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Exploring a methodology for eHealth indicator development.

Hannele Hyppönen1, Elske Ammenwerth, Nicolet de Keizer

  • 1National Institute for Health and Welfare, Helsinki, Finland.

Studies in Health Technology and Informatics
|August 10, 2012
PubMed
Summary
This summary is machine-generated.

Developing standardized indicators for electronic health (eHealth) is crucial for policy and management. This paper proposes a novel methodology combining top-down and bottom-up approaches for robust eHealth indicator development and classification.

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Area of Science:

  • Health Informatics
  • Public Health Policy
  • Measurement Science

Background:

  • Effective monitoring of electronic health (eHealth) progress requires standardized indicators.
  • Current methodologies for developing eHealth indicators lack consensus.
  • eHealth management and policy implementation benefit from evidence-based benchmarking.

Purpose of the Study:

  • To propose a comprehensive methodology for developing and classifying eHealth indicators.
  • To address the need for a standardized approach in eHealth indicator development.
  • To provide a framework for measuring eHealth progress and impact.

Main Methods:

  • A hybrid approach integrating expert-led (top-down) and community-based (bottom-up) strategies.
  • A four-phase framework for indicator development: context definition, goal setting, selection/categorization methods, and data analysis planning.
  • Utilizing preliminary results for further refinement and practical testing.

Main Results:

  • A proposed four-phase methodology for eHealth indicator development.
  • A framework for classifying eHealth indicators.
  • Preliminary findings to guide future development and practical application.

Conclusions:

  • The proposed methodology offers a holistic approach to eHealth indicator development.
  • Standardized indicators are essential for effective eHealth policy and management.
  • Further research and practical testing are needed to validate the proposed methods.