Monash University
Browse

Data Mining Cardiovascular Bayesian Networks

Download (363.59 kB)
report
posted on 2022-08-29, 04:57 authored by C R Twardy, A E Nicholson, K B Korb, J McNeil
Bayesian networks (BNs) are rapidly becoming a tool of choice for applied Artificial Intelligence. Although BNs have been successfully used for many medical diagnosis problems, there have been few applications to epidemiological data where data mining methods play a significant role. In this paper, we look at the application of BNs to epidemiological data, specifically assessment of risk for coronary heart disease (CHD). We build the BNs: (1) by knowledge engineering BNs from two epidemiological models of CHD in the literature;(2) by applying a causal BN learner. We evaluate these BNs using cross-validation. We compared performance in predicting CHD events over 10 years, measuring area under the ROC curve and Bayesian information reward. The knowledge engineered BNs performed as well as logistic regression, while being easier to interpret. These BNs will serve as the baseline in future efforts to extend BN technology to better handle epidemiological data, specifically to predict and prevent CHD.

History

Technical report number

2004/165

Year of publication

2004

Usage metrics

    Monash Information Technology Technical Reports

    Exports

    RefWorks
    BibTeX
    Ref. manager
    Endnote
    DataCite
    NLM
    DC