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Archetype modeling methodology.

David Moner1, José Alberto Maldonado2, Montserrat Robles3

  • 1VeraTech for Health, Valencia, Spain.

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|February 18, 2018
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Summary
This summary is machine-generated.

A formal methodology for developing clinical information model (CIM) archetypes is proposed. This approach enhances the quality and reusability of archetypes for electronic health record (EHR) systems, promoting health data interoperability.

Keywords:
ArchetypeDual modelISO 13606MethodologyOpenehr

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Area of Science:

  • Health Informatics
  • Information Systems Engineering
  • Clinical Data Standards

Background:

  • Clinical Information Models (CIMs) and archetypes are crucial for Electronic Health Record (EHR) information structures.
  • Existing literature shows extensive use of archetypes, but lacks a formal modeling methodology.
  • A formal methodology is essential for developing high-quality archetypes to guide EHR development and ensure health data semantic interoperability.

Purpose of the Study:

  • To propose a comprehensive and formal methodology for archetype modeling.
  • To describe the phases, inputs, outputs, participants, and tools involved in the proposed methodology.
  • To outline strategies for organizing the archetype modeling process.

Main Methods:

  • The proposed methodology integrates best practices from CIMs, software development, and ontology engineering.
  • The methodology's phases, inputs, outputs, participants, and tools are detailed.
  • Strategies for organizing the modeling process are described.

Main Results:

  • The methodology was applied and evaluated in regional and national EHR projects.
  • The application yielded valuable feedback and confirmed the methodology's advantages.
  • The formal methodology facilitates the definition, adoption, quality improvement, and reuse of interoperable archetypes.

Conclusions:

  • A formal methodology for archetype development significantly improves the quality and interoperability of clinical information models.
  • The proposed methodology supports the adoption and reuse of archetypes across diverse information systems and EHR projects.
  • This methodology can serve as a reference for CIM development using various formalisms.