Journal of Systemics, Cybernetics and Informatics (Jun 2011)

Bayesian Inference using Neural Net Likelihood Models for Protein Secondary Structure Prediction

  • Seong-Gon Kim,
  • Yong-Gi Kim

Journal volume & issue
Vol. 9, no. 3
pp. 35 – 40

Abstract

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Several techniques such as Neural Networks, Genetic Algorithms, Decision Trees and other statistical or heuristic methods have been used to approach the complex non-linear task of predicting Alpha-helicies, Beta-sheets and Turns of a proteins secondary structure in the past. This project introduces a new machine learning method by using an offline trained Multilayered Perceptrons (MLP) as the likelihood models within a Bayesian Inference framework to predict secondary structures proteins. Varying window sizes are used to extract neighboring amino acid information and passed back and forth between the Neural Net models and the Bayesian Inference process until there is a convergence of the posterior secondary structure probability.

Keywords