(Remnant et al., 2025)
Source: book chapter draft in content/000 Articles/020 !! health book chapter.md.
- Purpose
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Position QuIP + causal mapping as a credible, cost-effective way to elicit and analyse perceived drivers/barriers in complex interventions (including health services evaluations).
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Data collection stance
- QuIP focuses on changes that matter to respondents, and the perceived causes of those changes.
- Goal-free / blindfolded questioning is used to reduce pro-project bias; unprompted mention is treated as important evidence.
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Not designed to estimate effect sizes; complements (rather than replaces) quantitative inference and other theory-based approaches.
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Coding stance (“natively causal”)
- Coding is not thematic tags that are linked later; coding is pairs/chains of cause→effect factors (“causal nuggets”).
- Coding is parsimonious: only causal claims are coded; non-causal descriptive text is not.
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Inductive label harmonisation across sources is expected; analyst should manage positionality and avoid over-fitting to prior ToC.
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Use
- Compare empirical causal maps against ToCs; compare groups (e.g. men/women; staff cadres) and pathways.
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Keep a traceable link from visual summaries back to underlying quotes for verification/peer review.
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Relationship to realist ideas
- Affinity to mechanism/context thinking (multiple pathways), but with broader open capture rather than only a few “hotspots”.
References
Remnant, Copestake, Powell, & Channon (2025). Qualitative Causal Mapping in Evaluations. In Handbook of Health Services Evaluation: Theories, Methods and Innovative Practices. https://doi.org/10.1007/978-3-031-87869-5_12.