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Review
. 2016 Sep;5(3):122-128.
doi: 10.1055/s-0035-1569998. Epub 2015 Dec 15.

Perpetual and Virtual Patients for Cardiorespiratory Physiological Studies

Affiliations
Review

Perpetual and Virtual Patients for Cardiorespiratory Physiological Studies

David Brossier et al. J Pediatr Intensive Care. 2016 Sep.

Abstract

As a result of innovations in informatics over the last decades, physiologic models elaborated in the second half of the 20th century could be transformed into specific virtual patients called computational models. These models, developed initially for teaching purposes, are of great potential interest in responding to current concerns about improving patient care and safety. However, even if there are obvious advantages to using computational models in cardiorespiratory management, major concerns persist as to their reliability and their ability to recreate real patient physiologic evolution over time. Once developed, these models require complex validation and configuration phases prior to implementation in daily practice. This article focuses on the development of computational models, and reviews the methodologies to clinically validate the models including specific patient databases (perpetual patients) and the use in clinical practice including very high fidelity simulation.

Keywords: cardiorespiratory physiology; children; databases; intensive care; modeling; simulation.

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Figures

Fig. 1
Fig. 1
View of the validation process.
Fig. 2
Fig. 2
Gathering data in electronic database.
Fig. 3
Fig. 3
Validation progress of a computational model. T0, initial time, TX, time of the therapeutic action.

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