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Pan-cancer image-based detection of clinically actionable genetic alterations

Authors :
Heike I. Grabsch
Christian Trautwein
Piet A. van den Brandt
Kai A. J. Sommer
Peter Bankhead
Akash Patnaik
Lara R. Heij
Michael Hoffmeister
Tom Luedde
Dirk Jäger
Nadina Ortiz-Brüchle
Hermann Brenner
Andrew Srisuwananukorn
Hannah Sophie Muti
Jefree J. Schulte
Jakob Nikolas Kather
Jan M. Niehues
Jeremias Krause
Amelie Echle
Nicole A. Cipriani
Alexander T. Pearson
Loes F. S. Kooreman
Chiara Loeffler
Publication Year :
2019
Publisher :
Cold Spring Harbor Laboratory, 2019.

Abstract

Precision treatment of cancer relies on genetic alterations which are diagnosed by molecular biology assays.1 These tests can be a bottleneck in oncology workflows because of high turnaround time, tissue usage and costs.2 Here, we show that deep learning can predict point mutations, molecular tumor subtypes and immune-related gene expression signatures3,4 directly from routine histological images of tumor tissue. We developed and systematically optimized a one-stop-shop workflow and applied it to more than 4000 patients with breast5, colon and rectal6, head and neck7, lung8,9, pancreatic10, prostate11 cancer, melanoma12 and gastric13 cancer. Together, our findings show that a single deep learning algorithm can predict clinically actionable alterations from routine histology data. Our method can be implemented on mobile hardware14, potentially enabling point-of-care diagnostics for personalized cancer treatment in individual patients.

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....d501b5ca551cd0b57a762bc971decfad
Full Text :
https://doi.org/10.1101/833756