Epigenomics

表观基因组学
  • 文章类型: Journal Article
    基因表达是一个复杂的生物学过程,它弥合了基因型和表型之间的差距。典型和可遗传的表观遗传机制,如组蛋白和DNA修饰,调节DNA编码的遗传信息的释放,而不改变潜在的序列。许多其他非规范玩家,如染色质调节子和非编码RNA,也参与调节基因表达。最近,RNA修饰(表观转录组学)已被证明在塑造细胞转录组方面具有巨大的潜力。然而,它们的共转录性质和不确定的遗传力意味着它们超出了表观遗传学的当前定义,引发了该领域正在进行的辩论。在这里,我们将讨论控制基因表达的规范和非规范表观遗传机制之间的关系,并提供我们对是否(或是否)表观遗传修饰可以归类为表观遗传机制的观点。
    Gene expression is an intricate biological process that bridges gap between the genotype and the phenotype. Canonical and hereditable epigenetic mechanisms, such as histone and DNA modifications, regulate the release of genetic information encoded in DNA without altering the underlying sequence. Many other non-canonical players, such as chromatin regulators and noncoding RNAs, are also involved in regulating gene expression. Recently, RNA modifications (epitranscriptomics) have been shown to hold enormous potential in shaping cellular transcriptomes. However, their co-transcriptional nature and uncertain heritability mean that they fall outside the current definition of epigenetics, sparking an ongoing debate in the field. Here we will discuss the relationship between canonical and non-canonical epigenetic mechanisms that govern gene expression and offer our perspective on whether (or not) epitranscriptomic modifications can be classified as epigenetic mechanisms.
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  • 文章类型: Journal Article
    进化生物学中的表观遗传学研究涵盖了各种研究领域,从基因表达的调节到环境介导的表型的遗传。这种不同的研究重点有时会使“表观遗传学”一词含糊不清。在这里,我讨论进化生物学背景下当代表观遗传学研究的几个领域,旨在提供跨时间尺度和分子机制的平衡观点。现在正在许多非模型物种中评估表观遗传学在发育中的重要性。这些研究不仅证实了表观遗传标记在发育过程中的重要性,但也强调了整个分类群的表观遗传调控机制的显著多样性。Further,这些比较表观基因组研究已经开始显示出有望增强我们对监管计划如何演变的理解。表观遗传标记的一个关键特性是它们可以沿着有丝分裂细胞谱系遗传,在早期发育过程中发生的表观遗传差异可能对生物体表型产生持久的影响。因此,表观遗传标记可能在短期(在生物体的一生或下一代)适应和表型可塑性中起作用。然而,观察到的表观遗传变异的发生程度与遗传影响无关仍然不确定,由于遗传学对表观遗传变异的广泛影响以及大多数物种的全面(epi)基因组资源的有限可用性。虽然表观遗传标记可以独立于某些物种的遗传序列而遗传,几乎没有证据表明这种“跨代遗传”是一种普遍现象。相反,表观遗传的分子机制在物种之间是高度可变的。
    Epigenetics research in evolutionary biology encompasses a variety of research areas, from regulation of gene expression to inheritance of environmentally mediated phenotypes. Such divergent research foci can occasionally render the umbrella term \"epigenetics\" ambiguous. Here I discuss several areas of contemporary epigenetics research in the context of evolutionary biology, aiming to provide balanced views across timescales and molecular mechanisms. The importance of epigenetics in development is now being assessed in many nonmodel species. These studies not only confirm the importance of epigenetic marks in developmental processes, but also highlight the significant diversity in epigenetic regulatory mechanisms across taxa. Further, these comparative epigenomic studies have begun to show promise toward enhancing our understanding of how regulatory programs evolve. A key property of epigenetic marks is that they can be inherited along mitotic cell lineages, and epigenetic differences that occur during early development can have lasting consequences on the organismal phenotypes. Thus, epigenetic marks may play roles in short-term (within an organism\'s lifetime or to the next generation) adaptation and phenotypic plasticity. However, the extent to which observed epigenetic variation occurs independently of genetic influences remains uncertain, due to the widespread impact of genetics on epigenetic variation and the limited availability of comprehensive (epi)genomic resources from most species. While epigenetic marks can be inherited independently of genetic sequences in some species, there is little evidence that such \"transgenerational inheritance\" is a general phenomenon. Rather, molecular mechanisms of epigenetic inheritance are highly variable between species.
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  • 文章类型: Journal Article
    无细胞DNA(cfDNA)已成为精准医学的关键角色,彻底改变诊断和治疗领域。虽然近年来其临床应用显著增加,目前的cfDNA分析在识别控制复杂疾病表型和捕获疾病异质性的活性转录程序方面的能力有限。为了解决这些限制,我们开发了一种非侵入性平台来富集和检测外周血中的活性染色质片段(cfDNAac).来自传统核小体染色质片段(cfDNAnuc)的cfDNAac信号的去卷积产生了一系列特征,这些特征将血液中的这些循环染色质信号与整个基因组中的特定调控元件联系起来。包括增强剂,promotors,和高度转录的基因,反映来自ENCODE项目的表观遗传数据。值得注意的是,这些cfDNAac计数与RNA聚合酶II活性密切相关,并在已知的昼夜节律基因中表现出不同的表达模式。此外,跨基因体和启动子的cfDNAac信号显示与由GTEx定义的全血基因表达水平的强相关性。这项研究说明了cfDNAac分析用于研究表观基因组学和基因表达的实用性,强调了其在精准医学中广泛临床应用的潜力。
    Cell-free DNA (cfDNA) has emerged as a pivotal player in precision medicine, revolutionizing the diagnostic and therapeutic landscape. While its clinical applications have significantly increased in recent years, current cfDNA assays have limited ability to identify the active transcriptional programs that govern complex disease phenotypes and capture the heterogeneity of the disease. To address these limitations, we have developed a non-invasive platform to enrich and examine the active chromatin fragments (cfDNAac) in peripheral blood. The deconvolution of the cfDNAac signal from traditional nucleosomal chromatin fragments (cfDNAnuc) yields a catalog of features linking these circulating chromatin signals in blood to specific regulatory elements across the genome, including enhancers, promoters, and highly transcribed genes, mirroring the epigenetic data from the ENCODE project. Notably, these cfDNAac counts correlate strongly with RNA polymerase II activity and exhibit distinct expression patterns for known circadian genes. Additionally, cfDNAac signals across gene bodies and promoters show strong correlations with whole blood gene expression levels defined by GTEx. This study illustrates the utility of cfDNAac analysis for investigating epigenomics and gene expression, underscoring its potential for a wide range of clinical applications in precision medicine.
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  • 文章类型: Journal Article
    在由组蛋白修饰或蛋白质结合的基因组区域测量染色质接触的方法是研究染色质组织的重要工具。然而,这些方法不能捕获其他表观基因组特征的可能参与,例如G-四链体DNA二级结构(G4s).为了弥合这个差距,我们介绍ViCAR(观点HiCAR),用于折叠G4s处染色质相互作用的基于抗体的直接捕获。通过ViCAR,我们展示了第一个G4-3D交互景观。使用组蛋白标记,我们还展示了ViCAR如何改进早期的方法,从而提高信噪比。ViCAR是探索表观遗传标记和3D基因组相互作用的实用和强大的工具。
    Methods to measure chromatin contacts at genomic regions bound by histone modifications or proteins are important tools to investigate chromatin organization. However, such methods do not capture the possible involvement of other epigenomic features such as G-quadruplex DNA secondary structures (G4s). To bridge this gap, we introduce ViCAR (viewpoint HiCAR), for the direct antibody-based capture of chromatin interactions at folded G4s. Through ViCAR, we showcase the first G4-3D interaction landscape. Using histone marks, we also demonstrate how ViCAR improves on earlier approaches yielding increased signal-to-noise. ViCAR is a practical and powerful tool to explore epigenetic marks and 3D genome interactomes.
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  • 文章类型: Journal Article
    目的:表观基因组影响对暴露的基因调控和表型。表观基因组评估可以确定帮助诊断的暴露史。材料与方法:在这里,我们开发并实现了一种机器学习算法,暴露签名发现算法(ESDA),确定多个表观基因组和转录组数据集中存在的最重要的特征,以产生整合的暴露特征(ES)。结果:对包括金黄色葡萄球菌在内的7种暴露进行了签名,人类免疫缺陷病毒,SARS-CoV-2,甲型流感病毒(H3N2)和炭疽杆菌疫苗接种。ESs在选择的测定和特征以及预测值方面有所不同。结论:综合ESs可用于诊断或法医归因。ESDA确定了最独特的功能,可为将来的精确健康部署开发诊断面板。
    本文介绍了ESDA,一种新的分析工具,用于集成多种数据类型,以识别曝光后最显着的特征。使用ESDA,我们能够识别传染病的特征。研究结果表明,多种类型的大型数据集的集成可用于识别传染病的显着特征。了解不同暴露的变化将能够开发针对患者反应的传染病诊断测试。使用ESDA,我们将能够建立人类对不同感染的反应特征数据库,并在未来简化诊断测试。
    Aim: The epigenome influences gene regulation and phenotypes in response to exposures. Epigenome assessment can determine exposure history aiding in diagnosis.Materials & methods: Here we developed and implemented a machine learning algorithm, the exposure signature discovery algorithm (ESDA), to identify the most important features present in multiple epigenomic and transcriptomic datasets to produce an integrated exposure signature (ES).Results: Signatures were developed for seven exposures including Staphylococcus aureus, human immunodeficiency virus, SARS-CoV-2, influenza A (H3N2) virus and Bacillus anthracis vaccinations. ESs differed in the assays and features selected and predictive value.Conclusion: Integrated ESs can potentially be utilized for diagnosis or forensic attribution. The ESDA identifies the most distinguishing features enabling diagnostic panel development for future precision health deployment.
    This article introduces ESDA, a new analytic tool for integrating multiple data types to identify the most distinguishing features following an exposure. Using the ESDA, we were able to identify signatures of infectious diseases. The results of the study indicate that integration of multiple types of large datasets can be used to identify distinguishing features for infectious diseases. Understanding the changes from different exposures will enable development of diagnostic tests for infectious diseases that target responses from the patient. Using the ESDA, we will be able to build a database of human response signatures to different infections and simplify diagnostic testing in the future.
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  • 文章类型: Journal Article
    人类多能干细胞衍生的心肌细胞(hPSC-CM)正在推进心血管发育和疾病建模,药物测试,和再生疗法。然而,hPSC-CM的产生受到分化过程中的显著可变性的阻碍。建立早期质量标记以监测谱系进展和预测终末分化结果将解决hPSC-CM生产中的这种稳健性和可重复性障碍。整合的转录组和表观基因组分析评估心脏祖细胞(CPC)的属性如何影响CM分化结果。结果分析确定了产生高纯度CM批次的CPC的预测性标志物,包括TTN,TRIM55,DGKI,MEF2C,MAB21L2、MYL7、LDB3、SLC7A11、MAB21L2和CALD1。从这些基因开发的预测模型在确定CPC阶段的最终CM纯度方面提供了高准确性。Further,阐明了对批次失败机制和在失败批次中产生的主要非CM细胞类型的见解。即EMT,MAPK,和WNT信号成为批次差异的重要驱动因素,产生成纤维细胞/壁细胞的脱靶群体,骨骼肌细胞,心外膜细胞,和非CPCSLC7A11亚群。这项研究证明了祖细胞的综合多组分析如何识别祖细胞的质量属性并预测分化结果。从而改进了区分方案并增加了过程的鲁棒性。
    Human pluripotent stem cell-derived cardiomyocytes (hPSC-CMs) are advancing cardiovascular development and disease modeling, drug testing, and regenerative therapies. However, hPSC-CM production is hindered by significant variability in the differentiation process. Establishment of early quality markers to monitor lineage progression and predict terminal differentiation outcomes would address this robustness and reproducibility roadblock in hPSC-CM production. An integrated transcriptomic and epigenomic analysis assesses how attributes of the cardiac progenitor cell (CPC) affect CM differentiation outcome. Resulting analysis identifies predictive markers of CPCs that give rise to high purity CM batches, including TTN, TRIM55, DGKI, MEF2C, MAB21L2, MYL7, LDB3, SLC7A11, MAB21L2, and CALD1. Predictive models developed from these genes provide high accuracy in determining terminal CM purities at the CPC stage. Further, insights into mechanisms of batch failure and dominant non-CM cell types generated in failed batches are elucidated. Namely EMT, MAPK, and WNT signaling emerge as significant drivers of batch divergence, giving rise to off-target populations of fibroblasts/mural cells, skeletal myocytes, epicardial cells, and a non-CPC SLC7A11+ subpopulation. This study demonstrates how integrated multi-omic analysis of progenitor cells can identify quality attributes of that progenitor and predict differentiation outcomes, thereby improving differentiation protocols and increasing process robustness.
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  • 文章类型: Journal Article
    背景:癌症基因组包含几个驱动突变。然而,在某些情况下,尚未确定已知的驾驶员;这些剩余的未满足需求的领域,导致癌症治疗进展有限。全基因组测序(WGS)可以识别与疾病相关的非编码改变。因此,使用WGS和ChIP测序(ChIP-seq)等其他组学数据探索非编码区,以辨别与肿瘤发生相关的新改变和机制,目前一直很有吸引力.
    方法:综合多组学分析,包括WGS,ChIP-seq,DNA甲基化,和RNA测序(RNA-seq),对肺腺癌(LUAD)中具有非临床可操作遗传改变(非CAGA)的患者的样本进行了分析。进行了二级聚类分析,以加强与患者生存相关的相关性,如通过RNA-seq鉴定的。进行随后的差异基因表达分析以鉴定潜在的可成药靶标。
    结果:通过分析RNA-seq数据发现并证实了非CAGAsLUAD中H3K27ac标记的差异,其中策划者样转录共激活因子2(MAML2)被抑制。表达与MAML2表达相关的下调基因与患者预后相关。WGS分析显示,在肿瘤样品中观察到与MAML2区域中的H3K27ac标记相关的体细胞突变和MAML2中的高水平DNA甲基化。第二级聚类分析使患者能够分层,随后的分析确定了潜在的治疗目标基因和治疗选择。
    结论:我们克服了识别与肿瘤发生相关的编码区改变或驱动突变的持续挑战,通过一种新的方法,将多组学数据与临床信息相结合,以揭示非CAGAsLUAD的分子机制,对患者进行分层以改善患者预后,并确定潜在的治疗靶点。这种方法可能适用于具有未满足的需求的其他癌症的研究。
    BACKGROUND: The cancer genome contains several driver mutations. However, in some cases, no known drivers have been identified; these remaining areas of unmet needs, leading to limited progress in cancer therapy. Whole-genome sequencing (WGS) can identify non-coding alterations associated with the disease. Consequently, exploration of non-coding regions using WGS and other omics data such as ChIP-sequencing (ChIP-seq) to discern novel alterations and mechanisms related to tumorigenesis have been attractive these days.
    METHODS: Integrated multi-omics analyses, including WGS, ChIP-seq, DNA methylation, and RNA-sequencing (RNA-seq), were conducted on samples from patients with non-clinically actionable genetic alterations (non-CAGAs) in lung adenocarcinoma (LUAD). Second-level cluster analysis was performed to reinforce the correlations associated with patient survival, as identified by RNA-seq. Subsequent differential gene expression analysis was performed to identify potential druggable targets.
    RESULTS: Differences in H3K27ac marks in non-CAGAs LUAD were found and confirmed by analyzing RNA-seq data, in which mastermind-like transcriptional coactivator 2 (MAML2) was suppressed. The down-regulated genes whose expression was correlated to MAML2 expression were associated with patient prognosis. WGS analysis revealed somatic mutations associated with the H3K27ac marks in the MAML2 region and high levels of DNA methylation in MAML2 were observed in tumor samples. The second-level cluster analysis enabled patient stratification and subsequent analyses identified potential therapeutic target genes and treatment options.
    CONCLUSIONS: We overcome the persistent challenges of identifying alterations or driver mutations in coding regions related to tumorigenesis through a novel approach combining multi-omics data with clinical information to reveal the molecular mechanisms underlying non-CAGAs LUAD, stratify patients to improve patient prognosis, and identify potential therapeutic targets. This approach may be applicable to studies of other cancers with unmet needs.
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  • 文章类型: Journal Article
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  • 文章类型: Journal Article
    衰老是生物体功能随时间的变化和下降的积累。生物年龄的概念和生物标志物已经建立,特别是基于DNA甲基化的时钟。单细胞DNA甲基化谱分析方法的出现为研究单个细胞的生物学年龄开辟了可能性。这里,我们从小鼠外周血样本中产生一个大的单细胞DNA甲基化和转录组数据集,跨越广泛的年龄。表达的基因数量随着年龄的增长而增加,但是基因特异性变化很小。我们接下来开发scEpiAge,单细胞DNA甲基化年龄预测因子,它可以准确预测(非常稀疏的)公开可用数据集中的年龄,在单细胞中也是如此。DNA甲基化年龄分布比技术预期的要宽,表明表观遗传年龄异质性和功能差异。我们的工作为单细胞和稀疏数据表观遗传年龄预测因子提供了基础,验证它们的功能,并强调衰老过程中的表观遗传异质性。
    Ageing is the accumulation of changes and decline of function of organisms over time. The concept and biomarkers of biological age have been established, notably DNA methylation-based clocks. The emergence of single-cell DNA methylation profiling methods opens the possibility of studying the biological age of individual cells. Here, we generate a large single-cell DNA methylation and transcriptome dataset from mouse peripheral blood samples, spanning a broad range of ages. The number of genes expressed increases with age, but gene-specific changes are small. We next develop scEpiAge, a single-cell DNA methylation age predictor, which can accurately predict age in (very sparse) publicly available datasets, and also in single cells. DNA methylation age distribution is wider than technically expected, indicating epigenetic age heterogeneity and functional differences. Our work provides a foundation for single-cell and sparse data epigenetic age predictors, validates their functionality and highlights epigenetic heterogeneity during ageing.
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  • 文章类型: Journal Article
    背景:各种表观遗传调控系统地控制涉及各种生物学过程的细胞中的基因表达。表观基因组的失调导致异常的转录程序,随后导致疾病,比如癌症。因此,全面分析表观基因组学对于探索发育和疾病过程中基因表达调控的潜在机制至关重要。
    方法:在本研究中,我们开发了单细胞染色质蛋白和可及性标签(scCPA-Tag),基于条形码Tn5转座酶和液滴微流体平台的多模态单细胞表观遗传谱捕获技术。scCPA-Tag能够在同一细胞中同时捕获组蛋白修饰的DNA谱和染色质可及性。
    结果:通过将scCPA-Tag应用于K562细胞和肝细胞癌(HCC)样品,我们发现,几种染色质可接近基因的沉默可归因于组蛋白H3尾(H3K27me3)修饰的赖氨酸-27-三甲基化。我们通过scCPA-Tag表征了HCC肿瘤组织中肿瘤细胞和不同免疫细胞类型的表观遗传特征。此外,鉴定出具有更具侵袭性特征的肿瘤细胞亚型(C2),其特征是染色质可及性高,肿瘤促进基因上H3K27me3的丰度较低。
    结论:我们的多模态scCPA-Tag为探索异质性细胞类型的表观遗传景观提供了一种全面的方法,并揭示了在单细胞水平的发育和病理过程中基因表达调控的机制。
    结论:scCPA-Tag提供了一种高效和高通量的技术,可以在单个细胞内同时分析组蛋白修饰和染色质可及性。scCPA-Tag能够揭示肿瘤组织内细胞组成的多种表观遗传修饰特征。scCPA-Tag有助于探索异质细胞类型的表观遗传景观,并提供控制基因表达调控的机制。
    BACKGROUND: Various epigenetic regulations systematically govern gene expression in cells involving various biological processes. Dysregulation of the epigenome leads to aberrant transcriptional programs and subsequently results in diseases, such as cancer. Therefore, comprehensive profiling epigenomics is essential for exploring the mechanisms underlying gene expression regulation during development and disease.
    METHODS: In this study, we developed single-cell chromatin proteins and accessibility tagmentation (scCPA-Tag), a multi-modal single-cell epigenetic profile capturing technique based on barcoded Tn5 transposases and a droplet microfluidics platform. scCPA-Tag enables the simultaneous capture of DNA profiles of histone modification and chromatin accessibility in the same cell.
    RESULTS: By applying scCPA-Tag to K562 cells and a hepatocellular carcinoma (HCC) sample, we found that the silence of several chromatin-accessible genes can be attributed to lysine-27-trimethylation of the histone H3 tail (H3K27me3) modification. We characterized the epigenetic features of the tumour cells and different immune cell types in the HCC tumour tissue by scCPA-Tag. Besides, a tumour cell subtype (C2) with more aggressive features was identified and characterized by high chromatin accessibility and a lower abundance of H3K27me3 on tumour-promoting genes.
    CONCLUSIONS: Our multi-modal scCPA-Tag provides a comprehensive approach for exploring the epigenetic landscapes of heterogeneous cell types and revealing the mechanisms of gene expression regulation during developmental and pathological processes at the single-cell level.
    CONCLUSIONS: scCPA-Tag offers a highly efficient and high throughput technique to simultaneously profile histone modification and chromatin accessibility within a single cell. scCPA-Tag enables to uncover multiple epigenetic modification features of cellular compositions within tumor tissues. scCPA-Tag facilitates the exploration of the epigenetic landscapes of heterogeneous cell types and provides the mechanisms governing gene expression regulation.
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