Background Accurate prediction of protein structure is fundamentally important to understand biological function of proteins. Template-based modeling, including protein threading and homology modeling, is a popular method for protein tertiary structure prediction. However, accurate template-query alignment and template selection are still very challenging, especially for the proteins with only distant homologs available. Results We propose a new template-based modelling method called ThreaderAI to improve protein tertiary structure prediction. ThreaderAI formulates the task of aligning query sequence with template as the classical pixel classification problem in c...
Motivation: Alignment errors are still the main bottleneck for current template-based protein modeli...
The query-template alignment of proteins is one of the most critical steps of template-based modeli...
Deep learning-based prediction of protein structure usually begins by constructing a multiple sequen...
MotivationProtein structure prediction has been greatly improved by deep learning, but most efforts ...
Template-based modeling that employs various meta-threading techniques is currently the most accurat...
Knowledge of protein structures is essential to understand the proteins’ functions, evolution, dynam...
SummaryThe total number of protein-protein complex structures currently available in the Protein Dat...
Proteins are considered the central compound necessary for life, as they play a crucial role in gove...
Template-based modeling that employs various meta-threading techniques is currently the most accurat...
The trRosetta structure prediction method employs deep learning to generate predicted residue-residu...
Background : Structural properties of proteins such as secondary structure and solvent accessibilit...
The prediction of 1D structural properties of proteins is an important step toward the prediction of...
AbstractMost protein structure prediction methods use templates to assist in the construction of pro...
Protein structure prediction, also called protein folding, is one of the most significant and challe...
AbstractAn automated protein structure prediction algorithm, pro-sp3-Threading/ASSEmbly/Refinement (...
Motivation: Alignment errors are still the main bottleneck for current template-based protein modeli...
The query-template alignment of proteins is one of the most critical steps of template-based modeli...
Deep learning-based prediction of protein structure usually begins by constructing a multiple sequen...
MotivationProtein structure prediction has been greatly improved by deep learning, but most efforts ...
Template-based modeling that employs various meta-threading techniques is currently the most accurat...
Knowledge of protein structures is essential to understand the proteins’ functions, evolution, dynam...
SummaryThe total number of protein-protein complex structures currently available in the Protein Dat...
Proteins are considered the central compound necessary for life, as they play a crucial role in gove...
Template-based modeling that employs various meta-threading techniques is currently the most accurat...
The trRosetta structure prediction method employs deep learning to generate predicted residue-residu...
Background : Structural properties of proteins such as secondary structure and solvent accessibilit...
The prediction of 1D structural properties of proteins is an important step toward the prediction of...
AbstractMost protein structure prediction methods use templates to assist in the construction of pro...
Protein structure prediction, also called protein folding, is one of the most significant and challe...
AbstractAn automated protein structure prediction algorithm, pro-sp3-Threading/ASSEmbly/Refinement (...
Motivation: Alignment errors are still the main bottleneck for current template-based protein modeli...
The query-template alignment of proteins is one of the most critical steps of template-based modeli...
Deep learning-based prediction of protein structure usually begins by constructing a multiple sequen...