AbstractPredicting biological structure has remained challenging for systems such as disordered proteins that take on myriad conformations. Hybrid simulation/experiment strategies have been undermined by difficulties in evaluating errors from computational model inaccuracies and data uncertainties. Building on recent proposals from maximum entropy theory and nonequilibrium thermodynamics, we address these issues through a Bayesian energy landscape tilting (BELT) scheme for computing Bayesian hyperensembles over conformational ensembles. BELT uses Markov chain Monte Carlo to directly sample maximum-entropy conformational ensembles consistent with a set of input experimental observables. To test this framework, we apply BELT to model trialani...
We develop a Bayesian approach to determine the most probable structural ensemble model from candida...
Analyses of structural dynamics of biomolecules hold great promise to deepen the understanding of an...
International audienceObtaining accurate representations of energy landscapes of biomolecules such a...
Predicting biological structure has remained challenging for systems such as dis-ordered proteins th...
AbstractPredicting biological structure has remained challenging for systems such as disordered prot...
Ensemble refinement produces structural ensembles of flexible and dynamic biomolecules by integratin...
The characterization of intrinsically disordered proteins is challenging because accurate models of ...
Many proteins consist of folded domains connected by regions with higher flexibility. The details of...
Many proteins consist of folded domains connected by regions with higher flexibility. The details of...
Constructing an accurate model for the thermally accessible states of an Intrinsically Disordered Pr...
Bayesian inference of ΔmC2 conformational ensemble from (A) SAXS data only, (B) SAXS data + Rosetta ...
Flexible polypeptides such as unfolded proteins may access an astronomical number of conformations. ...
Flexible polypeptides such as unfolded proteins may access an astronomical number of conformations. ...
Bayesian inference of CaM conformational ensembles from (A) SAXS data only, (B) SAXS data with Roset...
ABSTRACT: Unlike native proteins that are amenable to structural analysis at atomic resolution, unfo...
We develop a Bayesian approach to determine the most probable structural ensemble model from candida...
Analyses of structural dynamics of biomolecules hold great promise to deepen the understanding of an...
International audienceObtaining accurate representations of energy landscapes of biomolecules such a...
Predicting biological structure has remained challenging for systems such as dis-ordered proteins th...
AbstractPredicting biological structure has remained challenging for systems such as disordered prot...
Ensemble refinement produces structural ensembles of flexible and dynamic biomolecules by integratin...
The characterization of intrinsically disordered proteins is challenging because accurate models of ...
Many proteins consist of folded domains connected by regions with higher flexibility. The details of...
Many proteins consist of folded domains connected by regions with higher flexibility. The details of...
Constructing an accurate model for the thermally accessible states of an Intrinsically Disordered Pr...
Bayesian inference of ΔmC2 conformational ensemble from (A) SAXS data only, (B) SAXS data + Rosetta ...
Flexible polypeptides such as unfolded proteins may access an astronomical number of conformations. ...
Flexible polypeptides such as unfolded proteins may access an astronomical number of conformations. ...
Bayesian inference of CaM conformational ensembles from (A) SAXS data only, (B) SAXS data with Roset...
ABSTRACT: Unlike native proteins that are amenable to structural analysis at atomic resolution, unfo...
We develop a Bayesian approach to determine the most probable structural ensemble model from candida...
Analyses of structural dynamics of biomolecules hold great promise to deepen the understanding of an...
International audienceObtaining accurate representations of energy landscapes of biomolecules such a...