多种癌细胞长读转录组数据集的基因融合检测。

IF 3.3 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY Frontiers in bioscience (Landmark edition) Pub Date : 2024-12-11 DOI:10.31083/j.fbl2912413
Keigo Masuda, Yoshiaki Sota, Hideo Matsuda
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引用次数: 0

摘要

背景:融合基因是癌症研究中的重要生物标志物,因为它们的表达可产生具有致癌特性的异常蛋白质。长读程 RNA 测序(long-read RNA-seq)可对全长 mRNA 转录本进行测序,有助于检测此类融合基因。目前已提出了几种工具,用于检测来自癌细胞的长读程 RNA-seq 数据集中的融合基因。然而,长读程 RNA-seq 的高测序错误率使得融合基因的检测具有挑战性:方法:为了解决这个问题,融合检测工具中加入了额外的步骤,以提高检测的准确性。这些步骤包括将断点锚定到外显子边界、重新对齐未对齐区域以及聚类断点。为了评估我们的工具在检测融合基因方面的准确性,我们将其检测准确性与两个具有代表性的现有工具 JAFFAL 和 FusionSeeker 进行了比较:结果:在长线程 RNA-seq 数据集中,我们的工具在检测融合基因方面的表现优于这两种现有工具。我们还发现了潜在的新型融合基因,这些基因在多个工具或数据集中都能被检测到:应用我们的工具检测两种不同癌细胞系长读程 RNA-seq 数据集中的融合基因,证明了该工具的检测效果。
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Gene Fusion Detection in Long-Read Transcriptome Datasets from Multiple Cancer Cell Lines.

Background: Fusion genes are important biomarkers in cancer research because their expression can produce abnormal proteins with oncogenic properties. Long-read RNA sequencing (long-read RNA-seq), which can sequence full-length mRNA transcripts, facilitates the detection of such fusion genes. Several tools have been proposed for detecting fusion genes in long-read RNA-seq datasets derived from cancer cells. However, the high sequencing error rate in long-read RNA-seq makes fusion gene detection challenging.

Methods: To address this issue, additional steps were incorporated into the fusion detection tool to improve detection accuracy. These steps include anchoring breakpoints to exon boundaries, realigning unaligned regions, and clustering breakpoints. To evaluate the accuracy of our tool in detecting fusion genes, we compared its detection accuracy with two representative existing tools, JAFFAL and FusionSeeker.

Results: Our tool outperformed the two existing tools in detecting fusion genes, as demonstrated in long-read RNA-seq datasets. We also identified potentially novel fusion genes consistently detected across multiple tools or datasets.

Conclusions: The application of our tool to the detection of fusion genes in long-read RNA-seq datasets from two different cancer cell lines demonstrated the detection effectiveness of this tool.

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