Significance Cancer is caused by the effects of somatic mutations known as drivers. Although a number of major cancer drivers have been identified, it is suspected that many more comparatively rare and conditional drivers exist, and the interactions between different cancer-associated mutations that might be relevant for tumor progression are not well understood. We applied an advanced neural network approach to learn the sequence of mutations and the mutational burden in colon and lung cancers and to identify mutations that are associated with individual drivers. A significant ordering of driver mutations is demonstrated, and numerous, previously undetected conditional drivers are identified. These findings broaden the existing understanding of the mechanisms of tumor progression and have implications for therapeutic strategies.
Julia Matas, Brendan F. Kohrn, Jeanne Fredrickson, Kelly Carter, Ming Yu, Ting Wang, Xianyong Gui, Thierry Soussi, Vı́ctor Moreno, William M. Grady, aaa bbb, Rosa Ana Risques
João M. Alves, Nuria Estévez‐Gómez, Roberto Piñeiro, Laura Muinelo‐Romay, Patricia Mondelo‐Macía, Mercedes Salgado, Agueda Iglesias‐Gómez, Laura Codesido, Astrid Irene Díez‐Martín, Joaquín Cubiella, David Posada
Discussion(0)
No comments yet. Be the first to comment.