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Data mining of human plasma proteins generates a multitude of highly predictive aging clocks that reflect different aspects of aging

机译:人血浆蛋白的数据挖掘产生了多种高度预测的老化时钟反映了老化的不同方面

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摘要

We previously identified 529 proteins that had been reported by multiple different studies to change their expression level with age in human plasma. In the present study, we measured the q‐value and age coefficient of these proteins in a plasma proteomic dataset derived from 4263 individuals. A bioinformatics enrichment analysis of proteins that significantly trend toward increased expression with age strongly implicated diverse inflammatory processes. A literature search revealed that at least 64 of these 529 proteins are capable of regulating life span in an animal model. Nine of these proteins (AKT2, GDF11, GDF15, GHR, NAMPT, PAPPA, PLAU, PTEN, and SHC1) significantly extend life span when manipulated in mice or fish. By performing machine‐learning modeling in a plasma proteomic dataset derived from 3301 individuals, we discover an ultra‐predictive aging clock comprised of 491 protein entries. The Pearson correlation for this clock was 0.98 in the learning set and 0.96 in the test set while the median absolute error was 1.84 years in the learning set and 2.44 years in the test set. Using this clock, we demonstrate that aerobic‐exercised trained individuals have a younger predicted age than physically sedentary subjects. By testing clocks associated with 1565 different Reactome pathways, we also show that proteins associated with signal transduction or the immune system are especially capable of predicting human age. We additionally generate a multitude of age predictors that reflect different aspects of aging. For example, a clock comprised of proteins that regulate life span in animal models accurately predicts age.
机译:我们以前鉴定了多种不同研究报告的529种蛋白质,以改变其表达水平随人类血浆的年龄。在本研究中,我们测量了衍生自4263个体的血浆蛋白质组学数据集中这些蛋白质的Q值和年龄系数。蛋白质的生物信息学富集分析显着趋向于强烈含糊不同炎症过程的表达增加趋势。文献搜索显示,这些529个蛋白中的至少64个能够调节动物模型中的寿命。这些蛋白质(AKT2,GDF11,GDF15,GHR,Nampt,Pappa,Plau,PTEN和SHC1)显着延长了在小鼠或鱼中的操纵时的寿命。通过在衍生自3301个体的等离子体蛋白质组学数据集中进行机器学习建模,我们发现一个由491个蛋白条目组成的超预测老化时钟。在学习集中的Pearson相关性为0.98,测试集中为0.96,在学习集中中位绝对误差为1.84岁,测试集2.44岁。使用这个时钟,我们展示了有氧运动训练有素的人比物理上久坐的受试者更年轻。通过测试与1565种不同的反应途径相关的时钟,我们还表明与信号转导或免疫系统相关的蛋白质尤其能够预测人类年龄。我们还产生了反映老龄化不同方面的众多年龄预测因子。例如,由蛋白质组成的时钟,该蛋白质可以精确地预测动物模型中的寿命。

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