ampir - Predict Antimicrobial Peptides
A toolkit to predict antimicrobial peptides from protein
sequences on a genome-wide scale. It incorporates two support
vector machine models ("precursor" and "mature") trained on
publicly available antimicrobial peptide data using calculated
physico-chemical and compositional sequence properties
described in Meher et al. (2017) <doi:10.1038/srep42362>. In
order to support genome-wide analyses, these models are
designed to accept any type of protein as input and calculation
of compositional properties has been optimised for
high-throughput use. For best results it is important to select
the model that accurately represents your sequence type: for
full length proteins, it is recommended to use the default
"precursor" model. The alternative, "mature", model is best
suited for mature peptide sequences that represent the final
antimicrobial peptide sequence after post-translational
processing. For details see Fingerhut et al. (2020)
<doi:10.1093/bioinformatics/btaa653>. The 'ampir' package is
also available via a Shiny based GUI at
<https://ampir.marine-omics.net/>.