Cervical Spondylosis Diagnosis Based on Convolutional Neural Network with X-ray Images

Author:

Xie Yang1ORCID,Nie Yali2ORCID,Lundgren Jan2ORCID,Yang Mingliang3,Zhang Yuxuan2ORCID,Chen Zhenbo1

Affiliation:

1. Department of Medical Imaging, China Rehabilitation Research Center and Capital Medical University School of Rehabilitation Medicine, Beijing 100068, China

2. Department of Electronics Design, Mid Sweden University, 85170 Sundsvall, Sweden

3. Department of Spinal and Neural Function Reconstruction, China Rehabilitation Research Center and Capital Medical University School of Rehabilitation Medicine, Beijing 100068, China

Abstract

The increase in Cervical Spondylosis cases and the expansion of the affected demographic to younger patients have escalated the demand for X-ray screening. Challenges include variability in imaging technology, differences in equipment specifications, and the diverse experience levels of clinicians, which collectively hinder diagnostic accuracy. In response, a deep learning approach utilizing a ResNet-34 convolutional neural network has been developed. This model, trained on a comprehensive dataset of 1235 cervical spine X-ray images representing a wide range of projection angles, aims to mitigate these issues by providing a robust tool for diagnosis. Validation of the model was performed on an independent set of 136 X-ray images, also varied in projection angles, to ensure its efficacy across diverse clinical scenarios. The model achieved a classification accuracy of 89.7%, significantly outperforming the traditional manual diagnostic approach, which has an accuracy of 68.3%. This advancement demonstrates the viability of deep learning models to not only complement but enhance the diagnostic capabilities of clinicians in identifying Cervical Spondylosis, offering a promising avenue for improving diagnostic accuracy and efficiency in clinical settings.

Funder

Capital’s Funds for Health Improvement and Research

Publisher

MDPI AG

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