Hostname: page-component-8448b6f56d-c47g7 Total loading time: 0 Render date: 2024-04-18T13:15:48.091Z Has data issue: false hasContentIssue false

Neural nets and prediction of the recovery rate from neuromuscular block

Published online by Cambridge University Press:  02 June 2005

O. A. P. Santanen
Affiliation:
Helsinki University Central Hospital, Department of Anaesthesia and Intensive Care Medicine, Eye-ENT Clinic, Finland
N. Svartling
Affiliation:
Helsinki University Central Hospital, Töölö Hospital, Finland
J. Haasio
Affiliation:
Helsinki University Central Hospital, Töölö Hospital, Finland
M. P. J. Paloheimo
Affiliation:
Helsinki University Central Hospital, Department of Anaesthesia and Intensive Care Medicine, Eye-ENT Clinic, Finland
Get access

Abstract

Summary

Background and objective: The aim was to train artificial neural nets to predict the recovery of a neuromuscular block during general anaesthesia. It was assumed that the initial/early neuromuscular recovery data with the simultaneously measured physical variables as inputs into a well-trained back-propagation neural net would enable the net to predict a rough estimate of the remaining recovery time.

Methods: Spontaneous recovery from neuromuscular block (electrically evoked electromyographic train-of-four responses) were recorded with the following variables known to affect the block: multiple minimum alveolar concentration, end-tidal CO2 concentration, and peripheral and central temperature.

Results: The mean prediction errors, mean absolute prediction errors, root-mean-squared prediction errors and correlation coefficients of all the nets were significantly better than those of average-based predictions used in the study. The root-mean-squared prediction error of the net – employing minimum alveolar concentrations from the whole recovery period (the recovery time from E2/E1 = 0.30 to E4/E1 = 0.75; E1 = first response of train-of-four, E2 = second response of train-of-four, etc.) – were significantly smaller than those of other nets, or the same net employing minimum alveolar concentrations only from the initial recovery period (from E2/E1 = 0.30 to E4/E1 = 0.25).

Conclusions: Neural nets could predict individual recovery times from the neuromuscular block significantly better than the average-based method used here, which was supposed to be more accurate than guesses by any clinician. The minimum alveolar concentration was the only monitored variable that influenced the recovery rate, but it did not aid neural net prediction.

Type
Original Article
Copyright
2003 European Society of Anaesthesiology

Access options

Get access to the full version of this content by using one of the access options below. (Log in options will check for institutional or personal access. Content may require purchase if you do not have access.)

References

Neural Network Toolbox User's Guide.Massachusetts, USA: MathWorks, Inc., 1992.
Pofahl WE, Walczak SM, Rhone E, Izenberg SD. Use of an artificial neural network to predict length of stay in acute pancreatitis. Am Surg 1998; 64: 868872.Google Scholar
Kim WO, Kil HK, Kang JW, Park HR. Prediction on lengths of stay in the postanesthesia care unit following general anesthesia: preliminary study of the neural network and logistic regression modelling. J Korean Med Sci 2000; 15: 2530.Google Scholar
Carpenter RL, Mulroy MF. Edrophonium antagonizes combined lidocaine–pancuronium and verapamil–pancuronium neuromuscular blockade in cats. Anesthesiology 1986; 65: 506510.Google Scholar
Dupuis JY, Martin R, Tetrault J-P. Atracurium and vecuronium interaction with gentamicin and tobramycin. Can J Anaesth 1989; 36: 407411.Google Scholar
Rupp SM, Miller RD, Gencarelli PJ. Vecuronium-induced neuromuscular blockade during enflurane, isoflurane, and halothane anesthesia in humans. Anesthesiology 1984; 60: 102105.Google Scholar
Pittet JF, Melis A, Rouge JC, et al. Effect of volatile anesthetics on vecuronium-induced neuromuscular blockade in children. Anesth Analg 1990; 70: 248252.Google Scholar
Vanlinthout LE, Booij LH, van Egmond J, Robertson EN. Effect of isoflurane and sevoflurane on the magnitude and time course of neuromuscular block produced by vecuronium, pancuronium and atracurium [see comments]. Br J Anaesth 1996; 76: 389395.Google Scholar
Eriksson LI, Staun P, Lennmarken C. The influence of 0.5% isoflurane on a vecuronium-induced neuromuscular blockade. Acta Anaesth Scand 1989; 33: 309312.Google Scholar
Buzello W, Schluermann D, Pollmaecher T, Spillner G. Unequal effects of cardiopulmonary bypass-induced hypothermia on neuromuscular blockade from constant infusion of alcuronium, d-tubocurarine, pancuronium and vecuronium. Anesthesiology 1987; 66: 842846.Google Scholar
Eriksson LI, Viby-Mogensen J, Lennmarken C. The effect of peripheral hypothermia on a vecuronium-induced neuromuscular block. Acta Anaesth Scand 1991; 35: 387392.Google Scholar
Funk DI, Crul JF, Pol FM. Effects of changes in acid–base balance on neuromuscular blockade produced by ORG-NC 45. Acta Anaesth Scand 1980; 24: 119124.Google Scholar