应用于不同组织类型的DNA甲基化时钟算法的表征。

IF 3.9 3区 医学 Q2 CELL BIOLOGY
Aging-Us Pub Date : 2025-01-03 DOI:10.18632/aging.206182
Mark Richardson, Courtney Brandt, Niyati Jain, James L Li, Kathryn Demanelis, Farzana Jasmine, Muhammad G Kibriya, Lin Tong, Brandon L Pierce
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引用次数: 0

摘要

背景:来自人类样本的DNA甲基化(DNAm)数据已被用于开发“表观遗传时钟”算法,该算法可预测年龄和其他与衰老相关的表型。一些DNAm时钟使用从血细胞中获得的DNAm进行训练,而其他时钟则使用来自不同组织/细胞类型的数据进行训练。为了评估DNAm时钟在非血液组织类型中的表现,我们将DNAm算法应用于从9种不同人体组织类型生成的DNAm数据。方法:我们对来自GTEx(基因型组织表达)项目的973个已故组织供体样本进行了基于阵列的dna测量,这些样本代表了九种不同的组织类型:肺、结肠、前列腺、卵巢、乳腺、肾脏、睾丸、骨骼肌和全血。对于所有样本,我们生成了8个表观遗传时钟的DNAm时钟估计值,并从它们的分布、与实足年龄的相关性、组织类型之间时钟估计值的相关性以及与参与者特征的关联等方面对这些组织特异性时钟估计值进行了表征。结果:对于每个时钟,不同组织类型的平均DNAm年龄估计值差异很大,不同时钟的平均值在不同组织类型内差异很大。对于大多数时钟来说,与实际年龄的相关性因组织类型而异,血液通常表现出最强的相关性。每个时钟在组织之间显示出很强的相关性,在调整了实际年龄后,有一些证据表明存在一些残余相关性。在肺组织中,吸烟通常与表观遗传年龄呈正相关。结论:这项工作证明了不同组织类型之间表观遗传衰老的差异如何导致不同组织类型之间dna时钟特征的明显差异。需要组织或细胞类型特异性表观遗传时钟来优化非血液组织和细胞类型的dna时钟的预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Characterization of DNA methylation clock algorithms applied to diverse tissue types.

Background: DNA methylation (DNAm) data from human samples has been leveraged to develop "epigenetic clock" algorithms that predict age and other aging-related phenotypes. Some DNAm clocks were trained using DNAm obtained from blood cells, while other clocks were trained using data from diverse tissue/cell types. To assess how DNAm clocks perform across non-blood tissue types, we applied DNAm algorithms to DNAm data generated from 9 different human tissue types.

Methods: We generated array-based DNAm measurements for 973 samples from deceased tissue donors from the GTEx (Genotype Tissue Expression) project representing nine distinct tissue types: lung, colon, prostate, ovary, breast, kidney, testis, skeletal muscle, and whole blood. For all samples, we generated DNAm clock estimates for 8 epigenetic clocks and characterized these tissue-specific clock estimates in terms of their distributions, correlations with chronological age, correlations of clock estimates between tissue types, and association with participant characteristics.

Results: For each clock, the mean DNAm age estimate varied substantially across tissue types, and the mean values for the different clocks varied substantially within tissue types. For most clocks, the correlation with chronological age varied across tissue types, with blood often showing the strongest correlation. Each clock showed strong correlation across tissues, with some evidence of some residual correlation after adjusting for chronological age. In lung tissue, smoking generally had a positive association with epigenetic age.

Conclusions: This work demonstrates how differences in epigenetic aging among tissue types leads to clear differences in DNAm clock characteristics across tissue types. Tissue or cell-type specific epigenetic clocks are needed to optimize predictive performance of DNAm clocks in non-blood tissues and cell types.

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来源期刊
Aging-Us
Aging-Us CELL BIOLOGY-
CiteScore
10.00
自引率
0.00%
发文量
595
审稿时长
6-12 weeks
期刊介绍: Information not localized
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