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Featured researches published by Inga H. Rye.


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.


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.


International Journal of Cancer | 2012

High-resolution analyses of copy number changes in disseminated tumor cells of patients with breast cancer

Randi R. Mathiesen; Renathe Fjelldal; Knut Liestøl; Eldri U. Due; Jochen B. Geigl; Sabine Riethdorf; Elin Borgen; Inga H. Rye; Ida J. Schneider; Anna C. Obenauf; Oliver Mauermann; Gro Nilsen; Ole Christian Lingjærde; Anne Lise Børresen-Dale; Klaus Pantel; Michael R. Speicher; Bjørn Naume; Lars O. Baumbusch

The presence of disseminated tumor cells (DTCs) in bone marrow (BM) identifies breast cancer patients with less favorable outcome. Furthermore, molecular characterization is required to investigate the malignant potential of these cells. This study presents a single‐cell array comparative genomic hybridization (SCaCGH) method providing molecular analysis of immunomorphologically detected DTCs. The resolution limit of the method was estimated using the cancer cell line SK‐BR‐3 on 44 and 244k arrays. The technique was further tested on 28 circulating tumor cells and four hematopoietic cells (HCs) from peripheral blood (n = 8 patients). The SCaCGH method was finally applied to 24 DTCs, three immunopositive cells morphologically classified as probable HCs from breast cancer patients and five HC controls from BM (n = 7 patients plus n = 1 healthy donor). The frequency of copy number changes of the DTCs revealed similarities with primary breast tumor samples. Three of the patients had available profiles for DTCs and the corresponding tumor tissue from primary surgery. More than two‐third of the analyzed DTCs disclosed equivalent changes, both to each other and to the corresponding primary disease, whereas the rest of the cells showed balanced profiles. The probable HCs revealed either balanced profiles (n = 2) or changes comparable to the tumor tissue and DTCs (n = 1), indicating morphological overlap between HCs and DTCs. Similar aberration patterns were visible in DTCs collected at diagnosis and at 3 years relapse‐free follow‐up. SCaCGH may be a powerful tool for the molecular characterization of DTCs.


PLOS ONE | 2012

Amplified Loci on Chromosomes 8 and 17 Predict Early Relapse in ER-Positive Breast Cancers

Erhan Bilal; Kristen Vassallo; Deborah Toppmeyer; Nicola Barnard; Inga H. Rye; Vanessa Almendro; Hege G. Russnes; Anne Lise Børresen-Dale; Arnold J. Levine; Gyan Bhanot; Shridar Ganesan

Adjuvant hormonal therapy is administered to all early stage ER+ breast cancers, and has led to significantly improved survival. Unfortunately, a subset of ER+ breast cancers suffer early relapse despite hormonal therapy. To identify molecular markers associated with early relapse in ER+ breast cancer, an outlier analysis method was applied to a published gene expression dataset of 268 ER+ early-stage breast cancers treated with tamoxifen alone. Increased expression of sets of genes that clustered in chromosomal locations consistent with the presence of amplicons at 8q24.3, 8p11.2, 17q12 (HER2 locus) and 17q21.33-q25.1 were each found to be independent markers for early disease recurrence. Distant metastasis free survival (DMFS) after 10 years for cases with any amplicon (DMFS  = 56.1%, 95% CI  = 48.3–63.9%) was significantly lower (P  = 0.0016) than cases without any of the amplicons (DMFS  = 87%, 95% CI  = 76.3% –97.7%). The association between presence of chromosomal amplifications in these regions and poor outcome in ER+ breast cancers was independent of histologic grade and was confirmed in independent clinical datasets. A separate validation using a FISH-based assay to detect the amplicons at 8q24.3, 8p11.2, and 17q21.33-q25.1 in a set of 36 early stage ER+/HER2- breast cancers treated with tamoxifen suggests that the presence of these amplicons are indeed predictive of early recurrence. We conclude that these amplicons may serve as prognostic markers of early relapse in ER+ breast cancer, and may identify novel therapeutic targets for poor prognosis ER+ breast cancers.


Genome Biology | 2014

GoIFISH: a system for the quantification of single cell heterogeneity from IFISH images

Anne Trinh; Inga H. Rye; Vanessa Almendro; Åslaug Helland; Hege G. Russnes; Florian Markowetz

Molecular analysis has revealed extensive intra-tumor heterogeneity in human cancer samples, but cannot identify cell-to-cell variations within the tissue microenvironment. In contrast, in situ analysis can identify genetic aberrations in phenotypically defined cell subpopulations while preserving tissue-context specificity. GoIFISHGoIFISH is a widely applicable, user-friendly system tailored for the objective and semi-automated visualization, detection and quantification of genomic alterations and protein expression obtained from fluorescence in situ analysis. In a sample set of HER2-positive breast cancers GoIFISHGoIFISH is highly robust in visual analysis and its accuracy compares favorably to other leading image analysis methods. GoIFISHGoIFISH is freely available at www.sourceforge.net/projects/goifish/.


Genes, Chromosomes and Cancer | 2015

Quantitative multigene FISH on breast carcinomas identifies der(1;16)(q10;p10) as an early event in luminal A tumors

Inga H. Rye; Pär Lundin; Susanne Månér; Renathe Fjelldal; Bjørn Naume; Michael Wigler; James Hicks; Anne Lise Børresen-Dale; Anders Zetterberg; Hege G. Russnes

In situ detection of genomic alterations in cancer provides information at the single cell level, making it possible to investigate genomic changes in cells in a tissue context. Such topological information is important when studying intratumor heterogeneity as well as alterations related to different steps in tumor progression. We developed a quantitative multigene fluorescence in situ hybridization (QM FISH) method to detect multiple genomic regions in single cells in complex tissues. As a “proof of principle” we applied the method to breast cancer samples to identify partners in whole arm (WA) translocations. WA gain of chromosome arm 1q and loss of chromosome arm 16q are among the most frequent genomic events in breast cancer. By designing five specific FISH probes based on breakpoint information from comparative genomic hybridization array (aCGH) profiles, we visualized chromosomal translocations in clinical samples at the single cell level. By analyzing aCGH data from 295 patients with breast carcinoma with known molecular subtype, we found concurrent WA gain of 1q and loss of 16q to be more frequent in luminal A tumors compared to other molecular subtypes. QM FISH applied to a subset of samples (n = 26) identified a derivative chromosome der(1;16)(q10;p10), a result of a centromere‐close translocation between chromosome arms 1q and 16p. In addition, we observed that the distribution of cells with the translocation varied from sample to sample, some had a homogenous cell population while others displayed intratumor heterogeneity with cell‐to‐cell variation. Finally, for one tumor with both preinvasive and invasive components, the fraction of cells with translocation was lower and more heterogeneous in the preinvasive tumor cells compared to the cells in the invasive component.


Mathematical Medicine and Biology-a Journal of The Ima | 2018

Simulated ablation for detection of cells impacting paracrine signalling in histology analysis

Jake P Taylor–King; Etienne Baratchart; Andrew Dhawan; Elizabeth A Coker; Inga H. Rye; Hege G. Russnes; S Jon Chapman; David Basanta; Andriy Marusyk

Intra-tumour phenotypic heterogeneity limits accuracy of clinical diagnostics and hampers the efficiency of anti-cancer therapies. Dealing with this cellular heterogeneity requires adequate understanding of its sources, which is extremely difficult, as phenotypes of tumour cells integrate hardwired (epi)mutational differences with the dynamic responses to microenvironmental cues. The later comes in form of both direct physical interactions, as well as inputs from gradients of secreted signalling molecules. Furthermore, tumour cells can not only receive microenvironmental cues, but also produce them. Despite high biological and clinical importance of understanding spatial aspects of paracrine signaling, adequate research tools are largely lacking. Here, a partial differential equation (PDE)-based mathematical model is developed that mimics the process of cell ablation. This model suggests how each cell might contribute to the microenvironment by either absorbing or secreting diffusible factors, and quantifies the extent to which observed intensities can be explained via diffusion-mediated signalling. The model allows for the separation of phenotypic responses to signalling gradients within tumour microenvironments from the combined influence of responses mediated by direct physical contact and hardwired (epi)genetic differences. The method is applied to a multi-channel immunofluorescence in situ hybridisation (iFISH)-stained breast cancer histological specimen, and correlations are investigated between: HER2 gene amplification, HER2 protein expression and cell interaction with the diffusible microenvironment. This approach allows partial deconvolution of the complex inputs that shape phenotypic heterogeneity of tumour cells and identifies cells that significantly impact gradients of signalling molecules.


Molecular Cancer Therapeutics | 2013

Abstract C47: Inference of tumor evolution during chemotherapy by computational modeling and single cell analysis of diversity.

Vanessa Almendro; Yu-Kang Cheng; Mithat Gonen; 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; Franziska Michor; Kornelia Polyak

Cancer therapy exerts a strong selection that shapes tumor evolution, yet our knowledge of how tumors change during treatment is limited. Here we report the analysis of single-cell heterogeneity of genetic and phenotypic features and their spatial distribution in breast tumors pre and post neoadjuvant therapy. We found that broad intratumor genetic diversity is tumor subtype specific but does not change significantly during treatment. However, we observed significant alterations in the spatial distribution of cells after chemotherapy whereas adjacent tumor cells were more likely to be genetically divergent yet phenotypically similar. We then developed a stochastic computational model to infer tumor growth patterns and evolutionary dynamics from these topologic features. Lastly, we found that lower pretreatment genetic diversity is associated with a better response, emphasizing the clinical utility of our study. Our results highlight the importance of an integrated analysis of genotype and phenotype of single cells in intact tissue to predict how tumors evolve. Citation Information: Mol Cancer Ther 2013;12(11 Suppl):C47. Citation Format: Vanessa Almendro, Yu-Kang Cheng, Mithat Gonen, Shalev Itzkovitz, Andriy Marusyk, Elisabet Ametller, Xavier Gonzalez-Farre, Montse Munoz, Hege Russnes, Aslaug Helland, Inga Rye, Anne Lise Borresen-Dale, Reo Maruyama, Alexander van Oudenaarden, Mitchell Dowsett, Robin L. Jones, Jorge Reis-Filho, Pere Gascon, Franziska Michor, Kornelia Polyak. Inference of tumor evolution during chemotherapy by computational modeling and single cell analysis of diversity. [abstract]. In: Proceedings of the AACR-NCI-EORTC International Conference: Molecular Targets and Cancer Therapeutics; 2013 Oct 19-23; Boston, MA. Philadelphia (PA): AACR; Mol Cancer Ther 2013;12(11 Suppl):Abstract nr C47.


Nature Genetics | 2017

A somatic-mutational process recurrently duplicates germline susceptibility loci and tissue-specific super-enhancers in breast cancers

Dominik Glodzik; Sandro Morganella; Helen Davies; Peter T. Simpson; Yilong Li; Xueqing Zou; Javier Diez-Perez; Johan Staaf; Ludmil B. Alexandrov; Marcel Smid; Arie B. Brinkman; Inga H. Rye; Hege G. Russnes; Keiran Raine; Colin A. Purdie; Sunil R. Lakhani; Alastair M. Thompson; Ewan Birney; Hendrik G. Stunnenberg; Marc J. van de Vijver; John W.M. Martens; Anne Lise Børresen-Dale; Andrea L. Richardson; Gu Kong; Alain Viari; Douglas F. Easton; Gerard I. Evan; Peter J. Campbell; Michael R. Stratton; Serena Nik-Zainal

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Bjørn Naume

Oslo University Hospital

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Elin Borgen

Oslo University Hospital

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