Literature DB >> 24916424

Shifting sands - from descriptions to solutions.

R Armstrong1, T L Pettman2, E Waters2.   

Abstract

BACKGROUND: Public health practitioners and policymakers value research evidence as one of many resources to use in evidence-informed decision making (EIDM) for public health. However, both researchers and decision-makers have described persistent barriers and facilitators involved in using research evidence for public health practice and policy. This is likely to affect the extent to which research evidence is influential or useful in decisions. Numerous taxonomies, typologies and frameworks are available to guide action in EIDM, but their application in practice is relatively unknown.
METHODS: The Public Health Evidence group based in Australia, which incorporates The Cochrane Collaboration's Public Health Review Group, have adapted a number of conceptualizations of research use and types of evidence into a practical typology that defines and illustrates three main types of evidence used in evidence-informed public health: data (Type 1), intervention effectiveness (Type 2) and implementation evidence (Type 3). The authors have actively used this typology within our primary research, evidence synthesis, workforce development and stakeholder engagement strategies, which has enabled practical application of these concepts. To test the relevance of the typology in practice, relevant findings from our applied research and evaluation (including two exploratory studies of evidence use in decision-making and evaluations of the use and impact of systematic reviews among end-users) were triangulated.
RESULTS: The typology has been useful in stakeholder interactions when defining evidence, and identifying processes for EIDM. There was a preference for defining evidence as descriptive evidence (data) rather than impact evidence and implementation evidence. Practitioners were confident and competent at generating and using data and community views descriptively for priority setting (describing the problem). However, finding and using impact and implementation evidence appropriate for strategy development (effective solutions) was often described as a more daunting task. As a result, there was low awareness of, and competence with, Types 2 and 3 evidence. Organizational processes for using these types of evidence were almost non-existent. DISCUSSION: Applying this typology with stakeholders has allowed us to observe that it; (1) has been useful in conceptualizing useful evidence for public health, which has guided our work (2) has been useful in stakeholder interactions to introduce evidence, its definition and what it means to be 'evidence-informed' and (3) has identified 'faults' in the EIDM approach. The typology includes examples of common questions in public health, and suggestions of the types of evidence that may be useful to answer those questions. Findings that test the use of the typology have been synthesized. These have demonstrated inconsistencies in defining and applying evidence, and low awareness about what types of evidence are crucial to ensure that interventions are effective and minimize harm. Based upon these findings, the authors would argue that current investment in type 1 evidence (e.g. data repositories) shifts to make way for KT strategies, which facilitate the uptake of type 2 and 3 evidence (interventions and implementation guidance).
CONCLUSIONS: Building a shared understanding of the types of evidence and their importance in public health decision-making is crucial if we wish to build a system that supports EIDM and results in effective interventions being delivered. There are a number of 'faults' in the system which the authors have illuminated through understanding the individual and organizational realities of evidence use. These faults could be addressed through KT strategies with the public health workforce, and development of organizational cultures and the broader system.
Copyright © 2014 The Royal Society for Public Health. Published by Elsevier Ltd. All rights reserved.

Keywords:  Decision-making; Evidence; Knowledge translation; Public health

Mesh:

Year:  2014        PMID: 24916424     DOI: 10.1016/j.puhe.2014.03.013

Source DB:  PubMed          Journal:  Public Health        ISSN: 0033-3506            Impact factor:   2.427


  18 in total

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10.  A qualitative exploration of contextual factors that influence dissemination and implementation of evidence-based chronic disease prevention across four countries.

Authors:  Elizabeth L Budd; Anna J deRuyter; Zhaoxin Wang; Pauline Sung-Chan; Xiangji Ying; Karishma S Furtado; Tahna Pettman; Rebecca Armstrong; Rodrigo S Reis; Jianwei Shi; Tabitha Mui; Tahnee Saunders; Leonardo Becker; Ross C Brownson
Journal:  BMC Health Serv Res       Date:  2018-04-02       Impact factor: 2.655

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