Literature DB >> 14758163

Use of artificial intelligence to identify cardiovascular compromise in a model of hemorrhagic shock.

Todd F Glass1, Jason Knapp, Philip Amburn, Bruce A Clay, Matt Kabrisky, Steven K Rogers, Victor F Garcia.   

Abstract

OBJECTIVE: To determine whether a prototype artificial intelligence system can identify volume of hemorrhage in a porcine model of controlled hemorrhagic shock.
DESIGN: Prospective in vivo animal model of hemorrhagic shock.
SETTING: Research foundation animal surgical suite; computer laboratories of collaborating industry partner.
SUBJECTS: Nineteen, juvenile, 25- to 35-kg, male and female swine.
INTERVENTIONS: Anesthetized animals were instrumented for arterial and systemic venous pressure monitoring and blood sampling, and a splenectomy was performed. Following a 1-hr stabilization period, animals were hemorrhaged in aliquots to 10, 20, 30, 35, 40, 45, and 50% of total blood volume with a 10-min recovery between each aliquot. Data were downloaded directly from a commercial monitoring system into a proprietary PC-based software package for analysis.
MEASUREMENTS AND MAIN RESULTS: Arterial and venous blood gas values, glucose, and cardiac output were collected at specified intervals. Electrocardiogram, electroencephalogram, mixed venous oxygen saturation, temperature (core and blood), mean arterial pressure, pulmonary artery pressure, central venous pressure, pulse oximetry, and end-tidal CO(2) were continuously monitored and downloaded. Seventeen of 19 animals (89%) died as a direct result of hemorrhage. Stored data streams were analyzed by the prototype artificial intelligence system. For this project, the artificial intelligence system identified and compared three electrocardiographic features (R-R interval, QRS amplitude, and R-S interval) from each of nine unknown samples of the QRS complex. We found that the artificial intelligence system, trained on only three electrocardiographic features, identified hemorrhage volume with an average accuracy of 91% (95% confidence interval, 84-96%).
CONCLUSIONS: These experiments demonstrate that an artificial intelligence system, based solely on the analysis of QRS amplitude, R-R interval, and R-S interval of an electrocardiogram, is able to accurately identify hemorrhage volume in a porcine model of lethal hemorrhagic shock. We suggest that this technology may represent a noninvasive means of assessing the physiologic state during and immediately following hemorrhage. Point of care application of this technology may improve outcomes with earlier diagnosis and better titration of therapy of shock.

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Year:  2004        PMID: 14758163     DOI: 10.1097/01.CCM.0000109444.02324.AD

Source DB:  PubMed          Journal:  Crit Care Med        ISSN: 0090-3493            Impact factor:   7.598


  4 in total

1.  Emergency surgery of the abdominal aorta in a porcine model: two sequential experiments.

Authors:  Francisco S Lozano; José M Rodríguez; Francisco J García-Criado; Jose R Gonzalez-Porras; Fermin M Sanchez-Guijo; Pilar Sanchez-Conde; Jose E García-Sanchez
Journal:  World J Surg       Date:  2008-04       Impact factor: 3.352

2.  Computer-Aided Diagnosis and Clinical Trials of Cardiovascular Diseases Based on Artificial Intelligence Technologies for Risk-Early Warning Model.

Authors:  Bin Li; Shuai Ding; Guolei Song; Jiajia Li; Qian Zhang
Journal:  J Med Syst       Date:  2019-06-13       Impact factor: 4.460

Review 3.  Using what you get: dynamic physiologic signatures of critical illness.

Authors:  Andre L Holder; Gilles Clermont
Journal:  Crit Care Clin       Date:  2015-01       Impact factor: 3.598

4.  Increasing Cardiovascular Data Sampling Frequency and Referencing It to Baseline Improve Hemorrhage Detection.

Authors:  Anthony Wertz; Andre L Holder; Mathieu Guillame-Bert; Gilles Clermont; Artur Dubrawski; Michael R Pinsky
Journal:  Crit Care Explor       Date:  2019-10-30
  4 in total

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