Literature DB >> 34855002

Detection of acute rib fractures on CT images with convolutional neural networks: effect of location and type of fracture and reader's experience.

Minako Azuma1, Hiroshi Nakada2, Mizuki Takei3, Keigo Nakamura3, Shigehiko Katsuragawa4, Norihiro Shinkawa2, Tamasa Terada2, Rie Masuda2, Youhei Hattori2, Takakazu Ide2, Aya Kimura2, Mei Shimomura2, Masatsugu Kawano2, Kengo Matsumura2, Takayuki Meiri2, Hidenobu Ochiai5, Toshinori Hirai6.   

Abstract

PURPOSE: The evaluation of all ribs on thin-slice CT images is time consuming and it can be difficult to accurately assess the location and type of rib fracture in an emergency. The aim of our study was to develop and validate a convolutional neural network (CNN) algorithm for the detection of acute rib fractures on thoracic CT images and to investigate the effect of the CNN algorithm on radiologists' performance.
METHODS: The dataset for development of a CNN consisted of 539 thoracic CT scans with 4906 acute rib fractures. A three-dimensional faster region-based CNN was trained and evaluated by using tenfold cross-validation. For an observer performance study to investigate the effect of CNN outputs on radiologists' performance, 30 thoracic CT scans (28 scans with 90 acute rib fractures and 2 without rib fractures) which were not included in the development dataset were used. Observer performance study involved eight radiologists who evaluated CT images first without and second with CNN outputs. The diagnostic performance was assessed by using figure of merit (FOM) values obtained from the jackknife free-response receiver operating characteristic (JAFROC) analysis.
RESULTS: When radiologists used the CNN output for detection of rib fractures, the mean FOM value significantly increased for all readers (0.759 to 0.819, P = 0.0004) and for displaced (0.925 to 0.995, P = 0.0028) and non-displaced fractures (0.678 to 0.732, P = 0.0116). At all rib levels except for the 1st and 12th ribs, the radiologists' true-positive fraction of the detection became significantly increased by using the CNN outputs.
CONCLUSION: The CNN specialized for the detection of acute rib fractures on CT images can improve the radiologists' diagnostic performance regardless of the type of fractures and reader's experience. Further studies are needed to clarify the usefulness of the CNN for the detection of acute rib fractures on CT images in actual clinical practice.
© 2021. American Society of Emergency Radiology.

Entities:  

Keywords:  Convolutional neural network (CNN); Fresh rib fractures; Thoracic CT; Trauma

Mesh:

Year:  2021        PMID: 34855002     DOI: 10.1007/s10140-021-02000-6

Source DB:  PubMed          Journal:  Emerg Radiol        ISSN: 1070-3004


  1 in total

Review 1.  Traumatic fractures in adults: missed diagnosis on plain radiographs in the Emergency Department.

Authors:  Antonio Pinto; Daniela Berritto; Anna Russo; Federica Riccitiello; Martina Caruso; Maria Paola Belfiore; Vito Roberto Papapietro; Marina Carotti; Fabio Pinto; Andrea Giovagnoni; Luigia Romano; Roberto Grassi
Journal:  Acta Biomed       Date:  2018-01-19
  1 in total
  1 in total

1.  Development of an artificial intelligence-assisted computed tomography diagnosis technology for rib fracture and evaluation of its clinical usefulness.

Authors:  Akifumi Niiya; Kouzou Murakami; Rei Kobayashi; Atsuhito Sekimoto; Miho Saeki; Kosuke Toyofuku; Masako Kato; Hidenori Shinjo; Yoshinori Ito; Mizuki Takei; Chiori Murata; Yoshimitsu Ohgiya
Journal:  Sci Rep       Date:  2022-05-19       Impact factor: 4.996

  1 in total

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