Exploratory Analysis in Time-Varying Data Sets: a Healthcare Network Application


TitleExploratory Analysis in Time-Varying Data Sets: a Healthcare Network Application
Publication TypeJournal Article
Year of Publication2013
AuthorsManukyan, N, Eppstein, MJ, Horbar, JD, Leahy, KA, Kenny, MJ, Mukherjee, S, Rizzo, DM
JournalIJACS (International Journal of Advanced Computer Science)
Volume3 (7)
Pagination322-329
Date Published2013/07
KeywordsArtificial intelligence, genetic algorithm, knowledge discovery, pattern recognition
Abstract

We introduce a new method for exploratory analysis of large data sets with time-varying features, where the aim is to automatically discover novel relationships between features (over some time period) that are predictive of any of a number of time-varying outcomes (over some other time period). Using a genetic algorithm, we co-evolve (i) a subset of predictive features, (ii) which attribute will be predicted (iii) the time period over which to assess the predictive features, and (iv) the time period over which to assess the predicted attribute. After validating the method on 15 synthetic test problems, we used the approach for exploratory analysis of a large healthcare network data set. We discovered a strong association, with 100% sensitivity, between hospital participation in multi-institutional quality improvement collaboratives during or before 2002, and changes in the risk-adjusted rates of mortality and morbidity observed after a 1-2 year lag. The proposed approach is a potentially powerful and general tool for exploratory analysis of a wide range of time-series data sets.

URLhttp://www.ncbi.nlm.nih.gov/pubmed/25664281
Refereed DesignationRefereed
Status: 
Published
Attributable Grant: 
RACC
Grant Year: 
Year3
Acknowledged VT EPSCoR: 
Ack-No