In order to advance the mission of in silico cell biology, modeling the interactions of large and complex biological systems becomes increasingly relevant. The combination of molecular dynamics (MD) and Markov state models (MSMs) have enabled the construction of simplified models of molecular kinetics on long timescales. Despite its success, this approach is inherently limited by the size of the molecular system. With increasing size of macromolecular complexes, the number of independent or weakly coupled subsystems increases, and the number of global system states increase exponentially, making the sampling of all distinct global states unfeasible. In this work, we present a technique called Independent Markov Decomposition (IMD) that leve...
This thesis describes the development and application of advanced computational methods for studying...
Understanding and control of structures and rates involved in protein ligand binding are essential f...
As the genetic content is internally located within DNA duplexed form, it has long been hypothesized...
Molecular dynamics (MD) simulations can model the interactions between macromolecules with high spat...
The increasing interest in modeling the dynamics of ever larger proteins has revealed a fundamental ...
With recent advances in structural biology, including experi-mental techniques and deep learning-ena...
In this thesis, the aim is to contribute to the development of long-time methods for molecular dynam...
Markov State Models (MSMs) are constructed from Molecular Dynamics (MD) simulation data, high-resolu...
Understanding the kinetic behavior of complex systems is crucial for the study of physical, chemical...
Machine learning (ML) has emerged as a pervasive tool in science, engineering, and beyond. Its succe...
This dissertation presents three research projects on novel methods in computational bio- physics. E...
A novel approach to simulate simple protein–ligand systems at large time and length scales is to cou...
A popular approach to analyze the dynamics of high-dimensional many-body systems, such as macromolec...
Understanding and control of structures and rates involved in protein ligand binding are essential f...
Markov state models (MSMs) and other related kinetic network models are frequently used to study the...
This thesis describes the development and application of advanced computational methods for studying...
Understanding and control of structures and rates involved in protein ligand binding are essential f...
As the genetic content is internally located within DNA duplexed form, it has long been hypothesized...
Molecular dynamics (MD) simulations can model the interactions between macromolecules with high spat...
The increasing interest in modeling the dynamics of ever larger proteins has revealed a fundamental ...
With recent advances in structural biology, including experi-mental techniques and deep learning-ena...
In this thesis, the aim is to contribute to the development of long-time methods for molecular dynam...
Markov State Models (MSMs) are constructed from Molecular Dynamics (MD) simulation data, high-resolu...
Understanding the kinetic behavior of complex systems is crucial for the study of physical, chemical...
Machine learning (ML) has emerged as a pervasive tool in science, engineering, and beyond. Its succe...
This dissertation presents three research projects on novel methods in computational bio- physics. E...
A novel approach to simulate simple protein–ligand systems at large time and length scales is to cou...
A popular approach to analyze the dynamics of high-dimensional many-body systems, such as macromolec...
Understanding and control of structures and rates involved in protein ligand binding are essential f...
Markov state models (MSMs) and other related kinetic network models are frequently used to study the...
This thesis describes the development and application of advanced computational methods for studying...
Understanding and control of structures and rates involved in protein ligand binding are essential f...
As the genetic content is internally located within DNA duplexed form, it has long been hypothesized...