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A Safety Maturity Model for Technology-Induced Errors.

Elizabeth M Borycki1,2, Andre W Kushniruk1

  • 1School of Health Information Science, University of Victoria, Canada.

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|January 22, 2022
PubMed
Summary
This summary is machine-generated.

This study introduces a maturity model for technology-induced errors in health technology safety. It helps organizations improve safety processes and benchmark their performance for better learning.

Keywords:
Safetyhealth technology safetymaturity modelsrisk managementtechnology-induced errors

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Area of Science:

  • Health Technology Safety
  • Medical Error Research
  • Organizational Development

Background:

  • Technology-induced errors pose significant risks in healthcare.
  • Existing frameworks for health technology safety processes are limited.
  • Organizational learning in safety practices requires structured approaches.

Purpose of the Study:

  • To develop an initial maturity model for technology-induced errors research.
  • To provide a framework for organizations to formalize health technology safety processes.
  • To enable benchmarking of safety efforts and support organizational learning.

Main Methods:

  • Literature review on technology-induced errors and safety.
  • Development of a capability maturity model tailored for health technology safety.
  • Description of the application of maturity models to technology-induced error.

Main Results:

  • An initial maturity model for health technology safety research has been developed.
  • The model offers a structured approach for organizations to assess and enhance their safety processes.
  • It facilitates comparative analysis between organizations to foster learning.

Conclusions:

  • Maturity models are valuable tools for advancing health technology safety.
  • Formalizing safety processes through such models can mitigate technology-induced errors.
  • The proposed model supports continuous improvement and knowledge sharing in the field.