literature DB >> 27387202 |
Sara Van Belle1, Geoff Wong2, Gill Westhorp3, Mark Pearson4, Nick Emmel5, Ana Manzano6, Bruno Marchal7.
Abstract
In this paper, we respond to a paper by Jamal and colleagues published in Trials in October 2015 and take an opportunity to continue the much-needed debate about what applied scientific realism is. The paper by Jamal et al. is useful because it exposes the challenges of combining a realist evaluation approach (as developed by Pawson and Tilley) with the randomised controlled trial (RCT) design.We identified three fundamental differences that are related to paradigmatic differences in the treatment of causation between post-positivist and realist logic: (1) the construct of mechanism, (2) the relation between mediators and moderators on one hand and mechanisms and contexts on the other hand, and (3) the variable-oriented approach to analysis of causation versus the configurational approach.We show how Jamal et al. consider mechanisms as observable, external treatments and how their approach reduces complex causal processes to variables. We argue that their proposed RCT design cannot provide a truly realist understanding. Not only does the proposed realist RCT design not deal with the RCT's inherent inability to "unpack" complex interventions, it also does not enable the identification of the dynamic interplay among the intervention, actors, context, mechanisms and outcomes, which is at the core of realist research. As a result, the proposed realist RCT design is not, as we understand it, genuinely realist in nature.Entities:
Keywords: Causation; Randomized controlled trials; Realist evaluation; Scientific realism
Mesh:
Year: 2016 PMID: 27387202 PMCID: PMC4936237 DOI: 10.1186/s13063-016-1407-0
Source DB: PubMed Journal: Trials ISSN: 1745-6215 Impact factor: 2.279
Key principles underpinning realist research [3, 11, 18, 19] and [20]
| • Realism asserts a reality exists independently of the observer: both the material and the social worlds are “real”, at least in the sense that anything that can cause observable outcomes is itself real. • Knowing reality through science is unavoidably relative to the researcher: developing knowledge on reality is constrained by perception and cognition, and is socially constructed. Nonetheless, reality constrains the interpretations that are reasonable to make of it, meaning that it is possible to move gradually closer to an understanding that better reflects the reality under study. • According to realism, the world is differentiated and stratified, consisting not only of observable and measurable events, but also of structures, which have powers and liabilities capable of generating events. These structures may be present even where, as in the social world and much of the natural world, they do not generate regular patterns of events [ |
Definitions of mechanism (adapted from Mahoney [14])
| Definition #1—“Variables” (successionist mode) | Definition #2—“Theory of change” (successionist mode) | Definition #3—Scientific realism (generative mode) | |
|---|---|---|---|
| Definition | An intervening (set of) variable(s) that explain(s) why a correlation exists between an independent and dependent variable | Frequently occurring causal patterns that are triggered under generally unknown conditions and with indeterminate consequences. A mechanism explains by opening up the black box and showing the cogs and wheels of the internal machinery. It provides a continuous and contiguous chain of causal or intentional links between the | An unobserved entity that, when activated, generates an outcome of interest |
| Analytical approach | Correlational analysis techniques, such as mediation analysis, are used to identify “mechanisms” that are considered to be mediators of the observed effect | While slightly more broadly defined, this definition is compatible with probabilistic approaches to analysis | Causal analysis consists of identifying the configuration that links the outcome to mechanism(s) triggered by the context, often combining quantitative and qualitative data |
| Role given to theory | Theories in the form of universal laws can be deduced from empirical research (covering law principle) | Theories in the form of empirical knowledge derived from constant conjunction observations | Research contributes to developing theories of the middle range |
| Implications | Risk of reduction of mechanisms to measurable indicators, through which dynamic processes of change are reduced to correlations between variables that stand for more complex processes | In this view, and similar to definition 1, causation is reduced to the concatenation of elements in a causal chain. Causation is demonstrated to the degree that empirical regularities can identified | Empirical research allows investigation of a possible mechanism, thus identifying a plausible mechanism and may eventually lead to the identification of the actual mechanism. Research thus contributes to increasing the plausibility of the explanatory hypothesis |