Deep learning in cancer pathology: a new generation of clinical biomarkers
RWTH Aachen University · German Cancer Research Center · +5 more institutions
Abstract
Clinical workflows in oncology rely on predictive and prognostic molecular biomarkers. However, the growing number of these complex biomarkers tends to increase the cost and time for decision-making in routine daily oncology practice; furthermore, biomarkers often require tumour tissue on top of routine diagnostic material. Nevertheless, routinely available tumour tissue contains an abundance of clinically relevant information that is currently not fully exploited. Advances in deep learning (DL), an artificial intelligence (AI) technology, have enabled the extraction of previously hidden information directly from routine histology images of cancer, providing potentially clinically useful information. Here, we…
Citation impact
- FWCI
- 41.32
- Percentile
- 100%
- References
- 88
Authors
6- AEAmelie EchleCorresponding
RWTH Aachen University
- NRNiklas Rindtorff
German Cancer Research Center, Heidelberg University
- TJTitus J. Brinker
German Cancer Research Center, Heidelberg University, National Center for Tumor Diseases
- TLTom Luedde
Düsseldorf University Hospital, Heinrich Heine University Düsseldorf
- ATAlexander T. Pearson
University of Chicago
Topics & keywords
- Pathology
- Medicine
- Cancer
- Internal medicine
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