| Reach Click here for more information | The absolute number, proportion, and representativeness of individuals who are willing to participate in a given initiative, intervention, or program. Reasons for not participating Click here for information on improving reach, such as: “How do I reach the targeted population with the intervention?” | - Reporting on demographic characteristics - Comparison between participants in different study conditions and between those who stayed in the intervention and those lost to follow-up - Unknown as to the degree to which those in the intervention were similar to the target audience | - Description of target audience (including a best estimate denominator) - Comparison of sample to the target audience (representativeness) - Use of a number of factors to best calculate the proportion reached (39) - Some use of qualitative methods to understand “why and how” | - Use of reach implementation strategies to improve access, awareness, and appropriateness of intervention to meet the target audience needs - More focus on recruitment strategies (and interventions) to directly address health equity (2) - Reach as an outcome target for dissemination trials. |
| Examples from the Literature | - Worksite wellness intervention started with a brief health survey of all participating worksites; participants were not informed that there may be a future worksite intervention. Results indicated that, once offered the worksite wellness intervention, “employees from higher income households, with higher education levels and health literacy proficiency were significantly more likely to participate in the program (p's < 0.01)” (40). - Community health promotion intervention for African American and Hispanic or Latina women. Investigators found that African Americans were more likely to not meet eligibility criteria and that the Hispanic/Latina women were more likely to drop out. There were no significant differences by city or recruitment method. In addition, at the end of the study participants “overrepresented higher educated, wealthier, and older women” (41). |
| Effectiveness Click here for more information. | The impact of an intervention on important outcomes, including potential negative effects, quality of life, and economic outcomes. Heterogeneity of effects and reasons for success or lack of such Click here for information on improving effectiveness, such as: “How do I know my intervention is effective?” | - Reported subjective or objective measure related to the primary outcome (e.g., change in diet, smoking cessation, physical activity behavior, or biomarker such as hemoglobin A1c) - Exclusive focus on average overall effect and often one single outcome | - Still reporting primary outcomes; - Some studies are also measuring quality of life (QOL) and unintended consequences (42) - More emphasis on subgroup effects | - Need greater attention to QOL, unintended consequences, and systems impacts - For those participants who do experience an unintended consequence, more information on proposed “next steps.” - Relationships among multiple outcomes and relationship of context to RE-AIM outcomes |
| Examples from the Literature | • In a community adaptation of a trial, body image satisfaction was measured as a secondary outcome of a child's weight loss intervention. Almost half of the overweight children [n = 16 of the 34 (47%)] exhibited a decrease in body dissatisfaction at 6 months compared with baseline (43). However, five children (15%) had an increase in body image dissatisfaction. • Diabetes self-management support web assisted program effectiveness outcomes included improvements in quality of life, but no unintended negative consequences were measured (44). |
| Adoption Click here for more information. | The absolute number, proportion, and representativeness of: a) settings; and b) intervention agents (people who deliver the program) who are willing to initiate a program. Reasons for adoption or non-adoption Click here for information on improving adoption, such as: “How do I develop organizational support to deliver my intervention?” | - Limited to no information on rates and representativeness of staff and settings that participate - Reporting only on these settings and staff who participate | - More studies reporting setting level adoption rates - Few studies reporting representativeness at the setting level - Few reporting on multi-level adoption issues - Somewhat greater use of qualitative measures | - Need to better understand contextual factors related to adoption - Need more information on multiple setting level characteristics [e.g., organizational culture and climate (45)] - Development of guides and tools to help users enhance adoption (and other RE-AIM outcomes) |
| Examples from the Literature | • Full RE-AIM evaluation of a 10 week school-based nutrition education program for third graders. Adoption was measured at the third-grade classroom level. Thirty-nine percent of all third-grade classrooms across all public schools in the targeted state participated. No information on representativeness of the schools that did or did not participate (46). • Print materials tailored for Korean American women: adoption was a secondary outcome and interviews were used for adoption level data. Qualitative adoption results included that the print materials were easy to include and that this contributed to adoption (47). |
| Implementation Click here for more information. | At the setting level, implementation refers to the intervention agents' fidelity to the various elements of an intervention's protocol, including consistency of delivery as intended and the time required. Also includes adaptations made and the costs of implementation. At the individual level, implementation refers to clients' use of the intervention and implementation strategies. Click here for information on improving implementation, such as: “How do I ensure the intervention is delivered properly?” | - Limited or no information on time, costs and resources needed to complete intervention components well and over-time. - Only fidelity reported, never adaptations | - Increased attention to strategies to improve implementation of an intervention - Improvements on standardized measures for capturing implementation fidelity. - Much recent attention to adaptations - Limited links of implementation quality, adaptations and impacts to other RE-AIM outcomes | - Need greater uptake of implementation measurement protocols (48) - Multi-method assessments of implementation and adaptation - Multi-level and practical assessments of costs and combining implementation cost with proportion of participants benefiting from intervention - More understanding of reasons for adaptations and high/low levels of implementation - Rapid, iterative use of RE-AIM assessments to guide adaptations |
| Examples from the Literature | • A pragmatic, mixed-methods, quasi-experimental study across five community hospitals. Three hospitals received the nurse-administered Tobacco Tactics intervention and two received usual care. Intervention was streamlined, user friendly, etc. and resulted in nurses increased provision of advice to quit, counseling, medications, handouts, and DVD (all p < 0.05) when compared to control (49). • A community-based implementation trial of a cancer educational intervention was offered to 14 African American churches. Community health advisors were trained in a Traditional classroom setting or via the Web. Implementation outcomes included adherence, dosage, and quality. Implementation was strong across both conditions (all churches fully completing the workshops), but Traditional churches took more time to complete the workshops than the Web-based group. Notably, “other implementation outcomes were comparable between both the Traditional and Technology groups (p > 0.05),” which showed promise for using “web-based methods to disseminate and implement evidence-based interventions in faith-based settings” (50). • A community-wide, technology-facilitated weight-loss program was implemented in Colorado and reached over 30,000 overweight or obese community residents. Implementation costs were derived using payer invoices and combined with the reach (number of participants) and effectiveness (proportion of participants to achieve a 5% weight loss) to determine cost per participant with a clinically meaningful weight loss. Costs varied based upon participant characteristics (representativeness) in that African American participants saw a lower cost per clinically meaningful weight loss due to a higher retention and success rate while costs per participant remained relatively constant (51). |
| Maintenance (individual and organizational) Click here for more information. | The extent to which: a) behavior is sustained 6 months or more after treatment or intervention; and b) a program or policy becomes institutionalized or part of the routine organizational practices and policies. Includes proportion and representativeness of settings that continue the intervention and reasons for maintenance, discontinuance or adaptation Click here for information on improving maintenance, such as “How do I incorporate the intervention so that it is delivered over the long term?” | - Long term outcomes seldom reported - RE-AIM somewhat arbitrarily selected 6 months post intervention as default (1) - Ongoing challenge of relapse after intervention is withdrawn - Previous helicopter research: Unknown system-level impacts beyond the study lifespan | - Limited data on outcomes post intervention (with no intervention contact) - High attrition from post program to 6 month follow up unless there are intervention “contacts” - Most maintenance data reported relate to other dimensions - For example, those who maintained the behavior were more likely to exhibit certain characteristics - Improvements in collaborating with end-users to enhance intervention fit and sustainability - Proportion of settings still delivering intervention remains the most commonly reported metric within this dimension (52) | - Ongoing intervention is often needed to sustain impact - Need strategies for relapse prevention within large-scale interventions [-] Greater understanding of factors leading to sustainment - Partnership with intended delivery system is ubiquitous with successful institutionalization (53) - Need pragmatic measures and systems-level buy in to ensure that relevant data are collected beyond the “research” phase (54, 55) - Need more understanding of dynamic, complex multi-level factors related to sustainment |
| Examples from the Literature | • Setting level: To reduce depression outcomes in primary care, a collaborative-care management strategy called Community Based Outpatient Clinics (CBOCs) was deployed in the Department of Veterans Affairs. Eleven sites engaged in the study, and once funds were withdrawn, 91.9% (10/11) continued to apply the CBOCs approach (56). • Setting level: Evaluation of continued implementation of a new computer-based intervention tool for lifestyle intervention in primary health care, 2 years after its introduction. Clinics either had explicit (e.g., theory-based training and support) or implicit (e.g., non-theory-based introduction with no ongoing support) strategies for tool use. Units with explicit strategies were more successful at the onset of the intervention, but over 24 months, those effects were mitigated (57). |