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Noise cancellation for robust copy number variation detection using next generation sequencing data

机译:使用下一代测序数据消除噪声,实现可靠的拷贝数变异检测

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High-throughput next generation sequencing (NGS) technologies have created an opportunity for detecting copy number variations (CNVs) more accurately. However, efficient and precise detection of CNVs remains challenging due to high levels of noise and biases, data heterogeneity and the “big data” nature of NGS data. In this work, we introduce a novel preprocessing pipeline to improve the detection accuracy of CNVs in heterogeneous NGS data, such as cancer whole exome sequencing data. We employed several normalizations to reduce biases due to GC content, mappability and tumor contamination. We also developed a novel efficient and effective smoothing approach based on the Taut String method to reduce noise and increase the detection power of the CNV detection methods.
机译:高通量下一代测序(NGS)技术为更准确地检测拷贝数变异(CNV)创造了机会。但是,由于高水平的噪声和偏差,数据异质性以及NGS数据的“大数据”性质,有效,精确地检测CNV仍然具有挑战性。在这项工作中,我们引入了一种新颖的预处理管道,以提高异质NGS数据(例如癌症全外显子组测序数据)中CNV的检测准确性。我们采用了几种归一化方法来减少由于GC含量,可映射性和肿瘤污染引起的偏倚。我们还开发了一种基于Taut String方法的新颖有效的平滑方法,以减少噪声并增加CNV检测方法的检测能力。

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