Natalie Stanford
University of Manchester
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Publication
Featured researches published by Natalie Stanford.
BMC Systems Biology | 2010
Paul D. Dobson; Kieran Smallbone; Daniel Jameson; Evangelos Simeonidis; Karin Lanthaler; Pınar Pir; Chuan-Zhen Lu; Neil Swainston; Warwick B. Dunn; Paul Fisher; Duncan Hull; Marie Brown; Olusegun Oshota; Natalie Stanford; Douglas B. Kell; Ross D. King; Stephen G. Oliver; Robert Stevens; Pedro Mendes
BackgroundTo date, several genome-scale network reconstructions have been used to describe the metabolism of the yeast Saccharomyces cerevisiae, each differing in scope and content. The recent community-driven reconstruction, while rigorously evidenced and well annotated, under-represented metabolite transport, lipid metabolism and other pathways, and was not amenable to constraint-based analyses because of lack of pathway connectivity.ResultsWe have expanded the yeast network reconstruction to incorporate many new reactions from the literature and represented these in a well-annotated and standards-compliant manner. The new reconstruction comprises 1102 unique metabolic reactions involving 924 unique metabolites - significantly larger in scope than any previous reconstruction. The representation of lipid metabolism in particular has improved, with 234 out of 268 enzymes linked to lipid metabolism now present in at least one reaction. Connectivity is emphatically improved, with more than 90% of metabolites now reachable from the growth medium constituents. The present updates allow constraint-based analyses to be performed; viability predictions of single knockouts are comparable to results from in vivo experiments and to those of previous reconstructions.ConclusionsWe report the development of the most complete reconstruction of yeast metabolism to date that is based upon reliable literature evidence and richly annotated according to MIRIAM standards. The reconstruction is available in the Systems Biology Markup Language (SBML) and via a publicly accessible database http://www.comp-sys-bio.org/yeastnet/.
PLOS ONE | 2013
Natalie Stanford; Timo Lubitz; Kieran Smallbone; Edda Klipp; Pedro Mendes; Wolfram Liebermeister
The quantitative effects of environmental and genetic perturbations on metabolism can be studied in silico using kinetic models. We present a strategy for large-scale model construction based on a logical layering of data such as reaction fluxes, metabolite concentrations, and kinetic constants. The resulting models contain realistic standard rate laws and plausible parameters, adhere to the laws of thermodynamics, and reproduce a predefined steady state. These features have not been simultaneously achieved by previous workflows. We demonstrate the advantages and limitations of the workflow by translating the yeast consensus metabolic network into a kinetic model. Despite crudely selected data, the model shows realistic control behaviour, a stable dynamic, and realistic response to perturbations in extracellular glucose concentrations. The paper concludes by outlining how new data can continuously be fed into the workflow and how iterative model building can assist in directing experiments.
IEEE Transactions on Biomedical Engineering | 2016
Dagmar Waltemath; Jonathan R. Karr; Frank Bergmann; Vijayalakshmi Chelliah; Michael Hucka; Marcus Krantz; Wolfram Liebermeister; Pedro Mendes; Chris J. Myers; Pınar Pir; Begum Alaybeyoglu; Naveen K. Aranganathan; Kambiz Baghalian; Arne T. Bittig; Paulo E Pinto Burke; Matteo Cantarelli; Yin Hoon Chew; Rafael S. Costa; Joseph Cursons; Tobias Czauderna; Arthur P. Goldberg; Harold F. Gómez; Jens Hahn; Tuure Hameri; Daniel Federico Hernandez Gardiol; Denis Kazakiewicz; Ilya Kiselev; Vincent Knight-Schrijver; Christian Knüpfer; Matthias König
Objective: Whole-cell (WC) modeling is a promising tool for biological research, bioengineering, and medicine. However, substantial work remains to create accurate comprehensive models of complex cells. Methods: We organized the 2015 Whole-Cell Modeling Summer School to teach WC modeling and evaluate the need for new WC modeling standards and software by recoding a recently published WC model in the Systems Biology Markup Language. Results: Our analysis revealed several challenges to representing WC models using the current standards. Conclusion: We, therefore, propose several new WC modeling standards, software, and databases. Significance: We anticipate that these new standards and software will enable more comprehensive models.
PLOS Biology | 2017
Julie McMurry; Nick Juty; Niklas Blomberg; Tony Burdett; Tom Conlin; Nathalie Conte; Mélanie Courtot; John Deck; Michel Dumontier; Donal Fellows; Alejandra Gonzalez-Beltran; Philipp Gormanns; Jeffrey S. Grethe; Janna Hastings; Jean-Karim Hériché; Henning Hermjakob; Jon Ison; Rafael C. Jimenez; Simon Jupp; John Kunze; Camille Laibe; Nicolas Le Novère; James Malone; María Martín; Johanna McEntyre; Chris Morris; Juha Muilu; Wolfgang Müller; Philippe Rocca-Serra; Susanna-Assunta Sansone
In many disciplines, data are highly decentralized across thousands of online databases (repositories, registries, and knowledgebases). Wringing value from such databases depends on the discipline of data science and on the humble bricks and mortar that make integration possible; identifiers are a core component of this integration infrastructure. Drawing on our experience and on work by other groups, we outline 10 lessons we have learned about the identifier qualities and best practices that facilitate large-scale data integration. Specifically, we propose actions that identifier practitioners (database providers) should take in the design, provision and reuse of identifiers. We also outline the important considerations for those referencing identifiers in various circumstances, including by authors and data generators. While the importance and relevance of each lesson will vary by context, there is a need for increased awareness about how to avoid and manage common identifier problems, especially those related to persistence and web-accessibility/resolvability. We focus strongly on web-based identifiers in the life sciences; however, the principles are broadly relevant to other disciplines.
Molecular Systems Biology | 2015
Natalie Stanford; Katherine Wolstencroft; Martin Golebiewski; Renate Kania; Nick Juty; Christopher Tomlinson; Stuart Owen; Sarah Butcher; Henning Hermjakob; Nicolas Le Novère; Wolfgang Mueller; Jacky L. Snoep; Carole A. Goble
A recent community survey conducted by Infrastructure for Systems Biology Europe (ISBE) informs requirements for developing an efficient infrastructure for systems biology standards, data and model management.
Frontiers in Cell and Developmental Biology | 2015
Natalie Stanford; Pierre Millard; Neil Swainston
Sustainable production of target compounds such as biofuels and high-value chemicals for pharmaceutical, agrochemical, and chemical industries is becoming an increasing priority given their current dependency upon diminishing petrochemical resources. Designing these strains is difficult, with current methods focusing primarily on knocking-out genes, dismissing other vital steps of strain design including the overexpression and dampening of genes. The design predictions from current methods also do not translate well-into successful strains in the laboratory. Here, we introduce RobOKoD (Robust, Overexpression, Knockout and Dampening), a method for predicting strain designs for overproduction of targets. The method uses flux variability analysis to profile each reaction within the system under differing production percentages of target-compound and biomass. Using these profiles, reactions are identified as potential knockout, overexpression, or dampening targets. The identified reactions are ranked according to their suitability, providing flexibility in strain design for users. The software was tested by designing a butanol-producing Escherichia coli strain, and was compared against the popular OptKnock and RobustKnock methods. RobOKoD shows favorable design predictions, when predictions from these methods are compared to a successful butanol-producing experimentally-validated strain. Overall RobOKoD provides users with rankings of predicted beneficial genetic interventions with which to support optimized strain design.
Nucleic Acids Research | 2017
Katherine Wolstencroft; Olga Krebs; Jacky L. Snoep; Natalie Stanford; Finn Bacall; Martin Golebiewski; Rostyk Kuzyakiv; Quyen Nguyen; Stuart Owen; Stian Soiland-Reyes; Jakub Straszewski; David D. van Niekerk; Alan R. Williams; Lars Malmström; Bernd Rinn; Wolfgang Müller; Carole A. Goble
The FAIRDOMHub is a repository for publishing FAIR (Findable, Accessible, Interoperable and Reusable) Data, Operating procedures and Models (https://fairdomhub.org/) for the Systems Biology community. It is a web-accessible repository for storing and sharing systems biology research assets. It enables researchers to organize, share and publish data, models and protocols, interlink them in the context of the systems biology investigations that produced them, and to interrogate them via API interfaces. By using the FAIRDOMHub, researchers can achieve more effective exchange with geographically distributed collaborators during projects, ensure results are sustained and preserved and generate reproducible publications that adhere to the FAIR guiding principles of data stewardship.
Interface Focus | 2016
David Nickerson; Koray Atalag; Bernard de Bono; Jörg Geiger; Carole A. Goble; Susanne Hollmann; Joachim Lonien; Wolfgang Müller; Babette Regierer; Natalie Stanford; Martin Golebiewski; Peter Hunter
Reconstructing and understanding the Human Physiome virtually is a complex mathematical problem, and a highly demanding computational challenge. Mathematical models spanning from the molecular level through to whole populations of individuals must be integrated, then personalized. This requires interoperability with multiple disparate and geographically separated data sources, and myriad computational software tools. Extracting and producing knowledge from such sources, even when the databases and software are readily available, is a challenging task. Despite the difficulties, researchers must frequently perform these tasks so that available knowledge can be continually integrated into the common framework required to realize the Human Physiome. Software and infrastructures that support the communities that generate these, together with their underlying standards to format, describe and interlink the corresponding data and computer models, are pivotal to the Human Physiome being realized. They provide the foundations for integrating, exchanging and re-using data and models efficiently, and correctly, while also supporting the dissemination of growing knowledge in these forms. In this paper, we explore the standards, software tooling, repositories and infrastructures that support this work, and detail what makes them vital to realizing the Human Physiome.
Methods of Molecular Biology | 2013
Kieran Smallbone; Natalie Stanford
In this chapter, we describe the steps needed to create a kinetic model of a metabolic pathway using kinetic data from both experimental measurements and literature review. Our methodology is presented by using the example of serine biosynthesis in E. coli.
Communications Biology | 2018
Pablo Carbonell; Adrian J. Jervis; Christopher J. Robinson; Cunyu Yan; Mark S. Dunstan; Neil Swainston; Maria Vinaixa; Katherine A. Hollywood; Andrew Currin; Nicholas J. W. Rattray; Sandra Taylor; Reynard Spiess; Rehana Sung; Alan R. Williams; Donal Fellows; Natalie Stanford; Paul Mulherin; Rosalind A. Le Feuvre; Perdita E. Barran; Royston Goodacre; Nicholas J. Turner; Carole A. Goble; George Guo-Qiang Chen; Douglas B. Kell; Jason Micklefield; Rainer Breitling; Eriko Takano; Jean-Loup Faulon; Nigel S. Scrutton
The microbial production of fine chemicals provides a promising biosustainable manufacturing solution that has led to the successful production of a growing catalog of natural products and high-value chemicals. However, development at industrial levels has been hindered by the large resource investments required. Here we present an integrated Design–Build-Test–Learn (DBTL) pipeline for the discovery and optimization of biosynthetic pathways, which is designed to be compound agnostic and automated throughout. We initially applied the pipeline for the production of the flavonoid (2S)-pinocembrin in Escherichia coli, to demonstrate rapid iterative DBTL cycling with automation at every stage. In this case, application of two DBTL cycles successfully established a production pathway improved by 500-fold, with competitive titers up to 88 mg L−1. The further application of the pipeline to optimize an alkaloids pathway demonstrates how it could facilitate the rapid optimization of microbial strains for production of any chemical compound of interest.Pablo Carbonell et al. present an automated pipeline for the discovery and optimization of biosynthetic pathways for microbial production of fine chemicals. They apply their pipeline to the production of the flavonoid (2S)-pinocembrin in Escherichia coli and show improvement of the pathway by 500-fold.