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骨科医师深度学习模型的开发与应用实用指南:第三部分,重点关注注册创建、诊断和数据隐私。

A practical guide to the development and deployment of deep learning models for the orthopaedic surgeon: Part III, focus on registry creation, diagnosis, and data privacy.

机构信息

School of Medicine, Mayo Clinic Alix School of Medicine, Rochester, Minnesota, USA.

Department of Orthopaedics, Institute of Clinical Sciences, The Sahlgrenska Academy, University of Gothenburg, Gothenburg, Sweden.

出版信息

Knee Surg Sports Traumatol Arthrosc. 2024 Mar;32(3):518-528. doi: 10.1002/ksa.12085. Epub 2024 Mar 1.

Abstract

Deep learning is a subset of artificial intelligence (AI) with enormous potential to transform orthopaedic surgery. As has already become evident with the deployment of Large Language Models (LLMs) like ChatGPT (OpenAI Inc.), deep learning can rapidly enter clinical and surgical practices. As such, it is imperative that orthopaedic surgeons acquire a deeper understanding of the technical terminology, capabilities and limitations associated with deep learning models. The focus of this series thus far has been providing surgeons with an overview of the steps needed to implement a deep learning-based pipeline, emphasizing some of the important technical details for surgeons to understand as they encounter, evaluate or lead deep learning projects. However, this series would be remiss without providing practical examples of how deep learning models have begun to be deployed and highlighting the areas where the authors feel deep learning may have the most profound potential. While computer vision applications of deep learning were the focus of Parts I and II, due to the enormous impact that natural language processing (NLP) has had in recent months, NLP-based deep learning models are also discussed in this final part of the series. In this review, three applications that the authors believe can be impacted the most by deep learning but with which many surgeons may not be familiar are discussed: (1) registry construction, (2) diagnostic AI and (3) data privacy. Deep learning-based registry construction will be essential for the development of more impactful clinical applications, with diagnostic AI being one of those applications likely to augment clinical decision-making in the near future. As the applications of deep learning continue to grow, the protection of patient information will become increasingly essential; as such, applications of deep learning to enhance data privacy are likely to become more important than ever before. Level of Evidence: Level IV.

摘要

深度学习是人工智能(AI)的一个分支,具有极大的潜力来改变矫形外科。随着 ChatGPT(OpenAI Inc.)等大型语言模型(LLM)的部署已经变得明显,深度学习可以迅速进入临床和手术实践。因此,矫形外科医生必须更深入地了解与深度学习模型相关的技术术语、功能和局限性。本系列迄今为止的重点一直是为外科医生提供实施基于深度学习的管道所需的步骤概述,强调了外科医生在遇到、评估或领导深度学习项目时需要理解的一些重要技术细节。然而,如果本系列不提供深度学习模型已经开始部署的实际示例,并强调作者认为深度学习最有潜力的领域,那么它将是不完整的。虽然深度学习的计算机视觉应用是第 I 部分和第 II 部分的重点,但由于自然语言处理(NLP)在最近几个月产生了巨大影响,因此本系列的最后一部分也讨论了基于 NLP 的深度学习模型。在这篇综述中,作者讨论了三个他们认为最受深度学习影响但许多外科医生可能不熟悉的应用:(1)注册构建,(2)诊断 AI,(3)数据隐私。基于深度学习的注册构建对于开发更具影响力的临床应用至关重要,而诊断 AI 是那些可能在不久的将来增强临床决策的应用之一。随着深度学习的应用不断发展,保护患者信息将变得越来越重要;因此,应用深度学习来增强数据隐私可能比以往任何时候都更加重要。证据水平:IV 级。

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