1. Automated diagnosis of cervical spine physiological curvature based on deep neural networks with transformer by using nmODE.
- Author
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Li, Qingtai, Yang, Yi, Xu, Lei, Shen, Yiwei, Yi, Nengmin, Yi, Zhang, Ergu, Daji, and Cai, Ying
- Subjects
ARTIFICIAL neural networks ,LONG-term memory ,ORDINARY differential equations ,TRANSFORMER models ,ORTHOPEDISTS - Abstract
In this paper, we focus on the automated diagnosis of physiological curvature in the cervical spine, with an emphasis on feature point localization. Cervical spine deformity is prevalent, and the Cobb angle is widely recognized as the gold standard for diagnosing and treating it. However, manual measurement is time-consuming, labor-intensive, and heavily reliant on clinical experience. Therefore, there is an urgent need for a high-precision automatically detecting algorithm to meet the clinical requirements of orthopedic surgeons. Traditional methods are constrained by complex steps and limited data, which pose challenges. Therefore, we propose an efficient framework that formulates an automatic diagnosis of cervical spine physiological curvature based on a novel deep neural network. By leveraging the excellent properties of neural memory Ordinary Differential Equation (nmODE) in long-term memory retention and nonlinear representation capabilities, we effectively improve the network's performance in keypoint detection branching tasks. Additionally, we integrate a novel hybrid transformer based on residual structures and a multi-stage dilated dynamic convolution to alleviate false detections caused by X-ray obstruction and shadows, and the integration also captures the relationship between vertebrae and landmarks to compensate for the lack of detailed information. We constructed a dataset named CSL-947X, comprising 947 cervical spine lateral X-ray images of patients to train and evaluate our proposed model. Extensive experiments on CSL-947X demonstrate that our framework achieves higher accuracy and outperforms most state-of-the-art methods. These results highlight the effectiveness of the proposed architecture and its potential feasibility as a clinical decision-making tool for healthcare professionals. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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