about
Potentials of mean force for protein structure prediction vindicated, formalized and generalizedRNA folding pathways in stop motion.Formulation of probabilistic models of protein structure in atomic detail using the reference ratio method.Generative probabilistic models extend the scope of inferential structure determination.PHAISTOS: a framework for Markov chain Monte Carlo simulation and inference of protein structure.Variational Optimization of an All-Atom Implicit Solvent Force Field to Match Explicit Solvent Simulation Data.Correction to Variational Optimization of an All-Atom Implicit Solvent Force Field To Match Explicit Solvent Simulation DataKissing loop interaction in adenine riboswitch: insights from umbrella sampling simulationsElastic network models for RNA: a comparative assessment with molecular dynamics and SHAPE experiments.Free Energy Landscape of GAGA and UUCG RNA Tetraloops.Empirical Corrections to the Amber RNA Force Field with Target Metadynamics.The role of nucleobase interactions in RNA structure and dynamics.Mapping the Universe of RNA Tetraloop Folds.Effects and limitations of a nucleobase-driven backmapping procedure for nucleic acids using steered molecular dynamics.Accurate multiple time step in biased molecular simulations.An efficient null model for conformational fluctuations in proteins.Subtle Monte Carlo Updates in Dense Molecular Systems.Computer Folding of RNA Tetraloops: Identification of Key Force Field Deficiencies.Conformational ensembles of RNA oligonucleotides from integrating NMR and molecular simulations.Biophysical experiments and biomolecular simulations: A perfect match?Barnaba: software for analysis of nucleic acid structures and trajectories
P50
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P50
description
hulumtues
@sq
researcher
@en
wetenschapper
@nl
հետազոտող
@hy
name
Sandro Bottaro
@ast
Sandro Bottaro
@en
Sandro Bottaro
@es
Sandro Bottaro
@nl
Sandro Bottaro
@sl
type
label
Sandro Bottaro
@ast
Sandro Bottaro
@en
Sandro Bottaro
@es
Sandro Bottaro
@nl
Sandro Bottaro
@sl
prefLabel
Sandro Bottaro
@ast
Sandro Bottaro
@en
Sandro Bottaro
@es
Sandro Bottaro
@nl
Sandro Bottaro
@sl
P1053
A-4141-2015
H-5486-2013
P106
P1153
36993681700
P21
P31
P3829
P496
0000-0003-1606-890X