Top-Down Systems Biology Modeling of Host Metabotype−Microbiome Associations in Obese Rodents

2009 ◽  
Vol 8 (5) ◽  
pp. 2361-2375 ◽  
Author(s):  
Alison Waldram ◽  
Elaine Holmes ◽  
Yulan Wang ◽  
Mattias Rantalainen ◽  
Ian D. Wilson ◽  
...  
Keyword(s):  
2013 ◽  
pp. 1494-1521
Author(s):  
Jose M. Garcia-Manteiga

Metabolomics represents the new ‘omics’ approach of the functional genomics era. It consists in the identification and quantification of all small molecules, namely metabolites, in a given biological system. While metabolomics refers to the analysis of any possible biological system, metabonomics is specifically applied to disease and physiopathological situations. The data collected within these approaches is highly integrative of the other higher levels and is hence amenable to be explored with a top-down systems biology point of view. The aim of this chapter is to give a global view of the state of the art in metabolomics describing the two analytical techniques usually used to give rise to this kind of data, nuclear magnetic resonance, NMR, and mass spectrometry. In addition, the author will focus on the different data analysis tools that can be applied to such studies to extract information with special interest at the attempts to integrate metabolomics with other ‘omics’ approaches and its relevance in systems biology modeling.


Author(s):  
Jose M. Garcia-Manteiga

Metabolomics represents the new ‘omics’ approach of the functional genomics era. It consists in the identification and quantification of all small molecules, namely metabolites, in a given biological system. While metabolomics refers to the analysis of any possible biological system, metabonomics is specifically applied to disease and physiopathological situations. The data collected within these approaches is highly integrative of the other higher levels and is hence amenable to be explored with a top-down systems biology point of view. The aim of this chapter is to give a global view of the state of the art in metabolomics describing the two analytical techniques usually used to give rise to this kind of data, nuclear magnetic resonance, NMR, and mass spectrometry. In addition, the author will focus on the different data analysis tools that can be applied to such studies to extract information with special interest at the attempts to integrate metabolomics with other ‘omics’ approaches and its relevance in systems biology modeling.


2008 ◽  
Vol 4 (1) ◽  
pp. 205 ◽  
Author(s):  
Francois‐Pierre J Martin ◽  
Yulan Wang ◽  
Norbert Sprenger ◽  
Ivan K S Yap ◽  
Serge Rezzi ◽  
...  
Keyword(s):  

Blood ◽  
2010 ◽  
Vol 116 (21) ◽  
pp. SCI-38-SCI-38
Author(s):  
Scott L. Diamond

Abstract Abstract SCI-38 Systems Biology seeks to provide patient-specific prediction of dynamic cellular response to multiple stimuli, critical information toward predicting risk, disease progression, or response to therapy. We deployed two distinct approaches, bottom-up and top-down analyses, to gain insight into platelet signaling. The bottom-up approach required a definition of reaction network and kinetic equations (topology), kinetic parameters, and initial concentrations in order to simulate platelet signaling. We developed a computational platelet model – assembled from 24 peer-reviewed platelet studies to yield 132 measured kinetic rate constants – that accurately predicts resting levels of cytosolic calcium, IP3, diacylglycerol, phosphatidic acid, phosphoinositol, PIP, and PIP2. The model accurately predicts the full transient calcium dynamics in response to increasing levels of ADP. In the first full stochastic simulation of single platelet response to ADP, the model provides an extremely accurate prediction of the statistics of the asynchronous [Ca]i spikes observed in single platelets. Specifically, this is the first work to provide a quantitative molecular explanation of the asynchronous calcium spiking observed in ADP-activated human platelets. We show the asynchronous spiking is a result of the fundamentally stochastic nature of signal transduction in cells as small as human platelets. Specific testable predictions have emerged about the requirement of high SERCA/IP3R ratios in functional platelets, limits on the concentration of calcium in the DTS, and relative potencies of PAR peptides and ADP. For functional phenotyping platelets, a top-down approach linking multiple inputs to functional outputs was used to understand how human platelets integrate diverse signals encountered during thrombosis. We developed a high-throughput platform that measures the human platelet calcium mobilization in response to all pairwise combinations of six major agonists. Agonists tested in this study were: convulxin (CVX; GPVI activator), ADP, the thromboxane analog U46619, PAR1 agonist peptide (SFLLRN), PAR4 agonist peptide (AYPGKF), and PGE2 (activator of IP and EP receptor). The calcium responses to single agonists at 0.1, 1, 10′ EC50 and 135 pairwise combinations trained a neural network (NN) model to predict the entire 6-dimensional platelet response space. The NN model successfully predicted responses to sequential additions and 27 ternary combinations of [ADP], [convulxin], and [SFLLRN] (R=0.881). With 4077 NN simulations spanning the 6-dimensional agonist space, 45 combinations of 4–6 agonists (ranging from synergism to antagonism) were selected and confirmed experimentally (R=0.883), revealing a highly synergistic condition of high U46619/PGE2 ratio, consistent with the risk of COX-2 therapy. Furthermore, pairwise agonist scanning (PAS) provided a direct measurement of 135 synergy values, thus allowing a unique phenotypic scoring of 10 human donors. Patient-specific training of NNs represent a compact and robust approach for prediction of cellular integration of multiple signals in a complex disease milieu. Either bottom-up models or top-down NN models are ideal for incorporation into systems biology simulations of thrombotic pathways under flow conditions. Disclosures: No relevant conflicts of interest to declare.


2009 ◽  
Vol 33 (1) ◽  
pp. 1-2 ◽  
Author(s):  
Víctor De Lorenzo ◽  
Michael Galperin

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