A Knowledge-Base for a Personalized Infectious Disease Risk Prediction System.

Journal: Studies in health technology and informatics
Published Date:

Abstract

We present a knowledge-base to represent collated infectious disease risk (IDR) knowledge. The knowledge is about personal and contextual risk of contracting an infectious disease obtained from declarative sources (e.g. Atlas of Human Infectious Diseases). Automated prediction requires encoding this knowledge in a form that can produce risk probabilities (e.g. Bayesian Network - BN). The knowledge-base presented in this paper feeds an algorithm that can auto-generate the BN. The knowledge from 234 infectious diseases was compiled. From this compilation, we designed an ontology and five rule types for modelling IDR knowledge in general. The evaluation aims to assess whether the knowledge-base structure, and its application to three disease-country contexts, meets the needs of personalized IDR prediction system. From the evaluation results, the knowledge-base conforms to the system's purpose: personalization of infectious disease risk.

Authors

  • Retno Vinarti
    School of Computer Science and Statistics, Trinity College Dublin, The University of Dublin, Ireland.
  • Lucy Hederman
    School of Computer Science and Statistics, Trinity College Dublin, The University of Dublin, Ireland.