Motivation: Modern algorithms for de novo prediction of protein structures typically output multiple full-length models (decoys) rather than a single solution. Subsequent clustering of such decoys is used both to gauge the success of the modelling and to decide on the most native-like conformation. At the same time, partial protein models are sufficient for some applications such as crystallographic phasing by molecular replacement (MR) in particular, provided these models represent a certain part of the target structure with reasonable accuracy. Results: Here we propose a novel clustering algorithm that natively operates in the space of partial models through an approach known as granular clustering (GC). The algorithm is based on growing...
Molecular replacement (MR) is the predominant route to solution of the phase problem in macromolecul...
We developed a novel approach for predicting local protein structure from sequence. It relies on the...
This work demonstrates the so-called PCAC (Protein principal Component Analysis Clustering) method, ...
AbstractProtein structure prediction encompasses two major challenges: 1), the generation of a large...
International audienceIn structural biology, many fragment-based 3D modeling methods require fragmen...
Motivation: Most current de novo structure prediction methods randomly sample protein conformations ...
Fragment-based approaches are the current standard for de novo protein structure prediction. These...
Difficulty in sampling large and complex conformational spaces remains a key limitation in fragment-...
Background: Recent advances on high-throughput technologies have produced a vast amount of protein s...
Background. One critical issue in protein three-dimensional structure prediction using either ab ini...
Determining the optimal number and identity of structural clusters from an ensemble of molecular con...
Proteins are complex systems as the Anfinsen’s thermodynamic hypothesis highlights. Their complexity...
Protein structure similarity clustering (PSSC) [1]– [3] is one of a number of potential guiding prin...
Motivation: Clustering is commonly used to identify the best decoy among many generated in protein s...
International audienceThe "Hybrid Protein Model" (HPM) is a fuzzy model for compacting biological da...
Molecular replacement (MR) is the predominant route to solution of the phase problem in macromolecul...
We developed a novel approach for predicting local protein structure from sequence. It relies on the...
This work demonstrates the so-called PCAC (Protein principal Component Analysis Clustering) method, ...
AbstractProtein structure prediction encompasses two major challenges: 1), the generation of a large...
International audienceIn structural biology, many fragment-based 3D modeling methods require fragmen...
Motivation: Most current de novo structure prediction methods randomly sample protein conformations ...
Fragment-based approaches are the current standard for de novo protein structure prediction. These...
Difficulty in sampling large and complex conformational spaces remains a key limitation in fragment-...
Background: Recent advances on high-throughput technologies have produced a vast amount of protein s...
Background. One critical issue in protein three-dimensional structure prediction using either ab ini...
Determining the optimal number and identity of structural clusters from an ensemble of molecular con...
Proteins are complex systems as the Anfinsen’s thermodynamic hypothesis highlights. Their complexity...
Protein structure similarity clustering (PSSC) [1]– [3] is one of a number of potential guiding prin...
Motivation: Clustering is commonly used to identify the best decoy among many generated in protein s...
International audienceThe "Hybrid Protein Model" (HPM) is a fuzzy model for compacting biological da...
Molecular replacement (MR) is the predominant route to solution of the phase problem in macromolecul...
We developed a novel approach for predicting local protein structure from sequence. It relies on the...
This work demonstrates the so-called PCAC (Protein principal Component Analysis Clustering) method, ...