泛组织衰老时钟基因与免疫系统和年龄相关疾病密切相关。

IF 2.2 4区 医学 Q3 GERIATRICS & GERONTOLOGY
Adiv A Johnson, Maxim N Shokhirev
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引用次数: 2

摘要

在我们最近的转录组meta分析中,我们使用随机森林机器学习来准确预测给定基因输入的人类血液、骨骼、大脑、心脏和视网膜组织的年龄。尽管每个组织特异性模型都使用了独特数量的基因进行年龄预测,但我们发现以下六个基因在所有五种组织中都被优先考虑:CHI3L2、CIDEC、FCGR3A、RPS4Y1、SLC11A1和VTCN1。由于在多组织中被选择用于年龄预测是独一无二的,我们决定更详细地探索这些泛组织时钟基因。在本研究中,我们首先在基因本体生物过程数据库中进行了过度表示和基于网络拓扑的富集分析。这些分析表明,这些时钟输入显著丰富了免疫学术语“对原生动物的反应”、“免疫反应”和“免疫系统过程的积极调节”。在小鼠和人体组织中的表达分析表明,这些输入经常随着年龄的增长而上调或下调。一项详细的文献检索表明,这六个基因都与年龄相关的疾病有显著的联系。例如,在小鼠模型中,缺乏Cidec的小鼠可以防止各种代谢缺陷,而抑制VTCN1则可以抑制与年龄相关的癌症。利用一个大型的多组织转录组数据集,我们还生成了一个新颖的、简约的衰老时钟,它可以仅使用这六个基因作为输入来预测人类的年龄。总的来说,这六个基因与衰老的各个方面有关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pan-Tissue Aging Clock Genes That Have Intimate Connections with the Immune System and Age-Related Disease.

In our recent transcriptomic meta-analysis, we used random forest machine learning to accurately predict age in human blood, bone, brain, heart, and retina tissues given gene inputs. Although each tissue-specific model utilized a unique number of genes for age prediction, we found that the following six genes were prioritized in all five tissues: CHI3L2, CIDEC, FCGR3A, RPS4Y1, SLC11A1, and VTCN1. Since being selected for age prediction in multiple tissues is unique, we decided to explore these pan-tissue clock genes in greater detail. In the present study, we began by performing over-representation and network topology-based enrichment analyses in the Gene Ontology Biological Process database. These analyses revealed that the immunological terms "response to protozoan," "immune response," and "positive regulation of immune system process" were significantly enriched by these clock inputs. Expression analyses in mouse and human tissues identified that these inputs are frequently upregulated or downregulated with age. A detailed literature search showed that all six genes had noteworthy connections to age-related disease. For example, mice deficient in Cidec are protected against various metabolic defects, while suppressing VTCN1 inhibits age-related cancers in mouse models. Using a large multitissue transcriptomic dataset, we additionally generate a novel, minimalistic aging clock that can predict human age using just these six genes as inputs. Taken all together, these six genes are connected to diverse aspects of aging.

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来源期刊
Rejuvenation research
Rejuvenation research 医学-老年医学
CiteScore
4.50
自引率
0.00%
发文量
41
审稿时长
3 months
期刊介绍: Rejuvenation Research publishes cutting-edge, peer-reviewed research on rejuvenation therapies in the laboratory and the clinic. The Journal focuses on key explorations and advances that may ultimately contribute to slowing or reversing the aging process, and covers topics such as cardiovascular aging, DNA damage and repair, cloning, and cell immortalization and senescence. Rejuvenation Research coverage includes: Cell immortalization and senescence Pluripotent stem cells DNA damage/repair Gene targeting, gene therapy, and genomics Growth factors and nutrient supply/sensing Immunosenescence Comparative biology of aging Tissue engineering Late-life pathologies (cardiovascular, neurodegenerative and others) Public policy and social context.
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