Biology – Quantitative Biology – Populations and Evolution
Scientific paper
2010-03-25
Biology
Quantitative Biology
Populations and Evolution
Scientific paper
Population analysis is persistently challenging but important, leading to the determination of diversity and function prediction of microbial community members. Here we detail our bioinformatics methods for analyzing population distribution and diversity in large microbial communities. This was achieved via (i) a homology based method for robust phylotype determination, equaling the classification accuracy of the Ribosomal Database Project (RDP) classifier, but providing improved associations of closely related sequences; (ii) a comparison of different clustering methods for achieving more accurate richness estimations. Our methodology, which we developed using the RDP vetted 16S rRNA gene sequence set, was validated by testing it on a large 16S rRNA gene dataset of approximately 2300 sequences, which we obtained from a soil microbial community study. We concluded that the best approach to obtain accurate phylogenetics profile of large microbial communities, based on 16S rRNA gene sequence information, is to apply an optimized blast classifier. This approach is complemented by the grouping of closely related sequences, using complete linkage clustering, in order to calculate richness and evenness indices for the communities.
der Lelie Daniel van
Lesaulnier Celine C.
McCorkle Sean R.
Ollivier Bernard
Papamichail Dimitris
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