Details
Original language | English |
---|---|
Journal | IEEE Transactions on Biomedical Engineering |
Publication status | E-pub ahead of print - 14 May 2025 |
Abstract
Objective: Cochlear implants successfully treat severe to profound hearing loss patients. Patient-specific numerical simulations can yield important insights that could guide surgical planning and the interpretation of post-operative measurements. However, these simulations have a high computational effort. Methods: A non-intrusive reduced-order model has been used to replace the patient-specific model generation and simulation of different electrical stimulation sources, reducing the computational time and enabling fast response simulations. The reduced-order model combines proper orthogonal decomposition with radial basis function interpolation. The dataset used to build the reduced order model consists of 528 different solutions, also referred to as snapshots, from 24 cochlear models, with each cochlea subjected to 22 simulations with varying electrical stimuli. Each simulation is characterized by five parameters, three specifying the cochlea geometry and two specifying the electrode array position and the active electrode. Results: A leave-one-out strategy was used to verify the accuracy of the reduced-order model. The presented approach reduces the time for the patient-specific model generation and simulation from nearly 1.5 hours to less than a second while providing a high accuracy of the solutions with a relative error of 2.5% compared to the finite element solution. Conclusion: The presented non-intrusive reduced order model can predict the 3D intracochlear voltage distribution for new patients and implant positions. Significance: This work demonstrates the feasibility of fast patient-specific simulations. These numerical investigations could support the fitting of cochlear implants, the design of individualized sound coding strategies and surgery-dependent decision-making.
Keywords
- cochlear implant, finite element method, patient-specific simulations, reduced order model
ASJC Scopus subject areas
- Engineering(all)
- Biomedical Engineering
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In: IEEE Transactions on Biomedical Engineering, 14.05.2025.
Research output: Contribution to journal › Article › Research › peer review
}
TY - JOUR
T1 - Non-intrusive reduced order modeling of patient-specific cochlear implantations
AU - Bensel, Fynn
AU - Kipping, Daniel
AU - Reiber, Marlis
AU - Zhang, Yixuan
AU - Nackenhorst, Udo
AU - Nogueira, Waldo
N1 - Publisher Copyright: © 1964-2012 IEEE.
PY - 2025/5/14
Y1 - 2025/5/14
N2 - Objective: Cochlear implants successfully treat severe to profound hearing loss patients. Patient-specific numerical simulations can yield important insights that could guide surgical planning and the interpretation of post-operative measurements. However, these simulations have a high computational effort. Methods: A non-intrusive reduced-order model has been used to replace the patient-specific model generation and simulation of different electrical stimulation sources, reducing the computational time and enabling fast response simulations. The reduced-order model combines proper orthogonal decomposition with radial basis function interpolation. The dataset used to build the reduced order model consists of 528 different solutions, also referred to as snapshots, from 24 cochlear models, with each cochlea subjected to 22 simulations with varying electrical stimuli. Each simulation is characterized by five parameters, three specifying the cochlea geometry and two specifying the electrode array position and the active electrode. Results: A leave-one-out strategy was used to verify the accuracy of the reduced-order model. The presented approach reduces the time for the patient-specific model generation and simulation from nearly 1.5 hours to less than a second while providing a high accuracy of the solutions with a relative error of 2.5% compared to the finite element solution. Conclusion: The presented non-intrusive reduced order model can predict the 3D intracochlear voltage distribution for new patients and implant positions. Significance: This work demonstrates the feasibility of fast patient-specific simulations. These numerical investigations could support the fitting of cochlear implants, the design of individualized sound coding strategies and surgery-dependent decision-making.
AB - Objective: Cochlear implants successfully treat severe to profound hearing loss patients. Patient-specific numerical simulations can yield important insights that could guide surgical planning and the interpretation of post-operative measurements. However, these simulations have a high computational effort. Methods: A non-intrusive reduced-order model has been used to replace the patient-specific model generation and simulation of different electrical stimulation sources, reducing the computational time and enabling fast response simulations. The reduced-order model combines proper orthogonal decomposition with radial basis function interpolation. The dataset used to build the reduced order model consists of 528 different solutions, also referred to as snapshots, from 24 cochlear models, with each cochlea subjected to 22 simulations with varying electrical stimuli. Each simulation is characterized by five parameters, three specifying the cochlea geometry and two specifying the electrode array position and the active electrode. Results: A leave-one-out strategy was used to verify the accuracy of the reduced-order model. The presented approach reduces the time for the patient-specific model generation and simulation from nearly 1.5 hours to less than a second while providing a high accuracy of the solutions with a relative error of 2.5% compared to the finite element solution. Conclusion: The presented non-intrusive reduced order model can predict the 3D intracochlear voltage distribution for new patients and implant positions. Significance: This work demonstrates the feasibility of fast patient-specific simulations. These numerical investigations could support the fitting of cochlear implants, the design of individualized sound coding strategies and surgery-dependent decision-making.
KW - cochlear implant
KW - finite element method
KW - patient-specific simulations
KW - reduced order model
UR - http://www.scopus.com/inward/record.url?scp=105005167093&partnerID=8YFLogxK
U2 - 10.1109/TBME.2025.3568593
DO - 10.1109/TBME.2025.3568593
M3 - Article
AN - SCOPUS:105005167093
JO - IEEE Transactions on Biomedical Engineering
JF - IEEE Transactions on Biomedical Engineering
SN - 0018-9294
ER -