Multivariate data analysis methods for the interpretation of microbial flow cytometric data.

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dc.contributor.author Davey, Hazel M.
dc.contributor.author Davey, Chris
dc.date.accessioned 2011-05-31T09:03:25Z
dc.date.available 2011-05-31T09:03:25Z
dc.date.issued 2011-03-02
dc.identifier.citation Davey , H M & Davey , C 2011 , ' Multivariate data analysis methods for the interpretation of microbial flow cytometric data. ' Advances in Biochemical Engineering and Biotechnology , vol 124 , pp. 183-209 . en
dc.identifier.other PURE: 161632
dc.identifier.other dspace: 2160/6816
dc.identifier.uri http://hdl.handle.net/2160/6816
dc.identifier.uri http://www.springerlink.com/content/tl67408156071017/ en
dc.description Davey, H. M., Davey, C. L. (2011). Multivariate data analysis methods for the detection and identification of microorganisms using flow cytometry. Advances in Biochemical Engineering and Biotechnology, 124, 183-209. IMPF: 01.64 RONO: 00 en
dc.description.abstract Flow cytometry is an important technique in cell biology and immunology and has been applied by many groups to the analysis of microorganisms. This has been made possible by developments in hardware that is now sensitive enough to be used routinely for analysis of microbes. However, in contrast to advances in the technology that underpin flow cytometry, there has not been concomitant progress in the software tools required to analyse, display and disseminate the data and manual analysis, of individual samples remains a limiting aspect of the technology. We present two new data sets that illustrate common applications of flow cytometry in microbiology and demonstrate the application of manual data analysis, automated visualisation (including the first description of a new piece of software we are developing to facilitate this), genetic programming, principal components analysis and artificial neural nets to these data. The data analysis methods described here are equally applicable to flow cytometric applications with other cell types. en
dc.format.extent 27 en
dc.language.iso eng
dc.relation.ispartof Advances in Biochemical Engineering and Biotechnology en
dc.title Multivariate data analysis methods for the interpretation of microbial flow cytometric data. en
dc.type Text en
dc.type.publicationtype Article (Journal) en
dc.identifier.doi http://dx.doi.org/10.1007/10_2010_80
dc.contributor.institution Institute of Biological, Environmental and Rural Sciences en
dc.description.status Peer reviewed en


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