Purpose: To analyze, by using the ALFA4Hearing model (At-a-glance Labelling for Features of Apps for Hearing health care), a sample of apps over a wide range of services in the hearing healthcare (HHC) domain so to take a first picture of the current scenario of apps for HHC. Method: We tested 120 apps and we characterized them by using the ALFA4Hearing model, which includes 29 features in five components (Promoters, Services, Implementation, Users, Descriptive information). We analyzed: (i) the distribution of the 29 features in the sample; (ii) the relationship between the Implementation features and the Services provided by the apps; and (iii) the distribution of the 29 features in apps for professional use. Results: The analysis of our sample of apps by means of the ALFA4Hearing model highlighted interesting trends and emerging challenges. Also, results suggested many potential opportunities for research and clinical practice such as, for example, greater involvement of stakeholders, improved evidence base, higher technical quality and usability. Conclusions: The ALFA4Hearing model is able to represent, at a glance, a large amount of information about apps for HHC, highlighting trends and challenges. It might be useful to HHC professionals as a basis for app characterization and informed decision-making.

The ALFA4Hearing model (At-a-glance Labelling for Features of Apps for Hearing healthcare) to characterize mobile apps for hearing healthcare

Paglialonga A;Tognola G
2017

Abstract

Purpose: To analyze, by using the ALFA4Hearing model (At-a-glance Labelling for Features of Apps for Hearing health care), a sample of apps over a wide range of services in the hearing healthcare (HHC) domain so to take a first picture of the current scenario of apps for HHC. Method: We tested 120 apps and we characterized them by using the ALFA4Hearing model, which includes 29 features in five components (Promoters, Services, Implementation, Users, Descriptive information). We analyzed: (i) the distribution of the 29 features in the sample; (ii) the relationship between the Implementation features and the Services provided by the apps; and (iii) the distribution of the 29 features in apps for professional use. Results: The analysis of our sample of apps by means of the ALFA4Hearing model highlighted interesting trends and emerging challenges. Also, results suggested many potential opportunities for research and clinical practice such as, for example, greater involvement of stakeholders, improved evidence base, higher technical quality and usability. Conclusions: The ALFA4Hearing model is able to represent, at a glance, a large amount of information about apps for HHC, highlighting trends and challenges. It might be useful to HHC professionals as a basis for app characterization and informed decision-making.
2017
Istituto di Elettronica e di Ingegneria dell'Informazione e delle Telecomunicazioni - IEIIT
Mobile Applications
Apps
Hearing
m-Health
mobile health
e-Health
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/325879
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