NiCo Identifies Extrinsic Drivers of Cell State Modulation by Niche Covariation Analysis

Ankit Agrawal, Stefan Thomann, Sukanya Basu, Dominic Grün
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Abstract

Cell states are modulated by intrinsic driving forces such as gene expression noise and extrinsic signals from the tissue microenvironment. The distinction between intrinsic and extrinsic cell state determinants is essential for understanding the regulation of cell fate in tissues during development, homeostasis and disease. The rapidly growing availability of single-cell resolution spatial transcriptomics makes it possible to meet this challenge. However, available computational methods to infer topological tissue domains, spatially variable gene expression, or ligand-receptor interactions are limited in capturing cell state changes driven by crosstalk between individual cell types within the same niche. We present NiCo, a computational framework for integrating single-cell resolution spatial transcriptomics with matched single-cell RNA-sequencing reference data to infer the influence of the spatial niche on the cell state. By applying NiCo to mouse embryogenesis, adult small intestine and liver data, we demonstrate the capacity to predict novel niche interactions that govern cell state variation underlying tissue development and homeostasis. In particular, NiCo predicts a feedback mechanism between Kupffer cells and neighboring stellate cells limiting stellate cell activation in the normal liver. NiCo provides a powerful tool to elucidate tissue architecture and to identify drivers of cellular states in local niches.
NiCo 公司通过利基变异分析确定细胞状态调节的外部驱动因素
细胞状态受内在驱动力(如基因表达噪音)和来自组织微环境的外在信号的调节。区分细胞状态的内在决定因素和外在决定因素对于理解发育、稳态和疾病过程中组织细胞命运的调控至关重要。单细胞分辨率空间转录组学的迅速发展使应对这一挑战成为可能。然而,现有的用于推断拓扑组织域、空间可变基因表达或配体-受体相互作用的计算方法在捕捉由同一生态位中单个细胞类型之间的串扰所驱动的细胞状态变化方面存在局限性。我们提出了一个计算框架--NiCo,用于整合单细胞分辨率空间转录组学和匹配的单细胞 RNA 序列参考数据,以推断空间生态位对细胞状态的影响。通过将 NiCo 应用于小鼠胚胎发生、成人小肠和肝脏数据,我们展示了预测新的生态位相互作用的能力,这种相互作用支配着组织发育和稳态的细胞状态变化。特别是,NiCo 预测了正常肝脏中限制星状细胞活化的 Kupffer 细胞和邻近星状细胞之间的反馈机制。NiCo为阐明组织结构和识别局部壁龛中细胞状态的驱动因素提供了一个强大的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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