Healthcare institutes enrich the repository of patients' disease related
information in an increasing manner which could have been more useful by
carrying out relational analysis. Data mining algorithms are proven to be quite
useful in exploring useful correlations from larger data repositories. In this
paper we have implemented Association Rules mining based a novel idea for
finding co-occurrences of diseases carried by a patient using the healthcare
repository. We have developed a system-prototype for Clinical State Correlation
Prediction (CSCP) which extracts data from patients' healthcare database,
transforms the OLTP data into a Data Warehouse by generating association rules.
The CSCP system helps reveal relations among the diseases. The CSCP system
predicts the correlation(s) among primary disease (the disease for which the
patient visits the doctor) and secondary disease/s (which is/are other
associated disease/s carried by the same patient having the primary disease).Comment: 5 pages, MEDINFO 2010, C. Safran et al. (Eds.), IOS Pres