The prediction of the secondary structure of a protein from its amino acid sequence is an important step towards the prediction of its three-dimensional structure. While many of the existing algorithms utilize the similarity and homology to proteins with known secondary structures in the Protein Data Bank, other proteins with low similarity measures require a single sequence approach to the discovery of their secondary structure. In this paper we propose an algorithm based on the deterministic sequential sampling method and hidden Markov model for the single-sequence protein secondary structure prediction. The predictions are made based on windowed observations and by the weighted average over possible conformations within the observation w...
A thesis on machine learning and prediction of protein secondary structure. We develop a variation ...
New results are presented for the prediction of secondary structure information for protein sequence...
We present a secondary structure prediction method based on finding similarities between sequence se...
Hidden Markov models are ideal tool for sequence analysis therefore they are used also for protein s...
Today, there are several protein secondary structure predictors; most of them use algorithms such as...
Secondary structure prediction is a useful first step toward 3D structure prediction. A number of su...
An improved method of secondary structure prediction has been developed to aid the modelling of prot...
Determining the primary structure (i.e., amino acid sequence) of a protein has become cheaper, faste...
A new dataset of 396 protein domains is developed and used to evaluate the performance of the protei...
Determining the primary structure (i.e., amino acid sequence) of a protein has become cheaper, faste...
Chou, and Fasman developed the first empirical prediction method to predict secondary structure of p...
Previously proposed methods for protein secondary structure prediction from multiple sequence alignm...
Prediction of protein secondary structure is somewhat reminiscent of the efforts by many previous in...
Secondary structure prediction of a protein from its amino acid sequence has been studied for a long...
A thesis on machine learning and prediction of protein secondary structure. We develop a variation ...
New results are presented for the prediction of secondary structure information for protein sequence...
We present a secondary structure prediction method based on finding similarities between sequence se...
Hidden Markov models are ideal tool for sequence analysis therefore they are used also for protein s...
Today, there are several protein secondary structure predictors; most of them use algorithms such as...
Secondary structure prediction is a useful first step toward 3D structure prediction. A number of su...
An improved method of secondary structure prediction has been developed to aid the modelling of prot...
Determining the primary structure (i.e., amino acid sequence) of a protein has become cheaper, faste...
A new dataset of 396 protein domains is developed and used to evaluate the performance of the protei...
Determining the primary structure (i.e., amino acid sequence) of a protein has become cheaper, faste...
Chou, and Fasman developed the first empirical prediction method to predict secondary structure of p...
Previously proposed methods for protein secondary structure prediction from multiple sequence alignm...
Prediction of protein secondary structure is somewhat reminiscent of the efforts by many previous in...
Secondary structure prediction of a protein from its amino acid sequence has been studied for a long...
A thesis on machine learning and prediction of protein secondary structure. We develop a variation ...
New results are presented for the prediction of secondary structure information for protein sequence...
We present a secondary structure prediction method based on finding similarities between sequence se...