# Applying Positive Deviance Methods to Harness Optimal Practices for Effective Pain Management in Community Living Centers

> **NIH VA IK2** · EDITH NOURSE  ROGERS MEMORIAL VETERANS HOSPITAL · 2021 · —

## Abstract

Background: Unrelieved pain is highly prevalent and devastating for Veterans in VA’s 134 Community Living
Centers (CLCs). Imminent removal of pain as one of the CLC quality measures offers an opportunity, per VA’s
Office of Geriatrics and Extended Care (GEC), to develop new, risk-adjusted measures that more accurately
characterize CLC pain management. These measures can identify CLCs successful at pain management while
minimizing biased underestimates for CLCs with the sickest residents. Then, by diving deeply into structures
and processes of high performers, we can learn how to intervene. My background in gerontology, quantitative
methods, and implementation science partially prepares me for this work. But I need additional training in risk
adjustment, qualitative research, cutting-edge analytic methods, and intervention study designs for the study
and my health services research career to succeed.
Specific Aims: The proposed CDA simultaneously fills the considerable gaps in my background and provides
VA with rigorous, actionable research on which to ground future quality improvement efforts. A social-
ecological model frames the work. GEC commits to serving as an invested partner. I have 3 aims, which I will
achieve with my mentors and training.
1. Evaluate how risk adjustment changes judgements of CLC pain management performance.
2. Use mixed methods to perform in-depth studies of CLCs with high outlying performance.
3. Adapt an existing, evidence-based intervention comprising lessons learned from “positive deviants.”
Methods: Aim 1: Using VA administrative data of CLC residents, I will (1) calculate unadjusted pain measures,
(2) apply risk adjustment, (3) assess the measures’ reliability and validity, and (4) identify high and low outlying
performance on pain management. Aim 2: I will use quantitative (survey) and qualitative data from staff and
residents at 5 top-performing CLCs, contrasted with qualitative data from 5 low-performing CLCs, to develop
hypotheses of contextual factors and pain management practices unique to positive deviants. I will test causal
relationships using configurational comparative analytic methods. Aim 3: I will adapt an existing nursing home
pain management intervention for use in VA CLCs, using empirical evidence from Aim 2 about necessary
conditions for optimal pain management. A modified e-Delphi panel of CLC stakeholders and pain
management experts will provide feedback on the intervention package’s design. I will use a developmental
formative evaluation of qualitative data from staff at 1 low-performing CLC to assess the intervention’s
feasibility and acceptability, in preparation for rigorous testing in future work.
Expected Results and Next Steps: I will provide GEC with interim deliverables to enable assessment of CLC
pain management quality, guide CLC policy, and support clinical practice in CLCs struggling with pain
management. Knowledge from this CDA will lead me to develop studies to refine risk adjustm...

## Key facts

- **NIH application ID:** 10178377
- **Project number:** 1IK2HX003184-01A1
- **Recipient organization:** EDITH NOURSE  ROGERS MEMORIAL VETERANS HOSPITAL
- **Principal Investigator:** Camilla Benedicto Pimentel
- **Activity code:** IK2 (R01, R21, SBIR, etc.)
- **Funding institute:** VA
- **Fiscal year:** 2021
- **Award amount:** —
- **Award type:** 1
- **Project period:** 2021-07-01 → 2026-06-30

## Primary source

NIH RePORTER: https://reporter.nih.gov/project-details/10178377

## Citation

> US National Institutes of Health, RePORTER application 10178377, Applying Positive Deviance Methods to Harness Optimal Practices for Effective Pain Management in Community Living Centers (1IK2HX003184-01A1). Retrieved via AI Analytics 2026-05-21 from https://api.ai-analytics.org/grant/nih/10178377. Licensed CC0.

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