下一代表观遗传口腔时钟 CheekAge 可以预测人体血液中的死亡率。

IF 3.3 Q2 GERIATRICS & GERONTOLOGY Frontiers in aging Pub Date : 2024-10-01 eCollection Date: 2024-01-01 DOI:10.3389/fragi.2024.1460360
Maxim N Shokhirev, Daniel J Kramer, Janie Corley, Simon R Cox, Trinna L Cuellar, Adiv A Johnson
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引用次数: 0

摘要

早期的第一代表观遗传学衰老时钟是为了尽可能准确地估算计时年龄而训练的,而最近的新一代时钟则纳入了与健康、生活方式和/或结果更相关的 DNA 甲基化信息。最近,我们利用来自 8000 多个不同成人口腔样本的 Infinium MethylationEPIC 数据制作了一个非侵入性的下一代表观遗传时钟。虽然该时钟与各种健康、生活方式和疾病因素相关,但我们并未评估其捕捉死亡率的能力。为了弥补这一不足,我们将 CheekAge 应用于 1921 年和 1936 年的纵向洛锡安出生队列。尽管缺失了近一半的 CpG 输入,CheekAge 仍与这一纵向血液数据集中的死亡率有显著关联。具体来说,一个标准差的变化相当于 1.21 的危险比(HR)(FDR q = 1.66e-6)。CheekAge的表现优于所有测试过的第一代时钟,其HR值与经过血液训练的下一代DNAm PhenoAge时钟相当(HR = 1.23,q = 2.45e-9)。为了更好地了解血液中每个 CheekAge 输入的相对重要性,我们反复删除了每个时钟的 CpG,并重新计算了总体死亡率关联。最重要的影响来自于删除 CpG cg14386193,它被注释为 ALPK2 基因。剔除该 DNA 甲基化位点后,FDR 值增加了近三倍(达到 4.92e-06)。我们还对影响死亡率的顶级注释 CpGs 进行了富集分析,以更好地了解其相关生物学特性。总之,我们为 CheekAge 提供了重要的验证,并强调了新发现的死亡率关联的新 CpGs。
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CheekAge, a next-generation epigenetic buccal clock, is predictive of mortality in human blood.

While earlier first-generation epigenetic aging clocks were trained to estimate chronological age as accurately as possible, more recent next-generation clocks incorporate DNA methylation information more pertinent to health, lifestyle, and/or outcomes. Recently, we produced a non-invasive next-generation epigenetic clock trained using Infinium MethylationEPIC data from more than 8,000 diverse adult buccal samples. While this clock correlated with various health, lifestyle, and disease factors, we did not assess its ability to capture mortality. To address this gap, we applied CheekAge to the longitudinal Lothian Birth Cohorts of 1921 and 1936. Despite missing nearly half of its CpG inputs, CheekAge was significantly associated with mortality in this longitudinal blood dataset. Specifically, a change in one standard deviation corresponded to a hazard ratio (HR) of 1.21 (FDR q = 1.66e-6). CheekAge performed better than all first-generation clocks tested and displayed a comparable HR to the next-generation, blood-trained DNAm PhenoAge clock (HR = 1.23, q = 2.45e-9). To better understand the relative importance of each CheekAge input in blood, we iteratively removed each clock CpG and re-calculated the overall mortality association. The most significant effect came from omitting the CpG cg14386193, which is annotated to the gene ALPK2. Excluding this DNA methylation site increased the FDR value by nearly threefold (to 4.92e-06). We additionally performed enrichment analyses of the top annotated CpGs that impact mortality to better understand their associated biology. Taken together, we provide important validation for CheekAge and highlight novel CpGs that underlie a newly identified mortality association.

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