Reflection on modern methods: constructing directed acyclic graphs (DAGs) with domain experts for health services research

Author:

Rodrigues Daniela1ORCID,Kreif Noemi2ORCID,Lawrence-Jones Anna1ORCID,Barahona Mauricio3ORCID,Mayer Erik1ORCID

Affiliation:

1. NIHR Imperial Patient Safety Translational Research Centre, Institute of Global Health Innovation, Department of Surgery & Cancer, Imperial College London , London, UK

2. Centre for Health Economics, University of York , York, UK

3. Centre for Mathematics of Precision Healthcare, Department of Mathematics, Imperial College London , London, UK

Abstract

Abstract Directed acyclic graphs (DAGs) are a useful tool to represent, in a graphical format, researchers’ assumptions about the causal structure among variables while providing a rationale for the choice of confounding variables to adjust for. With origins in the field of probabilistic graphical modelling, DAGs are yet to be widely adopted in applied health research, where causal assumptions are frequently made for the purpose of evaluating health services initiatives. In this context, there is still limited practical guidance on how to construct and use DAGs. Some progress has recently been made in terms of building DAGs based on studies from the literature, but an area that has received less attention is how to create DAGs from information provided by domain experts, an approach of particular importance when there is limited published information about the intervention under study. This approach offers the opportunity for findings to be more robust and relevant to patients, carers and the public, and more likely to inform policy and clinical practice. This article draws lessons from a stakeholder workshop involving patients, health care professionals, researchers, commissioners and representatives from industry, whose objective was to draw DAGs for a complex intervention—online consultation, i.e. written exchange between the patient and health care professional using an online system—in the context of the English National Health Service. We provide some initial, practical guidance to those interested in engaging with domain experts to develop DAGs.

Funder

National Institute for Health Research

Imperial Patient Safety Translational Research Centre

NIHR Imperial Biomedical Research Centre

Engineering and Physical Sciences Research Council

Centre for Mathematics of Precision Healthcare

Department of Health and Social Care

Publisher

Oxford University Press (OUP)

Subject

General Medicine,Epidemiology

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