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=== Metabolic Pathways Analysis 2017 - UPDATE ===
Bozeman, Montana USA, 24-28 July, 2017.  '''Registration now open'''. See the [[http://www.chbe.montana.edu/biochemenglab/MPA2017.html|conference website]] and the the [[http://mpa.brookes.ac.uk|MPA website]] for more information. Abstract submission deadline: 21 April 2017.
=== Metabolic Pathways Analysis 2017 ===
 .
This was held in Bozeman, Montana USA, 24-28 July, 2017. See the [[http://www.chbe.montana.edu/biochemenglab/MPA2017.html|conference website]] and the the [[http://mpa.brookes.ac.uk|MPA website]] for more information, including downloads of some of the presentations.
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David Fell's 1997 book is now available as a [[Publications/UCM|downloadable pdf]] on this website.  . David Fell's 1997 book is now available as a [[Publications/UCM|downloadable pdf]] on this website.

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News

Metabolic Pathways Analysis 2017

  • This was held in Bozeman, Montana USA, 24-28 July, 2017. See the conference website and the the MPA website for more information, including downloads of some of the presentations.

Understanding the Control of Metabolism


Latest papers:

  • Ahmad Ahmad, Hassan B. Hartman , S. Krishnakumar, David A. Fell , Mark G. Poolman , Shireesh Srivastava. A Genome Scale Model of Geobacillus thermoglucosidasius (C56-YS93) reveals its biotechnological potential on rice straw hydrolysate. J. Biotech (in press, 2017). DOI

    This work was part of the Ricefuel project funded by the BBSRC and the DBT (India).

  • Pentjuss A., Stalidzans E., Liepins J., Kokina A., Martynova J., Zikmanis P., Mozga I., Scherbaka R., Hartman H., Poolman M. G., Fell D. A., Vigants A. Model based biotechnological potential analysis of Kluyveromyces marxianus central metabolism. J. Industrial Microbiology and Biotechnology (in press, 2017).

Previous papers:

Near-dead heat between:

  1. Dipali Singh, Ross Carlson, David Fell and Mark Poolman. Modelling Metabolism of the Diatom Phaeodactylum tricornutum. Biochem. Soc. Trans. 43, 1182- (2015) PDF doi:10.1042/BST20150152

  2. Huili Yuan, C. Y. Maurice Cheung, Mark G. Poolman, Peter A.J. Hilbers and Natal A.W. van Riel. A genome-scale metabolic network reconstruction of tomato (Solanum lycopersicum L.) and its application to photorespiratory metabolism. The Plant Journal, accepted m/s DOI: 10.1111/tpj.13075 abstract

Background

Our group began nearly thirty years ago with initial interests in computer simulation of metabolism and the theoretical analysis of metabolic control and regulation. Whilst these still remain areas of interest, we have since developed interests in modelling signal transduction, in various different approaches to network analysis of metabolism, and in reconstructing metabolic networks from genomic data. In the course of this research, we have addressed problems in microbial, plant and mammalian metabolism, often in conjunction with collaborators who have contributed experimental results.

Our current work centres on modelling the networks of reactions in cells, with particular emphasis on metabolism. It forms part of the emerging field of Systems Biology, in that we are concerned with understanding how biological function arises from the interactions between many components, and with building predictive models. We have to develop and apply suitable theoretical tools, including metabolic control analysis, computer simulation and other forms of algebraic and numerical analysis. In addition, we are investigating how to decipher the metabolic information contained in genome sequences. We are involved in projects on microbial, plant and animal metabolism, each in collaboration with an experimental team.

Potential applications of our work include the design of changes in cellular metabolism to improve the output of product such as antibiotics, detecting vulnerable sites in cellular networks that could be targets for drugs to control disease-causing organisms, and improved understanding of how organisms manage to adjust their metabolism in response to environmental changes and other signals.


Related Sites

We also host the following web sites related to our research:

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