| Literature DB >> 26912342 |
Mark S Bauer1, Christopher Miller2, Bo Kim3, Robert Lew4, Kendra Weaver5, Craig Coldwell6, Kathy Henderson7, Sally Holmes8, Marjorie Nealon Seibert9, Kelly Stolzmann10, A Rani Elwy11, JoAnn Kirchner12.
Abstract
BACKGROUND: Outcome for mental health conditions is suboptimal, and care is fragmented. Evidence from controlled trials indicates that collaborative chronic care models (CCMs) can improve outcomes in a broad array of mental health conditions. US Department of Veterans Affairs leadership launched a nationwide initiative to establish multidisciplinary teams in general mental health clinics in all medical centers. As part of this effort, leadership partnered with implementation researchers to develop a program evaluation protocol to provide rigorous scientific data to address two implementation questions: (1) Can evidence-based CCMs be successfully implemented using existing staff in general mental health clinics supported by internal and external implementation facilitation? (2) What is the impact of CCM implementation efforts on patient health status and perceptions of care? METHODS/Entities:
Mesh:
Year: 2016 PMID: 26912342 PMCID: PMC4765154 DOI: 10.1186/s13012-016-0385-7
Source DB: PubMed Journal: Implement Sci ISSN: 1748-5908 Impact factor: 7.327
Examples of operationalization of the CCM
| CCM goal: anticipatory, continuous, evidence-based, collaborative care via… | ||||
|---|---|---|---|---|
| Work role redesign | Self-management support for individuals in treatment | Decision support | Information management | Community linkages |
| • Care management | • Incorporation of the individual’s values and skills | • Provider education | • | • Additional resources |
| Organizational leadership and support | ||||
Fig. 1We hypothesize that REP-F implementation support will enhance the establishment of CCM processes within the BHIP teams (H1), which will then result in improved health outcomes for patients (H2)
Fig. 2This figure illustrates the stepped wedge for one of the three external facilitators, who will work with three facilities over the course of the study. Black dots represent times of health status assessment for patients. Provider interviews and administrative data measure collection occur at the beginning of implementation and at the end of the step-down period
Fig. 3As outlined in the text, this application of REP-F emphasizes the steps of team-building, identification of common goals based on local and national priorities, and process redesign as keys to eventual sustainment of system change. The steps are illustrated sequentially, but the process is iterative and nonlinear [41, 42]
Key partner-based evaluation protocol design decisions
| Design element | Operational considerations | Researcher considerations |
|---|---|---|
| Sites and population | ||
| The BHIP operational initiative has already begun. | Need for results to inform continuing process. | Helps to sell the project to facilities. |
| Identifying the population of facilities to target | Slower-to-adopt facilities are of concern. | Working with this population avoids ceiling effects (high performers) and insufficient commitment to change (laggards). |
| Site recruiting via operational structures | Hierarchical communications and reporting structure enhance facility identification and endorsement of program. | Provides access beyond “usual suspect” volunteer facilities and “friends of friends” facilities to enhance external validity. |
| Intervention and design | ||
| Need for all participating sites to receive implementation support | Harder to justify the project on policy level if not all sites receive support. | Stepped wedge can accommodate this, though analysis is more complicated than traditional parallel-groups design |
| Balance in randomization | Experience-based expertise contributes identifying characteristics relevant to success. | Sophisticated statistical expertise provides site alancing techniques. |
| Control condition | Sites seek as much active support as possible, as soon as possible. | Researchers develop a credible contrast condition by which to evaluate the impact of the implementation strategy. |
| Length of implementation support | Experience-based expertise suggests one year of support needed. | Pilot data agree, but the need for timely data provision requires steps in wedge of 4 rather than 12 months. |
| Need to work with existing VAMC staff without external research-funded support besides external facilitators | Resource limitations preclude deploying additional clinical or administrative staff (limitation of both OMHO and QUERI funding). | Makes sustainability more likely. |
| Delineating the interface between quality improvement program evaluation and research | The BHIP initiative is nationwide in scope and facility participation is not optional. | Medical center participation in the project is the decision of the medical center director and mental health leadership, not individual provider. |
| Use of videoconference and telephone as main modalities for external facilitation | Budget (OMHO or QUERI) will not support frequent site visits by external facilitators. | Provides greater likelihood of spread of intervention strategy if successful. |
| Outcome assessment and analysis | ||
| Identification of outcome domains and appropriate instruments | Program fidelity measures must be streamlined and targeted, and wherever possible benchmarked against national data. | Patient-level measures must be psychometrically valid and feasible in a heterogeneous patient population. |
| Both quality and health status impacts are important | Operational priority issues are (a) whether CCM can be implemented into BHIP teams and (b) whether CCM-guided BHIP teams have impact on the target population. | Hybrid type III designs can accommodate implementation outcomes and health status outcomes. |
| Data must both be scientifically valid and reported in a time frame useful to operational partners. | Three-year outcomes can help plan strategy for next initiatives, but are too late to make tactical improvements to this phase of BHIP roll-out. | Design and analysis accommodate “early looks” at the data on semi-annual basis, using adjustment of significance testing parameters. |
| Ethical and regulatory issues | A non-voluntary national initiative receives expert support from researchers in order to optimize their roll-out based on valid empirical data. | Researchers gather a broader range of data to answer relevant research questions from voluntary subjects. |
Conceptual organization adapted from Bauer et al. [69]