motifStack

SequenceMatching
R
GPL (>= 2)

The motifStack package is designed for graphic representation of multiple motifs with different similarity scores. It works with both DNA/RNA sequence motif and amino acid sequence motif. In addition, it provides the flexibility for users to customize the graphic parameters such as the font type and symbol colors.

Source attribution

  • BioconductormotifStack

Related resources

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