Skip to main content
Top
Published in: Journal of Clinical Monitoring and Computing 1/2019

01-02-2019 | Original Research

Forewarning of hypotensive events using a Bayesian artificial neural network in neurocritical care

Authors: Rob Donald, Tim Howells, Ian Piper, P. Enblad, P. Nilsson, I. Chambers, B. Gregson, G. Citerio, K. Kiening, J. Neumann, A. Ragauskas, J. Sahuquillo, R. Sinnott, A. Stell, the BrainIT Group

Published in: Journal of Clinical Monitoring and Computing | Issue 1/2019

Login to get access

Abstract

Traumatically brain injured (TBI) patients are at risk from secondary insults. Arterial hypotension, critically low blood pressure, is one of the most dangerous secondary insults and is related to poor outcome in patients. The overall aim of this study was to get proof of the concept that advanced statistical techniques (machine learning) are methods that are able to provide early warning of impending hypotensive events before they occur during neuro-critical care. A Bayesian artificial neural network (BANN) model predicting episodes of hypotension was developed using data from 104 patients selected from the BrainIT multi-center database. Arterial hypotension events were recorded and defined using the Edinburgh University Secondary Insult Grades (EUSIG) physiological adverse event scoring system. The BANN was trained on a random selection of 50% of the available patients (n = 52) and validated on the remaining cohort. A multi-center prospective pilot study (Phase 1, n = 30) was then conducted with the system running live in the clinical environment, followed by a second validation pilot study (Phase 2, n = 49). From these prospectively collected data, a final evaluation study was done on 69 of these patients with 10 patients excluded from the Phase 2 study because of insufficient or invalid data. Each data collection phase was a prospective non-interventional observational study conducted in a live clinical setting to test the data collection systems and the model performance. No prediction information was available to the clinical teams during a patient’s stay in the ICU. The final cohort (n = 69), using a decision threshold of 0.4, and including false positive checks, gave a sensitivity of 39.3% (95% CI 32.9–46.1) and a specificity of 91.5% (95% CI 89.0–93.7). Using a decision threshold of 0.3, and false positive correction, gave a sensitivity of 46.6% (95% CI 40.1–53.2) and specificity of 85.6% (95% CI 82.3–88.8). With a decision threshold of 0.3, > 15 min warning of patient instability can be achieved. We have shown, using advanced machine learning techniques running in a live neuro-critical care environment, that it would be possible to give neurointensive teams early warning of potential hypotensive events before they emerge, allowing closer monitoring and earlier clinical assessment in an attempt to prevent the onset of hypotension. The multi-centre clinical infrastructure developed to support the clinical studies provides a solid base for further collaborative research on data quality, false positive correction and the display of early warning data in a clinical setting.
Appendix
Available only for authorised users
Literature
1.
go back to reference American College of Surgeons. Advanced trauma life support. 2011. American College of Surgeons. Advanced trauma life support. 2011.
2.
go back to reference Jones P, Andrews P, Midgley S, Anderson S, Piper I, Tocher J, Housley A, Corrie J, Slattery J, Dearden M, Douglas Miller J. Measuring the burden of secondary insults in head-injured patients during intensive care. J Neurosurg Anesthesiol. 1994;6:4–14.CrossRefPubMed Jones P, Andrews P, Midgley S, Anderson S, Piper I, Tocher J, Housley A, Corrie J, Slattery J, Dearden M, Douglas Miller J. Measuring the burden of secondary insults in head-injured patients during intensive care. J Neurosurg Anesthesiol. 1994;6:4–14.CrossRefPubMed
3.
go back to reference Marmarou A, Anderson RL, Ward JD, et al. Impact of ICP instability and hypotension on outcome in patients with severe head trauma. J Neurosurg. 1991;75:S59–66.CrossRef Marmarou A, Anderson RL, Ward JD, et al. Impact of ICP instability and hypotension on outcome in patients with severe head trauma. J Neurosurg. 1991;75:S59–66.CrossRef
4.
5.
go back to reference BrainIT. Brain-it core dataset, manual of operations, data element definitions. 2009. BrainIT. Brain-it core dataset, manual of operations, data element definitions. 2009.
6.
go back to reference Piper I, Chambers I, Citerio G, Enblad P, Gregson B, Howells T, Kiening K, Mattern J, Nilsson P, Ragauskas A, Sahuquillo J, Donald R, Sinnott R, Stell A. The brain monitoring with information technology (BrainIT) collaborative network: EC feasibility study results and future direction. Acta Neurochir. 2010;152(11):1859–71. https://doi.org/10.1007/s00701-010-0719-1.CrossRefPubMed Piper I, Chambers I, Citerio G, Enblad P, Gregson B, Howells T, Kiening K, Mattern J, Nilsson P, Ragauskas A, Sahuquillo J, Donald R, Sinnott R, Stell A. The brain monitoring with information technology (BrainIT) collaborative network: EC feasibility study results and future direction. Acta Neurochir. 2010;152(11):1859–71. https://​doi.​org/​10.​1007/​s00701-010-0719-1.CrossRefPubMed
7.
go back to reference AvertIT. Avert-it project (FP7-217049-AVERT-IT). 2008. AvertIT. Avert-it project (FP7-217049-AVERT-IT). 2008.
8.
go back to reference Funahashi K. On the approximate realization of continuous mappings by neural networks. Neural Networks. 1989;2(3):183–192.CrossRef Funahashi K. On the approximate realization of continuous mappings by neural networks. Neural Networks. 1989;2(3):183–192.CrossRef
9.
go back to reference Bishop CM. Neural networks for pattern recognition. Oxford University Press; 1995. Bishop CM. Neural networks for pattern recognition. Oxford University Press; 1995.
10.
go back to reference Ripley BR. Pattern recognition and neural networks. Cambridge University Press; 1996. Ripley BR. Pattern recognition and neural networks. Cambridge University Press; 1996.
11.
go back to reference MacKay DJC. Probable networks and plausible predictions—a review of practical bayesian methods for supervised neural networks. Network. 1995;6:469–505.CrossRef MacKay DJC. Probable networks and plausible predictions—a review of practical bayesian methods for supervised neural networks. Network. 1995;6:469–505.CrossRef
12.
go back to reference Neal RM. Bayesian learning for neural networks. Springer, Lecture Notes in Statistics. 1996. Neal RM. Bayesian learning for neural networks. Springer, Lecture Notes in Statistics. 1996.
13.
go back to reference Stell A, Sinnott R, Jiang J, Donald R, Chambers I, Citerio G, Enblad P, Gregson B, Howells T, Kiening K, Nilsson P, Ragauskas A, Sahuquillo J, Piper I. Federating distributed clinical data for the prediction of adverse hypotensive events. Philos Trans R Soc. 2009;367(1898):2679–90.CrossRef Stell A, Sinnott R, Jiang J, Donald R, Chambers I, Citerio G, Enblad P, Gregson B, Howells T, Kiening K, Nilsson P, Ragauskas A, Sahuquillo J, Piper I. Federating distributed clinical data for the prediction of adverse hypotensive events. Philos Trans R Soc. 2009;367(1898):2679–90.CrossRef
14.
go back to reference Hanfelt JJ, Slack RS, Gehan EA. A modification of simon’s optimal design for phase ii trials when the criterion is median sample size. Control Clin Trials. 1999;20:555–66.CrossRefPubMed Hanfelt JJ, Slack RS, Gehan EA. A modification of simon’s optimal design for phase ii trials when the criterion is median sample size. Control Clin Trials. 1999;20:555–66.CrossRefPubMed
15.
go back to reference Simon R. Optimal two-stage designs for phase ii clinical trials. Control Clin Trials. 10:1–10, 1989.CrossRefPubMed Simon R. Optimal two-stage designs for phase ii clinical trials. Control Clin Trials. 10:1–10, 1989.CrossRefPubMed
16.
go back to reference Crawley M. The R book (Second Edition). New York: Wiley; 2012. Crawley M. The R book (Second Edition). New York: Wiley; 2012.
17.
go back to reference Kumar A, Roberts D, Wood KE, Light B, Parrillo JE, Sharma S, Suppes R, Feinstein D, Zanotti S, Taiberg L, Gurka D, Kumar A, Cheang M. Duration of hypotension before initiation of effective antimicrobial therapy is the critical determinant of survival in human septic shock. Crit Care Med. 2006;34(6):1589–96.CrossRefPubMed Kumar A, Roberts D, Wood KE, Light B, Parrillo JE, Sharma S, Suppes R, Feinstein D, Zanotti S, Taiberg L, Gurka D, Kumar A, Cheang M. Duration of hypotension before initiation of effective antimicrobial therapy is the critical determinant of survival in human septic shock. Crit Care Med. 2006;34(6):1589–96.CrossRefPubMed
18.
go back to reference Bijker JB, vanKlei WA, Vergouwe Y, .Eleveld DJ, van Wolfswinkel L, Moons KGM, Kalkman CJ. Intraoperative hypotension and 1-year mortality after noncardiac surgery. Anesthesiology. 2009;111(6):1217–26.CrossRefPubMed Bijker JB, vanKlei WA, Vergouwe Y, .Eleveld DJ, van Wolfswinkel L, Moons KGM, Kalkman CJ. Intraoperative hypotension and 1-year mortality after noncardiac surgery. Anesthesiology. 2009;111(6):1217–26.CrossRefPubMed
19.
go back to reference Smiley R. Fast fourier transforms as prophecy: predicting hypotension during spinal anes-thesia. Anesthesiology. 2005;102(6):1079–80.CrossRefPubMed Smiley R. Fast fourier transforms as prophecy: predicting hypotension during spinal anes-thesia. Anesthesiology. 2005;102(6):1079–80.CrossRefPubMed
20.
go back to reference Moody GB, Lehman LH. Predicting acute hypotensive episodes: the10th annual physionet/computers in cardiology challenge. Comput Cardiol. 2009;36:541–4.PubMedPubMedCentral Moody GB, Lehman LH. Predicting acute hypotensive episodes: the10th annual physionet/computers in cardiology challenge. Comput Cardiol. 2009;36:541–4.PubMedPubMedCentral
21.
go back to reference Henriques JH, Rocha TR. Prediction of acute hypotensive episodes using neural network multi-models. Comput Cardiol. 2009;36:549–52. Henriques JH, Rocha TR. Prediction of acute hypotensive episodes using neural network multi-models. Comput Cardiol. 2009;36:549–52.
22.
go back to reference Chen X, Xu D, Zhang G, Mukkamala R. Forecasting acute hypotensive episodes in intensive care patients based on a peripheral arterial blood pressure waveform. Comput Cardiol. 2009;36:545–8. Chen X, Xu D, Zhang G, Mukkamala R. Forecasting acute hypotensive episodes in intensive care patients based on a peripheral arterial blood pressure waveform. Comput Cardiol. 2009;36:545–8.
23.
go back to reference Mneimneh MA, Povinelli RJ. A rule-based approach toward the prediction of acute hypotensive episodes. Comput Cardiol. 2009;36:557–60. Mneimneh MA, Povinelli RJ. A rule-based approach toward the prediction of acute hypotensive episodes. Comput Cardiol. 2009;36:557–60.
24.
go back to reference Gabutti L, Vadilonga D, Mombelli G, Burnier M, Marone C. Artificial neural networks improve the prediction of kt/v, follow-up dietary protein intake and hypotension risk in haemodialysis patients. Nephrol Dial Transplant. 2004;19:1204–11.CrossRefPubMed Gabutti L, Vadilonga D, Mombelli G, Burnier M, Marone C. Artificial neural networks improve the prediction of kt/v, follow-up dietary protein intake and hypotension risk in haemodialysis patients. Nephrol Dial Transplant. 2004;19:1204–11.CrossRefPubMed
25.
go back to reference Reich DL, Hossain S, Krol M, Baez B, Patel P, Bernstein A, Bodian CA. Predictors of hypotension after induction of general anesthesia. Anesth Analg. 2005;101(3):622–8.CrossRefPubMed Reich DL, Hossain S, Krol M, Baez B, Patel P, Bernstein A, Bodian CA. Predictors of hypotension after induction of general anesthesia. Anesth Analg. 2005;101(3):622–8.CrossRefPubMed
26.
go back to reference Lehman L, Saeed M, Moody G, Mark R. Similarity-based searching in multi-parameter time series databases. Comput Cardiol. 2008;35:653–6.PubMedPubMedCentral Lehman L, Saeed M, Moody G, Mark R. Similarity-based searching in multi-parameter time series databases. Comput Cardiol. 2008;35:653–6.PubMedPubMedCentral
27.
go back to reference Dasta JF, McLaughlin TP, Mody SH, Piech CT. Daily cost of an intensive care unit day: the contribution of mechanical ventilation. Crit Care Med. 2005;33(6):1266–71.CrossRefPubMed Dasta JF, McLaughlin TP, Mody SH, Piech CT. Daily cost of an intensive care unit day: the contribution of mechanical ventilation. Crit Care Med. 2005;33(6):1266–71.CrossRefPubMed
28.
go back to reference Donald R, Howells T, Piper I, Chambers I, Citerio G, Enblad P, Gregson B, Kiening K, Mattern J, Nilsson P, Ragauskas A, Sahuquillo J, Sinnott R, Stell A. Trigger characteristics of EUSIG-defined hypotensive events. Acta Neurochir Suppl. 2012;114:45 – 9.CrossRefPubMed Donald R, Howells T, Piper I, Chambers I, Citerio G, Enblad P, Gregson B, Kiening K, Mattern J, Nilsson P, Ragauskas A, Sahuquillo J, Sinnott R, Stell A. Trigger characteristics of EUSIG-defined hypotensive events. Acta Neurochir Suppl. 2012;114:45 – 9.CrossRefPubMed
32.
go back to reference Docherty AB, Lone NI. Exploiting big data for critical care research. Curr Opin Crit Care. 2015;21(5):467–72.CrossRefPubMed Docherty AB, Lone NI. Exploiting big data for critical care research. Curr Opin Crit Care. 2015;21(5):467–72.CrossRefPubMed
33.
go back to reference Celi LA, Mark RG, Stone DJ, Montgomery RA. “Big Data” in the intensive care unit. Closing the data loop. Am J Respir Crit Care Med. 2013;187(11):1157–60.CrossRefPubMed Celi LA, Mark RG, Stone DJ, Montgomery RA. “Big Data” in the intensive care unit. Closing the data loop. Am J Respir Crit Care Med. 2013;187(11):1157–60.CrossRefPubMed
34.
go back to reference Figini S, Maggi M. Performance of credit risk prediction models via proper loss functions. Technical report, Universita di Pavia, Department of Economics and Management, 2014. Figini S, Maggi M. Performance of credit risk prediction models via proper loss functions. Technical report, Universita di Pavia, Department of Economics and Management, 2014.
Metadata
Title
Forewarning of hypotensive events using a Bayesian artificial neural network in neurocritical care
Authors
Rob Donald
Tim Howells
Ian Piper
P. Enblad
P. Nilsson
I. Chambers
B. Gregson
G. Citerio
K. Kiening
J. Neumann
A. Ragauskas
J. Sahuquillo
R. Sinnott
A. Stell
the BrainIT Group
Publication date
01-02-2019
Publisher
Springer Netherlands
Published in
Journal of Clinical Monitoring and Computing / Issue 1/2019
Print ISSN: 1387-1307
Electronic ISSN: 1573-2614
DOI
https://doi.org/10.1007/s10877-018-0139-y

Other articles of this Issue 1/2019

Journal of Clinical Monitoring and Computing 1/2019 Go to the issue