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Statistical models for DNA copy number variation detection using read-depth data from next generation sequencing experiments

机译:使用来自下一代测序实验的深度数据检测DNA拷贝数变异的统计模型

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摘要

In this Big Data' era, statisticians inevitably encounter data generated from various disciplines. In particular, advances in bio-technology have enabled scientists to produce enormous datasets in various biological experiments. In the last two decades, we have seen high-throughput microarray data resulting from various genomic studies. Recently, next generation sequencing (NGS) technology has been playing an important role in the study of genomic features, resulting in vast amount of NGS data. One frequent application of NGS technology is in the study of DNA copy number variants (CNVs). The resulting NGS read count data are then used by researchers to formulate their various scientific approaches to accurately detect CNVs. Computational and statistical approaches to the detection of CNVs using NGS data are, however, very limited at present. In this review paper, we will focus on read-depth analysis in CNV detection and give a brief summary of currently used statistical analysis methods in searching for CNVs using NGS data. In addition, based on the review, we discuss the challenges we face and future research directions. The ultimate goal of this review paper is to give a timely exposition of the surveyed statistical methods to researchers in related fields.
机译:在这个大数据时代,统计人员不可避免地会遇到来自各个学科的数据。特别是,生物技术的进步使科学家能够在各种生物学实验中产生大量的数据集。在过去的二十年中,我们看到了来自各种基因组研究的高通量微阵列数据。最近,下一代测序(NGS)技术在基因组特征的研究中发挥了重要作用,从而产生了大量NGS数据。 NGS技术的一种常见应用是研究DNA拷贝数变异体(CNV)。研究人员使用所得的NGS读取计数数据来制定其各种科学方法,以准确检测CNV。但是,目前使用NGS数据检测CNV的计算和统计方法非常有限。在这篇评论文章中,我们将专注于CNV检测中的读取深度分析,并简要概述当前使用NGS数据搜索CNV的统计分析方法。此外,在回顾的基础上,我们讨论了我们面临的挑战和未来的研究方向。本文的最终目的是及时向相关领域的研究人员介绍所调查的统计方法。

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