Abstract High-throughput data acquisition in synthetic biology leads to an abundance of data that need to be processed and aggregated into useful biological models. Building dynamical models based on this wealth of data is of paramount importance to understand and optimize designs of synthetic biology constructs. However, building models manually for each data set is inconvenient and might become infeasible for highly complex synthetic systems. In this paper, we present state-of-the-art system identification techniques and combine them with chemical reaction network theory (CRNT) to generate dynamic models automatically. On the system identification side, Sparse Bayesian Learning offers methods to learn from data the sparsest set of dictio...
The development of chemical reaction models aids understanding and prediction in areas ranging from ...
In this thesis we review, analyse and develop a series of different algorithms to model dynamic vari...
The development of chemical reaction models aids understanding and prediction in areas ranging from ...
Abstract High-throughput data acquisition in synthetic biology leads to an abundance of data that n...
High-throughput data acquisition in synthetic biology leads to an abundance of data that need to be ...
Identifying the reactions that govern a dynamical biological system is a crucial but challenging tas...
Identifying the reactions that govern a dynamical biological system is a crucial but challenging tas...
Identifying the reactions that govern a dynamical biological system is a crucial but challenging tas...
Identifying the reactions that govern a dynamical biological system is a crucial but challenging tas...
Reconstruction of biochemical reaction networks (BRN) and genetic regulatory networks (GRN) in parti...
peer reviewedReconstruction of biochemical reaction networks (BRN) and genetic regulatory networks (...
Reconstruction of biochemical reaction networks (BRN) and genetic regulatory networks (GRN) in parti...
Reconstruction of biochemical reaction networks is a central topic in systems biology which raises c...
Mathematical modeling and analysis of biochemical reaction networks are key routines in computationa...
Background: The inference of biological networks from high-throughput data has received huge attenti...
The development of chemical reaction models aids understanding and prediction in areas ranging from ...
In this thesis we review, analyse and develop a series of different algorithms to model dynamic vari...
The development of chemical reaction models aids understanding and prediction in areas ranging from ...
Abstract High-throughput data acquisition in synthetic biology leads to an abundance of data that n...
High-throughput data acquisition in synthetic biology leads to an abundance of data that need to be ...
Identifying the reactions that govern a dynamical biological system is a crucial but challenging tas...
Identifying the reactions that govern a dynamical biological system is a crucial but challenging tas...
Identifying the reactions that govern a dynamical biological system is a crucial but challenging tas...
Identifying the reactions that govern a dynamical biological system is a crucial but challenging tas...
Reconstruction of biochemical reaction networks (BRN) and genetic regulatory networks (GRN) in parti...
peer reviewedReconstruction of biochemical reaction networks (BRN) and genetic regulatory networks (...
Reconstruction of biochemical reaction networks (BRN) and genetic regulatory networks (GRN) in parti...
Reconstruction of biochemical reaction networks is a central topic in systems biology which raises c...
Mathematical modeling and analysis of biochemical reaction networks are key routines in computationa...
Background: The inference of biological networks from high-throughput data has received huge attenti...
The development of chemical reaction models aids understanding and prediction in areas ranging from ...
In this thesis we review, analyse and develop a series of different algorithms to model dynamic vari...
The development of chemical reaction models aids understanding and prediction in areas ranging from ...