Author:
Tan Yukun,Mohanty Vakul,Liang Shaoheng,Ma Jun,Kim Kun Hee,Bonder Marc Jan,Shi Xinghua,Lee Charles,Chong Zechen,Chen Ken,
Abstract
ABSTRACTWe present novoRNABreak, a unified framework for cancer specific novel splice junction and fusion transcript detection in RNA-seq data obtained from human cancer samples. novoRNABreak is based on a local assembly model, which offers a tradeoff between the alignment-based and de novo whole transcriptome assembly (WTA) approaches, namely, being more sensitive in assembling novel junctions that cannot be directly aligned, and more efficient due to the strategy that focuses on junctions rather than full-length transcripts. The performance of novoRNABreak is demonstrated by a comprehensive set of experiments using synthetic data generated based on genome reference, as well as real RNA-seq data from breast cancer and prostate cancer samples. The results show that novoRNABreak can detect novel splice junctions and fusion transcripts efficiently with high sensitivity and reasonable specificity.
Publisher
Cold Spring Harbor Laboratory