Inferring Knowledge from Clinical Data for Anesthesia Automation

  1. Gonzalez-Cava, Jose M. 1
  2. Iván Castilla-Rodríguez 1
  3. José Antonio Reboso 2
  4. Ana León 2
  5. Martín, María 2
  6. Esteban Jove-Pérez 13
  7. José Luis Calvo-Rolle 3
  8. Méndez-Pérez, Juan Albino 1
  1. 1 Universidad de La Laguna
    info

    Universidad de La Laguna

    San Cristobal de La Laguna, España

    ROR https://ror.org/01r9z8p25

  2. 2 Hospital Universitario de Canarias
    info

    Hospital Universitario de Canarias

    San Cristóbal de La Laguna, España

    ROR https://ror.org/05qndj312

  3. 3 Universidade da Coruña
    info

    Universidade da Coruña

    La Coruña, España

    ROR https://ror.org/01qckj285

Libro:
Hybrid Artificial Intelligent Systems. 14th International Conference, HAIS 2019: León, Spain, September 4–6, 2019. Proceedings
  1. Hilde Pérez García (coord.)
  2. Lidia Sánchez González (coord.)
  3. Manuel Castejón Limas (coord.)
  4. Héctor Quintián Pardo (coord.)
  5. Emilio Corchado Rodríguez (coord.)

Editorial: Springer Suiza

ISBN: 978-3-030-29859-3 978-3-030-29858-6

Año de publicación: 2019

Páginas: 480-491

Congreso: Hybrid Artificial Intelligent Systems (14. 2019. León)

Tipo: Aportación congreso

Resumen

The use of Hybrid Artificial Intelligent techniques in medicine has increased in recent years. Specifically, one of the main challenges in anesthesia is achieving new controllers capable of automating the drug titration during surgeries. This work deals with the development of a Takagi-Sugeno fuzzy controller to automate the drug infusion for the control of hypnosis in patients undergoing anesthesia. To do that, a combination of Neural Networks and optimization techniques were applied to tune the internal parameters of the fuzzy controller. For the training process, data from 20 patients undergoing surgery were used. Finally, the controller proposed was tested over 16 virtual surgeries. It was concluded that the fuzzy controller was able to meet both clinical and control objectives.