Human-Centered Development of an Explainable AI Framework for Real-Time Surgical Risk Surveillance
Journal:
arXiv
Published Date:
Apr 3, 2025
Abstract
Background: Artificial Intelligence (AI) clinical decision support (CDS)
systems have the potential to augment surgical risk assessments, but successful
adoption depends on an understanding of end-user needs and current workflows.
This study reports the initial co-design of MySurgeryRisk, an AI CDS tool to
predict the risk of nine post-operative complications in surgical patients.
Methods: Semi-structured focus groups and interviews were held as co-design
sessions with perioperative physicians at a tertiary academic hospital in the
Southeastern United States. Participants were read a surgical vignette and
asked questions to elicit an understanding of their current decision-making
practices before being introduced to the MySurgeryRisk prototype web interface.
They were asked to provide feedback on the user interface and system features.
Session transcripts were qualitatively coded, after which thematic analysis
took place. Results: Data saturation was reached after 20 surgeons and
anesthesiologists from varying career stages participated across 11 co-design
sessions. Thematic analysis resulted in five themes: (1) decision-making
cognitive processes, (2) current approach to decision-making, (3) future
approach to decision-making with MySurgeryRisk, (4) feedback on current
MySurgeryRisk prototype, and (5) trustworthy considerations. Conclusion:
Clinical providers perceived MySurgeryRisk as a promising CDS tool that factors
in a large volume of data and is computed in real-time without any need for
manual input. Participants provided feedback on the design of the interface and
imaged applications of the tool in the clinical workflow. However, its
successful implementation will depend on its actionability and explainability
of model outputs, integration into current electronic systems, and calibration
of trust among end-users.