Accurate and efficient detection of gene fusions from RNA sequencing data.
Sebastian UhrigJulia EllermannTatjana WaltherPauline BurkhardtMartina FröhlichBarbara HutterUmut H ToprakOlaf NeumannAlbrecht StenzingerClaudia SchollStefan FröhlingBenedikt BrorsPublished in: Genome research (2021)
The identification of gene fusions from RNA sequencing data is a routine task in cancer research and precision oncology. However, despite the availability of many computational tools, fusion detection remains challenging. Existing methods suffer from poor prediction accuracy and are computationally demanding. We developed Arriba, a novel fusion detection algorithm with high sensitivity and short runtime. When applied to a large collection of published pancreatic cancer samples (n = 803), Arriba identified a variety of driver fusions, many of which affected druggable proteins, including ALK, BRAF, FGFR2, NRG1, NTRK1, NTRK3, RET, and ROS1. The fusions were significantly associated with KRAS wild-type tumors and involved proteins stimulating the MAPK signaling pathway, suggesting that they substitute for activating mutations in KRAS In addition, we confirmed the transforming potential of two novel fusions, RRBP1-RAF1 and RASGRP1-ATP1A1, in cellular assays. These results show Arriba's utility in both basic cancer research and clinical translation.
Keyphrases
- wild type
- signaling pathway
- papillary thyroid
- loop mediated isothermal amplification
- single cell
- real time pcr
- label free
- pi k akt
- squamous cell
- electronic health record
- machine learning
- copy number
- big data
- cell death
- oxidative stress
- randomized controlled trial
- palliative care
- induced apoptosis
- high resolution
- gene expression
- cell proliferation
- squamous cell carcinoma
- childhood cancer
- reactive oxygen species
- artificial intelligence
- sensitive detection
- quantum dots
- transcription factor