Publication | Closed Access
Experiences with mining temporal event sequences from electronic medical records
80
Citations
23
References
2011
Year
Unknown Venue
EngineeringEmr Mining SystemPartial OrderText MiningNatural Language ProcessingInformation RetrievalData ScienceData MiningComplex Event ProcessingTemporal Event SequencesTemporal DataBiomedical Text MiningHealthcare Big DataEvent ProcessingHealth InformaticsKnowledge DiscoveryTemporal Pattern RecognitionComputer ScienceElectronic Health RecordPartial Order InformationClinical DataTemporal DatabaseClinical Database
The standardization and wider use of electronic medical records (EMR) creates opportunities for better understanding patterns of illness and care within and across medical systems. Our interest is in the temporal history of event codes embedded in patients' records, specifically investigating frequently occurring sequences of event codes across patients. In studying data from more than 1.6 million patient histories at the University of Michigan Health system we quickly realized that frequent sequences, while providing one level of data reduction, still constitute a serious analytical challenge as many involve alternate serializations of the same sets of codes. To further analyze these sequences, we designed an approach where a partial order is mined from frequent sequences of codes. We demonstrate an EMR mining system called EMRView that enables exploration of the precedence relationships to quickly identify and visualize partial order information encoded in key classes of patients. We demonstrate some important nuggets learned through our approach and also outline key challenges for future research based on our experiences.
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