Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Matti Pirinen is active.

Publication


Featured researches published by Matti Pirinen.


Nature | 2013

Transcriptome and genome sequencing uncovers functional variation in humans.

Tuuli Lappalainen; Michael Sammeth; Marc R. Friedländer; Peter A. C. 't Hoen; Jean Monlong; Manuel A. Rivas; Mar Gonzàlez-Porta; Natalja Kurbatova; Thasso Griebel; Pedro G. Ferreira; Matthias Barann; Thomas Wieland; Liliana Greger; M. van Iterson; Jonas Carlsson Almlöf; Paolo Ribeca; Irina Pulyakhina; Daniela Esser; Thomas Giger; Andrew Tikhonov; Marc Sultan; G. Bertier; Daniel G. MacArthur; Monkol Lek; Esther Lizano; Henk P. J. Buermans; Ismael Padioleau; Thomas Schwarzmayr; Olof Karlberg; Halit Ongen

Genome sequencing projects are discovering millions of genetic variants in humans, and interpretation of their functional effects is essential for understanding the genetic basis of variation in human traits. Here we report sequencing and deep analysis of messenger RNA and microRNA from lymphoblastoid cell lines of 462 individuals from the 1000 Genomes Project—the first uniformly processed high-throughput RNA-sequencing data from multiple human populations with high-quality genome sequences. We discover extremely widespread genetic variation affecting the regulation of most genes, with transcript structure and expression level variation being equally common but genetically largely independent. Our characterization of causal regulatory variation sheds light on the cellular mechanisms of regulatory and loss-of-function variation, and allows us to infer putative causal variants for dozens of disease-associated loci. Altogether, this study provides a deep understanding of the cellular mechanisms of transcriptome variation and of the landscape of functional variants in the human genome.


Nature Genetics | 2010

A genome-wide association study identifies new psoriasis susceptibility loci and an interaction between HLA-C and ERAP1

Amy Strange; Francesca Capon; Chris C. A. Spencer; Jo Knight; Michael E. Weale; Michael H. Allen; Anne Barton; Céline Bellenguez; Judith G.M. Bergboer; Jenefer M. Blackwell; Elvira Bramon; Suzannah Bumpstead; Juan P. Casas; Michael J. Cork; Aiden Corvin; Panos Deloukas; Alexander Dilthey; Audrey Duncanson; Sarah Edkins; Xavier Estivill; Oliver FitzGerald; Colin Freeman; Emiliano Giardina; Emma Gray; Angelika Hofer; Ulrike Hüffmeier; Sarah Hunt; Alan D. Irvine; Janusz Jankowski; Brian J. Kirby

To identify new susceptibility loci for psoriasis, we undertook a genome-wide association study of 594,224 SNPs in 2,622 individuals with psoriasis and 5,667 controls. We identified associations at eight previously unreported genomic loci. Seven loci harbored genes with recognized immune functions (IL28RA, REL, IFIH1, ERAP1, TRAF3IP2, NFKBIA and TYK2). These associations were replicated in 9,079 European samples (six loci with a combined P < 5 × 10−8 and two loci with a combined P < 5 × 10−7). We also report compelling evidence for an interaction between the HLA-C and ERAP1 loci (combined P = 6.95 × 10−6). ERAP1 plays an important role in MHC class I peptide processing. ERAP1 variants only influenced psoriasis susceptibility in individuals carrying the HLA-C risk allele. Our findings implicate pathways that integrate epidermal barrier dysfunction with innate and adaptive immune dysregulation in psoriasis pathogenesis.


Nature | 2015

The fine-scale genetic structure of the British population

Stephen Leslie; Bruce Winney; Garrett Hellenthal; Dan Davison; Abdelhamid Boumertit; Tammy Day; Katarzyna Hutnik; Ellen C. Royrvik; Barry Cunliffe; Daniel John Lawson; Daniel Falush; Colin Freeman; Matti Pirinen; Simon Myers; Mark S. Robinson; Peter Donnelly; Walter F. Bodmer

Fine-scale genetic variation between human populations is interesting as a signature of historical demographic events and because of its potential for confounding disease studies. We use haplotype-based statistical methods to analyse genome-wide single nucleotide polymorphism (SNP) data from a carefully chosen geographically diverse sample of 2,039 individuals from the United Kingdom. This reveals a rich and detailed pattern of genetic differentiation with remarkable concordance between genetic clusters and geography. The regional genetic differentiation and differing patterns of shared ancestry with 6,209 individuals from across Europe carry clear signals of historical demographic events. We estimate the genetic contribution to southeastern England from Anglo-Saxon migrations to be under half, and identify the regions not carrying genetic material from these migrations. We suggest significant pre-Roman but post-Mesolithic movement into southeastern England from continental Europe, and show that in non-Saxon parts of the United Kingdom, there exist genetically differentiated subgroups rather than a general ‘Celtic’ population.


Nature Genetics | 2015

The impact of low-frequency and rare variants on lipid levels

Ida Surakka; Momoko Horikoshi; Reedik Mägi; Antti-Pekka Sarin; Anubha Mahajan; Vasiliki Lagou; Letizia Marullo; Teresa Ferreira; Benjamin Miraglio; Sanna Timonen; Johannes Kettunen; Matti Pirinen; Juha Karjalainen; Gudmar Thorleifsson; Sara Hägg; Jouke-Jan Hottenga; Aaron Isaacs; Claes Ladenvall; Marian Beekman; Tonu Esko; Janina S. Ried; Christopher P. Nelson; Christina Willenborg; Stefan Gustafsson; Harm-Jan Westra; Matthew Blades; Anton J. M. de Craen; Eco J. C. de Geus; Joris Deelen; Harald Grallert

Using a genome-wide screen of 9.6 million genetic variants achieved through 1000 Genomes Project imputation in 62,166 samples, we identify association to lipid traits in 93 loci, including 79 previously identified loci with new lead SNPs and 10 new loci, 15 loci with a low-frequency lead SNP and 10 loci with a missense lead SNP, and 2 loci with an accumulation of rare variants. In six loci, SNPs with established function in lipid genetics (CELSR2, GCKR, LIPC and APOE) or candidate missense mutations with predicted damaging function (CD300LG and TM6SF2) explained the locus associations. The low-frequency variants increased the proportion of variance explained, particularly for low-density lipoprotein cholesterol and total cholesterol. Altogether, our results highlight the impact of low-frequency variants in complex traits and show that imputation offers a cost-effective alternative to resequencing.


Science | 2015

Human genomics. Effect of predicted protein-truncating genetic variants on the human transcriptome

Manuel A. Rivas; Matti Pirinen; Donald F. Conrad; Monkol Lek; Emily K. Tsang; Konrad J. Karczewski; Julian Maller; Kimberly R. Kukurba; David S. DeLuca; Menachem Fromer; Pedro G. Ferreira; Kevin S. Smith; Rui Zhang; Fengmei Zhao; Eric Banks; Ryan Poplin; Douglas M. Ruderfer; Shaun Purcell; Taru Tukiainen; Eric Vallabh Minikel; Peter D. Stenson; David Neil Cooper; Katharine H. Huang; Timothy J. Sullivan; Jared L. Nedzel; Carlos Bustamante; Jin Billy Li; Mark J. Daly; Roderic Guigó; Peter Donnelly

Expression, genetic variation, and tissues Human genomes show extensive genetic variation across individuals, but we have only just started documenting the effects of this variation on the regulation of gene expression. Furthermore, only a few tissues have been examined per genetic variant. In order to examine how genetic expression varies among tissues within individuals, the Genotype-Tissue Expression (GTEx) Consortium collected 1641 postmortem samples covering 54 body sites from 175 individuals. They identified quantitative genetic traits that affect gene expression and determined which of these exhibit tissue-specific expression patterns. Melé et al. measured how transcription varies among tissues, and Rivas et al. looked at how truncated protein variants affect expression across tissues. Science, this issue p. 648, p. 660, p. 666; see also p. 640 Protein-truncated variants impact gene expression levels and splicing across human tissues. [Also see Perspective by Gibson] Accurate prediction of the functional effect of genetic variation is critical for clinical genome interpretation. We systematically characterized the transcriptome effects of protein-truncating variants, a class of variants expected to have profound effects on gene function, using data from the Genotype-Tissue Expression (GTEx) and Geuvadis projects. We quantitated tissue-specific and positional effects on nonsense-mediated transcript decay and present an improved predictive model for this decay. We directly measured the effect of variants both proximal and distal to splice junctions. Furthermore, we found that robustness to heterozygous gene inactivation is not due to dosage compensation. Our results illustrate the value of transcriptome data in the functional interpretation of genetic variants.


Nature Communications | 2016

Genome-wide study for circulating metabolites identifies 62 loci and reveals novel systemic effects of LPA

Johannes Kettunen; Ayse Demirkan; Peter Würtz; Harmen H. M. Draisma; Toomas Haller; Rajesh Rawal; Anika A.M. Vaarhorst; Antti J. Kangas; Leo-Pekka Lyytikäinen; Matti Pirinen; René Pool; Antti-Pekka Sarin; Pasi Soininen; Taru Tukiainen; Qin Wang; Mika Tiainen; Tuulia Tynkkynen; Najaf Amin; Tanja Zeller; Marian Beekman; Joris Deelen; Ko Willems van Dijk; Tonu Esko; Jouke-Jan Hottenga; Elisabeth M. van Leeuwen; Terho Lehtimäki; Evelin Mihailov; Richard J. Rose; Anton J. M. de Craen; Christian Gieger

Genome-wide association studies have identified numerous loci linked with complex diseases, for which the molecular mechanisms remain largely unclear. Comprehensive molecular profiling of circulating metabolites captures highly heritable traits, which can help to uncover metabolic pathophysiology underlying established disease variants. We conduct an extended genome-wide association study of genetic influences on 123 circulating metabolic traits quantified by nuclear magnetic resonance metabolomics from up to 24,925 individuals and identify eight novel loci for amino acids, pyruvate and fatty acids. The LPA locus link with cardiovascular risk exemplifies how detailed metabolic profiling may inform underlying aetiology via extensive associations with very-low-density lipoprotein and triglyceride metabolism. Genetic fine mapping and Mendelian randomization uncover wide-spread causal effects of lipoprotein(a) on overall lipoprotein metabolism and we assess potential pleiotropic consequences of genetically elevated lipoprotein(a) on diverse morbidities via electronic health-care records. Our findings strengthen the argument for safe LPA-targeted intervention to reduce cardiovascular risk.


Genome Research | 2015

The landscape of genomic imprinting across diverse adult human tissues

Yael Baran; Meena Subramaniam; Anne Biton; Taru Tukiainen; Emily K. Tsang; Manuel A. Rivas; Matti Pirinen; Maria Gutierrez-Arcelus; Kevin S. Smith; Kim R. Kukurba; Rui Zhang; Celeste Eng; Dara G. Torgerson; Cydney Urbanek; Jin Billy Li; Jose R. Rodriguez-Santana; Esteban G. Burchard; Max A. Seibold; Daniel G. MacArthur; Stephen B. Montgomery; Noah Zaitlen; Tuuli Lappalainen

Genomic imprinting is an important regulatory mechanism that silences one of the parental copies of a gene. To systematically characterize this phenomenon, we analyze tissue specificity of imprinting from allelic expression data in 1582 primary tissue samples from 178 individuals from the Genotype-Tissue Expression (GTEx) project. We characterize imprinting in 42 genes, including both novel and previously identified genes. Tissue specificity of imprinting is widespread, and gender-specific effects are revealed in a small number of genes in muscle with stronger imprinting in males. IGF2 shows maternal expression in the brain instead of the canonical paternal expression elsewhere. Imprinting appears to have only a subtle impact on tissue-specific expression levels, with genes lacking a systematic expression difference between tissues with imprinted and biallelic expression. In summary, our systematic characterization of imprinting in adult tissues highlights variation in imprinting between genes, individuals, and tissues.


Nature Genetics | 2013

Common variants in the HLA-DRB1-HLA-DQA1 HLA class II region are associated with susceptibility to visceral leishmaniasis

Michaela Fakiola; Amy Strange; Heather J. Cordell; E. Nancy Miller; Matti Pirinen; Zhan Su; Anshuman Mishra; Sanjana Mehrotra; Gloria R. Monteiro; Gavin Band; Céline Bellenguez; Serge Dronov; Sarah Edkins; Colin Freeman; Eleni Giannoulatou; Emma Gray; Sarah Hunt; Henio G. Lacerda; Cordelia Langford; Richard D. Pearson; Núbia N. Pontes; Madhukar Rai; Shri P Singh; Linda Smith; Olivia Sousa; Damjan Vukcevic; Elvira Bramon; Matthew A. Brown; Juan P. Casas; Aiden Corvin

To identify susceptibility loci for visceral leishmaniasis, we undertook genome-wide association studies in two populations: 989 cases and 1,089 controls from India and 357 cases in 308 Brazilian families (1,970 individuals). The HLA-DRB1–HLA-DQA1 locus was the only region to show strong evidence of association in both populations. Replication at this region was undertaken in a second Indian population comprising 941 cases and 990 controls, and combined analysis across the three cohorts for rs9271858 at this locus showed Pcombined = 2.76 × 10−17 and odds ratio (OR) = 1.41, 95% confidence interval (CI) = 1.30–1.52. A conditional analysis provided evidence for multiple associations within the HLA-DRB1–HLA-DQA1 region, and a model in which risk differed between three groups of haplotypes better explained the signal and was significant in the Indian discovery and replication cohorts. In conclusion, the HLA-DRB1–HLA-DQA1 HLA class II region contributes to visceral leishmaniasis susceptibility in India and Brazil, suggesting shared genetic risk factors for visceral leishmaniasis that cross the epidemiological divides of geography and parasite species.


Nature Genetics | 2012

Including known covariates can reduce power to detect genetic effects in case-control studies

Matti Pirinen; Peter Donnelly; Chris C. A. Spencer

Genome-wide association studies (GWAS) search for associations between genetic variants and disease status, typically via logistic regression. Often there are covariates, such as sex or well-established major genetic factors, that are known to affect disease susceptibility and are independent of tested genotypes at the population level. We show theoretically and with data from recent GWAS on multiple sclerosis, psoriasis and ankylosing spondylitis that inclusion of known covariates can substantially reduce power for the identification of associated variants when the disease prevalence is lower than a few percent. Whether the inclusion of such covariates reduces or increases power to detect genetic effects depends on various factors, including the prevalence of the disease studied. When the disease is common (prevalence of >20%), the inclusion of covariates typically increases power, whereas, for rarer diseases, it can often decrease power to detect new genetic associations.


The Annals of Applied Statistics | 2013

Efficient computation with a linear mixed model on large-scale data sets with applications to genetic studies

Matti Pirinen; Peter Donnelly; Chris C. A. Spencer

Motivated by genome-wide association studies, we consider a standard linear model with one additional random effect in situations where many predictors have been collected on the same subjects and each predictor is analyzed separately. Three novel contributions are (1) a transformation between the linear and log-odds scales which is accurate for the important genetic case of small effect sizes; (2) a likelihood-maximization algorithm that is an order of magnitude faster than the previously published approaches; and (3) efficient methods for computing marginal likelihoods which allow Bayesian model comparison. The methodology has been successfully applied to a large-scale association study of multiple sclerosis including over 20,000 individuals and 500,000 genetic variants.

Collaboration


Dive into the Matti Pirinen's collaboration.

Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Aki S. Havulinna

National Institute for Health and Welfare

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Emma Gray

Wellcome Trust Sanger Institute

View shared research outputs
Top Co-Authors

Avatar

Sarah Edkins

Wellcome Trust Sanger Institute

View shared research outputs
Top Co-Authors

Avatar
Researchain Logo
Decentralizing Knowledge