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Computational and experimental single cell biology techniques for the definition of cell type heterogeneity, interplay and intracellular dynamics

机译:用于定义细胞类型异质性,相互作用和细胞内动力学的计算和实验单细胞生物学技术

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摘要

Novel technological developments enable single cell population profiling with respect to their spatial and molecular setup. These include single cell sequencing, flow cytometry and multiparametric imaging approaches and open unprecedented possibilities to learn about the heterogeneity, dynamics and interplay of the different cell types which constitute tissues and multicellular organisms. Statistical and dynamic systems theory approaches have been applied to quantitatively describe a variety of cellular processes, such as transcription and cell signaling. Machine learning approaches have been developed to define cell types, their mutual relationships, and differentiation hierarchies shaping heterogeneous cell populations, yielding insights into topics such as, for example, immune cell differentiation and tumor cell type composition. This combination of experimental and computational advances has opened perspectives towards learning predictive multi-scale models of heterogeneous cell populations.
机译:新颖的技术发展使单胞细胞群分析能够相对于其空间和分子设置。这些包括单细胞测序,流式细胞术和多游戏成像方法,并开放前所未有的可能性,以了解构成组织和多细胞生物的不同细胞类型的异质性,动态和相互作用。已经应用统计和动态系统理论方法来定量描述各种细胞过程,例如转录和细胞信号传导。已经开发了机器学习方法来定义细胞类型,它们的相互关系和差异化层次结构,其塑造异质细胞群体,从而屈服于局部,例如免疫细胞分化和肿瘤细胞类型组合物。这种实验和计算进步的组合已经开启了对学习非均相细胞群体的预测多规模模型的观点。

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