PLoS ONE (Jan 2022)

Using a learning health system framework to examine COVID-19 pandemic planning and response at a Canadian Health Centre.

  • Christine Cassidy,
  • Meaghan Sim,
  • Mari Somerville,
  • Daniel Crowther,
  • Douglas Sinclair,
  • Annette Elliott Rose,
  • Stacy Burgess,
  • Shauna Best,
  • Janet A Curran

DOI
https://doi.org/10.1371/journal.pone.0273149
Journal volume & issue
Vol. 17, no. 9
p. e0273149

Abstract

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BackgroundThe COVID-19 pandemic has presented a unique opportunity to explore how health systems adapt under rapid and constant change and develop a better understanding of health system transformation. Learning health systems (LHS) have been proposed as an ideal structure to inform a data-driven response to a public health emergency like COVID-19. The aim of this study was to use a LHS framework to identify assets and gaps in health system pandemic planning and response during the initial stages of the COVID-19 pandemic at a single Canadian Health Centre.MethodsThis paper reports the data triangulation stage of a concurrent triangulation mixed methods study which aims to map study findings onto the LHS framework. We used a triangulation matrix to map quantitative (textual and administrative sources) and qualitative (semi-structured interviews) data onto the seven characteristics of a LHS and identify assets and gaps related to health-system receptors and research-system supports.ResultsWe identified several health system assets within the LHS characteristics, including appropriate decision supports and aligned governance. Gaps were identified in the LHS characteristics of engaged patients and timely production and use of research evidence.ConclusionThe LHS provided a useful framework to examine COVID-19 pandemic response measures. We highlighted opportunities to strengthen the LHS infrastructure for rapid integration of evidence and patient experience data into future practice and policy changes.