| Literature DB >> 25005707 |
Meredith Y Smith1, Elaine Morrato.
Abstract
Regulators are increasingly mandating the use of pharmaceutical risk-minimization programs for a variety of medicinal products. To date, however, evaluations of these programs have shown mixed results and relatively little attention has been directed at diagnosing the specific factors contributing to program success or lack thereof. Given the growing use of these programs in many different patient populations, it is imperative to understand how best to design, deliver, disseminate, and assess them. In this paper, we argue that current approaches to designing, implementing, and evaluating risk-minimization programs could be improved by applying evidence- and theory-based 'best practices' from implementation science. We highlight commonly encountered challenges and gaps in the design, implementation, and evaluation of pharmaceutical risk-minimization initiatives and propose three key recommendations to address these issues: (1) risk-minimization program design should utilize models and frameworks that guide what should be done to produce successful outcomes and what questions should be addressed to evaluate program success; (2) intervention activities and tools should be theoretically grounded and evidence based; and (3) evaluation plans should incorporate a mixed-methods approach, pragmatic trial designs, and a range of outcomes. Regulators, practitioners, policy makers, and researchers are encouraged to apply these best practices in order to improve the public health impact of this important regulatory tool.Entities:
Mesh:
Year: 2014 PMID: 25005707 PMCID: PMC4134476 DOI: 10.1007/s40264-014-0197-0
Source DB: PubMed Journal: Drug Saf ISSN: 0114-5916 Impact factor: 5.606
Optimal design features, best practices in implementation science, and current practices in risk-minimization program design
| Optimal program design feature | Implementation science best practices | Pharmaceutical risk-minimization programs: actual practice | Gap? |
|---|---|---|---|
| Use of models and frameworks | Theoretical models guide conceptualization of risk-minimization intervention and hypothesis generation. Intervention models and frameworks guide program planning to increase the likelihood of effectiveness by focusing on the essential strategies for successful translation. Evaluation models and frameworks guide the types of questions that should be asked to assess the success of the risk-minimization program. | Current risk-minimization strategies are generally atheoretical and developed without benefit of comprehensive and well-tested models and frameworks that guide intervention planning and implementation, dissemination, and evaluation assessment [ | Yes |
| Evidence-based | Intervention components are selected and designed based on prior learning and empirical evidence. | Justification for intervention components and implementation design is generally absent, design elements are largely derived from regulatory precedent. | Yes |
| Patient and stakeholder centered | Formative evaluation is conducted with stakeholders as part of the design process, including patients and staff. Implementation interventions should ideally be compatible with existing patterns of care and workflows to facilitate adoption. Implementation interventions should be designed for sustainability given the context of the program. | Varies by program. Some consideration for compatibility with clinical and patient workflows is given (i.e., considerations of patient and healthcare burden). However, formative research is typically not conducted and/or presented at the time a risk-minimization program is approved. Program costs and sustainability are not addressed. | Partial |
| Multi-faceted and multi-level | Multiple, integrated intervention elements are delivered in unison for increased effectiveness. Implementation program components are integrated across patient, provider, and system levels using a social ecological framework of healthcare delivery. | Varies by program; some are more developed than others. Some over-reliance on single element to achieve desired goal. Programs are usually directed at multiple levels (e.g., patient, physician, hospital, and/or pharmacy). | Partial |
| Dissemination and communication strategies | Target audience(s) are segmented according to their level of knowledge, attitudes, and beliefs. Implementation messaging should be appropriately targeted and/or tailored to the audience. Active dissemination strategies are used involving multiple communication channels of the appropriate scale (e.g., reach and frequency) given the target audience(s). | Communication strategies and examples of targeted messaging are typically not presented at the time a risk-minimization program is approved. Communication campaign metrics are not specified. | Yes |
| Adaptable | Core (non-mutable) program elements are identified. Implementation flexibility is allowed for non-core elements to accommodate for differences in and allow adaptation for contextual factors across sites and areas. | Regulatory precedence is that programs must be implemented uniformly within a nation; however, programs often vary between nations that are under different regulatory authorities. | Partial |
Optimal implementation features, best practices in implementation science, and current practices in risk-minimization program implementation
| Optimal program implementation feature | Implementation science best practices | Pharmaceutical risk-minimization programs: actual practice | Gap? |
|---|---|---|---|
| Organization and delivery | Formal collaborations and governance structures are specified between a central planning group and the local teams charged with implementing the program. Organizational readiness-to-change is assessed to inform local implementation adaptation. Champions are identified and engaged within the local organization and/or target audience (e.g., specialty or provider group) to facilitate implementation. Training and technical assistance is provided at program initiation and throughout implementation. | Risk-minimization programs are designed and approved by regulatory agencies at the national level. Programs are either implemented at the local level by individuals who have multiple competing priorities with varying levels of skills, commitment, and resources, or at the national level by individuals who do not have an understanding of local organizational challenges and barriers. | Yes |
| Process measures | Implementation is systematically evaluated for: Reach: absolute number, proportion, and representativeness of participants; Adoption: absolute number, proportion, and representativeness of participating settings and providers; Fidelity: extent to which key program components were delivered as designed; Cost and adaptations: time and resources required, and extent to which program activities were modified. | In general, process measures are not pre-specified at the time a risk-minimization program is approved. During program implementation, process measures are generally not reported in real-time; therefore, there is limited early assessment of how well the program is being implemented under real-world conditions. The exception is products with distribution restrictions (e.g., patient, provider, pharmacy registries) that have greater ability to monitor implementation progress than products without such distribution systems. | Partial |
| Sustainability | Promising practices, solutions, and results among implementing teams are shared across sites to increase the likelihood of program sustainability. Ongoing training and technical assistance to sites are provided periodically to minimize intervention drift and minimize impact of staff turnover. | Typically, risk-minimization programs must be delivered over the lifetime of product marketing. The need for assessing patient and healthcare system burden has been identified, but methods have not been established. Local learning on how best to adapt a program is not included in program evaluations presented to regulatory agencies. Re-training (or re-certification) has not been discussed for healthcare providers. |
Optimal evaluation features, best practices in implementation science, and current practices in risk-minimization program evaluation
| Optimal program evaluation feature | Implementation science best practices | Pharmaceutical risk-minimization programs: actual practice | Gap? |
|---|---|---|---|
| Design | Implementation models and frameworks are used for systematic evaluation. Pragmatic trial designs are used to evaluate implementation effectiveness in order to increase external validity of findings while maintaining strong internal validity, and to compare key subgroups in terms of program outcomes. A key feature of pragmatic designs is the recruitment of a representative range of settings, implementation personnel, and patients. References data from relevant sources (e.g., phase III trials, published literature) to interpret impact results. ‘Mixed methods’ are used to collect both qualitative and quantitative data to assess intervention contexts and impact, and to triangulate or confirm and validate findings. Provides information on program adoption and ongoing maintenance across sites. | Standards on what constitutes adequate evaluation for risk-minimization programs have not been established, and there is no consensus regarding what constitutes appropriate ‘thresholds of success’ for primary endpoints. The regulatory nature of risk-minimization programs has not permitted use of experimental trial designs. Interrupted time series and pre–post designs are often used without comparison groups [ Some qualitative and quantitative data are collected to evaluate knowledge, attitudes, and (to a limited extent) behaviors; however, reporting of data collection and analysis methods is uneven and generally under-described, particularly for qualitative methods. Triangulation of this learning with formal drug utilization or health services research studies is not generally performed. | Partial |
| Measures | Endpoints address a broad array of outcomes important to patients, practitioners, and policy makers (including regulatory authorities) and include measures of behavior (intent and observed), health outcomes, and cost effectiveness. Patient-centered outcomes are collected. Measurement is conducted from the perspective of multiple stakeholders (e.g., patients, providers, policy makers). Measures should be practical, easy to collect, feasible to measure, and sensitive to change. | There is little incentive to incorporate more measures than minimally necessary for regulatory review. Risk-minimization program endpoints are narrowly focused—typically focusing on physician and patient knowledge, attitudes, and perceptions of clinical risk. Clinical outcomes can be rare adverse events, making it challenging to study the effects of the program on preventing these events. Program ‘burden’ and unintended consequences are typically not assessed. | Yes |
| Measurement frequency | Assessments timepoints are dictated by individual program design. Measures are collected at a frequency to minimize burden but maximize ability to provide timely information for learning and quality improvement. | US Food and Drug Administration-mandated risk-minimization assessments are, in most instances, set at 18 months, and 3 and 7 years, regardless of the program. Measurement frequency does not support early program adaptation nor foster a learning healthcare system. | Yes |
| Although regulators are increasingly mandating pharmaceutical risk-minimization programs, insufficient attention has been given to maximizing or measuring their effectiveness as public health interventions. |
| Application of evidence- and theory-based approaches from the field of implementation science can increase the likelihood of program effectiveness by guiding what should be done to produce successful outcomes and what types of questions should be asked to assess program success. |