Fast and accurate protein structure prediction is one of the major challenges in structural biology, biotechnology and molecular biomedicine. These fields require 3D protein structures for rational design of proteins with improved or novel properties. X-ray crystallography is the most common approach even with its low success rate, but lately NMR based approaches have gained popularity. The general approach involves a set of distance restraints used to guide a structure prediction, but simple NMR triple-resonance experiments often provide enough structural information to predict the structure of small proteins. Previous protein folding simulations that have utilised experimental data have weighted the experimental data and physical force fi...
The chemical shifts measured in solution-state and solid-state nuclear magnetic resonance (NMR) are ...
Using chemical shifts for protein structure determination has been a long-standing goal in structura...
Here we report a new machine learning algorithm for protein chemical shift prediction that outperfor...
The knowledge of the tridimensional structure of a protein is essential to study its interactions an...
We report advances in the calculation of protein structures from chemical shift nuclear magnetic res...
We report advances in the calculation of protein structures from chemical shift nuclear magnetic res...
Over the past decade, a number of methods have been developed to determine the approximate structure...
In this tutorial review, we discuss the utilization of chemical shift information as well as ab init...
The importance of protein chemical shift values for the determination of three-dimensional protein s...
<div><p>Knowledge of protein structural class can provide important information about its folding pa...
Computational methods that utilize chemical shifts to produce protein structures at atomic resolutio...
In this tutorial review, we discuss the utilization of chemical shift information as well as ab init...
Files and coordinates associated with the paper titled 'Accurate and Cost-Effective NMR Chemical Shi...
of Molecular Biology and for proteins, using a set of co-ordinates provided for example from an X-ra...
NMR spectroscopy offers the unique possibility to relate the structural propensities of disordered p...
The chemical shifts measured in solution-state and solid-state nuclear magnetic resonance (NMR) are ...
Using chemical shifts for protein structure determination has been a long-standing goal in structura...
Here we report a new machine learning algorithm for protein chemical shift prediction that outperfor...
The knowledge of the tridimensional structure of a protein is essential to study its interactions an...
We report advances in the calculation of protein structures from chemical shift nuclear magnetic res...
We report advances in the calculation of protein structures from chemical shift nuclear magnetic res...
Over the past decade, a number of methods have been developed to determine the approximate structure...
In this tutorial review, we discuss the utilization of chemical shift information as well as ab init...
The importance of protein chemical shift values for the determination of three-dimensional protein s...
<div><p>Knowledge of protein structural class can provide important information about its folding pa...
Computational methods that utilize chemical shifts to produce protein structures at atomic resolutio...
In this tutorial review, we discuss the utilization of chemical shift information as well as ab init...
Files and coordinates associated with the paper titled 'Accurate and Cost-Effective NMR Chemical Shi...
of Molecular Biology and for proteins, using a set of co-ordinates provided for example from an X-ra...
NMR spectroscopy offers the unique possibility to relate the structural propensities of disordered p...
The chemical shifts measured in solution-state and solid-state nuclear magnetic resonance (NMR) are ...
Using chemical shifts for protein structure determination has been a long-standing goal in structura...
Here we report a new machine learning algorithm for protein chemical shift prediction that outperfor...