peer reviewedConformational sampling, the computational prediction of the experimental geometries of small proteins (folding) or of protein-ligand complexes (docking), is often cited as one of the most challenging multimodal optimization problems. Due to the extreme ruggedness of the energy landscape as a function of geometry, sampling heuristics must rely on an appropriate trade-off between global and local searching efforts. A previously reported "planetary strategy", a generalization of the classical island model used to deploy a hybrid genetic algorithm on computer grids, has shown a good ability to quickly discover low-energy geometries of small proteins and sugars, and sometimes even pinpoint their native structures - although not rep...
We propose a pioneering enhanced genetic algorithm to find a global optimal solution without derivat...
International audienceStructure-based computational protein design (CPD) refers to the problem of fi...
In this paper, we propose a systematic design of evolutionary optimization, namely Multimodal Memeti...
International audienceConformational sampling, the computational prediction of the experimental geom...
International audienceComputational simulations of conformational sampling in general, and of macrom...
peer reviewedComputational simulations of conformational sampling in general, and of macromolecular ...
International audiencePopulation-based sampling methods, such as evolutionary algorithms, are genera...
International audienceEvolutionary approaches to molecular docking typically hybridize with local se...
Abstract: Key problems in computational biology, including protein and RNA folding and drug docking,...
We present experimental results on benchmark problems in 3D cubic lattice structures with the Miyaza...
International audienceCommon evolutionary approaches to protein-ligand docking optimization use muta...
Background: Elucidating the three-dimensional structure of a higher-order molecular assembly formed ...
International audienceThe number of local minima of the potential energy landscape (PEL) of molecula...
International audienceThe number of local minima of the potential energy landscape (PEL) of molecula...
ABSTRACT This paper presents a new Genetic Algorithm for Protein Structure Prediction problem in bot...
We propose a pioneering enhanced genetic algorithm to find a global optimal solution without derivat...
International audienceStructure-based computational protein design (CPD) refers to the problem of fi...
In this paper, we propose a systematic design of evolutionary optimization, namely Multimodal Memeti...
International audienceConformational sampling, the computational prediction of the experimental geom...
International audienceComputational simulations of conformational sampling in general, and of macrom...
peer reviewedComputational simulations of conformational sampling in general, and of macromolecular ...
International audiencePopulation-based sampling methods, such as evolutionary algorithms, are genera...
International audienceEvolutionary approaches to molecular docking typically hybridize with local se...
Abstract: Key problems in computational biology, including protein and RNA folding and drug docking,...
We present experimental results on benchmark problems in 3D cubic lattice structures with the Miyaza...
International audienceCommon evolutionary approaches to protein-ligand docking optimization use muta...
Background: Elucidating the three-dimensional structure of a higher-order molecular assembly formed ...
International audienceThe number of local minima of the potential energy landscape (PEL) of molecula...
International audienceThe number of local minima of the potential energy landscape (PEL) of molecula...
ABSTRACT This paper presents a new Genetic Algorithm for Protein Structure Prediction problem in bot...
We propose a pioneering enhanced genetic algorithm to find a global optimal solution without derivat...
International audienceStructure-based computational protein design (CPD) refers to the problem of fi...
In this paper, we propose a systematic design of evolutionary optimization, namely Multimodal Memeti...