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Dive into the research topics where Steven Van Vooren is active.

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Featured researches published by Steven Van Vooren.


American Journal of Human Genetics | 2009

DECIPHER: Database of Chromosomal Imbalance and Phenotype in Humans Using Ensembl Resources

Helen V. Firth; Shola M. Richards; A. Paul Bevan; Stephen Clayton; Manuel Corpas; Diana Rajan; Steven Van Vooren; Yves Moreau; Roger Pettett; Nigel P. Carter

Many patients suffering from developmental disorders harbor submicroscopic deletions or duplications that, by affecting the copy number of dosage-sensitive genes or disrupting normal gene expression, lead to disease. However, many aberrations are novel or extremely rare, making clinical interpretation problematic and genotype-phenotype correlations uncertain. Identification of patients sharing a genomic rearrangement and having phenotypic features in common leads to greater certainty in the pathogenic nature of the rearrangement and enables new syndromes to be defined. To facilitate the analysis of these rare events, we have developed an interactive web-based database called DECIPHER (Database of Chromosomal Imbalance and Phenotype in Humans Using Ensembl Resources) which incorporates a suite of tools designed to aid the interpretation of submicroscopic chromosomal imbalance, inversions, and translocations. DECIPHER catalogs common copy-number changes in normal populations and thus, by exclusion, enables changes that are novel and potentially pathogenic to be identified. DECIPHER enhances genetic counseling by retrieving relevant information from a variety of bioinformatics resources. Known and predicted genes within an aberration are listed in the DECIPHER patient report, and genes of recognized clinical importance are highlighted and prioritized. DECIPHER enables clinical scientists worldwide to maintain records of phenotype and chromosome rearrangement for their patients and, with informed consent, share this information with the wider clinical research community through display in the genome browser Ensembl. By sharing cases worldwide, clusters of rare cases having phenotype and structural rearrangement in common can be identified, leading to the delineation of new syndromes and furthering understanding of gene function.


Nucleic Acids Research | 2014

The Human Phenotype Ontology project: linking molecular biology and disease through phenotype data

Sebastian Köhler; Sandra C. Doelken; Christopher J. Mungall; Sebastian Bauer; Helen V. Firth; Isabelle Bailleul-Forestier; Graeme C.M. Black; Danielle L. Brown; Michael Brudno; Jennifer Campbell; David Fitzpatrick; Janan T. Eppig; Andrew P. Jackson; Kathleen Freson; Marta Girdea; Ingo Helbig; Jane A. Hurst; Johanna A. Jähn; Laird G. Jackson; Anne M. Kelly; David H. Ledbetter; Sahar Mansour; Christa Lese Martin; Celia Moss; Andrew D Mumford; Willem H. Ouwehand; Soo Mi Park; Erin Rooney Riggs; Richard H. Scott; Sanjay M. Sisodiya

The Human Phenotype Ontology (HPO) project, available at http://www.human-phenotype-ontology.org, provides a structured, comprehensive and well-defined set of 10,088 classes (terms) describing human phenotypic abnormalities and 13,326 subclass relations between the HPO classes. In addition we have developed logical definitions for 46% of all HPO classes using terms from ontologies for anatomy, cell types, function, embryology, pathology and other domains. This allows interoperability with several resources, especially those containing phenotype information on model organisms such as mouse and zebrafish. Here we describe the updated HPO database, which provides annotations of 7,278 human hereditary syndromes listed in OMIM, Orphanet and DECIPHER to classes of the HPO. Various meta-attributes such as frequency, references and negations are associated with each annotation. Several large-scale projects worldwide utilize the HPO for describing phenotype information in their datasets. We have therefore generated equivalence mappings to other phenotype vocabularies such as LDDB, Orphanet, MedDRA, UMLS and phenoDB, allowing integration of existing datasets and interoperability with multiple biomedical resources. We have created various ways to access the HPO database content using flat files, a MySQL database, and Web-based tools. All data and documentation on the HPO project can be found online.


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.


Journal of Histochemistry and Cytochemistry | 2005

Molecular Karyotyping: Array CGH Quality Criteria for Constitutional Genetic Diagnosis

Joris Vermeesch; Cindy Melotte; Guido Froyen; Steven Van Vooren; B Dutta; Nicole Maas; Stefan Vermeulen; Björn Menten; Frank Speleman; Bart De Moor; Paul Van Hummelen; Peter Marynen; Jean-Pierre Fryns; Koenraad Devriendt

Array CGH (comparative genomic hybridization) enables the identification of chromosomal copy number changes. The availability of clone sets covering the human genome opens the possibility for the widespread use of array CGH for both research and diagnostic purposes. In this manuscript we report on the parameters that were critical for successful implementation of the technology, assess quality criteria, and discuss the potential benefits and pitfalls of the technology for improved pre- and postnatal constitutional genetic diagnosis. We propose to name the genome-wide array CGH “molecular karyotyping,” in analogy with conventional karyotyping that uses staining methods to visualize chromosomes.


BMC Bioinformatics | 2005

arrayCGHbase: an analysis platform for comparative genomic hybridization microarrays.

Björn Menten; Filip Pattyn; Katleen De Preter; Piet Robbrecht; Evi Michels; Karen Buysse; Geert Mortier; Anne De Paepe; Steven Van Vooren; Joris Vermeesch; Yves Moreau; Bart De Moor; Stefan Vermeulen; Frank Speleman; Jo Vandesompele

BackgroundThe availability of the human genome sequence as well as the large number of physically accessible oligonucleotides, cDNA, and BAC clones across the entire genome has triggered and accelerated the use of several platforms for analysis of DNA copy number changes, amongst others microarray comparative genomic hybridization (arrayCGH). One of the challenges inherent to this new technology is the management and analysis of large numbers of data points generated in each individual experiment.ResultsWe have developed arrayCGHbase, a comprehensive analysis platform for arrayCGH experiments consisting of a MIAME (Minimal Information About a Microarray Experiment) supportive database using MySQL underlying a data mining web tool, to store, analyze, interpret, compare, and visualize arrayCGH results in a uniform and user-friendly format. Following its flexible design, arrayCGHbase is compatible with all existing and forthcoming arrayCGH platforms. Data can be exported in a multitude of formats, including BED files to map copy number information on the genome using the Ensembl or UCSC genome browser.ConclusionArrayCGHbase is a web based and platform independent arrayCGH data analysis tool, that allows users to access the analysis suite through the internet or a local intranet after installation on a private server. ArrayCGHbase is available at http://medgen.ugent.be/arrayCGHbase/.


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.


european conference on computational biology | 2008

Comparison of vocabularies, representations and ranking algorithms for gene prioritization by text mining

Shi Yu; Steven Van Vooren; Léon-Charles Tranchevent; Bart De Moor; Yves Moreau

MOTIVATION Computational gene prioritization methods are useful to help identify susceptibility genes potentially being involved in genetic disease. Recently, text mining techniques have been applied to extract prior knowledge from text-based genomic information sources and this knowledge can be used to improve the prioritization process. However, the effect of various vocabularies, representations and ranking algorithms on text mining for gene prioritization is still an issue that requires systematic and comparative studies. Therefore, a benchmark study about the vocabularies, representations and ranking algorithms in gene prioritization by text mining is discussed in this article. RESULTS We investigated 5 different domain vocabularies, 2 text representation schemes and 27 linear ranking algorithms for disease gene prioritization by text mining. We indexed 288 177 MEDLINE titles and abstracts with the TXTGate text pro.ling system and adapted the benchmark dataset of the Endeavour gene prioritization system that consists of 618 disease-causing genes. Textual gene pro.les were created and their performance for prioritization were evaluated and discussed in a comparative manner. The results show that inverse document frequency-based representation of gene term vectors performs better than the term-frequency inverse document-frequency representation. The eVOC and MESH domain vocabularies perform better than Gene Ontology, Online Mendelian Inheritance in Mans and London Dysmorphology Database. The ranking algorithms based on 1-SVM, Standard Correlation and Ward linkage method provide the best performance. AVAILABILITY The MATLAB code of the algorithm and benchmark datasets are available by request. SUPPLEMENTARY INFORMATION Supplementary data are available at Bioinformatics online.


Human Mutation | 2012

Phenotypic information in genomic variant databases enhances clinical care and research: The international standards for cytogenomic arrays consortium experience

Erin Rooney Riggs; Laird G. Jackson; David T. Miller; Steven Van Vooren

Whole‐genome analysis, now including whole‐genome sequencing, is moving rapidly into the clinical setting, leading to detection of human variation on a broader scale than ever before. Interpreting this information will depend on the availability of thorough and accurate phenotype information, and the ability to curate, store, and access data on genotype–phenotype relationships. This idea has already been demonstrated within the context of chromosomal microarray (CMA) testing. The International Standards for Cytogenomic Arrays (ISCA) Consortium promotes standardization of variant interpretation for this technology through its initiatives, including the formation of a publicly available database housing clinical CMA data. Recognizing that phenotypic data are essential for the interpretation of genomic variants, the ISCA Consortium has developed tools to facilitate the collection of these data and its deposition in a standardized structured format within the ISCA Consortium database. This rich source of phenotypic data can also be used within broader applications such as developing phenotypic profiles of emerging genomic disorders, identification of candidate regions for particular phenotypes, or creation of tools for use in clinical practice. We summarize the ISCA experience as a model for ongoing efforts incorporating phenotype data with genotype data to improve the quality of research and clinical care in human genetics. Hum Mutat 33:787–796, 2012.


American Journal of Human Genetics | 2008

Autosomal-dominant microtia linked to five tandem copies of a copy-number-variable region at chromosome 4p16.

Irina Balikova; K Martens; Cindy Melotte; Mustapha Amyere; Steven Van Vooren; Yves Moreau; David Vetrie; Heike Fiegler; Nigel P. Carter; Thomas Liehr; Miikka Vikkula; Gert Matthijs; Jean-Pierre Fryns; Ingele Casteels; Koen Devriendt; Joris Vermeesch

Recently, large-scale benign copy-number variations (CNVs)--encompassing over 12% of the genome and containing genes considered to be dosage tolerant for human development--were uncovered in the human population. Here we present a family with a novel autosomal-dominantly inherited syndrome characterized by microtia, eye coloboma, and imperforation of the nasolacrimal duct. This phenotype is linked to a cytogenetically visible alteration at 4pter consisting of five copies of a copy-number-variable region, encompassing a low-copy repeat (LCR)-rich sequence. We demonstrate that the approximately 750 kb amplicon occurs in exact tandem copies. This is the first example of an amplified CNV associated with a Mendelian disorder, a discovery that implies that genome screens for genetic disorders should include the analysis of so-called benign CNVs and LCRs.


European Journal of Human Genetics | 2008

A novel genomic disorder: a deletion of the SACS gene leading to spastic ataxia of Charlevoix-Saguenay.

Jeroen Breckpot; Yoshihisa Takiyama; Bernard Thienpont; Steven Van Vooren; Joris Vermeesch; Els Ortibus; Koenraad Devriendt

We report a Belgian patient with early-onset cerebellar ataxia, progressive spasticity, learning difficulties and moderate perceptive hearing loss. Array-Comparative Genomic Hybridisation (aCGH) detected a 1.54 Mb deletion on chromosome 13q12.12. This microdeletion occurred de novo and encompasses the SACS gene. Mutations in SACS are known to cause a recessive condition, similar to the patients phenotype, called autosomal recessive spastic ataxia of Charlevoix–Saguenay (ARSACS). Sequencing of the remaining SACS allele revealed a hemizygous mutation c.10517T>C in exon 9, resulting in an amino-acid substitution (p.F3506S). This is the first patient with ARSACS that carries a de novo chromosomal deletion comprising SACS. We demonstrate the presence of homologous segmental duplications at the breakpoint-containing regions. This suggests non-allelic homologous recombination as the mechanism generating this deletion and explains the previous description of copy number variations of this region. This finding confirms the contribution of aCGH to gene identification in autosomal recessive disorders.

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Bart De Moor

Katholieke Universiteit Leuven

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Yves Moreau

Katholieke Universiteit Leuven

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Joris Vermeesch

Katholieke Universiteit Leuven

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Bert Coessens

Katholieke Universiteit Leuven

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Björn Menten

Ghent University Hospital

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Femke Hannes

Katholieke Universiteit Leuven

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Joke Allemeersch

Katholieke Universiteit Leuven

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Jean-Pierre Fryns

Katholieke Universiteit Leuven

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