Multi-dimensional temporal abstraction and data mining of medical time series data : trends and challenges

Christina Catley, Heidi Bjering, Carolyn McGregor

    Research output: Chapter in Book / Conference PaperConference Paper

    Abstract

    ![CDATA[This paper presents emerging trends in the area of temporal abstraction and data mining, as applied to multi-dimensional data. The clinical context is that of Neonatal Intensive Care, an acute care environment distinguished by multi-dimensional and high-frequency data. Six key trends are identified and classified into the following categories: (1) data; (2) results; (3) integration; and (4) knowledge base. These trends form the basis of next-generation knowledge discovery in data systems, which must address challenges associated with supporting multi-dimensional and real-world clinical data, as well as null hypothesis testing. Architectural drivers for frameworks that support data mining and temporal abstraction include: process-level integration (i.e. workflow order); synthesized knowledge bases for temporal abstraction which combine knowledge derived from both data mining and domain experts; and system-level integration.]]
    Original languageEnglish
    Title of host publicationPersonalized Healthcare through Technology: Proceedings of the 30th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBS'08), held in Vancouver, BC on 20-25 August, 2008
    PublisherIEEE
    Number of pages4
    ISBN (Print)9781424418145
    Publication statusPublished - 2008
    EventIEEE Engineering in Medicine and Biology Society. Conference -
    Duration: 28 Aug 2012 → …

    Conference

    ConferenceIEEE Engineering in Medicine and Biology Society. Conference
    Period28/08/12 → …

    Keywords

    • data mining
    • artificial intelligence
    • medical informatics
    • temporal abstraction
    • neonatal intensive care

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