DocumentCode
952972
Title
Accurate and Robust Reconstruction of a Surface Model of the Proximal Femur From Sparse-Point Data and a Dense-Point Distribution Model for Surgical Navigation
Author
Zheng, Guoyan ; Dong, Xiao ; Rajamani, Kumar T. ; Zhang, Xuan ; Styner, Martin ; Thoranaghatte, Ramesh U. ; Nolte, Lutz-Peter ; Ballester, Miguel A González
Author_Institution
Bern Univ., Bern
Volume
54
Issue
12
fYear
2007
Firstpage
2109
Lastpage
2122
Abstract
Constructing a 3D surface model from sparse-point data is a nontrivial task. Here, we report an accurate and robust approach for reconstructing a surface model of the proximal femur from sparse-point data and a dense-point distribution model (DPDM). The problem is formulated as a three-stage optimal estimation process. The first stage, affine registration, is to iteratively estimate a scale and a rigid transformation between the mean surface model of the DPDM and the sparse input points. The estimation results of the first stage are used to establish point correspondences for the second stage, statistical instantiation, which stably instantiates a surface model from the DPDM using a statistical approach. This surface model is then fed to the third stage, kernel-based deformation, which further refines the surface model. Handling outliers is achieved by consistently employing the least trimmed squares (LTS) approach with a roughly estimated outlier rate in all three stages. If an optimal value of the outlier rate is preferred, we propose a hypothesis testing procedure to automatically estimate it. We present here our validations using four experiments, which include 1 leave-one-out experiment, 2 experiment on evaluating the present approach for handling pathology, 3 experiment on evaluating the present approach for handling outliers, and 4 experiment on reconstructing surface models of seven dry cadaver femurs using clinically relevant data without noise and with noise added. Our validation results demonstrate the robust performance of the present approach in handling outliers, pathology, and noise. An average 95-percentile error of 1.7-2.3 mm was found when the present approach was used to reconstruct surface models of the cadaver femurs from sparse-point data with noise added.
Keywords
bone; computerised tomography; deformation; image reconstruction; image registration; iterative methods; least squares approximations; medical image processing; navigation; orthopaedics; statistical analysis; surgery; CT volumes; computed tomography; dense-point distribution model; enhanced visualization; hip surfacing surgery; image guidance; image registration; iterative estimation; kernel-based deformation; least trimmed squares approach; proximal femur; sparse-point data; statistical approach; surface reconstruction model; surgical navigation; three-stage optimal estimation process; Automatic testing; Cadaver; Deformable models; Navigation; Pathology; Robustness; Rough surfaces; Surface reconstruction; Surface roughness; Surgery; Deformation; deformation; dense point distribution model; dense-point distribution model (DPDM); proximal femur; robustness; statistical instantiation; Algorithms; Cadaver; Computer Simulation; Femur Head; Humans; Models, Biological; Models, Statistical; Radiographic Image Enhancement; Radiographic Image Interpretation, Computer-Assisted; Sample Size; Statistical Distributions; Surgery, Computer-Assisted; Tomography, X-Ray Computed;
fLanguage
English
Journal_Title
Biomedical Engineering, IEEE Transactions on
Publisher
ieee
ISSN
0018-9294
Type
jour
DOI
10.1109/TBME.2007.895736
Filename
4359991
Link To Document