Improving traumatic fracture detection on radiographs with artificial intelligence support: a multi-reader study

Author:

Bachmann Rikke1ORCID,Gunes Gozde2ORCID,Hangaard Stine3ORCID,Nexmann Andreas1,Lisouski Pavel1,Boesen Mikael45ORCID,Lundemann Michael1ORCID,Baginski Scott G6ORCID

Affiliation:

1. Radiobotics ApS , Copenhagen, Denmark

2. Private Ortaca Yucelen Hospital , Turkey

3. Department of Radiology, Herlev and Gentofte, Copenhagen University Hospital , Denmark

4. Department of Radiology and Radiological AI Testcenter (RAIT) Denmark, Bispebjerg and Frederiksberg, Copenhagen University Hospital , Denmark

5. Department of Clinical Medicine, Faculty of Health, and Medical Sciences, University of Copenhagen , Denmark

6. Virtual Radiologic , Eden Prairie, MN, United States

Abstract

Abstract Objectives The aim of this study was to evaluate the diagnostic performance of nonspecialist readers with and without the use of an artificial intelligence (AI) support tool to detect traumatic fractures on radiographs of the appendicular skeleton. Methods The design was a retrospective, fully crossed multi-reader, multi-case study on a balanced dataset of patients (≥2 years of age) with an AI tool as a diagnostic intervention. Fifteen readers assessed 340 radiographic exams, with and without the AI tool in 2 different sessions and the time spent was automatically recorded. Reference standard was established by 3 consultant radiologists. Sensitivity, specificity, and false positives per patient were calculated. Results Patient-wise sensitivity increased from 72% to 80% (P < .05) and patient-wise specificity increased from 81% to 85% (P < .05) in exams aided by the AI tool compared to the unaided exams. The increase in sensitivity resulted in a relative reduction of missed fractures of 29%. The average rate of false positives per patient decreased from 0.16 to 0.14, corresponding to a relative reduction of 21%. There was no significant difference in average reading time spent per exam. The largest gain in fracture detection performance, with AI support, across all readers, was on nonobvious fractures with a significant increase in sensitivity of 11 percentage points (pp) (60%-71%). Conclusions The diagnostic performance for detection of traumatic fractures on radiographs of the appendicular skeleton improved among nonspecialist readers tested AI fracture detection support tool showed an overall reader improvement in sensitivity and specificity when supported by an AI tool. Improvement was seen in both sensitivity and specificity without negatively affecting the interpretation time. Advances in knowledge The division and analysis of obvious and nonobvious fractures are novel in AI reader comparison studies like this.

Funder

AI

Publisher

Oxford University Press (OUP)

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