Deep learning can predict microsatellite instability directly from histology in gastrointestinal cancer
German Cancer Research Center · Heidelberg University · +17 more institutions
Abstract
Microsatellite instability determines whether patients with gastrointestinal cancer respond exceptionally well to immunotherapy. However, in clinical practice, not every patient is tested for MSI, because this requires additional genetic or immunohistochemical tests. Here we show that deep residual learning can predict MSI directly from H&E histology, which is ubiquitously available. This approach has the potential to provide immunotherapy to a much broader subset of patients with gastrointestinal cancer. A deep residual learning framework identifies microsatellite instability in histology slides from patients with cancer and can be used to guide immunotherapy.
Citation impact
- FWCI
- 86.76
- Percentile
- 100%
- References
- 27
Authors
17- JNJakob Nikolas KatherCorresponding
German Cancer Research Center, Heidelberg University, University of Chicago, National Center for Tumor Diseases, RWTH Aachen University
- ATAlexander T. Pearson
University of Chicago
- NHNiels Halama
German Cancer Research Center, Heidelberg University, National Center for Tumor Diseases
- DJDirk Jäger
German Cancer Research Center, Heidelberg University, National Center for Tumor Diseases
- JKJeremias Krause
RWTH Aachen University
Topics & keywords
- Microsatellite instability
- Histology
- Cancer
- Immunotherapy
- Gastrointestinal cancer
- Medicine
- Microsatellite
- Pathology