Skip to main content

Research Repository

Advanced Search

An evaluation of a checklist in musculoskeletal radiographic image interpretation when using artificial intelligence

McLaughlin, Laura; McFadden, Sonyia L; Villikudathil, Angelina T; McConnell, Jonathan; Hughes, Ciara; Bond, Raymond; Rainey, Clare

An evaluation of a checklist in musculoskeletal radiographic image interpretation when using artificial intelligence Thumbnail


Authors

Laura McLaughlin

Sonyia L McFadden

Angelina T Villikudathil

Ciara Hughes

Raymond Bond

Clare Rainey



Abstract

Introduction: Artificial intelligence (AI) is being used increasingly in image interpretation tasks. Human reliance on technology and bias can cause decision errors. A checklist, used with the AI to mitigate against such biases, may optimise the use of AI technologies and promote good decision hygiene. A checklist to aid radiographic image interpretation for radiographers using AI for image interpretation was formed. This study investigates the effect of a checklist for musculoskeletal (MSK) radiographic image assessment when using AI interpretive assistance.

Methods: Radiographers were asked to interpret five MSK examinations with AI feedback. They were then provided with the checklist and asked to reinterpret the same five examinations with the AI feedback (n = 140 interpretations). During the interpretation sessions, participants were asked to provide a diagnosis and a confidence level on the diagnosis provided. Participants were then asked to complete a questionnaire to gain feedback on the use of the checklist.

Results: Fourteen radiographers were recruited. Nine participants found the checklist alongside the AI most useful and five participants found the AI element to be most useful on its own. Five participants found the AI feedback to be useful as it helped to critique the radiographic image interpretation more closely and rethink their own initial diagnosis.

Conclusion: The checklist for use with AI in MSK image interpretation contained useful elements to the user, but further developments can be made to enhance its use in clinical practice.

Journal Article Type Article
Acceptance Date Dec 5, 2024
Online Publication Date Dec 20, 2024
Deposit Date Jan 10, 2025
Publicly Available Date Jan 10, 2025
Journal Journal of Medical Radiation Sciences
Electronic ISSN 2051-3909
Publisher Wiley Open Access
Peer Reviewed Peer Reviewed
DOI https://doi.org/10.1002/jmrs.850
Keywords musculoskeletal, artificial intelligence, image interpretation, checklist

Files





You might also like



Downloadable Citations