Computational intelligence contributions to readmisision risk prediction in healthcare systems

  1. ARTETXE BALLEJO, ARKAITZ
Dirigida por:
  1. Andoni Beristain Iraola Director/a
  2. Manuel Graña Romay Director

Universidad de defensa: Universidad del País Vasco - Euskal Herriko Unibertsitatea

Fecha de defensa: 26 de octubre de 2017

Tribunal:
  1. María Camino Rodríguez Vela Presidente/a
  2. Ana Isabel González Acuña Secretaria
  3. José Ramiro Varela Arias Vocal
  4. Sebastian Rios Perez Vocal
  5. José Manuel López Guede Vocal

Tipo: Tesis

Teseo: 143893 DIALNET lock_openADDI editor

Resumen

The Thesis tackles the problem of readmission risk prediction in healthcare systems from a machine learning and computational intelligence point of view. Readmission has been recognized as an indicator of healthcare quality with primary economic importance. We examine two specific instances of the problem, the emergency department (ED) admission and heart failure (HF) patient care using anonymized datasets from three institutions to carry real-life computational experiments validating the proposed approaches. The main difficulties posed by this kind of datasets is their high class imbalance ratio, and the lack of informative value of the recorded variables. This thesis reports the results of innovative class balancing approaches and new classification architectures.