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A priori estimation of sequencing effort in complex microbial metatranscriptomes.
Monleon-Getino, Toni; Frias-Lopez, Jorge.
Affiliation
  • Monleon-Getino T; Section of Statistics (Department of Genetics, Microbiology, and Statistics) University of Barcelona Barcelona Spain.
  • Frias-Lopez J; BIOST3 GRBIO (Research Group in Biostatistics and Bioinformatics) Barcelona Spain.
Ecol Evol ; 10(23): 13382-13394, 2020 Dec.
Article in En | MEDLINE | ID: mdl-33304545
ABSTRACT
Metatranscriptome analysis or the analysis of the expression profiles of whole microbial communities has the additional challenge of dealing with a complex system with dozens of different organisms expressing genes simultaneously. An underlying issue for virtually all metatranscriptomic sequencing experiments is how to allocate the limited sequencing budget while guaranteeing that the libraries have sufficient depth to cover the breadth of expression of the community. Estimating the required sequencing depth to effectively sample the target metatranscriptome using RNA-seq is an essential first step to obtain robust results in subsequent analysis and to avoid overexpansion, once the information contained in the library reaches saturation. Here, we present a method to calculate the sequencing effort using a simulated series of metatranscriptomic/metagenomic matrices. This method is based on an extrapolation rarefaction curve using a Weibull growth model to estimate the maximum number of observed genes as a function of sequencing depth. This approach allowed us to compute the effort at different confidence intervals and to obtain an approximate a priori effort based on an initial fraction of sequences. The analytical pipeline presented here may be successfully used for the in-depth and time-effective characterization of complex microbial communities, representing a useful tool for the microbiome research community.
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Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: Ecol Evol Year: 2020 Type: Article

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: Ecol Evol Year: 2020 Type: Article