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Dive into the research topics where Stephane E. Castel is active.

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Featured researches published by Stephane E. Castel.


Nature Reviews Genetics | 2013

RNA interference in the nucleus: roles for small RNAs in transcription, epigenetics and beyond

Stephane E. Castel; Robert A. Martienssen

A growing number of functions are emerging for RNA interference (RNAi) in the nucleus, in addition to well-characterized roles in post-transcriptional gene silencing in the cytoplasm. Epigenetic modifications directed by small RNAs have been shown to cause transcriptional repression in plants, fungi and animals. Additionally, increasing evidence indicates that RNAi regulates transcription through interaction with transcriptional machinery. Nuclear small RNAs include small interfering RNAs (siRNAs) and PIWI-interacting RNAs (piRNAs) and are implicated in nuclear processes such as transposon regulation, heterochromatin formation, developmental gene regulation and genome stability.


Nature | 2011

RNAi promotes heterochromatic silencing through replication-coupled release of RNA Pol II

Mikel Zaratiegui; Stephane E. Castel; Danielle V. Irvine; Anna Kloc; Jie Ren; Fei Li; Elisa de Castro; Laura Marín; An Yun Chang; Derek B. Goto; W. Zacheus Cande; Francisco Antequera; Benoit Arcangioli; Robert A. Martienssen

Heterochromatin comprises tightly compacted repetitive regions of eukaryotic chromosomes. The inheritance of heterochromatin through mitosis requires RNA interference (RNAi), which guides histone modification during the DNA replication phase of the cell cycle. Here we show that the alternating arrangement of origins of replication and non-coding RNA in pericentromeric heterochromatin results in competition between transcription and replication in Schizosaccharomyces pombe. Co-transcriptional RNAi releases RNA polymerase II (Pol II), allowing completion of DNA replication by the leading strand DNA polymerase, and associated histone modifying enzymes that spread heterochromatin with the replication fork. In the absence of RNAi, stalled forks are repaired by homologous recombination without histone modification.


Genome Biology | 2015

Tools and best practices for data processing in allelic expression analysis

Stephane E. Castel; Ami Levy-Moonshine; Pejman Mohammadi; Eric Banks; Tuuli Lappalainen

Allelic expression analysis has become important for integrating genome and transcriptome data to characterize various biological phenomena such as cis-regulatory variation and nonsense-mediated decay. We analyze the properties of allelic expression read count data and technical sources of error, such as low-quality or double-counted RNA-seq reads, genotyping errors, allelic mapping bias, and technical covariates due to sample preparation and sequencing, and variation in total read depth. We provide guidelines for correcting such errors, show that our quality control measures improve the detection of relevant allelic expression, and introduce tools for the high-throughput production of allelic expression data from RNA-sequencing data.


Nature | 2017

Landscape of X chromosome inactivation across human tissues

Taru Tukiainen; Alexandra-Chloé Villani; Angela Yen; Manuel A. Rivas; Jamie L. Marshall; Rahul Satija; Matt Aguirre; Laura Gauthier; Mark Fleharty; Andrew Kirby; Beryl B. Cummings; Stephane E. Castel; Konrad J. Karczewski; François Aguet; Andrea Byrnes; Tuuli Lappalainen; Aviv Regev; Kristin Ardlie; Nir Hacohen; Daniel G. MacArthur

X chromosome inactivation (XCI) silences transcription from one of the two X chromosomes in female mammalian cells to balance expression dosage between XX females and XY males. XCI is, however, incomplete in humans: up to one-third of X-chromosomal genes are expressed from both the active and inactive X chromosomes (Xa and Xi, respectively) in female cells, with the degree of ‘escape’ from inactivation varying between genes and individuals. The extent to which XCI is shared between cells and tissues remains poorly characterized, as does the degree to which incomplete XCI manifests as detectable sex differences in gene expression and phenotypic traits. Here we describe a systematic survey of XCI, integrating over 5,500 transcriptomes from 449 individuals spanning 29 tissues from GTEx (v6p release) and 940 single-cell transcriptomes, combined with genomic sequence data. We show that XCI at 683 X-chromosomal genes is generally uniform across human tissues, but identify examples of heterogeneity between tissues, individuals and cells. We show that incomplete XCI affects at least 23% of X-chromosomal genes, identify seven genes that escape XCI with support from multiple lines of evidence and demonstrate that escape from XCI results in sex biases in gene expression, establishing incomplete XCI as a mechanism that is likely to introduce phenotypic diversity. Overall, this updated catalogue of XCI across human tissues helps to increase our understanding of the extent and impact of the incompleteness in the maintenance of XCI.


bioRxiv | 2016

Local genetic effects on gene expression across 44 human tissues

François Aguet; Andrew Anand Brown; Stephane E. Castel; Joe R. Davis; Pejman Mohammadi; Ayellet V. Segrè; Zachary Zappala; Nathan S. Abell; Laure Frésard; Eric R. Gamazon; Ellen T. Gelfand; Machael J Gloudemans; Yuan He; Farhad Hormozdiari; Xiao Li; Xin Li; Boxiang Liu; Diego Garrido-Martín; Halit Ongen; John Palowitch; YoSon Park; Christine B. Peterson; Gerald Quon; Stephan Ripke; Andrey A. Shabalin; Tyler C. Shimko; Benjamin J. Strober; Timothy J. Sullivan; Nicole A. Teran; Emily K. Tsang

Expression quantitative trait locus (eQTL) mapping provides a powerful means to identify functional variants influencing gene expression and disease pathogenesis. We report the identification of cis-eQTLs from 7,051 post-mortem samples representing 44 tissues and 449 individuals as part of the Genotype-Tissue Expression (GTEx) project. We find a cis-eQTL for 88% of all annotated protein-coding genes, with one-third having multiple independent effects. We identify numerous tissue-specific cis-eQTLs, highlighting the unique functional impact of regulatory variation in diverse tissues. By integrating large-scale functional genomics data and state-of-the-art fine-mapping algorithms, we identify multiple features predictive of tissue-specific and shared regulatory effects. We improve estimates of cis-eQTL sharing and effect sizes using allele specific expression across tissues. Finally, we demonstrate the utility of this large compendium of cis-eQTLs for understanding the tissue-specific etiology of complex traits, including coronary artery disease. The GTEx project provides an exceptional resource that has improved our understanding of gene regulation across tissues and the role of regulatory variation in human genetic diseases.


Nature Communications | 2017

Genetic regulatory effects modified by immune activation contribute to autoimmune disease associations

Sarah Kim-Hellmuth; Matthias Bechheim; Benno Pütz; Pejman Mohammadi; Yohann Nédélec; Nicholas Giangreco; Jessica Becker; Vera Kaiser; Nadine Fricker; Esther Beier; Peter Boor; Stephane E. Castel; Markus M. Nöthen; Luis B. Barreiro; Joseph K. Pickrell; Bertram Müller-Myhsok; Tuuli Lappalainen; Johannes Schumacher; Veit Hornung

The immune system plays a major role in human health and disease, and understanding genetic causes of interindividual variability of immune responses is vital. Here, we isolate monocytes from 134 genotyped individuals, stimulate these cells with three defined microbe-associated molecular patterns (LPS, MDP, and 5′-ppp-dsRNA), and profile the transcriptomes at three time points. Mapping expression quantitative trait loci (eQTL), we identify 417 response eQTLs (reQTLs) with varying effects between conditions. We characterize the dynamics of genetic regulation on early and late immune response and observe an enrichment of reQTLs in distal cis-regulatory elements. In addition, reQTLs are enriched for recent positive selection with an evolutionary trend towards enhanced immune response. Finally, we uncover reQTL effects in multiple GWAS loci and show a stronger enrichment for response than constant eQTLs in GWAS signals of several autoimmune diseases. This demonstrates the importance of infectious stimuli in modifying genetic predisposition to disease.Insight into the genetic influence on the immune response is important for the understanding of interindividual variability in human pathologies. Here, the authors generate transcriptome data from human blood monocytes stimulated with various immune stimuli and provide a time-resolved response eQTL map.


bioRxiv | 2016

Distant regulatory effects of genetic variation in multiple human tissues

Brian Jo; Yuan He; Benjamin J. Strober; Princy Parsana; François Aguet; Andrew Anand Brown; Stephane E. Castel; Eric R. Gamazon; Ariel D.H. Gewirtz; Genna Gliner; Buhm Han; Amy Z He; Eun Yong Kang; Ian C. McDowell; Xiao Li; Pejman Mohammadi; Christine B. Peterson; Gerald Quon; Ashis Saha; Ayellet V. Segrè; Jae Hoon Sul; Timothy J. Sullivan; Kristin Ardlie; Christopher D. Brown; Donald F. Conrad; Nancy J. Cox; Emmanouil T. Dermitzakis; Eleazar Eskin; Manolis Kellis; Tuuli Lappalainen

Understanding the genetics of gene regulation provides information on the cellular mechanisms through which genetic variation influences complex traits. Expression quantitative trait loci, or eQTLs, are enriched for polymorphisms that have been found to be associated with disease risk. While most analyses of human data has focused on regulation of expression by nearby variants (cis-eQTLs), distal or trans-eQTLs may have broader effects on the transcriptome and important phenotypic consequences, necessitating a comprehensive study of the effects of genetic variants on distal gene transcription levels. In this work, we identify trans-eQTLs in the Genotype Tissue Expression (GTEx) project data1, consisting of 449 individuals with RNA-sequencing data across 44 tissue types. We find 81 genes with a trans-eQTL in at least one tissue, and we demonstrate that trans-eQTLs are more likely than cis-eQTLs to have effects specific to a single tissue. We evaluate the genomic and functional properties of trans-eQTL variants, identifying strong enrichment in enhancer elements and Piwi-interacting RNA clusters. Finally, we describe three tissue-specific regulatory loci underlying relevant disease associations: 9q22 in thyroid that has a role in thyroid cancer, 5q31 in skeletal muscle, and a previously reported master regulator near KLF14 in adipose. These analyses provide a comprehensive characterization of trans-eQTLs across human tissues, which contribute to an improved understanding of the tissue-specific cellular mechanisms of regulatory genetic variation.


Nature Communications | 2016

Rare variant phasing and haplotypic expression from RNA sequencing with phASER

Stephane E. Castel; Pejman Mohammadi; Wendy K. Chung; Yufeng Shen; Tuuli Lappalainen

Haplotype phasing of genetic variants is important for clinical interpretation of the genome, population genetic analysis and functional genomic analysis of allelic activity. Here we present phASER, an accurate approach for phasing variants that are overlapped by sequencing reads, including those from RNA sequencing (RNA-seq), which often span multiple exons due to splicing. Using diverse RNA-seq data we demonstrate that this provides more accurate phasing of rare variants compared with population-based phasing and allows phasing of variants in the same gene up to hundreds of kilobases away that cannot be obtained from DNA sequencing (DNA-seq) reads. We show that in the context of medical genetic studies this improves the resolution of compound heterozygotes. Additionally, phASER provides measures of haplotypic expression that increase power and accuracy in studies of allelic expression. In summary, phasing using RNA-seq and phASER is accurate and improves studies where rare variant haplotypes or allelic expression is needed.


bioRxiv | 2015

Tools and best practices for allelic expression analysis

Stephane E. Castel; Ami Levy-Moonshine; Pejman Mohammadi; Eric Banks; Tuuli Lappalainen

Allelic expression (AE) analysis has become an important tool for integrating genome and transcriptome data to characterize various biological phenomena such as cis-regulatory variation and nonsense-mediated decay. In this paper, we systematically analyze the properties of AE read count data and technical sources of error, such as low-quality or double-counted RNA-seq reads, genotyping errors, allelic mapping bias, and technical covariates due to sample preparation and sequencing, and variation in total read depth. We provide guidelines for correcting and filtering for such errors, and show that the resulting AE data has extremely low technical noise. Finally, we introduce novel software for high-throughput production of AE data from RNA-sequencing data, implemented in the GATK framework. These improved tools and best practices for AE analysis yield higher quality AE data by reducing technical bias. This provides a practical framework for wider adoption of AE analysis by the genomics community.


Genome Research | 2017

Quantifying the regulatory effect size of cis-acting genetic variation using allelic fold change

Pejman Mohammadi; Stephane E. Castel; Andrew Anand Brown; Tuuli Lappalainen

Mapping cis-acting expression quantitative trait loci (cis-eQTL) has become a popular approach for characterizing proximal genetic regulatory variants. In this paper, we describe and characterize log allelic fold change (aFC), the magnitude of expression change associated with a given genetic variant, as a biologically interpretable unit for quantifying the effect size of cis-eQTLs and a mathematically convenient approach for systematic modeling of cis-regulation. This measure is mathematically independent from expression level and allele frequency, additive, applicable to multiallelic variants, and generalizable to multiple independent variants. We provide efficient tools and guidelines for estimating aFC from both eQTL and allelic expression data sets and apply it to Genotype Tissue Expression (GTEx) data. We show that aFC estimates independently derived from eQTL and allelic expression data are highly consistent, and identify technical and biological correlates of eQTL effect size. We generalize aFC to analyze genes with two eQTLs in GTEx and show that in nearly all cases the two eQTLs act independently in regulating gene expression. In summary, aFC is a solid measure of cis-regulatory effect size that allows quantitative interpretation of cellular regulatory events from population data, and it is a valuable approach for investigating novel aspects of eQTL data sets.

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Pejman Mohammadi

Swiss Institute of Bioinformatics

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Robert A. Martienssen

Cold Spring Harbor Laboratory

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Jie Ren

Cold Spring Harbor Laboratory

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