Skip to main content
Top
Published in: Journal of Clinical Monitoring and Computing 6/2019

Open Access 01-12-2019 | Tachyarrythmia | Original Research

Predicting tachycardia as a surrogate for instability in the intensive care unit

Authors: Joo Heung Yoon, Lidan Mu, Lujie Chen, Artur Dubrawski, Marilyn Hravnak, Michael R. Pinsky, Gilles Clermont

Published in: Journal of Clinical Monitoring and Computing | Issue 6/2019

Login to get access

Abstract

Tachycardia is a strong though non-specific marker of cardiovascular stress that proceeds hemodynamic instability. We designed a predictive model of tachycardia using multi-granular intensive care unit (ICU) data by creating a risk score and dynamic trajectory. A subset of clinical and numerical signals were extracted from the Multiparameter Intelligent Monitoring in Intensive Care II database. A tachycardia episode was defined as heart rate ≥ 130/min lasting for ≥ 5 min, with ≥ 10% density. Regularized logistic regression (LR) and random forest (RF) classifiers were trained to create a risk score for upcoming tachycardia. Three different risk score models were compared for tachycardia and control (non-tachycardia) groups. Risk trajectory was generated from time windows moving away at 1 min increments from the tachycardia episode. Trajectories were computed over 3 hours leading up to the episode for three different models. From 2809 subjects, 787 tachycardia episodes and 707 control periods were identified. Patients with tachycardia had increased vasopressor support, longer ICU stay, and increased ICU mortality than controls. In model evaluation, RF was slightly superior to LR, which accuracy ranged from 0.847 to 0.782, with area under the curve from 0.921 to 0.842. Risk trajectory analysis showed average risks for tachycardia group evolved to 0.78 prior to the tachycardia episodes, while control group risks remained < 0.3. Among the three models, the internal control model demonstrated evolving trajectory approximately 75 min before tachycardia episode. Clinically relevant tachycardia episodes can be predicted from vital sign time series using machine learning algorithms.
Literature
1.
go back to reference Morelli A, DEA, Passariello M. Annual update in intensive care and emergency medicine. Vincent JL, editor. Switzerland: Springer International Publishing; 2015. p 409. Morelli A, DEA, Passariello M. Annual update in intensive care and emergency medicine. Vincent JL, editor. Switzerland: Springer International Publishing; 2015. p 409.
2.
go back to reference Hamosh P, Cohn JN. Left ventricular function in acute myocardial infarction. J Clin Invest. 1971;50(3):523–33.CrossRef Hamosh P, Cohn JN. Left ventricular function in acute myocardial infarction. J Clin Invest. 1971;50(3):523–33.CrossRef
3.
go back to reference Palatini P, et al. High heart rate: a risk factor for cardiovascular death in elderly men. Arch Intern Med. 1999;159(6):585–92.CrossRef Palatini P, et al. High heart rate: a risk factor for cardiovascular death in elderly men. Arch Intern Med. 1999;159(6):585–92.CrossRef
4.
go back to reference Diaz A, et al. Long-term prognostic value of resting heart rate in patients with suspected or proven coronary artery disease. Eur Heart J. 2005;26(10):967–74.CrossRef Diaz A, et al. Long-term prognostic value of resting heart rate in patients with suspected or proven coronary artery disease. Eur Heart J. 2005;26(10):967–74.CrossRef
5.
go back to reference Dyer AR, et al. Heart rate as a prognostic factor for coronary heart disease and mortality: findings in three Chicago epidemiologic studies. Am J Epidemiol. 1980;112(6):736–49.CrossRef Dyer AR, et al. Heart rate as a prognostic factor for coronary heart disease and mortality: findings in three Chicago epidemiologic studies. Am J Epidemiol. 1980;112(6):736–49.CrossRef
6.
go back to reference Kannel WB, et al. Heart rate and cardiovascular mortality: the Framingham study. Am Heart J. 1987;113(6):1489–94.CrossRef Kannel WB, et al. Heart rate and cardiovascular mortality: the Framingham study. Am Heart J. 1987;113(6):1489–94.CrossRef
7.
go back to reference Norwegian Multicenter Study Group. Timolol-induced reduction in mortality and reinfarction in patients surviving acute myocardial infarction. N Engl J Med. 1981;304(14):801–7.CrossRef Norwegian Multicenter Study Group. Timolol-induced reduction in mortality and reinfarction in patients surviving acute myocardial infarction. N Engl J Med. 1981;304(14):801–7.CrossRef
8.
go back to reference Ander DS, et al. Undetected cardiogenic shock in patients with congestive heart failure presenting to the emergency department. Am J Cardiol. 1998;82(7):888–91.CrossRef Ander DS, et al. Undetected cardiogenic shock in patients with congestive heart failure presenting to the emergency department. Am J Cardiol. 1998;82(7):888–91.CrossRef
9.
go back to reference Copie X, et al. Predictive power of increased heart rate versus depressed left ventricular ejection fraction and heart rate variability for risk stratification after myocardial infarction. Results of a two-year follow-up study. J Am Coll Cardiol. 1996;27(2):270–6.CrossRef Copie X, et al. Predictive power of increased heart rate versus depressed left ventricular ejection fraction and heart rate variability for risk stratification after myocardial infarction. Results of a two-year follow-up study. J Am Coll Cardiol. 1996;27(2):270–6.CrossRef
10.
go back to reference Sander O, et al., Impact of prolonged elevated heart rate on incidence of major cardiac events in critically ill patients with a high risk of cardiac complications. Crit Care Med, 2005;33(1):81–8. (discussion 241–2)CrossRef Sander O, et al., Impact of prolonged elevated heart rate on incidence of major cardiac events in critically ill patients with a high risk of cardiac complications. Crit Care Med, 2005;33(1):81–8. (discussion 241–2)CrossRef
11.
go back to reference Aujesky D, et al. Derivation and validation of a prognostic model for pulmonary embolism. Am J Respir Crit Care Med. 2005;172(8):1041–6.CrossRef Aujesky D, et al. Derivation and validation of a prognostic model for pulmonary embolism. Am J Respir Crit Care Med. 2005;172(8):1041–6.CrossRef
12.
13.
go back to reference Azimi G, Vincent JL. Ultimate survival from septic shock. Resuscitation. 1986;14(4):245–53.CrossRef Azimi G, Vincent JL. Ultimate survival from septic shock. Resuscitation. 1986;14(4):245–53.CrossRef
14.
go back to reference Morelli A, et al. Effect of heart rate control with esmolol on hemodynamic and clinical outcomes in patients with septic shock: a randomized clinical trial. JAMA. 2013;310(16):1683–91.CrossRef Morelli A, et al. Effect of heart rate control with esmolol on hemodynamic and clinical outcomes in patients with septic shock: a randomized clinical trial. JAMA. 2013;310(16):1683–91.CrossRef
15.
go back to reference Parker MM, et al. Serial cardiovascular variables in survivors and nonsurvivors of human septic shock: heart rate as an early predictor of prognosis. Crit Care Med. 1987;15(10):923–9.CrossRef Parker MM, et al. Serial cardiovascular variables in survivors and nonsurvivors of human septic shock: heart rate as an early predictor of prognosis. Crit Care Med. 1987;15(10):923–9.CrossRef
16.
go back to reference Gardner-Thorpe J, et al. The value of modified early warning score (MEWS) in surgical in-patients: a prospective observational study. Ann R Coll Surg Engl. 2006;88(6):571–5.CrossRef Gardner-Thorpe J, et al. The value of modified early warning score (MEWS) in surgical in-patients: a prospective observational study. Ann R Coll Surg Engl. 2006;88(6):571–5.CrossRef
17.
go back to reference Yoon JH, Pinsky MR. Predicting adverse hemodynamic events in critically ill patients. Curr Opin Crit Care. 2018;24(3):196–203.CrossRef Yoon JH, Pinsky MR. Predicting adverse hemodynamic events in critically ill patients. Curr Opin Crit Care. 2018;24(3):196–203.CrossRef
18.
go back to reference Hravnak M, et al. Cardiorespiratory instability before and after implementing an integrated monitoring system. Crit Care Med. 2011;39(1):65–72.CrossRef Hravnak M, et al. Cardiorespiratory instability before and after implementing an integrated monitoring system. Crit Care Med. 2011;39(1):65–72.CrossRef
19.
go back to reference Chen L, Ogundele O, Clermont G, Hravnak M, Pinsky MR, Dubrawski AW. Dynamic and personalized risk forecast in step-down units. Implications for monitoring paradigms. Ann Am Thorac Soc. 2017;14:384–91.CrossRef Chen L, Ogundele O, Clermont G, Hravnak M, Pinsky MR, Dubrawski AW. Dynamic and personalized risk forecast in step-down units. Implications for monitoring paradigms. Ann Am Thorac Soc. 2017;14:384–91.CrossRef
20.
go back to reference Saeed M, et al. Multiparameter intelligent monitoring in intensive care II: a public-access intensive care unit database. Crit Care Med. 2011;39(5):952–60.CrossRef Saeed M, et al. Multiparameter intelligent monitoring in intensive care II: a public-access intensive care unit database. Crit Care Med. 2011;39(5):952–60.CrossRef
21.
go back to reference JTinsleyR; Braunwald, E; Fauci, AS; Hauser, SL; Longo. Dan L, editors. Harrison’s principles of internal medicine. New York: McGraw-Hill Medical Publishing Division;2005. pp. 1344–58. JTinsleyR; Braunwald, E; Fauci, AS; Hauser, SL; Longo. Dan L, editors. Harrison’s principles of internal medicine. New York: McGraw-Hill Medical Publishing Division;2005. pp. 1344–58.
22.
go back to reference Fosbol EL, et al. Long-term prognostic importance of resting heart rate in patients with left ventricular dysfunction in connection with either heart failure or myocardial infarction: the DIAMOND study. Int J Cardiol. 2010;140(3):279–86.CrossRef Fosbol EL, et al. Long-term prognostic importance of resting heart rate in patients with left ventricular dysfunction in connection with either heart failure or myocardial infarction: the DIAMOND study. Int J Cardiol. 2010;140(3):279–86.CrossRef
23.
go back to reference McGinley A, Pearse RM. A national early warning score for acutely ill patients. BMJ. 2012;345:e5310.CrossRef McGinley A, Pearse RM. A national early warning score for acutely ill patients. BMJ. 2012;345:e5310.CrossRef
24.
go back to reference Bishop C. Pattern recognition and machine learning. New York: Springer; 2006. Bishop C. Pattern recognition and machine learning. New York: Springer; 2006.
26.
go back to reference Dreiseitl S, Ohno-Machado L. Logistic regression and artificial neural network classification models: a methodology review. J Biomed Inform. 2002;35(5–6):352–9.CrossRef Dreiseitl S, Ohno-Machado L. Logistic regression and artificial neural network classification models: a methodology review. J Biomed Inform. 2002;35(5–6):352–9.CrossRef
27.
go back to reference Liaw AW, Wiener M, Classification and regression by random forest. R News. 2002;2(3):18–22. Liaw AW, Wiener M, Classification and regression by random forest. R News. 2002;2(3):18–22.
28.
go back to reference Demir-Kavuk O, et al. Prediction using step-wise L1, L2 regularization and feature selection for small data sets with large number of features. BMC Bioinformatics. 2011;12:412.CrossRef Demir-Kavuk O, et al. Prediction using step-wise L1, L2 regularization and feature selection for small data sets with large number of features. BMC Bioinformatics. 2011;12:412.CrossRef
29.
go back to reference Kohavi R, A Study of Cross-Validation and Bootstrap for Accuracy Estimation and Model Selection, In: international joint conference on artificial intelligence. 1995: Montreal, Quebec, Canada. Kohavi R, A Study of Cross-Validation and Bootstrap for Accuracy Estimation and Model Selection, In: international joint conference on artificial intelligence. 1995: Montreal, Quebec, Canada.
30.
go back to reference Pedregosa F, et al. Scikit-learn: machine learning in Python. J Mach Learn Res. 2011;12:2825–30. Pedregosa F, et al. Scikit-learn: machine learning in Python. J Mach Learn Res. 2011;12:2825–30.
31.
go back to reference Mullins CF, Psirides A. Activities of a Medical emergency team: a prospective observational study of 795 calls. Anaesth Intensive Care. 2016;44(1):34–43.CrossRef Mullins CF, Psirides A. Activities of a Medical emergency team: a prospective observational study of 795 calls. Anaesth Intensive Care. 2016;44(1):34–43.CrossRef
32.
go back to reference Walsh M, et al. Relationship between intraoperative mean arterial pressure and clinical outcomes after noncardiac surgery: toward an empirical definition of hypotension. Anesthesiology. 2013;119(3):507–15.CrossRef Walsh M, et al. Relationship between intraoperative mean arterial pressure and clinical outcomes after noncardiac surgery: toward an empirical definition of hypotension. Anesthesiology. 2013;119(3):507–15.CrossRef
33.
go back to reference Richman JS, Moorman JR. Physiological time-series analysis using approximate entropy and sample entropy. Am J Physiol Heart Circ Physiol, 2000. 278(6): p. H2039-49. Richman JS, Moorman JR. Physiological time-series analysis using approximate entropy and sample entropy. Am J Physiol Heart Circ Physiol, 2000. 278(6): p. H2039-49.
34.
go back to reference Dormann CF, et al. Methods to account for spatial autocorrelation in the analysis of species distributional data: a review. Ecography. 2007;30(5):609–28.CrossRef Dormann CF, et al. Methods to account for spatial autocorrelation in the analysis of species distributional data: a review. Ecography. 2007;30(5):609–28.CrossRef
35.
go back to reference Duhamel R, Vetterli M. Fast fourier transforms: a tutorial review and a state of the art. Signal Process. 1990;19:259–99.CrossRef Duhamel R, Vetterli M. Fast fourier transforms: a tutorial review and a state of the art. Signal Process. 1990;19:259–99.CrossRef
36.
go back to reference Chen L, et al. Using supervised machine learning to classify real alerts and artifact in online multisignal vital sign monitoring data. Crit Care Med. 2016;44(7):e456-63.CrossRef Chen L, et al. Using supervised machine learning to classify real alerts and artifact in online multisignal vital sign monitoring data. Crit Care Med. 2016;44(7):e456-63.CrossRef
37.
go back to reference Scerbo M, et al. Prehospital triage of trauma patients using the random forest computer algorithm. J Surg Res. 2014;187(2):371–6.CrossRef Scerbo M, et al. Prehospital triage of trauma patients using the random forest computer algorithm. J Surg Res. 2014;187(2):371–6.CrossRef
38.
go back to reference Tjepkema-Cloostermans MC, et al. Cerebral recovery index: reliable help for prediction of neurologic Outcome after cardiac arrest. Crit Care Med. 2017;45(8):e789–97.CrossRef Tjepkema-Cloostermans MC, et al. Cerebral recovery index: reliable help for prediction of neurologic Outcome after cardiac arrest. Crit Care Med. 2017;45(8):e789–97.CrossRef
39.
go back to reference Clifford GD, Scott DJ, Villarroel M. User Guide and Documentation for the MIMIC II Database. 2009. Clifford GD, Scott DJ, Villarroel M. User Guide and Documentation for the MIMIC II Database. 2009.
40.
go back to reference Johnson AE, Pollard TJ, Shen L, Lehman LW, Feng M, Ghassemi M, Moody B, Szolovits P, Celi LA, Mark RG. MIMIC-III, a freely accessible critical care database. Sci Data. 2016;3:160035.CrossRef Johnson AE, Pollard TJ, Shen L, Lehman LW, Feng M, Ghassemi M, Moody B, Szolovits P, Celi LA, Mark RG. MIMIC-III, a freely accessible critical care database. Sci Data. 2016;3:160035.CrossRef
Metadata
Title
Predicting tachycardia as a surrogate for instability in the intensive care unit
Authors
Joo Heung Yoon
Lidan Mu
Lujie Chen
Artur Dubrawski
Marilyn Hravnak
Michael R. Pinsky
Gilles Clermont
Publication date
01-12-2019
Publisher
Springer Netherlands
Published in
Journal of Clinical Monitoring and Computing / Issue 6/2019
Print ISSN: 1387-1307
Electronic ISSN: 1573-2614
DOI
https://doi.org/10.1007/s10877-019-00277-0

Other articles of this Issue 6/2019

Journal of Clinical Monitoring and Computing 6/2019 Go to the issue