School of Mechanical, Medical, and Process Engineering, Queensland University of Technology, Brisbane, QLD 4000, Australia; QUASR/ARC Industrial Transformation Training Centre-Joint Biomechanics, Queensland University of Technology, Brisbane, QLD 4000, Australia; Research and Development department, Akunah Med Technology Pty Ltd Co, Brisbane, QLD 4120, Australia.
Computer Science Department, College of Science, Al-Nahrain University, Baghdad, Baghdad 10011, Iraq; School of Electrical Engineering and Robotics, Queensland University of Technology, Brisbane, QLD 4000, Australia.
Artif Intell Med. 2024 Sep;155:102935. doi: 10.1016/j.artmed.2024.102935. Epub 2024 Jul 25.
Deep learning (DL) in orthopaedics has gained significant attention in recent years. Previous studies have shown that DL can be applied to a wide variety of orthopaedic tasks, including fracture detection, bone tumour diagnosis, implant recognition, and evaluation of osteoarthritis severity. The utilisation of DL is expected to increase, owing to its ability to present accurate diagnoses more efficiently than traditional methods in many scenarios. This reduces the time and cost of diagnosis for patients and orthopaedic surgeons. To our knowledge, no exclusive study has comprehensively reviewed all aspects of DL currently used in orthopaedic practice. This review addresses this knowledge gap using articles from Science Direct, Scopus, IEEE Xplore, and Web of Science between 2017 and 2023. The authors begin with the motivation for using DL in orthopaedics, including its ability to enhance diagnosis and treatment planning. The review then covers various applications of DL in orthopaedics, including fracture detection, detection of supraspinatus tears using MRI, osteoarthritis, prediction of types of arthroplasty implants, bone age assessment, and detection of joint-specific soft tissue disease. We also examine the challenges for implementing DL in orthopaedics, including the scarcity of data to train DL and the lack of interpretability, as well as possible solutions to these common pitfalls. Our work highlights the requirements to achieve trustworthiness in the outcomes generated by DL, including the need for accuracy, explainability, and fairness in the DL models. We pay particular attention to fusion techniques as one of the ways to increase trustworthiness, which have also been used to address the common multimodality in orthopaedics. Finally, we have reviewed the approval requirements set forth by the US Food and Drug Administration to enable the use of DL applications. As such, we aim to have this review function as a guide for researchers to develop a reliable DL application for orthopaedic tasks from scratch for use in the market.
深度学习(DL)在骨科领域近年来受到了广泛关注。之前的研究表明,DL 可应用于广泛的骨科任务,包括骨折检测、骨肿瘤诊断、植入物识别以及骨关节炎严重程度评估。由于在许多情况下,DL 能够比传统方法更有效地提供准确的诊断,因此预计其使用会增加。这减少了患者和骨科医生诊断的时间和成本。据我们所知,目前还没有一项专门的研究全面回顾了 DL 在骨科实践中应用的所有方面。本综述通过使用 2017 年至 2023 年期间来自 Science Direct、Scopus、IEEE Xplore 和 Web of Science 的文章,填补了这一知识空白。作者首先介绍了在骨科中使用 DL 的动机,包括其增强诊断和治疗计划的能力。然后,该综述涵盖了 DL 在骨科中的各种应用,包括骨折检测、使用 MRI 检测肩袖撕裂、骨关节炎、预测关节置换植入物类型、骨龄评估和检测关节特定软组织疾病。我们还研究了在骨科中实施 DL 面临的挑战,包括训练 DL 的数据稀缺性和缺乏可解释性,以及这些常见陷阱的可能解决方案。我们的工作强调了在 DL 生成的结果中实现可信度的要求,包括在 DL 模型中需要准确性、可解释性和公平性。我们特别关注融合技术作为提高可信度的一种方式,融合技术也被用于解决骨科中常见的多模态问题。最后,我们审查了美国食品和药物管理局规定的 DL 应用批准要求。因此,我们旨在使本综述成为研究人员的指南,以便为市场上从头开始开发可靠的 DL 应用程序用于骨科任务。