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

被引:0
作者
Akifumi Niiya
Kouzou Murakami
Rei Kobayashi
Atsuhito Sekimoto
Miho Saeki
Kosuke Toyofuku
Masako Kato
Hidenori Shinjo
Yoshinori Ito
Mizuki Takei
Chiori Murata
Yoshimitsu Ohgiya
机构
[1] Showa University,Department of Radiology
[2] Fujifilm Corporation,undefined
来源
Scientific Reports | / 12卷
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Artificial intelligence algorithms utilizing deep learning are helpful tools for diagnostic imaging. A deep learning-based automatic detection algorithm was developed for rib fractures on computed tomography (CT) images of high-energy trauma patients. In this study, the clinical effectiveness of this algorithm was evaluated. A total of 56 cases were retrospectively examined, including 46 rib fractures and 10 control cases from our hospital, between January and June 2019. Two radiologists annotated the fracture lesions (complete or incomplete) for each CT image, which is considered the “ground truth.” Thereafter, the algorithm’s diagnostic results for all cases were compared with the ground truth, and the sensitivity and number of false positive (FP) results per case were assessed. The radiologists identified 199 images with a fracture. The sensitivity of the algorithm was 89.8%, and the number of FPs per case was 2.5. After additional learning, the sensitivity increased to 93.5%, and the number of FPs was 1.9 per case. FP results were found in the trabecular bone with the appearance of fracture, vascular grooves, and artifacts. The sensitivity of the algorithm used in this study was sufficient to aid the rapid detection of rib fractures within the evaluated validation set of CT images.
引用
收藏
相关论文
共 32 条
[1]  
Miller LA(2006)Chest wall, lung, and pleural space trauma Radiol. Clin. North Am. 44 213-224
[2]  
Ziegler DW(1994)The morbidity and mortality of rib fractures J. Trauma 37 975-979
[3]  
Agarwal NN(2009)The DePICTORS Study: discrepancies in preliminary interpretation of CT scans between on-call residents and staff Emerg. Radiol. 16 303-308
[4]  
Walls J(2006)Overnight resident preliminary interpretations on CT examinations: should the process continue? Emerg. Radiol. 13 19-23
[5]  
Hunter N(2020)Deep-learning-assisted detection and segmentation of rib fractures from CT scans: development and validation of FracNet EBioMedicine 62 103-106
[6]  
Brasher PMA(2012)Missed rib fractures on evaluation of initial chest CT for trauma patients: pattern analysis and diagnostic value of coronal multiplanar reconstruction images with multidetector row CT Br. J. Radiol. 85 e845-e850
[7]  
Ho SGF(2018)Artificial intelligence in fracture detection: Transfer learning from deep convolutional neural networks Clin. Radiol. 73 439-445
[8]  
Strub WM(2017)Artificial intelligence for analyzing orthopedic trauma radiographs Acta Orthop. 88 581-586
[9]  
Vagal AA(2019)What are the applications and limitations of artificial intelligence for fracture detection and classification in orthopaedic trauma imaging? A systematic review Clin. Orthop. Relat. Res. 477 2482-2491
[10]  
Tomsick T(2018)Deep neural network improves fracture detection by clinicians Proc. Natl. Acad. Sci. U. S. A. 115 11591-11596