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Computational Methods for Comparative Analysis of Rare Cell Subsets in Flow Cytometry

dc.contributor.advisor Chan, Cliburn
dc.contributor.author Frelinger, Jacob Jeffrey
dc.date.accessioned 2013-12-16T20:13:20Z
dc.date.available 2013-12-16T20:13:20Z
dc.date.issued 2013
dc.identifier.uri https://hdl.handle.net/10161/8213
dc.description.abstract <p>Automated analysis techniques for flow cytometry data can address many of the limitations of manual analysis by providing an objective approach for the identification of cellular subsets. While automated analysis has the potential to significantly improve automated analysis, challenges remain for automated methods in cross sample analysis for large scale studies. This thesis presents new methods for data normalization, sample enrichment for rare events of interest, and cell subset relabeling. These methods build upon and extend the use of Gaussian mixture models in automated flow cytometry analysis to enable practical large scale cell subset identification.</p>
dc.subject Bioinformatics
dc.subject Immunology
dc.subject Computer science
dc.subject automated analysis
dc.subject Flow Cytometry
dc.subject mixture models
dc.title Computational Methods for Comparative Analysis of Rare Cell Subsets in Flow Cytometry
dc.type Dissertation
dc.department Computational Biology and Bioinformatics


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