JMIR Research Protocols (Oct 2021)

Accelerating the Appropriate Adoption of Artificial Intelligence in Health Care: Protocol for a Multistepped Approach

  • David Wiljer,
  • Mohammad Salhia,
  • Elham Dolatabadi,
  • Azra Dhalla,
  • Caitlin Gillan,
  • Dalia Al-Mouaswas,
  • Ethan Jackson,
  • Jacqueline Waldorf,
  • Jane Mattson,
  • Megan Clare,
  • Nadim Lalani,
  • Rebecca Charow,
  • Sarmini Balakumar,
  • Sarah Younus,
  • Tharshini Jeyakumar,
  • Wanda Peteanu,
  • Walter Tavares

DOI
https://doi.org/10.2196/30940
Journal volume & issue
Vol. 10, no. 10
p. e30940

Abstract

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BackgroundSignificant investments and advances in health care technologies and practices have created a need for digital and data-literate health care providers. Artificial intelligence (AI) algorithms transform the analysis, diagnosis, and treatment of medical conditions. Complex and massive data sets are informing significant health care decisions and clinical practices. The ability to read, manage, and interpret large data sets to provide data-driven care and to protect patient privacy are increasingly critical skills for today’s health care providers. ObjectiveThe aim of this study is to accelerate the appropriate adoption of data-driven and AI-enhanced care by focusing on the mindsets, skillsets, and toolsets of point-of-care health providers and their leaders in the health system. MethodsTo accelerate the adoption of AI and the need for organizational change at a national level, our multistepped approach includes creating awareness and capacity building, learning through innovation and adoption, developing appropriate and strategic partnerships, and building effective knowledge exchange initiatives. Education interventions designed to adapt knowledge to the local context and address any challenges to knowledge use include engagement activities to increase awareness, educational curricula for health care providers and leaders, and the development of a coaching and practice-based innovation hub. Framed by the Knowledge-to-Action framework, we are currently in the knowledge creation stage to inform the curricula for each deliverable. An environmental scan and scoping review were conducted to understand the current state of AI education programs as reported in the academic literature. ResultsThe environmental scan identified 24 AI-accredited programs specific to health providers, of which 11 were from the United States, 6 from Canada, 4 from the United Kingdom, and 3 from Asian countries. The most common curriculum topics across the environmental scan and scoping review included AI fundamentals, applications of AI, applied machine learning in health care, ethics, data science, and challenges to and opportunities for using AI. ConclusionsTechnologies are advancing more rapidly than organizations, and professionals can adopt and adapt to them. To help shape AI practices, health care providers must have the skills and abilities to initiate change and shape the future of their discipline and practices for advancing high-quality care within the digital ecosystem. International Registered Report Identifier (IRRID)PRR1-10.2196/30940