利用 YOLOv8 和先进的数据增强技术对 X 射线图像中的 AO/OTA 31A/B 股骨骨折进行分类

IF 2.1 Q3 ENDOCRINOLOGY & METABOLISM Bone Reports Pub Date : 2024-09-01 DOI:10.1016/j.bonr.2024.101801
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引用次数: 0

摘要

股骨骨折是全球关注的重大公共卫生问题,因其高频率、高发病率和高死亡率而影响着患者及其家庭。在采用计算机辅助诊断(CAD)技术时,骨折分类的效率和准确性方面已经取得了可喜的成果,特别是随着深度学习(DL)方法的使用日益广泛。然而,由于需要收集足够的输入数据来训练这些算法,以及解释研究结果所面临的挑战,其复杂性进一步增加。本研究通过改进基于深度学习的Arbeitsgemeinschaft für Osteosynthesefragen and Orthopaedic Trauma Association(AO/OTA)系统对股骨骨折的最新分类结果,旨在支持医生就患者护理做出正确、及时的决策。研究采用了最先进的架构 YOLOv8,并对其进行了改进,同时密切关注模型的可解释性。此外,在预处理过程中还采用了数据增强技术,通过图像处理改变来增加数据集样本。经过微调的 YOLOv8 模型取得了显著的成果,准确度为 0.9,精确度为 0.85,召回率为 0.85,F1-score 为 0.85(通过计算所有类别中每个指标的平均值得出)。这项研究表明,所提出的架构能有效提高 AO/OTA 系统对股骨骨折的分类能力,帮助医生做出及时准确的诊断。
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Classification of AO/OTA 31A/B femur fractures in X-ray images using YOLOv8 and advanced data augmentation techniques

Femur fractures are a significant worldwide public health concern that affects patients as well as their families because of their high frequency, morbidity, and mortality. When employing computer-aided diagnostic (CAD) technologies, promising results have been shown in the efficiency and accuracy of fracture classification, particularly with the growing use of Deep Learning (DL) approaches. Nevertheless, the complexity is further increased by the need to collect enough input data to train these algorithms and the challenge of interpreting the findings. By improving on the results of the most recent deep learning-based Arbeitsgemeinschaft für Osteosynthesefragen and Orthopaedic Trauma Association (AO/OTA) system classification of femur fractures, this study intends to support physicians in making correct and timely decisions regarding patient care. A state-of-the-art architecture, YOLOv8, was used and refined while paying close attention to the interpretability of the model. Furthermore, data augmentation techniques were involved during preprocessing, increasing the dataset samples through image processing alterations. The fine-tuned YOLOv8 model achieved remarkable results, with 0.9 accuracy, 0.85 precision, 0.85 recall, and 0.85 F1-score, computed by averaging the values among all the individual classes for each metric. This study shows the proposed architecture's effectiveness in enhancing the AO/OTA system's classification of femur fractures, assisting physicians in making prompt and accurate diagnoses.

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来源期刊
Bone Reports
Bone Reports Medicine-Orthopedics and Sports Medicine
CiteScore
4.30
自引率
4.00%
发文量
444
审稿时长
57 days
期刊介绍: Bone Reports is an interdisciplinary forum for the rapid publication of Original Research Articles and Case Reports across basic, translational and clinical aspects of bone and mineral metabolism. The journal publishes papers that are scientifically sound, with the peer review process focused principally on verifying sound methodologies, and correct data analysis and interpretation. We welcome studies either replicating or failing to replicate a previous study, and null findings. We fulfil a critical and current need to enhance research by publishing reproducibility studies and null findings.
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