[HTML][HTML] Sunbeam: an extensible pipeline for analyzing metagenomic sequencing experiments

EL Clarke, LJ Taylor, C Zhao, A Connell, JJ Lee, B Fett… - Microbiome, 2019 - Springer
EL Clarke, LJ Taylor, C Zhao, A Connell, JJ Lee, B Fett, FD Bushman, K Bittinger
Microbiome, 2019Springer
Background Analysis of mixed microbial communities using metagenomic sequencing
experiments requires multiple preprocessing and analytical steps to interpret the microbial
and genetic composition of samples. Analytical steps include quality control, adapter
trimming, host decontamination, metagenomic classification, read assembly, and alignment
to reference genomes. Results We present a modular and user-extensible pipeline called
Sunbeam that performs these steps in a consistent and reproducible fashion. It can be …
Background
Analysis of mixed microbial communities using metagenomic sequencing experiments requires multiple preprocessing and analytical steps to interpret the microbial and genetic composition of samples. Analytical steps include quality control, adapter trimming, host decontamination, metagenomic classification, read assembly, and alignment to reference genomes.
Results
We present a modular and user-extensible pipeline called Sunbeam that performs these steps in a consistent and reproducible fashion. It can be installed in a single step, does not require administrative access to the host computer system, and can work with most cluster computing frameworks. We also introduce Komplexity, a software tool to eliminate potentially problematic, low-complexity nucleotide sequences from metagenomic data. A unique component of the Sunbeam pipeline is an easy-to-use extension framework that enables users to add custom processing or analysis steps directly to the workflow. The pipeline and its extension framework are well documented, in routine use, and regularly updated.
Conclusions
Sunbeam provides a foundation to build more in-depth analyses and to enable comparisons in metagenomic sequencing experiments by removing problematic, low-complexity reads and standardizing post-processing and analytical steps. Sunbeam is written in Python using the Snakemake workflow management software and is freely available at github.com/sunbeam-labs/sunbeam under the GPLv3.
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