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Stochastic simulation and modelling of metabolic networks in a machine learning framework
Authors:Marenglen Biba  Fatos Xhafa  Floriana Esposito  Stefano Ferilli
Affiliation:1. Department of Computer Science, University of New York in Tirana, Albania;2. Department of Languages and Informatic Systems, Techical University of Catalonia, Spain;3. Department of Computer Science, University of Bari, Italy;1. Department of Medical and Surgical Sciences and Biotechnologies, Sapienza University of Rome, Corso della Repubblica 79, Latina 40100, Italy;2. Movement Analysis LAB, Rehabilitation Centre Policlinico Italia, Piazza del Campidano 6, 00162 Rome, Italy;3. Biolab3, Department of Engineering, Roma TRE University, Via Vito Volterra 62, 00149 Roma, Italy;4. Department of Mechanical and Aerospace Engineering, “Sapienza” University of Rome, Via Eudossiana 18, 00184 Roma, Italy;5. Fondazione Don Gnocchi Foundation, Milan, Italy;6. INAIL, Department of Occupational and Environmental Medicine, Epidemiology and Hygiene, Via Fontana Candida 1, 00040 Monte Porzio Catone, Italy;7. G.B. Bietti Foundation-IRCCS, Department of Neurophysiology of Vision and Neurophthalmology, Via Livenza 3, 00198 Rome, Italy;8. IRCCS Neuromed, Pozzilli (IS), Italy;1. Department of Mathematics, Faculty of Science, Universiti Putra Malaysia, Malaysia;2. Department of Mathematics and Computer Science, Umaru Musa Yar’adua University, Katsina, Nigeria;1. Department Cell and Molecular Biology, Science for Life Laboratory, Uppsala University, Uppsala, Sweden;1. Laboratoire de Biomécanique, Arts et Métiers ParisTech, Paris, France;2. Service de Chirurgie du Rachis, Hôpitaux Universitaires de Strasbourg, Fédération de Médecine Translationnelle, Université de Strasbourg, 1, Place de l''hôpital, B.P. 426, 67091 Strasbourg Cedex, France
Abstract:Metabolomics is increasingly becoming an important field. The fundamental task in this area is to measure and interpret complex time and condition dependent parameters such as the activity or flux of metabolites in cells, their concentration, tissues elements and other biosamples. The careful study of all these elements has led to important insights in the functioning of metabolism. Recently, however, there is a growing interest towards an integrated approach to studying biological systems. This is the main goal in Systems Biology where a combined investigation of several components of a biological system is thought to produce a thorough understanding of such systems. Biological circuits are complex to model and simulate and many efforts are being made to develop models that can handle their intrinsic complexity. A significant part of biological networks still remains unknown even though recent technological developments allow simultaneous acquisition of many metabolite measurements. Metabolic networks are not only structurally complex but behave also in a stochastic fashion. Therefore, it is necessary to express structure and handle uncertainty to construct complete dynamics of these networks. In this paper we describe how stochastic modeling and simulation can be performed in a symbolic-statistical machine learning (ML) framework. We show that symbolic ML deal with structural and relational complexity while statistical ML provides principled approaches to uncertainty modeling. Learning is used to analyze traces of biochemical reactions and model the dynamicity through parameter learning, while inference is used to produce stochastic simulation of the network.
Keywords:
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