Difference between revisions of "TWINSCAN"

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(Created page with "Category:SoftwareCategory:biologyCategory:genomics {|<!--CONFIGURATION: REQUIRED--> |{{#vardefine:app|twinscan}} |{{#vardefine:url|http://mblab.wustl.edu/software....")
 
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Run <code>module spider {{#var:app}}</code> to find out what environment modules are available for this application.
 
Run <code>module spider {{#var:app}}</code> to find out what environment modules are available for this application.
 
==System Variables==
 
==System Variables==
* HPC_{{#uppercase:{{#var:app}}}}_DIR - installation directory
+
* HPC_{{uc:{{#var:app}}}}_DIR - installation directory
* HPC_{{#uppercase:{{#var:app}}}}_BIN - executable directory
+
* HPC_{{uc:{{#var:app}}}}_BIN - executable directory
 
* TWINSCAN - twinscan variable for base directory
 
* TWINSCAN - twinscan variable for base directory
  

Revision as of 21:29, 6 December 2019

Description

twinscan website  

Twinscan/N-SCAN is our lab's suite of software for gene-structure prediction. We recommend running N-SCAN on our web server (http://mblab.wustl.edu/nscan). Twinscan is currently available for Mammals, Caenorhabditis (worm), Dicot plants, and Cryptococci. N-SCAN is available for human and Drosophila (fruitfly)

Environment Modules

Run module spider twinscan to find out what environment modules are available for this application.

System Variables

  • HPC_TWINSCAN_DIR - installation directory
  • HPC_TWINSCAN_BIN - executable directory
  • TWINSCAN - twinscan variable for base directory




Citation

If you publish research that uses twinscan you have to cite it as follows:

  • Brent, M. R. (2008). Steady progress and recent breakthroughs in the accuracy of automated genome annotation. Nature Reviews Genetics, 9(1), 62-73. doi:10.1038/nrg2220
  • Brent, M.R. (2007). How does eukaryotic gene prediction work? Nature Biotechnology. 25(8): 883-885.
  • Gross, S. S., & Brent, M. R. (2006). Using multiple alignments to improve gene prediction. Journal of computational biology, 13(2), 379-393. doi:10.1089/cmb.2006.13.379