Study on the application of deep learning artificial intelligence techniques in the diagnosis of nasal bone fracture.

IF 1 Q3 EMERGENCY MEDICINE International Journal of Burns and Trauma Pub Date : 2024-12-15 eCollection Date: 2024-01-01 DOI:10.62347/VCJP9652
Siyi Wang, Jing Fei, Yuehua Liu, Ying Huang, Leiji Li
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Abstract

Purpose: To evaluate the identification of nasal bone fractures and their clinical diagnostic significance for three-dimensional (3D) reconstruction of maxillofacial computed tomography (CT) images by applying artificial intelligence (AI) with deep learning (DL).

Methods: CT maxillofacial 3D reconstruction images of 39 patients with normal nasal bone and 43 patients with nasal bone fracture were retrospectively analysed, and a total of 247 images were obtained in three directions: the orthostatic, left lateral and right lateral positions. The CT scan images of all patients were reviewed by two senior specialists to confirm the presence or absence of nasal fractures. Binary classification prediction was performed using the YOLOX detection model + GhostNetv2 classification model with a DL algorithm. Accuracy, sensitivity, and specificity were used to evaluate the efficacy of the AI model. Manual independent review, and AI model-assisted manual independent review were used to identify nasal fractures.

Results: Compared with those of manual independent detection, the accuracy, sensitivity, and specificity of AI-assisted film reading improved between junior and senior physicians. The differences were statistically significant (P<0.05), and all were higher than manual independent detection.

Conclusions: Based on deep learning methods, an artificial intelligence model can be used to assist in the diagnosis of nasal bone fractures, which helps to promote the practical clinical application of deep learning methods.

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深度学习人工智能技术在鼻骨骨折诊断中的应用研究。
目的:探讨应用人工智能(AI)结合深度学习(DL)技术对鼻骨骨折的识别及其在颌面部计算机断层扫描(CT)图像三维重建中的临床诊断意义。方法:回顾性分析39例正常鼻骨和43例鼻骨骨折患者的CT颌面三维重建图像,获得直立位、左侧位和右侧位三个方向共247张图像。所有患者的CT扫描图像由两位资深专家检查,以确定是否存在鼻骨折。采用YOLOX检测模型+ GhostNetv2分类模型结合DL算法进行二值分类预测。采用准确性、敏感性和特异性来评价AI模型的疗效。采用人工独立评价和人工智能模型辅助的人工独立评价来识别鼻骨折。结果:与人工独立检测相比,人工智能辅助读片的准确性、灵敏度和特异性在初级和高级医师中均有提高。结论:基于深度学习方法的人工智能模型可以辅助鼻骨骨折的诊断,有助于促进深度学习方法在临床的实际应用。
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