| Literature DB >> 31752846 |
Ulrica von Thiele Schwarz1,2, Gregory A Aarons3,4,5, Henna Hasson6,7.
Abstract
BACKGROUND: There has long been debate about the balance between fidelity to evidence-based interventions (EBIs) and the need for adaptation for specific contexts or particular patients. The debate is relevant to virtually all clinical areas. This paper synthesises arguments from both fidelity and adaptation perspectives to provide a comprehensive understanding of the challenges involved, and proposes a theoretical and practical approach for how fidelity and adaptation can optimally be managed. DISCUSSION: There are convincing arguments in support of both fidelity and adaptations, representing the perspectives of intervention developers and internal validity on the one hand and users and external validity on the other. Instead of characterizing fidelity and adaptation as mutually exclusive, we propose that they may better be conceptualized as complimentary, representing two synergistic perspectives that can increase the relevance of research, and provide a practical way to approach the goal of optimizing patient outcomes. The theoretical approach proposed, the "Value Equation," provides a method for reconciling the fidelity and adaptation debate by putting it in relation to the value (V) that is produced. The equation involves three terms: intervention (IN), context (C), and implementation strategies (IS). Fidelity and adaptation determine how these terms are balanced and, in turn, the end product - the value it produces for patients, providers, organizations, and systems. The Value Equation summarizes three central propositions: 1) The end product of implementation efforts should emphasize overall value rather than only the intervention effects, 2) implementation strategies can be construed as a method to create fit between EBIs and context, and 3) transparency is vital; not only for the intervention but for all of the four terms of the equation. There are merits to arguments for both fidelity and adaptation. We propose a theoretical approach, a Value Equation, to reconciling the fidelity and adaptation debate. Although there are complexities in the equation and the propositions, we suggest that the Value Equation be used in developing and testing hypotheses that can help implementation science move toward a more granular understanding of the roles of fidelity and adaptation in the implementation process, and ultimately sustainability of practices that provide value to stakeholders.Entities:
Keywords: Adherence; Evaluation; Fidelity; Modifications; Sustainability theory; Sustainment; Theory; Validity
Mesh:
Year: 2019 PMID: 31752846 PMCID: PMC6873662 DOI: 10.1186/s12913-019-4668-y
Source DB: PubMed Journal: BMC Health Serv Res ISSN: 1472-6963 Impact factor: 2.655
Definitions of subcomponents that represent dimensions suggested in the literature that fidelity and adaptation can refer toa
| Sub-components | Characteristics of the intervention | Characteristics of the context of delivery | |||
|---|---|---|---|---|---|
| Content of intervention | Intervention delivery | Format | Conditions of the delivery context | ||
| Suggested dimensions to consider | • The intervention • The logic or theory that explains how the intervention is intended to work (i.e. the interventions’ • Components that are part of the intervention but not central for producing the outcomes ( • Components, not part of the intervention: • Components that make the intervention uniquely distinguishable (program differentiation) [ | • Number, length and frequency of sessions, • Density: how the intervention is spaced out in time; the intensity of the intervention [ • The quality of delivery [ • What the treatment provider plans and • What the recipient perceives that they have • The timing; when the various parts of the intervention is delivered in relation to the other parts [ | • Format of delivery, e.g. one-to-one or group • Channels of delivery, e.g. phone, internet or face-to-face • Location of delivery, e.g. school, non-profit organization or church | • Interventionist specifics (e.g. who is delivering the intervention; their training, competence level; personal attributes and skills) • Setting, e.g. primary care, hospital, community-based, workplace-based [ • Organizational factors, e.g. climate, leadership, mandate, history [ • System characteristics, e.g. reimbursement models, contracts, laws, policies, regulations, political climate [ | • The health conditions that the intervention targets • Cultural characteristics • Age groups (e.g., children, youth, adults) • Patient’s own health goals and specific needs • Comorbidities |
aFidelity and adaptation sometimes refer to implementation strategies rather than interventions, that is, to what extent the strategies chosen to facilitate the use of the intervention is adhered to or adapted. The focus of the current paper is on fidelity to and adaptations of interventions
Arguments for Fidelity and Adaptation
| Argument | Fidelity … | Adaptation … |
|---|---|---|
| 1 | … is vital for drawing valid conclusions by: | … improves intervention–context fit by: |
- increasing internal validity by the transparent and adherent use of EBIs [ - separating implementation failure from theory failure, i.e., distinguishing between lack of effects due to insufficient - avoiding type-III errors: concluding that an intervention is not effective when it actually was poorly implemented [ | - ensuring that EBIs can be implemented and used in/for systems, organizations, providers, or patients that is different than the one in which the EBI was originally tested [ - increasing the acceptability, feasibility, and applicability of an EBI to a given context [ - increasing practical and/or value fit (philosophical and cultural) [ | |
| 2 | … makes accumulation of knowledge possible by: | … balances different outcomes by: |
- making replication possible by ensuring the intervention remains the same across studies, thereby distinguishing between random and robust results [ - allowing results from multiple studies to be synthesised in systematic reviews and meta-analyses | - focusing on a broader spectrum of objectives, e.g., not only the specific clinical outcome an EBIs is evaluated against (e.g., symptom reduction, improved functioning) but also outcomes on other levels (patient, provider, organization and system) such as reach, relevance, costs [ - focusing on optimizing benefits over time rather than focusing on sustained delivery (i.e., sustainment) [ | |
| 3 | ... assures EBI effectiveness by: | ... assures EBI effectiveness by: |
| - relying on studies, across different types of interventions and settings, showing that high fidelity can improve outcomes (e.g., [ | - relying on studies, across different types of interventions and settings, showing that adaptations can improve outcomes, e.g., [ | |
| 4 | ... provides transparency and confidence by: | ... is necessary to address multiple diagnoses by: |
- ensuring that users, patients and their families, care providers, and funders (health systems, governments, insurers, and foundations) gets what they are promised [ ... that patients know that the EBI offered is also the EBI delivered, facilitating informed choices ... that subsequent providers can deliver appropriate care; trusting that the treatment as documented in clinical records is also the treatment delivered ... that funders get what they are paying for ... that systems allow fair comparison between organizations in a competitive market, and fair benchmarking of treatment outcomes | - acknowledging that comorbidity is the rule rather than the exception in clinical practice, and that most EBIs have only been indicated (shown to be effective) for a very limited group of patients, primarily without comorbidities [ - allowing “indication shift” to be able to use EBIs for groups for which evidence is lacking | |
| 5 | ... provides equal care and reduces disparities by: | ... optimise the benefit for each patient by: |
- decreasing unwanted variation between providers, organizations, geographical regions, and different target groups or individuals, e.g., between men and women [ - ensuring that decisions about adoption and use are made systematically, reducing the risk of gender and cultural biases | - translating mean effects into what is best for each individual in the group [ - taking individual patient variability into account by detecting the individuals that are likely to improve less (i.e., the tails of the distribution of effects), consistent with the personalized medicine movement [ |
The Value Equation: V = IN * C * IS
| Terms | Specification | |
|---|---|---|
| Value (V) | Vs | Value and fit of intervention in the system context |
| Vo | Value and fit of intervention in organizational context | |
| Vpr | Value and fit of the intervention for the provider | |
| Vpt | Value and fit of the intervention for the patient | |
| Intervention (IN) | INf | Extent to which the intervention is carried out as it was described (fidelity) |
| INfc | Fidelity-consistent adaptations | |
| INfi | Fidelity-inconsistent adaptations | |
| Context (C) | Cs | System context |
| Co | Organizational context | |
| Cpr | Provider context | |
| Cpt | Patient context | |
| Implementation Strategy (IS) | ISc | Implementation strategy optimizing the context |
| ISi | Implementation strategy optimizing the intervention | |