Automatic Markerless Registration and Tracking of the Bone for Computer-Assisted Orthopaedic Surgery

To achieve a simple and less invasive registration procedure in computer-assisted orthopaedic surgery, we propose an automatic, markerless registration and tracking method based on depth imaging and deep learning. A depth camera is used to continuously capture RGB and depth images of the exposed bon...

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Bibliographic Details
Main Authors: He Liu, Ferdinando Rodriguez Y Baena
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9018195/
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spelling doaj-d9ca1806e710412785558556322daebc2021-03-30T02:03:09ZengIEEEIEEE Access2169-35362020-01-018420104202010.1109/ACCESS.2020.29770729018195Automatic Markerless Registration and Tracking of the Bone for Computer-Assisted Orthopaedic SurgeryHe Liu0https://orcid.org/0000-0002-7598-8119Ferdinando Rodriguez Y Baena1https://orcid.org/0000-0002-5199-9083Mechatronics in Medicine Laboratory, Imperial College London, London, U.K.Mechatronics in Medicine Laboratory, Imperial College London, London, U.K.To achieve a simple and less invasive registration procedure in computer-assisted orthopaedic surgery, we propose an automatic, markerless registration and tracking method based on depth imaging and deep learning. A depth camera is used to continuously capture RGB and depth images of the exposed bone during surgery, and deep neural networks are trained to first localise the surgical target using the RGB image, then segment the target area of the corresponding depth image, from which the surface geometry of the target bone can be extracted. The extracted surface is then compared to a pre-operative model of the same bone for registration. This process can be performed dynamically during the procedure at a rate of 5-6 Hz, without any need for surgeon intervention or invasive optical markers. Ex vivo registration experiments were performed on a cadaveric knee, and accuracy measurements against an optically tracked ground truth resulted in a mean translational error of 2.74 mm and a mean rotational error of 6.66°. Our results are the first to describe a promising new way to achieve automatic markerless registration and tracking in computer-assisted orthopaedic surgery, demonstrating that truly seamless registration and tracking of the limb is within reach. Our method reduces invasiveness by removing the need for percutaneous markers. The surgeon is also exempted from inserting markers and collecting registration points manually, which contributes to a more efficient surgical workflow and shorter procedure time in the operating room.https://ieeexplore.ieee.org/document/9018195/Computer-assisted orthopaedic surgerydeep learningdepth imagingmarkerless registration
collection DOAJ
language English
format Article
sources DOAJ
author He Liu
Ferdinando Rodriguez Y Baena
spellingShingle He Liu
Ferdinando Rodriguez Y Baena
Automatic Markerless Registration and Tracking of the Bone for Computer-Assisted Orthopaedic Surgery
IEEE Access
Computer-assisted orthopaedic surgery
deep learning
depth imaging
markerless registration
author_facet He Liu
Ferdinando Rodriguez Y Baena
author_sort He Liu
title Automatic Markerless Registration and Tracking of the Bone for Computer-Assisted Orthopaedic Surgery
title_short Automatic Markerless Registration and Tracking of the Bone for Computer-Assisted Orthopaedic Surgery
title_full Automatic Markerless Registration and Tracking of the Bone for Computer-Assisted Orthopaedic Surgery
title_fullStr Automatic Markerless Registration and Tracking of the Bone for Computer-Assisted Orthopaedic Surgery
title_full_unstemmed Automatic Markerless Registration and Tracking of the Bone for Computer-Assisted Orthopaedic Surgery
title_sort automatic markerless registration and tracking of the bone for computer-assisted orthopaedic surgery
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description To achieve a simple and less invasive registration procedure in computer-assisted orthopaedic surgery, we propose an automatic, markerless registration and tracking method based on depth imaging and deep learning. A depth camera is used to continuously capture RGB and depth images of the exposed bone during surgery, and deep neural networks are trained to first localise the surgical target using the RGB image, then segment the target area of the corresponding depth image, from which the surface geometry of the target bone can be extracted. The extracted surface is then compared to a pre-operative model of the same bone for registration. This process can be performed dynamically during the procedure at a rate of 5-6 Hz, without any need for surgeon intervention or invasive optical markers. Ex vivo registration experiments were performed on a cadaveric knee, and accuracy measurements against an optically tracked ground truth resulted in a mean translational error of 2.74 mm and a mean rotational error of 6.66°. Our results are the first to describe a promising new way to achieve automatic markerless registration and tracking in computer-assisted orthopaedic surgery, demonstrating that truly seamless registration and tracking of the limb is within reach. Our method reduces invasiveness by removing the need for percutaneous markers. The surgeon is also exempted from inserting markers and collecting registration points manually, which contributes to a more efficient surgical workflow and shorter procedure time in the operating room.
topic Computer-assisted orthopaedic surgery
deep learning
depth imaging
markerless registration
url https://ieeexplore.ieee.org/document/9018195/
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