DistSNE: Distributed computing and online visualization of DNA methylation‐based central nervous system tumor classification

Author:

Schmid Kai1ORCID,Sehring Jannik1,Németh Attila1,Harter Patrick N.2,Weber Katharina J.23456,Vengadeswaran Abishaa7,Storf Holger7,Seidemann Christian8,Karki Kapil8,Fischer Patrick910,Dohmen Hildegard1,Selignow Carmen1,von Deimling Andreas11,Grau Stefan12,Schröder Uwe13,Plate Karl H.2,Stein Marco14,Uhl Eberhard14,Acker Till1,Amsel Daniel1ORCID

Affiliation:

1. Institute of Neuropathology, Justus‐Liebig University Giessen Giessen Germany

2. Neurological Institute (Edinger Institute) University Hospital Frankfurt Frankfurt Germany

3. German Cancer Consortium (DKTK) Heidelberg Germany

4. German Cancer Research Center (DKFZ) Heidelberg Germany

5. Frankfurt Cancer Institute (FCI) Frankfurt Germany

6. University Cancer Center (UCT) Frankfurt Frankfurt Germany

7. Medical Informatics Group (MIG), Goethe University Frankfurt University Hospital Frankfurt Frankfurt am Main Germany

8. DIZ Marburg Phillips University Marburg Marburg Germany

9. Institute for Medical Informatics Justus‐Liebig University Giessen Germany

10. Department of Neuropathology, German Cancer Research Center (DKFZ) Universitätsklinikum Heidelberg, and CCU Neuropathology Heidelberg Germany

11. Faculty of Health Sciences University of Applied Sciences Giessen Germany

12. Department of Neurosurgery Hospital Fulda Fulda Germany

13. Department of Neurosurgery MVZ Frankfurt/Oder Frankfurt Germany

14. Department of Neurosurgery University Hospital Giessen und Marburg Location Giessen Giessen Germany

Abstract

AbstractThe current state‐of‐the‐art analysis of central nervous system (CNS) tumors through DNA methylation profiling relies on the tumor classifier developed by Capper and colleagues, which centrally harnesses DNA methylation data provided by users. Here, we present a distributed‐computing‐based approach for CNS tumor classification that achieves a comparable performance to centralized systems while safeguarding privacy. We utilize the t‐distributed neighborhood embedding (t‐SNE) model for dimensionality reduction and visualization of tumor classification results in two‐dimensional graphs in a distributed approach across multiple sites (DistSNE). DistSNE provides an intuitive web interface (https://gin-tsne.med.uni-giessen.de) for user‐friendly local data management and federated methylome‐based tumor classification calculations for multiple collaborators in a DataSHIELD environment. The freely accessible web interface supports convenient data upload, result review, and summary report generation. Importantly, increasing sample size as achieved through distributed access to additional datasets allows DistSNE to improve cluster analysis and enhance predictive power. Collectively, DistSNE enables a simple and fast classification of CNS tumors using large‐scale methylation data from distributed sources, while maintaining the privacy and allowing easy and flexible network expansion to other institutes. This approach holds great potential for advancing human brain tumor classification and fostering collaborative precision medicine in neuro‐oncology.

Funder

Bundesministerium für Bildung und Forschung

Publisher

Wiley

Subject

Neurology (clinical),Pathology and Forensic Medicine,General Neuroscience

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