Inferring cell trajectories of spatial transcriptomics via optimal transport analysis.

Cell systems Pub Date : 2025-02-19 Epub Date: 2025-02-03 DOI:10.1016/j.cels.2025.101194
Xunan Shen, Lulu Zuo, Zhongfei Ye, Zhongyang Yuan, Ke Huang, Zeyu Li, Qichao Yu, Xuanxuan Zou, Xiaoyu Wei, Ping Xu, Yaqi Deng, Xin Jin, Xun Xu, Liang Wu, Hongmei Zhu, Pengfei Qin
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引用次数: 0

Abstract

The integration of cell transcriptomics and spatial position to organize differentiation trajectories remains a challenge. Here, we introduce SpaTrack, which leverages optimal transport to reconcile both gene expression and spatial position from spatial transcriptomics into the transition costs, thereby reconstructing cell differentiation. SpaTrack can construct detailed spatial trajectories that reflect the differentiation topology and trace cell dynamics across multiple samples over temporal intervals. To capture the dynamic drivers of differentiation, SpaTrack models cell fate as a function of expression profiles influenced by transcription factors over time. By applying SpaTrack, we successfully disentangle spatiotemporal trajectories of axolotl telencephalon regeneration and mouse midbrain development. Diverse malignant lineages expanding within a primary tumor are uncovered. One lineage, characterized by upregulated epithelial mesenchymal transition, implants at the metastatic site and subsequently colonizes to form a secondary tumor. Overall, SpaTrack efficiently advances trajectory inference from spatial transcriptomics, providing valuable insights into differentiation processes.

通过最优转运分析推断空间转录组学的细胞轨迹。
整合细胞转录组学和空间位置来组织分化轨迹仍然是一个挑战。在这里,我们引入了SpaTrack,它利用最佳转运来协调基因表达和空间位置,从空间转录组学到转移成本,从而重建细胞分化。SpaTrack可以构建反映分化拓扑的详细空间轨迹,并在时间间隔内跟踪多个样本的细胞动力学。为了捕捉分化的动态驱动因素,SpaTrack将细胞命运建模为受转录因子影响的表达谱随时间的函数。利用SpaTrack,我们成功地分离了美西螈端脑再生和小鼠中脑发育的时空轨迹。在原发肿瘤中扩展的多种恶性谱系被发现。一种谱系的特点是上皮间质转移上调,在转移部位植入,随后定植形成继发性肿瘤。总的来说,SpaTrack有效地推进了空间转录组学的轨迹推断,为分化过程提供了有价值的见解。
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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