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This version published online on May 8, 2003
Molecular Endocrinology, doi:10.1210/me.2002-0424
A more recent version of this article appeared on August 1, 2003
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Submitted on December 17, 2002
Accepted on April 28, 2003

Computer-assisted generation of a protein-interaction database for nuclear receptors

Sylvie Albert1, Sylvain Gaudan1, Heidrun Knigge1, Andreas Raetsch1, Asuncion Delgado1, Bettina Huhse1, Harald Kirsch1, Michael Albers1, Dietrich Rebholz-Schuhmann1, and Manfred Koegl1*

1 LION bioscience AG, Waldhoferstr 98, 69123 Heidelberg, Germany

* To whom correspondence should be addressed. E-mail: manfred.koegl{at}phenex-pharma.com.

With the increasing amount of biological data available, automated methods for information retrieval become necessary. We employed computer-assisted text mining to retrieve all protein-protein interactions for nuclear receptors from MEDLINE in a systematic way. A dictionary of protein names and of terms denoting interactions was generated, and tri-occurrences of two protein names and one interaction term in one sentence were retrieved. Abstracts containing at least one such tri-occurrence were manually checked by biologists to select the relevant interactions out of the automatically extracted data.

In total, 4360 abstracts were retrieved containing data on protein interactions for nuclear receptors. The resulting database contains all reported protein interactions involving nuclear receptors from 1966 to September 2001. Remarkably, the annual increase in number of reported interactors for nuclear receptors has been after an exponential growth curve in the years 1991 to 2001.

Apparent in the dataset is the high complexity of protein interactions for nuclear receptors. The number of interactions correlates with the number of published papers for a given receptor, suggesting that the number of reported interactors is a reflection of the intensity of research dedicated to a given receptor. Indeed, comparison of the retrieved data to a systematic yeast two hybrid-based interaction analysis suggests that most NRs are similar with respect to the number of interacting proteins. The data set obtained serves as a source for information on NR interactions, as well as a reference data set for the improvement of advanced text mining methods.


Key words: text mining • protein-protein interactions • nuclear receptors • yeast two hybrid

NURSA Molecule Pages Link:

Nuclear Receptors:   DAX1  |  SHP  |  TRα  |  TRβ  |  RARα  |  RARβ  |  RARγ  |  PPARα  |  PPARδ  |  PPARγ  |  REV-ERBα  |  REV-ERBβ  |  RORα  |  RORβ  |  RORγ  |  LXRβ  |  LXRα  |  FXRα  |  FXRβ  |  VDR  |  PXR  |  CAR-β  |  TLX  |  PNR  |  HNF4α  |  HNF4γ  |  HNF4β  |  RXRα  |  RXRβ  |  RXRγ  |  TR2  |  TR4  |  COUP-TFI  |  COUP-TFII  |  EAR-2  |  ERα  |  ERβ  |  ERRα  |  ERRβ  |  ERRγ  |  GR  |  MR  |  PR  |  AR  |  NGFIB  |  NURR1  |  NOR1  |  SF-1  |  LRH-1  |  GCNF



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