An Associative Memory Approach to Healthcare Monitoring and Decision Making.

Journal: Sensors (Basel, Switzerland)
Published Date:

Abstract

The rapid proliferation of connectivity, availability of ubiquitous computing, miniaturization of sensors and communication technology, have changed healthcare in all its areas, creating the well-known healthcare paradigm of e-Health. In this paper, an embedded system capable of monitoring, learning and classifying biometric signals is presented. The machine learning model is based on associative memories to predict the presence or absence of coronary artery disease in patients. Classification accuracy, sensitivity and specificity results show that the performance of our proposal exceeds the performance achieved by each of the fifty widely known algorithms against which it was compared.

Authors

  • Mario Aldape-Pérez
    Instituto Politécnico Nacional, Computational Intelligence Laboratory at CIDETEC, Ciudad de Mexico 07700, Mexico. maldape@ipn.mx.
  • Antonio Alarcón-Paredes
    1 Universidad Autónoma de Guerrero, Chilpancingo, Guerrero, México.
  • Cornelio Yáñez-Márquez
    Instituto Politécnico Nacional, Computational Intelligence Laboratory at CIC, Ciudad de Mexico 07738, Mexico. cyanez@cic.ipn.mx.
  • Itzamá López-Yáñez
    Instituto Politécnico Nacional, Computational Intelligence Laboratory at CIDETEC, Ciudad de Mexico 07700, Mexico. ilopezy@ipn.mx.
  • Oscar Camacho-Nieto
    Instituto Politécnico Nacional, Computational Intelligence Laboratory at CIDETEC, Ciudad de Mexico 07700, Mexico. ocamacho@ipn.mx.