Francesco Paolo Casale
European Bioinformatics Institute
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Publication
Featured researches published by Francesco Paolo Casale.
Nature | 2015
Peter H. Sudmant; Tobias Rausch; Eugene J. Gardner; Robert E. Handsaker; Alexej Abyzov; John Huddleston; Zhang Y; Kai Ye; Goo Jun; Markus His Yang Fritz; Miriam K. Konkel; Ankit Malhotra; Adrian M. Stütz; Xinghua Shi; Francesco Paolo Casale; Jieming Chen; Fereydoun Hormozdiari; Gargi Dayama; Ken Chen; Maika Malig; Mark Chaisson; Klaudia Walter; Sascha Meiers; Seva Kashin; Erik Garrison; Adam Auton; Hugo Y. K. Lam; Xinmeng Jasmine Mu; Can Alkan; Danny Antaki
Structural variants are implicated in numerous diseases and make up the majority of varying nucleotides among human genomes. Here we describe an integrated set of eight structural variant classes comprising both balanced and unbalanced variants, which we constructed using short-read DNA sequencing data and statistically phased onto haplotype blocks in 26 human populations. Analysing this set, we identify numerous gene-intersecting structural variants exhibiting population stratification and describe naturally occurring homozygous gene knockouts that suggest the dispensability of a variety of human genes. We demonstrate that structural variants are enriched on haplotypes identified by genome-wide association studies and exhibit enrichment for expression quantitative trait loci. Additionally, we uncover appreciable levels of structural variant complexity at different scales, including genic loci subject to clusters of repeated rearrangement and complex structural variants with multiple breakpoints likely to have formed through individual mutational events. Our catalogue will enhance future studies into structural variant demography, functional impact and disease association.
eLife | 2015
Manu J. Dubin; Pei Zhang; Dazhe Meng; Marie Stanislas Remigereau; Edward J. Osborne; Francesco Paolo Casale; Philipp Drewe; André Kahles; Géraldine Jean; Bjarni J. Vilhjálmsson; Joanna Jagoda; Selen Irez; Viktor Voronin; Qiang Song; Quan Long; Gunnar Rätsch; Oliver Stegle; Richard M. Clark; Magnus Nordborg
Epigenome modulation potentially provides a mechanism for organisms to adapt, within and between generations. However, neither the extent to which this occurs, nor the mechanisms involved are known. Here we investigate DNA methylation variation in Swedish Arabidopsis thaliana accessions grown at two different temperatures. Environmental effects were limited to transposons, where CHH methylation was found to increase with temperature. Genome-wide association studies (GWAS) revealed that the extensive CHH methylation variation was strongly associated with genetic variants in both cis and trans, including a major trans-association close to the DNA methyltransferase CMT2. Unlike CHH methylation, CpG gene body methylation (GBM) was not affected by growth temperature, but was instead correlated with the latitude of origin. Accessions from colder regions had higher levels of GBM for a significant fraction of the genome, and this was associated with increased transcription for the genes affected. GWAS revealed that this effect was largely due to trans-acting loci, many of which showed evidence of local adaptation. DOI: http://dx.doi.org/10.7554/eLife.05255.001
Cell | 2016
Lu Chen; Bing Ge; Francesco Paolo Casale; Louella Vasquez; Tony Kwan; Diego Garrido-Martín; Stephen Watt; Ying Yan; Kousik Kundu; Simone Ecker; Avik Datta; David C. Richardson; Frances Burden; Daniel Mead; Alice L. Mann; José María Fernández; Sophia Rowlston; Steven P. Wilder; Samantha Farrow; Xiaojian Shao; John J. Lambourne; Adriana Redensek; Cornelis A. Albers; Vyacheslav Amstislavskiy; Sofie Ashford; Kim Berentsen; Lorenzo Bomba; Guillaume Bourque; David Bujold; Stephan Busche
Summary Characterizing the multifaceted contribution of genetic and epigenetic factors to disease phenotypes is a major challenge in human genetics and medicine. We carried out high-resolution genetic, epigenetic, and transcriptomic profiling in three major human immune cell types (CD14+ monocytes, CD16+ neutrophils, and naive CD4+ T cells) from up to 197 individuals. We assess, quantitatively, the relative contribution of cis-genetic and epigenetic factors to transcription and evaluate their impact as potential sources of confounding in epigenome-wide association studies. Further, we characterize highly coordinated genetic effects on gene expression, methylation, and histone variation through quantitative trait locus (QTL) mapping and allele-specific (AS) analyses. Finally, we demonstrate colocalization of molecular trait QTLs at 345 unique immune disease loci. This expansive, high-resolution atlas of multi-omics changes yields insights into cell-type-specific correlation between diverse genomic inputs, more generalizable correlations between these inputs, and defines molecular events that may underpin complex disease risk.
Nature | 2017
Helena Kilpinen; Angela Goncalves; Andreas Leha; Vackar Afzal; Kaur Alasoo; Sofie Ashford; Sendu Bala; Dalila Bensaddek; Francesco Paolo Casale; Oliver J. Culley; Petr Danecek; Adam Faulconbridge; Peter W. Harrison; Annie Kathuria; Davis J. McCarthy; Shane McCarthy; Ruta Meleckyte; Yasin Memari; Nathalie Moens; Filipa Soares; Alice L. Mann; Ian Streeter; Chukwuma A. Agu; Alex Alderton; Rachel Nelson; Sarah Harper; Minal Patel; Alistair White; Sharad R Patel; Laura Clarke
Technology utilizing human induced pluripotent stem cells (iPS cells) has enormous potential to provide improved cellular models of human disease. However, variable genetic and phenotypic characterization of many existing iPS cell lines limits their potential use for research and therapy. Here we describe the systematic generation, genotyping and phenotyping of 711 iPS cell lines derived from 301 healthy individuals by the Human Induced Pluripotent Stem Cells Initiative. Our study outlines the major sources of genetic and phenotypic variation in iPS cells and establishes their suitability as models of complex human traits and cancer. Through genome-wide profiling we find that 5–46% of the variation in different iPS cell phenotypes, including differentiation capacity and cellular morphology, arises from differences between individuals. Additionally, we assess the phenotypic consequences of genomic copy-number alterations that are repeatedly observed in iPS cells. In addition, we present a comprehensive map of common regulatory variants affecting the transcriptome of human pluripotent cells.
Nature Methods | 2015
Francesco Paolo Casale; Barbara Rakitsch; Christoph Lippert; Oliver Stegle
Set tests are a powerful approach for genome-wide association testing between groups of genetic variants and quantitative traits. We describe mtSet (http://github.com/PMBio/limix), a mixed-model approach that enables joint analysis across multiple correlated traits while accounting for population structure and relatedness. mtSet effectively combines the benefits of set tests with multi-trait modeling and is computationally efficient, enabling genetic analysis of large cohorts (up to 500,000 individuals) and multiple traits.
bioRxiv | 2014
Christoph Lippert; Francesco Paolo Casale; Barbara Rakitsch; Oliver Stegle
Multi-trait mixed models have emerged as a promising approach for joint analyses of multiple traits. In principle, the mixed model framework is remarkably general. However, current methods implement only a very specific range of tasks to optimize the necessary computations. Here, we present a multi-trait modeling framework that is versatile and fast: LIMIX enables to flexibly adapt mixed models for a broad range of applications with different observed and hidden covariates, and variable study designs. To highlight the novel modeling aspects of LIMIX we performed three vastly different genetic studies: joint GWAS of correlated blood lipid phenotypes, joint analysis of the expression levels of the multiple transcript-isoforms of a gene, and pathway-based modeling of molecular traits across environments. In these applications we show that LIMIX increases GWAS power and phenotype prediction accuracy, in particular when integrating stepwise multi-locus regression into multi-trait models, and when analyzing large numbers of traits. An open source implementation of LIMIX is freely available at: https://github.com/PMBio/limix.
Genome Biology | 2017
Simone Ecker; Lu Chen; Vera Pancaldi; Frederik Otzen Bagger; José María Fernández; Enrique Carrillo de Santa Pau; David Juan; Alice L. Mann; Stephen Watt; Francesco Paolo Casale; Nikos Sidiropoulos; Nicolas Rapin; Angelika Merkel; Hendrik G. Stunnenberg; Oliver Stegle; Mattia Frontini; Kate Downes; Tomi Pastinen; Taco W. Kuijpers; Daniel Rico; Alfonso Valencia; Stephan Beck; Nicole Soranzo; Dirk S. Paul
BackgroundA healthy immune system requires immune cells that adapt rapidly to environmental challenges. This phenotypic plasticity can be mediated by transcriptional and epigenetic variability.ResultsWe apply a novel analytical approach to measure and compare transcriptional and epigenetic variability genome-wide across CD14+CD16− monocytes, CD66b+CD16+ neutrophils, and CD4+CD45RA+ naïve T cells from the same 125 healthy individuals. We discover substantially increased variability in neutrophils compared to monocytes and T cells. In neutrophils, genes with hypervariable expression are found to be implicated in key immune pathways and are associated with cellular properties and environmental exposure. We also observe increased sex-specific gene expression differences in neutrophils. Neutrophil-specific DNA methylation hypervariable sites are enriched at dynamic chromatin regions and active enhancers.ConclusionsOur data highlight the importance of transcriptional and epigenetic variability for the key role of neutrophils as the first responders to inflammatory stimuli. We provide a resource to enable further functional studies into the plasticity of immune cells, which can be accessed from: http://blueprint-dev.bioinfo.cnio.es/WP10/hypervariability.
Nature | 2017
Enrico Cannavò; Nils Koelling; Dermot Harnett; David A. Garfield; Francesco Paolo Casale; Lucia Ciglar; Hilary E. Gustafson; Rebecca R. Viales; Raquel Marco-Ferreres; Jacob F. Degner; Bingqing Zhao; Oliver Stegle; Ewan Birney; Eileen E. M. Furlong
Embryonic development is driven by tightly regulated patterns of gene expression, despite extensive genetic variation among individuals. Studies of expression quantitative trait loci (eQTL) indicate that genetic variation frequently alters gene expression in cell-culture models and differentiated tissues. However, the extent and types of genetic variation impacting embryonic gene expression, and their interactions with developmental programs, remain largely unknown. Here we assessed the effect of genetic variation on transcriptional (expression levels) and post-transcriptional (3′ RNA processing) regulation across multiple stages of metazoan development, using 80 inbred Drosophila wild isolates, identifying thousands of developmental-stage-specific and shared QTL. Given the small blocks of linkage disequilibrium in Drosophila, we obtain near base-pair resolution, resolving causal mutations in developmental enhancers, validated transcription-factor-binding sites and RNA motifs. This fine-grain mapping uncovered extensive allelic interactions within enhancers that have opposite effects, thereby buffering their impact on enhancer activity. QTL affecting 3′ RNA processing identify new functional motifs leading to transcript isoform diversity and changes in the lengths of 3′ untranslated regions. These results highlight how developmental stage influences the effects of genetic variation and uncover multiple mechanisms that regulate and buffer expression variation during embryogenesis.
Nature Genetics | 2017
Ignacio E. Schor; Jacob F. Degner; Dermot Harnett; Enrico Cannavò; Francesco Paolo Casale; Heejung Shim; David A. Garfield; Ewan Birney; Matthew Stephens; Oliver Stegle; Eileen E. M. Furlong
Animal promoters initiate transcription either at precise positions (narrow promoters) or dispersed regions (broad promoters), a distinction referred to as promoter shape. Although highly conserved, the functional properties of promoters with different shapes and the genetic basis of their evolution remain unclear. Here we used natural genetic variation across a panel of 81 Drosophila lines to measure changes in transcriptional start site (TSS) usage, identifying thousands of genetic variants affecting transcript levels (strength) or the distribution of TSSs within a promoter (shape). Our results identify promoter shape as a molecular trait that can evolve independently of promoter strength. Broad promoters typically harbor shape-associated variants, with signatures of adaptive selection. Single-cell measurements demonstrate that variants modulating promoter shape often increase expression noise, whereas heteroallelic interactions with other promoter variants alleviate these effects. These results uncover new functional properties of natural promoters and suggest the minimization of expression noise as an important factor in promoter evolution.
PLOS Genetics | 2017
Amelie Baud; Megan K. Mulligan; Francesco Paolo Casale; Jesse Ingels; Casey J. Bohl; Jacques Callebert; Jean-Marie Launay; Jon Krohn; A. Legarra; Robert W. Williams; Oliver Stegle
Assessing the impact of the social environment on health and disease is challenging. As social effects are in part determined by the genetic makeup of social partners, they can be studied from associations between genotypes of one individual and phenotype of another (social genetic effects, SGE, also called indirect genetic effects). For the first time we quantified the contribution of SGE to more than 100 organismal phenotypes and genome-wide gene expression measured in laboratory mice. We find that genetic variation in cage mates (i.e. SGE) contributes to variation in organismal and molecular measures related to anxiety, wound healing, immune function, and body weight. Social genetic effects explained up to 29% of phenotypic variance, and for several traits their contribution exceeded that of direct genetic effects (effects of an individual’s genotypes on its own phenotype). Importantly, we show that ignoring SGE can severely bias estimates of direct genetic effects (heritability). Thus SGE may be an important source of “missing heritability” in studies of complex traits in human populations. In summary, our study uncovers an important contribution of the social environment to phenotypic variation, sets the basis for using SGE to dissect social effects, and identifies an opportunity to improve studies of direct genetic effects.