TY - JOUR
T1 - A practical guide to the development and deployment of deep learning models for the orthopedic surgeon
T2 - part II
AU - Oeding, Jacob F.
AU - Williams, Riley J.
AU - Camp, Christopher L.
AU - Sanchez-Sotelo, Joaquin
AU - Kelly, Bryan T.
AU - Nawabi, Danyal H.
AU - Karlsson, Jón
AU - Pearle, Andrew D.
AU - Martin, R. Kyle
AU - Jang, Seong J.
AU - Pareek, Ayoosh
N1 - Publisher Copyright:
© 2023, The Author(s) under exclusive licence to European Society of Sports Traumatology, Knee Surgery, Arthroscopy (ESSKA).
PY - 2023/5
Y1 - 2023/5
N2 - 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.
AB - 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.
KW - AI
KW - Artificial intelligence
KW - Deep learning
KW - Imaging
KW - Machine learning
KW - Model deployment
KW - Unsupervised learning
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UR - http://www.scopus.com/inward/citedby.url?scp=85147749553&partnerID=8YFLogxK
U2 - 10.1007/s00167-023-07338-7
DO - 10.1007/s00167-023-07338-7
M3 - Review article
C2 - 36773057
AN - SCOPUS:85147749553
SN - 0942-2056
VL - 31
SP - 1635
EP - 1643
JO - Knee Surgery, Sports Traumatology, Arthroscopy
JF - Knee Surgery, Sports Traumatology, Arthroscopy
IS - 5
ER -