In this paper authors perform a variability analysis of a Stochastic Petri Net (SPN) model of the Tissue Factor induced coagulation cascade, one of the most complex biochemical networks. This pathway has been widely analyzed in literature mostly with ordinary differential equations, outlining the general behaviour but without pointing out the intrinsic variability of the system. The SPN formalism can introduce uncertainty to capture this variability and, through computer simulation allows to generate analyzable time series, over a broad range of conditions, to characterize the trend of the main system molecules. We provide a useful tool for the development and management of several observational studies, potentially customizable for each patient. The SPN has been simulated using Tau-Leaping Stochastic Simulation Algorithm, and in order to simulate a large number of models, to test different scenarios, we perform them using High Performance Computing. We analyze different settings for model representing the cases of "healthy" and different " unhealthy" subjects, comparing and testing their variability in order to gain valuable biological insights. © 2013 Springer-Verlag.

Castaldi, D., Maccagnola, D., Mari, D., Archetti, F. (2013). MINING FOR VARIABILITY IN THE COAGULATION PATHWAY: A SYSTEMS BIOLOGY APPROACH. Intervento presentato a: AURO-PAR 2013, PARALLEL PROCESSING WORKSHOP [10.1007/978-3-642-37189-9_14].

MINING FOR VARIABILITY IN THE COAGULATION PATHWAY: A SYSTEMS BIOLOGY APPROACH

CASTALDI, DAVIDE FABIO;MACCAGNOLA, DANIELE;ARCHETTI, FRANCESCO ANTONIO
2013

Abstract

In this paper authors perform a variability analysis of a Stochastic Petri Net (SPN) model of the Tissue Factor induced coagulation cascade, one of the most complex biochemical networks. This pathway has been widely analyzed in literature mostly with ordinary differential equations, outlining the general behaviour but without pointing out the intrinsic variability of the system. The SPN formalism can introduce uncertainty to capture this variability and, through computer simulation allows to generate analyzable time series, over a broad range of conditions, to characterize the trend of the main system molecules. We provide a useful tool for the development and management of several observational studies, potentially customizable for each patient. The SPN has been simulated using Tau-Leaping Stochastic Simulation Algorithm, and in order to simulate a large number of models, to test different scenarios, we perform them using High Performance Computing. We analyze different settings for model representing the cases of "healthy" and different " unhealthy" subjects, comparing and testing their variability in order to gain valuable biological insights. © 2013 Springer-Verlag.
slide + paper
COAGULATION PATHWAY, DATA MINING, SYSTEMS BIOLOGY
English
AURO-PAR 2013, PARALLEL PROCESSING WORKSHOP
978-364237188-2
2013
7833
153
164
none
Castaldi, D., Maccagnola, D., Mari, D., Archetti, F. (2013). MINING FOR VARIABILITY IN THE COAGULATION PATHWAY: A SYSTEMS BIOLOGY APPROACH. Intervento presentato a: AURO-PAR 2013, PARALLEL PROCESSING WORKSHOP [10.1007/978-3-642-37189-9_14].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/42219
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