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Dive into the research topics where Jannick Dyrløv Bendtsen is active.

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Featured researches published by Jannick Dyrløv Bendtsen.


Nature Biotechnology | 2007

Genome sequencing and analysis of the versatile cell factory Aspergillus niger CBS 513.88

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.


BMC Bioinformatics | 2005

Prediction of twin-arginine signal peptides.

Jannick Dyrløv Bendtsen; Henrik Nielsen; David Widdick; Tracy Palmer; Søren Brunak

BackgroundProteins carrying twin-arginine (Tat) signal peptides are exported into the periplasmic compartment or extracellular environment independently of the classical Sec-dependent translocation pathway. To complement other methods for classical signal peptide prediction we here present a publicly available method, TatP, for prediction of bacterial Tat signal peptides.ResultsWe have retrieved sequence data for Tat substrates in order to train a computational method for discrimination of Sec and Tat signal peptides. The TatP method is able to positively classify 91% of 35 known Tat signal peptides and 84% of the annotated cleavage sites of these Tat signal peptides were correctly predicted. This method generates far less false positive predictions on various datasets than using simple pattern matching. Moreover, on the same datasets TatP generates less false positive predictions than a complementary rule based prediction method.ConclusionThe method developed here is able to discriminate Tat signal peptides from cytoplasmic proteins carrying a similar motif, as well as from Sec signal peptides, with high accuracy. The method allows filtering of input sequences based on Perl syntax regular expressions, whereas hydrophobicity discrimination of Tat- and Sec-signal peptides is carried out by an artificial neural network. A potential cleavage site of the predicted Tat signal peptide is also reported. The TatP prediction server is available as a public web server at http://www.cbs.dtu.dk/services/TatP/.


Bioinformatics | 2005

NetAcet: prediction of N-terminal acetylation sites

Lars Kiemer; Jannick Dyrløv Bendtsen; Nikolaj Blom

We present here a neural network based method for prediction of N-terminal acetylation-by far the most abundant post-translational modification in eukaryotes. The method was developed on a yeast dataset for N-acetyltransferase A (NatA) acetylation, which is the type of N-acetylation for which most examples are known and for which orthologs have been found in several eukaryotes. We obtain correlation coefficients close to 0.7 on yeast data and a sensitivity up to 74% on mammalian data, suggesting that the method is valid for eukaryotic NatA orthologs.


Journal of Molecular Biology | 2004

Improved Prediction of Signal Peptides: SignalP 3.0

Jannick Dyrløv Bendtsen; Henrik Nielsen; Gunnar von Heijne; Søren Brunak


Protein Engineering Design & Selection | 2004

Feature-based prediction of non-classical and leaderless protein secretion.

Jannick Dyrløv Bendtsen; Lars Juhl Jensen; Nikolaj Blom; Gunnar von Heijne; Søren Brunak


BMC Microbiology | 2005

Non-classical protein secretion in bacteria

Jannick Dyrløv Bendtsen; Lars Kiemer; Anders Fausbøll; Søren Brunak


Microbiology | 2005

Genome update: prediction of secreted proteins in 225 bacterial proteomes.

Jannick Dyrløv Bendtsen; Tim T. Binnewies; Peter F. Hallin; Thomas Sicheritz-Pontén; David W. Ussery


Journal of Microbiological Methods | 2004

Development of in vitro transposon assisted signal sequence trapping and its use in screening Bacillus halodurans C125 and Sulfolobus solfataricus P2 gene libraries.

Fiona Becker; Kirk Matthew Schnorr; Reinhard Wilting; Niels Tolstrup; Jannick Dyrløv Bendtsen; Peter Bjarke Olsen


Microbiology | 2005

Genome update: prediction of membrane proteins in prokaryotic genomes.

Jannick Dyrløv Bendtsen; Tim T. Binnewies; Peter F. Hallin; David W. Ussery


Microbiology | 2005

Genome Update: Protein secretion systems in 225 bacterial genomes.

Tim T. Binnewies; Jannick Dyrløv Bendtsen; Peter F. Hallin; Natasja Nielsen; Trudy M. Wassenaar; Martin Bastian Pedersen; Per Klemm; David W. Ussery

Collaboration


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Søren Brunak

University of Copenhagen

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David W. Ussery

University of Arkansas for Medical Sciences

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Peter F. Hallin

Technical University of Denmark

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Tim T. Binnewies

Technical University of Denmark

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Henrik Nielsen

Technical University of Denmark

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Lars Kiemer

Technical University of Denmark

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Nikolaj Blom

Technical University of Denmark

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Timothy E. Gookin

Pennsylvania State University

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Anders Fausbøll

Technical University of Denmark

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