Literature DB >> 33944629

Assessment of an AI Aid in Detection of Adult Appendicular Skeletal Fractures by Emergency Physicians and Radiologists: A Multicenter Cross-sectional Diagnostic Study.

Loïc Duron1, Alexis Ducarouge1, André Gillibert1, Julia Lainé1, Christian Allouche1, Nicolas Cherel1, Zekun Zhang1, Nicolas Nitche1, Elise Lacave1, Aloïs Pourchot1, Adrien Felter1, Louis Lassalle1, Nor-Eddine Regnard1, Antoine Feydy1.   

Abstract

Background The interpretation of radiographs suffers from an ever-increasing workload in emergency and radiology departments, while missed fractures represent up to 80% of diagnostic errors in the emergency department. Purpose To assess the performance of an artificial intelligence (AI) system designed to aid radiologists and emergency physicians in the detection and localization of appendicular skeletal fractures. Materials and Methods The AI system was previously trained on 60 170 radiographs obtained in patients with trauma. The radiographs were randomly split into 70% training, 10% validation, and 20% test sets. Between 2016 and 2018, 600 adult patients in whom multiview radiographs had been obtained after a recent trauma, with or without one or more fractures of shoulder, arm, hand, pelvis, leg, and foot, were retrospectively included from 17 French medical centers. Radiographs with quality precluding human interpretation or containing only obvious fractures were excluded. Six radiologists and six emergency physicians were asked to detect and localize fractures with (n = 300) and fractures without (n = 300) the aid of software highlighting boxes around AI-detected fractures. Aided and unaided sensitivity, specificity, and reading times were compared by means of paired Student t tests after averaging of performances of each reader. Results A total of 600 patients (mean age ± standard deviation, 57 years ± 22; 358 women) were included. The AI aid improved the sensitivity of physicians by 8.7% (95% CI: 3.1, 14.2; P = .003 for superiority) and the specificity by 4.1% (95% CI: 0.5, 7.7; P < .001 for noninferiority) and reduced the average number of false-positive fractures per patient by 41.9% (95% CI: 12.8, 61.3; P = .02) in patients without fractures and the mean reading time by 15.0% (95% CI: -30.4, 3.8; P = .12). Finally, stand-alone performance of a newer release of the AI system was greater than that of all unaided readers, including skeletal expert radiologists, with an area under the receiver operating characteristic curve of 0.94 (95% CI: 0.92, 0.96). Conclusion The artificial intelligence aid provided a gain of sensitivity (8.7% increase) and specificity (4.1% increase) without loss of reading speed. © RSNA, 2021 Online supplemental material is available for this article.

Entities:  

Year:  2021        PMID: 33944629     DOI: 10.1148/radiol.2021203886

Source DB:  PubMed          Journal:  Radiology        ISSN: 0033-8419            Impact factor:   11.105


  6 in total

1.  Using AI to Improve Radiographic Fracture Detection.

Authors:  Thomas M Link; Valentina Pedoia
Journal:  Radiology       Date:  2021-12-21       Impact factor: 11.105

Review 2.  Diagnostic accuracy and potential covariates of artificial intelligence for diagnosing orthopedic fractures: a systematic literature review and meta-analysis.

Authors:  Xiang Zhang; Yi Yang; Yi-Wei Shen; Ke-Rui Zhang; Ze-Kun Jiang; Li-Tai Ma; Chen Ding; Bei-Yu Wang; Yang Meng; Hao Liu
Journal:  Eur Radiol       Date:  2022-06-27       Impact factor: 7.034

Review 3.  [Artificial intelligence in orthopaedic and trauma surgery imaging].

Authors:  Stefan Rohde; Nico Münnich
Journal:  Orthopadie (Heidelb)       Date:  2022-08-18

4.  Artificial Intelligence in Fracture Detection: A Systematic Review and Meta-Analysis.

Authors:  Rachel Y L Kuo; Conrad Harrison; Terry-Ann Curran; Benjamin Jones; Alexander Freethy; David Cussons; Max Stewart; Gary S Collins; Dominic Furniss
Journal:  Radiology       Date:  2022-03-29       Impact factor: 29.146

5.  Artificial intelligence for radiological paediatric fracture assessment: a systematic review.

Authors:  Susan C Shelmerdine; Richard D White; Hantao Liu; Owen J Arthurs; Neil J Sebire
Journal:  Insights Imaging       Date:  2022-06-03

6.  Deep learning accurately classifies elbow joint effusion in adult and pediatric radiographs.

Authors:  Jarno T Huhtanen; Mikko Nyman; Dorin Doncenco; Maral Hamedian; Davis Kawalya; Leena Salminen; Roberto Blanco Sequeiros; Seppo K Koskinen; Tomi K Pudas; Sami Kajander; Pekka Niemi; Jussi Hirvonen; Hannu J Aronen; Mojtaba Jafaritadi
Journal:  Sci Rep       Date:  2022-07-12       Impact factor: 4.996

  6 in total

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