The ecology of multilevel intervention research

Behavior change research to promote health and prevent disease increasingly relies on a complex set of interacting characteristics across levels of influence such as biological, psychological, behavioral, interpersonal, and environmental. How to best develop health-related interventions that incorpo...

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Bibliographic Details
Main Authors: Czajkowski, S. (Author), Hall, K.L (Author), Klesges, L. (Author), Oh, A. (Author), Patel, M. (Author), Perez, L.G (Author), Rice, E.L (Author)
Format: Article
Language:English
Published: Oxford University Press 2018
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Online Access:View Fulltext in Publisher
Description
Summary:Behavior change research to promote health and prevent disease increasingly relies on a complex set of interacting characteristics across levels of influence such as biological, psychological, behavioral, interpersonal, and environmental. How to best develop health-related interventions that incorporate the individual, the macro-environment, and their interactions remains a challenge. This article considers a set of key dimensions that constitute what we refer to as the ecology of research across a broad context of multilevel research (MLR), spanning fundamental multilevel research (FMLR), multilevel intervention research (MLIR), and multilevel implementation science (MIS). With the goal of promoting improvements in MLIR, we describe the inherent interdependencies among aspects of research and consider how the growth and development of evidence and resources influence the cross-talk among researchers from different perspectives (e.g., disciplines and domains). We propose a framework that highlights opportunities to reduce barriers and address gaps in areas critical to generating an evidence base through MLR, MLIR, and MIS. Overall, we aim to support strategic decisions that can accelerate our understanding of ML health outcomes and interactions among factors within and across levels, with the goal of strengthening the effectiveness of ML interventions across health-related outcomes. © 2018 Society of Behavioral Medicine. All rights reserved.
ISBN:18696716 (ISSN)
DOI:10.1093/tbm/iby102