Development and application of the Demands for Population Health Interventions (Depth) framework for categorising the agentic demands of population health interventions
BMC Global and Public Health 2024 ; 2: 13.
Garrott K, Ogilvie D, Panter J, Petticrew M, Sowden A, Jones CP, Foubister C, Lawlor ER, Ikeda E, Patterson R, Theis D, Armstrong-Moore R, Vethanayakam G, Bo L, White M, Adams J
DOI : 10.1186/s44263-024-00043-8
URL : https://bmcglobalpublichealth.biomedcentral.com/articles/10.1186/s44263-024-00043-8
Abstract
Background
The ‘agentic demand’ of population health interventions (PHIs) refers to the capacity, resources and freedom to act that interventions demand of their recipients to benefit, which have a socio-economical pattern. Highly agentic interventions, e.g. information campaigns, rely on recipients noticing and responding to the intervention and thus might affect intervention effectiveness and equity. The absence of an adequate framework to classify agentic demands limits the fields’ ability to systematically explore these associations.
Methods
We systematically developed the Demands for Population Health Interventions (Depth) framework using an iterative approach: (1) developing the Depth framework by systematically identifying examples of PHIs aiming to promote healthier diets and physical activity, coding of intervention actors and actions and synthesising the data to develop the framework; (2) testing the Depth framework in online workshops with academic and policy experts and a quantitative reliability assessment. We applied the final framework in a proof-of-concept review, extracting studies from three existing equity-focused systematic reviews on framework category, overall effectiveness and differential socioeconomic effects and visualised the findings in harvest plots.
Results
The Depth framework identifies three constructs influencing agentic demand: exposure — initial contact with intervention (two levels), mechanism of action — how the intervention enables or discourages behaviour (five levels) and engagement — recipient response (two levels). When combined, these constructs form a matrix of 20 possible classifications. In the proof-of-concept review, we classified all components of 31 interventions according to the Depth framework. Intervention components were concentrated in a small number of Depth classifications; Depth classification appeared to be related to intervention equity but not effectiveness.
Conclusions
This framework holds potential for future research, policy and practice, facilitating the design, selection and evaluation of interventions and evidence synthesis.