To Recommend or Not to Recommend: Designing and Evaluating AI-Enabled Decision Support for Time-Critical Medical Events
Angela Mastrianni, Mary Suhyun Kim, Travis M. Sullivan, Genevieve Jayne Sippel, Randall S. Burd, Krzysztof Z. Gajos, and Aleksandra Sarcevic

TL;DR
This study designs and evaluates an AI decision-support system for traumatic injury treatment, showing that AI recommendations improve decision accuracy but face challenges like accuracy trade-offs and provider perceptions.
Contribution
It introduces a novel AI-enabled decision support system tailored for time-critical medical emergencies and evaluates human-AI interaction strategies in this context.
Findings
AI recommendations increase correct decision rates
Providers have polarized perceptions of AI recommendations
Trade-offs exist between AI accuracy and response time
Abstract
AI-enabled decision-support systems aim to help medical providers rapidly make decisions with limited information during medical emergencies. A critical challenge in developing these systems is supporting providers in interpreting the system output to make optimal treatment decisions. In this study, we designed and evaluated an AI-enabled decision-support system to aid providers in treating patients with traumatic injuries. We first conducted user research with physicians to identify and design information types and AI outputs for a decision-support display. We then conducted an online experiment with 35 medical providers from six health systems to evaluate two human-AI interaction strategies: (1) AI information synthesis and (2) AI information and recommendations. We found that providers were more likely to make correct decisions when AI information and recommendations were provided…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education · Explainable Artificial Intelligence (XAI) · Clinical Reasoning and Diagnostic Skills
