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Package appnn July 12, 2015 Type Package Title Amyloid Propensity Prediction Neural Network Version 1.0-0 Date 2015-07-11 Encoding UTF-8 Author Maintainer Carlos Família <carlosfamilia@gmail.com> Amyloid propensity prediction neural network (APPNN) is an amyloidogenicity propensity predictor based on a machine learning approach through recursive feature selection and feedforward neural networks, taking advantage of newly published sequences with experimental, in vitro, evidence of amyloid formation. License GPL-3 LazyData TRUE NeedsCompilation no Repository CRAN Date/Publication 2015-07-12 18:27:00 R topics documented: appnn-package....................................... 2 appnn............................................ 3 plot............................................. 4 print............................................. 4 Index 6 1

2 appnn-package appnn-package Amyloid propensity prediction neural network (APPNN) Details Amyloid propensity prediction neural network (APPNN) is an amyloidogenicity propensity predictor based on a machine learning approach through recursive feature selection and feed-forward neural networks, taking advantage of newly published sequences with experimental, in vitro, evidence of amyloid formation. This approach relies on the assumptions that, i) small peptide stretches within an amyloidogenic protein can act as amyloid forming facilitators that will eventually direct the refolding of the protein along a path involving the formation of an energetically favourable amyloid conformation; ii) the minimum length of these facilitator sequences or hot spots comprises six amino acids; iii) the amyloidogenicity propensity value per amino acid corresponds to the highest value obtained from all six amino acid windows that contain that amino acid; and iv) a peptide or protein is considered amyloidogenic if at least one stretch or hot spot is found within the sequence. Package: appnn Type: Package Version: 1.0 Date: 2015-04-13 License: GPL-3 The amyloidogenic propensity prediction neural network is composed by three functions, the function appnn which performs the propensity prediction calculations, the function print that prints to the console the prediction results, and function plot that generate plots of the prediction results. Maintainer: Carlos Família <carlosfamilia@gmail.com> References Manuscript under review. print(predictions) plot(predictions,c(1,2,3))

appnn 3 appnn Prediction of the amyloidogenicity propensity for polypeptide sequences. This function predicts the amyloidfogenicity propensity of polypeptide sequences through the amyloid propensity prediction neural network (APPNN). Usage ## Default S3 method: appnn(sequences) Arguments sequences vector of sequences to submit to amyloidogenicity propension prediction neural network Value A list containing the amyloidogenicity propensity predictions for the polypeptides queried. overall aminoacids hotspots The overall amyloidogenicity propensity prediction value for the sequence The amyloidogenicity propensity prediction value per amino acid A list of the amyloidogenic hotspots predicted in the sequence, limited by the first and last amino acid

4 print plot Plots generation of the amyloidogenicity propensity predicted values per amino acid residue. This function generates plots for the amyloidogenicity propensity predicted values per amino acid for the given sequences. Usage ## S3 method for class appnn plot(x, indices,...) Arguments x amyloidogenicity propensity prediction results. indices a vector containing the indices of the sequences to plot.... not used. plot(predictions,c(1,2,3)) print Print the amyloidogenicity propensity predicted values to the console. This function prints to the console the amyloidogenicity propensity predicted values for the given polypeptide sequences. Usage ## S3 method for class appnn print(x,...)

print 5 Arguments x... not used. amyloidogenicity propensity prediction results. print(predictions)

Index Topic \textasciitildekwd1 appnn, 3 plot, 4 print, 4 Topic \textasciitildekwd2 appnn, 3 plot, 4 print, 4 Topic package appnn-package, 2 appnn, 3 appnn-package, 2 plot, 4 print, 4 6