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Dive into the research topics where Taru Tukiainen is active.

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Featured researches published by Taru Tukiainen.


Nature | 2016

Analysis of protein-coding genetic variation in 60,706 humans

Monkol Lek; Konrad J. Karczewski; Eric Vallabh Minikel; Kaitlin E. Samocha; Eric Banks; Timothy Fennell; Anne H. O’Donnell-Luria; James S. Ware; Andrew Hill; Beryl B. Cummings; Taru Tukiainen; Daniel P. Birnbaum; Jack A. Kosmicki; Laramie Duncan; Karol Estrada; Fengmei Zhao; James Zou; Emma Pierce-Hoffman; Joanne Berghout; David Neil Cooper; Nicole Deflaux; Mark A. DePristo; Ron Do; Jason Flannick; Menachem Fromer; Laura Gauthier; Jackie Goldstein; Namrata Gupta; Daniel P. Howrigan; Adam Kiezun

Large-scale reference data sets of human genetic variation are critical for the medical and functional interpretation of DNA sequence changes. Here we describe the aggregation and analysis of high-quality exome (protein-coding region) DNA sequence data for 60,706 individuals of diverse ancestries generated as part of the Exome Aggregation Consortium (ExAC). This catalogue of human genetic diversity contains an average of one variant every eight bases of the exome, and provides direct evidence for the presence of widespread mutational recurrence. We have used this catalogue to calculate objective metrics of pathogenicity for sequence variants, and to identify genes subject to strong selection against various classes of mutation; identifying 3,230 genes with near-complete depletion of predicted protein-truncating variants, with 72% of these genes having no currently established human disease phenotype. Finally, we demonstrate that these data can be used for the efficient filtering of candidate disease-causing variants, and for the discovery of human ‘knockout’ variants in protein-coding genes.


Nature Genetics | 2012

Genome-wide association study identifies multiple loci influencing human serum metabolite levels

Johannes Kettunen; Taru Tukiainen; Antti-Pekka Sarin; Alfredo Ortega-Alonso; Emmi Tikkanen; L. P. Lyytikäinen; Antti J. Kangas; Pasi Soininen; Peter Würtz; Kaisa Silander; Danielle M. Dick; Richard J. Rose; Markku J. Savolainen; J. Viikari; Mika Kähönen; Terho Lehtimäki; Kirsi H. Pietiläinen; Michael Inouye; Mark I. McCarthy; Antti Jula; Johan G. Eriksson; Olli T. Raitakari; Salomaa; Jaakko Kaprio; Järvelin Mr; Leena Peltonen; Markus Perola; Nelson B. Freimer; Mika Ala-Korpela; Aarno Palotie

Nuclear magnetic resonance assays allow for measurement of a wide range of metabolic phenotypes. We report here the results of a GWAS on 8,330 Finnish individuals genotyped and imputed at 7.7 million SNPs for a range of 216 serum metabolic phenotypes assessed by NMR of serum samples. We identified significant associations (P < 2.31 × 10−10) at 31 loci, including 11 for which there have not been previous reports of associations to a metabolic trait or disorder. Analyses of Finnish twin pairs suggested that the metabolic measures reported here show higher heritability than comparable conventional metabolic phenotypes. In accordance with our expectations, SNPs at the 31 loci associated with individual metabolites account for a greater proportion of the genetic component of trait variance (up to 40%) than is typically observed for conventional serum metabolic phenotypes. The identification of such associations may provide substantial insight into cardiometabolic disorders.


PLOS Genetics | 2014

Distribution and Medical Impact of Loss-of-Function Variants in the Finnish Founder Population.

Elaine T. Lim; Peter Würtz; Aki S. Havulinna; Priit Palta; Taru Tukiainen; Karola Rehnström; Tonu Esko; Reedik Mägi; Michael Inouye; Tuuli Lappalainen; Yingleong Chan; Rany M. Salem; Monkol Lek; Jason Flannick; Xueling Sim; Alisa K. Manning; Claes Ladenvall; Suzannah Bumpstead; Eija Hämäläinen; Kristiina Aalto; Mikael Maksimow; Marko Salmi; Stefan Blankenberg; Diego Ardissino; Svati H. Shah; Benjamin D. Horne; Ruth McPherson; Gerald K. Hovingh; Muredach P. Reilly; Hugh Watkins

Exome sequencing studies in complex diseases are challenged by the allelic heterogeneity, large number and modest effect sizes of associated variants on disease risk and the presence of large numbers of neutral variants, even in phenotypically relevant genes. Isolated populations with recent bottlenecks offer advantages for studying rare variants in complex diseases as they have deleterious variants that are present at higher frequencies as well as a substantial reduction in rare neutral variation. To explore the potential of the Finnish founder population for studying low-frequency (0.5–5%) variants in complex diseases, we compared exome sequence data on 3,000 Finns to the same number of non-Finnish Europeans and discovered that, despite having fewer variable sites overall, the average Finn has more low-frequency loss-of-function variants and complete gene knockouts. We then used several well-characterized Finnish population cohorts to study the phenotypic effects of 83 enriched loss-of-function variants across 60 phenotypes in 36,262 Finns. Using a deep set of quantitative traits collected on these cohorts, we show 5 associations (p<5×10−8) including splice variants in LPA that lowered plasma lipoprotein(a) levels (P = 1.5×10−117). Through accessing the national medical records of these participants, we evaluate the LPA finding via Mendelian randomization and confirm that these splice variants confer protection from cardiovascular disease (OR = 0.84, P = 3×10−4), demonstrating for the first time the correlation between very low levels of LPA in humans with potential therapeutic implications for cardiovascular diseases. More generally, this study articulates substantial advantages for studying the role of rare variation in complex phenotypes in founder populations like the Finns and by combining a unique population genetic history with data from large population cohorts and centralized research access to National Health Registers.


Diabetes | 2012

Metabolic Signatures of Insulin Resistance in 7,098 Young Adults

Peter Würtz; Ville Petteri Mäkinen; Pasi Soininen; Antti J. Kangas; Taru Tukiainen; Johannes Kettunen; Markku J. Savolainen; Tuija Tammelin; Jorma Viikari; Tapani Rönnemaa; Mika Kähönen; Terho Lehtimäki; Samuli Ripatti; Olli T. Raitakari; Marjo-Riitta Järvelin; Mika Ala-Korpela

Metabolite associations with insulin resistance were studied in 7,098 young Finns (age 31 ± 3 years; 52% women) to elucidate underlying metabolic pathways. Insulin resistance was assessed by the homeostasis model (HOMA-IR) and circulating metabolites quantified by high-throughput nuclear magnetic resonance spectroscopy in two population-based cohorts. Associations were analyzed using regression models adjusted for age, waist, and standard lipids. Branched-chain and aromatic amino acids, gluconeogenesis intermediates, ketone bodies, and fatty acid composition and saturation were associated with HOMA-IR (P < 0.0005 for 20 metabolite measures). Leu, Ile, Val, and Tyr displayed sex- and obesity-dependent interactions, with associations being significant for women only if they were abdominally obese. Origins of fasting metabolite levels were studied with dietary and physical activity data. Here, protein energy intake was associated with Val, Phe, Tyr, and Gln but not insulin resistance index. We further tested if 12 genetic variants regulating the metabolites also contributed to insulin resistance. The genetic determinants of metabolite levels were not associated with HOMA-IR, with the exception of a variant in GCKR associated with 12 metabolites, including amino acids (P < 0.0005). Nonetheless, metabolic signatures extending beyond obesity and lipid abnormalities reflected the degree of insulin resistance evidenced in young, normoglycemic adults with sex-specific fingerprints.


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.


Biochemical and Biophysical Research Communications | 2008

A multi-metabolite analysis of serum by 1H NMR spectroscopy: early systemic signs of Alzheimer's disease.

Taru Tukiainen; Tuulia Tynkkynen; Ville Petteri Mäkinen; Pasi Jylänki; Antti J. Kangas; Johanna Hokkanen; Aki Vehtari; Olli Gröhn; Merja Hallikainen; Hilkka Soininen; Miia Kivipelto; Per-Henrik Groop; Kimmo Kaski; Reino Laatikainen; Pasi Soininen; Tuula Pirttilä; Mika Ala-Korpela

A three-molecular-window approach for (1)H NMR spectroscopy of serum is presented to obtain specific molecular data on lipoproteins, various low-molecular-weight metabolites, and individual lipid molecules together with their degree of (poly)(un)saturation. The multiple data were analysed with self-organising maps, illustrating the strength of the approach as a holistic metabonomics framework in solely data-driven metabolic phenotyping. We studied 180 serum samples of which 30% were related to mild cognitive impairment (MCI), a neuropsychological diagnosis with severely increased risk for Alzheimers disease (AD). The results underline the association between MCI and the metabolic syndrome (MetS). Additionally, the low relativeamount of omega-3 fatty acids appears more indicative of MCI than low serum omega-3 or polyunsaturated fatty acid concentration as such. The analyses also feature the role of elevated glycoproteins in the risk for AD, supporting the view that coexistence of inflammation and the MetS forms a high risk condition for cognitive decline.


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.


Human Molecular Genetics | 2012

Detailed metabolic and genetic characterization reveals new associations for 30 known lipid loci

Taru Tukiainen; Johannes Kettunen; Antti J. Kangas; Leo-Pekka Lyytikäinen; Pasi Soininen; Antti-Pekka Sarin; Emmi Tikkanen; Paul F. O'Reilly; Markku J. Savolainen; Kimmo Kaski; Anneli Pouta; Antti Jula; Terho Lehtimäki; Mika Kähönen; Jorma Viikari; Marja-Riitta Taskinen; Matti Jauhiainen; Johan G. Eriksson; Olli T. Raitakari; Veikko Salomaa; Marjo-Riitta Järvelin; Markus Perola; Aarno Palotie; Mika Ala-Korpela; Samuli Ripatti

Almost 100 genetic loci are known to affect serum cholesterol and triglyceride levels. For many of these loci, the biological function and causal variants remain unknown. We performed an association analysis of the reported 95 lipid loci against 216 metabolite measures, including 95 measurements on lipids and lipoprotein subclasses, obtained via serum nuclear magnetic resonance metabolomics and four enzymatic lipid traits in 8330 individuals from Finland. The genetic variation in the loci was investigated using a dense set of 440 807 directly genotyped and imputed variants around the previously identified lead single nucleotide polymorphisms (SNPs). For 30 of the 95 loci, we identified new metabolic or genetic associations (P < 5 × 10(-8)). In the majority of the loci, the strongest association was to a more specific metabolite measure than the enzymatic lipids. In four loci, the smallest high-density lipoprotein measures showed effects opposite to the larger ones, and 14 loci had associations beyond the individual lipoprotein measures. In 27 loci, we identified SNPs with a stronger association than the previously reported markers and 12 loci harboured multiple, statistically independent variants. Our data show considerable diversity in association patterns between the loci originally identified through associations with enzymatic lipid measures and reveal association profiles of far greater detail than from routine clinical lipid measures. Additionally, a dense marker set and a homogeneous population allow for detailed characterization of the genetic association signals to a resolution exceeding that achieved so far. Further understanding of the rich variability in genetic effects on metabolites provides insights into the biological processes modifying lipid levels.


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.

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Pasi Soininen

University of Eastern Finland

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Mika Ala-Korpela

Helsinki University of Technology

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Johannes Kettunen

National Institute for Health and Welfare

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