| Literature DB >> 29866135 |
Virginia R McKay1, Lee D Hoffer2, Todd B Combs3, M Margaret Dolcini4.
Abstract
BACKGROUND: Sustaining evidence-based interventions (EBIs) is an ongoing challenge for dissemination and implementation science in public health and social services. Characterizing the relationship among human resource capacity within an agency and subsequent population outcomes is an important step to improving our understanding of how EBIs are sustained. Although human resource capacity and population outcomes are theoretically related, examining them over time within real-world experiments is difficult. Simulation approaches, especially agent-based models, offer advantages that complement existing methods.Entities:
Keywords: Agent-based modeling; Dissemination and implementation science; Evidence-based intervention; Human resources; Organizational capacity; Sustainability; Systems science
Mesh:
Year: 2018 PMID: 29866135 PMCID: PMC5987464 DOI: 10.1186/s13012-018-0767-0
Source DB: PubMed Journal: Implement Sci ISSN: 1748-5908 Impact factor: 7.327
Fig. 1ABM variables using organizational capacity model developed by Meyer et al. [7] and integrated with EBI sustainability model by Scheirer and Dearing [11]
Key simulation variables and parameters
| Variable | Description | Data source(s)a | Value | |
|---|---|---|---|---|
| 1.1 | Loss to follow up (%) | The proportion of clients that receive the first session of RESPECT but will not return for the second session | RCT | 15 |
| 1.2 | Risk reduction achieved (%) | The proportion of clients that will achieve their risk-reduction step | RESPECT case | 72 |
| 1.3 | Size of risk reduction (M; SD) | The size of the risk-reduction step achieved by the clients selected from normal distribution | RCT; RESPECT case | 1; 0.5 |
| 1.4 | Clients in a week (N) | The number of clients seen by one provider in a week | Project RESPECT | 15 |
| 1.5 | Risk decay (%) | The proportion of clients that initially achieved their risk-reduction step but experience an increase in risk | RCT | 8 |
| 1.6 | Size of risk decay (M; SD) | The size of the risk-reduction step achieved by the clients selected from a normal distribution | RCT; RESPECT case | 1; 0.5 |
| 1.7 | Repeat eligibility criteria (Months; Risk) | The criteria determining whether an individual in the population can participate in the intervention again | Project RESPECT | 3; < 4 |
aProject RESPECT = data from translation of project RESPECT (see references [28–30]). RCT = data from the original RESPET randomized controlled trial (see references [24, 25]). RESPECT case = data from the RESPECT de-adoption study (see reference [31])
Experimental conditions
| Variable | Description | Range | Increment |
|---|---|---|---|
| Staff positions (N) | The maximum number of possible EBI staff positions at the agency | 2–10 | 2 |
| Turnover rate (%) | The proportion of providers that will turnover in a year | 5–15 | 5 |
| Timing in training (N) | The number of weeks that a provider will be present at the agency before being trained in the EBI | 2–6 | 2 |
Fig. 2Contour map of change in population risk by staff positions over time
Fig. 3Trend graphs of the change in mean population risk and the proportion of the population considered high risk (risk > 5) over time
Fig. 4Training delays and turnover rates with mean population risk over time