International audienceThe use of machine learning (ML) in life sciences has gained wide interest over the past years, as it speeds up the development of high performing models. Important modeling tools in biology have proven their worth for pathway design, such as mechanistic models and metabolic networks, as they allow better understanding of mechanisms involved in the functioning of organisms. However, little has been done on the use of ML to model metabolic pathways, and the degree of non-linearity associated with them is not clear. Here, we report the construction of different metabolic pathways with several linear and non-linear ML models. Different types of data are used; they lead to the prediction of important biological data, such ...
Extracting metabolic pathway from microarray gene expression data that dictates a specific biologica...
Motivation: Perhaps the greatest challenge of modern biology is to develop accurate in silico models...
Metabolomics research has recently gained popularity because it enables the study of biological trai...
International audienceThe use of machine learning (ML) in life sciences has gained wide interest ove...
Machine learning uses experimental data to optimize clustering or classification of samples or featu...
New synthetic biology capabilities hold the promise of dramatically improving our ability to enginee...
New synthetic biology capabilities hold the promise of dramatically improving our ability to enginee...
Metabolic inference from genomic sequence information is a necessary step in determining the capacit...
Along with the rapid scale-up of biological knowledge bases, mechanistic models, especially metaboli...
Identification of metabolic regulation is a key point in metabolic engineering. Metabolic regulation...
Mechanistic (also called kinetic) models quantitatively describe dynamic and steady states of bioche...
Metabolic systems are among of the oldest applications of mathematical modeling. Spanning a time per...
Thesis (Master's)--University of Washington, 2018The flux control coefficient (FCC) is a sensitivity...
Machine learning provides researchers a unique opportunity to make metabolic engineering more predic...
Metabolic networks have largely been exploited as mechanistic tools to predict the behavior of micro...
Extracting metabolic pathway from microarray gene expression data that dictates a specific biologica...
Motivation: Perhaps the greatest challenge of modern biology is to develop accurate in silico models...
Metabolomics research has recently gained popularity because it enables the study of biological trai...
International audienceThe use of machine learning (ML) in life sciences has gained wide interest ove...
Machine learning uses experimental data to optimize clustering or classification of samples or featu...
New synthetic biology capabilities hold the promise of dramatically improving our ability to enginee...
New synthetic biology capabilities hold the promise of dramatically improving our ability to enginee...
Metabolic inference from genomic sequence information is a necessary step in determining the capacit...
Along with the rapid scale-up of biological knowledge bases, mechanistic models, especially metaboli...
Identification of metabolic regulation is a key point in metabolic engineering. Metabolic regulation...
Mechanistic (also called kinetic) models quantitatively describe dynamic and steady states of bioche...
Metabolic systems are among of the oldest applications of mathematical modeling. Spanning a time per...
Thesis (Master's)--University of Washington, 2018The flux control coefficient (FCC) is a sensitivity...
Machine learning provides researchers a unique opportunity to make metabolic engineering more predic...
Metabolic networks have largely been exploited as mechanistic tools to predict the behavior of micro...
Extracting metabolic pathway from microarray gene expression data that dictates a specific biologica...
Motivation: Perhaps the greatest challenge of modern biology is to develop accurate in silico models...
Metabolomics research has recently gained popularity because it enables the study of biological trai...