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Evaluating the impact of artificial intelligence-assisted image analysis on the diagnostic accuracy of front-line clinicians in detecting fractures on plain X-rays (FRACT-AI): protocol for a prospective observational study.

Authors :
Novak A
Hollowday M
Espinosa Morgado AT
Oke J
Shelmerdine S
Woznitza N
Metcalfe D
Costa ML
Wilson S
Kiam JS
Vaz J
Limphaibool N
Ventre J
Jones D
Greenhalgh L
Gleeson F
Welch N
Mistry A
Devic N
Teh J
Ather S
Source :
BMJ open [BMJ Open] 2024 Sep 05; Vol. 14 (9), pp. e086061. Date of Electronic Publication: 2024 Sep 05.
Publication Year :
2024

Abstract

Introduction: Missed fractures are the most frequent diagnostic error attributed to clinicians in UK emergency departments and a significant cause of patient morbidity. Recently, advances in computer vision have led to artificial intelligence (AI)-enhanced model developments, which can support clinicians in the detection of fractures. Previous research has shown these models to have promising effects on diagnostic performance, but their impact on the diagnostic accuracy of clinicians in the National Health Service (NHS) setting has not yet been fully evaluated.<br />Methods and Analysis: A dataset of 500 plain radiographs derived from Oxford University Hospitals (OUH) NHS Foundation Trust will be collated to include all bones except the skull, facial bones and cervical spine. The dataset will be split evenly between radiographs showing one or more fractures and those without. The reference ground truth for each image will be established through independent review by two senior musculoskeletal radiologists. A third senior radiologist will resolve disagreements between two primary radiologists. The dataset will be analysed by a commercially available AI tool, BoneView (Gleamer, Paris, France), and its accuracy for detecting fractures will be determined with reference to the ground truth diagnosis. We will undertake a multiple case multiple reader study in which clinicians interpret all images without AI support, then repeat the process with access to AI algorithm output following a 4-week washout. 18 clinicians will be recruited as readers from four hospitals in England, from six distinct clinical groups, each with three levels of seniority (early-stage, mid-stage and later-stage career). Changes in the accuracy, confidence and speed of reporting will be compared with and without AI support. Readers will use a secure web-based DICOM (Digital Imaging and Communications in Medicine) viewer (www.raiqc.com), allowing radiograph viewing and abnormality identification. Pooled analyses will be reported for overall reader performance as well as for subgroups including clinical role, level of seniority, pathological finding and difficulty of image.<br />Ethics and Dissemination: The study has been approved by the UK Healthcare Research Authority (IRAS 310995, approved on 13 December 2022). The use of anonymised retrospective radiographs has been authorised by OUH NHS Foundation Trust. The results will be presented at relevant conferences and published in a peer-reviewed journal.<br />Trial Registration Numbers: This study is registered with ISRCTN (ISRCTN19562541) and ClinicalTrials.gov (NCT06130397). The paper reports the results of a substudy of STEDI2 (Simulation Training for Emergency Department Imaging Phase 2).<br />Competing Interests: Competing interests: JV and DJ of the Steering Committee are employees of Gleamer SAS, France. SA is a shareholder of RAIQC, UK. All other authors declare no competing interests.<br /> (© Author(s) (or their employer(s)) 2024. Re-use permitted under CC BY. Published by BMJ.)

Details

Language :
English
ISSN :
2044-6055
Volume :
14
Issue :
9
Database :
MEDLINE
Journal :
BMJ open
Publication Type :
Academic Journal
Accession number :
39237277
Full Text :
https://doi.org/10.1136/bmjopen-2024-086061