...
首页> 外文期刊>Bioinformatics >A statistical framework for power calculations in ChIP-seq experiments
【24h】

A statistical framework for power calculations in ChIP-seq experiments

机译:ChIP-seq实验中用于功率计算的统计框架

获取原文
获取原文并翻译 | 示例
           

摘要

Motivation: ChIP-seq technology enables investigators to study genome-wide binding of transcription factors and mapping of epigenomic marks. Although the availability of basic analysis tools for ChIP-seq data is rapidly increasing, there has not been much progress on the related design issues. A challenging question for designing a ChIP-seq experiment is how deeply should the ChIP and the control samples be sequenced? The answer depends on multiple factors some of which can be set by the experimenter based on pilot/preliminary data. The sequencing depth of a ChIP-seq experiment is one of the key factors that determine whether all the underlying targets (e. g. binding locations or epigenomic profiles) can be identified with a targeted power. Results: We developed a statistical framework named CSSP (ChIP-seq Statistical Power) for power calculations in ChIP-seq experiments by considering a local Poisson model, which is commonly adopted by many peak callers. Evaluations with simulations and data-driven computational experiments demonstrate that this framework can reliably estimate the power of a ChIP-seq experiment at different sequencing depths based on pilot data. Furthermore, it provides an analytical approach for calculating the required depth for a targeted power while controlling the false discovery rate at a user-specified level. Hence, our results enable researchers to use their own or publicly available data for determining required sequencing depths of their ChIP-seq experiments and potentially make better use of the multiplexing functionality of the sequencers. Evaluation of power for multiple public ChIP-seq datasets indicate that, currently, typical ChIP-seq studies are powered well for detecting large fold changes of ChIP enrichment over the control sample, but they have considerably less power for detecting smaller fold changes.
机译:动机:ChIP-seq技术使研究人员能够研究全基因组转录因子的结合以及表观基因组标记的定位。尽管用于ChIP-seq数据的基本分析工具的可用性正在迅速增加,但是在相关的设计问题上并没有取得太大进展。设计ChIP-seq实验的一个具有挑战性的问题是,应该对ChIP和对照样品进行多深测序?答案取决于多种因素,实验者可以根据飞行员/初步数据设置其中一些因素。 ChIP-seq实验的测序深度是确定是否可以用目标能力鉴定所有潜在靶标(例如结合位点或表观基因组谱)的关键因素之一。结果:我们通过考虑局部Poisson模型(此模型被许多峰值调用者普遍采用)开发了一个名为CSSP(ChIP-seq统计功率)的统计框架,用于ChIP-seq实验中的功率计算。通过仿真和数据驱动的计算实验进行的评估表明,该框架可以根据试验数据可靠地估计不同测序深度的ChIP-seq实验的功能。此外,它提供了一种分析方法,用于计算目标功率所需的深度,同时将错误发现率控制在用户指定的级别。因此,我们的结果使研究人员能够使用他们自己的或公开可用的数据来确定其ChIP-seq实验所需的测序深度,并有可能更好地利用测序仪的复用功能。对多个公共ChIP-seq数据集的功效的评估表明,当前,典型的ChIP-seq研究功能强大,可检测对照样品中ChIP富集的较大倍数变化,但检测较小倍数变化的功效却相当低。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号