| Literature DB >> 33651241 |
Abdallah Derbalah1, Hesham S Al-Sallami2, Stephen B Duffull2.
Abstract
Quantitative systems pharmacology models are often highly complex and not amenable to further simulation and/or estimation analyses. Model-order reduction can be used to derive a mechanistically sound yet simpler model of the desired input-output relationship. In this study, we explore the use of artificial neural networks for approximating an input-output relationship within highly dimensional systems models. We illustrate this approach using a model of blood coagulation. The model consists of two components linked together through a highly dimensional discontinuous interface, which creates a difficulty for model reduction techniques. The proposed approach enables the development of an efficient approximation to complex models with the desired level of accuracy. The technique is applicable to a wide variety of models and provides substantial speed boost for use of such models in simulation and control purposes.Entities:
Keywords: Machine learning; Model-order reduction; Neural networks; Quantitative systems pharmacology
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Year: 2021 PMID: 33651241 DOI: 10.1007/s10928-021-09742-3
Source DB: PubMed Journal: J Pharmacokinet Pharmacodyn ISSN: 1567-567X Impact factor: 2.745