Mehdi, Muntazir and Schwager, Denis and Pryss, Rüdiger and Schlee, Winfried and Reichert, Manfred and Hauck, Franz J. (2019) Towards Automated Smart Mobile Crowdsensing for Tinnitus Research. In: 32nd IEEE CBMS International Symposium on Computer-Based Medical Systems (CBMS 2019), 5-7 June 2019, Cordoba.
Download (176kB)
Abstract
Tinnitus is a disorder that is not entirely understood, and many of its correlations are still unknown. On the other hand, smartphones became ubiquitous. Their modern versions provide high computational capabilities, reasonable battery size, and a bunch of embedded high-quality sensors, combined with an accepted user interface and an application ecosystem. For tinnitus, as for many other health problems, there are a number of apps trying to help patients, therapists, and researchers to get insights into personal characteristics but also into scientific correlations as such. In this paper, we present the first approach to an app in this context, called TinnituSense that does automatic sensing of related characteristics and enables correlations to the current condition of the patient by a combined participatory sensing, e.g., a questionnaire. For tinnitus, there is a strong hypothesis that weather conditions have some influence. Our proof-of-concept implementation records weather-related sensor data and correlates them to the standard Tinnitus Handicap Inventory (THI) questionnaire. Thus, TinnituSense enables therapists and researchers to collect evidence for unknown facts, as this is the first opportunity to correlate weather to patient conditions on a larger scale. Our concept as such is limited neither to tinnitus nor to built-in sensors, e.g., in the tinnitus domain, we are experimenting with mobile EEG sensors. TinnituSense is faced with several challenges of which we already solved principle architecture, sensor management, and energy consumption.
Item Type: | Conference or Workshop Item (Paper) |
---|---|
Subjects: | DBIS Research > Publications |
Divisions: | Faculty of Engineering, Electronics and Computer Science > Institute of Databases and Informations Systems > DBIS Research and Teaching > DBIS Research > Master and Phd-Thesis |
Depositing User: | Ruediger Pryss |
Date Deposited: | 23 Jun 2019 21:34 |
Last Modified: | 12 Mar 2020 20:55 |
URI: | http://dbis.eprints.uni-ulm.de/id/eprint/1789 |