Prediction of the three-dimensional (3D) structures of proteins by computational methods is acknowledged as an unsolved problem. Accurate prediction of important structural characteristics such as contact number is expected to accelerate the otherwise slow progress being made in the prediction of 3D structure of proteins. Here, we present a dropout neural network-based method, TMH-Expo, for predicting the contact number of transmembrane helix (TMH) residues from sequence. Neuronal dropout is a strategy where certain neurons of the network are excluded from back-propagation to prevent co-adaptation of hidden-layer neurons. By using neuronal dropout, overfitting was significantly reduced and performance was noticeably improved. For multi-span...
Despite continuing progress in X-ray crystallography and high-field NMR spectroscopy for determinati...
AbstractThe field of protein structure prediction has seen significant advances in recent years. Res...
It has been shown that the progress in the determination of membrane protein structure grows exponen...
1) The contacts are predicted by the deep learning method developed by Dr. Jinbo Xu. Each protein ha...
We describe a neural network system that predicts the locations of transmembrane helices in integral...
Protein folding is a process of molecular self-assembly during which a disordered polypeptide chain ...
Back-propagation, feed-forward neural networks are used to predict alpha-helical transmembrane segme...
In the "omic" era hundreds of genomes are available for protein sequence analysis, and we may estima...
A daring experiment is performed. Using sequence alignments to predict contacts between residues in ...
[[abstract]]Membrane proteins are crucial for survival﹒They constitute the key components for cell–c...
Accurate prediction of intra-molecular interactions from amino acid sequence is an important pre-req...
Protein contacts contain key information for the understanding of protein structure and function and...
Previously, we introduced a neural network system predicting locations of transmembrane helices (HTM...
De novo membrane protein structure prediction is limited to small proteins due to the conformational...
Backgrounds: Despite continuing progress in X-ray crystallography and high-field NMR spectroscopy fo...
Despite continuing progress in X-ray crystallography and high-field NMR spectroscopy for determinati...
AbstractThe field of protein structure prediction has seen significant advances in recent years. Res...
It has been shown that the progress in the determination of membrane protein structure grows exponen...
1) The contacts are predicted by the deep learning method developed by Dr. Jinbo Xu. Each protein ha...
We describe a neural network system that predicts the locations of transmembrane helices in integral...
Protein folding is a process of molecular self-assembly during which a disordered polypeptide chain ...
Back-propagation, feed-forward neural networks are used to predict alpha-helical transmembrane segme...
In the "omic" era hundreds of genomes are available for protein sequence analysis, and we may estima...
A daring experiment is performed. Using sequence alignments to predict contacts between residues in ...
[[abstract]]Membrane proteins are crucial for survival﹒They constitute the key components for cell–c...
Accurate prediction of intra-molecular interactions from amino acid sequence is an important pre-req...
Protein contacts contain key information for the understanding of protein structure and function and...
Previously, we introduced a neural network system predicting locations of transmembrane helices (HTM...
De novo membrane protein structure prediction is limited to small proteins due to the conformational...
Backgrounds: Despite continuing progress in X-ray crystallography and high-field NMR spectroscopy fo...
Despite continuing progress in X-ray crystallography and high-field NMR spectroscopy for determinati...
AbstractThe field of protein structure prediction has seen significant advances in recent years. Res...
It has been shown that the progress in the determination of membrane protein structure grows exponen...