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Integration of Genomic Data Enables Selective Discovery of Breast Cancer Drivers
Author(s) -
Félix Sanchez-Garcia,
Patricia Villagrasa,
Junji Matsui,
Dylan Kotliar,
Verónica Castro,
Uri-David Akavia,
Bo-Juen Chen,
Laura Saucedo-Cuevas,
Ruth RodríguezBarrueco,
David LlobetNavàs,
José M. Silva,
Dana Pe’er
Publication year - 2014
Publication title -
cell
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 26.304
H-Index - 776
eISSN - 1097-4172
pISSN - 0092-8674
DOI - 10.1016/j.cell.2014.10.048
Subject(s) - biology , breast cancer , cancer , genomics , computational biology , genetics , bioinformatics , genome , gene
Identifying driver genes in cancer remains a crucial bottleneck in therapeutic development and basic understanding of the disease. We developed Helios, an algorithm that integrates genomic data from primary tumors with data from functional RNAi screens to pinpoint driver genes within large recurrently amplified regions of DNA. Applying Helios to breast cancer data identified a set of candidate drivers highly enriched with known drivers (p < 10(-14)). Nine of ten top-scoring Helios genes are known drivers of breast cancer, and in vitro validation of 12 candidates predicted by Helios found ten conferred enhanced anchorage-independent growth, demonstrating Helios's exquisite sensitivity and specificity. We extensively characterized RSF-1, a driver identified by Helios whose amplification correlates with poor prognosis, and found increased tumorigenesis and metastasis in mouse models. We have demonstrated a powerful approach for identifying driver genes and how it can yield important insights into cancer.

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