Ümit Seren
Austrian Academy of Sciences
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Publication
Featured researches published by Ümit Seren.
Nature Genetics | 2012
Vincent Segura; Bjarni J. Vilhjálmsson; Alexander Platt; Arthur Korte; Ümit Seren; Quan Long; Magnus Nordborg
Population structure causes genome-wide linkage disequilibrium between unlinked loci, leading to statistical confounding in genome-wide association studies. Mixed models have been shown to handle the confounding effects of a diffuse background of large numbers of loci of small effect well, but they do not always account for loci of larger effect. Here we propose a multi-locus mixed model as a general method for mapping complex traits in structured populations. Simulations suggest that our method outperforms existing methods in terms of power as well as false discovery rate. We apply our method to human and Arabidopsis thaliana data, identifying new associations and evidence for allelic heterogeneity. We also show how a priori knowledge from an A. thaliana linkage mapping study can be integrated into our method using a Bayesian approach. Our implementation is computationally efficient, making the analysis of large data sets (n > 10,000) practicable.
Cell | 2016
Carlos Alonso-Blanco; Jorge Andrade; Claude Becker; Felix Bemm; Joy Bergelson; Karsten M. Borgwardt; Jun Cao; Eunyoung Chae; Todd M. Dezwaan; Wei Ding; Joseph R. Ecker; Moises Exposito-Alonso; Ashley Farlow; Joffrey Fitz; Xiangchao Gan; Dominik Grimm; Angela M. Hancock; Stefan R. Henz; Svante Holm; Matthew Horton; Mike Jarsulic; Randall A. Kerstetter; Arthur Korte; Pamela Korte; Christa Lanz; Cheng-Ruei Lee; Dazhe Meng; Todd P. Michael; Richard Mott; Ni Wayan Muliyati
Summary Arabidopsis thaliana serves as a model organism for the study of fundamental physiological, cellular, and molecular processes. It has also greatly advanced our understanding of intraspecific genome variation. We present a detailed map of variation in 1,135 high-quality re-sequenced natural inbred lines representing the native Eurasian and North African range and recently colonized North America. We identify relict populations that continue to inhabit ancestral habitats, primarily in the Iberian Peninsula. They have mixed with a lineage that has spread to northern latitudes from an unknown glacial refugium and is now found in a much broader spectrum of habitats. Insights into the history of the species and the fine-scale distribution of genetic diversity provide the basis for full exploitation of A. thaliana natural variation through integration of genomes and epigenomes with molecular and non-molecular phenotypes.
Nature Genetics | 2013
Quan Long; Fernando A. Rabanal; Dazhe Meng; Christian D. Huber; Ashley Farlow; Alexander Platzer; Qingrun Zhang; Bjarni J. Vilhjálmsson; Arthur Korte; Viktoria Nizhynska; Viktor Voronin; Pamela Korte; Laura Sedman; Terezie Mandáková; Martin A. Lysak; Ümit Seren; Ines Hellmann; Magnus Nordborg
Despite advances in sequencing, the goal of obtaining a comprehensive view of genetic variation in populations is still far from reached. We sequenced 180 lines of A. thaliana from Sweden to obtain as complete a picture as possible of variation in a single region. Whereas simple polymorphisms in the unique portion of the genome are readily identified, other polymorphisms are not. The massive variation in genome size identified by flow cytometry seems largely to be due to 45S rDNA copy number variation, with lines from northern Sweden having particularly large numbers of copies. Strong selection is evident in the form of long-range linkage disequilibrium (LD), as well as in LD between nearby compensatory mutations. Many footprints of selective sweeps were found in lines from northern Sweden, and a massive global sweep was shown to have involved a 700-kb transposition.
The Plant Cell | 2012
Ümit Seren; Bjarni J. Vilhjálmsson; Matthew Horton; Dazhe Meng; Petar Forai; Yu S. Huang; Quan Long; Vincent Segura; Magnus Nordborg
A user-friendly, interactive Web-based application is presented for conducting genome-wide association studies in Arabidopsis. Genome-wide scans for association between phenotype and ∼206,000 single nucleotide polymorphisms in 1386 public accessions can be completed in minutes. The application combines a state-of-the-art mixed model with interactive Manhattan and linkage disequilibrium plots, making it easy to carry out exploratory analyses without programming skills. Arabidopsis thaliana is an important model organism for understanding the genetics and molecular biology of plants. Its highly selfing nature, small size, short generation time, small genome size, and wide geographic distribution make it an ideal model organism for understanding natural variation. Genome-wide association studies (GWAS) have proven a useful technique for identifying genetic loci responsible for natural variation in A. thaliana. Previously genotyped accessions (natural inbred lines) can be grown in replicate under different conditions and phenotyped for different traits. These important features greatly simplify association mapping of traits and allow for systematic dissection of the genetics of natural variation by the entire A. thaliana community. To facilitate this, we present GWAPP, an interactive Web-based application for conducting GWAS in A. thaliana. Using an efficient implementation of a linear mixed model, traits measured for a subset of 1386 publicly available ecotypes can be uploaded and mapped with a mixed model and other methods in just a couple of minutes. GWAPP features an extensive, interactive, and user-friendly interface that includes interactive Manhattan plots and linkage disequilibrium plots. It also facilitates exploratory data analysis by implementing features such as the inclusion of candidate polymorphisms in the model as cofactors.
Plant Methods | 2016
Hanna Ćwiek-Kupczyńska; Thomas Altmann; Daniel Arend; Elizabeth Arnaud; Dijun Chen; Guillaume Cornut; Fabio Fiorani; Wojciech Frohmberg; Astrid Junker; Christian Klukas; Matthias Lange; Cezary Mazurek; Anahita Nafissi; Pascal Neveu; Jan van Oeveren; Cyril Pommier; Hendrik Poorter; Philippe Rocca-Serra; Susanna-Assunta Sansone; Uwe Scholz; Marco van Schriek; Ümit Seren; Björn Usadel; Stephan Weise; Paul J. Kersey; Paweł Krajewski
BackgroundPlant phenotypic data shrouds a wealth of information which, when accurately analysed and linked to other data types, brings to light the knowledge about the mechanisms of life. As phenotyping is a field of research comprising manifold, diverse and time-consuming experiments, the findings can be fostered by reusing and combining existing datasets. Their correct interpretation, and thus replicability, comparability and interoperability, is possible provided that the collected observations are equipped with an adequate set of metadata. So far there have been no common standards governing phenotypic data description, which hampered data exchange and reuse.ResultsIn this paper we propose the guidelines for proper handling of the information about plant phenotyping experiments, in terms of both the recommended content of the description and its formatting. We provide a document called “Minimum Information About a Plant Phenotyping Experiment”, which specifies what information about each experiment should be given, and a Phenotyping Configuration for the ISA-Tab format, which allows to practically organise this information within a dataset. We provide examples of ISA-Tab-formatted phenotypic data, and a general description of a few systems where the recommendations have been implemented.ConclusionsAcceptance of the rules described in this paper by the plant phenotyping community will help to achieve findable, accessible, interoperable and reusable data.
eLife | 2016
Envel Kerdaffrec; Daniele L. Filiault; Arthur Korte; Eriko Sasaki; Viktoria Nizhynska; Ümit Seren; Magnus Nordborg
Seed dormancy is a complex life history trait that determines the timing of germination and is crucial for local adaptation. Genetic studies of dormancy are challenging, because the trait is highly plastic and strongly influenced by the maternal environment. Using a combination of statistical and experimental approaches, we show that multiple alleles at the previously identified dormancy locus DELAY OF GERMINATION1 jointly explain as much as 57% of the variation observed in Swedish Arabidopsis thaliana, but give rise to spurious associations that seriously mislead genome-wide association studies unless modeled correctly. Field experiments confirm that the major alleles affect germination as well as survival under natural conditions, and demonstrate that locally adaptive traits can sometimes be dissected genetically. DOI: http://dx.doi.org/10.7554/eLife.22502.001
Nucleic Acids Research | 2017
Ümit Seren; Dominik Grimm; Joffrey Fitz; Detlef Weigel; Magnus Nordborg; Karsten M. Borgwardt; Arthur Korte
Natural genetic variation makes it possible to discover evolutionary changes that have been maintained in a population because they are advantageous. To understand genotype–phenotype relationships and to investigate trait architecture, the existence of both high-resolution genotypic and phenotypic data is necessary. Arabidopsis thaliana is a prime model for these purposes. This herb naturally occurs across much of the Eurasian continent and North America. Thus, it is exposed to a wide range of environmental factors and has been subject to natural selection under distinct conditions. Full genome sequencing data for more than 1000 different natural inbred lines are available, and this has encouraged the distributed generation of many types of phenotypic data. To leverage these data for meta analyses, AraPheno (https://arapheno.1001genomes.org) provide a central repository of population-scale phenotypes for A. thaliana inbred lines. AraPheno includes various features to easily access, download and visualize the phenotypic data. This will facilitate a comparative analysis of the many different types of phenotypic data, which is the base to further enhance our understanding of the genotype–phenotype map.
Database | 2011
Yu S. Huang; Matthew Horton; Bjarni J. Vilhjálmsson; Ümit Seren; Dazhe Meng; Christopher Meyer; Muhammad Ali Amer; Justin O. Borevitz; Joy Bergelson; Magnus Nordborg
With large-scale genomic data becoming the norm in biological studies, the storing, integrating, viewing and searching of such data have become a major challenge. In this article, we describe the development of an Arabidopsis thaliana database that hosts the geographic information and genetic polymorphism data for over 6000 accessions and genome-wide association study (GWAS) results for 107 phenotypes representing the largest collection of Arabidopsis polymorphism data and GWAS results to date. Taking advantage of a series of the latest web 2.0 technologies, such as Ajax (Asynchronous JavaScript and XML), GWT (Google-Web-Toolkit), MVC (Model-View-Controller) web framework and Object Relationship Mapper, we have created a web-based application (web app) for the database, that offers an integrated and dynamic view of geographic information, genetic polymorphism and GWAS results. Essential search functionalities are incorporated into the web app to aid reverse genetics research. The database and its web app have proven to be a valuable resource to the Arabidopsis community. The whole framework serves as an example of how biological data, especially GWAS, can be presented and accessed through the web. In the end, we illustrate the potential to gain new insights through the web app by two examples, showcasing how it can be used to facilitate forward and reverse genetics research. Database URL: http://arabidopsis.usc.edu/
Nucleic Acids Research | 2018
Matteo Togninalli; Ümit Seren; Dazhe Meng; Joffrey Fitz; Magnus Nordborg; Detlef Weigel; Karsten M. Borgwardt; Arthur Korte; Dominik Grimm
Abstract The abundance of high-quality genotype and phenotype data for the model organism Arabidopsis thaliana enables scientists to study the genetic architecture of many complex traits at an unprecedented level of detail using genome-wide association studies (GWAS). GWAS have been a great success in A. thaliana and many SNP-trait associations have been published. With the AraGWAS Catalog (https://aragwas.1001genomes.org) we provide a publicly available, manually curated and standardized GWAS catalog for all publicly available phenotypes from the central A. thaliana phenotype repository, AraPheno. All GWAS have been recomputed on the latest imputed genotype release of the 1001 Genomes Consortium using a standardized GWAS pipeline to ensure comparability between results. The catalog includes currently 167 phenotypes and more than 222 000 SNP-trait associations with P < 10−4, of which 3887 are significantly associated using permutation-based thresholds. The AraGWAS Catalog can be accessed via a modern web-interface and provides various features to easily access, download and visualize the results and summary statistics across GWAS.
Methods of Molecular Biology | 2015
Radka Slovak; Christian Göschl; Ümit Seren; Wolfgang Busch
Genome-wide association (GWA) mapping is a powerful technique to address the molecular basis of genotype to phenotype relationships and to map regulators of biological processes. This chapter presents a protocol for genome-wide association mapping in Arabidopsis thaliana using the user-friendly internet application GWAPP, and provides a specific protocol for acquiring root trait data suitable for GWA studies using the semi-automated, high-throughput phenotyping pipeline BRAT for early root growth.