five

Radulescu2008_NFkB_hierarchy_M_34_60_82

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下载链接:
https://www.omicsdi.org/dataset/biomodels/MODEL7743631122
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资源简介:
NFkB model M(34,60,82) This is a model of NFkB pathway functioning from hierarchy of models of decreasing complexity, created to demonstrate application of model reduction methods proposed in Radulescu O, Gorban A., Zinovyev A., Lilienbaum. A. Robust simplifications of multiscale models in systems biology. Manuscript submitted. The models are provided in CellDesigner v3.5 format. The name of the model M(x,y,z) should be deciphered as following: x - number of species y - number of reactions z - number of parameters Simulation protocol: The model can be simulated in CellDesigner directly, or in any simulator supporting events. The simulation period should be set up in 40 hours (t=144000 sec). The 'signal' event applies signal to the pathway at the moment t=20 hours=72000 sec. For additional information please contact Andrei.Zinovyev at curie.fr This model originates from BioModels Database: A Database of Annotated Published Models. It is copyright (c) 2005-2011 The BioModels.net Team. To the extent possible under law, all copyright and related or neighbouring rights to this encoded model have been dedicated to the public domain worldwide. Please refer to CC0 Public Domain Dedication for more information. In summary, you are entitled to use this encoded model in absolutely any manner you deem suitable, verbatim, or with modification, alone or embedded it in a larger context, redistribute it, commercially or not, in a restricted way or not.. To cite BioModels Database, please use: Li C, Donizelli M, Rodriguez N, Dharuri H, Endler L, Chelliah V, Li L, He E, Henry A, Stefan MI, Snoep JL, Hucka M, Le Novère N, Laibe C (2010) BioModels Database: An enhanced, curated and annotated resource for published quantitative kinetic models. BMC Syst Biol., 4:92.
创建时间:
2009-10-08
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