Investigating neonatal health risk variables through cell-type specific methylome-wide association studies.

IF 4.8 2区 医学 Q1 GENETICS & HEREDITY Clinical Epigenetics Pub Date : 2024-05-22 DOI:10.1186/s13148-024-01681-3
Thomas L Campbell, Lin Y Xie, Ralen H Johnson, Christina M Hultman, Edwin J C G van den Oord, Karolina A Aberg
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Abstract

Adverse neonatal outcomes are a prevailing risk factor for both short- and long-term mortality and morbidity in infants. Given the importance of these outcomes, refining their assessment is paramount for improving prevention and care. Here we aim to enhance the assessment of these often correlated and multifaceted neonatal outcomes. To achieve this, we employ factor analysis to identify common and unique effects and further confirm these effects using criterion-related validity testing. This validation leverages methylome-wide profiles from neonatal blood. Specifically, we investigate nine neonatal health risk variables, including gestational age, Apgar score, three indicators of body size, jaundice, birth diagnosis, maternal preeclampsia, and maternal age. The methylomic profiles used for this research capture data from nearly all 28 million methylation sites in human blood, derived from the blood spot collected from 333 neonates, within 72 h post-birth. Our factor analysis revealed two common factors, size factor, that captured the shared effects of weight, head size, height, and gestational age and disease factor capturing the orthogonal shared effects of gestational age, combined with jaundice and birth diagnosis. To minimize false positives in the validation studies, validation was limited to variables with significant cumulative association as estimated through an in-sample replication procedure. This screening resulted in that the two common factors and the unique effects for gestational age, jaundice and Apgar were further investigated with full-scale cell-type specific methylome-wide association analyses. Highly significant, cell-type specific, associations were detected for both common effect factors and for Apgar. Gene Ontology analyses revealed multiple significant biologically relevant terms for the five fully investigated neonatal health risk variables. Given the established links between adverse neonatal outcomes and both immediate and long-term health, the distinct factor effects (representing the common and unique effects of the risk variables) and their biological profiles confirmed in our work, suggest their potential role as clinical biomarkers for assessing health risks and enhancing personalized care.

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通过细胞类型特异性全基因组关联研究调查新生儿健康风险变量。
新生儿不良结局是导致婴儿短期和长期死亡和发病的主要风险因素。鉴于这些结果的重要性,完善其评估对于改善预防和护理至关重要。在此,我们旨在加强对这些往往相互关联且涉及多个方面的新生儿不良结局的评估。为此,我们采用因子分析来识别共同和独特的效应,并通过与标准相关的有效性测试来进一步确认这些效应。这种验证利用了新生儿血液中的全甲基组图谱。具体来说,我们研究了九个新生儿健康风险变量,包括胎龄、Apgar 评分、三项体型指标、黄疸、出生诊断、产妇子痫前期和产妇年龄。这项研究使用的甲基组图谱采集了人类血液中几乎所有 2,800 万个甲基化位点的数据,这些数据来自 333 名新生儿出生后 72 小时内采集的血样。我们的因子分析发现了两个共同的因子,一个是尺寸因子,它捕捉了体重、头型、身高和胎龄的共同影响;另一个是疾病因子,它捕捉了胎龄、黄疸和出生诊断的正交共同影响。为了尽量减少验证研究中的假阳性,验证仅限于通过样本内复制程序估算出的具有显著累积关联的变量。通过这种筛选,对胎龄、黄疸和 Apgar 的两个共同因素和独特效应进行了全面的细胞类型特异性全基因组关联分析。结果发现,两个共同效应因子和 Apgar 均存在高度显着的细胞类型特异性关联。基因本体分析显示,在五个全面调查的新生儿健康风险变量中,有多个重要的生物相关术语。鉴于新生儿不良结局与近期和长期健康之间的既定联系,我们的研究证实了不同的因子效应(代表风险变量的共同效应和独特效应)及其生物特征,这表明它们有可能成为评估健康风险和加强个性化护理的临床生物标志物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
自引率
5.30%
发文量
150
期刊介绍: Clinical Epigenetics, the official journal of the Clinical Epigenetics Society, is an open access, peer-reviewed journal that encompasses all aspects of epigenetic principles and mechanisms in relation to human disease, diagnosis and therapy. Clinical trials and research in disease model organisms are particularly welcome.
期刊最新文献
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