A streaming data visualization framework for supporting decision-making in the Intensive Care Unit
Fecha
2023
Título de la revista
ISSN de la revista
Título del volumen
Editor
Elsevier
Resumen
The number of reporting activities in real time has increased over the last years. This situation has pushed the
need for providing real time analysis and visualizations to support decision-making. We propose a visualization
framework for exploratory data analysis of multivariate data streams that relies on dimensionality reduction
and machine learning techniques for plotting the data in two dimensions. Users can demarcate regions of
interest for their study, and use them to make predictions or to decide when to train a new model. The
knowledge gained from these visualizations allows users to: (i) characterize the data stream scenario; (ii)
track the evolution of a case of interest; and (iii) configure and raise alarms according to the user-defined
regions. We illustrate the effectiveness of our proposal through a case study analyzing real-world streaming
data to identify patients with multi-drug resistant bacteria when they are in a hospital intensive care unit. Our
visualization framework enables the patient follow-up which can allow clinicians to support decisions about
the health status evolution of a particular patient. This could provide information for deciding on a particular
treatment or whether to isolate patients with a high risk of having multi-drug resistant bacteria since their
presence boosts infections in intensive care units.
Descripción
This research was funded by the Spanish Research Agency, grant numbers PID2021-122392OB-I00, PID2019-106623RB-C41/AEI/10.13039/501100011033 and PID2019-107768RA-I00; and by Universidad Rey Juan Carlos (URJC) and Community of Madrid, Spain , grant number 2020-66.
Citación
Miguel A. Mohedano-Munoz, Cristina Soguero-Ruiz, Inmaculada Mora-Jiménez, Manuel Rubio-Sánchez, Joaquín Álvarez-Rodríguez, Alberto Sanchez, A streaming data visualization framework for supporting decision-making in the Intensive Care Unit, Expert Systems with Applications, Volume 227, 2023, 120252, ISSN 0957-4174, https://doi.org/10.1016/j.eswa.2023.120252
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