Literature DB >> 27718350

Smartphone-Based System for Learning and Inferring Hearing Aid Settings.

Gabriel Aldaz1, Sunil Puria2, Larry J Leifer1.   

Abstract

BACKGROUND: Previous research has shown that hearing aid wearers can successfully self-train their instruments' gain-frequency response and compression parameters in everyday situations. Combining hearing aids with a smartphone introduces additional computing power, memory, and a graphical user interface that may enable greater setting personalization. To explore the benefits of self-training with a smartphone-based hearing system, a parameter space was chosen with four possible combinations of microphone mode (omnidirectional and directional) and noise reduction state (active and off). The baseline for comparison was the "untrained system," that is, the manufacturer's algorithm for automatically selecting microphone mode and noise reduction state based on acoustic environment. The "trained system" first learned each individual's preferences, self-entered via a smartphone in real-world situations, to build a trained model. The system then predicted the optimal setting (among available choices) using an inference engine, which considered the trained model and current context (e.g., sound environment, location, and time).
PURPOSE: To develop a smartphone-based prototype hearing system that can be trained to learn preferred user settings. Determine whether user study participants showed a preference for trained over untrained system settings. RESEARCH
DESIGN: An experimental within-participants study. Participants used a prototype hearing system-comprising two hearing aids, Android smartphone, and body-worn gateway device-for ∼6 weeks. STUDY SAMPLE: Sixteen adults with mild-to-moderate sensorineural hearing loss (HL) (ten males, six females; mean age = 55.5 yr). Fifteen had ≥6 mo of experience wearing hearing aids, and 14 had previous experience using smartphones. INTERVENTION: Participants were fitted and instructed to perform daily comparisons of settings ("listening evaluations") through a smartphone-based software application called Hearing Aid Learning and Inference Controller (HALIC). In the four-week-long training phase, HALIC recorded individual listening preferences along with sensor data from the smartphone-including environmental sound classification, sound level, and location-to build trained models. In the subsequent two-week-long validation phase, participants performed blinded listening evaluations comparing settings predicted by the trained system ("trained settings") to those suggested by the hearing aids' untrained system ("untrained settings"). DATA COLLECTION AND ANALYSIS: We analyzed data collected on the smartphone and hearing aids during the study. We also obtained audiometric and demographic information.
RESULTS: Overall, the 15 participants with valid data significantly preferred trained settings to untrained settings (paired-samples t test). Seven participants had a significant preference for trained settings, while one had a significant preference for untrained settings (binomial test). The remaining seven participants had nonsignificant preferences. Pooling data across participants, the proportion of times that each setting was chosen in a given environmental sound class was on average very similar. However, breaking down the data by participant revealed strong and idiosyncratic individual preferences. Fourteen participants reported positive feelings of clarity, competence, and mastery when training via HALIC.
CONCLUSIONS: The obtained data, as well as subjective participant feedback, indicate that smartphones could become viable tools to train hearing aids. Individuals who are tech savvy and have milder HL seem well suited to take advantages of the benefits offered by training with a smartphone. American Academy of Audiology

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Year:  2016        PMID: 27718350      PMCID: PMC5266590          DOI: 10.3766/jaaa.15099

Source DB:  PubMed          Journal:  J Am Acad Audiol        ISSN: 1050-0545            Impact factor:   1.664


  17 in total

1.  ICRA noises: artificial noise signals with speech-like spectral and temporal properties for hearing instrument assessment. International Collegium for Rehabilitative Audiology.

Authors:  W A Dreschler; H Verschuure; C Ludvigsen; S Westermann
Journal:  Audiology       Date:  2001 May-Jun

2.  Loudness scaling revisited.

Authors:  C Elberling
Journal:  J Am Acad Audiol       Date:  1999-05       Impact factor: 1.664

3.  Influence of environmental factors on hearing aid microphone preference.

Authors:  Rauna K Surr; Brian E Walden; Mary T Cord; Laurel Olson
Journal:  J Am Acad Audiol       Date:  2002-06       Impact factor: 1.664

4.  Feasibility of ecological momentary assessment of hearing difficulties encountered by hearing aid users.

Authors:  Gino Galvez; Mitchel B Turbin; Emily J Thielman; Joseph A Istvan; Judy A Andrews; James A Henry
Journal:  Ear Hear       Date:  2012 Jul-Aug       Impact factor: 3.570

5.  The design and evaluation of a hearing aid with trainable amplification parameters.

Authors:  Justin A Zakis; Harvey Dillon; Hugh J McDermott
Journal:  Ear Hear       Date:  2007-12       Impact factor: 3.570

6.  An evaluation of three adaptive hearing aid selection strategies.

Authors:  A C Neuman; H Levitt; R Mills; T Schwander
Journal:  J Acoust Soc Am       Date:  1987-12       Impact factor: 1.840

7.  Pilot study to evaluate ecological momentary assessment of tinnitus.

Authors:  James A Henry; Gino Galvez; Mitchel B Turbin; Emily J Thielman; Garnett P McMillan; Joseph A Istvan
Journal:  Ear Hear       Date:  2012 Mar-Apr       Impact factor: 3.570

8.  Relationship between laboratory measures of directional advantage and everyday success with directional microphone hearing aids.

Authors:  Mary T Cord; Rauna K Surr; Brian E Walden; Ole Dyrlund
Journal:  J Am Acad Audiol       Date:  2004-05       Impact factor: 1.664

9.  Predicting hearing aid microphone preference in everyday listening.

Authors:  Brian E Walden; Rauna K Surr; Mary T Cord; Ole Dyrlund
Journal:  J Am Acad Audiol       Date:  2004-05       Impact factor: 1.664

10.  Using trainable hearing aids to examine real-world preferred gain.

Authors:  H Gustav Mueller; Benjamin W Y Hornsby; Jennifer E Weber
Journal:  J Am Acad Audiol       Date:  2008 Nov-Dec       Impact factor: 1.664

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  4 in total

1.  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

2.  Knowledge and Expectations of Hearing Aid Apps Among Smartphone Users and Hearing Professionals: Cross-sectional Survey.

Authors:  Jae-Hyun Seo; Moo Kyun Park; Jae Sang Han; Yong-Ho Park; Jae-Jun Song; Il Joon Moon; Woojoo Lee; Yoonjoong Kim; Young Sang Cho
Journal:  JMIR Mhealth Uhealth       Date:  2022-01-07       Impact factor: 4.773

3.  Personalization of Hearing Aid Fitting Based on Adaptive Dynamic Range Optimization.

Authors:  Aoxin Ni; Sara Akbarzadeh; Edward Lobarinas; Nasser Kehtarnavaz
Journal:  Sensors (Basel)       Date:  2022-08-12       Impact factor: 3.847

Review 4.  Context-Aware Edge-Based AI Models for Wireless Sensor Networks-An Overview.

Authors:  Ahmed A Al-Saedi; Veselka Boeva; Emiliano Casalicchio; Peter Exner
Journal:  Sensors (Basel)       Date:  2022-07-25       Impact factor: 3.847

  4 in total

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