A health telemonitoring platform based on data integration from
different sources
- URL: http://arxiv.org/abs/2207.13913v2
- Date: Fri, 26 Aug 2022 07:46:49 GMT
- Title: A health telemonitoring platform based on data integration from
different sources
- Authors: Gianluigi Ciocca, Paolo Napoletano, Matteo Romanato, Raimondo
Schettini
- Abstract summary: The management of people with long-term or chronic illness is one of the biggest challenges for national health systems.
We present the implementation of a telemonitoring platform for healthcare, designed to capture several types of physiological health parameters from different consumer mobile and custom devices.
The platform is designed to process the acquired data using machine learning algorithms, and to provide patients and physicians the physiological health parameters with a user-friendly, comprehensive, and easy to understand dashboard which monitors the parameters through time.
- Score: 20.878143912804983
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The management of people with long-term or chronic illness is one of the
biggest challenges for national health systems. In fact, these diseases are
among the leading causes of hospitalization, especially for the elderly, and
huge amount of resources required to monitor them leads to problems with
sustainability of the healthcare systems. The increasing diffusion of portable
devices and new connectivity technologies allows the implementation of
telemonitoring system capable of providing support to health care providers and
lighten the burden on hospitals and clinics. In this paper, we present the
implementation of a telemonitoring platform for healthcare, designed to capture
several types of physiological health parameters from different consumer mobile
and custom devices. Consumer medical devices can be integrated into the
platform via the Google Fit ecosystem that supports hundreds of devices, while
custom devices can directly interact with the platform with standard
communication protocols. The platform is designed to process the acquired data
using machine learning algorithms, and to provide patients and physicians the
physiological health parameters with a user-friendly, comprehensive, and easy
to understand dashboard which monitors the parameters through time. Preliminary
usability tests show a good user satisfaction in terms of functionality and
usefulness.
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