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Dive into the research topics where Valentine Svensson is active.

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Featured researches published by Valentine Svensson.


Molecular Cell | 2015

The technology and biology of single-cell RNA sequencing.

Aleksandra A. Kolodziejczyk; Jong Kyoung Kim; Valentine Svensson; John C. Marioni; Sarah A. Teichmann

The differences between individual cells can have profound functional consequences, in both unicellular and multicellular organisms. Recently developed single-cell mRNA-sequencing methods enable unbiased, high-throughput, and high-resolution transcriptomic analysis of individual cells. This provides an additional dimension to transcriptomic information relative to traditional methods that profile bulk populations of cells. Already, single-cell RNA-sequencing methods have revealed new biology in terms of the composition of tissues, the dynamics of transcription, and the regulatory relationships between genes. Rapid technological developments at the level of cell capture, phenotyping, molecular biology, and bioinformatics promise an exciting future with numerous biological and medical applications.


Nature Methods | 2017

Power analysis of single-cell RNA-sequencing experiments

Valentine Svensson; Kedar Nath Natarajan; Lam-Ha Ly; Ricardo J. Miragaia; Charlotte Labalette; Iain C. Macaulay; Ana Cvejic; Sarah A. Teichmann

Single-cell RNA sequencing (scRNA-seq) has become an established and powerful method to investigate transcriptomic cell-to-cell variation, thereby revealing new cell types and providing insights into developmental processes and transcriptional stochasticity. A key question is how the variety of available protocols compare in terms of their ability to detect and accurately quantify gene expression. Here, we assessed the protocol sensitivity and accuracy of many published data sets, on the basis of spike-in standards and uniform data processing. For our workflow, we developed a flexible tool for counting the number of unique molecular identifiers (https://github.com/vals/umis/). We compared 15 protocols computationally and 4 protocols experimentally for batch-matched cell populations, in addition to investigating the effects of spike-in molecular degradation. Our analysis provides an integrated framework for comparing scRNA-seq protocols.


Cell Reports | 2016

Single-Cell RNA-Sequencing Reveals a Continuous Spectrum of Differentiation in Hematopoietic Cells

Iain C. Macaulay; Valentine Svensson; Charlotte Labalette; Lauren Ferreira; Fiona Hamey; Thierry Voet; Sarah A. Teichmann; Ana Cvejic

Summary The transcriptional programs that govern hematopoiesis have been investigated primarily by population-level analysis of hematopoietic stem and progenitor cells, which cannot reveal the continuous nature of the differentiation process. Here we applied single-cell RNA-sequencing to a population of hematopoietic cells in zebrafish as they undergo thrombocyte lineage commitment. By reconstructing their developmental chronology computationally, we were able to place each cell along a continuum from stem cell to mature cell, refining the traditional lineage tree. The progression of cells along this continuum is characterized by a highly coordinated transcriptional program, displaying simultaneous suppression of genes involved in cell proliferation and ribosomal biogenesis as the expression of lineage specific genes increases. Within this program, there is substantial heterogeneity in the expression of the key lineage regulators. Overall, the total number of genes expressed, as well as the total mRNA content of the cell, decreases as the cells undergo lineage commitment.


Cell Reports | 2016

MERVL/Zscan4 Network Activation Results in Transient Genome-wide DNA Demethylation of mESCs.

Melanie A. Eckersley-Maslin; Valentine Svensson; Christel Krueger; Thomas M. Stubbs; Pascal Giehr; Felix Krueger; Ricardo J. Miragaia; Charalampos Kyriakopoulos; Rebecca V. Berrens; Inês Milagre; Jörn Walter; Sarah A. Teichmann; Wolf Reik

Summary Mouse embryonic stem cells are dynamic and heterogeneous. For example, rare cells cycle through a state characterized by decondensed chromatin and expression of transcripts, including the Zscan4 cluster and MERVL endogenous retrovirus, which are usually restricted to preimplantation embryos. Here, we further characterize the dynamics and consequences of this transient cell state. Single-cell transcriptomics identified the earliest upregulated transcripts as cells enter the MERVL/Zscan4 state. The MERVL/Zscan4 transcriptional network was also upregulated during induced pluripotent stem cell reprogramming. Genome-wide DNA methylation and chromatin analyses revealed global DNA hypomethylation accompanying increased chromatin accessibility. This transient DNA demethylation was driven by a loss of DNA methyltransferase proteins in the cells and occurred genome-wide. While methylation levels were restored once cells exit this state, genomic imprints remained hypomethylated, demonstrating a potential global and enduring influence of endogenous retroviral activation on the epigenome.


Biology Direct | 2015

An atlas of mouse CD4 + T cell transcriptomes

Michael J. T. Stubbington; Bidesh Mahata; Valentine Svensson; Andrew Deonarine; Jesper K. Nissen; Alexander G. Betz; Sarah A. Teichmann

BackgroundCD4+ T cells are key regulators of the adaptive immune system and can be divided into T helper (Th) cells and regulatory T (Treg) cells. During an immune response Th cells mature from a naive state into one of several effector subtypes that exhibit distinct functions. The transcriptional mechanisms that underlie the specific functional identity of CD4+ T cells are not fully understood.ResultsTo assist investigations into the transcriptional identity and regulatory processes of these cells we performed mRNA-sequencing on three murine T helper subtypes (Th1, Th2 and Th17) as well as on splenic Treg cells and induced Treg (iTreg) cells. Our integrated analysis of this dataset revealed the gene expression changes associated with these related but distinct cellular identities. Each cell subtype differentially expresses a wealth of ‘subtype upregulated’ genes, some of which are well known whilst others promise new insights into signalling processes and transcriptional regulation. We show that hundreds of genes are regulated purely by alternative splicing to extend our knowledge of the role of post-transcriptional regulation in cell differentiation.ConclusionsThis CD4+ transcriptome atlas provides a valuable resource for the study of CD4+ T cell populations. To facilitate its use by others, we have made the data available in an easily accessible online resource at www.th-express.org.ReviewersThis article was reviewed by Wayne Hancock, Christine Wells and Erik van Nimwegen.


Nature Biotechnology | 2016

Single-cell analysis at the threshold

Xi Chen; J. Christopher Love; Nicholas Navin; Lior Pachter; Michael J. T. Stubbington; Valentine Svensson; Jonathan V. Sweedler; Sarah A. Teichmann

1111 Xi Chen, Michael J.T. Stubbington and Sarah A. Teichmann are at the Wellcome Trust Sanger Institute, Cambridge, UK; J. Christopher Love is at the Koch Institute for Integrative Cancer Research, Massachusetts Institute of Technology, Cambridge, Massachusetts, USA; Nicholas E. Navin is in the Department of Genetics and Department of Bioinformatics and Computational Biology, The University of Texas, MD Anderson Cancer Center, Houston, Texas, USA; Lior Pachter is in the Department of Mathematics, University of California, Berkeley, California, USA; Valentine Svensson is at the European Bioinformatics Institute, European Molecular Biology Laboratory, Cambridge, UK; and Jonathan V. Sweedler is in the Department of Chemistry, University of Illinois, Urbana, Illinois, USA. e-mail: [email protected], [email protected], [email protected], [email protected] or [email protected] Single-cell analysis at the threshold


Genome Biology | 2016

Single-cell analysis of CD4+ T-cell differentiation reveals three major cell states and progressive acceleration of proliferation

Valentina Proserpio; Andrea Piccolo; Liora Haim-Vilmovsky; Gozde Kar; Tapio Lönnberg; Valentine Svensson; Jhuma Pramanik; Kedar Nath Natarajan; Weichao Zhai; Xiuwei Zhang; Giacomo Donati; Melis Kayikci; Jurij Kotar; Andrew N. J. McKenzie; Ruddy Montandon; Oliver Billker; Steven Woodhouse; Pietro Cicuta; Mario Nicodemi; Sarah A. Teichmann

Differentiation of lymphocytes is frequently accompanied by cell cycle changes, interplay that is of central importance for immunity but is still incompletely understood. Here, we interrogate and quantitatively model how proliferation is linked to differentiation in CD4+ T cells. We perform ex vivo single-cell RNA-sequencing of CD4+ T cells during a mouse model of infection that elicits a type 2 immune response and infer that the differentiated, cytokine-producing cells cycle faster than early activated precursor cells. To dissect this phenomenon quantitatively, we determine expression profiles across consecutive generations of differentiated and undifferentiated cells during Th2 polarization in vitro. We predict three discrete cell states, which we verify by single-cell quantitative PCR. Based on these three states, we extract rates of death, division and differentiation with a branching state Markov model to describe the cell population dynamics. From this multi-scale modelling, we infer a significant acceleration in proliferation from the intermediate activated cell state to the mature cytokine-secreting effector state. We confirm this acceleration both by live imaging of single Th2 cells and in an ex vivo Th1 malaria model by single-cell RNA-sequencing. The link between cytokine secretion and proliferation rate holds both in Th1 and Th2 cells in vivo and in vitro, indicating that this is likely a general phenomenon in adaptive immunity.BackgroundDifferentiation of lymphocytes is frequently accompanied by cell cycle changes, interplay that is of central importance for immunity but is still incompletely understood. Here, we interrogate and quantitatively model how proliferation is linked to differentiation in CD4+ T cells.ResultsWe perform ex vivo single-cell RNA-sequencing of CD4+ T cells during a mouse model of infection that elicits a type 2 immune response and infer that the differentiated, cytokine-producing cells cycle faster than early activated precursor cells. To dissect this phenomenon quantitatively, we determine expression profiles across consecutive generations of differentiated and undifferentiated cells during Th2 polarization in vitro. We predict three discrete cell states, which we verify by single-cell quantitative PCR. Based on these three states, we extract rates of death, division and differentiation with a branching state Markov model to describe the cell population dynamics. From this multi-scale modelling, we infer a significant acceleration in proliferation from the intermediate activated cell state to the mature cytokine-secreting effector state. We confirm this acceleration both by live imaging of single Th2 cells and in an ex vivo Th1 malaria model by single-cell RNA-sequencing.ConclusionThe link between cytokine secretion and proliferation rate holds both in Th1 and Th2 cells in vivo and in vitro, indicating that this is likely a general phenomenon in adaptive immunity.


Nature Protocols | 2018

Exponential scaling of single-cell RNA-seq in the past decade

Valentine Svensson; Roser Vento-Tormo; Sarah A. Teichmann

Measurement of the transcriptomes of single cells has been feasible for only a few years, but it has become an extremely popular assay. While many types of analysis can be carried out and various questions can be answered by single-cell RNA-seq, a central focus is the ability to survey the diversity of cell types in a sample. Unbiased and reproducible cataloging of gene expression patterns in distinct cell types requires large numbers of cells. Technological developments and protocol improvements have fueled consistent and exponential increases in the number of cells that can be studied in single-cell RNA-seq analyses. In this Perspective, we highlight the key technological developments that have enabled this growth in the data obtained from single-cell RNA-seq experiments.


FEBS Letters | 2017

Computational approaches for interpreting scRNA-seq data.

Raghd Rostom; Valentine Svensson; Sarah A. Teichmann; Gozde Kar

The recent developments in high‐throughput single‐cell RNA sequencing technology (scRNA‐seq) have enabled the generation of vast amounts of transcriptomic data at cellular resolution. With these advances come new modes of data analysis, building on high‐dimensional data mining techniques. Here, we consider biological questions for which scRNA‐seq data is used, both at a cell and gene level, and describe tools available for these types of analyses. This is an exciting and rapidly evolving field, where clustering, pseudotime inference, branching inference and gene‐level analyses are particularly informative areas of computational analysis.


Scientific Reports | 2018

Single-cell RNA-sequencing resolves self-antigen expression during mTEC development

Ricardo J. Miragaia; Xiuwei Zhang; Tomás Gomes; Valentine Svensson; Tomislav Ilicic; Johan Henriksson; Gozde Kar; Tapio Lönnberg

The crucial capability of T cells for discrimination between self and non-self peptides is based on negative selection of developing thymocytes by medullary thymic epithelial cells (mTECs). The mTECs purge autoreactive T cells by expression of cell-type specific genes referred to as tissue-restricted antigens (TRAs). Although the autoimmune regulator (AIRE) protein is known to promote the expression of a subset of TRAs, its mechanism of action is still not fully understood. The expression of TRAs that are not under the control of AIRE also needs further characterization. Furthermore, expression patterns of TRA genes have been suggested to change over the course of mTEC development. Herein we have used single-cell RNA-sequencing to resolve patterns of TRA expression during mTEC development. Our data indicated that mTEC development consists of three distinct stages, correlating with previously described jTEC, mTEChi and mTEClo phenotypes. For each subpopulation, we have identified marker genes useful in future studies. Aire-induced TRAs were switched on during jTEC-mTEC transition and were expressed in genomic clusters, while otherwise the subsets expressed largely overlapping sets of TRAs. Moreover, population-level analysis of TRA expression frequencies suggested that such differences might not be necessary to achieve efficient thymocyte selection.

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Sarah A. Teichmann

Wellcome Trust Sanger Institute

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Oliver Stegle

European Bioinformatics Institute

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Tapio Lönnberg

European Bioinformatics Institute

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Ana Cvejic

Wellcome Trust Sanger Institute

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Charlotte Labalette

Wellcome Trust Sanger Institute

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Gozde Kar

European Bioinformatics Institute

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Kedar Nath Natarajan

Wellcome Trust Sanger Institute

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Ricardo J. Miragaia

Wellcome Trust Sanger Institute

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Ashraful Haque

QIMR Berghofer Medical Research Institute

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