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1.
Blood ; 138(9): 773-784, 2021 09 02.
Article in English | MEDLINE | ID: mdl-33876209

ABSTRACT

Acute leukemias (ALs) of ambiguous lineage are a heterogeneous group of high-risk leukemias characterized by coexpression of myeloid and lymphoid markers. In this study, we identified a distinct subgroup of immature acute leukemias characterized by a broadly variable phenotype, covering acute myeloid leukemia (AML, M0 or M1), T/myeloid mixed-phenotype acute leukemia (T/M MPAL), and early T-cell precursor acute lymphoblastic leukemia (ETP-ALL). Rearrangements at 14q32/BCL11B are the cytogenetic hallmark of this entity. In our screening of 915 hematological malignancies, there were 202 AML and 333 T-cell acute lymphoblastic leukemias (T-ALL: 58, ETP; 178, non-ETP; 8, T/M MPAL; 89, not otherwise specified). We identified 20 cases of immature leukemias (4% of AML and 3.6% of T-ALL), harboring 4 types of 14q32/BCL11B translocations: t(2,14)(q22.3;q32) (n = 7), t(6;14)(q25.3;q32) (n = 9), t(7;14)(q21.2;q32) (n = 2), and t(8;14)(q24.2;q32) (n = 2). The t(2;14) produced a ZEB2-BCL11B fusion transcript, whereas the other 3 rearrangements displaced transcriptionally active enhancer sequences close to BCL11B without producing fusion genes. All translocations resulted in the activation of BCL11B, a regulator of T-cell differentiation associated with transcriptional corepressor complexes in mammalian cells. The expression of BCL11B behaved as a disease biomarker that was present at diagnosis, but not in remission. Deregulation of BCL11B co-occurred with variants at FLT3 and at epigenetic modulators, most frequently the DNMT3A, TET2, and/or WT1 genes. Transcriptome analysis identified a specific expression signature, with significant downregulation of BCL11B targets, and clearly separating BCL11B AL from AML, T-ALL, and ETP-ALL. Remarkably, an ex vivo drug-sensitivity profile identified a panel of compounds with effective antileukemic activity.


Subject(s)
Biomarkers, Tumor , Chromosomes, Human, Pair 14/genetics , Gene Expression Regulation, Leukemic , Leukemia, Myeloid, Acute , Precursor T-Cell Lymphoblastic Leukemia-Lymphoma , Repressor Proteins , Translocation, Genetic , Tumor Suppressor Proteins , Adolescent , Adult , Aged , Biomarkers, Tumor/biosynthesis , Biomarkers, Tumor/genetics , Child , Child, Preschool , Female , Gene Expression Profiling , Humans , Leukemia, Myeloid, Acute/genetics , Leukemia, Myeloid, Acute/metabolism , Leukemia, Myeloid, Acute/pathology , Male , Middle Aged , Precursor T-Cell Lymphoblastic Leukemia-Lymphoma/genetics , Precursor T-Cell Lymphoblastic Leukemia-Lymphoma/metabolism , Precursor T-Cell Lymphoblastic Leukemia-Lymphoma/pathology , Repressor Proteins/biosynthesis , Repressor Proteins/genetics , Tumor Suppressor Proteins/biosynthesis , Tumor Suppressor Proteins/genetics
2.
Nat Cell Biol ; 22(8): 986-998, 2020 08.
Article in English | MEDLINE | ID: mdl-32753671

ABSTRACT

Melanoma cells can switch between a melanocytic and a mesenchymal-like state. Scattered evidence indicates that additional intermediate state(s) may exist. Here, to search for such states and decipher their underlying gene regulatory network (GRN), we studied 10 melanoma cultures using single-cell RNA sequencing (RNA-seq) as well as 26 additional cultures using bulk RNA-seq. Although each culture exhibited a unique transcriptome, we identified shared GRNs that underlie the extreme melanocytic and mesenchymal states and the intermediate state. This intermediate state is corroborated by a distinct chromatin landscape and is governed by the transcription factors SOX6, NFATC2, EGR3, ELF1 and ETV4. Single-cell migration assays confirmed the intermediate migratory phenotype of this state. Using time-series sampling of single cells after knockdown of SOX10, we unravelled the sequential and recurrent arrangement of GRNs during phenotype switching. Taken together, these analyses indicate that an intermediate state exists and is driven by a distinct and stable 'mixed' GRN rather than being a symbiotic heterogeneous mix of cells.


Subject(s)
Gene Expression Regulation, Neoplastic , Melanoma/genetics , Cell Line, Tumor , Cell Movement , Gene Regulatory Networks , Humans , Melanoma/pathology , Phenotype , RNA, Neoplasm , RNA-Seq , SOXE Transcription Factors/metabolism , Transcription Factors/metabolism , Transcription, Genetic
3.
Brief Funct Genomics ; 17(4): 246-254, 2018 07 01.
Article in English | MEDLINE | ID: mdl-29342231

ABSTRACT

Single-cell techniques are advancing rapidly and are yielding unprecedented insight into cellular heterogeneity. Mapping the gene regulatory networks (GRNs) underlying cell states provides attractive opportunities to mechanistically understand this heterogeneity. In this review, we discuss recently emerging methods to map GRNs from single-cell transcriptomics data, tackling the challenge of increased noise levels and data sparsity compared with bulk data, alongside increasing data volumes. Next, we discuss how new techniques for single-cell epigenomics, such as single-cell ATAC-seq and single-cell DNA methylation profiling, can be used to decipher gene regulatory programmes. We finally look forward to the application of single-cell multi-omics and perturbation techniques that will likely play important roles for GRN inference in the future.


Subject(s)
Gene Expression Profiling/methods , Gene Regulatory Networks , Sequence Analysis, RNA/methods , Single-Cell Analysis/methods , Epigenomics/methods
4.
Genome Med ; 9(1): 80, 2017 08 30.
Article in English | MEDLINE | ID: mdl-28854983

ABSTRACT

The identification of functional non-coding mutations is a key challenge in the field of genomics. Here we introduce µ-cisTarget to filter, annotate and prioritize cis-regulatory mutations based on their putative effect on the underlying "personal" gene regulatory network. We validated µ-cisTarget by re-analyzing the TAL1 and LMO1 enhancer mutations in T-ALL, and the TERT promoter mutation in melanoma. Next, we re-sequenced the full genomes of ten cancer cell lines and used matched transcriptome data and motif discovery to identify master regulators with de novo binding sites that result in the up-regulation of nearby oncogenic drivers. µ-cisTarget is available from http://mucistarget.aertslab.org .


Subject(s)
DNA Mutational Analysis/methods , Gene Regulatory Networks , Genes, Neoplasm , Mutation , Neoplasms/genetics , Regulatory Sequences, Nucleic Acid , Algorithms , Binding Sites , Cell Line, Tumor , Female , Gene Expression Profiling , Genomics/methods , Humans , Male , Neoplasms/metabolism , Precision Medicine/methods , Transcription Factors/metabolism
5.
Curr Opin Genet Dev ; 43: 82-92, 2017 Apr.
Article in English | MEDLINE | ID: mdl-28129557

ABSTRACT

Gene regulatory networks determine cellular identity. In cancer, aberrations of gene networks are caused by driver mutations that often affect transcription factors and chromatin modifiers. Nevertheless, gene transcription in cancer follows the same cis-regulatory rules as normal cells, and cancer cells have served as convenient model systems to study transcriptional regulation. Tumours often show regulatory heterogeneity, with subpopulations of cells in different transcriptional states, which has important therapeutic implications. Here, we review recent experimental and computational techniques to reverse engineer cancer gene networks using transcriptome and epigenome data. New algorithms, data integration strategies, and increasing amounts of single cell genomics data provide exciting opportunities to model dynamic regulatory states at unprecedented resolution.


Subject(s)
Gene Regulatory Networks/genetics , Neoplasms/genetics , Transcription Factors/genetics , Transcription, Genetic , Binding Sites , Computational Biology , Gene Expression Regulation, Neoplastic , Genomics , Humans , Neoplasms/pathology , Promoter Regions, Genetic
6.
Genome Res ; 26(7): 882-95, 2016 07.
Article in English | MEDLINE | ID: mdl-27197205

ABSTRACT

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.


Subject(s)
Enhancer Elements, Genetic , Transcriptional Activation , Tumor Suppressor Protein p53/physiology , Binding Sites , Biological Assay , Genes, Reporter , Humans , MCF-7 Cells , Protein Binding
7.
PLoS Comput Biol ; 11(11): e1004590, 2015 Nov.
Article in English | MEDLINE | ID: mdl-26562774

ABSTRACT

Cancer genomes contain vast amounts of somatic mutations, many of which are passenger mutations not involved in oncogenesis. Whereas driver mutations in protein-coding genes can be distinguished from passenger mutations based on their recurrence, non-coding mutations are usually not recurrent at the same position. Therefore, it is still unclear how to identify cis-regulatory driver mutations, particularly when chromatin data from the same patient is not available, thus relying only on sequence and expression information. Here we use machine-learning methods to predict functional regulatory regions using sequence information alone, and compare the predicted activity of the mutated region with the reference sequence. This way we define the Predicted Regulatory Impact of a Mutation in an Enhancer (PRIME). We find that the recently identified driver mutation in the TAL1 enhancer has a high PRIME score, representing a "gain-of-target" for MYB, whereas the highly recurrent TERT promoter mutation has a surprisingly low PRIME score. We trained Random Forest models for 45 cancer-related transcription factors, and used these to score variations in the HeLa genome and somatic mutations across more than five hundred cancer genomes. Each model predicts only a small fraction of non-coding mutations with a potential impact on the function of the encompassing regulatory region. Nevertheless, as these few candidate driver mutations are often linked to gains in chromatin activity and gene expression, they may contribute to the oncogenic program by altering the expression levels of specific oncogenes and tumor suppressor genes.


Subject(s)
Models, Statistical , Mutation/genetics , Neoplasms/genetics , Regulatory Sequences, Nucleic Acid/genetics , Transcription Factors/genetics , Algorithms , Binding Sites/genetics , Computational Biology/methods , Genome , HeLa Cells , Humans , Machine Learning
8.
PLoS Comput Biol ; 10(7): e1003731, 2014 Jul.
Article in English | MEDLINE | ID: mdl-25058159

ABSTRACT

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.


Subject(s)
Computational Biology/methods , Gene Expression Regulation/genetics , Gene Regulatory Networks/genetics , Transcription Factors/genetics , Breast Neoplasms , Cell Line, Tumor , Chromatin Immunoprecipitation , Databases, Genetic , Genes, p53 , Humans , Models, Genetic , Sequence Analysis, RNA
9.
PLoS One ; 7(6): e38463, 2012.
Article in English | MEDLINE | ID: mdl-22675565

ABSTRACT

With the advent of whole-genome and whole-exome sequencing, high-quality catalogs of recurrently mutated cancer genes are becoming available for many cancer types. Increasing access to sequencing technology, including bench-top sequencers, provide the opportunity to re-sequence a limited set of cancer genes across a patient cohort with limited processing time. Here, we re-sequenced a set of cancer genes in T-cell acute lymphoblastic leukemia (T-ALL) using Nimblegen sequence capture coupled with Roche/454 technology. First, we investigated how a maximal sensitivity and specificity of mutation detection can be achieved through a benchmark study. We tested nine combinations of different mapping and variant-calling methods, varied the variant calling parameters, and compared the predicted mutations with a large independent validation set obtained by capillary re-sequencing. We found that the combination of two mapping algorithms, namely BWA-SW and SSAHA2, coupled with the variant calling algorithm Atlas-SNP2 yields the highest sensitivity (95%) and the highest specificity (93%). Next, we applied this analysis pipeline to identify mutations in a set of 58 cancer genes, in a panel of 18 T-ALL cell lines and 15 T-ALL patient samples. We confirmed mutations in known T-ALL drivers, including PHF6, NF1, FBXW7, NOTCH1, KRAS, NRAS, PIK3CA, and PTEN. Interestingly, we also found mutations in several cancer genes that had not been linked to T-ALL before, including JAK3. Finally, we re-sequenced a small set of 39 candidate genes and identified recurrent mutations in TET1, SPRY3 and SPRY4. In conclusion, we established an optimized analysis pipeline for Roche/454 data that can be applied to accurately detect gene mutations in cancer, which led to the identification of several new candidate T-ALL driver mutations.


Subject(s)
DNA Mutational Analysis/methods , Genes, Neoplasm/genetics , Mutation/genetics , Precursor T-Cell Lymphoblastic Leukemia-Lymphoma/genetics , Base Sequence , Cell Line, Tumor , Clone Cells , Humans , Molecular Sequence Data , Neoplasm Proteins/genetics , Time Factors , Tumor Suppressor Proteins/genetics
10.
Haematologica ; 96(11): 1723-7, 2011 Nov.
Article in English | MEDLINE | ID: mdl-21791476

ABSTRACT

We recently reported deletion of the protein tyrosine phosphatase gene PTPN2 in T-cell acute lymphoblastic leukemia. Functional analyses confirmed that PTPN2 acts as classical tumor suppressor repressing the proliferation of T cells, in part through inhibition of JAK/STAT signaling. We investigated the expression of PTPN2 in leukemia as well as lymphoma cell lines. We identified bi-allelic inactivation of PTPN2 in the Hodgkin's lymphoma cell line SUP-HD1 which was associated with activation of the JAK/STAT pathway. Subsequent sequence analysis of Hodgkin's lymphoma and T-cell non-Hodgkin's lymphoma identified bi-allelic inactivation of PTPN2 in 2 out of 39 cases of peripheral T-cell lymphoma not otherwise specified, but not in Hodgkin's lymphoma. These results, together with our own data on T-cell acute lymphoblastic leukemia, demonstrate that PTPN2 is a tumor suppressor gene in T-cell malignancies.


Subject(s)
Hodgkin Disease , Mutation , Precursor T-Cell Lymphoblastic Leukemia-Lymphoma , Protein Tyrosine Phosphatase, Non-Receptor Type 2 , Tumor Suppressor Proteins , Cell Line, Tumor , DNA Mutational Analysis , Female , Hodgkin Disease/enzymology , Hodgkin Disease/genetics , Humans , Janus Kinases/genetics , Janus Kinases/metabolism , Male , Precursor T-Cell Lymphoblastic Leukemia-Lymphoma/enzymology , Precursor T-Cell Lymphoblastic Leukemia-Lymphoma/genetics , Protein Tyrosine Phosphatase, Non-Receptor Type 2/genetics , Protein Tyrosine Phosphatase, Non-Receptor Type 2/metabolism , STAT Transcription Factors/genetics , STAT Transcription Factors/metabolism , Signal Transduction/genetics , Tumor Suppressor Proteins/genetics , Tumor Suppressor Proteins/metabolism
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