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Dive into the research topics where Sveinung Gundersen is active.

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Featured researches published by Sveinung Gundersen.


Genome Biology | 2010

The Genomic HyperBrowser: inferential genomics at the sequence level

Geir Kjetil Sandve; Sveinung Gundersen; Halfdan Rydbeck; Ingrid K. Glad; Lars Holden; Marit Holden; Knut Liestøl; Trevor Clancy; Egil Ferkingstad; Morten Johansen; Vegard Nygaard; Eivind Tøstesen; Arnoldo Frigessi; Eivind Hovig

The immense increase in the generation of genomic scale data poses an unmet analytical challenge, due to a lack of established methodology with the required flexibility and power. We propose a first principled approach to statistical analysis of sequence-level genomic information. We provide a growing collection of generic biological investigations that query pairwise relations between tracks, represented as mathematical objects, along the genome. The Genomic HyperBrowser implements the approach and is available at http://hyperbrowser.uio.no.


Nucleic Acids Research | 2013

The Genomic HyperBrowser: an analysis web server for genome-scale data

Geir Kjetil Sandve; Sveinung Gundersen; Morten Johansen; Ingrid K. Glad; Krishanthi Gunathasan; Lars Holden; Marit Holden; Knut Liestøl; Ståle Nygård; Vegard Nygaard; Jonas Paulsen; Halfdan Rydbeck; Kai Trengereid; Trevor Clancy; Finn Drabløs; Egil Ferkingstad; Matúš Kalaš; Tonje G. Lien; Morten Beck Rye; Arnoldo Frigessi; Eivind Hovig

The immense increase in availability of genomic scale datasets, such as those provided by the ENCODE and Roadmap Epigenomics projects, presents unprecedented opportunities for individual researchers to pose novel falsifiable biological questions. With this opportunity, however, researchers are faced with the challenge of how to best analyze and interpret their genome-scale datasets. A powerful way of representing genome-scale data is as feature-specific coordinates relative to reference genome assemblies, i.e. as genomic tracks. The Genomic HyperBrowser (http://hyperbrowser.uio.no) is an open-ended web server for the analysis of genomic track data. Through the provision of several highly customizable components for processing and statistical analysis of genomic tracks, the HyperBrowser opens for a range of genomic investigations, related to, e.g., gene regulation, disease association or epigenetic modifications of the genome.


Bioinformatics | 2014

HiBrowse: multi-purpose statistical analysis of genome-wide chromatin 3D organization

Jonas Paulsen; Geir Kjetil Sandve; Sveinung Gundersen; Tonje G. Lien; Kai Trengereid; Eivind Hovig

Summary: Recently developed methods that couple next-generation sequencing with chromosome conformation capture-based techniques, such as Hi-C and ChIA-PET, allow for characterization of genome-wide chromatin 3D structure. Understanding the organization of chromatin in three dimensions is a crucial next step in the unraveling of global gene regulation, and methods for analyzing such data are needed. We have developed HiBrowse, a user-friendly web-tool consisting of a range of hypothesis-based and descriptive statistics, using realistic assumptions in null-models. Availability and implementation: HiBrowse is supported by all major browsers, and is freely available at http://hyperbrowser.uio.no/3d. Software is implemented in Python, and source code is available for download by following instructions on the main site. Contact: [email protected] Supplementary Information: Supplementary data are available at Bioinformatics online.


BMC Bioinformatics | 2011

Identifying elemental genomic track types and representing them uniformly

Sveinung Gundersen; Matúš Kalaš; Osman Abul; Arnoldo Frigessi; Eivind Hovig; Geir Kjetil Sandve

BackgroundWith the recent advances and availability of various high-throughput sequencing technologies, data on many molecular aspects, such as gene regulation, chromatin dynamics, and the three-dimensional organization of DNA, are rapidly being generated in an increasing number of laboratories. The variation in biological context, and the increasingly dispersed mode of data generation, imply a need for precise, interoperable and flexible representations of genomic features through formats that are easy to parse. A host of alternative formats are currently available and in use, complicating analysis and tool development. The issue of whether and how the multitude of formats reflects varying underlying characteristics of data has to our knowledge not previously been systematically treated.ResultsWe here identify intrinsic distinctions between genomic features, and argue that the distinctions imply that a certain variation in the representation of features as genomic tracks is warranted. Four core informational properties of tracks are discussed: gaps, lengths, values and interconnections. From this we delineate fifteen generic track types. Based on the track type distinctions, we characterize major existing representational formats and find that the track types are not adequately supported by any single format. We also find, in contrast to the XML formats, that none of the existing tabular formats are conveniently extendable to support all track types. We thus propose two unified formats for track data, an improved XML format, BioXSD 1.1, and a new tabular format, GTrack 1.0.ConclusionsThe defined track types are shown to capture relevant distinctions between genomic annotation tracks, resulting in varying representational needs and analysis possibilities. The proposed formats, GTrack 1.0 and BioXSD 1.1, cater to the identified track distinctions and emphasize preciseness, flexibility and parsing convenience.


PLOS ONE | 2015

c-Myb Binding Sites in Haematopoietic Chromatin Landscapes

Mads Bengtsen; Kjetil Klepper; Sveinung Gundersen; Ignacio Cuervo; Finn Drabløs; Eivind Hovig; Geir Kjetil Sandve; Odd S. Gabrielsen; Ragnhild Eskeland

Strict control of tissue-specific gene expression plays a pivotal role during lineage commitment. The transcription factor c-Myb has an essential role in adult haematopoiesis and functions as an oncogene when rearranged in human cancers. Here we have exploited digital genomic footprinting analysis to obtain a global picture of c-Myb occupancy in the genome of six different haematopoietic cell-types. We have biologically validated several c-Myb footprints using c-Myb knockdown data, reporter assays and DamID analysis. We show that our predicted conserved c-Myb footprints are highly dependent on the haematopoietic cell type, but that there is a group of gene targets common to all cell-types analysed. Furthermore, we find that c-Myb footprints co-localise with active histone mark H3K4me3 and are significantly enriched at exons. We analysed co-localisation of c-Myb footprints with 104 chromatin regulatory factors in K562 cells, and identified nine proteins that are enriched together with c-Myb footprints on genes positively regulated by c-Myb and one protein enriched on negatively regulated genes. Our data suggest that c-Myb is a transcription factor with multifaceted target regulation depending on cell type.


BMC Genomics | 2011

The differential disease regulome

Geir Kjetil Sandve; Sveinung Gundersen; Halfdan Rydbeck; Ingrid K. Glad; Lars Holden; Marit Holden; Knut Liestøl; Trevor Clancy; Finn Drabløs; Egil Ferkingstad; Morten Johansen; Vegard Nygaard; Eivind Tøstesen; Arnoldo Frigessi; Eivind Hovig

BackgroundTranscription factors in disease-relevant pathways represent potential drug targets, by impacting a distinct set of pathways that may be modulated through gene regulation. The influence of transcription factors is typically studied on a per disease basis, and no current resources provide a global overview of the relations between transcription factors and disease. Furthermore, existing pipelines for related large-scale analysis are tailored for particular sources of input data, and there is a need for generic methodology for integrating complementary sources of genomic information.ResultsWe here present a large-scale analysis of multiple diseases versus multiple transcription factors, with a global map of over-and under-representation of 446 transcription factors in 1010 diseases. This map, referred to as the differential disease regulome, provides a first global statistical overview of the complex interrelationships between diseases, genes and controlling elements. The map is visualized using the Google map engine, due to its very large size, and provides a range of detailed information in a dynamic presentation format.The analysis is achieved through a novel methodology that performs a pairwise, genome-wide comparison on the cartesian product of two distinct sets of annotation tracks, e.g. all combinations of one disease and one TF.The methodology was also used to extend with maps using alternative data sets related to transcription and disease, as well as data sets related to Gene Ontology classification and histone modifications. We provide a web-based interface that allows users to generate other custom maps, which could be based on precisely specified subsets of transcription factors and diseases, or, in general, on any categorical genome annotation tracks as they are improved or become available.ConclusionWe have created a first resource that provides a global overview of the complex relations between transcription factors and disease. As the accuracy of the disease regulome depends mainly on the quality of the input data, forthcoming ChIP-seq based binding data for many TFs will provide improved maps. We further believe our approach to genome analysis could allow an advance from the current typical situation of one-time integrative efforts to reproducible and upgradable integrative analysis. The differential disease regulome and its associated methodology is available at http://hyperbrowser.uio.no.


GigaScience | 2017

GSuite HyperBrowser: Integrative analysis of dataset collections across the genome and epigenome

Boris Simovski; Daniel Vodák; Sveinung Gundersen; Diana Domanska; Abdulrahman Azab; Lars Holden; Marit Holden; Ivar Grytten; Knut Dagestad Rand; Finn Drabløs; Morten Johansen; Antonio Mora; Christin Lund-Andersen; Bastian Fromm; Ragnhild Eskeland; Odd S. Gabrielsen; Egil Ferkingstad; Sigve Nakken; Mads Bengtsen; Hildur Sif Thorarensen; Johannes Andreas Akse; Ingrid K. Glad; Eivind Hovig; Geir Kjetil Sandve

Abstract Background: Recent large-scale undertakings such as ENCODE and Roadmap Epigenomics have generated experimental data mapped to the human reference genome (as genomic tracks) representing a variety of functional elements across a large number of cell types. Despite the high potential value of these publicly available data for a broad variety of investigations, little attention has been given to the analytical methodology necessary for their widespread utilisation. Findings: We here present a first principled treatment of the analysis of collections of genomic tracks. We have developed novel computational and statistical methodology to permit comparative and confirmatory analyses across multiple and disparate data sources. We delineate a set of generic questions that are useful across a broad range of investigations and discuss the implications of choosing different statistical measures and null models. Examples include contrasting analyses across different tissues or diseases. The methodology has been implemented in a comprehensive open-source software system, the GSuite HyperBrowser. To make the functionality accessible to biologists, and to facilitate reproducible analysis, we have also developed a web-based interface providing an expertly guided and customizable way of utilizing the methodology. With this system, many novel biological questions can flexibly be posed and rapidly answered. Conclusions: Through a combination of streamlined data acquisition, interoperable representation of dataset collections, and customizable statistical analysis with guided setup and interpretation, the GSuite HyperBrowser represents a first comprehensive solution for integrative analysis of track collections across the genome and epigenome. The software is available at: https://hyperbrowser.uio.no.


Nucleic Acids Research | 2018

Coloc-stats: a unified web interface to perform colocalization analysis of genomic features

Boris Simovski; Chakravarthi Kanduri; Sveinung Gundersen; Dmytro Titov; Diana Domanska; Christoph Bock; Lara Bossini-Castillo; Maria Chikina; Alexander V. Favorov; Ryan M. Layer; Andrey A. Mironov; Aaron R. Quinlan; Nathan C. Sheffield; Gosia Trynka; Geir Kjetil Sandve

Abstract Functional genomics assays produce sets of genomic regions as one of their main outputs. To biologically interpret such region-sets, researchers often use colocalization analysis, where the statistical significance of colocalization (overlap, spatial proximity) between two or more region-sets is tested. Existing colocalization analysis tools vary in the statistical methodology and analysis approaches, thus potentially providing different conclusions for the same research question. As the findings of colocalization analysis are often the basis for follow-up experiments, it is helpful to use several tools in parallel and to compare the results. We developed the Coloc-stats web service to facilitate such analyses. Coloc-stats provides a unified interface to perform colocalization analysis across various analytical methods and method-specific options (e.g. colocalization measures, resolution, null models). Coloc-stats helps the user to find a method that supports their experimental requirements and allows for a straightforward comparison across methods. Coloc-stats is implemented as a web server with a graphical user interface that assists users with configuring their colocalization analyses. Coloc-stats is freely available at https://hyperbrowser.uio.no/coloc-stats/.


F1000Research | 2018

Norwegian e-Infrastructure for Life Sciences (NeLS)

Kidane M. Tekle; Sveinung Gundersen; Kjetil Klepper; Lars Ailo Bongo; Inge Alexander Raknes; Xiaxi Li; Wei Zhang; Christian Andreetta; Teshome Dagne Mulugeta; Matúš Kalaš; Morten Beck Rye; Erik Hjerde; Jeevan Karloss Antony Samy; Ghislain Fornous; Abdulrahman Azab; Dag Inge Våge; Eivind Hovig; Nils Peder Willassen; Finn Drabløs; Ståle Nygård; Kjell Petersen; Inge Jonassen

The Norwegian e-Infrastructure for Life Sciences (NeLS) has been developed by ELIXIR Norway to provide its users with a system enabling data storage, sharing, and analysis in a project-oriented fashion. The system is available through easy-to-use web interfaces, including the Galaxy workbench for data analysis and workflow execution. Users confident with a command-line interface and programming may also access it through Secure Shell (SSH) and application programming interfaces (APIs). NeLS has been in production since 2015, with training and support provided by the help desk of ELIXIR Norway. Through collaboration with NorSeq, the national consortium for high-throughput sequencing, an integrated service is offered so that sequencing data generated in a research project is provided to the involved researchers through NeLS. Sensitive data, such as individual genomic sequencing data, are handled using the TSD (Services for Sensitive Data) platform provided by Sigma2 and the University of Oslo. NeLS integrates national e-infrastructure storage and computing resources, and is also integrated with the SEEK platform in order to store large data files produced by experiments described in SEEK. In this article, we outline the architecture of NeLS and discuss possible directions for further development.


F1000Research | 2013

BioXSD: an XML Schema for sequence data, features, alignments, and identifiers

Matúš Kalaš; Edita Karosiene; László Kaján; Sveinung Gundersen; Jon Ison; Pål Puntervoll; Christophe Blanchet; Kristoffer Rapacki; Inge Jonassen

1 Computational Biology Unit, Uni Computing and 2 Department of Informatics, University of Bergen, Bergen, Norway; 3 Center for Biological Sequence Analysis, Technical University of Denmark, Kongens Lyngby, Denmark; 4 Bioinformatics and Computational Biology Department, Technische Universitat Munchen, Garching, Germany; Institute for Cancer research, Oslo University Hospital, Oslo, Norway; European Bioinformatics Institute, EMBL, Wellcome Trust Genome Campus, Hinxton, Cambridge, UK; 7 Institut de Biologie et Chimie des Proteines, CNRS and Universite Claude Bernard Lyon 1, Lyon, France. BioXSD An XML Schema for sequence data, features, alignments, and identifiers

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Eivind Hovig

Oslo University Hospital

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Finn Drabløs

Norwegian University of Science and Technology

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Jon Ison

Technical University of Denmark

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Kristoffer Rapacki

Technical University of Denmark

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