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English Information

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Authors
# Name
1 Mirele Costa(carolinamirele@gmail.com)
2 Célia Ralha(ghedini@unb.br)
3 Marcelo Brigido(brigido@unb.br)
4 André de Carvalho(andre@icmc.usp.br)
5 Peter Stadler(studla@bioinf.uni-leipzig.de)
6 Maria Emília Walter(mariaemilia@unb.br)

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Reference
# Reference
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