Literature DB >> 17485986

Using genetic algorithms with subjective input from human subjects: implications for fitting hearing aids and cochlear implants.

Deniz Başkent1, Cheryl L Eiler, Brent Edwards.   

Abstract

OBJECTIVE: To present a comprehensive analysis of the feasibility of genetic algorithms (GA) for finding the best fit of hearing aids or cochlear implants for individual users in clinical or research settings, where the algorithm is solely driven by subjective human input.
DESIGN: Due to varying pathology, the best settings of an auditory device differ for each user. It is also likely that listening preferences vary at the same time. The settings of a device customized for a particular user can only be evaluated by the user. When optimization algorithms are used for fitting purposes, this situation poses a difficulty for a systematic and quantitative evaluation of the suitability of the fitting parameters produced by the algorithm. In the present study, an artificial listening environment was generated by distorting speech using a noiseband vocoder. The settings produced by the GA for this listening problem could objectively be evaluated by measuring speech recognition and comparing the performance to the best vocoder condition where speech was least distorted. Nine normal-hearing subjects participated in the study. The parameters to be optimized were the number of vocoder channels, the shift between the input frequency range and the synthesis frequency range, and the compression-expansion of the input frequency range over the synthesis frequency range. The subjects listened to pairs of sentences processed with the vocoder, and entered a preference for the sentence with better intelligibility. The GA modified the solutions iteratively according to the subject preferences. The program converged when the user ranked the same set of parameters as the best in three consecutive steps. The results produced by the GA were analyzed for quality by measuring speech intelligibility, for test-retest reliability by running the GA three times with each subject, and for convergence properties.
RESULTS: Speech recognition scores averaged across subjects were similar for the best vocoder solution and for the solutions produced by the GA. The average number of iterations was 8 and the average convergence time was 25.5 minutes. The settings produced by different GA runs for the same subject were slightly different; however, speech recognition scores measured with these settings were similar. Individual data from subjects showed that in each run, a small number of GA solutions produced poorer speech intelligibility than for the best setting. This was probably a result of the combination of the inherent randomness of the GA, the convergence criterion used in the present study, and possible errors that the users might have made during the paired comparisons. On the other hand, the effect of these errors was probably small compared to the other two factors, as a comparison between subjective preferences and objective measures showed that for many subjects the two were in good agreement.
CONCLUSIONS: The results showed that the GA was able to produce good solutions by using listener preferences in a relatively short time. For practical applications, the program can be made more robust by running the GA twice or by not using an automatic stopping criterion, and it can be made faster by optimizing the number of the paired comparisons completed in each iteration.

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Year:  2007        PMID: 17485986     DOI: 10.1097/AUD.0b013e318047935e

Source DB:  PubMed          Journal:  Ear Hear        ISSN: 0196-0202            Impact factor:   3.570


  7 in total

1.  Initial development of a temporal-envelope-preserving nonlinear hearing aid prescription using a genetic algorithm.

Authors:  Andrew T Sabin; Pamela E Souza
Journal:  Trends Amplif       Date:  2013-06

2.  An Active Learning Algorithm for Control of Epidural Electrostimulation.

Authors:  Jaehoon Choe; Parag Gad; Thomas A Desautels; Mandheerej S Nandra; Roland R Roy; Hui Zhong; Yu-Chong Tai; V Reggie Edgerton; Joel W Burdick
Journal:  IEEE Trans Biomed Eng       Date:  2015-05-12       Impact factor: 4.538

3.  Feasibility of real-time selection of frequency tables in an acoustic simulation of a cochlear implant.

Authors:  Matthew B Fitzgerald; Elad Sagi; Tasnim A Morbiwala; Chin-Tuan Tan; Mario A Svirsky
Journal:  Ear Hear       Date:  2013 Nov-Dec       Impact factor: 3.570

4.  Self-Selection of Frequency Tables with Bilateral Mismatches in an Acoustic Simulation of a Cochlear Implant.

Authors:  Matthew B Fitzgerald; Ksenia Prosolovich; Chin-Tuan Tan; E Katelyn Glassman; Mario A Svirsky
Journal:  J Am Acad Audiol       Date:  2017-05       Impact factor: 1.664

5.  Analytical methods for evaluating reliability and validity of mobile audiometry tools.

Authors:  Mona Kelkar; Zhaoxun Hou; Gary C Curhan; Sharon G Curhan; Molin Wang
Journal:  J Acoust Soc Am       Date:  2022-07       Impact factor: 2.482

Review 6.  Analysis of Uncertainty and Variability in Finite Element Computational Models for Biomedical Engineering: Characterization and Propagation.

Authors:  Nerea Mangado; Gemma Piella; Jérôme Noailly; Jordi Pons-Prats; Miguel Ángel González Ballester
Journal:  Front Bioeng Biotechnol       Date:  2016-11-07

7.  Perceptual Effects of Adjusting Hearing-Aid Gain by Means of a Machine-Learning Approach Based on Individual User Preference.

Authors:  Niels Søgaard Jensen; Ole Hau; Jens Brehm Bagger Nielsen; Thor Bundgaard Nielsen; Søren Vase Legarth
Journal:  Trends Hear       Date:  2019 Jan-Dec       Impact factor: 3.293

  7 in total

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