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Do we have the technology and availability needed for clinical implementation? The 11th NRI conference Oslo, May 9th 2016 Hege G. Russnes, MD, PhD Head at Molecular diagnostics, Dept. of Pathology and Researcher, Institute for cancer research Oslo University Hospital Increased knowledge DNA, Epigenetics, RNA, protein TCGA: http://cancergenome.nih.gov ICGC: https://icgc.org 2014 Technological developments - extreme increase in knowledge Why can we not get all this in a routine diagnostic setting? Example #1, Personalized Medicine: challenge when changing classification and thus treatment stratification of breast cancer patients Breast cancer, the diagnosis •Tissue based diagnostics needed for: • Prognosis • Prediction of therapy response • Selection of patients to clinical trials •17 different types of breast cancer is recognized by histologic appearance (WHO) • No major importance for clinical decisions Subgrouping breast cancer Histologic grade Size, nodal Age involvement, metastases TNM ER, PgR, Ki67, HER2 Grade 1 Grade 2 Grade 3Estrogen receptor, ER HER2/erbB2 HER2/erbB2 The Intrinsic classification Five subtypes by gene expression: • Luminal A • Luminal B NON-LUMINAL ER- LUMINAL, ER+ • HER2-enriched • Basal-like • Normal-like Perou et al. PNAS 2001 Molecular subtypes A relationship between phenotypic and genomic subtypes Russnes et al. JCI 2011 St. Gallen 2013 recommendations Treatment by MOLECULAR SUBTYPE ”LumA-like” ”LumB-like” St. Gallen 2015 recommendations Treatment by MOLECULAR SUBTYPE ”LumA-like” Multiparameter molecular marker ”intermediate group” ”LumB-like” Coates et al, Ann Oncol 2015 Ki67 immunohistochemical staining ~2 % positive (ca 2/100 positive nuclei) ~45% positive (ca 21/47 positive nuclei) Courtesy, Elin Borgen ~17% positive (ca 9/52 positive nuclei) ~ 93% positive (ca 70/75 positive) A multigene test • • • • • • • • High reproducibility Single-sample test Fast (days-week) Tissue demands? Tissue fixation? Send or in-house? Cost per sample? What about the “grey zones”? EMIT EBC Establishment of Molecular profiling for Individual Treatment decisions in Early Breast Cancer PI: Bjørn Naume Co-PIs: Elin Borgen, Vessela N. Kristensen, Hege G. Russnes, Therese Sørlie Oslo University Hospital Phase 0: Retrospective cohort: Five subgroups EMITEBC, phase 1: Standard histopatology Treatment according to guidelines “Parallel” testing of study-related analyses, comparison of treatment decision according to molecular analyses vs standard Who will “change” treatment category? PAM50 ROR What would be the consequences? analysis Intervention study needed? Analysis at OUS in ”Clinical mode” ROR-score Intrinsic subtype Feasibility of PAM50 in routine setting Other analyses of primary tumor in parallel Test logistics, questionnaires, health economy parameters/analyses Example #2: Personalized Medicine: Challenge making therapy decision based on mutation status MetAction: Actionable Targets in Cancer Metastasis - From Bed to Bench to Byte to Bedside Preliminar cytology report IonTorrent FISH Molecular Board MolPat (Validation) (week 1.5) Comparison with primary tumor histopathology Final pathology report Final molecular report PI: G. Mælandsmo, A-L Børresen-Dale, OUH Tumor Board (week 2 - 2.5) Challenging case • Female, born 196~ Diagnosed with a large tumor in the ovary July 2014. Both ovaries were involved in the tumor, forming a mass at the back of the uterus. • Surgical treatment: Hysterectomy and bilateral salpingo-oophorectomi, omentectomi, lymfadenectomi. • Histopathology: Small cell malignant tumor, can represent an undifferentiated small cell sarcoma located in both ovaries and in pelvis, growing into the parametries bilaterally and in serosa of uterus including cervix. • Tumor phenotype (IHC): Diffuse positivity for CD10, CD99 and vimentin, focally for inhibin. Tumor was negative for pancytokeratin (AE1/AE3), ER, CD45, myeloperoxidase, HMB-45, Melan A, chromogranin, synaptophysin, desmin, Myf-4, calretinin og EMA. = Targeted sequencing: four mutations Activating mutation = Wnt signalling = Potentially stabilazing mutation HER2 CTNNB1 KRAS Potentially activating mutation RAF = Activating mutation PIK3CA AKT nucleus TCF/c-myc proliferation MEK/ERK MEK inhibitors? proliferation mTOR mTOR inhibitors? survival Challenges: • Several driver genes affected, but do not know if all are functional? • What kind of validation would be needed? Customize for every patient? • Not eligible for any trials • The mutation pattern reflected an ovarian epithelial carcinoma and not a sarcoma • Histology and protein analyses (IHC) showed a dedifferentiated tumor (…sarcomatous) • Important to have knowledge of genomic alterations as well as phenotypic information Example #3: Personalized Medicine: Challenge dealing with small biopsies Tissue sampling Bias in sampling Not representative! Representative! • Methodology in demand of “Fresh” tissue piece; tissue selected prior to microscopic examination (“blinded”) • Methodology using FFPE tissue will secure selection of representative part of tumor by dissection NB: Intra tumor heterogeneity, subpopulations NB: Immune response varies within tumors NB: Small biopsies, representativity Some challenges for implementation of Personalized Medicine • Technology not easily available, too expensive or not robust/standardized • Demands large tissue pieces and/or special preservation • Algorithms/data analyses suited for collections of samples, few are for single-sample prediction • Data analyses challenging, time consuming • Data handling, data storage • Research cohorts can have different types of selection bias, need validation in clinical trials • Treatment regimen changes, a predictor might “loose” its power Logistics must be suited for “on demand” situations, a test needs to be performed whenever a patient needs it Technology and availability… • Changing classification is demanding • Predicting therapy response based on mutation status is challenging • Diagnostics must be performed in an integrative setting: – Clinical information – Imaging – Morphology – DNA alteration – Phenotype alteration (RNA, protein) A huge demand for many types of technology and a diversity in competence – Immune response is needed Shared resources between “routine” laboratories and research laboratories Anne-Lise Børresen-Dale Hege Russnes’ project group: Inga H. Rye Bente Risberg Helen Vålerhaugen Arne V. Pladsen Jiqiu Cheng Veronica O. Wang Geir A. Kongelf Universitetet i Oslo: Ole CHr. Lingjærde, Arnoldo Frigessi OSBREAC: Kristine Kleivi Sahlberg, Rolf Kåresen, Bjørn Naume, Anne-Lise Børresen-Dale, Vessela N. Kristensen, Øystein Fodstad, Jahn M. Nesland, Torill Sauer, Jon Lømo, Øystein Garred, Gunhild Mælandsmo, Tone Baaten, Helle Skjerven, Jurgen Geissler, Britt Fritzmann, Ellen Schlichting, Olav Engebråten, Solveig Hofvind, Elin Borgen, Gry Geitvik Hans Kristian M. Vollan, Åslaug Helland, Anna Sætersdal, Therese Sørlie Kornelia Polyak Vanessa Almendro Michael Stratton Peter Campbell David Wedge Anders Zetterberg Michael Wigler James Hicks Carlos Caldas Sarah-Jane Dawson Florian Markowetz Per Eystein Lønning Stian Knappskog Peter Van Loo IHC Protein Few proteins Visual interpretation, -simple -correlation with type of cell, histology Variation between interpretators Easy to integrate FISH DNA Few genes Visual interpretation, -simple -correlation with type of cell, histology PCR Sequencing RNA DNA, RNA Single genes/subsets Automatized interpretation, -dependent on software -No correlation with type of cell, Variation between histology interpretators Company Easy to integrate based, difficult to integrate Single geneswhole genome Automatized interpretation, -dependent on software -No correlation with type of cell, histology From easy to difficult to integrate