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Published in: Critical Care 6/2008

Open Access 01-12-2008 | Research

An artificial intelligence tool to predict fluid requirement in the intensive care unit: a proof-of-concept study

Authors: Leo Anthony Celi, L Hinske Christian, Gil Alterovitz, Peter Szolovits

Published in: Critical Care | Issue 6/2008

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Abstract

Introduction

The goal of personalised medicine in the intensive care unit (ICU) is to predict which diagnostic tests, monitoring interventions and treatments translate to improved outcomes given the variation between patients. Unfortunately, processes such as gene transcription and drug metabolism are dynamic in the critically ill; that is, information obtained during static non-diseased conditions may have limited applicability. We propose an alternative way of personalising medicine in the ICU on a real-time basis using information derived from the application of artificial intelligence on a high-resolution database. Calculation of maintenance fluid requirement at the height of systemic inflammatory response was selected to investigate the feasibility of this approach.

Methods

The Multi-parameter Intelligent Monitoring for Intensive Care II (MIMIC II) is a database of patients admitted to the Beth Israel Deaconess Medical Center ICU in Boston. Patients who were on vasopressors for more than six hours during the first 24 hours of admission were identified from the database. Demographic and physiological variables that might affect fluid requirement or reflect the intravascular volume during the first 24 hours in the ICU were extracted from the database. The outcome to be predicted is the total amount of fluid given during the second 24 hours in the ICU, including all the fluid boluses administered.

Results

We represented the variables by learning a Bayesian network from the underlying data. Using 10-fold cross-validation repeated 100 times, the accuracy of the model in predicting the outcome is 77.8%. The network generated has a threshold Bayes factor of seven representing the posterior probability of the model given the observed data. This Bayes factor translates into p < 0.05 assuming a Gaussian distribution of the variables.

Conclusions

Based on the model, the probability that a patient would require a certain range of fluid on day two can be predicted. In the presence of a larger database, analysis may be limited to patients with identical clinical presentation, demographic factors, co-morbidities, current physiological data and those who did not develop complications as a result of fluid administration. By better predicting maintenance fluid requirements based on the previous day's physiological variables, one might be able to prevent hypotensive episodes requiring fluid boluses during the course of the following day.
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Literature
1.
go back to reference Yende S, Angus D: Long-term outcomes from sepsis. Curr Infect Dis Rep 2007, 9: 382-386. 10.1007/s11908-007-0059-3CrossRefPubMed Yende S, Angus D: Long-term outcomes from sepsis. Curr Infect Dis Rep 2007, 9: 382-386. 10.1007/s11908-007-0059-3CrossRefPubMed
2.
go back to reference Trampuz A, Widmer AF, Fluckiger U, Haenggi M, Frei R, Zimmerli W: Changes in the epidemiology of pneumococcal bacteremia in a Swiss university hospital during a 15-year period, 1986–2000. Mayo Clin Proc 2004, 79: 604-612.CrossRefPubMed Trampuz A, Widmer AF, Fluckiger U, Haenggi M, Frei R, Zimmerli W: Changes in the epidemiology of pneumococcal bacteremia in a Swiss university hospital during a 15-year period, 1986–2000. Mayo Clin Proc 2004, 79: 604-612.CrossRefPubMed
3.
go back to reference Landoni G, Zangrillo A, Franco A, Aletti G, Roberti A, Calabrò MG, Slaviero G, Bignami E, Marino G: Long-term outcome of patients who require renal replacement therapy after cardiac surgery. Eur J Anaesthesiol 2006, 23: 17-22. 10.1017/S0265021505001705PubMed Landoni G, Zangrillo A, Franco A, Aletti G, Roberti A, Calabrò MG, Slaviero G, Bignami E, Marino G: Long-term outcome of patients who require renal replacement therapy after cardiac surgery. Eur J Anaesthesiol 2006, 23: 17-22. 10.1017/S0265021505001705PubMed
4.
go back to reference Rivers E, Nguyen B, Havstad S, Ressler J, Muzzin A, Knoblich B, Peterson E, Tomlanovich M, Early Goal-Directed Therapy Collaborative Group: Early goal-directed therapy in the treatment of severe sepsis and septic shock. N Engl J Med 2001, 345: 1368-1377. 10.1056/NEJMoa010307CrossRefPubMed Rivers E, Nguyen B, Havstad S, Ressler J, Muzzin A, Knoblich B, Peterson E, Tomlanovich M, Early Goal-Directed Therapy Collaborative Group: Early goal-directed therapy in the treatment of severe sepsis and septic shock. N Engl J Med 2001, 345: 1368-1377. 10.1056/NEJMoa010307CrossRefPubMed
5.
go back to reference Donati A, Loggi S, Preiser JC, Orsetti G, Münch C, Gabbanelli V, Pelaia P, Pietropaoli P: Goal-directed intraoperative therapy reduces morbidity and length of hospital stay in high risk surgical patients. Chest 2007, 132: 1817-1824. 10.1378/chest.07-0621CrossRefPubMed Donati A, Loggi S, Preiser JC, Orsetti G, Münch C, Gabbanelli V, Pelaia P, Pietropaoli P: Goal-directed intraoperative therapy reduces morbidity and length of hospital stay in high risk surgical patients. Chest 2007, 132: 1817-1824. 10.1378/chest.07-0621CrossRefPubMed
6.
go back to reference Berger J: Statistical Decision Theory and Bayesian Analysis. New York: Springer-Verlag; 1985.CrossRef Berger J: Statistical Decision Theory and Bayesian Analysis. New York: Springer-Verlag; 1985.CrossRef
7.
go back to reference Goodman SN: Toward evidence-based medical statistics. 2: The Bayes factor. Ann Intern Med 1999, 130: 1005-1013.CrossRefPubMed Goodman SN: Toward evidence-based medical statistics. 2: The Bayes factor. Ann Intern Med 1999, 130: 1005-1013.CrossRefPubMed
8.
go back to reference Barbini E, Cevenini G, Scolletta S, biagioli B, Giomarelli P, Barbini P: A comparative analysis of predictive models of morbidity in intensive care unit after cardiac surgery – Part I: model planning. BMC Med Inform Decis Mak 2007, 7: 35. 10.1186/1472-6947-7-35PubMedCentralCrossRefPubMed Barbini E, Cevenini G, Scolletta S, biagioli B, Giomarelli P, Barbini P: A comparative analysis of predictive models of morbidity in intensive care unit after cardiac surgery – Part I: model planning. BMC Med Inform Decis Mak 2007, 7: 35. 10.1186/1472-6947-7-35PubMedCentralCrossRefPubMed
9.
go back to reference Cevenini G, Barbini E, Scolletta S, biagioli B, Giomarelli P, Barbini P: A comparative analysis of predictive models of morbidity in intensive care unit after cardiac surgery – Part II: an illustrative example. BMC Med Inform Decis Mak 2007, 7: 36. 10.1186/1472-6947-7-36PubMedCentralCrossRefPubMed Cevenini G, Barbini E, Scolletta S, biagioli B, Giomarelli P, Barbini P: A comparative analysis of predictive models of morbidity in intensive care unit after cardiac surgery – Part II: an illustrative example. BMC Med Inform Decis Mak 2007, 7: 36. 10.1186/1472-6947-7-36PubMedCentralCrossRefPubMed
10.
go back to reference Nikifordis G, Sakellaropoulos G: Expert system support using Bayesian belief networks in the prognosis of head-injured patients of the ICU. Med Inform (Lond) 1998, 23: 1-18. 10.3109/14639239809001387CrossRef Nikifordis G, Sakellaropoulos G: Expert system support using Bayesian belief networks in the prognosis of head-injured patients of the ICU. Med Inform (Lond) 1998, 23: 1-18. 10.3109/14639239809001387CrossRef
11.
go back to reference Ho K, Knuiman M: Bayesian approach to predict hospital mortality of intensive care readmissions during the same hospitalisation. Anaesth Intensive Care 2008, 36: 38-45.PubMed Ho K, Knuiman M: Bayesian approach to predict hospital mortality of intensive care readmissions during the same hospitalisation. Anaesth Intensive Care 2008, 36: 38-45.PubMed
12.
go back to reference Schurink CA, Visscher S, Lucas PJ, van Leeuwen HJ, Buskens E, Hoff RG, Hoepelman AI, Bonten MJ: A Bayesian decision-support system for diagnosing ventilator-associated pneumonia. Intensive Care Med 2007, 33: 1379-1386. 10.1007/s00134-007-0728-6CrossRefPubMed Schurink CA, Visscher S, Lucas PJ, van Leeuwen HJ, Buskens E, Hoff RG, Hoepelman AI, Bonten MJ: A Bayesian decision-support system for diagnosing ventilator-associated pneumonia. Intensive Care Med 2007, 33: 1379-1386. 10.1007/s00134-007-0728-6CrossRefPubMed
13.
go back to reference Schurink CA, Lucas PJ, Hoepelman IM, Bonten MJ: Computer-assisted decision support for the diagnosis and treatment of infectious diseases in intensive care units. Lancet Infect Dis 2005, 5: 305-312. 10.1016/S1473-3099(05)70115-8CrossRefPubMed Schurink CA, Lucas PJ, Hoepelman IM, Bonten MJ: Computer-assisted decision support for the diagnosis and treatment of infectious diseases in intensive care units. Lancet Infect Dis 2005, 5: 305-312. 10.1016/S1473-3099(05)70115-8CrossRefPubMed
Metadata
Title
An artificial intelligence tool to predict fluid requirement in the intensive care unit: a proof-of-concept study
Authors
Leo Anthony Celi
L Hinske Christian
Gil Alterovitz
Peter Szolovits
Publication date
01-12-2008
Publisher
BioMed Central
Published in
Critical Care / Issue 6/2008
Electronic ISSN: 1364-8535
DOI
https://doi.org/10.1186/cc7140

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