MotivationProtein structure prediction has been greatly improved by deep learning, but most efforts are devoted to template-free modeling. But very few deep learning methods are developed for TBM (template-based modeling), a popular technique for protein structure prediction. TBM has been studied extensively in the past, but its accuracy is not satisfactory when highly similar templates are not available.ResultsThis paper presents a new method NDThreader (New Deep-learning Threader) to address the challenges of TBM. NDThreader first employs DRNF (deep convolutional residual neural fields), which is an integration of deep ResNet (convolutional residue neural networks) and CRF (conditional random fields), to align a query protein to templates...
Proteins and non-coding RNA are the macromolecules responsible for performing the vast majority of b...
International audienceThe potential of deep learning has been recognized in structural bioinformatic...
Recent breakthroughs in protein structure prediction have increasingly relied on the use of deep neu...
Background Accurate prediction of protein structure is fundamentally important to un...
The trRosetta structure prediction method employs deep learning to generate predicted residue-residu...
Deep learning-based prediction of protein structure usually begins by constructing a multiple sequen...
Predicting protein structure from its sequence (especially in the absence of structure templates) an...
Motivation: Alignment errors are still the main bottleneck for current template-based protein modeli...
The inapplicability of amino acid covariation methods to small protein families has limited their us...
Knowledge of protein structures is essential to understand the proteins’ functions, evolution, dynam...
Despite the immense progress recently witnessed in protein structure prediction, the modeling accura...
We describe AlphaFold, the protein structure prediction system that was entered by the group A7D in ...
[ACCESS RESTRICTED TO THE UNIVERSITY OF MISSOURI AT AUTHOR'S REQUEST.] Computational protein structu...
Thesis (Ph.D.)--University of Washington, 2022Understanding the rules of protein structure folding h...
Motivation: Accurate prediction of residue-residue distances is important for protein structure pred...
Proteins and non-coding RNA are the macromolecules responsible for performing the vast majority of b...
International audienceThe potential of deep learning has been recognized in structural bioinformatic...
Recent breakthroughs in protein structure prediction have increasingly relied on the use of deep neu...
Background Accurate prediction of protein structure is fundamentally important to un...
The trRosetta structure prediction method employs deep learning to generate predicted residue-residu...
Deep learning-based prediction of protein structure usually begins by constructing a multiple sequen...
Predicting protein structure from its sequence (especially in the absence of structure templates) an...
Motivation: Alignment errors are still the main bottleneck for current template-based protein modeli...
The inapplicability of amino acid covariation methods to small protein families has limited their us...
Knowledge of protein structures is essential to understand the proteins’ functions, evolution, dynam...
Despite the immense progress recently witnessed in protein structure prediction, the modeling accura...
We describe AlphaFold, the protein structure prediction system that was entered by the group A7D in ...
[ACCESS RESTRICTED TO THE UNIVERSITY OF MISSOURI AT AUTHOR'S REQUEST.] Computational protein structu...
Thesis (Ph.D.)--University of Washington, 2022Understanding the rules of protein structure folding h...
Motivation: Accurate prediction of residue-residue distances is important for protein structure pred...
Proteins and non-coding RNA are the macromolecules responsible for performing the vast majority of b...
International audienceThe potential of deep learning has been recognized in structural bioinformatic...
Recent breakthroughs in protein structure prediction have increasingly relied on the use of deep neu...