
Biological communities are populations of various species interacting in a common location. Microbial communities, which are formed by microorganisms, are ubiquitous in nature and are increasingly used in biotechnological and biomedical applications. They are nonlinear systems whose dynamics can be accurately described by models of ordinary differential equations (ODEs). A number of ODE models have been proposed to describe microbial communities. However, the structural identifiability and observability of most of them—that is, the theoretical possibility of inferring their parameters and internal states by observing their output—have not been determined yet. It is important to establish whether a model possesses these properties, because, in their absence, the ability of a model to make reliable predictions may be compromised. Hence, in this paper, we analyse these properties for the main families of microbial community models. We consider several dimensions and measurements; overall, we analyse more than a hundred different configurations. We find that some of them are fully identifiable and observable, but a number of cases are structurally unidentifiable and/or unobservable under typical experimental conditions. Our results help in deciding which modelling frameworks may be used for a given purpose in this emerging area, and which ones should be avoided.
dynamic modelling; systems biology; identifiability; observability; microbial communities, Technology, observability, QH301-705.5, T, microbial communities, systems biology, identifiability, Article, dynamic modelling, 3328 Procesos Tecnológicos, Biology (General), 2414 Microbiología, 3311.02 Ingeniería de control
dynamic modelling; systems biology; identifiability; observability; microbial communities, Technology, observability, QH301-705.5, T, microbial communities, systems biology, identifiability, Article, dynamic modelling, 3328 Procesos Tecnológicos, Biology (General), 2414 Microbiología, 3311.02 Ingeniería de control
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