Hybrid Intelligent Model to Predict the Remifentanil Infusion Rate in Patients Under General Anesthesia
Esteban Jove, José M. González-Cava, José‐Luis Casteleiro‐Roca, Héctor Quintián, Juan Albino Méndez Pérez, R. Vega, Francisco Zayas‐Gato, Francisco Javier de Cos Juez, Ana M. León, M.C. Martín Delgado, José Antonio Reboso, Michał Woźniak, José Luis Calvo‐Rolle
Abstract
Abstract Automatic control of physiological variables is one of the most active areas in biomedical engineering. This paper is centered in the prediction of the analgesic variables evolution in patients undergoing surgery. The proposal is based on the use of hybrid intelligent modelling methods. The study considers the Analgesia Nociception Index (ANI) to assess the pain in the patient and remifentanil as intravenous analgesic. The model proposed is able to make a one-step-ahead prediction of the remifentanil dose corresponding to the current state of the patient. The input information is the previous remifentanil dose, the ANI variable and the electromyogram signal. Modelling techniques used are Artificial Neural Networks and Support Vector machines for Regression combined with clustering methods. Both training and validation were done with a real dataset from different patients. Results obtained show the potential of this methodology to calculate the drug dose corresponding to a given analgesic state of the patient.