Motivation: We describe a stand-alone algorithm to predict disulfide bond partners in a protein given only the amino acid sequence, using a novel neural network architecture (the diresidue neural network), and given input of symmetric flanking regions of N-terminus and C-terminus half-cystines augmented with residue secondary structure (helix, coil, sheet) as well as evolutionary information. The approach is motivated by the observation of a bias in the secondary structure preferences of free cysteines and half-cystines, and by promising preliminary results we obtained using diresidue position-specific scoring matrices. Results: As calibrated by receiver operating characteristic curves from 4-fold cross-validation, our conditioning on sec...
A hidden neural network-based method is used to predict the bonding state of cysteines starting fro...
ABSTRACT Disulfide bonds play an important role in stabilizing protein structure and regulating prot...
Motivation: Disulfide bonds play an important role in protein folding. A precise prediction of disul...
Motivation: We describe a stand-alone algorithm to predict disulfide bond partners in a protein give...
Motivation: We describe a stand-alone algorithm to predict disulfide bond partners in a protein give...
Correctly predicting the disulfide bond topology in a protein is of crucial importance for the under...
'To whom correspondence should be addressed The bonding states of cysteine play important funct...
Abstract Motivation: We focus on the prediction of disulfide bridges in proteins star...
A neural network-based predictor is trained to distinguish the bonding states of cysteine in protein...
Motivation: Disulfide bonds are primary covalent crosslinks between two cysteine residues in protein...
The disulphide bonds are important in deciding the final 3D conformation of protein. Knowing disulph...
The formation of disulphide bridges among cysteines is an important fea-ture of protein structures. ...
Disulfide bridges strongly constrain the native structure of many proteins and predicting their form...
The problem of protein structure prediction (PSP) is one of the main challenges in structural bioinf...
MOTIVATION: Disulfide bonds stabilize protein structures and play relevant roles in their functions....
A hidden neural network-based method is used to predict the bonding state of cysteines starting fro...
ABSTRACT Disulfide bonds play an important role in stabilizing protein structure and regulating prot...
Motivation: Disulfide bonds play an important role in protein folding. A precise prediction of disul...
Motivation: We describe a stand-alone algorithm to predict disulfide bond partners in a protein give...
Motivation: We describe a stand-alone algorithm to predict disulfide bond partners in a protein give...
Correctly predicting the disulfide bond topology in a protein is of crucial importance for the under...
'To whom correspondence should be addressed The bonding states of cysteine play important funct...
Abstract Motivation: We focus on the prediction of disulfide bridges in proteins star...
A neural network-based predictor is trained to distinguish the bonding states of cysteine in protein...
Motivation: Disulfide bonds are primary covalent crosslinks between two cysteine residues in protein...
The disulphide bonds are important in deciding the final 3D conformation of protein. Knowing disulph...
The formation of disulphide bridges among cysteines is an important fea-ture of protein structures. ...
Disulfide bridges strongly constrain the native structure of many proteins and predicting their form...
The problem of protein structure prediction (PSP) is one of the main challenges in structural bioinf...
MOTIVATION: Disulfide bonds stabilize protein structures and play relevant roles in their functions....
A hidden neural network-based method is used to predict the bonding state of cysteines starting fro...
ABSTRACT Disulfide bonds play an important role in stabilizing protein structure and regulating prot...
Motivation: Disulfide bonds play an important role in protein folding. A precise prediction of disul...