Literature DB >> 29949072

Conjoint psychometric field estimation for bilateral audiometry.

Dennis L Barbour1, James C DiLorenzo2,3, Kiron A Sukesan2,3, Xinyu D Song2, Jeff Y Chen2,3, Eleanor A Degen2, Katherine L Heisey2,4, Roman Garnett3.   

Abstract

Behavioral testing in perceptual or cognitive domains requires querying a subject multiple times in order to quantify his or her ability in the corresponding domain. These queries must be conducted sequentially, and any additional testing domains are also typically tested sequentially, such as with distinct tests comprising a test battery. As a result, existing behavioral tests are often lengthy and do not offer comprehensive evaluation. The use of active machine-learning kernel methods for behavioral assessment provides extremely flexible yet efficient estimation tools to more thoroughly investigate perceptual or cognitive processes without incurring the penalty of excessive testing time. Audiometry represents perhaps the simplest test case to demonstrate the utility of these techniques. In pure-tone audiometry, hearing is assessed in the two-dimensional input space of frequency and intensity, and the test is repeated for both ears. Although an individual's ears are not linked physiologically, they share many features in common that lead to correlations suitable for exploitation in testing. The bilateral audiogram estimates hearing thresholds in both ears simultaneously by conjoining their separate input domains into a single search space, which can be evaluated efficiently with modern machine-learning methods. The result is the introduction of the first conjoint psychometric function estimation procedure, which consistently delivers accurate results in significantly less time than sequential disjoint estimators.

Entities:  

Keywords:  Audiometry; Hearing; Perceptual testing; Psychometric function; Psychophysics

Mesh:

Year:  2019        PMID: 29949072      PMCID: PMC6291374          DOI: 10.3758/s13428-018-1062-3

Source DB:  PubMed          Journal:  Behav Res Methods        ISSN: 1554-351X


  30 in total

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2.  In defense of the right and left audiograms: a reply to Coren (1989) and Coren and Hakstian (1990)

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5.  Bayesian adaptive estimation of the auditory filter.

Authors:  Yi Shen; Virginia M Richards
Journal:  J Acoust Soc Am       Date:  2013-08       Impact factor: 1.840

6.  Psychometric function estimation by probabilistic classification.

Authors:  Xinyu D Song; Roman Garnett; Dennis L Barbour
Journal:  J Acoust Soc Am       Date:  2017-04       Impact factor: 1.840

7.  Psychometric functions for children's detection of tones in noise.

Authors:  P Allen; F Wightman
Journal:  J Speech Hear Res       Date:  1994-02

8.  Bayesian active probabilistic classification for psychometric field estimation.

Authors:  Xinyu D Song; Kiron A Sukesan; Dennis L Barbour
Journal:  Atten Percept Psychophys       Date:  2018-04       Impact factor: 2.199

9.  Optimal experimental design for model discrimination.

Authors:  Jay I Myung; Mark A Pitt
Journal:  Psychol Rev       Date:  2009-07       Impact factor: 8.934

10.  Psychometric functions for pure tone intensity discrimination: slope differences in school-aged children and adults.

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  4 in total

1.  Online Machine Learning Audiometry.

Authors:  Dennis L Barbour; Rebecca T Howard; Xinyu D Song; Nikki Metzger; Kiron A Sukesan; James C DiLorenzo; Braham R D Snyder; Jeff Y Chen; Eleanor A Degen; Jenna M Buchbinder; Katherine L Heisey
Journal:  Ear Hear       Date:  2019 Jul/Aug       Impact factor: 3.570

2.  Dynamically Masked Audiograms With Machine Learning Audiometry.

Authors:  Katherine L Heisey; Alexandra M Walker; Kevin Xie; Jenna M Abrams; Dennis L Barbour
Journal:  Ear Hear       Date:  2020 Nov/Dec       Impact factor: 3.562

Review 3.  Digital Approaches to Automated and Machine Learning Assessments of Hearing: Scoping Review.

Authors:  Jan-Willem Wasmann; Leontien Pragt; Robert Eikelboom; De Wet Swanepoel
Journal:  J Med Internet Res       Date:  2022-02-02       Impact factor: 5.428

4.  Computational Audiology: New Approaches to Advance Hearing Health Care in the Digital Age.

Authors:  Jan-Willem A Wasmann; Cris P Lanting; Wendy J Huinck; Emmanuel A M Mylanus; Jeroen W M van der Laak; Paul J Govaerts; De Wet Swanepoel; David R Moore; Dennis L Barbour
Journal:  Ear Hear       Date:  2021 Nov-Dec 01       Impact factor: 3.570

  4 in total

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