Construction and Application of Rib Fracture Diagnosis Model Based on YOLOv3 Algorithm.

Jie Bai, Jing Sun, Xiao-Guang Cheng, Fan Liu, Hua Liu, Xu Wang
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Abstract

Objectives: The artificial intelligence-aided diagnosis model of rib fractures based on YOLOv3 algorithm was established and applied to practical case to explore the application advantages in rib fracture cases in forensic medicine.

Methods: DICOM format CT images of 884 cases with rib fractures caused by thoracic trauma were collected, and 801 of them were used as training and validation sets. A rib fracture diagnosis model based on YOLOv3 algorithm and Darknet53 as the backbone network was built. After the model was established, 83 cases were taken as the test set, and the precision rate, recall rate, F1-score and radiology interpretation time were calculated. The model was used to diagnose a practical case and compared with manual diagnosis.

Results: The established model was used to test 83 cases, the fracture precision rate of this model was 90.5%, the recall rate was 75.4%, F1-score was 0.82, the radiology interpretation time was 4.4 images per second and the identification time of each patient's data was 21 s, much faster than manual diagnosis. The recognition results of the model was consistent with that of the manual diagnosis.

Conclusions: The rib fracture diagnosis model in practical case based on YOLOv3 algorithm can quickly and accurately identify fractures, and the model is easy to operate. It can be used as an auxiliary diagnostic technique in forensic clinical identification.

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基于YOLOv3算法的肋骨骨折诊断模型的构建与应用。
目的:建立基于YOLOv3算法的肋骨骨折人工智能辅助诊断模型,并将其应用于实际案例中,探索其在肋骨骨折法医学案例中的应用优势。方法:收集884例胸外伤性肋骨骨折患者的DICOM格式CT图像,其中801例作为训练和验证集。建立了一个基于YOLOv3算法和Darknet53作为骨干网络的肋骨骨折诊断模型。模型建立后,以83例病例为测试集,计算准确率、召回率、F1评分和放射学解释时间。将该模型用于实际病例的诊断,并与人工诊断进行了比较。结果:建立的模型用于83例病例的测试,该模型的骨折准确率为90.5%,召回率为75.4%,F1评分为0.82,放射学解释时间为每秒4.4张图像,每个患者数据的识别时间为21s,比手动诊断快得多。该模型的识别结果与人工诊断结果一致。结论:基于YOLOv3算法的实际肋骨骨折诊断模型能够快速准确地识别骨折,且模型易于操作。它可以作为法医临床鉴定的辅助诊断技术。
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来源期刊
法医学杂志
法医学杂志 Medicine-Pathology and Forensic Medicine
CiteScore
1.50
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Advances in the Study of Cerebrocardiac Syndrome and Its Forensic Significance.
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