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An integrated strategy of knowledge application for optimal e-health implementation: a multi-method study protocol.

Marie-Pierre Gagnon1, France Légaré, Jean-Paul Fortin

  • 1Research Center of the Centre Hospitalier Universitaire de Québec, Québec, Canada. marie-pierre.gagnon@fsi.ulaval.ca

BMC Medical Informatics and Decision Making
|April 26, 2008
PubMed
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This study identifies factors influencing the use of scientific knowledge for optimal e-health implementation. Findings will guide decision-makers in integrating electronic health (e-health) effectively into healthcare policies and practices.

Area of Science:

  • Health Informatics
  • Health Services Research
  • Knowledge Translation

Background:

  • E-health enhances healthcare access, information exchange, service integration, and collaboration.
  • Optimal e-health integration requires evidence-based strategies, yet decisions often lack this foundation.
  • Sub-optimal e-health use results from decisions not grounded in scientific evidence.

Purpose of the Study:

  • To understand factors influencing the application of scientific knowledge for effective e-health implementation.
  • To identify barriers and facilitators to using evidence in e-health decision-making.
  • To inform policy and practice for maximizing e-health efficacy and efficiency.

Main Methods:

  • A three-year multi-method study in Quebec, Canada.

Related Experiment Videos

  • Analysis of decision-making at political, organizational, and clinical levels.
  • Utilizing critical incident analysis, case studies, interviews, and questionnaires with triangulation of results.
  • Main Results:

    • Identification of key factors influencing the use of scientific evidence and knowledge.
    • Understanding how decision-makers at various levels utilize knowledge in e-health projects.
    • Analysis of influences on knowledge production and application in e-health initiatives.

    Conclusions:

    • Results will inform decision-makers on optimizing e-health implementation in the Quebec healthcare system.
    • The study is highly relevant given the essential role of e-health in healthcare transformation.
    • Findings will support evidence-based strategies for successful e-health integration.