计算机科学
计算生物学
身份(音乐)
基因组学
细胞功能
计算模型
功能(生物学)
细胞
生物
人工智能
基因组
细胞生物学
遗传学
声学
基因
物理
作者
Allon Wagner,Aviv Regev,Nir Yosef
摘要
Computational methods for analyzing single-cell data are uncovering new ways of defining cells. Single-cell genomics has now made it possible to create a comprehensive atlas of human cells. At the same time, it has reopened definitions of a cell's identity and of the ways in which identity is regulated by the cell's molecular circuitry. Emerging computational analysis methods, especially in single-cell RNA sequencing (scRNA-seq), have already begun to reveal, in a data-driven way, the diverse simultaneous facets of a cell's identity, from discrete cell types to continuous dynamic transitions and spatial locations. These developments will eventually allow a cell to be represented as a superposition of 'basis vectors', each determining a different (but possibly dependent) aspect of cellular organization and function. However, computational methods must also overcome considerable challenges—from handling technical noise and data scale to forming new abstractions of biology. As the scale of single-cell experiments continues to increase, new computational approaches will be essential for constructing and characterizing a reference map of cell identities.
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