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Towards computational fluorescence microscopy: Machine learning-based integrated prediction of morphological and molecular tumor profiles

Authors :
Binder, Alexander
Bockmayr, Michael
Hägele, Miriam
Wienert, Stephan
Heim, Daniel
Hellweg, Katharina
Stenzinger, Albrecht
Parlow, Laura
Budczies, Jan
Goeppert, Benjamin
Treue, Denise
Kotani, Manato
Ishii, Masaru
Dietel, Manfred
Hocke, Andreas
Denkert, Carsten
Müller, Klaus-Robert
Klauschen, Frederick
Publication Year :
2018

Abstract

Recent advances in cancer research largely rely on new developments in microscopic or molecular profiling techniques offering high level of detail with respect to either spatial or molecular features, but usually not both. Here, we present a novel machine learning-based computational approach that allows for the identification of morphological tissue features and the prediction of molecular properties from breast cancer imaging data. This integration of microanatomic information of tumors with complex molecular profiling data, including protein or gene expression, copy number variation, gene methylation and somatic mutations, provides a novel means to computationally score molecular markers with respect to their relevance to cancer and their spatial associations within the tumor microenvironment.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1805.11178
Document Type :
Working Paper