[Novel integrative multi-omics strategies of human's biological age computation.]

Q4 Medicine
I A Solovev
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引用次数: 0

Abstract

Multi-omics methods for analysing postgenomic data have become firmly established in the tools of molecular gerontology only in recent years, since previously there were no comprehensive integrative approaches adequate to the task of calculating biological age. This paper provides an overview of existing papers on multi-omics integrative approaches in calculating the biological age of a human. An analysis of the most common options for integrating methylomic, transcriptomic, proteomic, microbiomic and metabolomic datasets was carried out. We defined (1) concatenation (machine learning), in which models are developed using a concatenated data matrix, formed by combining multiple omics data sets; (2) fusion model approaches that create multiple intermediate submodels for different omics data to then build a final integrated model from the various intermediate submodels; and (3) transformation methods (via artificial intelligence) that first transform each of the single omics data sets into core plots or matrices, and then combine them all into one graph before building an integral complex model. It is unlikely that multi-omics approaches will find application in anti-aging personalized medicine, but they will undoubtedly deepen and expand the understanding of the fundamental processes standing behind the phenomenon of the biological aging clocks.

[人类生物年龄计算的多组学综合新策略]
用于分析后基因组数据的多组学方法是近几年才在分子老年学工具中牢固确立起来的,因为在此之前还没有足以完成计算生物年龄任务的综合方法。本文概述了现有关于计算人类生物年龄的多组学综合方法的论文。我们对整合甲基组、转录组、蛋白质组、微生物组和代谢组数据集的最常见方案进行了分析。我们对以下几种方法进行了定义:(1) 连接(机器学习),即使用由多个 omics 数据集组合而成的连接数据矩阵来开发模型;(2) 融合模型方法,即为不同的 omics 数据创建多个中间子模型,然后根据各种中间子模型建立最终的综合模型;(3) 转换方法(通过人工智能),即首先将每个单一 omics 数据集转换成核心图或矩阵,然后将它们全部组合成一个图,再建立一个整体的复杂模型。多组学方法不太可能应用于抗衰老个性化医疗,但无疑会加深和扩大对生物衰老时钟现象背后基本过程的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
0.50
自引率
0.00%
发文量
131
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