Abstract

Re-operations and revisions are often performed in patients who have undergone total shoulder arthroplasty (TSA) and reverse total shoulder arthroplasty (RTSA). This necessitates an accurate recognition of the implant model and manufacturer to set the correct apparatus and procedure according to the patient’s anatomy as personalized medicine. Owing to unavailability and ambiguity in the medical data of a patient, expert surgeons identify the implants through a visual comparison of X-ray images. False steps cause heedlessness, morbidity, extra monetary weight, and a waste of time. Despite significant advancements in pattern recognition and deep learning in the medical field, extremely limited research has been conducted on classifying shoulder implants. To overcome these problems, we propose a robust deep learning-based framework comprised of an ensemble of convolutional neural networks (CNNs) to classify shoulder implants in X-ray images of different patients. Through our rotational invariant augmentation, the size of the training dataset is increased 36-fold. The modified ResNet and DenseNet are then combined deeply to form a dense residual ensemble-network (DRE-Net). To evaluate DRE-Net, experiments were executed on a 10-fold cross-validation on the openly available shoulder implant X-ray dataset. The experimental results showed that DRE-Net achieved an accuracy, F1-score, precision, and recall of 85.92%, 84.69%, 85.33%, and 84.11%, respectively, which were higher than those of the state-of-the-art methods. Moreover, we confirmed the generalization capability of our network by testing it in an open-world configuration, and the effectiveness of rotational invariant augmentation.

Highlights

  • The human shoulder is the most mobile joint of the body

  • We propose a robust deep-learning-based comprising an ensemble of convolutional neural networks (CNNs) to classify shoulder framework comprising of convolutional networks (CNNs) classify is novel in the implantsan inensemble

  • We propose dense residual ensemble-network (DRE-Net) comprised of two deep CNNs and an shallow concatenation network work (SCN) to classify shoulder implants in X-ray images

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Summary

Introduction

The human shoulder is the most mobile joint of the body. The shoulder may be damaged owing to severe fractures or injuries to the upper arm or severe joint infection. The manufacture and model of the implant might be obscure to surgeons and patients, for example when the original medical procedure is performed outside of the county, and the patients are unable to access their medical records. As for other reasons why the prosthesis model and manufacturer are unknown, the first original surgery might be performed numerous years before the subsequent surgery, and the patient’s medical information might become lost or unclear In these cases, medical experts identify a prosthesis through a visual comparison of X-ray images and an implant atlas [7]. Despite significant advancements in pattern recognition and deep learning (DL) in the Despite significant advancements in pattern recognition and deep learning (DL) in medical field, there has been extremely limited research conducted on classifying shoulder the medical field, there has been extremely limited researchaconducted on classifying implants.

Related Works
Results
Method
Overall procedure
Classification of Shoulder
Feature Extraction Using Modified ResNet-50
Feature Extraction Using Modified DenseNet-201
Feature Concatenation and Final Classification by SCN
Classification Configuration
Dataset and Experimental Setups
Training of CNN Model
Testing and Performance Analysis
Ablation Studies
40.60 The results
Evaluation
Participants male and
11. Graphical
12. Performance
Comparisons of Proposed DRE-Net with the State-of-The-Art Methods
Discussions
Full Text
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