Copy Number Variation Detection Using Total Variation.

Fatima Zare, Sheida Nabavi
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引用次数: 1

Abstract

Next-generation sequencing (NGS) technologies offer new opportunities for precise and accurate identification of genomic aberrations, including copy number variations (CNVs). For high-throughput NGS data, using depth of coverage has become a major approach to identify CNVs, especially for whole exome sequencing (WES) data. Due to the high level of noise and biases of read-count data and complexity of the WES data, existing CNV detection tools identify many false CNV segments. Besides, NGS generates a huge amount of data, requiring to use effective and efficient methods. In this work, we propose a novel segmentation algorithm based on the total variation approach to detect CNVs more precisely and efficiently using WES data. The proposed method also filters out outlier read-counts and identifies significant change points to reduce false positives. We used real and simulated data to evaluate the performance of the proposed method and compare its performance with those of other commonly used CNV detection methods. Using simulated and real data, we show that the proposed method outperforms the existing CNV detection methods in terms of accuracy and false discovery rate and has a faster runtime compared to the circular binary segmentation method.

Abstract Image

Abstract Image

Abstract Image

使用总变异检测拷贝数变异。
下一代测序(NGS)技术为精确和准确地鉴定基因组畸变(包括拷贝数变异(CNVs))提供了新的机会。对于高通量NGS数据,使用覆盖深度已成为鉴定CNVs的主要方法,特别是对于全外显子组测序(WES)数据。由于读计数数据的高噪声和偏差以及WES数据的复杂性,现有的CNV检测工具识别出许多虚假的CNV片段。此外,NGS产生了大量的数据,需要使用有效和高效的方法。在这项工作中,我们提出了一种新的基于总变分方法的分割算法,以更精确和有效地利用WES数据检测CNVs。该方法还可以过滤掉异常的读取计数,并识别重要的变化点,以减少误报。我们使用真实数据和模拟数据来评估该方法的性能,并将其与其他常用的CNV检测方法的性能进行比较。通过仿真和真实数据,我们证明了该方法在准确率和错误发现率方面优于现有的CNV检测方法,并且与圆形二值分割方法相比具有更快的运行时间。
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