A process for analysis of microarray comparative genomics hybridisation studies for bacterial genomes

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Carter, B., Wu, G. H., Woodward, M. J. and Anjum, M. F. (2008) A process for analysis of microarray comparative genomics hybridisation studies for bacterial genomes. Bmc Genomics, 9. ISSN 1471-2164 doi: 10.1186/1471-2164-9-53

Abstract/Summary

Background: Microarray based comparative genomic hybridisation (CGH) experiments have been used to study numerous biological problems including understanding genome plasticity in pathogenic bacteria. Typically such experiments produce large data sets that are difficult for biologists to handle. Although there are some programmes available for interpretation of bacterial transcriptomics data and CGH microarray data for looking at genetic stability in oncogenes, there are none specifically to understand the mosaic nature of bacterial genomes. Consequently a bottle neck still persists in accurate processing and mathematical analysis of these data. To address this shortfall we have produced a simple and robust CGH microarray data analysis process that may be automated in the future to understand bacterial genomic diversity. Results: The process involves five steps: cleaning, normalisation, estimating gene presence and absence or divergence, validation, and analysis of data from test against three reference strains simultaneously. Each stage of the process is described and we have compared a number of methods available for characterising bacterial genomic diversity, for calculating the cut-off between gene presence and absence or divergence, and shown that a simple dynamic approach using a kernel density estimator performed better than both established, as well as a more sophisticated mixture modelling technique. We have also shown that current methods commonly used for CGH microarray analysis in tumour and cancer cell lines are not appropriate for analysing our data. Conclusion: After carrying out the analysis and validation for three sequenced Escherichia coli strains, CGH microarray data from 19 E. coli O157 pathogenic test strains were used to demonstrate the benefits of applying this simple and robust process to CGH microarray studies using bacterial genomes.

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Additional Information Carter, Ben Wu, Guanghui Woodward, Martin J. Anjum, Muna F.
Item Type Article
URI https://reading-clone.eprints-hosting.org/id/eprint/28328
Identification Number/DOI 10.1186/1471-2164-9-53
Refereed Yes
Divisions Life Sciences > School of Chemistry, Food and Pharmacy > Department of Food and Nutritional Sciences > Food Microbial Sciences Research Group
No Reading authors. Back catalogue items
Additional Information Carter, Ben Wu, Guanghui Woodward, Martin J. Anjum, Muna F.
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