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衰老研究中的蛋白质组学和代谢组学:从生物标志物到系统生物学

Proteomics and metabolomics in ageing research: from biomarkers to systems biology.

作者信息

Hoffman Jessica M, Lyu Yang, Pletcher Scott D, Promislow Daniel E L

机构信息

Department of Biology, University of Alabama at Birmingham, 1300 University Blvd CH464, Birmingham, AL 35294, U.S.A.

Department of Molecular and Integrative Physiology and Geriatrics Center, Biomedical Sciences and Research Building, University of Michigan, Ann Arbor, MI 48109, U.S.A.

出版信息

Essays Biochem. 2017 Jul 11;61(3):379-388. doi: 10.1042/EBC20160083. Print 2017 Jul 15.

Abstract

Age is the single greatest risk factor for a wide range of diseases, and as the mean age of human populations grows steadily older, the impact of this risk factor grows as well. Laboratory studies on the basic biology of ageing have shed light on numerous genetic pathways that have strong effects on lifespan. However, we still do not know the degree to which the pathways that affect ageing in the lab also influence variation in rates of ageing and age-related disease in human populations. Similarly, despite considerable effort, we have yet to identify reliable and reproducible 'biomarkers', which are predictors of one's biological as opposed to chronological age. One challenge lies in the enormous mechanistic distance between genotype and downstream ageing phenotypes. Here, we consider the power of studying 'endophenotypes' in the context of ageing. Endophenotypes are the various molecular domains that exist at intermediate levels of organization between the genotype and phenotype. We focus our attention specifically on proteins and metabolites. Proteomic and metabolomic profiling has the potential to help identify the underlying causal mechanisms that link genotype to phenotype. We present a brief review of proteomics and metabolomics in ageing research with a focus on the potential of a systems biology and network-centric perspective in geroscience. While network analyses to study ageing utilizing proteomics and metabolomics are in their infancy, they may be the powerful model needed to discover underlying biological processes that influence natural variation in ageing, age-related disease, and longevity.

摘要

年龄是多种疾病的最大单一风险因素,随着人类平均年龄稳步增长,这一风险因素的影响也在增大。关于衰老基础生物学的实验室研究揭示了众多对寿命有重大影响的基因途径。然而,我们仍然不知道在实验室中影响衰老的途径在多大程度上也会影响人类群体中衰老速度和与年龄相关疾病的差异。同样,尽管付出了巨大努力,我们尚未确定可靠且可重复的“生物标志物”,即预测一个人的生物学年龄而非实际年龄的指标。一个挑战在于基因型与下游衰老表型之间存在巨大的机制距离。在此,我们考虑在衰老背景下研究“内表型”的作用。内表型是存在于基因型和表型之间中间组织水平的各种分子领域。我们特别关注蛋白质和代谢物。蛋白质组学和代谢组学分析有潜力帮助识别将基因型与表型联系起来的潜在因果机制。我们简要回顾衰老研究中的蛋白质组学和代谢组学,重点关注老年科学中系统生物学和以网络为中心视角的潜力。虽然利用蛋白质组学和代谢组学研究衰老的网络分析尚处于起步阶段,但它们可能是发现影响衰老、与年龄相关疾病和长寿自然变异的潜在生物学过程所需的有力模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/55bb/5743054/fe9f1fa95169/nihms929265f1.jpg

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