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When focus fades: radiologist fatigue and artificial intelligence support systems-a narrative review.

March 13, 2026pubmed logopapers

Authors

Krupinski EA

Affiliations (1)

  • Department of Radiology & Imaging Sciences, Emory University Atlanta, 1364 Clifton Road NE, Atlanta, GA 30322, United States.

Abstract

The radiology reading room today is busier than ever with increasing numbers of cases that contain more images, sequences, and complex findings. Consequently, radiologists are becoming more fatigued and burned out. To address this growing problem, studies have been conducted to objectively measure fatigue and its impact on diagnostic accuracy and efficiency, with growing evidence that the impact is negative and significant after just 8 h of clinical work. The impact (increased errors, reduced ability to focus) may be greater for residents than for experienced radiologists. Artificial intelligence (AI) may be a potential solution to address fatigue, but we need to understand exactly how it affects users and their decision-making processes to optimally use it as a decision aid in clinical practice.

Tags

Topics

Artificial IntelligenceRadiologistsFatigueRadiologyJournal ArticleReview

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