Literature DB >> 34931859

Improving Radiographic Fracture Recognition Performance and Efficiency Using Artificial Intelligence.

Ali Guermazi1, Chadi Tannoury1, Andrew J Kompel1, Akira M Murakami1, Alexis Ducarouge1, André Gillibert1, Xinning Li1, Antoine Tournier1, Youmna Lahoud1, Mohamed Jarraya1, Elise Lacave1, Hamza Rahimi1, Aloïs Pourchot1, Robert L Parisien1, Alexander C Merritt1, Douglas Comeau1, Nor-Eddine Regnard1, Daichi Hayashi1.   

Abstract

Background Missed fractures are a common cause of diagnostic discrepancy between initial radiographic interpretation and the final read by board-certified radiologists. Purpose To assess the effect of assistance by artificial intelligence (AI) on diagnostic performances of physicians for fractures on radiographs. Materials and Methods This retrospective diagnostic study used the multi-reader, multi-case methodology based on an external multicenter data set of 480 examinations with at least 60 examinations per body region (foot and ankle, knee and leg, hip and pelvis, hand and wrist, elbow and arm, shoulder and clavicle, rib cage, and thoracolumbar spine) between July 2020 and January 2021. Fracture prevalence was set at 50%. The ground truth was determined by two musculoskeletal radiologists, with discrepancies solved by a third. Twenty-four readers (radiologists, orthopedists, emergency physicians, physician assistants, rheumatologists, family physicians) were presented the whole validation data set (n = 480), with and without AI assistance, with a 1-month minimum washout period. The primary analysis had to demonstrate superiority of sensitivity per patient and the noninferiority of specificity per patient at -3% margin with AI aid. Stand-alone AI performance was also assessed using receiver operating characteristic curves. Results A total of 480 patients were included (mean age, 59 years ± 16 [standard deviation]; 327 women). The sensitivity per patient was 10.4% higher (95% CI: 6.9, 13.9; P < .001 for superiority) with AI aid (4331 of 5760 readings, 75.2%) than without AI (3732 of 5760 readings, 64.8%). The specificity per patient with AI aid (5504 of 5760 readings, 95.6%) was noninferior to that without AI aid (5217 of 5760 readings, 90.6%), with a difference of +5.0% (95% CI: +2.0, +8.0; P = .001 for noninferiority). AI shortened the average reading time by 6.3 seconds per examination (95% CI: -12.5, -0.1; P = .046). The sensitivity by patient gain was significant in all regions (+8.0% to +16.2%; P < .05) but shoulder and clavicle and spine (+4.2% and +2.6%; P = .12 and .52). Conclusion AI assistance improved the sensitivity and may even improve the specificity of fracture detection by radiologists and nonradiologists, without lengthening reading time. Published under a CC BY 4.0 license. Online supplemental material is available for this article. See also the editorial by Link and Pedoia in this issue.

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Year:  2021        PMID: 34931859     DOI: 10.1148/radiol.210937

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


  5 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.  [Artificial intelligence in orthopaedic and trauma surgery imaging].

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

3.  Automated detection of acute appendicular skeletal fractures in pediatric patients using deep learning.

Authors:  Daichi Hayashi; Andrew J Kompel; Jeanne Ventre; Alexis Ducarouge; Toan Nguyen; Nor-Eddine Regnard; Ali Guermazi
Journal:  Skeletal Radiol       Date:  2022-05-06       Impact factor: 2.128

Review 4.  An Evolution Gaining Momentum-The Growing Role of Artificial Intelligence in the Diagnosis and Treatment of Spinal Diseases.

Authors:  Andre Wirries; Florian Geiger; Ludwig Oberkircher; Samir Jabari
Journal:  Diagnostics (Basel)       Date:  2022-03-29

5.  Automated fracture screening using an object detection algorithm on whole-body trauma computed tomography.

Authors:  Takaki Inoue; Satoshi Maki; Takeo Furuya; Yukio Mikami; Masaya Mizutani; Ikko Takada; Sho Okimatsu; Atsushi Yunde; Masataka Miura; Yuki Shiratani; Yuki Nagashima; Juntaro Maruyama; Yasuhiro Shiga; Kazuhide Inage; Sumihisa Orita; Yawara Eguchi; Seiji Ohtori
Journal:  Sci Rep       Date:  2022-10-03       Impact factor: 4.996

  5 in total

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