Complementing Cell Taxonomies with a Multicellular Analysis of Tissues.

IF 5.3 2区 医学 Q1 PHYSIOLOGY Physiology Pub Date : 2024-05-01 Epub Date: 2024-02-06 DOI:10.1152/physiol.00001.2024
Ricardo Omar Ramirez Flores, Philipp Sven Lars Schäfer, Leonie Küchenhoff, Julio Saez-Rodriguez
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Abstract

The application of single-cell molecular profiling coupled with spatial technologies has enabled charting of cellular heterogeneity in reference tissues and in disease. This new wave of molecular data has highlighted the expected diversity of single-cell dynamics upon shared external queues and spatial organizations. However, little is known about the relationship between single-cell heterogeneity and the emergence and maintenance of robust multicellular processes in developed tissues and its role in (patho)physiology. Here, we present emerging computational modeling strategies that use increasingly available large-scale cross-condition single-cell and spatial datasets to study multicellular organization in tissues and complement cell taxonomies. This perspective should enable us to better understand how cells within tissues collectively process information and adapt synchronized responses in disease contexts and to bridge the gap between structural changes and functions in tissues.

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用组织的多细胞分析补充细胞分类法。
单细胞分子图谱与空间技术的应用,使人们能够绘制参考组织和疾病中的细胞异质性图谱。这一新的分子数据浪潮凸显了单细胞动态在共享外部队列和空间组织中的预期多样性。然而,人们对单细胞异质性与发育组织中稳健多细胞过程的出现和维持之间的关系及其在(病理)生理学中的作用知之甚少。在这里,我们将介绍新兴的计算建模策略,这些策略利用越来越多的大规模跨条件单细胞和空间数据集来研究组织中的多细胞组织并补充细胞分类学。这一视角应能让我们更好地理解组织内的细胞是如何在疾病环境中集体处理信息并作出同步反应的,并缩小组织结构变化与功能之间的差距。
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来源期刊
Physiology
Physiology 医学-生理学
CiteScore
14.50
自引率
0.00%
发文量
37
期刊介绍: Physiology journal features meticulously crafted review articles penned by esteemed leaders in their respective fields. These articles undergo rigorous peer review and showcase the forefront of cutting-edge advances across various domains of physiology. Our Editorial Board, comprised of distinguished leaders in the broad spectrum of physiology, convenes annually to deliberate and recommend pioneering topics for review articles, as well as select the most suitable scientists to author these articles. Join us in exploring the forefront of physiological research and innovation.
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