International audienceThis paper presents an approach to enhance conformational sampling of proteins employing stochastic algorithms such as Monte Carlo (MC) methods. The approach is based on a mechanistic representation of proteins and on the application of methods originating from robotics. We outline the general ideas of our approach and detail how it can be applied to construct several MC move classes, all operating on a shared representation of the molecule and using a single mathematical solver. We showcase these sampling techniques on several types of proteins. Results show that combining several move classes, which can be easily implemented thanks to the proposed approach, significantly improves sampling efficiency
AbstractA new and efficient Monte Carlo algorithm for sampling protein configurations in the continu...
AbstractHere, we propose a technique for sampling complex molecular systems with many degrees of fre...
Cette thèse présente une approche de modélisation inspirée par la robotique pour l'étude des changem...
This paper presents an approach to enhance conformational sampling of proteins employing stochastic ...
The ability to efficiently sample a protein’s conformational space allows one to understand how a pr...
The ability to efficiently sample structurally diverse protein conformations allows one to gain a hi...
A multiscale, modular approach to protein sampling with novel Monte Carlo algorithms is is presented...
Exploration In this paper we propose a robotics-inspired method to enhance sampling of native-like c...
Sampling alternative conformations is key to understanding how proteins work and engineering them fo...
Proteins are biological macromolecules that play essential roles in living organisms. Un- derstandin...
In this article, we present a method for the enhanced molecular dynamics simulation of protein and D...
ABSTRACT: There is growing interest in the topic of intrinsically disordered proteins (IDPs). Atomis...
AbstractA molecular simulation scheme, called Leap-dynamics, that provides efficient sampling of pro...
International audienceAbstract Flexible loops are paramount to protein functions, with action modes ...
Although Markov chain Monte Carlo (MC) simulation is a potentially powerful approach for exploring c...
AbstractA new and efficient Monte Carlo algorithm for sampling protein configurations in the continu...
AbstractHere, we propose a technique for sampling complex molecular systems with many degrees of fre...
Cette thèse présente une approche de modélisation inspirée par la robotique pour l'étude des changem...
This paper presents an approach to enhance conformational sampling of proteins employing stochastic ...
The ability to efficiently sample a protein’s conformational space allows one to understand how a pr...
The ability to efficiently sample structurally diverse protein conformations allows one to gain a hi...
A multiscale, modular approach to protein sampling with novel Monte Carlo algorithms is is presented...
Exploration In this paper we propose a robotics-inspired method to enhance sampling of native-like c...
Sampling alternative conformations is key to understanding how proteins work and engineering them fo...
Proteins are biological macromolecules that play essential roles in living organisms. Un- derstandin...
In this article, we present a method for the enhanced molecular dynamics simulation of protein and D...
ABSTRACT: There is growing interest in the topic of intrinsically disordered proteins (IDPs). Atomis...
AbstractA molecular simulation scheme, called Leap-dynamics, that provides efficient sampling of pro...
International audienceAbstract Flexible loops are paramount to protein functions, with action modes ...
Although Markov chain Monte Carlo (MC) simulation is a potentially powerful approach for exploring c...
AbstractA new and efficient Monte Carlo algorithm for sampling protein configurations in the continu...
AbstractHere, we propose a technique for sampling complex molecular systems with many degrees of fre...
Cette thèse présente une approche de modélisation inspirée par la robotique pour l'étude des changem...