Impact of Imputing Missing Data in Bayesian Network Structure Learning for Obstructive Sleep Apnea Diagnosis.

Journal: Studies in health technology and informatics
Published Date:

Abstract

Numerous diagnostic decisions are made every day by healthcare professionals. Bayesian networks can provide a useful aid to the process, but learning their structure from data generally requires the absence of missing data, a common problem in medical data. We have studied missing data imputation using a step-wise nearest neighbors' algorithm, which we recommended given its limited impact on the assessed validity of structure learning Bayesian network classifiers for Obstructive Sleep Apnea diagnosis.

Authors

  • Daniela Ferreira-Santos
    CINTESIS - Centre for Health Technology and Services Research, Portugal.
  • Matilde Monteiro-Soares
    CINTESIS - Centre for Health Technology and Services Research, Portugal.
  • Pedro Pereira Rodrigues
    CINTESIS - Centre for Health Technology and Services Research, Portugal.