The goals of this research are to develop and evaluate new patient-customized, Image-Guided Cochlear Implant Programming (IGCIP) strategies. With over 320,000 recipients worldwide, cochlear implants (CIs) are considered standard of care treatment for severe-to-profound sensory-based hearing loss. The programming process that audiologists use clinically is one factor that limits outcomes because, while existing devices permit manipulation of very many settings that could lead to better performance, there are no objective cues available to indicate what setting changes will lead to better performance. Any advancement that accelerates convergence to settings that better approximate natural fidelity could have significant impact for CI recipients, clinicians, and audiology centers. The goal of this project is to develop and evaluate new IGCIP strategies that could provide object information to the programming process and lead to programs that better approximate natural fidelity. In natural hearing, each neural fiber (out of ~30,000) is activated when its characteristic frequency (CF) is present in a sound. With a CI, due to the small number of electrodes (12 to 22), their large size relative to the individual nerves, and their wide curren spread, limited spectral resolution has been achievable, thus each electrode stimulates nerves corresponding to a wide range of CFs. Since this is generally not accounted for in traditional programming, sub-optimal settings are typically chosen that result in interacting channels, causing spectral smearing artifacts. Further, since the stimulation patterns of the electrodes are unknown, the CFs stimulated by each electrode are unknown. Thus the sound frequencies assigned to each electrode do not generally correspond to the CFs of the nerves it stimulates, resulting in frequency mismatch artifacts. These limitations negatively affect outcomes and, while known, have been difficult to address. The hypothesis of this study is that more objective, important information can be obtained through analysis of patient CT images and can be used to customize CI settings for improved hearing performance. The IGCIP strategies that will be tested will involve using imaging to detect where spectral smearing and frequency mismatching is occurring and to minimize these artifacts through selection of patient-customized program settings, including frequency table settings, current steering settings, and current focusing settings. To support the design of IGCIP strategies, an approach for using patient CT images to create patient-specific, comprehensive models of electrical current flow and the CI's neural activation patterns will also be developed. Since IGCIP strategies require only simple changes of CI settings, they work with existing device technology, do not require further surgery, and are reversible. If successful, a suite of IGCIP techniques that can objectively guide the programming of CIs towards optimized settings and improve hearing restoration for new and existing CI recipients will be developed in this project.

Public Health Relevance

The proposed project involves developing cochlear implant programming-assistance systems that could provide useful information to clinicians and lead to better device settings. Thus, the methods developed in this project could potentially be used to improve hearing outcomes for new and existing cochlear implant recipients and improve the efficiency of the clinical programming process.

Agency
National Institute of Health (NIH)
Institute
National Institute on Deafness and Other Communication Disorders (NIDCD)
Type
Research Project (R01)
Project #
5R01DC014037-05
Application #
9485924
Study Section
Bioengineering of Neuroscience, Vision and Low Vision Technologies Study Section (BNVT)
Program Officer
Miller, Roger
Project Start
2014-06-01
Project End
2019-05-31
Budget Start
2018-06-01
Budget End
2019-05-31
Support Year
5
Fiscal Year
2018
Total Cost
Indirect Cost
Name
Vanderbilt University Medical Center
Department
Engineering (All Types)
Type
Biomed Engr/Col Engr/Engr Sta
DUNS #
965717143
City
Nashville
State
TN
Country
United States
Zip Code
37240
Gifford, René H; Noble, Jack H; Camarata, Stephen M et al. (2018) The Relationship Between Spectral Modulation Detection and Speech Recognition: Adult Versus Pediatric Cochlear Implant Recipients. Trends Hear 22:2331216518771176
Zhang, Dongqing; Zhao, Yiyuan; Noble, Jack H et al. (2018) Selecting electrode configurations for image-guided cochlear implant programming using template matching. J Med Imaging (Bellingham) 5:021202
Koka, Kanthaiah; Riggs, William Jason; Dwyer, Robert et al. (2018) Intra-Cochlear Electrocochleography During Cochear Implant Electrode Insertion Is Predictive of Final Scalar Location. Otol Neurotol 39:e654-e659
Zhang, Dongqing; Liu, Yuan; Noble, Jack H et al. (2017) Localizing landmark sets in head CTs using random forests and a heuristic search algorithm for registration initialization. J Med Imaging (Bellingham) 4:044007
McRackan, Theodore R; Noble, Jack H; Wilkinson, Eric P et al. (2017) Implementation of Image-Guided Cochlear Implant Programming at a Distant Site. Otolaryngol Head Neck Surg 156:933-937
O'Connell, Brendan P; Hunter, Jacob B; Haynes, David S et al. (2017) Insertion depth impacts speech perception and hearing preservation for lateral wall electrodes. Laryngoscope 127:2352-2357
Cakir, Ahmet; Dwyer, Robert T; Noble, Jack H (2017) Evaluation of a high-resolution patient-specific model of the electrically stimulated cochlea. J Med Imaging (Bellingham) 4:025003
Wang, Jianing; Dawant, Benoit M; Labadie, Robert F et al. (2017) Retrospective Evaluation of a Technique for Patient-Customized Placement of Precurved Cochlear Implant Electrode Arrays. Otolaryngol Head Neck Surg 157:107-112
O'Connell, Brendan P; Holder, Jourdan T; Dwyer, Robert T et al. (2017) Intra- and Postoperative Electrocochleography May Be Predictive of Final Electrode Position and Postoperative Hearing Preservation. Front Neurosci 11:291
Chakravorti, Srijata; Bussey, Brian J; Zhao, Yiyuan et al. (2017) Cochlear implant phantom for evaluating computed tomography acquisition parameters. J Med Imaging (Bellingham) 4:045002

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