Data science for infection management & antimicrobial stewardship

Christian Luz

    Research output: ThesisThesis fully internal (DIV)

    1741 Downloads (Pure)

    Abstract

    Improving infection management and supporting the rational use of antimicrobials through antimicrobial stewardship requires different disciplines to interact in shared clinical decision-making processes. This thesis explores the use of data science to support these processes by leveraging data from routine electronic health records. New approaches to data wrangling, data visualization, and data modelling and prediction were developed and tested for their potential to support clinicians with data insights that can ultimately improve the quality of patient care.
    Original languageEnglish
    QualificationDoctor of Philosophy
    Awarding Institution
    • University of Groningen
    Supervisors/Advisors
    • Sinha, Bhanu, Supervisor
    • Glasner, Corinna, Co-supervisor
    • Nijsten, Maarten, Co-supervisor
    Award date22-Nov-2021
    Place of Publication[Groningen]
    Publisher
    DOIs
    Publication statusPublished - 2021

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