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

Author:

Oeding Jacob F.12ORCID,Yang Linjun3,Sanchez‐Sotelo Joaquin4,Camp Christopher L.4,Karlsson Jón5,Samuelsson Kristian5,Pearle Andrew D.6,Ranawat Anil S.6,Kelly Bryan T.6,Pareek Ayoosh6

Affiliation:

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

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

3. Orthopedic Surgery Artificial Intelligence Laboratory (OSAIL), Department of Orthopedic Surgery, Mayo Clinic Rochester Minnesota USA

4. Department of Orthopedic Surgery, Mayo Clinic Rochester Minnesota USA

5. Department of Orthopaedics, Sahlgrenska University Hospital, Sahlgrenska Academy Gothenburg University Gothenburg Sweden

6. Sports Medicine and Shoulder Service, Hospital for Special Surgery New York New York USA

Abstract

AbstractDeep 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.

Publisher

Wiley

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