Direct prediction of protein structure from sequence is a challenging problem. An effective approach is to break it up into independent sub-problems. These sub-problems such as prediction of protein secondary structure can then be solved independently. In a previous study, we found that an iterative use of predicted secondary structure and backbone torsion angles can further improve secondary structure and torsion angle prediction. In this study, we expand the iterative features to include solvent accessible surface area and backbone angles and dihedrals based on Cα atoms. By using a deep learning neural network in three iterations, we achieved 82% accuracy for secondary structure prediction, 0.76 for the correlation coefficient between pre...
Over the past 25 years, the accuracy of proteins secondary structure prediction has improved substan...
Protein secondary structure is an immense achievement of bioinformatics. It's an amino acid residue ...
Local structures predicted from protein sequences are used extensively in every aspect of modeling a...
Predicting one-dimensional structure properties has played an important role to improve prediction o...
Because a nearly constant distance between two neighbouring Cα atoms, local backbone structure of pr...
SummaryLocal structures predicted from protein sequences are used extensively in every aspect of mod...
Predicting protein structure from sequence alone is challenging. Thus, the majority of methods for p...
Protein structure prediction represents a significant challenge in the field of bioinformatics, with...
Background: Deep learning is one of the most powerful machine learning methods that has achieved the...
We developed a composite machine-learning based algorithm, called ANGLOR, to predict real-value prot...
The prediction of protein structures directly from amino acid sequences is one of the biggest challe...
Proteins are macromolecules that carry out important processes in the cells of living organisms, suc...
Exponential growth in the number of available protein sequences is unmatched by the slower growth in...
Literature contains over fifty years of accumulated methods proposed by researchers for predicting t...
Protein secondary structure prediction began in 1951 when Pauling and Corey predicted helical and sh...
Over the past 25 years, the accuracy of proteins secondary structure prediction has improved substan...
Protein secondary structure is an immense achievement of bioinformatics. It's an amino acid residue ...
Local structures predicted from protein sequences are used extensively in every aspect of modeling a...
Predicting one-dimensional structure properties has played an important role to improve prediction o...
Because a nearly constant distance between two neighbouring Cα atoms, local backbone structure of pr...
SummaryLocal structures predicted from protein sequences are used extensively in every aspect of mod...
Predicting protein structure from sequence alone is challenging. Thus, the majority of methods for p...
Protein structure prediction represents a significant challenge in the field of bioinformatics, with...
Background: Deep learning is one of the most powerful machine learning methods that has achieved the...
We developed a composite machine-learning based algorithm, called ANGLOR, to predict real-value prot...
The prediction of protein structures directly from amino acid sequences is one of the biggest challe...
Proteins are macromolecules that carry out important processes in the cells of living organisms, suc...
Exponential growth in the number of available protein sequences is unmatched by the slower growth in...
Literature contains over fifty years of accumulated methods proposed by researchers for predicting t...
Protein secondary structure prediction began in 1951 when Pauling and Corey predicted helical and sh...
Over the past 25 years, the accuracy of proteins secondary structure prediction has improved substan...
Protein secondary structure is an immense achievement of bioinformatics. It's an amino acid residue ...
Local structures predicted from protein sequences are used extensively in every aspect of modeling a...