Residue solvent accessibility is closely related to the spatial arrangement and packing of residues. Predicting the solvent accessibility of a protein is an important step to understand its structure and function. In this work, we present a deep learning method to predict residue solvent accessibility, which is based on a stacked deep bidirectional recurrent neural network applied to sequence profiles. To capture more long-range sequence information, a merging operator was proposed when bidirectional information from hidden nodes was merged for outputs. Three types of merging operators were used in our improved model, with a long short-term memory network performing as a hidden computing node. The trained database was constructed from 7361 ...
ABSTRACT Solvent accessibility, one of the key properties of amino acid residues in proteins, can be...
The capability of predicting folding and conformation of a protein from its primary structure is pro...
In the last decades, huge efforts have been made in the bioinformatics community to develop machine ...
Residue solvent accessibility is closely related to the spatial arrangement and packing of residues....
Predicting protein structure from sequence alone is challenging. Thus, the majority of methods for p...
Predicting the three-dimensional structure of proteins is a long-standing challenge of computational...
The present study is an attempt to develop a neural network-based method for predicting the real val...
Many efforts were spent in the last years in bridging the gap between the huge number of sequenced p...
Abstract Background Direct prediction of the three-dimensional (3D) structures of proteins from one-...
We present a new approach for predicting the Accessible Surface Area (ASA) using a General Neural Ne...
Motivation: Prediction of the tertiary structure of a protein from its amino acid sequence is one of...
A Support Vector Machine learning system has been trained to predict protein solvent accessibility f...
Motivation. The solvent accessibility of protein residues is one of the driving forces of protein fo...
The RCNPRED server implements a neural network-based method to predict the co-ordination numbers of ...
In the last decades, huge efforts have been made in the bioinformatics community to develop machine ...
ABSTRACT Solvent accessibility, one of the key properties of amino acid residues in proteins, can be...
The capability of predicting folding and conformation of a protein from its primary structure is pro...
In the last decades, huge efforts have been made in the bioinformatics community to develop machine ...
Residue solvent accessibility is closely related to the spatial arrangement and packing of residues....
Predicting protein structure from sequence alone is challenging. Thus, the majority of methods for p...
Predicting the three-dimensional structure of proteins is a long-standing challenge of computational...
The present study is an attempt to develop a neural network-based method for predicting the real val...
Many efforts were spent in the last years in bridging the gap between the huge number of sequenced p...
Abstract Background Direct prediction of the three-dimensional (3D) structures of proteins from one-...
We present a new approach for predicting the Accessible Surface Area (ASA) using a General Neural Ne...
Motivation: Prediction of the tertiary structure of a protein from its amino acid sequence is one of...
A Support Vector Machine learning system has been trained to predict protein solvent accessibility f...
Motivation. The solvent accessibility of protein residues is one of the driving forces of protein fo...
The RCNPRED server implements a neural network-based method to predict the co-ordination numbers of ...
In the last decades, huge efforts have been made in the bioinformatics community to develop machine ...
ABSTRACT Solvent accessibility, one of the key properties of amino acid residues in proteins, can be...
The capability of predicting folding and conformation of a protein from its primary structure is pro...
In the last decades, huge efforts have been made in the bioinformatics community to develop machine ...