Stereopy: modeling comparative and spatiotemporal cellular heterogeneity via multi-sample spatial transcriptomics

Shuangsang Fang(BGI Group (China)), Mengyang Xu(BGI Group (China)), Lei Cao(BGI Group (China)), Xiaobin Liu(Botswana Geoscience Institute), Marija Bezulj(BGI Group (China)), Liwei Tan(BGI Group (China)), Zhiyuan Yuan(Fudan University), Yao Li(BGI Group (China)), Yao Li(BGI Group (China)), Tianyi Xia(BGI Group (China)), Longyu Guo(BGI Group (China)), Vladimir Kovačević(BGI Group (China)), Junhou Hui(BGI Group (China)), Lidong Guo(BGI Group (China)), Chao Liu(BGI Group (China)), Mengnan Cheng(BGI Group (China)), Liang Lin(BGI Group (China)), Zhenbin Wen(BGI Group (China)), Bojana Josic(BGI Group (China)), Nikola Milićević(BGI Group (China)), Ping Qiu(BGI Group (China)), Qin Lu(BGI Group (China)), Yumei Li(BGI Group (China)), Yumei Li(BGI Group (China)), Leying Wang(BGI Group (China)), Luni Hu(BGI Group (China)), Chao Zhang(BGI Group (China)), Qiang Kang(BGI Group (China)), Fengzhen Chen(BGI Group (China)), Ziqing Deng(BGI Group (China)), Junhua Li(BGI Group (China)), Mei Li(BGI Group (China)), Shengkang Li(BGI Group (China)), Yi Zhao(BGI Group (China)), Guangyi Fan(BGI Group (China)), Yong Zhang(BGI Group (China)), Ao Chen(BGI Group (China)), Yuxiang Li(BGI Group (China)), Yuxiang Li(BGI Group (China)), Xun Xu(BGI Research)
bioRxiv (Cold Spring Harbor Laboratory)
December 5, 2023
Cited by 24Open Access
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Abstract

Abstract Tracing cellular dynamic changes across conditions, time, and space is crucial for understanding the molecular mechanisms underlying complex biological systems. However, integrating multi-sample data in a unified and flexible way to explore cellular heterogeneity remains a major challenge. Here, we present Stereopy, a flexible and versatile framework for modeling and dissecting comparative and spatiotemporal patterns in multi-sample spatial transcriptomics with interactive data visualization. To optimize this flexible framework, we have developed three key components: a multi-sample tailored data container, a scope controller, and an analysis transformer. Furthermore, Stereopy showcases three transformative applications supported by pivotal algorithms. Firstly, the multi-sample cell community detection (CCD) algorithm introduces an innovative capability to detect specific cell communities and identify genes responsible for pathological changes in comparable datasets. Secondly, the spatially resolved temporal gene pattern inference (TGPI) algorithm represents a notable advancement in detecting important spatiotemporal gene patterns while concurrently considering spatial and temporal features, which enhances the identification of important genes, domains and regulatory factors closely associated with temporal datasets. Finally, the 3D niche-based regulation inference tool, named NicheReg3D, reconstructs the 3D cell niches to enable the inference of cell-gene interaction network within the spatial texture, thus bridging intercellular communications and intracellular regulations to unravel the intricate regulatory mechanisms that govern cellular behavior. Overall, Stereopy serves as both a bioinformatics toolbox and an extensible framework that provides researchers with enhanced data interpretation abilities and new perspectives for mining multi-sample spatial transcriptomics data.


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