Literature DB >> 20813491

Toward optimal display of physiologic status in critical care: I. Recreating bedside displays from archived physiologic data.

Anton Burykin1, Tyler Peck, Vladimir Krejci, Andrea Vannucci, Ivan Kangrga, Timothy G Buchman.   

Abstract

BACKGROUND: Physiologic data display is essential to decision making in critical care. Current displays echo first-generation hemodynamic monitors dating to the 1970s and have not kept pace with new insights into physiology or the needs of clinicians who must make progressively more complex decisions about their patients. The effectiveness of any redesign must be tested before deployment. Tools that compare current displays with novel presentations of processed physiologic data are required. Regenerating conventional physiologic displays from archived physiologic data is an essential first step.
OBJECTIVES: The purposes of the study were to (1) describe the SSSI (single sensor single indicator) paradigm that is currently used for physiologic signal displays, (2) identify and discuss possible extensions and enhancements of the SSSI paradigm, and (3) develop a general approach and a software prototype to construct such "extended SSSI displays" from raw data.
RESULTS: We present Multi Wave Animator (MWA) framework--a set of open source MATLAB (MathWorks, Inc., Natick, MA, USA) scripts aimed to create dynamic visualizations (eg, video files in AVI format) of patient vital signs recorded from bedside (intensive care unit or operating room) monitors. Multi Wave Animator creates animations in which vital signs are displayed to mimic their appearance on current bedside monitors. The source code of MWA is freely available online together with a detailed tutorial and sample data sets.
Copyright © 2011 Elsevier Inc. All rights reserved.

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Year:  2010        PMID: 20813491     DOI: 10.1016/j.jcrc.2010.06.013

Source DB:  PubMed          Journal:  J Crit Care        ISSN: 0883-9441            Impact factor:   3.425


  7 in total

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Review 5.  A Review of Visual Representations of Physiologic Data.

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7.  Dynamical density delay maps: simple, new method for visualising the behaviour of complex systems.

Authors:  Anton Burykin; Madalena D Costa; Luca Citi; Ary L Goldberger
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  7 in total

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