Enhanced Knee Kinematics: Leveraging Deep Learning and Morphing Algorithms for 3D Implant Modeling
Viet-Dung Nguyen, Michael T. LaCour, Richard D. Komistek

TL;DR
This paper introduces a machine learning and morphing-based method for automatic, accurate 3D reconstruction of implanted knee models from medical images, improving preoperative planning and implant analysis.
Contribution
It presents a novel automated framework combining CNN segmentation and morphing algorithms for personalized knee implant modeling, outperforming manual methods.
Findings
CNN segmentation achieved an average RMS error of 0.58 mm.
The method demonstrated superior accuracy over manual segmentation.
Quantitative evaluations confirmed the robustness of the approach.
Abstract
Accurate reconstruction of implanted knee models is crucial in orthopedic surgery and biomedical engineering, enhancing preoperative planning, optimizing implant design, and improving surgical outcomes. Traditional methods rely on labor-intensive and error-prone manual segmentation. This study proposes a novel approach using machine learning (ML) algorithms and morphing techniques for precise 3D reconstruction of implanted knee models. The methodology begins with acquiring preoperative imaging data, such as fluoroscopy or X-ray images of the patient's knee joint. A convolutional neural network (CNN) is then trained to automatically segment the femur contour of the implanted components, significantly reducing manual effort and ensuring high accuracy. Following segmentation, a morphing algorithm generates a personalized 3D model of the implanted knee joint, using the segmented data…
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Taxonomy
TopicsTotal Knee Arthroplasty Outcomes · Prosthetics and Rehabilitation Robotics · Orthopedic Infections and Treatments
