Kai Schmid, Jannik Sehring, Attila Németh, Patrick N. Harter, Katharina J. Weber, Abishaa Vengadeswaran, Holger Storf, Christian Seidemann, Kapil Karki, Patrick Fischer, Hildegard Dohmen, Carmen Selignow, Andreas von Deimling, Stefan Grau, Uwe Schröder, Karl H. Plate, Marco Stein, Eberhard Uhl, Till Acker, Daniel Amsel
{"title":"分布式计算和基于DNA甲基化的中枢神经系统肿瘤分类的在线可视化。","authors":"Kai Schmid, Jannik Sehring, Attila Németh, Patrick N. Harter, Katharina J. Weber, Abishaa Vengadeswaran, Holger Storf, Christian Seidemann, Kapil Karki, Patrick Fischer, Hildegard Dohmen, Carmen Selignow, Andreas von Deimling, Stefan Grau, Uwe Schröder, Karl H. Plate, Marco Stein, Eberhard Uhl, Till Acker, Daniel Amsel","doi":"10.1111/bpa.13228","DOIUrl":null,"url":null,"abstract":"<p>The 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.</p>","PeriodicalId":9290,"journal":{"name":"Brain Pathology","volume":"34 3","pages":""},"PeriodicalIF":5.8000,"publicationDate":"2023-11-27","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://onlinelibrary.wiley.com/doi/epdf/10.1111/bpa.13228","citationCount":"0","resultStr":"{\"title\":\"DistSNE: Distributed computing and online visualization of DNA methylation-based central nervous system tumor classification\",\"authors\":\"Kai Schmid, Jannik Sehring, Attila Németh, Patrick N. Harter, Katharina J. Weber, Abishaa Vengadeswaran, Holger Storf, Christian Seidemann, Kapil Karki, Patrick Fischer, Hildegard Dohmen, Carmen Selignow, Andreas von Deimling, Stefan Grau, Uwe Schröder, Karl H. 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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. 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DistSNE: Distributed computing and online visualization of DNA methylation-based central nervous system tumor classification
The 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.
期刊介绍:
Brain Pathology is the journal of choice for biomedical scientists investigating diseases of the nervous system. The official journal of the International Society of Neuropathology, Brain Pathology is a peer-reviewed quarterly publication that includes original research, review articles and symposia focuses on the pathogenesis of neurological disease.