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Dive into the research topics where Peter Würtz is active.

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Featured researches published by Peter Würtz.


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.


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.


Diabetes Care | 2012

Circulating Metabolite Predictors of Glycemia in Middle-Aged Men and Women

Peter Würtz; Mika Tiainen; Ville Petteri Mäkinen; Antti J. Kangas; Pasi Soininen; Juha Saltevo; Sirkka Keinänen-Kiukaanniemi; Pekka Mäntyselkä; Terho Lehtimäki; Markku Laakso; Antti Jula; Mika Kähönen; Mauno Vanhala; Mika Ala-Korpela

OBJECTIVE Metabolite predictors of deteriorating glucose tolerance may elucidate the pathogenesis of type 2 diabetes. We investigated associations of circulating metabolites from high-throughput profiling with fasting and postload glycemia cross-sectionally and prospectively on the population level. RESEARCH DESIGN AND METHODS Oral glucose tolerance was assessed in two Finnish, population-based studies consisting of 1,873 individuals (mean age 52 years, 58% women) and reexamined after 6.5 years for 618 individuals in one of the cohorts. Metabolites were quantified by nuclear magnetic resonance spectroscopy from fasting serum samples. Associations were studied by linear regression models adjusted for established risk factors. RESULTS Nineteen circulating metabolites, including amino acids, gluconeogenic substrates, and fatty acid measures, were cross-sectionally associated with fasting and/or postload glucose (P < 0.001). Among these metabolic intermediates, branched-chain amino acids, phenylalanine, and α1-acid glycoprotein were predictors of both fasting and 2-h glucose at 6.5-year follow-up (P < 0.05), whereas alanine, lactate, pyruvate, and tyrosine were uniquely associated with 6.5-year postload glucose (P = 0.003–0.04). None of the fatty acid measures were prospectively associated with glycemia. Changes in fatty acid concentrations were associated with changes in fasting and postload glycemia during follow-up; however, changes in branched-chain amino acids did not follow glucose dynamics, and gluconeogenic substrates only paralleled changes in fasting glucose. CONCLUSIONS Alterations in branched-chain and aromatic amino acid metabolism precede hyperglycemia in the general population. Further, alanine, lactate, and pyruvate were predictive of postchallenge glucose exclusively. These gluconeogenic precursors are potential markers of long-term impaired insulin sensitivity that may relate to attenuated glucose tolerance later in life.


European Heart Journal | 2012

High-throughput quantification of circulating metabolites improves prediction of subclinical atherosclerosis

Peter Würtz; Juho Raiko; Costan G. Magnussen; Pasi Soininen; Antti J. Kangas; Tuulia Tynkkynen; Russell Thomson; Reino Laatikainen; Markku J. Savolainen; Jari Laurikka; Pekka Kuukasjärvi; Matti Tarkka; Pekka J. Karhunen; Antti Jula; Jorma Viikari; Mika Kähönen; Terho Lehtimäki; Markus Juonala; Mika Ala-Korpela; Olli T. Raitakari

AIMSnHigh-throughput metabolite quantification holds promise for cardiovascular risk assessment. Here, we evaluated whether metabolite quantification by nuclear magnetic resonance (NMR) improves prediction of subclinical atherosclerosis in comparison to conventional lipid testing.nnnMETHODS AND RESULTSnCirculating lipids, lipoprotein subclasses, and small molecules were assayed by NMR for 1595 individuals aged 24-39 years from the population-based Cardiovascular Risk in Young Finns Study. Carotid intima-media thickness (IMT), a marker of subclinical atherosclerosis, was measured in 2001 and 2007. Baseline conventional risk factors and systemic metabolites were used to predict 6-year incidence of high IMT (≥ 90 th percentile) or plaque. The best prediction of high intima-media thickness was achieved when total and HDL cholesterol were replaced by NMR-determined LDL cholesterol and medium HDL, docosahexaenoic acid, and tyrosine in prediction models with risk factors from the Framingham risk score. The extended prediction model improved risk stratification beyond established risk factors alone; area under the receiver operating characteristic curve 0.764 vs. 0.737, P =0.02, and net reclassification index 17.6%, P =0.0008. Higher docosahexaenoic acid levels were associated with decreased risk for incident high IMT (odds ratio: 0.74; 95% confidence interval: 0.67-0.98; P = 0.007). Tyrosine (1.33; 1.10-1.60; P = 0.003) and glutamine (1.38; 1.13-1.68; P = 0.001) levels were associated with 6-year incident high IMT independent of lipid measures. Furthermore, these amino acids were cross-sectionally associated with carotid IMT and the presence of angiographically ascertained coronary artery disease in independent populations.nnnCONCLUSIONnHigh-throughput metabolite quantification, with new systemic biomarkers, improved risk stratification for subclinical atherosclerosis in comparison to conventional lipids and could potentially be useful for early cardiovascular risk assessment.


PLOS ONE | 2011

A differential network approach to exploring differences between biological states: An application to prediabetes

Beatriz Valcárcel; Peter Würtz; Nafisa-Katrin Seich al Basatena; Taru Tukiainen; Antti J. Kangas; Pasi Soininen; Marjo-Riitta Järvelin; Mika Ala-Korpela; Timothy M. D. Ebbels; Maria De Iorio

Background Variations in the pattern of molecular associations are observed during disease development. The comprehensive analysis of molecular association patterns and their changes in relation to different physiological conditions can yield insight into the biological basis of disease-specific phenotype variation. Methodology Here, we introduce a formal statistical method for the differential analysis of molecular associations via network representation. We illustrate our approach with extensive data on lipoprotein subclasses measured by NMR spectroscopy in 4,406 individuals with normal fasting glucose, and 531 subjects with impaired fasting glucose (prediabetes). We estimate the pair-wise association between measures using shrinkage estimates of partial correlations and build the differential network based on this measure of association. We explore the topological properties of the inferred network to gain insight into important metabolic differences between individuals with normal fasting glucose and prediabetes. Conclusions/Significance Differential networks provide new insights characterizing differences in biological states. Based on conventional statistical methods, few differences in concentration levels of lipoprotein subclasses were found between individuals with normal fasting glucose and individuals with prediabetes. By performing the differential analysis of networks, several characteristic changes in lipoprotein metabolism known to be related to diabetic dyslipidemias were identified. The results demonstrate the applicability of the new approach to identify key molecular changes inaccessible to standard approaches.


Analyst | 2009

High-throughput serum NMR metabonomics for cost-effective holistic studies on systemic metabolism

Pasi Soininen; Antti J. Kangas; Peter Würtz; Taru Tukiainen; Tuulia Tynkkynen; Reino Laatikainen; Marjo-Riitta Järvelin; Mika Kähönen; Terho Lehtimäki; Jorma Viikari; Olli T. Raitakari; Markku J. Savolainen; Mika Ala-Korpela


Archive | 2017

Disclaimer: The manuscript and its contents are confidential, intended for journal review purposes only, and not to be further disclosed.

Mika Ala-Korpela; Peter Würtz; Pasi Soininen; Caroline Dale; Tom R. Gaunt


WOS | 2017

Comprehensive metabolic profiling of statin therapy: longitudinal evidence and Mendelian randomization

Peter Würtz; Qin Wang; Pasi Soininen; Antti J. Kangas; Aroon D. Hingorani; Terho Lehtimäki; Juan-Pablo Casas; Veikko Salomaa; Marjo-Ritta Jarvelin; G. Davey Smith; Debbie A. Lawlor; Olli T. Raitakari; Nishi Chaturvedi; Johannes Kettunen; Mika Ala-Korpela


European Heart Journal | 2017

P5362Metabolomic signature of incident type 2 diabetes: evidence from NMR in over 18,000 individuals

A.V. Ahola-Olli; Peter Würtz; J. Kettunen; Mika Ala-Korpela; Antti J. Kangas; Pasi Soininen; J. Jokelainen; Tapani Rönnemaa; Jorma Viikari; Terho Lehtimäki; Markus Juonala; Markus Perola; M.R. Jarvelin; Veikko Salomaa; Olli T. Raitakari


In: (Proceedings) Annual Meeting of the International-Genetic-Epidemiology-Society (IGES). (pp. p. 545). WILEY-BLACKWELL (2015) | 2015

Characterisation of the metabolic impact of rare genetic variation within APOC3: Proton NMR based analysis of rare variant gene effects

Tom Dudding; Fotios Drenos; Johannes Kettunen; Peter Würtz; Pasi Soininen; Antti J. Kangas; Aroon D. Hingorani; Tom R. Gaunt; Juan P. Casas; Mika Ala Korpela; George Davey Smith; Nicholas J. Timpson

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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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Jorma Viikari

Turku University Hospital

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