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Erschienen in: Knee Surgery, Sports Traumatology, Arthroscopy 2/2023

24.11.2022 | Review

A practical guide to the development and deployment of deep learning models for the Orthopedic surgeon: part I

verfasst von: Jacob F. Oeding, Riley J. Williams, Benedict U. Nwachukwu, R. Kyle Martin, Bryan T. Kelly, Jón Karlsson, Christopher L. Camp, Andrew D. Pearle, Anil S. Ranawat, Ayoosh Pareek

Erschienen in: Knee Surgery, Sports Traumatology, Arthroscopy | Ausgabe 2/2023

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Abstract

Deep learning has a profound impact on daily life. As Orthopedics makes use of this rapid escalation in technology, Orthopedic surgeons will need to take leadership roles on deep learning projects. Moreover, surgeons must possess an understanding of what is necessary to design and implement deep learning-based project pipelines. This review provides a practical guide for the Orthopedic surgeon to understand the steps needed to design, develop, and deploy a deep learning pipeline for clinical applications. A detailed description of the processes involved in defining the problem, building the team, acquiring and curating the data, labeling the data, establishing the ground truth, pre-processing and augmenting the data, and selecting the required hardware is provided. In addition, an overview of unique considerations involved in the training and evaluation of deep learning models is provided. This review strives to provide surgeons with the groundwork needed to identify gaps in the clinical landscape that deep learning models may be able to fill and equips them with the knowledge needed to lead an interdisciplinary team through the process of creating novel deep-learning-based solutions to fill those gaps.
Literatur
2.
Zurück zum Zitat Aryanto KY, Oudkerk M, van Ooijen PM (2015) Free DICOM de-identification tools in clinical research: functioning and safety of patient privacy. Eur Radiol 25:3685–3695CrossRef Aryanto KY, Oudkerk M, van Ooijen PM (2015) Free DICOM de-identification tools in clinical research: functioning and safety of patient privacy. Eur Radiol 25:3685–3695CrossRef
3.
Zurück zum Zitat Chaudhari AS, Kogan F, Pedoia V, Majumdar S, Gold GE, Hargreaves BA (2020) Rapid knee MRI acquisition and analysis techniques for imaging osteoarthritis. J Magn Reson Imaging 52:1321–1339CrossRef Chaudhari AS, Kogan F, Pedoia V, Majumdar S, Gold GE, Hargreaves BA (2020) Rapid knee MRI acquisition and analysis techniques for imaging osteoarthritis. J Magn Reson Imaging 52:1321–1339CrossRef
4.
Zurück zum Zitat de Mello RAF, Ma YJ, Ashir A, Jerban S, Hoenecke H, Carl M et al (2020) Three-dimensional zero echo time magnetic resonance imaging versus 3-dimensional computed tomography for glenoid bone assessment. Arthroscopy 36:2391–2400CrossRef de Mello RAF, Ma YJ, Ashir A, Jerban S, Hoenecke H, Carl M et al (2020) Three-dimensional zero echo time magnetic resonance imaging versus 3-dimensional computed tomography for glenoid bone assessment. Arthroscopy 36:2391–2400CrossRef
7.
Zurück zum Zitat Goodfellow I, Bengio Y, Courville A. 2016 Deep Learning. MIT Press. Goodfellow I, Bengio Y, Courville A. 2016 Deep Learning. MIT Press.
9.
Zurück zum Zitat Hill BG, Krogue JD, Jevsevar DS, Schilling PL (2022) Deep learning and imaging for the orthopaedic surgeon: how machines “read” radiographs. J Bone Joint Surg Am 104:1675–1686CrossRef Hill BG, Krogue JD, Jevsevar DS, Schilling PL (2022) Deep learning and imaging for the orthopaedic surgeon: how machines “read” radiographs. J Bone Joint Surg Am 104:1675–1686CrossRef
10.
Zurück zum Zitat Horng MH, Kuok CP, Fu MJ, Lin CJ, Sun YN (2019) Cobb Angle Measurement of spine from X-ray images using convolutional neural network. Comput Math Methods Med 2019:6357171CrossRef Horng MH, Kuok CP, Fu MJ, Lin CJ, Sun YN (2019) Cobb Angle Measurement of spine from X-ray images using convolutional neural network. Comput Math Methods Med 2019:6357171CrossRef
13.
Zurück zum Zitat Karnuta JM, Haeberle HS, Luu BC, Roth AL, Molloy RM, Nystrom LM et al (2021) Artificial intelligence to identify arthroplasty implants from radiographs of the hip. J Arthroplasty 36:S290–S294CrossRef Karnuta JM, Haeberle HS, Luu BC, Roth AL, Molloy RM, Nystrom LM et al (2021) Artificial intelligence to identify arthroplasty implants from radiographs of the hip. J Arthroplasty 36:S290–S294CrossRef
14.
Zurück zum Zitat Kijowski R, Liu F, Caliva F, Pedoia V (2020) Deep learning for lesion detection, progression, and prediction of musculoskeletal disease. J Magn Reson Imaging 52:1607–1619CrossRef Kijowski R, Liu F, Caliva F, Pedoia V (2020) Deep learning for lesion detection, progression, and prediction of musculoskeletal disease. J Magn Reson Imaging 52:1607–1619CrossRef
15.
Zurück zum Zitat Ko S, Pareek A, Ro DH, Lu Y, Camp CL, Martin RK et al (2022) Artificial intelligence in orthopedics: three strategies for deep learning with orthopedic specific imaging. Knee Surg Sports Traumatol Arthrosc 30:758–761CrossRef Ko S, Pareek A, Ro DH, Lu Y, Camp CL, Martin RK et al (2022) Artificial intelligence in orthopedics: three strategies for deep learning with orthopedic specific imaging. Knee Surg Sports Traumatol Arthrosc 30:758–761CrossRef
16.
Zurück zum Zitat Krogue JD, Cheng KV, Hwang KM, Toogood P, Meinberg EG, Geiger EJ et al (2020) Automatic hip fracture identification and functional subclassification with deep learning. Radiol Artif Intell 2:e190023CrossRef Krogue JD, Cheng KV, Hwang KM, Toogood P, Meinberg EG, Geiger EJ et al (2020) Automatic hip fracture identification and functional subclassification with deep learning. Radiol Artif Intell 2:e190023CrossRef
17.
Zurück zum Zitat Lansdown DA, Cvetanovich GL, Verma NN, Cole BJ, Bach BR, Nicholson G et al (2019) Automated 3-dimensional magnetic resonance imaging allows for accurate evaluation of glenoid bone loss compared with 3-dimensional computed tomography. Arthroscopy 35:734–740CrossRef Lansdown DA, Cvetanovich GL, Verma NN, Cole BJ, Bach BR, Nicholson G et al (2019) Automated 3-dimensional magnetic resonance imaging allows for accurate evaluation of glenoid bone loss compared with 3-dimensional computed tomography. Arthroscopy 35:734–740CrossRef
18.
Zurück zum Zitat Lindsey R, Daluiski A, Chopra S, Lachapelle A, Mozer M, Sicular S et al (2018) Deep neural network improves fracture detection by clinicians. Proc Natl Acad Sci USA 115:11591–11596CrossRef Lindsey R, Daluiski A, Chopra S, Lachapelle A, Mozer M, Sicular S et al (2018) Deep neural network improves fracture detection by clinicians. Proc Natl Acad Sci USA 115:11591–11596CrossRef
20.
Zurück zum Zitat Miotto R, Wang F, Wang S, Jiang X, Dudley JT (2018) Deep learning for healthcare: review, opportunities and challenges. Brief Bioinform 19:1236–1246CrossRef Miotto R, Wang F, Wang S, Jiang X, Dudley JT (2018) Deep learning for healthcare: review, opportunities and challenges. Brief Bioinform 19:1236–1246CrossRef
21.
Zurück zum Zitat Norman B, Pedoia V, Noworolski A, Link TM, Majumdar S (2019) Applying densely connected convolutional neural networks for staging osteoarthritis severity from plain radiographs. J Digit Imaging 32:471–477CrossRef Norman B, Pedoia V, Noworolski A, Link TM, Majumdar S (2019) Applying densely connected convolutional neural networks for staging osteoarthritis severity from plain radiographs. J Digit Imaging 32:471–477CrossRef
22.
Zurück zum Zitat Pesapane F, Volonté C, Codari M, Sardanelli F (2018) Artificial intelligence as a medical device in radiology: ethical and regulatory issues in Europe and the United States. Insights Imaging 9:745–753CrossRef Pesapane F, Volonté C, Codari M, Sardanelli F (2018) Artificial intelligence as a medical device in radiology: ethical and regulatory issues in Europe and the United States. Insights Imaging 9:745–753CrossRef
25.
Zurück zum Zitat Rouzrokh P, Khosravi B, Johnson QJ, Faghani S, Vera Garcia DV, Erickson BJ et al (2022) Applying deep learning to establish a total hip arthroplasty radiography registry: a stepwise approach. J Bone Joint Surg Am 104:1649–1658CrossRef Rouzrokh P, Khosravi B, Johnson QJ, Faghani S, Vera Garcia DV, Erickson BJ et al (2022) Applying deep learning to establish a total hip arthroplasty radiography registry: a stepwise approach. J Bone Joint Surg Am 104:1649–1658CrossRef
26.
Zurück zum Zitat Shah RF, Bini SA, Martinez AM, Pedoia V, Vail TP (2020) Incremental inputs improve the automated detection of implant loosening using machine-learning algorithms. Bone Joint J. 102-B:101–106CrossRef Shah RF, Bini SA, Martinez AM, Pedoia V, Vail TP (2020) Incremental inputs improve the automated detection of implant loosening using machine-learning algorithms. Bone Joint J. 102-B:101–106CrossRef
28.
Zurück zum Zitat Wolf I, Vetter M, Wegner I, Böttger T, Nolden M, Schöbinger M et al (2005) The medical imaging interaction toolkit. Med Image Anal 9:594–604CrossRef Wolf I, Vetter M, Wegner I, Böttger T, Nolden M, Schöbinger M et al (2005) The medical imaging interaction toolkit. Med Image Anal 9:594–604CrossRef
30.
Zurück zum Zitat Zheng Q, Shellikeri S, Huang H, Hwang M, Sze RW (2020) Deep learning measurement of leg length discrepancy in children based on radiographs. Radiology 296:152–158CrossRef Zheng Q, Shellikeri S, Huang H, Hwang M, Sze RW (2020) Deep learning measurement of leg length discrepancy in children based on radiographs. Radiology 296:152–158CrossRef
Metadaten
Titel
A practical guide to the development and deployment of deep learning models for the Orthopedic surgeon: part I
verfasst von
Jacob F. Oeding
Riley J. Williams
Benedict U. Nwachukwu
R. Kyle Martin
Bryan T. Kelly
Jón Karlsson
Christopher L. Camp
Andrew D. Pearle
Anil S. Ranawat
Ayoosh Pareek
Publikationsdatum
24.11.2022
Verlag
Springer Berlin Heidelberg
Erschienen in
Knee Surgery, Sports Traumatology, Arthroscopy / Ausgabe 2/2023
Print ISSN: 0942-2056
Elektronische ISSN: 1433-7347
DOI
https://doi.org/10.1007/s00167-022-07239-1

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