HCAILGApr 27, 2022

Exploring How Anomalous Model Input and Output Alerts Affect Decision-Making in Healthcare

UW
arXiv:2204.13194v1h-index: 93
Originality Synthesis-oriented
AI Analysis

This work addresses the problem of appropriate trust in AI for healthcare professionals, but it is incremental as it builds on existing human-AI interaction research.

The study investigated how anomaly alerts in AI clinical decision support systems affect radiologists' trust and decision-making, finding that while alerts were desired by non-radiologists, they did not improve accuracy or experience in a follow-up study with 33 radiologists.

An important goal in the field of human-AI interaction is to help users more appropriately trust AI systems' decisions. A situation in which the user may particularly benefit from more appropriate trust is when the AI receives anomalous input or provides anomalous output. To the best of our knowledge, this is the first work towards understanding how anomaly alerts may contribute to appropriate trust of AI. In a formative mixed-methods study with 4 radiologists and 4 other physicians, we explore how AI alerts for anomalous input, very high and low confidence, and anomalous saliency-map explanations affect users' experience with mockups of an AI clinical decision support system (CDSS) for evaluating chest x-rays for pneumonia. We find evidence suggesting that the four anomaly alerts are desired by non-radiologists, and the high-confidence alerts are desired by both radiologists and non-radiologists. In a follow-up user study, we investigate how high- and low-confidence alerts affect the accuracy and thus appropriate trust of 33 radiologists working with AI CDSS mockups. We observe that these alerts do not improve users' accuracy or experience and discuss potential reasons why.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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