Machine learning techniques for computer-based decision systems in the operating theatre: application to analgesia delivery

Author:

Gonzalez-Cava Jose M1,Arnay Rafael1,Mendez-Perez Juan Albino1,León Ana2,Martín María2,Reboso Jose A2,Jove-Perez Esteban3,Calvo-Rolle Jose Luis4

Affiliation:

1. Department of Computer Science and System Engineering, Universidad de La Laguna (ULL), 38200 La Laguna (Tenerife), Spain

2. Hospital Universitario de Canarias, 38320 La Laguna (Tenerife), Spain

3. Department of Computer Science and System Engineering, Universidad de La Laguna (ULL), 38200 La Laguna (Tenerife), Spain and Department of Industrial Engineering, Universidade da Coruña, 15405 Coruña, Spain

4. Department of Industrial Engineering, Universidade da Coruña, 15405 Coruña, Spain

Abstract

Abstract This work focuses on the application of machine learning techniques to assist the clinicians in the administration of analgesic drug during general anaesthesia. Specifically, the main objective is to propose the basis of an intelligent system capable of making decisions to guide the opioid dose changes based on a new nociception monitor, the analgesia nociception index (ANI). Clinical data were obtained from 15 patients undergoing cholecystectomy surgery. By means of an off-line study, machine learning techniques were applied to analyse the possible relationship between the analgesic dose changes performed by the physician due to the hemodynamic activity of the patients and the evolution of the ANI. After training different classifiers and testing the results under cross validation, a preliminary relationship between the evolution of ANI and the dosage of remifentanil was found. These results evidence the potential of the ANI as a promising index to guide the infusion of analgesia.

Publisher

Oxford University Press (OUP)

Subject

Logic

Reference48 articles.

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