表观基因组
表观遗传学
多细胞生物
计算生物学
生物
代谢组
单细胞测序
转录组
染色质
代谢组学
蛋白质组
基因组学
系统生物学
基因组
表型
生物信息学
遗传学
细胞
DNA甲基化
基因
外显子组测序
基因表达
作者
Martin Philpott,Adam P. Cribbs,Tom Brown,Tom Brown,Udo Oppermann
标识
DOI:10.1016/j.cbpa.2020.01.013
摘要
Understanding multicellular physiology and pathobiology requires analysis of the relationship between genotype, chromatin organisation and phenotype. In the multi-omics era, many methods exist to investigate biological processes across the genome, transcriptome, epigenome, proteome and metabolome. Until recently, this was only possible for populations of cells or complex tissues, creating an averaging effect that may obscure direct correlations between multiple layers of data. Single-cell sequencing methods have removed this averaging effect, but computational integration after profiling distinct modalities separately may still not completely reflect underlying biology. Multiplexed assays resolving multiple modalities in the same cell are required to overcome these shortcomings and have the potential to deliver unprecedented understanding of biology and disease.
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