Michael Cornell
University of Manchester
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Featured researches published by Michael Cornell.
Nature | 2002
Christian von Mering; Roland Krause; Berend Snel; Michael Cornell; Stephen G. Oliver; Stanley Fields; Peer Bork
Comprehensive protein–protein interaction maps promise to reveal many aspects of the complex regulatory network underlying cellular function. Recently, large-scale approaches have predicted many new protein interactions in yeast. To measure their accuracy and potential as well as to identify biases, strengths and weaknesses, we compare the methods with each other and with a reference set of previously reported protein interactions.
Nature Biotechnology | 2007
Herman Jan Pel; Johannes H. de Winde; David B. Archer; Paul S. Dyer; Gerald Hofmann; Peter J. Schaap; Geoffrey Turner; Ronald P. de Vries; Richard Albang; Kaj Albermann; Mikael Rørdam Andersen; Jannick Dyrløv Bendtsen; Jacques A. E. Benen; Marco van den Berg; Stefaan Breestraat; Mark X. Caddick; Roland Contreras; Michael Cornell; Pedro M. Coutinho; Etienne Danchin; Alfons J. M. Debets; Peter Dekker; Piet W.M. van Dijck; Alard Van Dijk; Lubbert Dijkhuizen; Arnold J. M. Driessen; Christophe d'Enfert; Steven Geysens; Coenie Goosen; Gert S.P. Groot
The filamentous fungus Aspergillus niger is widely exploited by the fermentation industry for the production of enzymes and organic acids, particularly citric acid. We sequenced the 33.9-megabase genome of A. niger CBS 513.88, the ancestor of currently used enzyme production strains. A high level of synteny was observed with other aspergilli sequenced. Strong function predictions were made for 6,506 of the 14,165 open reading frames identified. A detailed description of the components of the protein secretion pathway was made and striking differences in the hydrolytic enzyme spectra of aspergilli were observed. A reconstructed metabolic network comprising 1,069 unique reactions illustrates the versatile metabolism of A. niger. Noteworthy is the large number of major facilitator superfamily transporters and fungal zinc binuclear cluster transcription factors, and the presence of putative gene clusters for fumonisin and ochratoxin A synthesis.
Journal of Biology | 2007
Juan I. Castrillo; Leo Zeef; David C. Hoyle; Nianshu Zhang; Andrew Hayes; David C. J. Gardner; Michael Cornell; June Petty; Luke Hakes; Leanne Wardleworth; Bharat Rash; Marie Brown; Warwick B. Dunn; David Broadhurst; Kerry O'Donoghue; Svenja Hester; Tom P. J. Dunkley; Sarah R. Hart; Neil Swainston; Peter Li; Simon J. Gaskell; Norman W. Paton; Kathryn S. Lilley; Douglas B. Kell; Stephen G. Oliver
BACKGROUND Cell growth underlies many key cellular and developmental processes, yet a limited number of studies have been carried out on cell-growth regulation. Comprehensive studies at the transcriptional, proteomic and metabolic levels under defined controlled conditions are currently lacking. RESULTS Metabolic control analysis is being exploited in a systems biology study of the eukaryotic cell. Using chemostat culture, we have measured the impact of changes in flux (growth rate) on the transcriptome, proteome, endometabolome and exometabolome of the yeast Saccharomyces cerevisiae. Each functional genomic level shows clear growth-rate-associated trends and discriminates between carbon-sufficient and carbon-limited conditions. Genes consistently and significantly upregulated with increasing growth rate are frequently essential and encode evolutionarily conserved proteins of known function that participate in many protein-protein interactions. In contrast, more unknown, and fewer essential, genes are downregulated with increasing growth rate; their protein products rarely interact with one another. A large proportion of yeast genes under positive growth-rate control share orthologs with other eukaryotes, including humans. Significantly, transcription of genes encoding components of the TOR complex (a major controller of eukaryotic cell growth) is not subject to growth-rate regulation. Moreover, integrative studies reveal the extent and importance of post-transcriptional control, patterns of control of metabolic fluxes at the level of enzyme synthesis, and the relevance of specific enzymatic reactions in the control of metabolic fluxes during cell growth. CONCLUSION This work constitutes a first comprehensive systems biology study on growth-rate control in the eukaryotic cell. The results have direct implications for advanced studies on cell growth, in vivo regulation of metabolic fluxes for comprehensive metabolic engineering, and for the design of genome-scale systems biology models of the eukaryotic cell.
Current Biology | 2004
Marian B. Wilkin; Ann Marie Carbery; Maggy Fostier; Hanna Aslam; Sabine Mazaleyrat; Jenny Higgs; Anna Myat; Dana A.P Evans; Michael Cornell; Martin Baron
The Notch receptor mediates a short-range signal that regulates many cell fate decisions. The misregulation of Notch has been linked to cancer and to developmental disorders. Upon binding to its ligands, Delta (Dl) or Serrate (Ser), the Notch ectodomain is shed by the action of an ADAM protease. The Notch intracellular domain is subsequently released proteolytically from the membrane by Presenilin and translocates to the nucleus to activate the transcription factor, Suppressor of Hairless. We show in Drosophila that Notch signaling is limited by the activity of two Nedd4 family HECT domain proteins, Suppressor of deltex [Su(dx)] and DNedd4. We rule out models by which Su(dx) downregulates Notch through modulating Deltex or by limiting the adherens junction accumulation of Notch. Instead, we show that Su(dx) regulates the postendocytic sorting of Notch within the early endosome to an Hrs- and ubiquitin-enriched subdomain en route to the late endosome. We propose a model in which endocytic sorting of Notch mediates a decision between its activation and downregulation. Such intersections between trafficking routes may provide key points at which other signals can modulate Notch activity in both normal development and in the pathological misactivation of Notch.
Fungal Genetics and Biology | 2009
Jennifer R. Wortman; Jane Mabey Gilsenan; Vinita Joardar; Jennifer Deegan; John Clutterbuck; Mikael Rørdam Andersen; David B. Archer; Mojca Benčina; Gerhard Braus; Pedro M. Coutinho; Hans von Döhren; John H. Doonan; Arnold J. M. Driessen; Pawel Durek; Eduardo A. Espeso; Erzsébet Fekete; Michel Flipphi; Carlos Garcia Estrada; Steven Geysens; Gustavo H. Goldman; Piet W.J. de Groot; Kim Hansen; Steven D. Harris; Thorsten Heinekamp; Kerstin Helmstaedt; Bernard Henrissat; Gerald Hofmann; Tim Homan; Tetsuya Horio; Hiroyuki Horiuchi
The identification and annotation of protein-coding genes is one of the primary goals of whole-genome sequencing projects, and the accuracy of predicting the primary protein products of gene expression is vital to the interpretation of the available data and the design of downstream functional applications. Nevertheless, the comprehensive annotation of eukaryotic genomes remains a considerable challenge. Many genomes submitted to public databases, including those of major model organisms, contain significant numbers of wrong and incomplete gene predictions. We present a community-based reannotation of the Aspergillus nidulans genome with the primary goal of increasing the number and quality of protein functional assignments through the careful review of experts in the field of fungal biology.
Developmental Biology | 2003
Sabine Mazaleyrat; Maggy Fostier; Marian B. Wilkin; Hanna Aslam; Dana A.P Evans; Michael Cornell; Martin Baron
In Drosophila, Suppressor of deltex (Su(dx)) mutations display a wing vein gap phenotype resembling that of Notch gain of function alleles. The Su(dx) protein may therefore act as a negative regulator of Notch but its activity on actual Notch signalling levels has not been demonstrated. Here we show that Su(dx) does regulate the level of Notch signalling in vivo, upstream of Notch target genes and in different developmental contexts, including a previously unknown role in leg joint formation. Overexpression of Su(dx) was capable of blocking both the endogenous activity of Notch and the ectopic Notch signalling induced by the overexpression of Deltex, an intracellular Notch binding protein. In addition, using the conditional phenotype of the Su(dx)(sp) allele, we show that loss of Su(dx) activity is rapidly followed by an up-regulation of E(spl)mbeta expression, the immediate target of Notch signal activation during wing vein development. While Su(dx) adult wing vein phenotypes are quite mild, only affecting the distal tips of the veins, we show that the initial consequence of loss of Su(dx) activity is more severe than previously thought. Using a time-course experiment we show that the phenotype is buffered by feedback regulation illustrating how signalling networks can make development robust to perturbation.
Nucleic Acids Research | 2016
Jon Ison; Kristoffer Rapacki; Hervé Ménager; Matúš Kalaš; Emil Rydza; Piotr Jaroslaw Chmura; Christian Anthon; Niall Beard; Karel Berka; Dan Bolser; Tim Booth; Anthony Bretaudeau; Jan Brezovsky; Rita Casadio; Gianni Cesareni; Frederik Coppens; Michael Cornell; Gianmauro Cuccuru; Kristian Davidsen; Gianluca Della Vedova; Tunca Doğan; Olivia Doppelt-Azeroual; Laura Emery; Elisabeth Gasteiger; Thomas Gatter; Tatyana Goldberg; Marie Grosjean; Björn Grüning; Manuela Helmer-Citterich; Hans Ienasescu
Life sciences are yielding huge data sets that underpin scientific discoveries fundamental to improvement in human health, agriculture and the environment. In support of these discoveries, a plethora of databases and tools are deployed, in technically complex and diverse implementations, across a spectrum of scientific disciplines. The corpus of documentation of these resources is fragmented across the Web, with much redundancy, and has lacked a common standard of information. The outcome is that scientists must often struggle to find, understand, compare and use the best resources for the task at hand. Here we present a community-driven curation effort, supported by ELIXIR—the European infrastructure for biological information—that aspires to a comprehensive and consistent registry of information about bioinformatics resources. The sustainable upkeep of this Tools and Data Services Registry is assured by a curation effort driven by and tailored to local needs, and shared amongst a network of engaged partners. As of November 2015, the registry includes 1785 resources, with depositions from 126 individual registrations including 52 institutional providers and 74 individuals. With community support, the registry can become a standard for dissemination of information about bioinformatics resources: we welcome everyone to join us in this common endeavour. The registry is freely available at https://bio.tools.
BMC Genomics | 2007
Cornelia Hedeler; Han Min Wong; Michael Cornell; Intikhab Alam; Darren M. Soanes; Magnus Rattray; Simon J. Hubbard; Nicholas J. Talbot; Stephen G. Oliver; Norman W. Paton
BackgroundThe number of sequenced fungal genomes is ever increasing, with about 200 genomes already fully sequenced or in progress. Only a small percentage of those genomes have been comprehensively studied, for example using techniques from functional genomics. Comparative analysis has proven to be a useful strategy for enhancing our understanding of evolutionary biology and of the less well understood genomes. However, the data required for these analyses tends to be distributed in various heterogeneous data sources, making systematic comparative studies a cumbersome task. Furthermore, comparative analyses benefit from close integration of derived data sets that cluster genes or organisms in a way that eases the expression of requests that clarify points of similarity or difference between species.DescriptionTo support systematic comparative analyses of fungal genomes we have developed the e-Fungi database, which integrates a variety of data for more than 30 fungal genomes. Publicly available genome data, functional annotations, and pathway information has been integrated into a single data repository and complemented with results of comparative analyses, such as MCL and OrthoMCL cluster analysis, and predictions of signaling proteins and the sub-cellular localisation of proteins. To access the data, a library of analysis tasks is available through a web interface. The analysis tasks are motivated by recent comparative genomics studies, and aim to support the study of evolutionary biology as well as community efforts for improving the annotation of genomes. Web services for each query are also available, enabling the tasks to be incorporated into workflows.ConclusionThe e-Fungi database provides fungal biologists with a resource for comparative studies of a large range of fungal genomes. Its analysis library supports the comparative study of genome data, functional annotation, and results of large scale analyses over all the genomes stored in the database. The database is accessible at http://www.e-fungi.org.uk, as is the WSDL for the web services.
Comparative and Functional Genomics | 2004
Michael Cornell; Norman W. Paton; Stephen G. Oliver
Global studies of protein–protein interactions are crucial to both elucidating gene function and producing an integrated view of the workings of living cells. High-throughput studies of the yeast interactome have been performed using both genetic and biochemical screens. Despite their size, the overlap between these experimental datasets is very limited. This could be due to each approach sampling only a small fraction of the total interactome. Alternatively, a large proportion of the data from these screens may represent false-positive interactions. We have used the Genome Information Management System (GIMS) to integrate interactome datasets with transcriptome and protein annotation data and have found significant evidence that the proportion of false-positive results is high. Not all high-throughput datasets are similarly contaminated, and the tandem affinity purification (TAP) approach appears to yield a high proportion of reliable interactions for which corroborating evidence is available. From our integrative analyses, we have generated a set of verified interactome data for yeast.
Genetics | 1999
Michael Cornell; Dana A.P Evans; Robert S. Mann; Maggy Fostier; M. Flasza; M. Monthatong; Spyros Artavanis-Tsakonas; Martin Baron