Predicting and characterizing a cancer dependency map of tumors with deep learning

Yu Chiao Chiu, Siyuan Zheng, Li Ju Wang, Brian S. Iskra, Manjeet K. Rao, Peter J. Houghton, Yufei Huang, Yidong Chen

Producción científica: Articlerevisión exhaustiva

46 Citas (Scopus)

Resumen

Genome-wide loss-of-function screens have revealed genes essential for cancer cell proliferation, called cancer dependencies. It remains challenging to link cancer dependencies to the molecular compositions of cancer cells or to unscreened cell lines and further to tumors. Here, we present DeepDEP, a deep learning model that predicts cancer dependencies using integrative genomic profiles. It uses a unique unsupervised pretraining that captures unlabeled tumor genomic representations to improve the learning of cancer dependencies. We demonstrated DeepDEP's improvement over conventional machine learning methods and validated the performance with three independent datasets. By systematic model interpretations, we extended the current dependency maps with functional characterizations of dependencies and a proof-of-concept in silico assay of synthetic essentiality. We applied DeepDEP to pan-cancer tumor genomics and built the first pan-cancer synthetic dependency map of 8000 tumors with clinical relevance. In summary, DeepDEP is a novel tool for investigating cancer dependency with rapidly growing genomic resources.

Idioma originalEnglish (US)
Número de artículoeabh1275
PublicaciónScience Advances
Volumen7
N.º34
DOI
EstadoPublished - ago 2021

ASJC Scopus subject areas

  • General

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