Literature DB >> 32584712

Femoral neck fracture detection in X-ray images using deep learning and genetic algorithm approaches.

Salih Beyaz1, Koray Açıcı, Emre Sümer.   

Abstract

OBJECTIVES: This study aims to detect frontal pelvic radiograph femoral neck fracture using deep learning techniques. PATIENTS AND METHODS: This retrospective study was conducted between January 2013 and January 2018. A total of 234 frontal pelvic X-ray images collected from 65 patients (32 males, 33 females; mean age 74.9 years; range, 33 to 89 years) were augmented to 2106 images to achieve a satisfactory dataset. A total of 1,341 images were fractured femoral necks while 765 were non-fractured ones. The proposed convolutional neural network (CNN) architecture contained five blocks, each containing a convolutional layer, batch normalization layer, rectified linear unit, and maximum pooling layer. After the last block, a dropout layer existed with a probability of 0.5. The last three layers of the architecture were a fully connected layer of two classes, a softmax layer and a classification layer that computes cross entropy loss. The training process was terminated after 50 epochs and an Adam Optimizer was used. Learning rate was dropped by a factor of 0.5 on every five epochs. To reduce overfitting, regularization term was added to the weights of the loss function. The training process was repeated for pixel sizes 50x50, 100x100, 200x200, and 400x400. The genetic algorithm (GA) approach was employed to optimize the hyperparameters of the CNN architecture and to minimize the error after testing the model created by the CNN architecture in the training phase.
RESULTS: Performance in terms of sensitivity, specificity, accuracy, F1 score, and Cohen's kappa coefficient were evaluated using five- fold cross validation tests. Best performance was obtained when cropped images were rescaled to 50x50 pixels. The kappa metric showed more reliable classifier performance when 50x50 pixels image size was used to feed the CNN. The classifier performance was more reliable according to other image sizes. Sensitivity and specificity rates were computed to be 83% and 73%, respectively. With the inclusion of the GA, this rate increased by 1.6%. The detection rate of fractured bones was found to be 83%. A kappa coefficient of 55% was obtained, indicating an acceptable agreement.
CONCLUSION: This experimental study utilized deep learning techniques in the detection of bone fractures in radiography. Although the dataset was unbalanced, the results can be considered promising. It was observed that use of smaller image size decreases computational cost and provides better results according to evaluation metrics.

Entities:  

Year:  2020        PMID: 32584712     DOI: 10.5606/ehc.2020.72163

Source DB:  PubMed          Journal:  Jt Dis Relat Surg        ISSN: 2687-4792


  8 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.  Artificial Intelligence in Fracture Detection: A Systematic Review and Meta-Analysis.

Authors:  Rachel Y L Kuo; Conrad Harrison; Terry-Ann Curran; Benjamin Jones; Alexander Freethy; David Cussons; Max Stewart; Gary S Collins; Dominic Furniss
Journal:  Radiology       Date:  2022-03-29       Impact factor: 29.146

4.  Diagnosis of osteoarthritic changes, loss of cervical lordosis, and disc space narrowing on cervical radiographs with deep learning methods.

Authors:  Yüksel Maraş; Gül Tokdemir; Kemal Üreten; Ebru Atalar; Semra Duran; Hakan Maraş
Journal:  Jt Dis Relat Surg       Date:  2022-03-28

5.  Fracture Detection in Wrist X-ray Images Using Deep Learning-Based Object Detection Models.

Authors:  Fırat Hardalaç; Fatih Uysal; Ozan Peker; Murat Çiçeklidağ; Tolga Tolunay; Nil Tokgöz; Uğurhan Kutbay; Boran Demirciler; Fatih Mert
Journal:  Sensors (Basel)       Date:  2022-02-08       Impact factor: 3.576

6.  Hybrid SFNet Model for Bone Fracture Detection and Classification Using ML/DL.

Authors:  Dhirendra Prasad Yadav; Ashish Sharma; Senthil Athithan; Abhishek Bhola; Bhisham Sharma; Imed Ben Dhaou
Journal:  Sensors (Basel)       Date:  2022-08-04       Impact factor: 3.847

Review 7.  A brief history of artificial intelligence and robotic surgery in orthopedics & traumatology and future expectations.

Authors:  Salih Beyaz
Journal:  Jt Dis Relat Surg       Date:  2020

8.  A Novel Hybrid Machine Learning Based System to Classify Shoulder Implant Manufacturers.

Authors:  Esra Sivari; Mehmet Serdar Güzel; Erkan Bostanci; Alok Mishra
Journal:  Healthcare (Basel)       Date:  2022-03-20
  8 in total

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