酿酒酵母ChIP-seq数据处理及相关定量信号归一化。

IF 1 Q3 BIOLOGY
Kris G Alavattam, Bradley M Dickson, Rina Hirano, Rachel Dell, Toshio Tsukiyama
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引用次数: 0

摘要

染色质免疫沉淀与高通量测序(ChIP-seq)是一种广泛应用于蛋白质- dna相互作用全基因组分析的技术。本协议为酿酒酵母ChIP-seq数据处理提供了指南,重点是信号归一化,以解决数据偏差,并实现样本内部和样本之间有意义的比较。为具有最小生物信息学经验的研究人员设计,它包括实际概述,并参考关键任务的脚本示例,例如配置计算环境,修剪和对齐读取,处理对齐和可视化信号。该协议采用无尖峰法定量ChIP-seq (siQ-ChIP)和归一化覆盖分别用于ChIP-seq数据的绝对和相对比较。虽然针对上下文解决了半定量的峰值归一化问题,但建议将siQ-ChIP和规范化覆盖作为数学上严格且可靠的替代方案。主要特点•ChIP-seq数据处理工作流程的Linux和macOS集成数据采集,修剪,对齐,处理和多种形式的信号计算,重点是再现性。•ChIP-seq信号生成,使用siQ-ChIP来量化绝对IP效率,为峰值归一化和归一化覆盖提供严格的替代方案,用于相对比较。•广泛适用于酿酒酵母(实验)和pombe Schizosaccharomyces(穗入)数据,但适用于任何物种的ChIP-seq。•深入的笔记和故障排除指导用户通过设置挑战和关键概念在基本的生物信息学,数据处理和信号计算。图形概述流程图描绘ChIP-seq数据处理步骤涵盖在本协议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ChIP-seq Data Processing and Relative and Quantitative Signal Normalization for Saccharomyces cerevisiae.

Chromatin immunoprecipitation with high-throughput sequencing (ChIP-seq) is a widely used technique for genome-wide analyses of protein-DNA interactions. This protocol provides a guide to ChIP-seq data processing in Saccharomyces cerevisiae, with a focus on signal normalization to address data biases and enable meaningful comparisons within and between samples. Designed for researchers with minimal bioinformatics experience, it includes practical overviews and refers to scripting examples for key tasks, such as configuring computational environments, trimming and aligning reads, processing alignments, and visualizing signals. This protocol employs the sans-spike-in method for quantitative ChIP-seq (siQ-ChIP) and normalized coverage for absolute and relative comparisons of ChIP-seq data, respectively. While spike-in normalization, which is semiquantitative, is addressed for context, siQ-ChIP and normalized coverage are recommended as mathematically rigorous and reliable alternatives. Key features • ChIP-seq data processing workflow for Linux and macOS integrating data acquisition, trimming, alignment, processing, and multiple forms of signal computation, with a focus on reproducibility. • ChIP-seq signal generation using siQ-ChIP to quantify absolute IP efficiency-providing a rigorous alternative to spike-in normalization-and normalized coverage for relative comparisons. • Broad applicability demonstrated with Saccharomyces cerevisiae (experimental) and Schizosaccharomyces pombe (spike-in) data but suitable for ChIP-seq in any species. • In-depth notes and troubleshooting guide users through setup challenges and key concepts in basic bioinformatics, data processing, and signal computation. Graphical overview Flowchart depicting ChIP-seq data processing steps covered in this protocol.

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