TY - JOUR
T1 - Instantaneous Generation of Subject-Specific Finite Element Models of the Hip Capsule
AU - Anantha-Krishnan, Ahilan
AU - Myers, Casey A.
AU - Fitzpatrick, Clare K.
AU - Clary, Chadd W.
N1 - Publisher Copyright:
© 2023 by the authors.
PY - 2024/1/1
Y1 - 2024/1/1
N2 - Subject-specific hip capsule models could offer insights into impingement and dislocation risk when coupled with computer-aided surgery, but model calibration is time-consuming using traditional techniques. This study developed a framework for instantaneously generating subject-specific finite element (FE) capsule representations from regression models trained with a probabilistic approach. A validated FE model of the implanted hip capsule was evaluated probabilistically to generate a training dataset relating capsule geometry and material properties to hip laxity. Multivariate regression models were trained using 90% of trials to predict capsule properties based on hip laxity and attachment site information. The regression models were validated using the remaining 10% of the training set by comparing differences in hip laxity between the original trials and the regression-derived capsules. Root mean square errors (RMSEs) in laxity predictions ranged from 1.8° to 2.3°, depending on the type of laxity used in the training set. The RMSE, when predicting the laxity measured from five cadaveric specimens with total hip arthroplasty, was 4.5°. Model generation time was reduced from days to milliseconds. The results demonstrated the potential of regression-based training to instantaneously generate subject-specific FE models and have implications for integrating subject-specific capsule models into surgical planning software.
AB - Subject-specific hip capsule models could offer insights into impingement and dislocation risk when coupled with computer-aided surgery, but model calibration is time-consuming using traditional techniques. This study developed a framework for instantaneously generating subject-specific finite element (FE) capsule representations from regression models trained with a probabilistic approach. A validated FE model of the implanted hip capsule was evaluated probabilistically to generate a training dataset relating capsule geometry and material properties to hip laxity. Multivariate regression models were trained using 90% of trials to predict capsule properties based on hip laxity and attachment site information. The regression models were validated using the remaining 10% of the training set by comparing differences in hip laxity between the original trials and the regression-derived capsules. Root mean square errors (RMSEs) in laxity predictions ranged from 1.8° to 2.3°, depending on the type of laxity used in the training set. The RMSE, when predicting the laxity measured from five cadaveric specimens with total hip arthroplasty, was 4.5°. Model generation time was reduced from days to milliseconds. The results demonstrated the potential of regression-based training to instantaneously generate subject-specific FE models and have implications for integrating subject-specific capsule models into surgical planning software.
KW - hip capsule
KW - statistical shape model
KW - subject-specific models
KW - surrogate modeling
KW - total hip arthroplasty
UR - https://scholarworks.boisestate.edu/mecheng_facpubs/200
UR - http://www.scopus.com/inward/record.url?scp=85183115172&partnerID=8YFLogxK
U2 - 10.3390/bioengineering11010037
DO - 10.3390/bioengineering11010037
M3 - Article
VL - 11
JO - Bioengineering
JF - Bioengineering
IS - 1
M1 - 37
ER -