O Margoninski
University College London
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Featured researches published by O Margoninski.
IEEE Computer | 2004
Anthony Finkelstein; James Hetherington; L Li; O Margoninski; Peter Saffrey; Robert M. Seymour; Anne E. Warner
Progress in the study of biological systems such as the heart, brain, and liver will require computer scientists to work closely with life scientists and mathematicians. Computer science will play a key role in shaping the new discipline of systems biology and addressing the significant computational challenges it poses.
Computers & Chemical Engineering | 2007
James Hetherington; I.D.L. Bogle; Peter Saffrey; O Margoninski; L Li; M. Varela Rey; Sachie Yamaji; S. Baigent; Jonathan Ashmore; K. Page; Robert M. Seymour; Anthony Finkelstein; Anne E. Warner
Mathematical and computational modelling are emerging as important techniques for studying the behaviour of complex biological systems. We argue that two advances are necessary to properly leverage these techniques: firstly, the ability to integrate models developed and executed on separate tools, without the need for substantial translation and secondly, a comprehensive system for storing and man-ageing not only the models themselves but also the parameters and tools used to execute those models and the results they produce. A framework for modelling with these features is described here. We have developed of a suite of XML-based services used for the storing and analysis of models, model parameters and results, and tools for model integration. We present these here, and evaluate their effectiveness using a worked example based on part of the hepatocyte glycogenolysis system.
Journal of the Royal Society Interface | 2012
James Hetherington; T. Sumner; Robert M. Seymour; L Li; M. Varela Rey; Sachie Yamaji; Peter Saffrey; O Margoninski; I.D.L. Bogle; Anthony Finkelstein; Anne E. Warner
A computational model of the glucagon/insulin-driven liver glucohomeostasis function, focusing on the buffering of glucose into glycogen, has been developed. The model exemplifies an ‘engineering’ approach to modelling in systems biology, and was produced by linking together seven component models of separate aspects of the physiology. The component models use a variety of modelling paradigms and degrees of simplification. Model parameters were determined by an iterative hybrid of fitting to high-scale physiological data, and determination from small-scale in vitro experiments or molecular biological techniques. The component models were not originally designed for inclusion within such a composite model, but were integrated, with modification, using our published modelling software and computational frameworks. This approach facilitates the development of large and complex composite models, although, inevitably, some compromises must be made when composing the individual models. Composite models of this form have not previously been demonstrated.
Journal of the Royal Society Interface | 2012
T. Sumner; James Hetherington; Robert M. Seymour; L Li; M. Varela Rey; Sachie Yamaji; Peter Saffrey; O Margoninski; I.D.L. Bogle; Anthony Finkelstein; Anne E. Warner
Using a composite model of the glucose homeostasis system, consisting of seven interconnected submodels, we enumerate the possible behaviours of the model in response to variation of liver insulin sensitivity and dietary glucose variability. The model can reproduce published experimental manipulations of the glucose homeostasis system and clearly illustrates several important properties of glucose homeostasis—boundedness in model parameters of the region of efficient homeostasis, existence of an insulin sensitivity that allows effective homeostatic control and the importance of transient and oscillatory behaviour in characterizing homeostatic failure. Bifurcation analysis shows that the appearance of a stable limit cycle can be identified.
Transactions on computational systems biology VIII | 2007
Peter Saffrey; O Margoninski; James Hetherington; Marta Varela-Rey; Sachie Yamaji; Anthony Finkelstein; David Bogle; Anne E. Warner
Mathematical and computational modelling are research areas with increasing importance in the study of behaviour in complex biological systems. With the increasing breadth and depth of models under consideration, a disciplined approach to managing the diverse data associated with these models is needed. Of particular importance is the issue of provenance, where a model result is linked to information about the generating model, the parameters used in that model and the papers and experiments that were used to derive those parameters. This paper presents an architecture to manage this information along with accompanying tool support and examples of the management system in use at various points in the development of a large model.
Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) , 4230 L pp. 163-184. (2006) | 2006
O Margoninski; P Safffrey; James Hetherington; Anthony Finkelstein; Anne E. Warner
In: (Proceedings) Proceedings of the 7th World Congress of Chemical Engineering, Glasgow, 10-14 July. (2005) | 2005
I.D.L. Bogle; L Li; P Saffery; James Hetherington; O Margoninski; R Wright; A Varela-Rey; R Finkelstein; R Callard; Robert M. Seymour; R Horton; Anne E. Warner
The Journal of Physiology , 561P (PC31) (2004) | 2004
R Wright; Mv Rey; O Margoninski; Peter Saffrey; James Hetherington; L Li; Robert M. Seymour; Anne E. Warner; Anthony Finkelstein
In: (pp. PC31-). (2004) | 2004
R Wright; M. Varela Rey; O Margoninski; Peter Saffrey; James Hetherington; L Li; Robert M. Seymour; Anne E. Warner; Anthony Finkelstein
WebNet | 1996
Itzik Yarhy; O Margoninski; David Rashty; Nava Ben Tzvi