Anirikh Chakrabarti
École Polytechnique Fédérale de Lausanne
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Publication
Featured researches published by Anirikh Chakrabarti.
Biotechnology Journal | 2013
Anirikh Chakrabarti; Ljubisa Miskovic; Keng Cher Soh; Vassily Hatzimanikatis
Mathematical modeling is an essential tool for the comprehensive understanding of cell metabolism and its interactions with the environmental and process conditions. Recent developments in the construction and analysis of stoichiometric models made it possible to define limits on steady-state metabolic behavior using flux balance analysis. However, detailed information on enzyme kinetics and enzyme regulation is needed to formulate kinetic models that can accurately capture the dynamic metabolic responses. The use of mechanistic enzyme kinetics is a difficult task due to uncertainty in the kinetic properties of enzymes. Therefore, the majority of recent works considered only mass action kinetics for reactions in metabolic networks. Herein, we applied the optimization and risk analysis of complex living entities (ORACLE) framework and constructed a large-scale mechanistic kinetic model of optimally grown Escherichia coli. We investigated the complex interplay between stoichiometry, thermodynamics, and kinetics in determining the flexibility and capabilities of metabolism. Our results indicate that enzyme saturation is a necessary consideration in modeling metabolic networks and it extends the feasible ranges of metabolic fluxes and metabolite concentrations. Our results further suggest that enzymes in metabolic networks have evolved to function at different saturation states to ensure greater flexibility and robustness of cellular metabolism.
Metabolic Engineering | 2016
Stefano Andreozzi; Anirikh Chakrabarti; Keng Cher Soh; Anthony P. Burgard; Tae Hoon Yang; Stephen J. Van Dien; Ljubisa Miskovic; Vassily Hatzimanikatis
Rational metabolic engineering methods are increasingly employed in designing the commercially viable processes for the production of chemicals relevant to pharmaceutical, biotechnology, and food and beverage industries. With the growing availability of omics data and of methodologies capable to integrate the available data into models, mathematical modeling and computational analysis are becoming important in designing recombinant cellular organisms and optimizing cell performance with respect to desired criteria. In this contribution, we used the computational framework ORACLE (Optimization and Risk Analysis of Complex Living Entities) to analyze the physiology of recombinant Escherichia coli producing 1,4-butanediol (BDO) and to identify potential strategies for improved production of BDO. The framework allowed us to integrate data across multiple levels and to construct a population of large-scale kinetic models despite the lack of available information about kinetic properties of every enzyme in the metabolic pathways. We analyzed these models and we found that the enzymes that primarily control the fluxes leading to BDO production are part of central glycolysis, the lower branch of tricarboxylic acid (TCA) cycle and the novel BDO production route. Interestingly, among the enzymes between the glucose uptake and the BDO pathway, the enzymes belonging to the lower branch of TCA cycle have been identified as the most important for improving BDO production and yield. We also quantified the effects of changes of the target enzymes on other intracellular states like energy charge, cofactor levels, redox state, cellular growth, and byproduct formation. Independent earlier experiments on this strain confirmed that the computationally obtained conclusions are consistent with the experimentally tested designs, and the findings of the present studies can provide guidance for future work on strain improvement. Overall, these studies demonstrate the potential and effectiveness of ORACLE for the accelerated design of microbial cell factories.
251st American Chemical Society National Meeting | 2016
Stefano Andreozzi; Anirikh Chakrabarti; Anthony P. Burgard; Tae Hoon Yang; S. Van Dien; Ljubisa Miskovic; Vassily Hatzimanikatis
Metabolic Engineering X | 2014
Stefano Andreozzi; Anirikh Chakrabarti; Keng Cher Soh; Anthony P. Burgard; Steve Van Dien; Ljubisa Miskovic; Vassily Hatzimanikatis; Tae Hoon Yang
Metabolic Engineering X | 2014
Anirikh Chakrabarti; Keng Cher Soh; Alexandros Kiparissides; Haverkorn van Rijsewijk; R. B. Bart; Jason W. Hickman; Tarek S. Najdi; D. Halim; Vasiliy A. Portnoy; R. Osequera; Adam R. Burja; Ljubisa Miskovic; Vassily Hatzimanikatis
Metabolic Engineering X | 2014
Anirikh Chakrabarti; Georgios Fengos; Meriç Ataman; Keng Cher Soh; Ljubisa Miskovic; Vassily Hatzimanikatis
Metabolic Engineering X | 2014
Georgios Fengos; Anirikh Chakrabarti; Keng Cher Soh; Ljubisa Miskovic; Vassily Hatzimanikatis
Systems Biology of Infection | 2013
Anirikh Chakrabarti; Ljubisa Miskovic; Keng Cher Soh; Vassily Hatzimanikatis
Biochemical and Molecular Engineering XVIII | 2013
Anirikh Chakrabarti; Ljubisa Miskovic; Keng Cher Soh; Vassily Hatzimanikatis
Biochemical and Molecular Engineering XVIII | 2013
Anirikh Chakrabarti; Ljubisa Miskovic; Keng Cher Soh; Vassily Hatzimanikatis