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Dive into the research topics where Bert Coessens is active.

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Featured researches published by Bert Coessens.


Nature Biotechnology | 2006

Gene prioritization through genomic data fusion.

Stein Aerts; Diether Lambrechts; Sunit Maity; Peter Van Loo; Bert Coessens; Frederik De Smet; Léon-Charles Tranchevent; Bart De Moor; Peter Marynen; Bassem A. Hassan; Peter Carmeliet; Yves Moreau

The identification of genes involved in health and disease remains a challenge. We describe a bioinformatics approach, together with a freely accessible, interactive and flexible software termed Endeavour, to prioritize candidate genes underlying biological processes or diseases, based on their similarity to known genes involved in these phenomena. Unlike previous approaches, ours generates distinct prioritizations for multiple heterogeneous data sources, which are then integrated, or fused, into a global ranking using order statistics. In addition, it offers the flexibility of including additional data sources. Validation of our approach revealed it was able to efficiently prioritize 627 genes in disease data sets and 76 genes in biological pathway sets, identify candidates of 16 mono- or polygenic diseases, and discover regulatory genes of myeloid differentiation. Furthermore, the approach identified a novel gene involved in craniofacial development from a 2-Mb chromosomal region, deleted in some patients with DiGeorge-like birth defects. The approach described here offers an alternative integrative method for gene discovery.


Nucleic Acids Research | 2008

Endeavour update: a web resource for gene prioritization in multiple species

Léon-Charles Tranchevent; Roland Barriot; Shi Yu; Steven Van Vooren; Peter Van Loo; Bert Coessens; Bart De Moor; Stein Aerts; Yves Moreau

Endeavour (http://www.esat.kuleuven.be/endeavourweb; this web site is free and open to all users and there is no login requirement) is a web resource for the prioritization of candidate genes. Using a training set of genes known to be involved in a biological process of interest, our approach consists of (i) inferring several models (based on various genomic data sources), (ii) applying each model to the candidate genes to rank those candidates against the profile of the known genes and (iii) merging the several rankings into a global ranking of the candidate genes. In the present article, we describe the latest developments of Endeavour. First, we provide a web-based user interface, besides our Java client, to make Endeavour more universally accessible. Second, we support multiple species: in addition to Homo sapiens, we now provide gene prioritization for three major model organisms: Mus musculus, Rattus norvegicus and Caenorhabditis elegans. Third, Endeavour makes use of additional data sources and is now including numerous databases: ontologies and annotations, protein–protein interactions, cis-regulatory information, gene expression data sets, sequence information and text-mining data. We tested the novel version of Endeavour on 32 recent disease gene associations from the literature. Additionally, we describe a number of recent independent studies that made use of Endeavour to prioritize candidate genes for obesity and Type II diabetes, cleft lip and cleft palate, and pulmonary fibrosis.


Genome Biology | 2004

TXTGate: profiling gene groups with text-based information

Patrick Glenisson; Bert Coessens; Steven Van Vooren; Janick Mathys; Yves Moreau; Bart De Moor

We implemented a framework called TXTGate that combines literature indices of selected public biological resources in a flexible text-mining system designed towards the analysis of groups of genes. By means of tailored vocabularies, term- as well as gene-centric views are offered on selected textual fields and MEDLINE abstracts used in LocusLink and the Saccharomyces Genome Database. Subclustering and links to external resources allow for in-depth analysis of the resulting term profiles.


Nucleic Acids Research | 2003

INCLUSive: a web portal and service registry for microarray and regulatory sequence analysis

Bert Coessens; Gert Thijs; Stein Aerts; Kathleen Marchal; Frank De Smet; Kristof Engelen; Patrick Glenisson; Yves Moreau; Janick Mathys; Bart De Moor

INCLUSive is a suite of algorithms and tools for the analysis of gene expression data and the discovery of cis-regulatory sequence elements. The tools allow normalization, filtering and clustering of microarray data, functional scoring of gene clusters, sequence retrieval, and detection of known and unknown regulatory elements using probabilistic sequence models and Gibbs sampling. All tools are available via different web pages and as web services. The web pages are connected and integrated to reflect a methodology and facilitate complex analysis using different tools. The web services can be invoked using standard SOAP messaging. Example clients are available for download to invoke the services from a remote computer or to be integrated with other applications. All services are catalogued and described in a web service registry. The INCLUSive web portal is available for academic purposes at http://www.esat.kuleuven.ac.be/inclusive.


Genome Medicine | 2010

Collaboratively charting the gene-to-phenotype network of human congenital heart defects

Roland Barriot; Jeroen Breckpot; Bernard Thienpont; Sylvain Brohée; Steven Van Vooren; Bert Coessens; Léon-Charles Tranchevent; Peter Van Loo; Marc Gewillig; Koenraad Devriendt; Yves Moreau

BackgroundHow to efficiently integrate the daily practice of molecular biologists, geneticists, and clinicians with the emerging computational strategies from systems biology is still much of an open question.DescriptionWe built on the recent advances in Wiki-based technologies to develop a collaborative knowledge base and gene prioritization portal aimed at mapping genes and genomic regions, and untangling their relations with corresponding human phenotypes, congenital heart defects (CHDs). This portal is not only an evolving community repository of current knowledge on the genetic basis of CHDs, but also a collaborative environment for the study of candidate genes potentially implicated in CHDs - in particular by integrating recent strategies for the statistical prioritization of candidate genes. It thus serves and connects the broad community that is facing CHDs, ranging from the pediatric cardiologist and clinical geneticist to the basic investigator of cardiogenesis.ConclusionsThis study describes the first specialized portal to collaboratively annotate and analyze gene-phenotype networks. Of broad interest to the biological community, we argue that such portals will play a significant role in systems biology studies of numerous complex biological processes.CHDWiki is accessible at http://www.esat.kuleuven.be/~bioiuser/chdwiki


Bioinformatics | 2003

MARAN: normalizing micro-array data

Kristof Engelen; Bert Coessens; Kathleen Marchal; Bart De Moor

SUMMARY MARAN is a web-based application for normalizing microarray data. MARAN comprises a generic ANOVA model, an option for Loess fitting prior to ANOVA analysis, and a module for selecting genes with significantly changing expression. AVAILABILITY http://www.esat.kuleuven.ac.be/maran/.


Genetics in Medicine | 2007

Array comparative genomic hybridization and computational genome annotation in constitutional cytogenetics: suggesting candidate genes for novel submicroscopic chromosomal imbalance syndromes

Steven Van Vooren; Bert Coessens; Bart De Moor; Yves Moreau; Joris Vermeesch

Genome-wide array comparative genomic hybridization screening is uncovering pathogenic submicroscopic chromosomal imbalances in patients with developmental disorders. In those patients, imbalances appear now to be scattered across the whole genome, and most patients carry different chromosomal anomalies. Screening patients with developmental disorders can be considered a forward functional genome screen. The imbalances pinpoint the location of genes that are involved in human development. Because most imbalances encompass regions harboring multiple genes, the challenge is to (1) identify those genes responsible for the specific phenotype and (2) disentangle the role of the different genes located in an imbalanced region. In this review, we discuss novel tools and relevant databases that have recently been developed to aid this gene discovery process. Identification of the functional relevance of genes will not only deepen our understanding of human development but will, in addition, aid in the data interpretation and improve genetic counseling.


international conference on move to meaningful internet systems | 2006

Ontology guided data integration for computational prioritization of disease genes

Bert Coessens; Stijn Christiaens; Ruben Verlinden; Yves Moreau; Robert Meersman; Bart De Moor

In this paper we present our progress on a framework for collection and presentation of biomedical information through ontology-based mediation The framework is built on top of a methodology for computational prioritization of candidate disease genes, called Endeavour Endeavour prioritizes genes based on their similarity with a set of training genes while using a wide variety of information sources However, collecting information from different sources is a difficult process and can lead to non-flexible solutions In this paper we describe an ontology-based mediation framework for efficient retrieval, integration, and visualization of the information sources Endeavour uses The described framework allows to (1) integrate the information sources on a conceptual level, (2) provide transparency to the user, (3) eliminate ambiguity and (4) increase efficiency in information display.


international symposium on neural networks | 2006

Interpreting gene profiles from biomedical literature mining with self organizing maps

Shi Yu; Steven Van Vooren; Bert Coessens; Bart De Moor

We present an approach to interpret gene profiles derived from biomedical literature using Self Organizing Maps (SOMs). Comparison of different clustering algorithms shows that SOMs perform better in grouping high dimensional gene profiles when a lot of noise is present in the data. Qualitative analysis of the clustering results prove that SOMs allow an in-depth interpretation of gene profiles with biological relevance.


Nucleic Acids Research | 2003

Toucan: deciphering the cis-regulatory logic of coregulated genes

Stein Aerts; Gert Thijs; Bert Coessens; Mik Staes; Yves Moreau; Bart De Moor

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Bart De Moor

Katholieke Universiteit Leuven

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Yves Moreau

Katholieke Universiteit Leuven

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Steven Van Vooren

Katholieke Universiteit Leuven

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Stein Aerts

Katholieke Universiteit Leuven

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Peter Van Loo

Katholieke Universiteit Leuven

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Bernard Thienpont

Katholieke Universiteit Leuven

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Diether Lambrechts

Katholieke Universiteit Leuven

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Frederik De Smet

Katholieke Universiteit Leuven

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Joris Vermeesch

Katholieke Universiteit Leuven

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