can analyze the evolution of the patient in a glance.
Specific messages for the doctors are also
displayed at the bottom of the graph. Following the
same example described for the patient in the
previous section, at week 24 the message for the
doctors is: Improves adequately; Remission, whereas
at week 50 the message is: Worsening rapidly;
Relapse. In the last case, a relapse alarm is also sent
to the psychiatrist. In this way the doctor knows that
the patient has had a relapse without accessing the
application MADRIM and can act quickly
accordingly.
4 CONCLUSIONS
Our current research is focused on the development
of an intelligent remote monitor (MADRIM), which
helps physicians in the process of supervision and
gives continuous attention to patients that suffer
from major depression. A monitoring system that
provides complete information of the evolution of
patients in a glance, keeps both patients and
physicians continuously informed and alarm them in
the case of necessity is a valuable contribution when
the goal is to monitor a massive number of major
depression patients.
The research presented in this paper is centered
on the part of this system that interacts with the
actors, which are patients, psychiatrists and primary
care physicians. A mobile App and a Website are
developed and presented in this research. These
tools allow the patient’s data acquisition and the
presentation of the evolution of the patient in a
friendly and intuitive manner. These tools have been
developed paying great attention to the specific
characteristics of patients that suffer from major
depression and analyzing every interaction with
these patients in a very precise way.
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