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Dive into the research topics where Hege G. Russnes is active.

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Featured researches published by Hege G. Russnes.


Nature | 2009

Complex landscapes of somatic rearrangement in human breast cancer genomes.

Philip Stephens; David J. McBride; Meng-Lay Lin; Ignacio Varela; Erin Pleasance; Jared T. Simpson; Lucy Stebbings; Catherine Leroy; Sarah Edkins; Laura Mudie; Christopher Greenman; Mingming Jia; Calli Latimer; Jon Teague; King Wai Lau; John Burton; Michael A. Quail; Harold Swerdlow; Carol Churcher; Rachael Natrajan; Anieta M. Sieuwerts; John W.M. Martens; Daniel P. Silver; Anita Langerød; Hege G. Russnes; John A. Foekens; Jorge S. Reis-Filho; Laura J. van 't Veer; Andrea L. Richardson; Anne Lise Børresen-Dale

Multiple somatic rearrangements are often found in cancer genomes; however, the underlying processes of rearrangement and their contribution to cancer development are poorly characterized. Here we use a paired-end sequencing strategy to identify somatic rearrangements in breast cancer genomes. There are more rearrangements in some breast cancers than previously appreciated. Rearrangements are more frequent over gene footprints and most are intrachromosomal. Multiple rearrangement architectures are present, but tandem duplications are particularly common in some cancers, perhaps reflecting a specific defect in DNA maintenance. Short overlapping sequences at most rearrangement junctions indicate that these have been mediated by non-homologous end-joining DNA repair, although varying sequence patterns indicate that multiple processes of this type are operative. Several expressed in-frame fusion genes were identified but none was recurrent. The study provides a new perspective on cancer genomes, highlighting the diversity of somatic rearrangements and their potential contribution to cancer development.


Proceedings of the National Academy of Sciences of the United States of America | 2010

Allele-specific copy number analysis of tumors

Peter Van Loo; Silje H. Nordgard; Ole Christian Lingjærde; Hege G. Russnes; Inga H. Rye; Wei Sun; Victor J. Weigman; Peter Marynen; Anders Zetterberg; Bjørn Naume; Charles M. Perou; Anne Lise Børresen-Dale; Vessela N. Kristensen

We present an allele-specific copy number analysis of the in vivo breast cancer genome. We describe a unique bioinformatics approach, ASCAT (allele-specific copy number analysis of tumors), to accurately dissect the allele-specific copy number of solid tumors, simultaneously estimating and adjusting for both tumor ploidy and nonaberrant cell admixture. This allows calculation of “ASCAT profiles” (genome-wide allele-specific copy-number profiles) from which gains, losses, copy number-neutral events, and loss of heterozygosity (LOH) can accurately be determined. In an early-stage breast carcinoma series, we observe aneuploidy (>2.7n) in 45% of the cases and an average nonaberrant cell admixture of 49%. By aggregation of ASCAT profiles across our series, we obtain genomic frequency distributions of gains and losses, as well as genome-wide views of LOH and copy number-neutral events in breast cancer. In addition, the ASCAT profiles reveal differences in aberrant tumor cell fraction, ploidy, gains, losses, LOH, and copy number-neutral events between the five previously identified molecular breast cancer subtypes. Basal-like breast carcinomas have a significantly higher frequency of LOH compared with other subtypes, and their ASCAT profiles show large-scale loss of genomic material during tumor development, followed by a whole-genome duplication, resulting in near-triploid genomes. Finally, from the ASCAT profiles, we construct a genome-wide map of allelic skewness in breast cancer, indicating loci where one allele is preferentially lost, whereas the other allele is preferentially gained. We hypothesize that these alternative alleles have a different influence on breast carcinoma development.


The Journal of Pathology | 2008

Extracellular matrix signature identifies breast cancer subgroups with different clinical outcome

Anna Bergamaschi; Elda Tagliabue; Therese Sørlie; Bjørn Naume; T. Triulzi; R. Orlandi; Hege G. Russnes; Jahn M. Nesland; Raija Tammi; P. Auvinen; Veli-Matti Kosma; S. Ménard; Anne Lise Børresen-Dale

Prediction of the clinical outcome of breast cancer is multi‐faceted and challenging. There is growing evidence that the complexity of the tumour micro‐environment, consisting of several cell types and a complex mixture of proteins, plays an important role in development, progression, and response to therapy. In the current study, we investigated whether invasive breast tumours can be classified on the basis of the expression of extracellular matrix (ECM) components and whether such classification is representative of different clinical outcomes. We first examined the matrix composition of 28 primary breast carcinomas by morphology and gene expression profiling using 22K oligonucleotide Agilent microarrays. Hierarchical clustering of the gene expression profile of 278 ECM‐related genes derived from the literature divided the tumours into four main groups (ECM1–4). A set of selected differentially expressed genes was validated by immunohistochemistry. The robustness of the ECM classification was confirmed by studying the four ECM groups in a previously published gene expression data set of 114 early‐stage primary breast carcinomas profiled using cDNA arrays. Univariate survival analysis showed significant differences in clinical outcome among the various ECM subclasses. One set of tumours, designated ECM4, had a favourable outcome and was defined by the overexpression of a set of protease inhibitors belonging to the serpin family, while tumours with an ECM1 signature had a poorer prognosis and showed high expression of integrins and metallopeptidases, and low expression of several laminin chains. Furthermore, we identified three surrogate markers of ECM1 tumours: MARCO, PUNC, and SPARC, whose expression levels were associated with breast cancer survival and risk of recurrence. Our findings suggest that primary breast tumours can be classified based upon ECM composition and that this classification provides relevant information on the biology of breast carcinomas, further supporting the hypothesis that clinical outcome is strongly related to stromal characteristics. Copyright


PLOS ONE | 2011

miRNA-mRNA Integrated Analysis Reveals Roles for miRNAs in Primary Breast Tumors

Espen Enerly; Israel Steinfeld; Kristine Kleivi; Suvi Katri Leivonen; Miriam Ragle Aure; Hege G. Russnes; Jo Anders Rønneberg; Hilde Johnsen; Roy Navon; Einar Andreas Rødland; Rami Mäkelä; Bjørn Naume; Merja Perälä; Olli Kallioniemi; Vessela N. Kristensen; Zohar Yakhini; Anne Lise Børresen-Dale

Introduction Few studies have performed expression profiling of both miRNA and mRNA from the same primary breast carcinomas. In this study we present and analyze data derived from expression profiling of 799 miRNAs in 101 primary human breast tumors, along with genome-wide mRNA profiles and extensive clinical information. Methods We investigate the relationship between these molecular components, in terms of their correlation with each other and with clinical characteristics. We use a systems biology approach to examine the correlative relationship between miRNA and mRNAs using statistical enrichment methods. Results We identify statistical significant differential expression of miRNAs between molecular intrinsic subtypes, and between samples with different levels of proliferation. Specifically, we point to miRNAs significantly associated with TP53 and ER status. We also show that several cellular processes, such as proliferation, cell adhesion and immune response, are strongly associated with certain miRNAs. We validate the role of miRNAs in regulating proliferation using high-throughput lysate-microarrays on cell lines and point to potential drivers of this process. Conclusion This study provides a comprehensive dataset as well as methods and system-level results that jointly form a basis for further work on understanding the role of miRNA in primary breast cancer.


Nature Reviews Cancer | 2014

Principles and methods of integrative genomic analyses in cancer

Vessela N. Kristensen; Ole Christian Lingjærde; Hege G. Russnes; Hans Kristian Moen Vollan; Arnoldo Frigessi; Anne Lise Børresen-Dale

Combined analyses of molecular data, such as DNA copy-number alteration, mRNA and protein expression, point to biological functions and molecular pathways being deregulated in multiple cancers. Genomic, metabolomic and clinical data from various solid cancers and model systems are emerging and can be used to identify novel patient subgroups for tailored therapy and monitoring. The integrative genomics methodologies that are used to interpret these data require expertise in different disciplines, such as biology, medicine, mathematics, statistics and bioinformatics, and they can seem daunting. The objectives, methods and computational tools of integrative genomics that are available to date are reviewed here, as is their implementation in cancer research.


Journal of Clinical Investigation | 2011

Insight into the heterogeneity of breast cancer through next-generation sequencing

Hege G. Russnes; Nicholas Navin; James Hicks; Anne Lise Børresen-Dale

Rapid and sophisticated improvements in molecular analysis have allowed us to sequence whole human genomes as well as cancer genomes, and the findings suggest that we may be approaching the ability to individualize the diagnosis and treatment of cancer. This paradigmatic shift in approach will require clinicians and researchers to overcome several challenges including the huge spectrum of tumor types within a given cancer, as well as the cell-to-cell variations observed within tumors. This review discusses how next-generation sequencing of breast cancer genomes already reveals insight into tumor heterogeneity and how it can contribute to future breast cancer classification and management.


Molecular Oncology | 2010

Triple-negative breast cancer: Present challenges and new perspectives

Franca Podo; L.M.C. Buydens; Hadassa Degani; Riet Hilhorst; Edda Klipp; Ingrid S. Gribbestad; Sabine Van Huffel; Hanneke W. M. van Laarhoven; Jan Luts; Daniel Monleón; G.J. Postma; Nicole Schneiderhan-Marra; Filippo Santoro; Hans Wouters; Hege G. Russnes; Therese Sørlie; Elda Tagliabue; Anne Lise Børresen-Dale

Triple‐negative breast cancers (TNBC), characterized by absence of estrogen receptor (ER), progesterone receptor (PR) and lack of overexpression of human epidermal growth factor receptor 2 (HER2), are typically associated with poor prognosis, due to aggressive tumor phenotype(s), only partial response to chemotherapy and present lack of clinically established targeted therapies. Advances in the design of individualized strategies for treatment of TNBC patients require further elucidation, by combined ‘omics’ approaches, of the molecular mechanisms underlying TNBC phenotypic heterogeneity, and the still poorly understood association of TNBC with BRCA1 mutations. An overview is here presented on TNBC profiling in terms of expression signatures, within the functional genomic breast tumor classification, and ongoing efforts toward identification of new therapy targets and bioimaging markers. Due to the complexity of aberrant molecular patterns involved in expression, pathological progression and biological/clinical heterogeneity, the search for novel TNBC biomarkers and therapy targets requires collection of multi‐dimensional data sets, use of robust multivariate data analysis techniques and development of innovative systems biology approaches.


Cell Reports | 2014

Inference of Tumor Evolution during Chemotherapy by Computational Modeling and In Situ Analysis of Genetic and Phenotypic Cellular Diversity

Vanessa Almendro; Yu Kang Cheng; Amanda Randles; Shalev Itzkovitz; Andriy Marusyk; Elisabet Ametller; Xavier Gonzalez-Farre; Montse Muñoz; Hege G. Russnes; Åslaug Helland; Inga H. Rye; Anne Lise Børresen-Dale; Reo Maruyama; Alexander van Oudenaarden; M. Dowsett; Robin L. Jones; Jorge S. Reis-Filho; Pere Gascón; Mithat Gonen; Franziska Michor; Kornelia Polyak

Cancer therapy exerts a strong selection pressure that shapes tumor evolution, yet our knowledge of how tumors change during treatment is limited. Here, we report the analysis of cellular heterogeneity for genetic and phenotypic features and their spatial distribution in breast tumors pre- and post-neoadjuvant chemotherapy. We found that intratumor genetic diversity was tumor-subtype specific, and it did not change during treatment in tumors with partial or no response. However, lower pretreatment genetic diversity was significantly associated with pathologic complete response. In contrast, phenotypic diversity was different between pre- and posttreatment samples. We also observed significant changes in the spatial distribution of cells with distinct genetic and phenotypic features. We used these experimental data to develop a stochastic computational model to infer tumor growth patterns and evolutionary dynamics. Our results highlight the importance of integrated analysis of genotypes and phenotypes of single cells in intact tissues to predict tumor evolution.


Science Translational Medicine | 2010

Genomic architecture characterizes tumor progression paths and fate in breast cancer patients

Hege G. Russnes; Hans Kristian Moen Vollan; Ole Christian Lingjærde; Alexander Krasnitz; Pär Lundin; Bjørn Naume; Therese Sørlie; Elin Borgen; Inga H. Rye; Anita Langerød; Suet Feung Chin; Andrew E. Teschendorff; Philip Stephens; Susanne Månér; Ellen Schlichting; Lars O. Baumbusch; Rolf Kåresen; Michael P. Stratton; Michael Wigler; Carlos Caldas; Anders Zetterberg; James Hicks; Anne Lise Børresen-Dale

This study demonstrates the relation among structural genomic alterations, molecular subtype, and clinical behavior and shows that an objective score of genomic complexity can provide independent prognostic information in breast cancer. Form and Malfunction Breast cancer is an iniquitous disease with a panoply of predisposing genetic and environmental causes, the details of which have yet to be fully understood. One of every four women will be diagnosed with breast cancer, hence the early and accurate identification of specific tumor features that may affect overall survival is imperative in achieving an optimal prognosis. A widely appreciated taxonomy in the breast cancer field has enabled the molecular discernment of five pathological subtypes; however, as research dives deeper into the chromosomal underpinnings of the disease, new classifiers are needed to augment what is known with key structural details to create a more vivid tumor landscape. Now, Russnes and colleagues have generated new algorithms that can estimate the specific genomic region as well as the architectural type of rearrangement—gains or losses of chromosome arms. A cohort of breast tumors was scored using this method, and all tumors with complex rearrangements had more whole chromosome arms affected than those without complex rearrangement. Moreover, there was an overlapping correlation with the molecular subtyping features of the tumors, and the score could confer prognostic power. Distinct molecular subtypes of breast carcinomas have been identified, but translation into clinical use has been limited. We have developed two platform-independent algorithms to explore genomic architectural distortion using array comparative genomic hybridization data to measure (i) whole-arm gains and losses [whole-arm aberration index (WAAI)] and (ii) complex rearrangements [complex arm aberration index (CAAI)]. By applying CAAI and WAAI to data from 595 breast cancer patients, we were able to separate the cases into eight subgroups with different distributions of genomic distortion. Within each subgroup data from expression analyses, sequencing and ploidy indicated that progression occurs along separate paths into more complex genotypes. Histological grade had prognostic impact only in the luminal-related groups, whereas the complexity identified by CAAI had an overall independent prognostic power. This study emphasizes the relation among structural genomic alterations, molecular subtype, and clinical behavior and shows that objective score of genomic complexity (CAAI) is an independent prognostic marker in breast cancer.


Molecular Oncology | 2007

Presence of bone marrow micrometastasis is associated with different recurrence risk within molecular subtypes of breast cancer

Bjørn Naume; Xi Zhao; Marit Synnestvedt; Elin Borgen; Hege G. Russnes; Ole Christian Lingjærde; Maria Strømberg; Gunnar Kvalheim; Rolf Kåresen; Jahn M. Nesland; Anne Lise Børresen-Dale; Therese Sørlie

Expression profiles of primary breast tumors were investigated in relation to disseminated tumor cells (DTCs) in bone marrow (BM) in order to increase our understanding of the dissemination process. Tumors were classified into five pre‐defined molecular subtypes, and presence of DTC identified (at median 85 months follow‐up) a subgroup of luminal A patients with particular poor outcome (p=0.008). This was not apparent for other tumor subtypes. Gene expression profiles associated with DTC and with systemic relapse for luminal A patients were identified. This study suggests that DTC in BM differentially distinguishes clinical outcome in patients with luminal A type tumors and that DTC‐associated gene expression analysis may identify genes of potential importance in tumor dissemination.

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Bjørn Naume

Oslo University Hospital

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Elin Borgen

Oslo University Hospital

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Inga H. Rye

Oslo University Hospital

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