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Integrative Analysis of Multi-omics Data for Discovery and Functional Studies of Complex Human Diseases

机译:用于复杂人类疾病的发现和功能研究的多组学数据的综合分析

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摘要

Complex and dynamic networks of molecules are involved in human diseases. High-throughput technologies enable omics studies interrogating thousands to millions of makers with similar biochemical properties (e.g. transcriptomics for RNA transcripts). However, a single layer of ‘omics’ can only provide limited insights into the biological mechanisms of a disease. In the case of GWAS, although thousands of SNPs have been identified for complex diseases and traits, the functional implications and mechanisms of the associated loci are largely unknown. Additionally, the genomic variants alone are not able to explain the changing disease risk across the life span. DNA, RNA, protein, and metabolite often have complementary roles to jointly perform a certain biological function. Such complementary effects and synergistic interactions between omic layers in the life-course can only be captured by integrative study of multiple molecular layers. Building upon the success in single-omics discovery research, population studies started adopting the multi-omics approach to better understanding the molecular function and disease etiology. Multi-omics approaches integrate data obtained from different omic levels to understand their interrelation and combined influence on the disease processes. Here, we summarize major omics approaches available in population research, and review integrative approaches and methodologies interrogating multiple omic layers, which enhance the gene discovery and functional analysis of human diseases. We seek to provide analytical recommendations for different types of multi-omics data and study designs to guide the emerging multi-omic research, and to suggest improvement of the existing analytical methods.
机译:复杂而动态的分子网络涉及人类疾病。高通量技术使组学研究可以询问成千上万的具有类似生化特性的制造商(例如RNA转录本的转录组学)。但是,单层的“组学”只能提供对疾病生物学机制的有限见解。就GWAS而言,尽管已经为复杂的疾病和特征鉴定了成千上万的SNP,但在很大程度上尚不清楚相关基因座的功能含义和机制。此外,仅基因组变异体不能解释整个生命周期中不断变化的疾病风险。 DNA,RNA,蛋白质和代谢产物通常具有互补的作用,共同执行某种生物学功能。在生命过程中,渗透层之间的这种互补作用和协同相互作用只能通过对多个分子层的综合研究来捕获。在单组学发现研究成功的基础上,人群研究开始采用多组学方法,以更好地了解分子功能和疾病病因。多组学方法整合了从不同组学水平获得的数据,以了解它们之间的相互关系以及对疾病过程的综合影响。在这里,我们总结了人口研究中可用的主要组学方法,并综述了询问多个omic层的综合方法和方法,这些方法和方法增强了人类疾病的基因发现和功能分析。我们寻求为不同类型的多组学数据和研究设计提供分析建议,以指导新兴的多组学研究,并提出对现有分析方法的改进建议。

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