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Automatic vertebral fracture and three-column injury diagnosis with fracture visualization by a multi-scale attention-guided network

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Abstract

Deep learning methods have the potential to improve the efficiency of diagnosis for vertebral fractures with computed tomography (CT) images. Most existing intelligent vertebral fracture diagnosis methods only provide dichotomized results at a patient level. However, a fine-grained and more nuanced outcome is clinically needed. This study proposed a novel network, a multi-scale attention-guided network (MAGNet), to diagnose vertebral fractures and three-column injuries with fracture visualization at a vertebra level. By imposing attention constraints through a disease attention map (DAM), a fusion of multi-scale spatial attention maps, the MAGNet can get task highly relevant features and localize fractures. A total of 989 vertebrae were studied here. After four-fold cross-validation, the area under the ROC curve (AUC) of our model for vertebral fracture dichotomized diagnosis and three-column injury diagnosis was 0.884 ± 0.015 and 0.920 ± 0.104, respectively. The overall performance of our model outperformed classical classification models, attention models, visual explanation methods, and attention-guided methods based on class activation mapping. Our work can promote the clinical application of deep learning to diagnose vertebral fractures and provide a way to visualize and improve the diagnosis results with attention constraints.

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Data availability

The data underlying this article cannot be shared publicly due to the privacy of the patients in the study. The data will be shared on reasonable request to the corresponding author.

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Funding

This work was supported by the National Key Research and Development Program under grant 2016YFC01004608, National Natural Science Foundation of China under grant U1732119, Shanghai Jiao Tong University Medical Engineering Cross Research Funds under grant YG2021ZD05, and National Key R&D Program of China under grant 2021YFF0703702.

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Contributions

All authors contributed to the study conception and design. SZ, JX, and KW built the dataset. SZ wrote the main manuscript text. SZ, ZZ, LQ, DL, JZ, and JS reviewed and revised the manuscript. All authors read and approved the final manuscript.

Corresponding authors

Correspondence to Jun Xu, Jun Zhao or Jianqi Sun.

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This study was approved by the Ethics Committee of Shanghai Sixth People’s Hospital, and the informed consent was waived.

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Zhang, S., Zhao, Z., Qiu, L. et al. Automatic vertebral fracture and three-column injury diagnosis with fracture visualization by a multi-scale attention-guided network. Med Biol Eng Comput 61, 1661–1674 (2023). https://doi.org/10.1007/s11517-023-02805-2

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