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  3. A deep learning system accurately classifies primary and metastatic cancers using passenger mutation patterns.
 

A deep learning system accurately classifies primary and metastatic cancers using passenger mutation patterns.

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BORIS DOI
10.48350/150188
Date of Publication
February 5, 2020
Publication Type
Article
Contributor
Jiao, Wei
Atwal, Gurnit
Polak, Paz
Karlic, Rosa
Cuppen, Edwin
Danyi, Alexandra
de Ridder, Jeroen
van Herpen, Carla
Lolkema, Martijn P
Steeghs, Neeltje
Getz, Gad
Morris, Quaid
Stein, Lincoln D
Subject(s)

600 - Technology::610...

Series
Nature Communications
ISSN or ISBN (if monograph)
2041-1723
Publisher
Springer Nature
Language
English
Publisher DOI
10.1038/s41467-019-13825-8
PubMed ID
32024849
Description
In cancer, the primary tumour's organ of origin and histopathology are the strongest determinants of its clinical behaviour, but in 3% of cases a patient presents with a metastatic tumour and no obvious primary. Here, as part of the ICGC/TCGA Pan-Cancer Analysis of Whole Genomes (PCAWG) Consortium, we train a deep learning classifier to predict cancer type based on patterns of somatic passenger mutations detected in whole genome sequencing (WGS) of 2606 tumours representing 24 common cancer types produced by the PCAWG Consortium. Our classifier achieves an accuracy of 91% on held-out tumor samples and 88% and 83% respectively on independent primary and metastatic samples, roughly double the accuracy of trained pathologists when presented with a metastatic tumour without knowledge of the primary. Surprisingly, adding information on driver mutations reduced accuracy. Our results have clinical applicability, underscore how patterns of somatic passenger mutations encode the state of the cell of origin, and can inform future strategies to detect the source of circulating tumour DNA.
Handle
https://boris-portal.unibe.ch/handle/20.500.12422/39061
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41467_2019_Article_13825.pdfAdobe PDF807.9 KBAttribution (CC BY 4.0)publishedOpen
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