A Web-Based Tool for Automatic Data Collection, Curation, and
Visualization of Complex Healthcare Survey Studies including Social Network
Analysis
- URL: http://arxiv.org/abs/2402.09592v1
- Date: Wed, 14 Feb 2024 21:37:59 GMT
- Title: A Web-Based Tool for Automatic Data Collection, Curation, and
Visualization of Complex Healthcare Survey Studies including Social Network
Analysis
- Authors: Jos\'e Alberto Ben\'itez-Andrades, Jos\'e Emilio Labra, Enedina
Quiroga, Vicente Mart\'in, Isa\'ias Garc\'ia, Pilar Marqu\'es-S\'anchez and
Carmen Benavides
- Abstract summary: This research presents the design and construction of a web-based platform able to facilitate each of the mentioned processes.
It integrates the different phases into an intuitive system with a graphical user interface that hides the complexity underlying each of the questionnaires and techniques used.
- Score: 0.32985979395737786
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: There is a great concern nowadays regarding alcohol consumption and drug
abuse, especially in young people. Analyzing the social environment where these
adolescents are immersed, as well as a series of measures determining the
alcohol abuse risk or personal situation and perception using a number of
questionnaires like AUDIT, FAS, KIDSCREEN, and others, it is possible to gain
insight into the current situation of a given individual regarding his/her
consumption behavior. But this analysis, in order to be achieved, requires the
use of tools that can ease the process of questionnaire creation, data
gathering, curation and representation, and later analysis and visualization to
the user. This research presents the design and construction of a web-based
platform able to facilitate each of the mentioned processes by integrating the
different phases into an intuitive system with a graphical user interface that
hides the complexity underlying each of the questionnaires and techniques used
and presenting the results in a flexible and visual way, avoiding any manual
handling of data during the process. Advantages of this approach are shown and
compared to the previous situation where some of the tasks were accomplished by
time consuming and error prone manipulations of data.
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