School of Medicine, Mayo Clinic Alix School of Medicine, Rochester, MN, USA.
Oslo Sports Trauma Research Center, Norwegian School of Sports Science, Oslo, Norway.
Knee Surg Sports Traumatol Arthrosc. 2023 May;31(5):1635-1643. doi: 10.1007/s00167-023-07338-7. Epub 2023 Feb 11.
Deep learning has the potential to be one of the most transformative technologies to impact orthopedic surgery. Substantial innovation in this area has occurred over the past 5 years, but clinically meaningful advancements remain limited by a disconnect between clinical and technical experts. That is, it is likely that few orthopedic surgeons possess both the clinical knowledge necessary to identify orthopedic problems, and the technical knowledge needed to implement deep learning-based solutions. To maximize the utilization of rapidly advancing technologies derived from deep learning models, orthopedic surgeons should understand the steps needed to design, organize, implement, and evaluate a deep learning project and its workflow. Equipping surgeons with this knowledge is the objective of this three-part editorial review. Part I described the processes involved in defining the problem, team building, data acquisition, curation, labeling, and establishing the ground truth. Building on that, this review (Part II) provides guidance on pre-processing and augmenting the data, making use of open-source libraries/toolkits, and selecting the required hardware to implement the pipeline. Special considerations regarding model training and evaluation unique to deep learning models relative to "shallow" machine learning models are also reviewed. Finally, guidance pertaining to the clinical deployment of deep learning models in the real world is provided. As in Part I, the focus is on applications of deep learning for computer vision and imaging.
深度学习有可能成为影响骨科手术的最具变革性技术之一。在过去的 5 年中,该领域发生了大量创新,但临床意义上的进展仍然受到临床和技术专家之间脱节的限制。也就是说,可能很少有骨科医生既具备识别骨科问题所需的临床知识,又具备实施基于深度学习的解决方案所需的技术知识。为了最大限度地利用源自深度学习模型的快速发展技术,骨科医生应该了解设计、组织、实施和评估深度学习项目及其工作流程所需的步骤。本三部分社论评论旨在为外科医生提供这方面的知识。第一部分描述了定义问题、团队建设、数据采集、策展、标记和建立基准的过程。在此基础上,本评论(第二部分)提供了有关预处理和增强数据、利用开源库/工具包以及选择实现管道所需的硬件的指导。还回顾了与“浅层”机器学习模型相比,深度学习模型在模型训练和评估方面特有的特殊考虑因素。最后,提供了有关深度学习模型在现实世界中的临床部署的指导。与第一部分一样,重点是深度学习在计算机视觉和成像方面的应用。