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Error correction of high-throughput sequencing datasets with non-uniform coverage

机译:覆盖范围不一致的高通量测序数据集的错误校正

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Motivation: The continuing improvements to high-throughput sequencing (HTS) platforms have begun to unfold a myriad of new applications. As a result, error correction of sequencing reads remains an important problem. Though several tools do an excellent job of correcting datasets where the reads are sampled close to uniformly, the problem of correcting reads coming from drastically non-uniform datasets, such as those from single-cell sequencing, remains open.Results: In this article, we develop the method Hammer for error correction without any uniformity assumptions. Hammer is based on a combination of a Hamming graph and a simple probabilistic model for sequencing errors. It is a simple and adaptable algorithm that improves on other tools on non-uniform single-cell data, while achieving comparable results on normal multi-cell data.
机译:动机:高通量测序(HTS)平台的持续改进已开始展现出无数新应用。结果,测序读段的错误校正仍然是重要的问题。尽管有几种工具在校正读取接近均匀采样的数据集方面发挥了出色的工作,但是校正来自完全不均匀的数据集(如单细胞测序的数据)的读取问题仍然存在。结果:在本文中,我们开发了用于错误校正的Hammer方法,没有任何统一性假设。 Hammer基于汉明图和序列错误的简单概率模型的组合。这是一种简单且适应性强的算法,可在处理非均匀单细胞数据的其他工具上进行改进,同时在普通多细胞数据上获得可比的结果。

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