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1.
Ind Eng Chem Res ; 63(1): 330-344, 2024 Jan 10.
Article in English | MEDLINE | ID: mdl-38223499

ABSTRACT

Pulverized coal power plants are increasingly participating in aggressive load-following markets, therefore necessitating the design and optimization of primary superheaters for flexible operations. These superheaters play a critical role in maintaining the final steam temperature of the steam turbine, but their high operating temperatures and pressures make them prone to failure. This study focuses on the optimal design of future-generation primary superheaters for a fast load-following operation. To achieve this, a detailed first-principles model of a primary superheater is developed along with submodels for stress and fatigue damage. Two single-objective optimization problems are solved: one for minimizing metal mass as a measure of capital cost and another for minimizing pressure drop on the steam side as a measure of operating cost. Since these objective functions conflict, a multiobjective optimization problem is executed using a weighted metric methodology. Results from these optimization studies show that the base case design can violate stress constraints during the aggressive load-following operation. However, by optimizing the design variables, it is possible to not only satisfy tight stress constraints but also achieve the desired number of allowable cycles and adhere to the steam outlet temperature constraint. In addition, the optimized design reduces either the metal mass or the steam-side pressure drop compared to that of the base case design. Importantly, this approach is not limited to primary superheaters alone but can also be applied to similar high-temperature heat exchangers in other applications.

3.
J Ind Microbiol Biotechnol ; 42(3): 349-60, 2015 Mar.
Article in English | MEDLINE | ID: mdl-25416472

ABSTRACT

Genomatica has established an integrated computational/experimental metabolic engineering platform to design, create, and optimize novel high performance organisms and bioprocesses. Here we present our platform and its use to develop E. coli strains for production of the industrial chemical 1,4-butanediol (BDO) from sugars. A series of examples are given to demonstrate how a rational approach to strain engineering, including carefully designed diagnostic experiments, provided critical insights about pathway bottlenecks, byproducts, expression balancing, and commercial robustness, leading to a superior BDO production strain and process.


Subject(s)
Biotechnology/methods , Green Chemistry Technology , Butylene Glycols/metabolism , Carbon Isotopes , Escherichia coli/enzymology , Escherichia coli/genetics , Escherichia coli/metabolism , Fermentation , Metabolic Engineering , Metabolic Networks and Pathways/genetics , Systems Biology
4.
BMC Bioinformatics ; 9: 43, 2008 Jan 24.
Article in English | MEDLINE | ID: mdl-18218092

ABSTRACT

BACKGROUND: Optimization theory has been applied to complex biological systems to interrogate network properties and develop and refine metabolic engineering strategies. For example, methods are emerging to engineer cells to optimally produce byproducts of commercial value, such as bioethanol, as well as molecular compounds for disease therapy. Flux balance analysis (FBA) is an optimization framework that aids in this interrogation by generating predictions of optimal flux distributions in cellular networks. Critical features of FBA are the definition of a biologically relevant objective function (e.g., maximizing the rate of synthesis of biomass, a unit of measurement of cellular growth) and the subsequent application of linear programming (LP) to identify fluxes through a reaction network. Despite the success of FBA, a central remaining challenge is the definition of a network objective with biological meaning. RESULTS: We present a novel method called Biological Objective Solution Search (BOSS) for the inference of an objective function of a biological system from its underlying network stoichiometry as well as experimentally-measured state variables. Specifically, BOSS identifies a system objective by defining a putative stoichiometric "objective reaction," adding this reaction to the existing set of stoichiometric constraints arising from known interactions within a network, and maximizing the putative objective reaction via LP, all the while minimizing the difference between the resultant in silico flux distribution and available experimental (e.g., isotopomer) flux data. This new approach allows for discovery of objectives with previously unknown stoichiometry, thus extending the biological relevance from earlier methods. We verify our approach on the well-characterized central metabolic network of Saccharomyces cerevisiae. CONCLUSION: We illustrate how BOSS offers insight into the functional organization of biochemical networks, facilitating the interrogation of cellular design principles and development of cellular engineering applications. Furthermore, we describe how growth is the best-fit objective function for the yeast metabolic network given experimentally-measured fluxes.


Subject(s)
Computational Biology , Systems Biology/methods , Computational Biology/methods , Computational Biology/trends , Forecasting , Metabolic Networks and Pathways/physiology , Saccharomyces cerevisiae/growth & development , Saccharomyces cerevisiae/metabolism , Saccharomyces cerevisiae/physiology , Systems Biology/trends
5.
Metab Eng ; 9(5-6): 387-405, 2007.
Article in English | MEDLINE | ID: mdl-17632026

ABSTRACT

A key consideration in metabolic engineering is the determination of fluxes of the metabolites within the cell. This determination provides an unambiguous description of metabolism before and/or after engineering interventions. Here, we present a computational framework that combines a constraint-based modeling framework with isotopic label tracing on a large scale. When cells are fed a growth substrate with certain carbon positions labeled with (13)C, the distribution of this label in the intracellular metabolites can be calculated based on the known biochemistry of the participating pathways. Most labeling studies focus on skeletal representations of central metabolism and ignore many flux routes that could contribute to the observed isotopic labeling patterns. In contrast, our approach investigates the importance of carrying out isotopic labeling studies using a more comprehensive reaction network consisting of 350 fluxes and 184 metabolites in Escherichia coli including global metabolite balances on cofactors such as ATP, NADH, and NADPH. The proposed procedure is demonstrated on an E. coli strain engineered to produce amorphadiene, a precursor to the antimalarial drug artemisinin. The cells were grown in continuous culture on glucose containing 20% [U-(13)C]glucose; the measurements are made using GC-MS performed on 13 amino acids extracted from the cells. We identify flux distributions for which the calculated labeling patterns agree well with the measurements alluding to the accuracy of the network reconstruction. Furthermore, we explore the robustness of the flux calculations to variability in the experimental MS measurements, as well as highlight the key experimental measurements necessary for flux determination. Finally, we discuss the effect of reducing the model, as well as shed light onto the customization of the developed computational framework to other systems.


Subject(s)
Escherichia coli/metabolism , Models, Biological , Sesquiterpenes/metabolism , Adenosine Triphosphate/metabolism , Bioreactors/microbiology , Carbon Isotopes/metabolism , Cells, Cultured , Energy Metabolism , Gas Chromatography-Mass Spectrometry , Isotope Labeling , Mathematics , NAD/metabolism , NADP/metabolism , Polycyclic Sesquiterpenes
6.
Biotechnol Bioeng ; 91(5): 643-8, 2005 Sep 05.
Article in English | MEDLINE | ID: mdl-15962337

ABSTRACT

The development and validation of new methods to help direct rational strain design for metabolite overproduction remains an important problem in metabolic engineering. Here we show that computationally predicted E. coli strain designs, calculated from a genome-scale metabolic model, can lead to successful production strains and that adaptive evolution of the engineered strains can lead to improved production capabilities. Three strain designs for lactate production were implemented yielding a total of 11 evolved production strains that were used to demonstrate the utility of this integrated approach. Strains grown on 2 g/L glucose at 37 degrees C showed lactate titers ranging from 0.87 to 1.75 g/L and secretion rates that were directly coupled to growth rates.


Subject(s)
Adaptation, Physiological , Biological Evolution , Escherichia coli/growth & development , Escherichia coli/metabolism , Lactic Acid/biosynthesis , Models, Biological , Computer Simulation , Genome, Bacterial , Glucose/metabolism , Kinetics , Temperature
7.
Biophys J ; 88(1): 37-49, 2005 Jan.
Article in English | MEDLINE | ID: mdl-15489308

ABSTRACT

In this article, we introduce metabolite concentration coupling analysis (MCCA) to study conservation relationships for metabolite concentrations in genome-scale metabolic networks. The analysis allows the global identification of subsets of metabolites whose concentrations are always coupled within common conserved pools. Also, the minimal conserved pool identification (MCPI) procedure is developed for elucidating conserved pools for targeted metabolites without computing the entire basis conservation relationships. The approaches are demonstrated on genome-scale metabolic reconstructions of Helicobacter pylori, Escherichia coli, and Saccharomyces cerevisiae. Despite significant differences in the size and complexity of the examined organism's models, we find that the concentrations of nearly all metabolites are coupled within a relatively small number of subsets. These correspond to the overall exchange of carbon molecules into and out of the networks, interconversion of energy and redox cofactors, and the transfer of nitrogen, sulfur, phosphate, coenzyme A, and acyl carrier protein moieties among metabolites. The presence of large conserved pools can be viewed as global biophysical barriers protecting cellular systems from stresses, maintaining coordinated interconversions between key metabolites, and providing an additional mode of global metabolic regulation. The developed approaches thus provide novel and versatile tools for elucidating coupling relationships between metabolite concentrations with implications in biotechnological and medical applications.


Subject(s)
Computational Biology/methods , Gene Expression Regulation, Bacterial , Genome, Bacterial , Metabolism , Algorithms , Biophysics/methods , Biotechnology/methods , Carbon/chemistry , Computer Simulation , Escherichia coli/physiology , Glycolysis , Helicobacter pylori/physiology , Models, Biological , Models, Chemical , Models, Statistical , Oxidation-Reduction , Saccharomyces cerevisiae/physiology
8.
Genome Res ; 14(11): 2367-76, 2004 Nov.
Article in English | MEDLINE | ID: mdl-15520298

ABSTRACT

This paper introduces the hierarchical computational framework OptStrain aimed at guiding pathway modifications, through reaction additions and deletions, of microbial networks for the overproduction of targeted compounds. These compounds may range from electrons or hydrogen in biofuel cell and environmental applications to complex drug precursor molecules. A comprehensive database of biotransformations, referred to as the Universal database (with >5700 reactions), is compiled and regularly updated by downloading and curating reactions from multiple biopathway database sources. Combinatorial optimization is then used to elucidate the set(s) of non-native functionalities, extracted from this Universal database, to add to the examined production host for enabling the desired product formation. Subsequently, competing functionalities that divert flux away from the targeted product are identified and removed to ensure higher product yields coupled with growth. This work represents an advancement over earlier efforts by establishing an integrated computational framework capable of constructing stoichiometrically balanced pathways, imposing maximum product yield requirements, pinpointing the optimal substrate(s), and evaluating different microbial hosts. The range and utility of OptStrain are demonstrated by addressing two very different product molecules. The hydrogen case study pinpoints reaction elimination strategies for improving hydrogen yields using two different substrates for three separate production hosts. In contrast, the vanillin study primarily showcases which non-native pathways need to be added into Escherichia coli. In summary, OptStrain provides a useful tool to aid microbial strain design and, more importantly, it establishes an integrated framework to accommodate future modeling developments.


Subject(s)
Algorithms , Bacteria/metabolism , Computer Simulation , Gene Expression Regulation, Bacterial , Genome, Bacterial , Software , Bacteria/genetics , Biomass , Biotransformation , Industrial Microbiology/methods , Models, Biological , Systems Analysis , Systems Theory
9.
Genome Res ; 14(2): 301-12, 2004 Feb.
Article in English | MEDLINE | ID: mdl-14718379

ABSTRACT

In this paper, we introduce the Flux Coupling Finder (FCF) framework for elucidating the topological and flux connectivity features of genome-scale metabolic networks. The framework is demonstrated on genome-scale metabolic reconstructions of Helicobacter pylori, Escherichia coli, and Saccharomyces cerevisiae. The analysis allows one to determine whether any two metabolic fluxes, v(1) and v(2), are (1) directionally coupled, if a non-zero flux for v(1) implies a non-zero flux for v(2) but not necessarily the reverse; (2) partially coupled, if a non-zero flux for v(1) implies a non-zero, though variable, flux for v(2) and vice versa; or (3) fully coupled, if a non-zero flux for v(1) implies not only a non-zero but also a fixed flux for v(2) and vice versa. Flux coupling analysis also enables the global identification of blocked reactions, which are all reactions incapable of carrying flux under a certain condition; equivalent knockouts, defined as the set of all possible reactions whose deletion forces the flux through a particular reaction to zero; and sets of affected reactions denoting all reactions whose fluxes are forced to zero if a particular reaction is deleted. The FCF approach thus provides a novel and versatile tool for aiding metabolic reconstructions and guiding genetic manipulations.


Subject(s)
Energy Metabolism/genetics , Escherichia coli/metabolism , Genome, Bacterial , Genome, Fungal , Helicobacter pylori/metabolism , Saccharomyces cerevisiae/metabolism , Aerobiosis/genetics , Anaerobiosis/genetics , Biomass , Computational Biology/methods , DNA, Bacterial , DNA, Fungal , Escherichia coli/genetics , Escherichia coli/growth & development , Glucose/metabolism , Helicobacter pylori/genetics , Helicobacter pylori/growth & development , Models, Biological , Purines/biosynthesis , Saccharomyces cerevisiae/genetics , Saccharomyces cerevisiae/growth & development
10.
Biotechnol Bioeng ; 84(6): 647-57, 2003 Dec 20.
Article in English | MEDLINE | ID: mdl-14595777

ABSTRACT

The advent of genome-scale models of metabolism has laid the foundation for the development of computational procedures for suggesting genetic manipulations that lead to overproduction. In this work, the computational OptKnock framework is introduced for suggesting gene deletion strategies leading to the overproduction of chemicals or biochemicals in E. coli. This is accomplished by ensuring that a drain towards growth resources (i.e., carbon, redox potential, and energy) must be accompanied, due to stoichiometry, by the production of a desired product. Computational results for gene deletions for succinate, lactate, and 1,3-propanediol (PDO) production are in good agreement with mutant strains published in the literature. While some of the suggested deletion strategies are straightforward and involve eliminating competing reaction pathways, many others suggest complex and nonintuitive mechanisms of compensating for the removed functionalities. Finally, the OptKnock procedure, by coupling biomass formation with chemical production, hints at a growth selection/adaptation system for indirectly evolving overproducing mutants.


Subject(s)
Algorithms , Escherichia coli/genetics , Escherichia coli/metabolism , Gene Expression Regulation, Bacterial/physiology , Gene Silencing/physiology , Genetic Enhancement/methods , Models, Biological , Software , Combinatorial Chemistry Techniques , Computer Simulation , Escherichia coli/growth & development , Lactic Acid/biosynthesis , Multienzyme Complexes/genetics , Multienzyme Complexes/metabolism , Propylene Glycols/metabolism , Recombinant Proteins/metabolism , Succinic Acid/metabolism
11.
Biotechnol Bioeng ; 82(6): 670-7, 2003 Jun 20.
Article in English | MEDLINE | ID: mdl-12673766

ABSTRACT

An optimization-based framework is introduced for testing whether experimental flux data are consistent with different hypothesized objective functions. Specifically, we examine whether the maximization of a weighted combination of fluxes can explain a set of observed experimental data. Coefficients of importance (CoIs) are identified that quantify the fraction of the additive contribution of a given flux to a fitness (objective) function with an optimization that can explain the experimental flux data. A high CoI value implies that the experimental flux data are consistent with the hypothesis that the corresponding flux is maximized by the network, whereas a low value implies the converse. This framework (i.e., ObjFind) is applied to both an aerobic and anaerobic set of Escherichia coli flux data derived from isotopomer analysis. Results reveal that the CoIs for both growth conditions are strikingly similar, even though the flux distributions for the two cases are quite different, which is consistent with the presence of a single metabolic objective driving the flux distributions in both cases. Interestingly, the CoI associated with a biomass production flux, complete with energy and reducing power requirements, assumes a value 9 and 15 times higher than the next largest coefficient for the aerobic and anaerobic cases, respectively.


Subject(s)
Algorithms , Bacterial Proteins/metabolism , Escherichia coli/growth & development , Escherichia coli/metabolism , Models, Biological , Protein Engineering/methods , Aerobiosis/physiology , Anaerobiosis , Computer Simulation , Quality Control
12.
Biotechnol Bioeng ; 84(7): 887-99, 2003 Dec 30.
Article in English | MEDLINE | ID: mdl-14708128

ABSTRACT

In this study, we modify and extend the bilevel optimization framework OptKnock for identifying gene knockout strategies in the Escherichia coli metabolic network, leading to the overproduction of representative amino acids and key precursors for all five families. These strategies span not only the central metabolic network genes but also the amino acid biosynthetic and degradation pathways. In addition to gene deletions, the transport rates of carbon dioxide, ammonia, and oxygen, as well as the secretion pathways for key metabolites, are introduced as optimization variables in the framework. Computational results demonstrate the importance of manipulating energy-producing/consuming pathways, controlling the uptake of nitrogen and oxygen, and blocking the secretion pathways of key competing metabolites. The identified pathway modifications include not only straightforward elimination of competing reactions but also a number of nonintuitive knockouts quite distant from the amino acid-producing pathways. Specifically, OptKnock suggests three reactions (i.e., pyruvate kinase, phosphotransacetylase, and ATPase) for deletion, in addition to the straightforward elimination of 2-ketoglutarate dehydrogenase, to generate a glutamate-overproducing mutant. Similarly, phosphofructokinase and ATPase are identified as promising knockout targets to complement the removal of pyruvate formate lyase and pyruvate dehydrogenase for enhancing the yield of alanine. Although OptKnock in its present form does not consider regulatory constraints, it does provide useful suggestions largely in agreement with existing practices and, more importantly, introduces a framework for incorporating additional modeling refinements as they become available.


Subject(s)
Algorithms , Amino Acids/biosynthesis , Escherichia coli/metabolism , Gene Expression Regulation, Bacterial/physiology , Models, Biological , Protein Engineering/methods , Amino Acids/genetics , Combinatorial Chemistry Techniques/methods , Escherichia coli/genetics , Recombinant Proteins/biosynthesis , Reproducibility of Results , Sensitivity and Specificity
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