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DOI: 10.1055/a-2496-8383
Engaging Stakeholders Using the Competency Matrix Model: A Framework for Current and Future Health Informaticists
Funding None.
Abstract
Objectives This study aims to explore how health informaticists collaborate with multiple stakeholder groups, each possessing varying levels of comfort and competence with health technology and data. stakeholder engagement is highlighted as a crucial skill for health informaticists, necessitated by the differing competency levels among stakeholders.
Methods The Competency Matrix Model was identified as a strategic tool to address the challenges faced by health informaticists in navigating the complexities of health information technology utilization. This framework was used to evaluate and enhance the technological competencies of various stakeholders within the health care domain.
Results The application of the Competency Matrix Model provides health informaticists with a structured approach to improving stakeholders' technological competencies. This approach facilitates a better understanding and utilization of health information technologies, contributing to improved health care outcomes and operational efficiency.
Conclusion This work demonstrates the applicability of the Competency Matrix Model in the health care domain by health informaticists to enhance the technological competencies of various stakeholders. Through strategic stakeholder engagement and competency development, health informaticists can effectively address the challenges of technology utilization in health care, ensuring a positive impact on health care delivery.
Keywords
health informatics - competency matrix model - stakeholder engagement in health IT - interoperability in health care systems - health information technology utilizationProtection of Human and Animal Subjects
No human subjects were involved in this project.
Publikationsverlauf
Eingereicht: 17. April 2024
Angenommen: 04. Dezember 2024
Artikel online veröffentlicht:
23. April 2025
© 2025. Thieme. All rights reserved.
Georg Thieme Verlag KG
Rüdigerstraße 14, 70469 Stuttgart, Germany
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