Literature DB >> 34087611

Assessing the speed-accuracy trade-offs of popular convolutional neural networks for single-crop rib fracture classification.

Riel Castro-Zunti1, Kum Ju Chae2, Younhee Choi1, Gong Yong Jin2, Seok-Bum Ko3.   

Abstract

Rib fractures are injuries commonly assessed in trauma wards. Deep learning has demonstrated state-of-the-art accuracy for a variety of tasks, including image classification. This paper assesses the speed-accuracy trade-offs and general suitability of four popular convolutional neural networks to classify rib fractures from axial computed tomography imagery. We transfer learned InceptionV3, ResNet50, MobileNetV2, and VGG16 models, additionally training "decomposed" models comprised of taking only the first n blocks for each block for each architecture. Given that acute (new) fractures are generally most important to detect, we trained two types of models: a classful model with classes acute, old (healed), and normal (non-fractured); and a binary model with acute vs. the other classes. We found that the first 7 blocks of InceptionV3 achieved the best results and general speed-accuracy trade-off. The classful model achieved a 5-fold cross-validation average accuracy and macro recall of 96.00% and 94.0%, respectively. The binary model achieved a 5-fold cross-validation average accuracy, macro recall, and area under receiver operator characteristic curve of 97.76%, 94.6%, and 94.7%, respectively. On a Windows 10 PC with 32GB RAM and an Nvidia 1080ti GPU, the model's average CPU and GPU per-crop inference times were 13.6 and 12.2 ms, respectively. Compared to the InceptionV3 Block 7 classful model, a radiologist with 9 years of experience was less accurate but more sensitive to acute fractures; meanwhile, the deep learning model had fewer false positive diagnoses and better sensitivity to old fractures and normal ribs. The Cohen's Kappa between the two was 0.813.
Copyright © 2021 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Convolutional neural networks; Deep learning; Radiology; Rib fractures

Year:  2021        PMID: 34087611     DOI: 10.1016/j.compmedimag.2021.101937

Source DB:  PubMed          Journal:  Comput Med Imaging Graph        ISSN: 0895-6111            Impact factor:   4.790


  2 in total

1.  An Algorithm for Automatic Rib Fracture Recognition Combined with nnU-Net and DenseNet.

Authors:  Junzhong Zhang; Zhiwei Li; Shixing Yan; Hui Cao; Jing Liu; Dejian Wei
Journal:  Evid Based Complement Alternat Med       Date:  2022-02-25       Impact factor: 2.629

2.  Deep Scale-Variant Network for Femur Trochanteric Fracture Classification with HP Loss.

Authors:  Yuxiang Kang; Zhipeng Ren; Yinguang Zhang; Aiming Zhang; Weizhe Xu; Guokai Zhang; Qiang Dong
Journal:  J Healthc Eng       Date:  2022-03-27       Impact factor: 2.682

  2 in total

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