Artificial intelligence–based three-dimensional templating for total joint arthroplasty planning: a scoping review

Purpose The purpose of this review is to evaluate the current status of research on the application of artificial intelligence (AI)–based three-dimensional (3D) templating in preoperative planning of total joint arthroplasty. Methods This scoping review followed the PRISMA, PRISMA-ScR guidelines, an...

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Veröffentlicht in:International orthopaedics 2024-04, Vol.48 (4), p.997-1010
Hauptverfasser: Velasquez Garcia, Ausberto, Bukowiec, Lainey G., Yang, Linjun, Nishikawa, Hiroki, Fitzsimmons, James S., Larson, A. Noelle, Taunton, Michael J., Sanchez-Sotelo, Joaquin, O’Driscoll, Shawn W., Wyles, Cody C.
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Sprache:eng
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Zusammenfassung:Purpose The purpose of this review is to evaluate the current status of research on the application of artificial intelligence (AI)–based three-dimensional (3D) templating in preoperative planning of total joint arthroplasty. Methods This scoping review followed the PRISMA, PRISMA-ScR guidelines, and five stage methodological framework for scoping reviews. Studies of patients undergoing primary or revision joint arthroplasty surgery that utilised AI-based 3D templating for surgical planning were included. Outcome measures included dataset and model development characteristics, AI performance metrics, and time performance. After AI-based 3D planning, the accuracy of component size and placement estimation and postoperative outcome data were collected. Results Nine studies satisfied inclusion criteria including a focus on computed tomography (CT) or magnetic resonance imaging (MRI)–based AI templating for use in hip or knee arthroplasty. AI-based 3D templating systems reduced surgical planning time and improved implant size/position and imaging feature estimation compared to conventional radiographic templating. Several components of data processing and model development and testing were insufficiently covered in the studies included in this scoping review. Conclusions AI-based 3D templating systems have the potential to improve preoperative planning for joint arthroplasty surgery. This technology offers more accurate and personalized preoperative planning, which has potential to improve functional outcomes for patients. However, deficiencies in several key areas, including data handling, model development, and testing, can potentially hinder the reproducibility and reliability of the methods proposed. As such, further research is needed to definitively evaluate the efficacy and feasibility of these systems.
ISSN:0341-2695
1432-5195
1432-5195
DOI:10.1007/s00264-024-06088-6