Optimal deep learning network for musculoskeletal X-Ray imaging classification for hospital medical record system

Authors

  • Naif Olayan Alresheedi
  • Mohammed Omair Alresheedi
  • Mohammed Ali Alodhaybi

Keywords:

Deep learning
Musculoskeletal X-ray Imaging Classification
hospital management system
model optimization
LERA dataset
machine learning

Abstract

Background: Medical image archiving is one of the integral components of any hospital medical record system (HMRS). It includes, but is not limited to, MRI, CT-Scan, X-ray, Ultrasound, Musculoskeletal X-rays etc. The musculoskeletal X-ray images are relatively significant in number among the other types of medical imaging. Most of the existing HMRS use either the manual annotation of the images or use metadata for every image for archiving. This approach is found to be deficient because of intensive manual work, chances of misclassification, and reliance on human expertise. Moreover, archiving the images and their metafiles is relatively difficult to handle.
Methodology: This issue can be handled by a hybrid solution of computer vision and deep learning. In the recent literature, researchers have proposed using machine learning and deep learning algorithms for biomedical image classification and archiving. However, the literature is found to be insufficient to recommend a unified deep learning network for Musculoskeletal X-ray Image classification with greater accuracy and efficiency. The LERA dataset is considered one of the benchmark Musculoskeletal X-rays image datasets.
Results: To the best of knowledge the investigation of the best candidate of deep neural network is still missing in the literature. This study will present the logical and empirical rationale for the recommendation of the optimal deep learning network for X-ray Imaging Classification for Hospital Medical Record System using LERA (musculoskeletal radiographs) dataset. It has been concluded that the variants of Resnet, Google Net, and DarkNet are the suggested candidates for LERA x-ray image classification.

Author Biographies

Naif Olayan Alresheedi

College of Applied Medical Sciences | Majmaah University | KSA
Maternity & Children Hospital in Buraydah | Ministry of Health | KSA

Mohammed Omair Alresheedi

College of Applied Medical Sciences | Majmaah University | KSA
Maternity & Children Hospital in Buraydah | Ministry of Health | KSA

Mohammed Ali Alodhaybi

College of Applied Medical Sciences | Majmaah University | KSA
Maternity & Children Hospital in Buraydah | Ministry of Health | KSA

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Published

2022-12-30

How to Cite

1.
Optimal deep learning network for musculoskeletal X-Ray imaging classification for hospital medical record system. JESIT [Internet]. 2022 Dec. 30 [cited 2024 Nov. 28];6(7):21-34. Available from: https://journals.ajsrp.com/index.php/jesit/article/view/5993

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How to Cite

1.
Optimal deep learning network for musculoskeletal X-Ray imaging classification for hospital medical record system. JESIT [Internet]. 2022 Dec. 30 [cited 2024 Nov. 28];6(7):21-34. Available from: https://journals.ajsrp.com/index.php/jesit/article/view/5993