Integration of enzyme kinetic models and isotopomer distribution analysis for studies of <it>in situ </it>cell operation
<p>Abstract</p> <p>A current trend in neuroscience research is the use of stable isotope tracers in order to address metabolic processes <it>in vivo</it>. The tracers produce a huge number of metabolite forms that differ according to the number and position of labeled i...
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doaj-e9f9f81a9c9142209ae10ef52f44d9692020-11-25T02:50:22ZengBMCBMC Neuroscience1471-22022006-10-017Suppl 1S710.1186/1471-2202-7-S1-S7Integration of enzyme kinetic models and isotopomer distribution analysis for studies of <it>in situ </it>cell operationLee Paul WNCentelles Josep JSukhomlin TatianaSelivanov Vitaly ACascante Marta<p>Abstract</p> <p>A current trend in neuroscience research is the use of stable isotope tracers in order to address metabolic processes <it>in vivo</it>. The tracers produce a huge number of metabolite forms that differ according to the number and position of labeled isotopes in the carbon skeleton (isotopomers) and such a large variety makes the analysis of isotopomer data highly complex. On the other hand, this multiplicity of forms does provide sufficient information to address cell operation <it>in vivo</it>. By the end of last millennium, a number of tools have been developed for estimation of metabolic flux profile from any possible isotopomer distribution data. However, although well elaborated, these tools were limited to steady state analysis, and the obtained set of fluxes remained disconnected from their biochemical context. In this review we focus on a new numerical analytical approach that integrates kinetic and metabolic flux analysis. The related computational algorithm estimates the dynamic flux based on the time-dependent distribution of all possible isotopomers of metabolic pathway intermediates that are generated from a labeled substrate. The new algorithm connects specific tracer data with enzyme kinetic characteristics, thereby extending the amount of data available for analysis: it uses enzyme kinetic data to estimate the flux profile, and <it>vice versa</it>, for the kinetic analysis it uses <it>in vivo </it>tracer data to reveal the biochemical basis of the estimated metabolic fluxes.</p> |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Lee Paul WN Centelles Josep J Sukhomlin Tatiana Selivanov Vitaly A Cascante Marta |
spellingShingle |
Lee Paul WN Centelles Josep J Sukhomlin Tatiana Selivanov Vitaly A Cascante Marta Integration of enzyme kinetic models and isotopomer distribution analysis for studies of <it>in situ </it>cell operation BMC Neuroscience |
author_facet |
Lee Paul WN Centelles Josep J Sukhomlin Tatiana Selivanov Vitaly A Cascante Marta |
author_sort |
Lee Paul WN |
title |
Integration of enzyme kinetic models and isotopomer distribution analysis for studies of <it>in situ </it>cell operation |
title_short |
Integration of enzyme kinetic models and isotopomer distribution analysis for studies of <it>in situ </it>cell operation |
title_full |
Integration of enzyme kinetic models and isotopomer distribution analysis for studies of <it>in situ </it>cell operation |
title_fullStr |
Integration of enzyme kinetic models and isotopomer distribution analysis for studies of <it>in situ </it>cell operation |
title_full_unstemmed |
Integration of enzyme kinetic models and isotopomer distribution analysis for studies of <it>in situ </it>cell operation |
title_sort |
integration of enzyme kinetic models and isotopomer distribution analysis for studies of <it>in situ </it>cell operation |
publisher |
BMC |
series |
BMC Neuroscience |
issn |
1471-2202 |
publishDate |
2006-10-01 |
description |
<p>Abstract</p> <p>A current trend in neuroscience research is the use of stable isotope tracers in order to address metabolic processes <it>in vivo</it>. The tracers produce a huge number of metabolite forms that differ according to the number and position of labeled isotopes in the carbon skeleton (isotopomers) and such a large variety makes the analysis of isotopomer data highly complex. On the other hand, this multiplicity of forms does provide sufficient information to address cell operation <it>in vivo</it>. By the end of last millennium, a number of tools have been developed for estimation of metabolic flux profile from any possible isotopomer distribution data. However, although well elaborated, these tools were limited to steady state analysis, and the obtained set of fluxes remained disconnected from their biochemical context. In this review we focus on a new numerical analytical approach that integrates kinetic and metabolic flux analysis. The related computational algorithm estimates the dynamic flux based on the time-dependent distribution of all possible isotopomers of metabolic pathway intermediates that are generated from a labeled substrate. The new algorithm connects specific tracer data with enzyme kinetic characteristics, thereby extending the amount of data available for analysis: it uses enzyme kinetic data to estimate the flux profile, and <it>vice versa</it>, for the kinetic analysis it uses <it>in vivo </it>tracer data to reveal the biochemical basis of the estimated metabolic fluxes.</p> |
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