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Comprehensive Guide for Epigenetics and Transcriptomics Data Quality Control

STAR Protocols(2025)

Lincoln Laboratory

Cited 0|Views14
Abstract
Host response to environmental exposures such as pathogens and chemicals can include modifications to the epigenome and transcriptome. Improved signature discovery, including the identification of the agent and timing of exposure, has been enabled by advancements in assaying techniques to detect RNA expression, DNA base modifications, histone modifications, and chromatin accessibility. The interrogation of the epigenome and transcriptome cascade requires analyzing disparate datasets from multiple assay types, often at single-cell resolution, derived from the same biospecimen. However, there remains a paucity of rigorous quality control standards of those datasets that reflect quality assurance of the underlying assay. This guide outlines a comprehensive suite of metrics that can be used to ensure quality from 11 different epigenetics and transcriptomics assays. Recommended mitigative actions to address failed metrics are provided. The workflow presented aims to improve benchwork protocols and dataset quality to enable accurate discovery of exposure signatures.
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Bioinformatics,Sequence analysis,RNAseq
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要点】:本文提出了一套全面的质控指标和方法,用于确保来自11种不同的表观遗传学和转录组学实验的数据质量,并推荐了针对失败指标的缓解措施,以提高实验台工作流程和数据集质量,从而准确发现暴露特征。

方法】:作者通过综合分析不同类型的生物测量数据,建立了一套质量控制系统,包括质控指标和针对这些指标的具体改进措施。

实验】:文中未具体描述实验过程,但提出的方法和指标适用于多种表观遗传学和转录组学实验,并建议使用这些质控标准来评估数据质量,实验结果指向了改进后的数据质量能更好地发现暴露特征。文中未提及具体的数据集名称。