Literature DB >> 34379216

External Validation of Deep Learning Algorithm for Detecting and Visualizing Femoral Neck Fracture Including Displaced and Non-displaced Fracture on Plain X-ray.

Junwon Bae1, Sangjoon Yu2, Jaehoon Oh3,4, Tae Hyun Kim5,6, Jae Ho Chung7,8,9, Hayoung Byun7,8, Myeong Seong Yoon1, Chiwon Ahn10, Dong Keon Lee11.   

Abstract

This study aimed to develop a method for detection of femoral neck fracture (FNF) including displaced and non-displaced fractures using convolutional neural network (CNN) with plain X-ray and to validate its use across hospitals through internal and external validation sets. This is a retrospective study using hip and pelvic anteroposterior films for training and detecting femoral neck fracture through residual neural network (ResNet) 18 with convolutional block attention module (CBAM) +  + . The study was performed at two tertiary hospitals between February and May 2020 and used data from January 2005 to December 2018. Our primary outcome was favorable performance for diagnosis of femoral neck fracture from negative studies in our dataset. We described the outcomes as area under the receiver operating characteristic curve (AUC), accuracy, Youden index, sensitivity, and specificity. A total of 4,189 images that contained 1,109 positive images (332 non-displaced and 777 displaced) and 3,080 negative images were collected from two hospitals. The test values after training with one hospital dataset were 0.999 AUC, 0.986 accuracy, 0.960 Youden index, and 0.966 sensitivity, and 0.993 specificity. Values of external validation with the other hospital dataset were 0.977, 0.971, 0.920, 0.939, and 0.982, respectively. Values of merged hospital datasets were 0.987, 0.983, 0.960, 0.973, and 0.987, respectively. A CNN algorithm for FNF detection in both displaced and non-displaced fractures using plain X-rays could be used in other hospitals to screen for FNF after training with images from the hospital of interest.
© 2021. Society for Imaging Informatics in Medicine.

Entities:  

Keywords:  AI; Artificial intelligence; Deep learning; Femur; Fracture; Machine learning

Mesh:

Year:  2021        PMID: 34379216      PMCID: PMC8554912          DOI: 10.1007/s10278-021-00499-2

Source DB:  PubMed          Journal:  J Digit Imaging        ISSN: 0897-1889            Impact factor:   4.903


  29 in total

1.  Detecting intertrochanteric hip fractures with orthopedist-level accuracy using a deep convolutional neural network.

Authors:  Takaaki Urakawa; Yuki Tanaka; Shinichi Goto; Hitoshi Matsuzawa; Kei Watanabe; Naoto Endo
Journal:  Skeletal Radiol       Date:  2018-06-28       Impact factor: 2.199

2.  Computer vs human: Deep learning versus perceptual training for the detection of neck of femur fractures.

Authors:  Matthew Adams; Weijia Chen; David Holcdorf; Mark W McCusker; Piers Dl Howe; Frank Gaillard
Journal:  J Med Imaging Radiat Oncol       Date:  2018-11-08       Impact factor: 1.735

3.  Garden's classification of femoral neck fractures. An assessment of inter-observer variation.

Authors:  P A Frandsen; E Andersen; F Madsen; T Skjødt
Journal:  J Bone Joint Surg Br       Date:  1988-08

Review 4.  Orthopedic pitfalls in the ED: radiographically occult hip fracture.

Authors:  Andrew D Perron; Mark D Miller; William J Brady
Journal:  Am J Emerg Med       Date:  2002-05       Impact factor: 2.469

5.  Advanced Deep Learning Techniques Applied to Automated Femoral Neck Fracture Detection and Classification.

Authors:  Simukayi Mutasa; Sowmya Varada; Akshay Goel; Tony T Wong; Michael J Rasiej
Journal:  J Digit Imaging       Date:  2020-10       Impact factor: 4.056

6.  Mortality risk after hip fracture.

Authors:  Jeffrey Richmond; Gina B Aharonoff; Joseph D Zuckerman; Kenneth J Koval
Journal:  J Orthop Trauma       Date:  2003-01       Impact factor: 2.512

7.  Hip fracture: diagnosis, treatment, and secondary prevention.

Authors:  Kim Edward LeBlanc; Herbert L Muncie; Leanne L LeBlanc
Journal:  Am Fam Physician       Date:  2014-06-15       Impact factor: 3.292

8.  Mortality associated with delay in operation after hip fracture: observational study.

Authors:  Alex Bottle; Paul Aylin
Journal:  BMJ       Date:  2006-03-22

Review 9.  Imaging choices in occult hip fracture.

Authors:  Jesse Cannon; Salvatore Silvestri; Mark Munro
Journal:  J Emerg Med       Date:  2008-10-28       Impact factor: 1.484

10.  Deep learning predicts hip fracture using confounding patient and healthcare variables.

Authors:  Marcus A Badgeley; John R Zech; Luke Oakden-Rayner; Benjamin S Glicksberg; Manway Liu; William Gale; Michael V McConnell; Bethany Percha; Thomas M Snyder; Joel T Dudley
Journal:  NPJ Digit Med       Date:  2019-04-30
View more
  3 in total

Review 1.  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 2.  Current understanding on artificial intelligence and machine learning in orthopaedics - A scoping review.

Authors:  Vishal Kumar; Sandeep Patel; Vishnu Baburaj; Aditya Vardhan; Prasoon Kumar Singh; Raju Vaishya
Journal:  J Orthop       Date:  2022-08-26

3.  Research hotspots and emerging trends of deep learning applications in orthopedics: A bibliometric and visualized study.

Authors:  Chengyao Feng; Xiaowen Zhou; Hua Wang; Yu He; Zhihong Li; Chao Tu
Journal:  Front Public Health       Date:  2022-07-19
  3 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.