[HTML][HTML] On structural and practical identifiability
We discuss issues of structural and practical identifiability of partially observed differential
equations which are often applied in systems biology. The development of mathematical …
equations which are often applied in systems biology. The development of mathematical …
[HTML][HTML] Kinetic models in industrial biotechnology–improving cell factory performance
An increasing number of industrial bioprocesses capitalize on living cells by using them as
cell factories that convert sugars into chemicals. These processes range from the production …
cell factories that convert sugars into chemicals. These processes range from the production …
Systems biology informed deep learning for inferring parameters and hidden dynamics
A Yazdani, L Lu, M Raissi… - PLoS computational …, 2020 - journals.plos.org
Mathematical models of biological reactions at the system-level lead to a set of ordinary
differential equations with many unknown parameters that need to be inferred using …
differential equations with many unknown parameters that need to be inferred using …
[BUCH][B] Uncertainty quantification: theory, implementation, and applications
RC Smith - 2024 - SIAM
Uncertainty quantification serves a central role for simulation-based analysis of physical,
engineering, and biological applications using mechanistic models. From a broad …
engineering, and biological applications using mechanistic models. From a broad …
Structural identifiability of dynamic systems biology models
AF Villaverde, A Barreiro… - PLoS computational …, 2016 - journals.plos.org
A powerful way of gaining insight into biological systems is by creating a nonlinear
differential equation model, which usually contains many unknown parameters. Such a …
differential equation model, which usually contains many unknown parameters. Such a …
Identifiability analysis for stochastic differential equation models in systems biology
Mathematical models are routinely calibrated to experimental data, with goals ranging from
building predictive models to quantifying parameters that cannot be measured. Whether or …
building predictive models to quantifying parameters that cannot be measured. Whether or …
Benchmarking optimization methods for parameter estimation in large kinetic models
Motivation Kinetic models contain unknown parameters that are estimated by optimizing the
fit to experimental data. This task can be computationally challenging due to the presence of …
fit to experimental data. This task can be computationally challenging due to the presence of …
Observability and structural identifiability of nonlinear biological systems
AF Villaverde - Complexity, 2019 - Wiley Online Library
Observability is a modelling property that describes the possibility of inferring the internal
state of a system from observations of its output. A related property, structural identifiability …
state of a system from observations of its output. A related property, structural identifiability …
Reverse engineering and identification in systems biology: strategies, perspectives and challenges
The interplay of mathematical modelling with experiments is one of the central elements in
systems biology. The aim of reverse engineering is to infer, analyse and understand …
systems biology. The aim of reverse engineering is to infer, analyse and understand …
Full observability and estimation of unknown inputs, states and parameters of nonlinear biological models
In this paper, we address the system identification problem in the context of biological
modelling. We present and demonstrate a methodology for (i) assessing the possibility of …
modelling. We present and demonstrate a methodology for (i) assessing the possibility of …