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1.
NPJ Syst Biol Appl ; 4: 33, 2018.
Article in English | MEDLINE | ID: mdl-30131870

ABSTRACT

Non-alcoholic fatty liver disease (NAFLD) is a serious public health issue associated with high fat, high sugar diets. However, the molecular mechanisms mediating NAFLD pathogenesis are only partially understood. Here we adopt an iterative multi-scale, systems biology approach coupled to in vitro experimentation to investigate the roles of sugar and fat metabolism in NAFLD pathogenesis. The use of fructose as a sweetening agent is controversial; to explore this, we developed a predictive model of human monosaccharide transport, signalling and metabolism. The resulting quantitative model comprising a kinetic model describing monosaccharide transport and insulin signalling integrated with a hepatocyte-specific genome-scale metabolic network (GSMN). Differential kinetics for the utilisation of glucose and fructose were predicted, but the resultant triacylglycerol production was predicted to be similar for monosaccharides; these predictions were verified by in vitro data. The role of physiological adaptation to lipid overload was explored through the comprehensive reconstruction of the peroxisome proliferator activated receptor alpha (PPARα) regulome integrated with a hepatocyte-specific GSMN. The resulting qualitative model reproduced metabolic responses to increased fatty acid levels and mimicked lipid loading in vitro. The model predicted that activation of PPARα by lipids produces a biphasic response, which initially exacerbates steatosis. Our data support the evidence that it is the quantity of sugar rather than the type that is critical in driving the steatotic response. Furthermore, we predict PPARα-mediated adaptations to hepatic lipid overload, shedding light on potential challenges for the use of PPARα agonists to treat NAFLD.

2.
NPJ Syst Biol Appl ; 2: 16032, 2016.
Article in English | MEDLINE | ID: mdl-28725480

ABSTRACT

Systems Biology has established numerous approaches for mechanistic modeling of molecular networks in the cell and a legacy of models. The current frontier is the integration of models expressed in different formalisms to address the multi-scale biological system organization challenge. We present MUFINS (MUlti-Formalism Interaction Network Simulator) software, implementing a unique set of approaches for multi-formalism simulation of interaction networks. We extend the constraint-based modeling (CBM) framework by incorporation of linear inhibition constraints, enabling for the first time linear modeling of networks simultaneously describing gene regulation, signaling and whole-cell metabolism at steady state. We present a use case where a logical hypergraph model of a regulatory network is expressed by linear constraints and integrated with a Genome-Scale Metabolic Network (GSMN) of mouse macrophage. We experimentally validate predictions, demonstrating application of our software in an iterative cycle of hypothesis generation, validation and model refinement. MUFINS incorporates an extended version of our Quasi-Steady State Petri Net approach to integrate dynamic models with CBM, which we demonstrate through a dynamic model of cortisol signaling integrated with the human Recon2 GSMN and a model of nutrient dynamics in physiological compartments. Finally, we implement a number of methods for deriving metabolic states from ~omics data, including our new variant of the iMAT congruency approach. We compare our approach with iMAT through the analysis of 262 individual tumor transcriptomes, recovering features of metabolic reprogramming in cancer. The software provides graphics user interface with network visualization, which facilitates use by researchers who are not experienced in coding and mathematical modeling environments.

3.
Bioinformatics ; 29(24): 3181-90, 2013 Dec 15.
Article in English | MEDLINE | ID: mdl-24064420

ABSTRACT

MOTIVATION: Dynamic simulation of genome-scale molecular interaction networks will enable the mechanistic prediction of genotype-phenotype relationships. Despite advances in quantitative biology, full parameterization of whole-cell models is not yet possible. Simulation methods capable of using available qualitative data are required to develop dynamic whole-cell models through an iterative process of modelling and experimental validation. RESULTS: We formulate quasi-steady state Petri nets (QSSPN), a novel method integrating Petri nets and constraint-based analysis to predict the feasibility of qualitative dynamic behaviours in qualitative models of gene regulation, signalling and whole-cell metabolism. We present the first dynamic simulations including regulatory mechanisms and a genome-scale metabolic network in human cell, using bile acid homeostasis in human hepatocytes as a case study. QSSPN simulations reproduce experimentally determined qualitative dynamic behaviours and permit mechanistic analysis of genotype-phenotype relationships. AVAILABILITY AND IMPLEMENTATION: The model and simulation software implemented in C++ are available in supplementary material and at http://sysbio3.fhms.surrey.ac.uk/qsspn/.


Subject(s)
Algorithms , Computational Biology/methods , Computer Simulation , Gene Expression Regulation , Gene Regulatory Networks , Metabolic Networks and Pathways , Signal Transduction , Bile Acids and Salts/metabolism , Cholesterol/metabolism , Feasibility Studies , Genetic Association Studies , Genome, Human , Hepatocytes/cytology , Hepatocytes/metabolism , Humans , Models, Biological , Monte Carlo Method , Protein Interaction Mapping , Software
4.
Atherosclerosis ; 176(1): 21-6, 2004 Sep.
Article in English | MEDLINE | ID: mdl-15306170

ABSTRACT

The recruitment of peripheral monocytes to the sub-endothelial space, their development into macrophages and subsequent proliferation are critical events during atherosclerosis. Receptors for epidermal growth factor (EGF) have been identified on cells of the myeloid lineage, but a role for them in atherogenesis has yet to be described. We have identified functional EGF receptors (EGFR, ErbB1/HER-1) on peripheral blood monocytes and monocyte-derived macrophages. Uniquely, these receptors were found to mediate both chemotaxis in monocytes and macrophages and proliferation in macrophages. EGFR mRNA was detected in atherosclerotic plaques, but not in morphologically normal aortae and EGFR receptor staining co-localised with macrophage staining in these plaques. The identification of receptors for EGF on peripheral blood monocytes, macrophages and atherosclerotic lesions, together with their transduction of two functionally important cellular events, heightens the potential importance of members of the EGF super-family in atherogenesis and other chronic inflammatory processes.


Subject(s)
Arteriosclerosis/immunology , Chemotaxis, Leukocyte/immunology , Epidermal Growth Factor/pharmacology , ErbB Receptors/genetics , Macrophages/cytology , Monocytes/cytology , Animals , Aorta/immunology , Aorta/physiopathology , Arteriosclerosis/physiopathology , Cell Division/immunology , Chemotaxis, Leukocyte/drug effects , Epidermal Growth Factor/immunology , Epidermal Growth Factor/metabolism , ErbB Receptors/metabolism , Gene Expression/immunology , Macrophages/physiology , Mitogens/immunology , Mitogens/metabolism , Mitogens/pharmacology , Monocytes/physiology , RNA, Messenger/analysis , Rabbits
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