IoT Technologies for HealthCare. 7th EAI International Conference, HealthyIoT 2020, Viana do Castelo, Portugal, December 3, 2020, Proceedings

Research Article

Development and Evaluation of a Novel Method for Adult Hearing Screening: Towards a Dedicated Smartphone App

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  • @INPROCEEDINGS{10.1007/978-3-030-69963-5_1,
        author={Edoardo Maria Polo and Marco Zanet and Marta Lenatti and Toon van Waterschoot and Riccardo Barbieri and Alessia Paglialonga},
        title={Development and Evaluation of a Novel Method for Adult Hearing Screening: Towards a Dedicated Smartphone App},
        proceedings={IoT Technologies for HealthCare. 7th EAI International Conference, HealthyIoT 2020, Viana do Castelo, Portugal, December 3, 2020, Proceedings},
        proceedings_a={HEALTHYIOT},
        year={2021},
        month={7},
        keywords={Classification Decision trees Hearing loss Hearing screening Smartphone app Speech-in-noise testing},
        doi={10.1007/978-3-030-69963-5_1}
    }
    
  • Edoardo Maria Polo
    Marco Zanet
    Marta Lenatti
    Toon van Waterschoot
    Riccardo Barbieri
    Alessia Paglialonga
    Year: 2021
    Development and Evaluation of a Novel Method for Adult Hearing Screening: Towards a Dedicated Smartphone App
    HEALTHYIOT
    Springer
    DOI: 10.1007/978-3-030-69963-5_1
Edoardo Maria Polo1, Marco Zanet2, Marta Lenatti3, Toon van Waterschoot4, Riccardo Barbieri3, Alessia Paglialonga2
  • 1: Sapienza University of Rome
  • 2: National Research Council of Italy (CNR)
  • 3: Politecnico di Milano
  • 4: KU Leuven

Abstract

Towards implementation of adult hearing screening tests that can be delivered via a mobile app, we have recently designed a novel speech-in-noise test based on the following requirements: user-operated, fast, reliable, accurate, viable for use by listeners of unknown native language and viable for testing at a distance. This study addresses specific models to (i) investigate the ability of the test to identify ears with mild hearing loss using machine learning; and (ii) address the range of the output levels generated using different transducers. Our results demonstrate that the test classification performance using decision tree models is in line with the performance of validated, language-dependent speech-in-noise tests. We observed, on average, 0.75 accuracy, 0.64 sensitivity and 0.81 specificity. Regarding the analysis of output levels, we demonstrated substantial variability of transducers’ characteristics and dynamic range, with headphones yielding higher output levels compared to earphones. These findings confirm the importance of a self-adjusted volume option. These results also suggest that earphones may not be suitable for test execution as the output levels may be relatively low, particularly for subjects with hearing loss or for those who skip the volume adjustment step. Further research is needed to fully address test performance, e.g. testing a larger sample of subjects, addressing different classification approaches, and characterizing test reliability in varying conditions using different devices and transducers.