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Dive into the research topics where Gert Hulselmans is active.

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Featured researches published by Gert Hulselmans.


Nature Genetics | 2013

Exome sequencing identifies mutation in CNOT3 and ribosomal genes RPL5 and RPL10 in T-cell acute lymphoblastic leukemia

Kim De Keersmaecker; Zeynep Kalender Atak; Ning Li; Carmen Vicente; Stephanie Patchett; Tiziana Girardi; Valentina Gianfelici; Ellen Geerdens; Emmanuelle Clappier; Michaël Porcu; Idoya Lahortiga; Rossella Luca; Jiekun Yan; Gert Hulselmans; Hilde Vranckx; Roel Vandepoel; Bram Sweron; Kris Jacobs; Nicole Mentens; Iwona Wlodarska; Barbara Cauwelier; Jacqueline Cloos; Jean Soulier; Anne Uyttebroeck; Claudia Bagni; Bassem A. Hassan; Peter Vandenberghe; Arlen W. Johnson; Stein Aerts; Jan Cools

T-cell acute lymphoblastic leukemia (T-ALL) is caused by the cooperation of multiple oncogenic lesions. We used exome sequencing on 67 T-ALLs to gain insight into the mutational spectrum in these leukemias. We detected protein-altering mutations in 508 genes, with an average of 8.2 mutations in pediatric and 21.0 mutations in adult T-ALL. Using stringent filtering, we predict seven new oncogenic driver genes in T-ALL. We identify CNOT3 as a tumor suppressor mutated in 7 of 89 (7.9%) adult T-ALLs, and its knockdown causes tumors in a sensitized Drosophila melanogaster model. In addition, we identify mutations affecting the ribosomal proteins RPL5 and RPL10 in 12 of 122 (9.8%) pediatric T-ALLs, with recurrent alterations of Arg98 in RPL10. Yeast and lymphoid cells expressing the RPL10 Arg98Ser mutant showed a ribosome biogenesis defect. Our data provide insights into the mutational landscape of pediatric versus adult T-ALL and identify the ribosome as a potential oncogenic factor.


PLOS Computational Biology | 2014

iRegulon: from a gene list to a gene regulatory network using large motif and track collections.

Rekin's Janky; Annelien Verfaillie; Hana Imrichova; Bram Van de Sande; Laura Standaert; Valerie Christiaens; Gert Hulselmans; Koen Herten; Marina Naval Sanchez; Delphine Potier; Dmitry Svetlichnyy; Zeynep Kalender Atak; Mark Fiers; Jean-Christophe Marine; Stein Aerts

Identifying master regulators of biological processes and mapping their downstream gene networks are key challenges in systems biology. We developed a computational method, called iRegulon, to reverse-engineer the transcriptional regulatory network underlying a co-expressed gene set using cis-regulatory sequence analysis. iRegulon implements a genome-wide ranking-and-recovery approach to detect enriched transcription factor motifs and their optimal sets of direct targets. We increase the accuracy of network inference by using very large motif collections of up to ten thousand position weight matrices collected from various species, and linking these to candidate human TFs via a motif2TF procedure. We validate iRegulon on gene sets derived from ENCODE ChIP-seq data with increasing levels of noise, and we compare iRegulon with existing motif discovery methods. Next, we use iRegulon on more challenging types of gene lists, including microRNA target sets, protein-protein interaction networks, and genetic perturbation data. In particular, we over-activate p53 in breast cancer cells, followed by RNA-seq and ChIP-seq, and could identify an extensive up-regulated network controlled directly by p53. Similarly we map a repressive network with no indication of direct p53 regulation but rather an indirect effect via E2F and NFY. Finally, we generalize our computational framework to include regulatory tracks such as ChIP-seq data and show how motif and track discovery can be combined to map functional regulatory interactions among co-expressed genes. iRegulon is available as a Cytoscape plugin from http://iregulon.aertslab.org.


Nature Communications | 2015

Decoding the regulatory landscape of melanoma reveals TEADS as regulators of the invasive cell state

Annelien Verfaillie; Hana Imrichova; Zeynep Kalender Atak; Michael Dewaele; Florian Rambow; Gert Hulselmans; Christiaens; Dmitry Svetlichnyy; Flavie Luciani; Van den Mooter L; Claerhout S; Mark Fiers; Fabrice Journé; Ghanem Elias Ghanem; Carl Herrmann; Georg Halder; Jean-Christophe Marine; Stein Aerts

Transcriptional reprogramming of proliferative melanoma cells into a phenotypically distinct invasive cell subpopulation is a critical event at the origin of metastatic spreading. Here we generate transcriptome, open chromatin and histone modification maps of melanoma cultures; and integrate this data with existing transcriptome and DNA methylation profiles from tumour biopsies to gain insight into the mechanisms underlying this key reprogramming event. This shows thousands of genomic regulatory regions underlying the proliferative and invasive states, identifying SOX10/MITF and AP-1/TEAD as regulators, respectively. Knockdown of TEADs shows a previously unrecognized role in the invasive gene network and establishes a causative link between these transcription factors, cell invasion and sensitivity to MAPK inhibitors. Using regulatory landscapes and in silico analysis, we show that transcriptional reprogramming underlies the distinct cellular states present in melanoma. Furthermore, it reveals an essential role for the TEADs, linking it to clinically relevant mechanisms such as invasion and resistance.


PLOS Genetics | 2013

Comprehensive analysis of transcriptome variation uncovers known and novel driver events in T-cell acute lymphoblastic leukemia

Zeynep Kalender Atak; Valentina Gianfelici; Gert Hulselmans; Kim De Keersmaecker; Arun George Devasia; Ellen Geerdens; Nicole Mentens; Sabina Chiaretti; Kaat Durinck; Anne Uyttebroeck; Peter Vandenberghe; Iwona Wlodarska; Jacqueline Cloos; Robin Foà; Franki Speleman; Jan Cools; Stein Aerts

RNA-seq is a promising technology to re-sequence protein coding genes for the identification of single nucleotide variants (SNV), while simultaneously obtaining information on structural variations and gene expression perturbations. We asked whether RNA-seq is suitable for the detection of driver mutations in T-cell acute lymphoblastic leukemia (T-ALL). These leukemias are caused by a combination of gene fusions, over-expression of transcription factors and cooperative point mutations in oncogenes and tumor suppressor genes. We analyzed 31 T-ALL patient samples and 18 T-ALL cell lines by high-coverage paired-end RNA-seq. First, we optimized the detection of SNVs in RNA-seq data by comparing the results with exome re-sequencing data. We identified known driver genes with recurrent protein altering variations, as well as several new candidates including H3F3A, PTK2B, and STAT5B. Next, we determined accurate gene expression levels from the RNA-seq data through normalizations and batch effect removal, and used these to classify patients into T-ALL subtypes. Finally, we detected gene fusions, of which several can explain the over-expression of key driver genes such as TLX1, PLAG1, LMO1, or NKX2-1; and others result in novel fusion transcripts encoding activated kinases (SSBP2-FER and TPM3-JAK2) or involving MLLT10. In conclusion, we present novel analysis pipelines for variant calling, variant filtering, and expression normalization on RNA-seq data, and successfully applied these for the detection of translocations, point mutations, INDELs, exon-skipping events, and expression perturbations in T-ALL.


Blood | 2014

JAK3 mutants transform hematopoietic cells through JAK1 activation, causing T-cell acute lymphoblastic leukemia in a mouse model

Sandrine Degryse; Charles E. de Bock; Luk Cox; Sofie Demeyer; Olga Gielen; Nicole Mentens; Kris Jacobs; Ellen Geerdens; Valentina Gianfelici; Gert Hulselmans; Mark Fiers; Stein Aerts; J Meijerink; Thomas Tousseyn; Jan Cools

JAK3 is a tyrosine kinase that associates with the common γ chain of cytokine receptors and is recurrently mutated in T-cell acute lymphoblastic leukemia (T-ALL). We tested the transforming properties of JAK3 pseudokinase and kinase domain mutants using in vitro and in vivo assays. Most, but not all, JAK3 mutants transformed cytokine-dependent Ba/F3 or MOHITO cell lines to cytokine-independent proliferation. JAK3 pseudokinase mutants were dependent on Jak1 kinase activity for cellular transformation, whereas the JAK3 kinase domain mutant could transform cells in a Jak1 kinase-independent manner. Reconstitution of the IL7 receptor signaling complex in 293T cells showed that JAK3 mutants required receptor binding to mediate downstream STAT5 phosphorylation. Mice transplanted with bone marrow progenitor cells expressing JAK3 mutants developed a long-latency transplantable T-ALL-like disease, characterized by an accumulation of immature CD8(+) T cells. In vivo treatment of leukemic mice with the JAK3 selective inhibitor tofacitinib reduced the white blood cell count and caused leukemic cell apoptosis. Our data show that JAK3 mutations are drivers of T-ALL and require the cytokine receptor complex for transformation. These results warrant further investigation of JAK1/JAK3 inhibitors for the treatment of T-ALL.


Nucleic Acids Research | 2015

i-cisTarget 2015 update: generalized cis-regulatory enrichment analysis in human, mouse and fly

Hana Imrichova; Gert Hulselmans; Zeynep Kalender Atak; Delphine Potier; Stein Aerts

i-cisTarget is a web tool to predict regulators of a set of genomic regions, such as ChIP-seq peaks or co-regulated/similar enhancers. i-cisTarget can also be used to identify upstream regulators and their target enhancers starting from a set of co-expressed genes. Whereas the original version of i-cisTarget was focused on Drosophila data, the 2015 update also provides support for human and mouse data. i-cisTarget detects transcription factor motifs (position weight matrices) and experimental data tracks (e.g. from ENCODE, Roadmap Epigenomics) that are enriched in the input set of regions. As experimental data tracks we include transcription factor ChIP-seq data, histone modification ChIP-seq data and open chromatin data. The underlying processing method is based on a ranking-and-recovery procedure, allowing accurate determination of enrichment across heterogeneous datasets, while also discriminating direct from indirect target regions through a ‘leading edge’ analysis. We illustrate i-cisTarget on various Ewing sarcoma datasets to identify EWS-FLI1 targets starting from ChIP-seq, differential ATAC-seq, differential H3K27ac and differential gene expression data. Use of i-cisTarget is free and open to all, and there is no login requirement. Address: http://gbiomed.kuleuven.be/apps/lcb/i-cisTarget.


Nature Methods | 2017

SCENIC: single-cell regulatory network inference and clustering

Sara Aibar; Thomas Moerman; Vân Anh Huynh-Thu; Hana Imrichova; Gert Hulselmans; Florian Rambow; Jean-Christophe Marine; Pierre Geurts; Jan Aerts; Joost van den Oord; Zeynep Kalender Atak; Jasper Wouters; Stein Aerts

We present SCENIC, a computational method for simultaneous gene regulatory network reconstruction and cell-state identification from single-cell RNA-seq data (http://scenic.aertslab.org). On a compendium of single-cell data from tumors and brain, we demonstrate that cis-regulatory analysis can be exploited to guide the identification of transcription factors and cell states. SCENIC provides critical biological insights into the mechanisms driving cellular heterogeneity.


Cell Reports | 2014

Mapping Gene Regulatory Networks in Drosophila Eye Development by Large-Scale Transcriptome Perturbations and Motif Inference

Delphine Potier; Kristofer Davie; Gert Hulselmans; Marina Naval Sanchez; Lotte Haagen; Vân Anh Huynh-Thu; Duygu Koldere; Arzu Celik; Pierre Geurts; Valerie Christiaens; Stein Aerts

Genome control is operated by transcription factors (TFs) controlling their target genes by binding to promoters and enhancers. Conceptually, the interactions between TFs, their binding sites, and their functional targets are represented by gene regulatory networks (GRNs). Deciphering in vivo GRNs underlying organ development in an unbiased genome-wide setting involves identifying both functional TF-gene interactions and physical TF-DNA interactions. To reverse engineer the GRNs of eye development in Drosophila, we performed RNA-seq across 72 genetic perturbations and sorted cell types and inferred a coexpression network. Next, we derived direct TF-DNA interactions using computational motif inference, ultimately connecting 241 TFs to 5,632 direct target genes through 24,926 enhancers. Using this network, we found network motifs, cis-regulatory codes, and regulators of eye development. We validate the predicted target regions of Grainyhead by ChIP-seq and identify this factor as a general cofactor in the eye network, being bound to thousands of nucleosome-free regions.


Genome Research | 2016

Multiplex enhancer-reporter assays uncover unsophisticated TP53 enhancer logic

Annelien Verfaillie; Dmitry Svetlichnyy; Hana Imrichova; Kristofer Davie; Mark Fiers; Zeynep Kalender Atak; Gert Hulselmans; Valerie Christiaens; Stein Aerts

Transcription factors regulate their target genes by binding to regulatory regions in the genome. Although the binding preferences of TP53 are known, it remains unclear what distinguishes functional enhancers from nonfunctional binding. In addition, the genome is scattered with recognition sequences that remain unoccupied. Using two complementary techniques of multiplex enhancer-reporter assays, we discovered that functional enhancers could be discriminated from nonfunctional binding events by the occurrence of a single TP53 canonical motif. By combining machine learning with a meta-analysis of TP53 ChIP-seq data sets, we identified a core set of more than 1000 responsive enhancers in the human genome. This TP53 cistrome is invariably used between cell types and experimental conditions, whereas differences among experiments can be attributed to indirect nonfunctional binding events. Our data suggest that TP53 enhancers represent a class of unsophisticated cell-autonomous enhancers containing a single TP53 binding site, distinct from complex developmental enhancers that integrate signals from multiple transcription factors.


Cell | 2018

A Single-Cell Transcriptome Atlas of the Aging Drosophila Brain

Kristofer Davie; Jasper Janssens; Duygu Koldere; Maxime De Waegeneer; Uli Pech; Łukasz Kreft; Sara Aibar; Samira Makhzami; Valerie Christiaens; Suresh Poovathingal; Gert Hulselmans; Katina I. Spanier; Thomas Moerman; Bram Vanspauwen; Sarah Geurs; Thierry Voet; Jeroen Lammertyn; Bernard Thienpont; Sha Liu; Nikos Konstantinides; Mark Fiers; Patrik Verstreken; Stein Aerts

Summary The diversity of cell types and regulatory states in the brain, and how these change during aging, remains largely unknown. We present a single-cell transcriptome atlas of the entire adult Drosophila melanogaster brain sampled across its lifespan. Cell clustering identified 87 initial cell clusters that are further subclustered and validated by targeted cell-sorting. Our data show high granularity and identify a wide range of cell types. Gene network analyses using SCENIC revealed regulatory heterogeneity linked to energy consumption. During aging, RNA content declines exponentially without affecting neuronal identity in old brains. This single-cell brain atlas covers nearly all cells in the normal brain and provides the tools to study cellular diversity alongside other Drosophila and mammalian single-cell datasets in our unique single-cell analysis platform: SCope (http://scope.aertslab.org). These results, together with SCope, allow comprehensive exploration of all transcriptional states of an entire aging brain.

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Dive into the Gert Hulselmans's collaboration.

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Stein Aerts

Katholieke Universiteit Leuven

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Zeynep Kalender Atak

Katholieke Universiteit Leuven

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Hana Imrichova

Katholieke Universiteit Leuven

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Valerie Christiaens

Katholieke Universiteit Leuven

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Ellen Geerdens

Katholieke Universiteit Leuven

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Anne Uyttebroeck

Katholieke Universiteit Leuven

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Annelien Verfaillie

Katholieke Universiteit Leuven

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Peter Vandenberghe

Katholieke Universiteit Leuven

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Jacqueline Cloos

VU University Medical Center

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Jan Cools

Katholieke Universiteit Leuven

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