Development of a Preliminary Patient Safety Classification System for Generative AI.

Journal: BMJ quality & safety
PMID:

Abstract

Generative artificial intelligence (AI) technologies have the potential to revolutionise healthcare delivery but require classification and monitoring of patient safety risks. To address this need, we developed and evaluated a preliminary classification system for categorising generative AI patient safety errors. Our classification system is organised around two AI system stages (input and output) with specific error types by stage. We applied our classification system to two generative AI applications to assess its effectiveness in categorising safety issues: patient-facing conversational large language models (LLMs) and an ambient digital scribe (ADS) system for clinical documentation. In the LLM analysis, we identified 45 errors across 27 patient medical queries, with omission being the most common (42% of errors). Of the identified errors, 50% were categorised as low clinical significance, 25% as moderate clinical significance and 25% as high clinical significance. Similarly, in the ADS simulation, we identified 66 errors across 11 patient visits, with omission being the most common (83% of errors). Of the identified errors, 55% were categorised as low clinical significance and 45% were categorised as moderate clinical significance. These findings demonstrate the classification system's utility in categorising output errors from two different AI healthcare applications, providing a starting point for developing a robust process to better understand AI-enabled errors.

Authors

  • Bat-Zion Hose
    National Center for Human Factors in Healthcare, MedStar Health Research Institute, Washington, District of Columbia, USA bat-zion.hose@medstar.net.
  • Jessica L Handley
    MedStar Health National Center for Human Factors in Healthcare, Washington, DC.
  • Joshua Biro
    National Center for Human Factors in Healthcare, MedStar Health Research Institute, Washington, DC, United States.
  • Sahithi Reddy
    Georgetown University Medical Center, Washington, District of Columbia, USA.
  • Seth Krevat
    National Center for Human Factors in Healthcare, MedStar Health Research Institute, Washington, DC, United States.
  • Aaron Zachary Hettinger
    Georgetown University Medical Center, Washington, District of Columbia, USA.
  • Raj M Ratwani
    MedStar Health, MedStar Georgetown University Hospital, 3800 Reservoir Rd, NW CG201, Washington DC, 20007 (R.W.F.); and MedStar Health, National Center for Human Factors in Healthcare, Washington, DC (R.M.R.).