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Dive into the research topics where Mathias Krull is active.

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Featured researches published by Mathias Krull.


Nucleic Acids Research | 2006

TRANSFAC® and its module TRANSCompel®: transcriptional gene regulation in eukaryotes

Volker Matys; Olga V. Kel-Margoulis; Ellen Fricke; Ines Liebich; Sigrid Land; A. Barre-Dirrie; Ingmar Reuter; D. Chekmenev; Mathias Krull; Klaus Hornischer; Nico Voss; Philip Stegmaier; Birgit Lewicki-Potapov; H. Saxel; Alexander E. Kel; Edgar Wingender

The TRANSFAC® database on transcription factors, their binding sites, nucleotide distribution matrices and regulated genes as well as the complementing database TRANSCompel® on composite elements have been further enhanced on various levels. A new web interface with different search options and integrated versions of Match™ and Patch™ provides increased functionality for TRANSFAC®. The list of databases which are linked to the common GENE table of TRANSFAC® and TRANSCompel® has been extended by: Ensembl, UniGene, EntrezGene, HumanPSD™ and TRANSPRO™. Standard gene names from HGNC, MGI and RGD, are included for human, mouse and rat genes, respectively. With the help of InterProScan, Pfam, SMART and PROSITE domains are assigned automatically to the protein sequences of the transcription factors. TRANSCompel® contains now, in addition to the COMPEL table, a separate table for detailed information on the experimental EVIDENCE on which the composite elements are based. Finally, for TRANSFAC®, in respect of data growth, in particular the gain of Drosophila transcription factor binding sites (by courtesy of the Drosophila DNase I footprint database) and of Arabidopsis factors (by courtesy of DATF, Database of Arabidopsis Transcription Factors) has to be stressed. The here described public releases, TRANSFAC® 7.0 and TRANSCompel® 7.0, are accessible under .


Nucleic Acids Research | 2001

The TRANSFAC system on gene expression regulation

Edgar Wingender; Xin Chen; Ellen Fricke; Robert Geffers; Reinhard Hehl; Ines Liebich; Mathias Krull; Volker Matys; Holger Michael; R. Ohnhäuser; M. Prüß; Frank Schacherer; S. Thiele; S. Urbach

The TRANSFAC database on transcription factors and their DNA-binding sites and profiles (http://www.gene-regulation.de/) has been quantitatively extended and supplemented by a number of modules. These modules give information about pathologically relevant mutations in regulatory regions and transcription factor genes (PathoDB), scaffold/matrix attached regions (S/MARt DB), signal transduction (TRANSPATH) and gene expression sources (CYTOMER). Altogether, these distinct database modules constitute the TRANSFAC system. They are accompanied by a number of program routines for identifying potential transcription factor binding sites or for localizing individual components in the regulatory network of a cell.


Nucleic Acids Research | 2006

TRANSPATH®: an information resource for storing and visualizing signaling pathways and their pathological aberrations

Mathias Krull; Susanne Pistor; Nico Voss; Alexander E. Kel; Ingmar Reuter; Deborah Kronenberg; Holger Michael; Knut Schwarzer; Anatolij Potapov; Claudia Choi; Olga V. Kel-Margoulis; Edgar Wingender

TRANSPATH® is a database about signal transduction events. It provides information about signaling molecules, their reactions and the pathways these reactions constitute. The representation of signaling molecules is organized in a number of orthogonal hierarchies reflecting the classification of the molecules, their species-specific or generic features, and their post-translational modifications. Reactions are similarly hierarchically organized in a three-layer architecture, differentiating between reactions that are evidenced by individual publications, generalizations of these reactions to construct species-independent ‘reference pathways’ and the ‘semantic projections’ of these pathways. A number of search and browse options allow easy access to the database contents, which can be visualized with the tool PathwayBuilder™. The module PathoSign adds data about pathologically relevant mutations in signaling components, including their genotypes and phenotypes. TRANSPATH® and PathoSign can be used as encyclopaedia, in the educational process, for vizualization and modeling of signal transduction networks and for the analysis of gene expression data. TRANSPATH® Public 6.0 is freely accessible for users from non-profit organizations under .


Nucleic Acids Research | 2003

TRANSPATH ® : an integrated database on signal transduction and a tool for array analysis

Mathias Krull; Nico Voss; Claudia Choi; Susanne Pistor; Anatolij Potapov; Edgar Wingender

TRANSPATH is a database system about gene regulatory networks that combines encyclopedic information on signal transduction with tools for visualization and analysis. The integration with TRANSFAC, a database about transcription factors and their DNA binding sites, provides the possibility to obtain complete signaling pathways from ligand to target genes and their products, which may themselves be involved in regulatory action. As of July 2002, the TRANSPATH Professional release 3.2 contains about 9800 molecules, >1800 genes and >11 400 reactions collected from approximately 5000 references. With the ArrayAnalyzer, an integrated tool has been developed for evaluation of microarray data. It uses the TRANSPATH data set to identify key regulators in pathways connected with up- or down-regulated genes of the respective array. The key molecules and their surrounding networks can be viewed with the PathwayBuilder, a tool that offers four different modes of visualization. More information on TRANSPATH is available at http://www.biobase.de/pages/products/databases.html.


Bioinformatics | 2001

The TRANSPATH signal transduction database: a knowledge base on signal transduction networks.

Frank Schacherer; Claudia Choi; Ulrike Götze; Mathias Krull; Susanne Pistor; Edgar Wingender

UNLABELLED TRANSPATH is an information system on gene-regulatory pathways, and an extension module to the TRANSFAC database system (Wingender et al., Nucleic Acids Res., 28, 316-319, 2000). It focuses on pathways involved in the regulation of transcription factors in different species, mainly human, mouse and rat. Elements of the relevant signal transduction pathways like complexes, signaling molecules, and their states are stored together with information about their interaction in an object-oriented database. The database interface provides clickable maps and automatically generated pathway cascades as additional ways to explore the data. All information is validated with references to the original publications. Also, references to other databases are provided (TRANSFAC, SWISS-PROT, EMBL, PubMed and others). AVAILABILITY The database is available over (http://transpath.gbf.de) for interactive perusal. As an exchange format for the data, eXtensible Markup Language (XML) flatfiles and a Document Type Definition (DTD) are provided.


Comparative and Functional Genomics | 2004

TRANSPATH®—A High Quality Database Focused on Signal Transduction

Claudia Choi; Mathias Krull; Alexander E. Kel; Olga V. Kel-Margoulis; Susanne Pistor; Anatolij Potapov; Nico Voss; Edgar Wingender

TRANSPATH® can either be used as an encyclopedia, for both specific and general information on signal transduction, or can serve as a network analyser. Therefore, three modules have been created: the first one is the data, which have been manually extracted, mostly from the primary literature; the second is PathwayBuilder™, which provides several different types of network visualization and hence faciliates understanding; the third is ArrayAnalyzer™, which is particularly suited to gene expression array interpretation, and is able to identify key molecules within signalling networks (potential drug targets). These key molecules could be responsible for the coordinated regulation of downstream events. Manual data extraction focuses on direct reactions between signalling molecules and the experimental evidence for them, including species of genes/proteins used in individual experiments, experimental systems, materials and methods. This combination of materials and methods is used in TRANSPATH® to assign a quality value to each experimentally proven reaction, which reflects the probability that this reaction would happen under physiological conditions. Another important feature in TRANSPATH® is the inclusion of transcription factor–gene relations, which are transferred from TRANSFAC®, a database focused on transcription regulation and transcription factors. Since interactions between molecules are mainly direct, this allows a complete and stepwise pathway reconstruction from ligands to regulated genes. More information is available at www.biobase.de/pages/products/databases.html.


BMC Systems Biology | 2010

Molecular mechanistic associations of human diseases.

Philip Stegmaier; Mathias Krull; Nico Voss; Alexander E. Kel; Edgar Wingender

BackgroundThe study of relationships between human diseases provides new possibilities for biomedical research. Recent achievements on human genetic diseases have stimulated interest to derive methods to identify disease associations in order to gain further insight into the network of human diseases and to predict disease genes.ResultsUsing about 10000 manually collected causal disease/gene associations, we developed a statistical approach to infer meaningful associations between human morbidities. The derived method clustered cardiometabolic and endocrine disorders, immune system-related diseases, solid tissue neoplasms and neurodegenerative pathologies into prominent disease groups. Analysis of biological functions confirmed characteristic features of corresponding disease clusters. Inference of disease associations was further employed as a starting point for prediction of disease genes. Efforts were made to underpin the validity of results by relevant literature evidence. Interestingly, many inferred disease relationships correspond to known clinical associations and comorbidities, and several predicted disease genes were subjects of therapeutic target research.ConclusionsCausal molecular mechanisms present a unifying principle to derive methods for disease classification, analysis of clinical disorder associations, and prediction of disease genes. According to the definition of causal disease genes applied in this study, these results are not restricted to genetic disease/gene relationships. This may be particularly useful for the study of long-term or chronic illnesses, where pathological derangement due to environmental or as part of sequel conditions is of importance and may not be fully explained by genetic background.


Nucleic Acids Research | 2018

TFClass: expanding the classification of human transcription factors to their mammalian orthologs

Edgar Wingender; Torsten Schoeps; Martin Haubrock; Mathias Krull; Jürgen Dönitz

Abstract TFClass is a resource that classifies eukaryotic transcription factors (TFs) according to their DNA-binding domains (DBDs), available online at http://tfclass.bioinf.med.uni-goettingen.de. The classification scheme of TFClass was originally derived for human TFs and is expanded here to the whole taxonomic class of mammalia. Combining information from different resources, checking manually the retrieved mammalian TFs sequences and applying extensive phylogenetic analyses, >39 000 TFs from up to 41 mammalian species were assigned to the Superclasses, Classes, Families and Subfamilies of TFClass. As a result, TFClass now provides the corresponding sequence collection in FASTA format, sequence logos and phylogenetic trees at different classification levels, predicted TF binding sites for human, mouse, dog and cow genomes as well as links to several external databases. In particular, all those TFs that are also documented in the TRANSFAC® database (FACTOR table) have been linked and can be freely accessed. TRANSFAC® FACTOR can also be queried through an own search interface.


Archive | 2016

Transcription Factor Databases

Edgar Wingender; Alexander Kel; Mathias Krull

Abstract Information about transcription factors and their genomic sites of action are stored in dedicated databases, TFDBs (transcription factor databases). They maybe accompanied by models about the DNA-binding domains of the transcription factors and models describing their DNA-binding specificity. These models may be provided for descriptive as well as for predictive purposes. In this article, we describe these features of TFDBs in more details, exemplify them with some of the most popular databases in use, and give an overview of those resources that are actively maintained at present.


Encyclopedia of Genetics, Genomics, Proteomics and Bioinformatics | 2005

Eukaryotic regulatory sequences

Mathias Krull; Edgar Wingender

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Nico Voss

University of Göttingen

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Claudia Choi

University of Göttingen

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Susanne Pistor

University of Göttingen

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Alexander E. Kel

Braunschweig University of Technology

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Olga V. Kel-Margoulis

Braunschweig University of Technology

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Ellen Fricke

Braunschweig University of Technology

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Holger Michael

Braunschweig University of Technology

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Ines Liebich

University of Göttingen

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