Detecting and sorting targeting peptides wtih neural networks and support vector machines


Autoria(s): Hawkins, John; Boden, Mikael
Contribuinte(s)

J. Wooley

M. Li

W. Limsoon

Data(s)

01/02/2006

Resumo

This paper presents a composite multi-layer classifier system for predicting the subcellular localization of proteins based on their amino acid sequence. The work is an extension of our previous predictor PProwler v1.1 which is itself built upon the series of predictors SignalP and TargetP. In this study we outline experiments conducted to improve the classifier design. The major improvement came from using Support Vector machines as a "smart gate" sorting the outputs of several different targeting peptide detection networks. Our final model (PProwler v1.2) gives MCC values of 0.873 for non-plant and 0.849 for plant proteins. The model improves upon the accuracy of our previous subcellular localization predictor (PProwler v1.1) by 2% for plant data (which represents 7.5% improvement upon TargetP).

Identificador

http://espace.library.uq.edu.au/view/UQ:82814

Idioma(s)

eng

Publicador

Imperial College Press

Palavras-Chave #protein subcellular localization #machine learning #neural network #recurrent neural network #support Vector machine #targeting peptide #amino acid sequence #C1 #280200 Artificial Intelligence and Signal and Image Processing #700103 Information processing services
Tipo

Journal Article