副表型方法在人类胎盘DNA甲基化阵列研究中的应用。

IF 4.2 2区 生物学 Q1 GENETICS & HEREDITY Epigenetics & Chromatin Pub Date : 2023-10-04 DOI:10.1186/s13072-023-00507-5
A Khan, A M Inkster, M S Peñaherrera, S King, S Kildea, T F Oberlander, D M Olson, C Vaillancourt, U Brain, E O Beraldo, A G Beristain, V L Clifton, G F Del Gobbo, W L Lam, G A S Metz, J W Y Ng, E M Price, J M Schuetz, V Yuan, É Portales-Casamar, W P Robinson
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引用次数: 1

摘要

背景:使用Illumina Infinium甲基化珠阵列对胎盘进行全基因组DNA甲基化(DNAme)分析通常用于探索子宫内暴露、胎盘病理学和胎儿发育之间的联系。然而,许多技术和生物学因素可能导致样本之间和队列之间DNAme变化的信号,理解和解释这些因素对于确保有意义和可复制的数据分析至关重要。最近,“副表型”方法已经被开发出来,DNA组数据可以用来估算表型变量的信息,如胎龄、性别、细胞组成和祖先。这些副表型提供了比较队列表型数据的途径,并了解表型变量如何与DNAme变异性相关。然而,胎盘副表型变量与其他技术和生物学变量之间的关系,以及它们在下游表观基因组分析中的应用,尚未得到很好的研究。结果:使用来自三个队列中204个胎盘的DNA组数据,我们应用PlaNET R包来估计这些样本中的副表型、胎龄、祖先和细胞组成。PlaNET祖先估计与独立的多态性祖先信息标记高度相关,表观遗传胎龄平均在报告胎龄的4天内估计,强调了这些工具的准确性。细胞组成的估计在队列内部和队列之间以及在很长的胎盘处理时间内都有所不同。有趣的是,细胞滋养层与合胞滋养层的比例随着胎龄的增加而降低,并且在母系种族(白人与非白人的比例较低)和遗传血统(欧洲血统的可能性较高)方面略有不同。起源队列和细胞滋养层比例是该数据集中DNAme变异的最大驱动因素,基于它们与第一主成分的关联。结论:这项工作证实,队列、阵列(技术)批次、细胞类型比例、自我报告的种族、遗传祖先和生物性别是Illumina DNAme数据分析中需要考虑的重要变量。我们进一步证明了为与胎盘DNAme数据一起使用而开发的副表型工具的特殊实用性,并表明这些变量(i)提供了对临床获得的数据的独立检查,(ii)提供了一种在不同数据集之间比较变量的稳健方法。最后,我们提出了一个处理和分析胎盘DNA组数据的通用框架,整合了这里讨论的副表型变量。
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The application of epiphenotyping approaches to DNA methylation array studies of the human placenta.

Background: Genome-wide DNA methylation (DNAme) profiling of the placenta with Illumina Infinium Methylation bead arrays is often used to explore the connections between in utero exposures, placental pathology, and fetal development. However, many technical and biological factors can lead to signals of DNAme variation between samples and between cohorts, and understanding and accounting for these factors is essential to ensure meaningful and replicable data analysis. Recently, "epiphenotyping" approaches have been developed whereby DNAme data can be used to impute information about phenotypic variables such as gestational age, sex, cell composition, and ancestry. These epiphenotypes offer avenues to compare phenotypic data across cohorts, and to understand how phenotypic variables relate to DNAme variability. However, the relationships between placental epiphenotyping variables and other technical and biological variables, and their application to downstream epigenome analyses, have not been well studied.

Results: Using DNAme data from 204 placentas across three cohorts, we applied the PlaNET R package to estimate epiphenotypes gestational age, ancestry, and cell composition in these samples. PlaNET ancestry estimates were highly correlated with independent polymorphic ancestry-informative markers, and epigenetic gestational age, on average, was estimated within 4 days of reported gestational age, underscoring the accuracy of these tools. Cell composition estimates varied both within and between cohorts, as well as over very long placental processing times. Interestingly, the ratio of cytotrophoblast to syncytiotrophoblast proportion decreased with increasing gestational age, and differed slightly by both maternal ethnicity (lower in white vs. non-white) and genetic ancestry (lower in higher probability European ancestry). The cohort of origin and cytotrophoblast proportion were the largest drivers of DNAme variation in this dataset, based on their associations with the first principal component.

Conclusions: This work confirms that cohort, array (technical) batch, cell type proportion, self-reported ethnicity, genetic ancestry, and biological sex are important variables to consider in any analyses of Illumina DNAme data. We further demonstrate the specific utility of epiphenotyping tools developed for use with placental DNAme data, and show that these variables (i) provide an independent check of clinically obtained data and (ii) provide a robust approach to compare variables across different datasets. Finally, we present a general framework for the processing and analysis of placental DNAme data, integrating the epiphenotype variables discussed here.

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来源期刊
Epigenetics & Chromatin
Epigenetics & Chromatin GENETICS & HEREDITY-
CiteScore
7.00
自引率
0.00%
发文量
35
审稿时长
1 months
期刊介绍: Epigenetics & Chromatin is a peer-reviewed, open access, online journal that publishes research, and reviews, providing novel insights into epigenetic inheritance and chromatin-based interactions. The journal aims to understand how gene and chromosomal elements are regulated and their activities maintained during processes such as cell division, differentiation and environmental alteration.
期刊最新文献
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