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De novo clustering of long reads by gene from transcriptomics data

机译:从转录组数据对基因的长读从头开始聚类

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摘要

Long-read sequencing currently provides sequences of several thousand base pairs. It is therefore possible to obtain complete transcripts, offering an unprecedented vision of the cellular transcriptome. However the literature lacks tools for de novo clustering of such data, in particular for Oxford Nanopore Technologies reads, because of the inherent high error rate compared to short reads. Our goal is to process reads from whole transcriptome sequencing data accurately and without a reference genome in order to reliably group reads coming from the same gene. This de novo approach is therefore particularly suitable for non-model species, but can also serve as a useful pre-processing step to improve read mapping. Our contribution both proposes a new algorithm adapted to clustering of reads by gene and a practical and free access tool that allows to scale the complete processing of eukaryotic transcriptomes. We sequenced a mouse RNA sample using the MinION device. This dataset is used to compare our solution to other algorithms used in the context of biological clustering. We demonstrate that it is the best approach for transcriptomics long reads. When a reference is available to enable mapping, we show that it stands as an alternative method that predicts complementary clusters.
机译:目前,长读测序提供了数千个碱基对的序列。因此,有可能获得完整的转录本,为细胞转录组提供前所未有的视野。然而,由于与短读相比固有的高错误率,因此文献缺乏用于此类数据的从头聚类的工具,特别是对于牛津纳米孔技术的读而言。我们的目标是在没有参考基因组的情况下准确地处理来自整个转录组测序数据的读数,以便可靠地对来自同一基因的读数进行分组。因此,这种从头开始的方法特别适用于非模型物种,但也可以用作改善读取映射的有用预处理步骤。我们的贡献都提出了一种适用于按基因对读段进行聚类的新算法,以及一种实用且免费的访问工具,该工具可扩展真核转录组的完整处理。我们使用MinION设备对小鼠RNA样品进行了测序。该数据集用于将我们的解决方案与生物聚类中使用的其他算法进行比较。我们证明这是转录组学长读的最佳方法。当参考可用于启用映射时,我们将证明它是预测互补聚类的替代方法。

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