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S3norm: simultaneous normalization of sequencing depth and signal-to-noise ratio in epigenomic data

机译:S3norm:表观胸部数据中测序深度和信噪比的同时归一化

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摘要

Quantitative comparison of epigenomic data across multiple cell types or experimental conditions is a promising way to understand the biological functions of epigenetic modifications. However, differences in sequencing depth and signal-to-noise ratios in the data from different experiments can hinder our ability to identify real biological variation from raw epigenomic data. Proper normalization is required prior to data analysis to gain meaningful insights. Most existing methods for data normalization standardize signals by rescaling either background regions or peak regions, assuming that the same scale factor is applicable to both background and peak regions. While such methods adjust for differences in sequencing depths, they do not address differences in the signal-to-noise ratios across different experiments. We developed a new data normalization method, called S3norm, that normalizes the sequencing depths and signal-to-noise ratios across different data sets simultaneously by a monotonic nonlinear transformation. We show empirically that the epigenomic data normalized by our method, compared to existing methods, can better capture real biological variation, such as impact on gene expression regulation.
机译:在多种细胞类型或实验条件下的表观胶质数据的定量比较是了解表观遗传修饰的生物学功能的有希望的方法。然而,来自不同实验中数据中的测序深度和信噪比的差异可以阻碍我们识别从原始表观胶质数据的真实生物学变化的能力。在数据分析之前需要适当的归一化以获得有意义的见解。假设相同的比例因子适用于背景和峰值区域,通过重新传递背景区域或峰值区域来标准化信号的最多现有方法。虽然这种方法适用于测序深度的差异,但它们不会在不同实验中解决信噪比的差异。我们开发了一种名为S3OMM的新数据归一化方法,其通过单调非线性变换同时跨不同数据集的测序深度和信噪比。我们凭经验表明,与现有方法相比,我们的方法归一化的表观胸元数据可以更好地捕获真实的生物变异,例如对基因表达调控的影响。

著录项

  • 来源
    《Nucleic Acids Research》 |2020年第8期|共12页
  • 作者单位

    Penn State Univ Bioinformat &

    Genom Program Ctr Computat Biol &

    Bioinformat Huck Inst Life Sci Wartik Lab University Pk PA 16802 USA;

    Penn State Univ Dept Biochem &

    Mol Biol Wartik Lab University Pk PA 16802 USA;

    Penn State Univ Dept Biochem &

    Mol Biol Wartik Lab University Pk PA 16802 USA;

    Penn State Univ Bioinformat &

    Genom Program Ctr Computat Biol &

    Bioinformat Huck Inst Life Sci Wartik Lab University Pk PA 16802 USA;

    Penn State Univ Dept Stat Wartik Lab University Pk PA 16802 USA;

    Penn State Univ Dept Stat Wartik Lab University Pk PA 16802 USA;

    Penn State Univ Dept Biochem &

    Mol Biol Wartik Lab University Pk PA 16802 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物化学;
  • 关键词

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