Novornabreak: Local Assembly for Novel Splice Junction and Fusion Transcript Detection from RNA-Seq Data.

Yukun Tan, Vakul Mohanty, Shaoheng Liang, Jinzhuang Dou, Jun Ma, Kun Hee Kim, Marc Jan Bonder, Xinghua Shi, Charles Lee, Zechen Chong, Ken Chen
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Abstract

We 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) methods. This approach is accurate and sensitive in assembling novel junctions that are difficult to directly align or have multiple alignments. Additionally, it is 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 our tool has a better performance by fully utilizing unmapped reads and precisely identifying the junctions where short reads or small exons have multiple alignments. novoRNABreak is a fully-fledged program available on GitHub (https://github.com/KChen-lab/novoRNABreak).

Novornabreak:从 RNA-Seq 数据中检测新型剪接接头和融合转录本的局部组装。
novoRNABreak 基于局部组装模型,在基于比对的全转录组组装(WTA)方法和从头组装(de novo whole transcriptome assembly)方法之间进行了权衡。这种方法在组装难以直接比对或有多重比对的新连接时准确而灵敏。此外,由于该方法侧重于连接而非全长转录本,因此效率更高。我们利用基于基因组参考生成的合成数据以及乳腺癌和前列腺癌样本的真实 RNA-seq 数据进行了一系列综合实验,证明了 novoRNABreak 的性能。结果表明,我们的工具充分利用了未映射读数,并精确识别了短读数或小外显子有多重比对的连接点,因此具有更好的性能。novoRNABreak 是一个完全成熟的程序,可在 GitHub (https://github.com/KChen-lab/novoRNABreak) 上下载。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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