When AI Gets it Wrong: Reliability and Risk in AI-Assisted Medication Decision Systems
Khalid Adnan Alsayed

TL;DR
This paper investigates the reliability and failure modes of AI-assisted medication decision systems, emphasizing the importance of understanding errors and their clinical impact beyond standard performance metrics.
Contribution
It introduces a reliability-focused evaluation approach for AI in healthcare, analyzing specific failure types and their potential consequences in medication management.
Findings
AI errors can cause adverse drug reactions and delayed care
Failures include missed interactions and incorrect risk flags
Over-reliance on AI without oversight increases risks
Abstract
Artificial intelligence (AI) systems are increasingly integrated into healthcare and pharmacy workflows, supporting tasks such as medication recommendations, dosage determination, and drug interaction detection. While these systems often demonstrate strong performance under standard evaluation metrics, their reliability in real-world decision-making remains insufficiently understood. In high-risk domains such as medication management, even a single incorrect recommendation can result in severe patient harm. This paper examines the reliability of AI-assisted medication systems by focusing on system failures and their potential clinical consequences. Rather than evaluating performance solely through aggregate metrics, this work shifts attention towards how errors occur and what happens when AI systems produce incorrect outputs. Through a series of controlled, simulated scenarios involving…
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