利用深度学习为肱骨近端骨折提供治疗建议

Mohammadreza Azarpira, Ihssen Belhadj, Mohammed Khodja
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引用次数: 0

摘要

肱骨近端骨折是急诊科最常见的骨折之一。对这些骨折进行准确诊断并选择最合适的治疗方法具有挑战性,而向资深骨科医生咨询对患者和急诊科来说都非常耗时。我们开发了一种机器学习模型,用于根据损伤放射影像预测治疗类型。该模型可区分非手术和手术治疗方案,准确率达 86%,测试数据集的观察者间可靠性(kappa)为 0.722,高于肩部外科医生之间的观察者间一致性。该模型有望成为急诊科医生的治疗决策支持系统,加快治疗决策的制定,减少患者的等待时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Deep Learning to Suggest Treatment for Proximal Humerus Fractures.

Proximal humeral fractures are among the most common fractures seen in emergency departments. Accurately diagnosing and selecting the most appropriate treatment for these fractures can be challenging, and consultation with a senior orthopedic surgeon can be time-consuming for both the patient and the emergency unit. We developed a machine learning model for predicting the type of treatment based on injury radiographic images. The model distinguishes between nonoperative and operative treatment options, achieving an accuracy of 86% and an interobserver reliability (kappa) of 0.722 for test-dataset, which is more than the interobserver agreement between shoulder surgeons. This model has the potential to serve as a therapeutic decision support system for the practitioners in the emergency departments to expedite treatment decisions and to reduce patients' waiting time.

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