2205 Development and Dynamic Validation of Human Pelvis FE Model by applying Human Pelvic and Sacral Bone Material Property from CT Scans

2005 ◽  
Vol 2005.18 (0) ◽  
pp. 233-234
Author(s):  
Cheolwoong KO ◽  
Atsuhiro KONOSU ◽  
Yukihiro YUKITA ◽  
Jiro SAKAMOTO
Author(s):  
Kazunori FURUKAWA ◽  
Sota YAMAMOTO ◽  
Koji MIZUNO ◽  
Eiichi TANAKA ◽  
Isao WATANABE ◽  
...  

2010 ◽  
Vol 44-47 ◽  
pp. 1612-1616
Author(s):  
Xiao Hui Huang ◽  
Guo Qun Zhao ◽  
Wen Guang Liu ◽  
Pei Lai Liu

The frameworks for finite element (FE) model of bone tissue available in pervious literatures, to some extent, are expert-oriented and give rise to a considerable deviation in geometric model and assignment of material property. The objective of this study is to develop a new framework to reconstruct accurate individual bone FE model based on CT images rapidly and conveniently. In image-processing, automatic segmentation of the region of interest (ROIs) improves the efficiency. The idea of enclosed volume of interest (VOI) overcomes the drawback of geometric ambiguity in Marching Cube (MC) method. Geometric model is easily obtained by a STL translator and smooth operator in home-made program. In the material property assignment, two templates for hexahedron and tetrahedron FE models, respectively, are put forth to smoothing an abrupt change of material property in the region from cortical to cancellous. K-mean algorithm is introduced to cluster material properties to improve partition performance. Finally, the new framework is demonstrated by the implementation of a femoral FE model.


Author(s):  
Cheolwoong KO ◽  
Atsuhiro KONOSU ◽  
Yukihiro YUKITA ◽  
Jiro SAKAMOTO
Keyword(s):  
Ct Scans ◽  
Fe Model ◽  

2016 ◽  
Vol 35 (1) ◽  
pp. 160-166 ◽  
Author(s):  
Ryan J. Hoel ◽  
Charles G. T. Ledonio ◽  
Takashi Takahashi ◽  
David W. Polly

2008 ◽  
Vol 130 (3) ◽  
Author(s):  
Hans A. Gray ◽  
Fulvia Taddei ◽  
Amy B. Zavatsky ◽  
Luca Cristofolini ◽  
Harinderjit S Gill

Finite element (FE) models of long bones are widely used to analyze implant designs. Experimental validation has been used to examine the accuracy of FE models of cadaveric femurs; however, although convergence tests have been carried out, no FE models of an intact and implanted human cadaveric tibia have been validated using a range of experimental loading conditions. The aim of the current study was to create FE models of a human cadaveric tibia, both intact and implanted with a unicompartmental knee replacement, and to validate the models against results obtained from a comprehensive set of experiments. Seventeen strain rosettes were attached to a human cadaveric tibia. Surface strains and displacements were measured under 17 loading conditions, which consisted of axial, torsional, and bending loads. The tibia was tested both before and after implantation of the knee replacement. FE models were created based on computed tomography (CT) scans of the cadaveric tibia. The models consisted of ten-node tetrahedral elements and used 600 material properties derived from the CT scans. The experiments were simulated on the models and the results compared to experimental results. Experimental strain measurements were highly repeatable and the measured stiffnesses compared well to published results. For the intact tibia under axial loading, the regression line through a plot of strains predicted by the FE model versus experimentally measured strains had a slope of 1.15, an intercept of 5.5 microstrain, and an R2 value of 0.98. For the implanted tibia, the comparable regression line had a slope of 1.25, an intercept of 12.3 microstrain, and an R2 value of 0.97. The root mean square errors were 6.0% and 8.8% for the intact and implanted models under axial loads, respectively. The model produced by the current study provides a tool for simulating mechanical test conditions on a human tibia. This has considerable value in reducing the costs of physical testing by pre-selecting the most appropriate test conditions or most favorable prosthetic designs for final mechanical testing. It can also be used to gain insight into the results of physical testing, by allowing the prediction of those variables difficult or impossible to measure directly.


2016 ◽  
Vol 6 (1_suppl) ◽  
pp. s-0036-1583110-s-0036-1583110 ◽  
Author(s):  
Ryan Hoel ◽  
Charles Ledonio ◽  
David W. Polly

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