Reconfiguring health services to reduce the workload of caregivers
during the COVID-19 outbreak using an open-source scalable platform for
remote digital monitoring and coordination of care in hospital Command
Centres
- URL: http://arxiv.org/abs/2003.05873v1
- Date: Thu, 12 Mar 2020 16:08:09 GMT
- Title: Reconfiguring health services to reduce the workload of caregivers
during the COVID-19 outbreak using an open-source scalable platform for
remote digital monitoring and coordination of care in hospital Command
Centres
- Authors: Philippe Ravaud, Franck le Ouay, Etienne Depaulis, Alexandre Huckert,
Bruno Vegreville and Viet-Thi Tran
- Abstract summary: We describe how digital technologies may be used to automatically and remotely monitor patients at home.
Patients answer simple self-reported questionnaires and their data is transmitted, in real time, to a Command Centre in the nearest reference hospital.
- Score: 55.41644538483948
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The Covid-19 outbreak threatens to saturate healthcare systems in most
Western countries. We describe how digital technologies may be used to
automatically and remotely monitor patients at home. Patients answer simple
self-reported questionnaires and their data is transmitted, in real time, to a
Command Centre in the nearest reference hospital. Patient reported data are
automatically filtered by algorithms to identify those with early warning
signs. Open-source code of all software components required to deploy the
remote digital monitoring platform and Command Centres is available.
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