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Get Free AccessAbstract Purpose Sarcomas pose a severe diagnostic challenge. A wide variety of these distinct entities need to be distinguished from each other and from less aggressive types of mesenchymal tumors, to ensure correct clinical management. A machine learning based classifier for sarcomas utilizing DNA methylation data from 1077 tumors recognizing 62 sarcoma types has already been developed and termed the sarcoma classifier, which we published in 2021. Here we present a major advancement of the scale and precision of the sarcoma classifier. Methods DNA methylation profiles and histologic data from an unprecedented multi-institutional cohort of mesenchymal tumors were collected and analyzed. Utilizing a machine learning approach, the classifier was rigorously validated through five-fold nested cross-validation, achieving a 98% class-level accuracy and a Brier score of 0.017, indicative of well-calibrated probability estimates. Results The sarcoma classifier v13.1 was developed based on a training set of 4377 methylation profiles from sarcomas and less aggressive mesenchymal tumors comprising 116 tumor sub-classes and 4 control groups forming 93 distinct methylation classes. Performance was validated using four independent cohorts, comprising a total of 1547 mesenchymal tumors. A methylation-based classifier prediction was obtained in 73% of cases in the validation sets, of which 91% matched the original histopathology diagnosis, thereby increasing diagnostic confidence. The classifier enabled a definitive molecular diagnosis or tumor reclassification in 6% of cases with inconclusive or ambiguous histological findings. Conclusion Adding new sarcoma types and expanding tumor sample numbers in each methylation class in the new sarcoma classifier decisively increased the number of diagnostic predictions and improved match with histologic evaluation. This substantial advancement will promote clinical implementation of the tool for the diagnosis of mesenchymal tumor lesions.
Natalie Jäger, David Reuß, Martin Sill, Daniel Schrimpf, Abigail K. Suwala, Philipp Sievers, Rouzbeh Banan, Felix Hinz, Ramin Rahmanzade, Henry Bogumil, Kaan Fuat Aras, Areeba Patel, Andrey Korshunov, Melanie Bewerunge‐Hudler, Arjen H.G. Cleven, Manel Esteller, Hanno Glimm, Wolfgang Hartmann, Simon Kreutzfeld, Christoph E. Heilig, Till Milde, Iver Petersen, Christian Vokuhl, Wolfgang Wick, Olaf Witt, Thibault Kervarrec, Evelina Miele, Jonathan Serrano, Stephan Frank, Karl Kashofer, Anne Mc Leer, Elke Pfaff, Mélanie Pagès, Arnault Tauziède‐Espariat, Ferdinand Toberer, Henning B. Boldt, Petr Martínek, Sebastian Brandner, Mayara Ferreira Euzébio, Aurore Siegfried, Jane Chalker, P Harter, Romain Appay, Wolfgang Dietmaier, Martin Hasselblatt, Uta Flucke, Laura S. Hiemcke‐Jiwa, David A. Solomon, Clara Frydrychowicz, Pascale Varlet, Benjamin Goeppert, Michaela Nathrath, Claudia Blattmann, Monika Sparber‐Sauer, Annie Kolb, Michel Mittelbronn, Thomas Mentzel, Sandra Leisz, Anja Harder, Till Acker, Drew Pratt, Eva Wardelmann, Jamal Benhamida, M. Ladanyi, Philipp Jurmeister, William D. Foulkes, Pamela Ajuyah, David S. Ziegler, Jürgen Hench, Maikel JL. Nederkoorn, Yvonne M.H. Versleijen‐Jonkers, Gunhild Mechtersheimer, Sandro M. Krieg, Manfred Gessler, Daniel Baumhoer, Sam Behjati, Luca Bertero, Klaus Griwank, Dirk Schadendorf, Pancras C.W. Hogendoorn, Jean‐François Emile, Paul G. Kemps, Armin Jarosch, Michael Ronellenfitsch, Toni Su Idler, Daniela E. Aust, Sylvia Herold, Jessica Pablik, Maysa Al‐Hussaini, Zied Abdullaev, Maximus C.F. Yeung, Marco Wachtel, Eva Brack, F. Kommoss, Markku Miettinen, Ken Aldape, Adrienne M. Flanagan, Uta Dirksen, Kristian W. Pajtler, Thomas G. P. Grünewald (2025). Advancing sarcoma diagnostics with expanded DNA methylation-based classification. , DOI: https://doi.org/10.1101/2025.06.30.25330543.
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Type
Preprint
Year
2025
Authors
100
Datasets
0
Total Files
0
Language
en
DOI
https://doi.org/10.1101/2025.06.30.25330543
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