Motivation. The solvent accessibility of protein residues is one of the driving forces of protein folding, while the contact number of protein residues limits the possibilities of protein conformations. The de novo prediction of these properties from protein sequence is important for the study of protein structure and function. Although these two properties are certainly related with each other, it is challenging to exploit this dependency for the prediction. Method. We present a method AcconPred for predicting solvent accessibility and contact number simultaneously, which is based on a shared weight multitask learning framework under the CNF (conditional neural fields) model. The multitask learning framework on a collection of related task...
Protein protein interactions (PPI) are crucial for protein functioning, nevertheless predicting resi...
A Support Vector Machine learning system has been trained to predict protein solvent accessibility f...
Predicting protein structure from sequence alone is challenging. Thus, the majority of methods for p...
Abstract Background Direct prediction of the three-dimensional (3D) structures of proteins from one-...
Residue solvent accessibility is closely related to the spatial arrangement and packing of residues....
We present a new approach for predicting the Accessible Surface Area (ASA) using a General Neural Ne...
The ab-initio prediction of protein three-dimensional structures (protein folding problem) from prot...
Prediction methods of structural features in 1D represent a useful tool for the understanding of fol...
Motivation: Prediction of the tertiary structure of a protein from its amino acid sequence is one of...
A variety of functionally important protein properties, such as secondary structure, transmembrane t...
The present study is an attempt to develop a neural network-based method for predicting the real val...
The capability of predicting folding and conformation of a protein from its primary structure is pro...
This paper compares CN and RE prediction for simplified HP model proteins using machine learning tec...
<div><p>A variety of functionally important protein properties, such as secondary structure, transme...
Prediction of protein structures from sequences and protein-protein interaction from structures are ...
Protein protein interactions (PPI) are crucial for protein functioning, nevertheless predicting resi...
A Support Vector Machine learning system has been trained to predict protein solvent accessibility f...
Predicting protein structure from sequence alone is challenging. Thus, the majority of methods for p...
Abstract Background Direct prediction of the three-dimensional (3D) structures of proteins from one-...
Residue solvent accessibility is closely related to the spatial arrangement and packing of residues....
We present a new approach for predicting the Accessible Surface Area (ASA) using a General Neural Ne...
The ab-initio prediction of protein three-dimensional structures (protein folding problem) from prot...
Prediction methods of structural features in 1D represent a useful tool for the understanding of fol...
Motivation: Prediction of the tertiary structure of a protein from its amino acid sequence is one of...
A variety of functionally important protein properties, such as secondary structure, transmembrane t...
The present study is an attempt to develop a neural network-based method for predicting the real val...
The capability of predicting folding and conformation of a protein from its primary structure is pro...
This paper compares CN and RE prediction for simplified HP model proteins using machine learning tec...
<div><p>A variety of functionally important protein properties, such as secondary structure, transme...
Prediction of protein structures from sequences and protein-protein interaction from structures are ...
Protein protein interactions (PPI) are crucial for protein functioning, nevertheless predicting resi...
A Support Vector Machine learning system has been trained to predict protein solvent accessibility f...
Predicting protein structure from sequence alone is challenging. Thus, the majority of methods for p...