Cervical Spondylosis Diagnosis Based on Convolutional Neural Network with X-ray Images.
Yang XieYali NieJan LundgrenMingliang YangYuxuan ZhangZhenbo ChenPublished in: Sensors (Basel, Switzerland) (2024)
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.
Keyphrases
- deep learning
- convolutional neural network
- high resolution
- artificial intelligence
- dual energy
- machine learning
- end stage renal disease
- palliative care
- chronic kidney disease
- ejection fraction
- newly diagnosed
- prognostic factors
- computed tomography
- climate change
- magnetic resonance imaging
- mass spectrometry
- peritoneal dialysis
- contrast enhanced