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Power and sample size calculations for high-throughput sequencing-based experiments

机译:基于高通量测序的实验的功效和样本量计算

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摘要

Power/sample size (power) analysis estimates the likelihood of successfully finding the statistical significance in a data set. There has been a growing recognition of the importance of power analysis in the proper design of experiments. Power analysis is complex, yet necessary for the success of large studies. It is important to design a study that produces statistically accurate and reliable results. Power computation methods have been well established for both microarray-based gene expression studies and genotyping microarray-based genome-wide association studies. High-throughput sequencing (HTS) has greatly enhanced our ability to conduct biomedical studies at the highest possible resolution (per nucleotide). However, the complexity of power computations is much greater for sequencing data than for the simpler genotyping array data. Research on methods of power computations for HTS-based studies has been recently conducted but is not yet well known or widely used. In this article, we describe the power computation methods that are currently available for a range of HTS-based studies, including DNA sequencing, RNA-sequencing, microbiome sequencing and chromatin immunoprecipitation sequencing. Most importantly, we review the methods of power analysis for several types of sequencing data and guide the reader to the relevant methods for each data type.
机译:功效/样本量(功效)分析估计成功找到数据集中统计显着性的可能性。人们越来越认识到在适当设计实验中进行功率分析的重要性。功效分析是复杂的,但对于大型研究的成功也是必需的。设计研究以产生统计上准确和可靠的结果非常重要。对于基于微阵列的基因表达研究和基于基因型微阵列的全基因组关联研究,已经建立了强大的计算方法。高通量测序(HTS)大大增强了我们以尽可能高的分辨率(每个核苷酸)进行生物医学研究的能力。然而,与简单的基因分型阵列数据相比,测序数据的功效计算复杂度要高得多。最近已经进行了基于HTS的研究的功率计算方法的研究,但尚未广为人知或广泛使用。在本文中,我们描述了目前可用于基于HTS的一系列研究的功效计算方法,包括DNA测序,RNA测序,微生物组测序和染色质免疫沉淀测序。最重要的是,我们回顾了几种测序数据类型的功效分析方法,并指导读者使用每种数据类型的相关方法。

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