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Improvement of detection performance of fusion genes from RNA-seq data by clustering short reads

机译:通过聚类短读取改善RNA-SEQ数据的融合基因的检测性能

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摘要

Fusion genes are involved in cancer, and their detection using RNA-Seq is insufficient given the relatively short reading length. Therefore, we proposed a shifted short-read clustering (SSC) method, which focuses on overlapping reads from the same loci and extends them as a representative sequence. To verify their usefulness, we applied the SSC method to RNA-Seq data from four types of cell lines BT-474, MCF-7, SKBR-3, and T-47D). As the slide width of the SSC method increased to one, two, five, or ten bases, the read length was extended from 201 bases to 217 (108%), 234 (116%), 282 (140%), or 317 (158%) bases, respectively. Furthermore, fusion genes were investigated using STAR-Fusion, a fusion gene detection tool, with and without the SSC method. When one base was shifted by the SSC method, the reads mapped to multiple loci decreased from 9.7% to 4.6%, and the sensitivity of the fusion gene was improved from 47% to 54% on average (BT-474: from 48% to 57%, MCF-7: 49% to 53%, SKBR-3: 50% to 57%, and T-47D: 43% to 50%) compared with original data. When the reads are shifted more, the positive predictive value was also improved. The SSC method could be an effective method for fusion gene detection.
机译:融合基因参与癌症,并且鉴于相对较短的读数长度,使用RNA-SEQ的检测不足。因此,我们提出了一种偏移的短读聚类(SSC)方法,其侧重于来自相同基因座的重叠读取并将其扩展为代表序列。为了验证其有用性,我们将SSC方法应用于来自四种类型的单元线BT-474,MCF-7,SKBR-3和T-47D的RNA-SEQ数据。随着SSC方法的滑动宽度增加到一种,两个,五个或十个基础,读取长度从201碱基延伸至217(108%),234(116%),282(140%)或317( 158%)碱基。此外,使用恒星融合,融合基因检测工具,有和没有SSC方法来研究融合​​基因。当通过SSC方法移位一个碱时,映射到多个基因座的读数从9.7%降至4.6%,融合基因的敏感性平均从47%的降至54%提高(BT-474:48%与原始数据相比,57%,MCF-7:49%至53%,SKBR-3:50%至57%,T-47D:43%至50%)。当读取被移位时,阳性预测值也得到改善。 SSC方法可以是融合基因检测的有效方法。

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