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Dive into the research topics where David Weiss Solís is active.

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Featured researches published by David Weiss Solís.


BMC Systems Biology | 2010

Low-complexity regions within protein sequences have position-dependent roles.

Alain Coletta; John W. Pinney; David Weiss Solís; James Marsh; Steve Pettifer; Teresa K. Attwood

BackgroundRegions of protein sequences with biased amino acid composition (so-called Low-Complexity Regions (LCRs)) are abundant in the protein universe. A number of studies have revealed that i) these regions show significant divergence across protein families; ii) the genetic mechanisms from which they arise lends them remarkable degrees of compositional plasticity. They have therefore proved difficult to compare using conventional sequence analysis techniques, and functions remain to be elucidated for most of them. Here we undertake a systematic investigation of LCRs in order to explore their possible functional significance, placed in the particular context of Protein-Protein Interaction (PPI) networks and Gene Ontology (GO)-term analysis.ResultsIn keeping with previous results, we found that LCR-containing proteins tend to have more binding partners across different PPI networks than proteins that have no LCRs. More specifically, our study suggests i) that LCRs are preferentially positioned towards the protein sequence extremities and, in contrast with centrally-located LCRs, such terminal LCRs show a correlation between their lengths and degrees of connectivity, and ii) that centrally-located LCRs are enriched with transcription-related GO terms, while terminal LCRs are enriched with translation and stress response-related terms.ConclusionsOur results suggest not only that LCRs may be involved in flexible binding associated with specific functions, but also that their positions within a sequence may be important in determining both their binding properties and their biological roles.


Cancer Research | 2007

Human Thyroid Tumor Cell Lines Derived from Different Tumor Types Present a Common Dedifferentiated Phenotype

Wilma C G van Staveren; David Weiss Solís; Laurent Delys; Laurence Duprez; Guy Andry; Brigitte Franc; G. A. Thomas; Frédérick Libert; Jacques Emile Dumont; Vincent Detours; Carine Maenhaut

Cell lines are crucial to elucidate mechanisms of tumorigenesis and serve as tools for cancer treatment screenings. Therefore, careful validation of whether these models have conserved properties of in vivo tumors is highly important. Thyrocyte-derived tumors are very interesting for cancer biology studies because from one cell type, at least five histologically characterized different benign and malignant tumor types can arise. To investigate whether thyroid tumor-derived cell lines are representative in vitro models, characteristics of eight of those cell lines were investigated with microarrays, differentiation markers, and karyotyping. Our results indicate that these cell lines derived from differentiated and undifferentiated tumor types have evolved in vitro into similar phenotypes with gene expression profiles the closest to in vivo undifferentiated tumors. Accordingly, the absence of expression of most thyrocyte-specific genes, the nonresponsiveness to thyrotropin, as well as their large number of chromosomal abnormalities, suggest that these cell lines have acquired characteristics of fully dedifferentiated cells. They represent the outcome of an adaptation and evolution in vitro, which questions the reliability of these cell lines as models for differentiated tumors. However, they may represent useful models for undifferentiated cancers, and by their comparison with differentiated cells, can help to define the genes involved in the differentiation/dedifferentiation process. The use of any cell line as a model for a cancer therefore requires prior careful and thorough validation for the investigated property.


BMC Bioinformatics | 2012

Unlocking the potential of publicly available microarray data using inSilicoDb and inSilicoMerging R/Bioconductor packages

Jonatan Taminau; Stijn Meganck; Cosmin Lazar; David Steenhoff; Alain Coletta; Colin Molter; Robin Duque; Virginie de Schaetzen; David Weiss Solís; Hugues Bersini; Ann Nowé

BackgroundWith an abundant amount of microarray gene expression data sets available through public repositories, new possibilities lie in combining multiple existing data sets. In this new context, analysis itself is no longer the problem, but retrieving and consistently integrating all this data before delivering it to the wide variety of existing analysis tools becomes the new bottleneck.ResultsWe present the newly released inSilicoMerging R/Bioconductor package which, together with the earlier released inSilicoDb R/Bioconductor package, allows consistent retrieval, integration and analysis of publicly available microarray gene expression data sets. Inside the inSilicoMerging package a set of five visual and six quantitative validation measures are available as well.ConclusionsBy providing (i) access to uniformly curated and preprocessed data, (ii) a collection of techniques to remove the batch effects between data sets from different sources, and (iii) several validation tools enabling the inspection of the integration process, these packages enable researchers to fully explore the potential of combining gene expression data for downstream analysis. The power of using both packages is demonstrated by programmatically retrieving and integrating gene expression studies from the InSilico DB repository [https://insilicodb.org/app/].


Genome Biology | 2012

InSilico DB genomic datasets hub: an efficient starting point for analyzing genome-wide studies in GenePattern, Integrative Genomics Viewer, and R/Bioconductor

Alain Coletta; Colin Molter; Robin Duque; David Steenhoff; Jonatan Taminau; Virginie de Schaetzen; Stijn Meganck; Cosmin Lazar; David Venet; Vincent Detours; Ann Nowé; Hugues Bersini; David Weiss Solís

Genomics datasets are increasingly useful for gaining biomedical insights, with adoption in the clinic underway. However, multiple hurdles related to data management stand in the way of their efficient large-scale utilization. The solution proposed is a web-based data storage hub. Having clear focus, flexibility and adaptability, InSilico DB seamlessly connects genomics dataset repositories to state-of-the-art and free GUI and command-line data analysis tools. The InSilico DB platform is a powerful collaborative environment, with advanced capabilities for biocuration, dataset sharing, and dataset subsetting and combination. InSilico DB is available from https://insilicodb.org.


Bioinformatics | 2011

inSilicoDb: an R/Bioconductor package for accessing human Affymetrix expert-curated datasets from GEO

Jonatan Taminau; David Steenhoff; Alain Coletta; Stijn Meganck; Cosmin Lazar; Virginie de Schaetzen; Robin Duque; Colin Molter; Hugues Bersini; Ann Nowé; David Weiss Solís

Microarray technology has become an integral part of biomedical research and increasing amounts of datasets become available through public repositories. However, re-use of these datasets is severely hindered by unstructured, missing or incorrect biological samples information; as well as the wide variety of preprocessing methods in use. The inSilicoDb R/Bioconductor package is a command-line front-end to the InSilico DB, a web-based database currently containing 86 104 expert-curated human Affymetrix expression profiles compiled from 1937 GEO repository series. The use of this package builds on the Bioconductor projects focus on reproducibility by enabling a clear workflow in which not only analysis, but also the retrieval of verified data is supported.


IEEE/ACM Transactions on Computational Biology and Bioinformatics | 2013

GENESHIFT: A Nonparametric Approach for Integrating Microarray Gene Expression Data Based on the Inner Product as a Distance Measure between the Distributions of Genes

Cosmin Lazar; Jonatan Taminau; Stijn Meganck; David Steenhoff; Alain Coletta; David Weiss Solís; Colin Molter; Robin Duque; Hugues Bersini; Ann Nowé

The potential of microarray gene expression (MAGE) data is only partially explored due to the limited number of samples in individual studies. This limitation can be surmounted by merging or integrating data sets originating from independent MAGE experiments, which are designed to study the same biological problem. However, this process is hindered by batch effects that are study-dependent and result in random data distortion; therefore numerical transformations are needed to render the integration of different data sets accurate and meaningful. Our contribution in this paper is two-fold. First we propose GENESHIFT, a new nonparametric batch effect removal method based on two key elements from statistics: empirical density estimation and the inner product as a distance measure between two probability density functions; second we introduce a new validation index of batch effect removal methods based on the observation that samples from two independent studies drawn from a same population should exhibit similar probability density functions. We evaluated and compared the GENESHIFT method with four other state-of-the-art methods for batch effect removal: Batch-mean centering, empirical Bayes or COMBAT, distance-weighted discrimination, and cross-platform normalization. Several validation indices providing complementary information about the efficiency of batch effect removal methods have been employed in our validation framework. The results show that none of the methods clearly outperforms the others. More than that, most of the methods used for comparison perform very well with respect to some validation indices while performing very poor with respect to others. GENESHIFT exhibits robust performances and its average rank is the highest among the average ranks of all methods used for comparison.


BMC Genomics | 2015

Crowdsourced direct-to-consumer genomic analysis of a family quartet

Manuel Corpas; Willy Valdivia-Granda; Nazareth Torres; Bastian Greshake; Alain Coletta; Alexej Knaus; Andrew P. Harrison; Mike Cariaso; Federico Morán; Fiona Nielsen; Daniel Swan; David Weiss Solís; Peter Krawitz; Frank Schacherer; Peter Schols; Huangming Yang; Pascal Borry; Gustavo Glusman; Peter N. Robinson

BackgroundWe describe the pioneering experience of a Spanish family pursuing the goal of understanding their own personal genetic data to the fullest possible extent using Direct to Consumer (DTC) tests. With full informed consent from the Corpas family, all genotype, exome and metagenome data from members of this family, are publicly available under a public domain Creative Commons 0 (CC0) license waiver. All scientists or companies analysing these data (“the Corpasome”) were invited to return results to the family.MethodsWe released 5 genotypes, 4 exomes, 1 metagenome from the Corpas family via a blog and figshare under a public domain license, inviting scientists to join the crowdsourcing efforts to analyse the genomes in return for coauthorship or acknowldgement in derived papers. Resulting analysis data were compiled via social media and direct email.ResultsHere we present the results of our investigations, combining the crowdsourced contributions and our own efforts. Four companies offering annotations for genomic variants were applied to four family exomes: BIOBASE, Ingenuity, Diploid, and GeneTalk. Starting from a common VCF file and after selecting for significant results from company reports, we find no overlap among described annotations. We additionally report on a gut microbiome analysis of a member of the Corpas family.ConclusionsThis study presents an analysis of a diverse set of tools and methods offered by four DTC companies. The striking discordance of the results mirrors previous findings with respect to DTC analysis of SNP chip data, and highlights the difficulties of using DTC data for preventive medical care. To our knowledge, the data and analysis results from our crowdsourced study represent the most comprehensive exome and analysis for a family quartet using solely DTC data generation to date.


Proceedings of the National Academy of Sciences of the United States of America | 2006

Gene expression in human thyrocytes and autonomous adenomas reveals suppression of negative feedbacks in tumorigenesis

Wilma C G van Staveren; David Weiss Solís; Laurent Delys; David Venet; Matteo Cappello; Guy Andry; Jacques Emile Dumont; Frédérick Libert; Vincent Detours; Carine Maenhaut


Experimental Cell Research | 2007

Long-term EGF/serum-treated human thyrocytes mimic papillary thyroid carcinomas with regard to gene expression.

Aline Hebrant; Wilma C G van Staveren; Laurent Delys; David Weiss Solís; Tatiana Bogdanova; Guy Andry; Pierre P. Roger; Jacques Emile Dumont; Frédérick Libert; Carine Maenhaut


Experimental Cell Research | 2007

Corrigendum to “Long-term EGF/serum-treated human thyrocytes mimic papillary thyroid carcinomas with regard to gene expression” [Exp. Cell Res. 313 (2007) 3276–3284]

Aline Hebrant; Wilma C G van Staveren; Laurent Delys; David Weiss Solís; Tatiana Bogdanova; Guy Andry; Pierre P. Roger; Jacques Emile Dumont; Frédérick Libert; Carine Maenhaut

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Alain Coletta

Université libre de Bruxelles

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Hugues Bersini

Université libre de Bruxelles

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Ann Nowé

Vrije Universiteit Brussel

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Jonatan Taminau

Vrije Universiteit Brussel

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Stijn Meganck

Vrije Universiteit Brussel

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Wilma C G van Staveren

Université libre de Bruxelles

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Carine Maenhaut

Université libre de Bruxelles

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Colin Molter

Université libre de Bruxelles

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Cosmin Lazar

Vrije Universiteit Brussel

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Frédérick Libert

Université libre de Bruxelles

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