BioTools: Tools based on Biostrings (alignment, classification, database)
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چکیده
Three are many stand-alone tools available for Bioinformatics. This package aims at using R and the Biostrings package as the common interface for several important tools for multiple sequence alignment (clustalw, kalign), classification (RDP), sequence retrieval (BLAST) as well as database driven sequence management for 16S rRNA.
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تاریخ انتشار 2013