Frequency Fitting Optimization Using Evolutionary Algorithm in Cochlear Implant Users with Bimodal Binaural Hearing

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TitreFrequency Fitting Optimization Using Evolutionary Algorithm in Cochlear Implant Users with Bimodal Binaural Hearing
Type de publicationJournal Article
Year of Publication2022
AuteursSaadoun A, Schein A, Pean V, Legrand P, Glele LSerge Aho, Grayeli ABozorg
JournalBRAIN SCIENCES
Volume12
Pagination253
Date PublishedFEB
Type of ArticleArticle
Mots-clésbinaural hearing, Cochlear implant, Evolutionary algorithm, fitting, Quality of life, speech discrimination in noise
Résumé

{Optimizing hearing in patients with a unilateral cochlear implant (CI) and contralateral acoustic hearing is a challenge. Evolutionary algorithms (EA) can explore a large set of potential solutions in a stochastic manner to approach the optimum of a minimization problem. The objective of this study was to develop and evaluate an EA-based protocol to modify the default frequency settings of a MAP (fMAP) of the CI in patients with bimodal hearing. Methods: This monocentric prospective study included 27 adult CI users (with post-lingual deafness and contralateral functional hearing). A fitting program based on EA was developed to approach the best fMAP. Generated fMAPs were tested by speech recognition (word recognition score, WRS) in noise and free-field-like conditions. By combining these first fMAPs and adding some random changes, a total of 13 fMAPs over 3 generations were produced. Participants were evaluated before and 45 to 60 days after the fitting by WRS in noise and questionnaires on global sound quality and music perception in bimodal binaural conditions. Results: WRS in noise improved with the EA-based fitting in comparison to the default fMAP (41.67 +/- 9.70% versus 64.63 +/- 16.34%, respectively

DOI10.3390/brainsci12020253