TRANSFAC ® : transcriptional regulation, from patterns to profiles (original) (raw)

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Published:

01 January 2003

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V. Matys, E. Fricke, R. Geffers, E. Gößling, M. Haubrock, R. Hehl, K. Hornischer, D. Karas, A. E. Kel, O. V. Kel-Margoulis, D.-U. Kloos, S. Land, B. Lewicki-Potapov, H. Michael, R. Münch, I. Reuter, S. Rotert, H. Saxel, M. Scheer, S. Thiele, E. Wingender, TRANSFAC ® : transcriptional regulation, from patterns to profiles , Nucleic Acids Research, Volume 31, Issue 1, 1 January 2003, Pages 374–378, https://doi.org/10.1093/nar/gkg108
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Abstract

The TRANSFAC ® database on eukaryotic transcriptional regulation, comprising data on transcription factors, their target genes and regulatory binding sites, has been extended and further developed, both in number of entries and in the scope and structure of the collected data. Structured fields for expression patterns have been introduced for transcription factors from human and mouse, using the CYTOMER ® database on anatomical structures and developmental stages. The functionality of Match™, a tool for matrix-based search of transcription factor binding sites, has been enhanced. For instance, the program now comes along with a number of tissue-(or state-)specific profiles and new profiles can be created and modified with Match™ Profiler. The GENE table was extended and gained in importance, containing amongst others links to LocusLink, RefSeq and OMIM now. Further, (direct) links between factor and target gene on one hand and between gene and encoded factor on the other hand were introduced. The TRANSFAC ® public release is available at http://www.gene-regulation.com . For yeast an additional release including the latest data was made available separately as TRANSFAC ®Saccharomyces Module (TSM) at http://transfac.gbf.de . For CYTOMER ® free download versions are available at http://www.biobase.de:8080/index.html .

Received September 16, 2002; Revised October 11, 2002. Accepted October 27, 2002

INTRODUCTION

Gene expression, and in particular transcription, in eukaryotic cells is an important process that is regulated in a complex way, through an intricate system of mutual interactions of transcription factors, whose effects (activation/repression) are mediated via DNA binding sites on their target genes. Within a multicellular organism each cell type or tissue, at a specific developmental stage, has its own characteristic gene expression profile that is defined, at least in part, by the presence of a specific combination of transcription factors.

The TRANSFAC ® database, which was developed more than a decade ago to model factor-site interactions ( 1 , 2 ), has been subject to different improvements, modifications and extensions in structure and content over the years ( 39 ). Some of the latest changes that will be described in the present contribution were done with the intention to lead to a better understanding of tissue-specific expression of genes. Expression patterns were introduced for transcription factors using the CYTOMER ® database of anatomical structures and developmental stages as a basis ( 10 , 11 ). Also the functionality of the Match™ tool which is designed for searching potential binding sites for transcription factors in DNA sequences ( 12 ) was enhanced through profiles (groups of binding matrices) for transcription factors specific for certain tissues or states.

CONTENT OF TRANSFAC ®

TRANSFAC ® is maintained internally as a relational database, from which public releases are made available via the web. The release consists of six flat files. At the core of the database is the interaction of transcription factors (FACTOR) with their DNA-binding sites (SITE) through which they regulate their target genes (GENE). Apart from genomic sites, ‘artificial’ sites which are synthesized in the laboratory without any known connection to a gene, e.g., random oligonucleotides, and IUPAC consensus sequences are also stored in the SITE table. Sites must be experimentally proven for their inclusion in the database. Experimental evidence for the interaction with a factor is given in the SITE entry in form of the method that was used (gel shift, footprinting analysis,…) and the cell from which the factor was derived (factor source). The latter contains a link to the respective entry in the CELL table. On the basis of those, method and cell, a quality value is given to describe the ‘confidence’ with which an observed DNA-binding activity could be assigned to a specific factor. From a collection of binding sites for a factor nucleotide weight matrices are derived (MATRIX). These matrices are used by the tool Match™ to find potential binding sites in uncharacterized sequences, while the program Patch™ uses the single site sequences (and consensi given in the IUPAC 15-letter code), which are stored in the SITE table. According to their DNA-binding domain transcription factors are assigned to a certain class (CLASS). In addition to the more ‘planar’ CLASS table a hierarchical factor classification system has been proposed as well some time ago ( 13 ) and has been developed further since then. In Table 1 the number of entries in the different tables/flat files are given for the current public release. TRANSFAC ® contains data from a wide variety of eukaryotic organisms, ranging from human to yeast.

THE TRANSFAC ®**SACCHAROMYCES** MODULE (TSM)

The early completion of the whole genome sequence in 1996 gave yeast a headstart in the now rapidly developing field of genome-wide expression analysis ( 14 ). In order to make sense of the vast amount of yeast-related data and to extract conclusions and hypotheses that are biologically meaningful, sophisticated systems of knowledge representation are needed. An ongoing effort to provide the scientific community with an integrated data collection and knowledge resource is the Comprehensive Yeast Genome Database (CYGD). It is a joint endeavour of several European yeast laboratories and comprises a number of specialized databases ( 15 ).

As part of the CYGD project, the TRANSFAC ® database was massively updated with yeast data ( 16 ) and is now being integrated into the CYGD framework. In parallel to being integrated into CYGD, the TRANSFAC ® yeast data were made publicly accessible as the Saccharomyces Module TSM (Table 1 ).

APPLICATION OF CYTOMER ® FOR TRANSCRIPTION FACTOR EXPRESSION PATTERNS

CYTOMER ® is a database on physiological systems, developmental stages, anatomical structures and substructures, and their constituting cell-types for particular organisms ( 10 , 11 ). We have now completed CYTOMER ® for human and Caenorhabditis elegans , work is in progress for mouse. The relational structure of CYTOMER ® comprises five tables, four of them are catalogs of organs, cells, developmental stages and physiological systems. The ORGAN table is itself hierarchically organized and represents an ontology of anatomical structures and substructures as they occur at the particular developmental stage. For human, an organ tree is constructed for the adult organism as well as for characterized embryonic stages (in the current version: Carnegie stages 1 to 17). The central table of CYTOMER ® is HUB, which is a list that links entries of the five other tables. Each entry in this table corresponds to the particular cell type within a particular organ or suborgan and physiological system at the given developmental stage. Thus, the HUB table represents anatomical/histological knowledge about which cells occur in which organs and at what stages of development. Being complemented by descriptions and definitions, CYTOMER ® provides a comprehensive ontology on human's anatomy and ontogenesis.

The CYTOMER ® database has been applied to map expression patterns of genes. Presently, we provide descriptions of expression of human and mouse genes encoding transcription factors collected in the TRANSFAC ® database. Descriptions of factor expression patterns are released as a part of the TRANSFAC ® FACTOR table. Presently, in the public release expression patterns of the following families of transcription factors are characterized: GATA-factors, nuclear receptors (e.g., androgen and estrogen receptor) and a number of homeobox factors. Entries of the CYTOMER ® HUB table have been linked with human and mouse transcription factor entries in the TRANSFAC ® FACTOR table of the relational database. This structure allows us to present exact information about temporal and spatial characteristics of gene expression. In addition, the method used for the experimental detection of mRNA or protein expression is given (Table 2 ). Expression levels are provided in a semiquantitative way by assigning one of seven levels from ‘none’ to ‘very high’.

Describing transcription factor expression patterns through the link between the CYTOMER ® and TRANSFAC ® databases has several advantages over the previously existing description in free text fields (CP=cell-specific-positive for those expression sources where a certain factor has been shown to be expressed in, and CN=cell-specific-negative for those expression sources where evidence for the absence of a certain factor has been published). Gene expression patterns are described now in a computer-readable format, giving the possibility to perform better queries and searches of expression patterns. Experimental methods and references are linked now to expression patterns. CYTOMER ® provides a comprehensive overview on all spatial and temporal expression patterns.

ENHANCEMENTS OF INTRA- AND INTER-LINKING (A CENTRAL ROLE FOR THE GENE TABLE)

The GENE table is one of the central tables of the TRANSFAC ® database. It is not only jointly used by several of our own databases, TRANSPATH ® ( 17 ), PathDB ® ( 8 , 9 ), S/MARt DB™ ( 18 ), and TRANSCompel ® ( 19 ). Recently, the GENE table has been extended to one of the major link sources to external databases, including BRENDA ( 20 ), LocusLink, OMIM and RefSeq ( 21 ).

The GENE table serves to list the transcription factor binding sites within a gene regulatory region, and thus showing them in a context. Alongside these sites the factors binding to them are shown as well now. (Also in the FACTOR table the regulated genes are listed now aside the binding sites, providing direct links from factors to target genes). In addition to these factor-gene links based on protein-DNA binding, in those cases where the gene encodes a transcription factor, links from gene to the encoded factor have been introduced and vice versa. In this structure, a particular transcription factor, as a gene product, is always linked to one gene. Along with this, the same gene entry could be linked to several transcription factors in those cases when a gene encodes for several products as a result of alternative start of transcription, splicing, start of translation, or polyadenylation. For instance, the human gene hnf - 4a encodes for at least four different splice variants that are transcription factors with different functional properties due to the differences in particular protein domains (gene id HS$HNF4A, factors ids T00373, T02421, T02425, T02428). For many transcription factors, it is known that the gene encoding a particular factor is itself regulated by this factor, either positively or negatively. These autoregulatory feedback loops are presented now in the GENE table, for example for the human and mouse genes encoding transcription factors c-Jun, c-Fos, c-Myc, c-Myb, E2F1, CRE-BP1, C/EBP-α, RAR-β, RAR-γ, SRY.

In cases, where proteins are encoded which are part of the signal transduction network of the cell, links from GENE to the MOLECULE table in the TRANSPATH ® database ( 17 ) were added. Together with the links from MOLECULE (TRANSPATH ® ) to FACTOR (TRANSFAC ® ) these links are intended as steps towards an integration of the gene regulation data of TRANSFAC ® into the overall regulatory network of the cell.

Beside this, the GENE table contains additional fields for synonyms and for chromosomal localization now, and references about transcriptional regulation of a gene are listed as well.

MATCH™: ENHANCEMENT BY TISSUE- AND STATE-SPECIFIC PROFILES

TRANSFAC ® 6.0 is accompanied by the new public version of Match™ ( 12 ). This tool performs searches for putative transcription factor binding sites in DNA sequences based on weight matrices. Match™ uses the library of weight matrices collected in the MATRIX table of the TRANSFAC ® database. We have developed a WWW interface and a graphical representation of the program output.

The algorithm of the Match™ uses two values to score putative hits: the matrix similarity score and the core similarity score resembling herein the previously published MatInspector algorithm ( 22 ). The core similarity weights the quality of a match between the sequence under study and the core sequence of a matrix which consists of the five most conserved consecutive positions in a matrix. The matrix similarity score is a weight for the quality of a match between the sequence and the whole matrix. Both scores range from 0 to 1 where 1 denotes the exact match.

The new version of Match™ provides several specific profiles as well as a tool, the Match™ Profiler, for creation and modification of profiles by the user. A profile is a set of matrices and their cut-offs designed for function-driven searches within regulatory regions of genes whose function is partially known. Currently, we provide immune cell-, muscle-, liver- and cell cycle-specific profiles. The liver-specific profile, for instance, contains matrices for liver-enriched factors of HNF-1, -3, -4, C/EBP and SREBP families. Matrices for widely expressed transcription factors, both inducible (GR, NF-κB, STAT, AP-1, CREB) and constitutive (Sp1, TBP, NF-1, YY1, USF), are included in this profile as well. These widely expressed factors are known to bind DNA sites and regulate transcription of genes in liver, in many cases by cooperation with liver-specific factors. Examples of liver-specific gene regulation confirming involvement of both liver-enriched and ubiquitous factors, are collected in the databases TRANSFAC ® and TransCOMPEL ® . The liver-specific profile can be applied for the regulatory regions of genes that are known to be expressed in liver, but function and mechanisms of this regulation are not known in detail.

Examples of profile application are shown in Figure 1 . The immune-specific profile (with modified cut-offs) was applied to the promoter region of the human IL-12 p40 subunit gene. In this gene, four binding sites are known: Ets, NF-κB, C/EBP and TATA-box ( 23 ). NF-κB and C/EBP cooperatively regulate the IL-12 p40 promoter ( 24 ). All known sites as well as additional potential binding sites are found by Match™ with the immune-specific profile (Fig. 1 A). Another example addresses a gene with unknown function. It is just known that its mRNA is expressed in skeletal muscles. In this case, we have applied the muscle-specific profile (with modified cut-offs) and found a number of potential sites in the close proximity to the beginning of the first exon as it is annotated in RefSeq (Fig. 1 B).

AVAILABILITY

The public releases of TRANSFAC ® and of our other databases, PathoDB ® , S/MARt DB™, and TRANSCompel ® , as well as the public versions of the programs Match™ and Patch™ are all freely available to users from non-profit organizations at http://www.gene-regulation.com/ . The TSM is freely available as a standalone resource at http://transfac.gbf.de/ (under ‘Databases’). For Homo sapiens and C. elegans free download versions of the CYTOMER ® database are available at http://www.biobase.de:8080/index.html .

ACKNOWLEDGEMENTS

We would like to thank all present and former members of BIOBASE GmbH and the AG Bioinformatics at the German Research Centre for Biotechnology (GBF) for contributing to this work in various ways. This work is supported in part by a grant of the European Commission (contract no. QLRI-CT-1999-01333) and two grants of the German Ministry of Education and Research (BMBF, grant no. 0312432 and 031U210B).

Figure 1. Application of specific profiles provided by the Match™ program. Potential binding sites found by Match™ are boxed, name of the transcription factor and score for the match are given under the sequence. ( A ) The immune-specific profile (with modified cut-offs) is applied to find potential binding sites within the promoter sequence of the human IL-12 p40 gene (EMBL accession no. AY008847, positions 2101 to 2460). Known binding sites for transcription factors are shown in bold, the name of the transcription factor is given above the sequence. The transcription start site (TSS) is indicated by an arrow. ( B ) The muscle-specific profile (with modified cut-offs) is used to find potential binding sites in the 5′ region of the hypothetical gene, LocusLink ID LOC88523. This gene encodes a protein with unknown function, a corresponding EST is shown to be expressed in skeletal muscles. The sequence has been retrieved from RefSeq, the start of the first exon is shown according to RefSeq annotation.

Figure 1. Application of specific profiles provided by the Match™ program. Potential binding sites found by Match™ are boxed, name of the transcription factor and score for the match are given under the sequence. ( A ) The immune-specific profile (with modified cut-offs) is applied to find potential binding sites within the promoter sequence of the human IL-12 p40 gene (EMBL accession no. AY008847, positions 2101 to 2460). Known binding sites for transcription factors are shown in bold, the name of the transcription factor is given above the sequence. The transcription start site (TSS) is indicated by an arrow. ( B ) The muscle-specific profile (with modified cut-offs) is used to find potential binding sites in the 5′ region of the hypothetical gene, LocusLink ID LOC88523. This gene encodes a protein with unknown function, a corresponding EST is shown to be expressed in skeletal muscles. The sequence has been retrieved from RefSeq, the start of the first exon is shown according to RefSeq annotation.

Table 1.

Number of entries in the different tables of the TRANSFAC ® database (release 6.0) and the TRANSFAC ®Saccharomyces Module (TSM; release 3.0)

Table TRANSFAC ® Release 6.0 TSM Release 3.0
FACTOR 4219 370
Homo sapiens 960
Mus musculus 714
Drosophila melanogaster 204
Caenorhabditis elegans 105
Arabidopsis thaliana 230
Saccharomyces cerevisiae 334 370
others 1672
SITE 6627 825
Genomic sites 5064 592
Artificial sites 1308 209
Consensus sequences 255 24
MATRIX 336 35
GENE (all entries) 1755 563
Homo sapiens 449
Saccharomyces cerevisiae 155 563
Others 1151
GENE (entries with SITE links) 1275 245
CLASS 44 17 a
CELL 1432 13
Table TRANSFAC ® Release 6.0 TSM Release 3.0
FACTOR 4219 370
Homo sapiens 960
Mus musculus 714
Drosophila melanogaster 204
Caenorhabditis elegans 105
Arabidopsis thaliana 230
Saccharomyces cerevisiae 334 370
others 1672
SITE 6627 825
Genomic sites 5064 592
Artificial sites 1308 209
Consensus sequences 255 24
MATRIX 336 35
GENE (all entries) 1755 563
Homo sapiens 449
Saccharomyces cerevisiae 155 563
Others 1151
GENE (entries with SITE links) 1275 245
CLASS 44 17 a
CELL 1432 13

a Only those entries were counted which have a factor from Saccharomyces cerevisiae assigned.

Table 1.

Number of entries in the different tables of the TRANSFAC ® database (release 6.0) and the TRANSFAC ®Saccharomyces Module (TSM; release 3.0)

Table TRANSFAC ® Release 6.0 TSM Release 3.0
FACTOR 4219 370
Homo sapiens 960
Mus musculus 714
Drosophila melanogaster 204
Caenorhabditis elegans 105
Arabidopsis thaliana 230
Saccharomyces cerevisiae 334 370
others 1672
SITE 6627 825
Genomic sites 5064 592
Artificial sites 1308 209
Consensus sequences 255 24
MATRIX 336 35
GENE (all entries) 1755 563
Homo sapiens 449
Saccharomyces cerevisiae 155 563
Others 1151
GENE (entries with SITE links) 1275 245
CLASS 44 17 a
CELL 1432 13
Table TRANSFAC ® Release 6.0 TSM Release 3.0
FACTOR 4219 370
Homo sapiens 960
Mus musculus 714
Drosophila melanogaster 204
Caenorhabditis elegans 105
Arabidopsis thaliana 230
Saccharomyces cerevisiae 334 370
others 1672
SITE 6627 825
Genomic sites 5064 592
Artificial sites 1308 209
Consensus sequences 255 24
MATRIX 336 35
GENE (all entries) 1755 563
Homo sapiens 449
Saccharomyces cerevisiae 155 563
Others 1151
GENE (entries with SITE links) 1275 245
CLASS 44 17 a
CELL 1432 13

a Only those entries were counted which have a factor from Saccharomyces cerevisiae assigned.

Table 2.

Methods used for the experimental detection of mRNA or protein expression

Method Detected molecule
Northern blot m-RNA (poly A)
total RNA
RNA (undefined)
RNA- in situ hybridization (not further specified) RNA (undefined)
RNA- in situ hybridization (radioactive) RNA (undefined)
RNA- in situ hybridization (non-radioactive) RNA (undefined)
RT–PCR m-RNA (poly A)
total RNA
RNA (undefined)
Immunohistochemistry/immunocytochemistry protein
Western blot protein
Dot blot (RNA) m-RNA (poly A)
total RNA
RNA (undefined)
Dot blot (protein) protein
RNAse protection assay m-RNA (poly A)
total RNA
RNA (undefined)
Method Detected molecule
Northern blot m-RNA (poly A)
total RNA
RNA (undefined)
RNA- in situ hybridization (not further specified) RNA (undefined)
RNA- in situ hybridization (radioactive) RNA (undefined)
RNA- in situ hybridization (non-radioactive) RNA (undefined)
RT–PCR m-RNA (poly A)
total RNA
RNA (undefined)
Immunohistochemistry/immunocytochemistry protein
Western blot protein
Dot blot (RNA) m-RNA (poly A)
total RNA
RNA (undefined)
Dot blot (protein) protein
RNAse protection assay m-RNA (poly A)
total RNA
RNA (undefined)

Table 2.

Methods used for the experimental detection of mRNA or protein expression

Method Detected molecule
Northern blot m-RNA (poly A)
total RNA
RNA (undefined)
RNA- in situ hybridization (not further specified) RNA (undefined)
RNA- in situ hybridization (radioactive) RNA (undefined)
RNA- in situ hybridization (non-radioactive) RNA (undefined)
RT–PCR m-RNA (poly A)
total RNA
RNA (undefined)
Immunohistochemistry/immunocytochemistry protein
Western blot protein
Dot blot (RNA) m-RNA (poly A)
total RNA
RNA (undefined)
Dot blot (protein) protein
RNAse protection assay m-RNA (poly A)
total RNA
RNA (undefined)
Method Detected molecule
Northern blot m-RNA (poly A)
total RNA
RNA (undefined)
RNA- in situ hybridization (not further specified) RNA (undefined)
RNA- in situ hybridization (radioactive) RNA (undefined)
RNA- in situ hybridization (non-radioactive) RNA (undefined)
RT–PCR m-RNA (poly A)
total RNA
RNA (undefined)
Immunohistochemistry/immunocytochemistry protein
Western blot protein
Dot blot (RNA) m-RNA (poly A)
total RNA
RNA (undefined)
Dot blot (protein) protein
RNAse protection assay m-RNA (poly A)
total RNA
RNA (undefined)

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Author notes

1BIOBASE GmbH, Halchtersche Strasse 33, D-38304 Wolfenbüttel, Germany 2Institut für Genetik-Biozentrum, Technische Universität Braunschweig, Spielmannstrasse. 7, D-38106 Braunschweig, Germany 3Gesellschaft für Biotechnologische Forschung mbH, Mascheroder Weg 1, D-38124 Braunschweig, Germany

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August 2017 22
September 2017 18
October 2017 12
November 2017 27
December 2017 67
January 2018 85
February 2018 55
March 2018 61
April 2018 94
May 2018 59
June 2018 47
July 2018 55
August 2018 152
September 2018 60
October 2018 55
November 2018 69
December 2018 50
January 2019 39
February 2019 43
March 2019 51
April 2019 80
May 2019 76
June 2019 61
July 2019 98
August 2019 84
September 2019 88
October 2019 105
November 2019 66
December 2019 66
January 2020 48
February 2020 34
March 2020 50
April 2020 88
May 2020 38
June 2020 91
July 2020 50
August 2020 44
September 2020 53
October 2020 33
November 2020 67
December 2020 46
January 2021 57
February 2021 52
March 2021 51
April 2021 85
May 2021 58
June 2021 72
July 2021 67
August 2021 53
September 2021 77
October 2021 79
November 2021 59
December 2021 64
January 2022 41
February 2022 52
March 2022 61
April 2022 74
May 2022 76
June 2022 38
July 2022 65
August 2022 51
September 2022 57
October 2022 74
November 2022 52
December 2022 72
January 2023 46
February 2023 50
March 2023 59
April 2023 58
May 2023 62
June 2023 31
July 2023 48
August 2023 56
September 2023 58
October 2023 49
November 2023 60
December 2023 69
January 2024 122
February 2024 124
March 2024 149
April 2024 78
May 2024 53
June 2024 61
July 2024 59
August 2024 69
September 2024 64
October 2024 10

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