Inferring chemical reaction networks (CRN) from time series data is a challenge encouraged by the growing availability of quantitative temporal data at the cellular level. This motivates the design of algorithms to infer the preponderant reactions between the molecular species observed in a given biochemical process, and help to build CRN model structure and kinetics. Existing ODE-based inference methods such as SINDy resort to least square regression combined with sparsity-enforcing penalization, such as Lasso. However, when the input time series are only available in wild type conditions in which all reactions are present, we observe that current methods fail to learn sparse models. Results: We present Reactmine, a CRN learning algorithm ...
Dealing with a system of first-order reactions is a recurrent issue in chemometrics, especially in t...
MOTIVATION: Networks are widely used as structural summaries of biochemical systems. Statistical est...
We present a methodology for robust determination of chemical reaction network interconnections. Giv...
Inferring chemical reaction networks (CRN) from time series data is a challenge encouraged by the gr...
Inferring chemical reaction networks (CRN) from time series data is a challenge encouraged by the gr...
International audienceWith the automation of biological experiments and the increase of quality of s...
International audienceWith the automation of biological experiments and the increase of quality of s...
Recent advances in systems biology have uncovered detailed mechanisms of biological pro-cesses such ...
Stochastic chemical reaction networks constitute a model class to quantitatively describe dynamics a...
The inner workings of a biological cell or a chemical reaction can be rationalized by the network of...
Numerous different algorithms have been developed over the last few years which are capable of gener...
Identifying the reactions that govern a dynamical biological system is a crucial but challenging tas...
Numerous different algorithms have been developed over the last few years which are capable of gener...
Identifying the reactions that govern a dynamical biological system is a crucial but challenging tas...
Abstract High-throughput data acquisition in synthetic biology leads to an abundance of data that n...
Dealing with a system of first-order reactions is a recurrent issue in chemometrics, especially in t...
MOTIVATION: Networks are widely used as structural summaries of biochemical systems. Statistical est...
We present a methodology for robust determination of chemical reaction network interconnections. Giv...
Inferring chemical reaction networks (CRN) from time series data is a challenge encouraged by the gr...
Inferring chemical reaction networks (CRN) from time series data is a challenge encouraged by the gr...
International audienceWith the automation of biological experiments and the increase of quality of s...
International audienceWith the automation of biological experiments and the increase of quality of s...
Recent advances in systems biology have uncovered detailed mechanisms of biological pro-cesses such ...
Stochastic chemical reaction networks constitute a model class to quantitatively describe dynamics a...
The inner workings of a biological cell or a chemical reaction can be rationalized by the network of...
Numerous different algorithms have been developed over the last few years which are capable of gener...
Identifying the reactions that govern a dynamical biological system is a crucial but challenging tas...
Numerous different algorithms have been developed over the last few years which are capable of gener...
Identifying the reactions that govern a dynamical biological system is a crucial but challenging tas...
Abstract High-throughput data acquisition in synthetic biology leads to an abundance of data that n...
Dealing with a system of first-order reactions is a recurrent issue in chemometrics, especially in t...
MOTIVATION: Networks are widely used as structural summaries of biochemical systems. Statistical est...
We present a methodology for robust determination of chemical reaction network interconnections. Giv...