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Dive into the research topics where Linnea La Fleur is active.

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Featured researches published by Linnea La Fleur.


JCI insight | 2016

Profiling cancer testis antigens in non–small-cell lung cancer

Dijana Djureinovic; Björn M. Hallström; Masafumi Horie; Johanna Sofia Margareta Mattsson; Linnea La Fleur; Linn Fagerberg; Hans Brunnström; Cecilia Lindskog; Katrin Madjar; Jörg Rahnenführer; Simon Ekman; Elisabeth Ståhle; Hirsh Koyi; Eva Brandén; Karolina Edlund; Jan G. Hengstler; Mats Lambe; Akira Saito; Johan Botling; Fredrik Pontén; Mathias Uhlén; Patrick Micke

Cancer testis antigens (CTAs) are of clinical interest as biomarkers and present valuable targets for immunotherapy. To comprehensively characterize the CTA landscape of non-small-cell lung cancer (NSCLC), we compared RNAseq data from 199 NSCLC tissues to the normal transcriptome of 142 samples from 32 different normal organs. Of 232 CTAs currently annotated in the Caner Testis Database (CTdatabase), 96 were confirmed in NSCLC. To obtain an unbiased CTA profile of NSCLC, we applied stringent criteria on our RNAseq data set and defined 90 genes as CTAs, of which 55 genes were not annotated in the CTdatabase, thus representing potential new CTAs. Cluster analysis revealed that CTA expression is histology dependent and concurrent expression is common. IHC confirmed tissue-specific protein expression of selected new CTAs (TKTL1, TGIF2LX, VCX, and CXORF67). Furthermore, methylation was identified as a regulatory mechanism of CTA expression based on independent data from The Cancer Genome Atlas. The proposed prognostic impact of CTAs in lung cancer was not confirmed, neither in our RNAseq cohort nor in an independent meta-analysis of 1,117 NSCLC cases. In summary, we defined a set of 90 reliable CTAs, including information on protein expression, methylation, and survival association. The detailed RNAseq catalog can guide biomarker studies and efforts to identify targets for immunotherapeutic strategies.


Nucleic Acids Research | 2015

Oligonucleotide gap-fill ligation for mutation detection and sequencing in situ

Marco Mignardi; Anja Mezger; Xiaoyan Qian; Linnea La Fleur; Johan Botling; Chatarina Larsson; Mats Nilsson

In clinical diagnostics a great need exists for targeted in situ multiplex nucleic acid analysis as the mutational status can offer guidance for effective treatment. One well-established method uses padlock probes for mutation detection and multiplex expression analysis directly in cells and tissues. Here, we use oligonucleotide gap-fill ligation to further increase specificity and to capture molecular substrates for in situ sequencing. Short oligonucleotides are joined at both ends of a padlock gap probe by two ligation events and are then locally amplified by target-primed rolling circle amplification (RCA) preserving spatial information. We demonstrate the specific detection of the A3243G mutation of mitochondrial DNA and we successfully characterize a single nucleotide variant in the ACTB mRNA in cells by in situ sequencing of RCA products generated by padlock gap-fill ligation. To demonstrate the clinical applicability of our assay, we show specific detection of a point mutation in the EGFR gene in fresh frozen and formalin-fixed, paraffin-embedded (FFPE) lung cancer samples and confirm the detected mutation by in situ sequencing. This approach presents several advantages over conventional padlock probes allowing simpler assay design for multiplexed mutation detection to screen for the presence of mutations in clinically relevant mutational hotspots directly in situ.


Journal of Thoracic Oncology | 2017

Gene Expression Profiling of Large Cell Lung Cancer Links Transcriptional Phenotypes to the New Histological WHO 2015 Classification

Anna Karlsson; Hans Brunnström; Patrick Micke; Srinivas Veerla; Johanna Sofia Margareta Mattsson; Linnea La Fleur; Johan Botling; Mats Jönsson; Christel Reuterswärd; Maria Planck; Johan Staaf

Introduction Large cell lung cancer (LCLC) and large cell neuroendocrine carcinoma (LCNEC) constitute a small proportion of NSCLC. The WHO 2015 classification guidelines changed the definition of the debated histological subtype LCLC to be based on immunomarkers for adenocarcinoma and squamous cancer. We sought to determine whether these new guidelines also translate into the transcriptional landscape of lung cancer, and LCLC specifically. Methods Gene expression profiling was performed by using Illumina V4 HT12 microarrays (Illumina, San Diego, CA) on samples from 159 cases (comprising all histological subtypes, including 10 classified as LCLC WHO 2015 and 14 classified as LCNEC according to the WHO 2015 guidelines), with complimentary mutational and immunohistochemical data. Derived transcriptional phenotypes were validated in 199 independent tumors, including six WHO 2015 LCLCs and five LCNECs. Results Unsupervised analysis of gene expression data identified a phenotype comprising 90% of WHO 2015 LCLC tumors, with characteristics of poorly differentiated proliferative cancer, a 90% tumor protein p53 gene (TP53) mutation rate, and lack of well‐known NSCLC oncogene driver alterations. Validation in independent data confirmed aggregation of WHO 2015 LCLCs in the specific phenotype. For LCNEC tumors, the unsupervised gene expression analysis suggested two different transcriptional patterns corresponding to a proposed genetic division of LCNEC tumors into SCLC‐like and NSCLC‐like cancer on the basis of TP53 and retinoblastoma 1 gene (RB1) alteration patterns. Conclusions Refined classification of LCLC has implications for diagnosis, prognostics, and therapy decisions. Our molecular analyses support the WHO 2015 classification of LCLC and LCNEC tumors, which herein follow different tumorigenic paths and can accordingly be stratified into different transcriptional subgroups, thus linking diagnostic immunohistochemical staining–driven classification with the transcriptional landscape of lung cancer.


The Journal of Molecular Diagnostics | 2015

HaloPlex Targeted Resequencing for Mutation Detection in Clinical Formalin-Fixed, Paraffin-Embedded Tumor Samples.

Lotte N. Moens; Elin Falk-Sörqvist; Viktor Ljungström; Johanna Sofia Margareta Mattsson; Magnus Sundström; Linnea La Fleur; Lucy Mathot; Patrick Micke; Mats Nilsson; Johan Botling

In recent years, the advent of massively parallel next-generation sequencing technologies has enabled substantial advances in the study of human diseases. Combined with targeted DNA enrichment methods, high sequence coverage can be obtained for different genes simultaneously at a reduced cost per sample, creating unique opportunities for clinical cancer diagnostics. However, the formalin-fixed, paraffin-embedded (FFPE) process of tissue samples, routinely used in pathology departments, results in DNA fragmentation and nucleotide modifications that introduce a number of technical challenges for downstream biomolecular analyses. We evaluated the HaloPlex target enrichment system for somatic mutation detection in 80 tissue fractions derived from 20 clinical cancer cases with paired tumor and normal tissue available in both FFPE and fresh-frozen format. Several modifications to the standard method were introduced, including a reduced target fragment length and two strand capturing. We found that FFPE material can be used for HaloPlex-based target enrichment and next-generation sequencing, even when starting from small amounts of DNA. By specifically capturing both strands for each target fragment, we were able to reduce the number of false-positive errors caused by FFPE-induced artifacts and lower the detection limit for somatic mutations. We believe that the HaloPlex method presented here will be broadly applicable as a tool for somatic mutation detection in clinical cancer settings.


Modern Pathology | 2017

Reaching the limits of prognostication in non-small cell lung cancer: an optimized biomarker panel fails to outperform clinical parameters

Marianna Grinberg; Dijana Djureinovic; Hans Brunnström; Johanna Sofia Margareta Mattsson; Karolina Edlund; Jan G. Hengstler; Linnea La Fleur; Simon Ekman; Hirsh Koyi; E. Branden; Elisabeth Ståhle; Karin Jirström; Derek K. Tracy; Fredrik Pontén; Johan Botling; Jörg Rahnenführer; Patrick Micke

Numerous protein biomarkers have been analyzed to improve prognostication in non-small cell lung cancer, but have not yet demonstrated sufficient value to be introduced into clinical practice. Here, we aimed to develop and validate a prognostic model for surgically resected non-small cell lung cancer. A biomarker panel was selected based on (1) prognostic association in published literature, (2) prognostic association in gene expression data sets, (3) availability of reliable antibodies, and (4) representation of diverse biological processes. The five selected proteins (MKI67, EZH2, SLC2A1, CADM1, and NKX2-1 alias TTF1) were analyzed by immunohistochemistry on tissue microarrays including tissue from 326 non-small cell lung cancer patients. One score was obtained for each tumor and each protein. The scores were combined, with or without the inclusion of clinical parameters, and the best prognostic model was defined according to the corresponding concordance index (C-index). The best-performing model was subsequently validated in an independent cohort consisting of tissue from 345 non-small cell lung cancer patients. The model based only on protein expression did not perform better compared to clinicopathological parameters, whereas combining protein expression with clinicopathological data resulted in a slightly better prognostic performance (C-index: all non-small cell lung cancer 0.63 vs 0.64; adenocarcinoma: 0.66 vs 0.70, squamous cell carcinoma: 0.57 vs 0.56). However, this modest effect did not translate into a significantly improved accuracy of survival prediction. The combination of a prognostic biomarker panel with clinicopathological parameters did not improve survival prediction in non-small cell lung cancer, questioning the potential of immunohistochemistry-based assessment of protein biomarkers for prognostication in clinical practice.


Genes & Development | 2017

RANK rewires energy homeostasis in lung cancer cells and drives primary lung cancer

Shuan Rao; Verena Sigl; Reiner Wimmer; Maria Novatchkova; Alexander Jais; Gabriel Wagner; Stephan Handschuh; Iris Uribesalgo; Astrid Hagelkruys; Ivona Kozieradzki; Luigi Tortola; Roberto Nitsch; Shane J. Cronin; Michael Orthofer; Daniel Branstetter; Jude Canon; John M. Rossi; Manolo D'Arcangelo; Johan Botling; Patrick Micke; Linnea La Fleur; Karolina Edlund; Michael Bergqvist; Simon Ekman; Thomas Lendl; Helmut Popper; Hiroshi Takayanagi; Lukas Kenner; Fred R. Hirsch; William C. Dougall

Lung cancer is the leading cause of cancer deaths. Besides smoking, epidemiological studies have linked female sex hormones to lung cancer in women; however, the underlying mechanisms remain unclear. Here we report that the receptor activator of nuclear factor-kB (RANK), the key regulator of osteoclastogenesis, is frequently expressed in primary lung tumors, an active RANK pathway correlates with decreased survival, and pharmacologic RANK inhibition reduces tumor growth in patient-derived lung cancer xenografts. Clonal genetic inactivation of KRasG12D in mouse lung epithelial cells markedly impairs the progression of KRasG12D -driven lung cancer, resulting in a significant survival advantage. Mechanistically, RANK rewires energy homeostasis in human and murine lung cancer cells and promotes expansion of lung cancer stem-like cells, which is blocked by inhibiting mitochondrial respiration. Our data also indicate survival differences in KRasG12D -driven lung cancer between male and female mice, and we show that female sex hormones can promote lung cancer progression via the RANK pathway. These data uncover a direct role for RANK in lung cancer and may explain why female sex hormones accelerate lung cancer development. Inhibition of RANK using the approved drug denosumab may be a therapeutic drug candidate for primary lung cancer.


BMC Cancer | 2016

Inconsistent results in the analysis of ALK rearrangements in non-small cell lung cancer

Johanna Sofia Margareta Mattsson; Hans Brunnström; Verena Jabs; Karolina Edlund; Karin Jirström; Stephanie Mindus; Linnea La Fleur; Fredrik Pontén; Mats G. Karlsson; Christina Karlsson; Hirsh Koyi; E. Branden; Johan Botling; Gisela Helenius; Patrick Micke; Maria A. Svensson


Journal of Thoracic Oncology | 2017

P1.02-063 Mutation Profiling by Targeted Next-Generation Sequencing of an Unselected NSCLC Cohort

Linnea La Fleur; Elin Falk-Sörqvist; Patrik Smeds; Magnus Sundström; Johanna Sofia Margareta Mattsson; Eva Brandén; Hirsh Koyi; Johan Isaksson; Hans Brunnström; Martin Sandelin; Kristina Lamberg; Per Landelius; Mats E. Nilsson; Patrick Micke; Lotte N. Moens; Johan Botling


Journal of Thoracic Oncology | 2017

P1.02-022 Establishing Reflex NGS Testing in NSCLC in a Regional Network of County Hospitals in Central Sweden: Topic: Driver Genes in NSCLC, Resistance, and Other

Johan Isaksson; Linda Willén; Linnea La Fleur; Stephanie Mindus; Magnus Sundström; Eva Brandén; Hirsh Koyi; Martin Sandelin; Kristina Lamberg; Patrick Micke; Lotte N. Moens; Gabriel Lundberg; Johan Botling


The Journal of Molecular Diagnostics | 2015

Clinical Validation of HaloPlex Targeted Resequencing in Formalin-Fixed, Paraffin-Embedded (FFPE) Cancer Biopsies

Lotte N. Moens; Elin Falk-Sörqvist; Linnea La Fleur; Johanna Sofia Margareta Mattsson; M. Bergfors; Magnus Sundström; Patrick Micke; Mats Nilsson; Johan Botling

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Simon Ekman

Karolinska University Hospital

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Karolina Edlund

Technical University of Dortmund

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