With recent advances in structural biology, including experi-mental techniques and deep learning-enabled high-precision structure predictions, molecular dynamics methods that scale up to large biomolecular systems are required. Current state-of-the-art approaches in molecular dynamics modeling focus on encoding global configurations of molecular systems as distinct states. This paradigm commands us to map out all possible structures and sample transitions between them, a task that becomes impossible for large-scale systems such as biomolecular complexes. To arrive at scalable molecular models, we suggest moving away from global state de-scriptions to a set of coupled models that each describe the dynamics of local domains or sites of the mo...
In this thesis, the aim is to contribute to the development of long-time methods for molecular dynam...
A novel approach to simulate simple protein-ligand systems at large time and length scales is to cou...
Markov State Models (MSMs) provide an automated framework to investigate the dynamical properties of...
With recent advances in structural biology, including experi-mental techniques and deep learning-ena...
The increasing interest in modeling the dynamics of ever larger proteins has revealed a fundamental ...
ABSTRACT: Owing to recent developments in computational algorithms and architectures, it is now comp...
Markov State Modelling as a concept for a coarse grained description of the essential kinetics of a ...
Conformational changes of proteins are an*Author contributed equally with all other contributors. es...
Markov State Modelling as a concept for a coarse grained description of the essential kinetics of a ...
Machine learning (ML) has emerged as a pervasive tool in science, engineering, and beyond. Its succe...
CONSPECTUS: Protein function is inextricably linked to protein dynamics. As we move from a static st...
Machine learning has been playing an increasingly important role in many fields of computational phys...
Molecular recognition, the process by which biological macromolecules selectively bind, plays an imp...
Markov State Models (MSMs) are constructed from Molecular Dynamics (MD) simulation data, high-resolu...
Molecular kinetics underlies all biological phenomena and, like many other biological processes, may...
In this thesis, the aim is to contribute to the development of long-time methods for molecular dynam...
A novel approach to simulate simple protein-ligand systems at large time and length scales is to cou...
Markov State Models (MSMs) provide an automated framework to investigate the dynamical properties of...
With recent advances in structural biology, including experi-mental techniques and deep learning-ena...
The increasing interest in modeling the dynamics of ever larger proteins has revealed a fundamental ...
ABSTRACT: Owing to recent developments in computational algorithms and architectures, it is now comp...
Markov State Modelling as a concept for a coarse grained description of the essential kinetics of a ...
Conformational changes of proteins are an*Author contributed equally with all other contributors. es...
Markov State Modelling as a concept for a coarse grained description of the essential kinetics of a ...
Machine learning (ML) has emerged as a pervasive tool in science, engineering, and beyond. Its succe...
CONSPECTUS: Protein function is inextricably linked to protein dynamics. As we move from a static st...
Machine learning has been playing an increasingly important role in many fields of computational phys...
Molecular recognition, the process by which biological macromolecules selectively bind, plays an imp...
Markov State Models (MSMs) are constructed from Molecular Dynamics (MD) simulation data, high-resolu...
Molecular kinetics underlies all biological phenomena and, like many other biological processes, may...
In this thesis, the aim is to contribute to the development of long-time methods for molecular dynam...
A novel approach to simulate simple protein-ligand systems at large time and length scales is to cou...
Markov State Models (MSMs) provide an automated framework to investigate the dynamical properties of...