MEGAN explained

MEGAN
Developer:Daniel Huson et al.
Latest Release Version:6.13.1
Latest Release Date:2017
Programming Language:Java
Operating System:Windows, Unix, Linux, macOS
Platform:Java
Genre:Bioinformatics
License:Free open source "community edition", commercial "Ultimate edition" licensed by Computomics

MEGAN ("MEtaGenome ANalyzer") is a computer program that allows optimized analysis of large metagenomic datasets.[1]

Metagenomics is the analysis of the genomic sequences from a usually uncultured environmental sample. A large term goal of most metagenomics is to inventory and measure the extent and the role of microbial biodiversity in the ecosystem due to discoveries that the diversity of microbial organisms and viral agents in the environment is far greater than previously estimated.[2] Tools that allow the investigation of very large data sets from environmental samples using shotgun sequencing techniques in particular, such as MEGAN, are designed to sample and investigate the unknown biodiversity of environmental samples where more precise techniques with smaller, better known samples, cannot be used.

Fragments of DNA from an metagenomics sample, such as ocean waters or soil, are compared against databases of known DNA sequences using BLAST or another sequence comparison tool to assemble the segments into discrete comparable sequences. MEGAN is then used to compare the resulting sequences with gene sequences from GenBank in NCBI.[3] The program was used to investigate the DNA of a mammoth recovered from the Siberian permafrost[4] and Sargasso Sea data set.[5]

Introduction

Metagenomics is the study of genomic content of samples from same habitat, which is designed to determine the role and the extent of species diversity. Targeted or random sequencing are widely used with comparisons against sequence databases. Recent developments in sequencing technology increased the number of metagenomics samples. MEGAN is an easy to use tool for analysing such metagenomics data. First version of MEGAN was released in 2007 [6] and the most recent version is MEGAN6.[7] First version is capable of analysing taxonomic content of a single dataset while the latest version can analyse multiple datasets including new features (query different databases, new algorithm etc.).

MEGAN Pipeline

MEGAN analysis starts with collecting reads from any shotgun platform. Then, the reads are compared with sequence databases using BLAST or similar. Third, MEGAN assigns a taxon ID to processed read results based on NCBI taxonomy which creates a MEGAN file that contains required information for statistical and graphical analysis. Lastly, lowest common ancestor (LCA) algorithm can be run to inspect assignments, to analyze data and to create summaries of data based on different NCBI taxonomy levels. LCA algorithm simply finds the lowest common ancestor of different species.[6]

Notes and References

  1. Huson . Daniel H . S. Mitra . N. Weber . H. Ruscheweyh . Stephan C. Schuster . Integrative analysis of environmental sequences using MEGAN4 . Genome Research . 21 . 9 . 1552–1560 . 10.1101/gr.120618.111 . 3166839 . 21690186. 2011 .
  2. Nee . S. . 2004 . More than meets the eye . Nature . 429 . 6994. 804–805 . 10.1038/429804a . 15215837 . 2004Natur.429..804N . 1699973 .
  3. Frias-Lopez . Jorge . Yanmei Shi . Gene W. Tyson . Maureen L. Coleman . Stephan C. Schuster . Sallie W. Chisholm . band Edward F. DeLong . Microbial community gene expression in ocean surface waters . PNAS . 105 . 10 . 3805–3810 . March 11, 2008 . 10.1073/pnas.0708897105. April 3, 2008 . 18316740 . 2268829 . free .
  4. Poinar . Hendrik N. . Carsten Schwarz . Ji Qi . Beth Shapiro . Ross D. E. MacPhee . Bernard Buigues . Alexei Tikhonov . Daniel Huson . Lynn P. Tomsho . Alexander Auch . Markus Rampp . Webb Miller . Stephan C. Schuster . Metagenomics to Paleogenomics: Large-Scale Sequencing of Mammoth DNA . Science . 331 . 6016. 392–394 . 2007 . 10.1126/science.331.6016.392. April 3, 2008 . 21273464.
  5. Environmental Genome Shotgun Sequencing of the Sargasso Sea . Science . Venter JC, Remington K, Heidelberg JF, Halpern AL, Rusch D, Eisen JA, Wu D, Paulsen I, Nelson KE, Nelson W, Fouts DE, Levy S, Knap AH, Lomas MW, Nealson K, White O, Peterson J, Hoffman J, Parsons R, Baden-Tillson H, Pfannkoch C, Rogers YH, Smith HO . 10.1126/science.1093857 . 15001713 . 2004Sci...304...66V . 304 . 5667 . April 2004 . 66–74. 10.1.1.124.1840 . 1454587 .
  6. Huson . H. . A. Auch . Ji Qi . S. C. Schuster . MEGAN Analysis of Metagenomic Data . Genome Research . 17 . 3. 377–386 . 2007 . 10.1101/gr.5969107. April 3, 2008 . 17255551 . 1800929 .
  7. Web site: MEGAN6 — Algorithms in Bioinformatics. uni-tuebingen.de. 2020-12-21. Huson. Daniel H. S. Beier. I. Flade. A. Gorska. M. El-Hadidi. H. Ruscheweyh. R. Tappu. MEGAN Community Edition - Interactive exploration and analysis of large-scale microbiome sequencing data . PLOS Computational Biology. 12. 6. e1004957. 10.1371/journal.pcbi.1004957. 27327495. 4915700. 2016PLSCB..12E4957H. 2016. free.