Variant classification in precision oncology

Jonas Leichsenring(Heidelberg University), Peter Horak(German Cancer Research Center), Simon Kreutzfeldt(German Cancer Research Center), Christoph Heining(National Center for Tumor Diseases), Petros Christopoulos(German Center for Lung Research), Anna‐Lena Volckmar(Heidelberg University), Olaf Neumann(Heidelberg University), Martina Kirchner(Heidelberg University), Carolin Ploeger(Heidelberg University), Jan Budczies(Heidelberg University), Christoph E. Heilig(National Center for Tumor Diseases), Barbara Hutter(German Cancer Research Center), Martina Fröhlich(German Cancer Research Center), Sebastian Uhrig(German Cancer Research Center), Daniel Kazdal(Heidelberg University), Michael Allgäuer(Heidelberg University), Alexander Harms(Heidelberg University), Eugen Rempel(Heidelberg University), Ulrich Lehmann(Medizinische Hochschule Hannover), Michael Thomas(German Center for Lung Research), Nicole Pfarr(Technical University of Munich), Ninel Azoitei(University Hospital Ulm), Irina Bonzheim(University Children's Hospital Tübingen), Ralf Marienfeld(University Hospital Ulm), Peter Mӧller(University Hospital Ulm), Martin Werner(University of Freiburg), Falko Fend(University Children's Hospital Tübingen), Melanie Boerries(University of Freiburg), Nikolas von Bubnoff(University of Freiburg), Silke Laßmann(University of Freiburg), Thomas Longerich(Heidelberg University), Michael Bitzer(University Children's Hospital Tübingen), Thomas Seufferlein(University Hospital Ulm), Nisar P. Malek(University Children's Hospital Tübingen), Wilko Weichert(Technical University of Munich), Peter Schirmacher(German Cancer Research Center), Roland Penzel(Heidelberg University), Volker Endris(Heidelberg University), Benedikt Brors(German Cancer Research Center), Frederick Klauschen(Charité - Universitätsmedizin Berlin), Hanno Glimm(National Center for Tumor Diseases), Stefan Fröhling(German Cancer Research Center), Albrecht Stenzinger(Heidelberg University)
International Journal of Cancer
April 22, 2019
Cited by 137Open Access
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Abstract

Next-generation sequencing has become a cornerstone of therapy guidance in cancer precision medicine and an indispensable research tool in translational oncology. Its rapidly increasing use during the last decade has expanded the options for targeted tumor therapies, and molecular tumor boards have grown accordingly. However, with increasing detection of genetic alterations, their interpretation has become more complex and error-prone, potentially introducing biases and reducing benefits in clinical practice. To facilitate interdisciplinary discussions of genetic alterations for treatment stratification between pathologists, oncologists, bioinformaticians, genetic counselors and medical scientists in specialized molecular tumor boards, several systems for the classification of variants detected by large-scale sequencing have been proposed. We review three recent and commonly applied classifications and discuss their individual strengths and weaknesses. Comparison of the classifications underlines the need for a clinically useful and universally applicable variant reporting system, which will be instrumental for efficient decision making based on sequencing analysis in oncology. Integrating these data, we propose a generalizable classification concept featuring a conservative and a more progressive scheme, which can be readily applied in a clinical setting.


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