Liu Meng, Hernandez Maria O, Castven Darko, Lee Hsin-Pei, Wu Wenqi, Wang Limin, Forgues Marshonna, Hernandez Jonathan M, Marquardt Jens U, Ma Lichun
Cancer Data Science Laboratory, Center for Cancer Research, National Cancer Institute, Bethesda, Maryland 20892, USA.
Spatial Imaging Technology Resource, Center for Cancer Research, National Cancer Institute, Bethesda, Maryland, USA.
bioRxiv. 2025 Mar 12:2025.03.07.642107. doi: 10.1101/2025.03.07.642107.
Spatial cellular context is crucial in shaping intratumor heterogeneity. However, understanding how each tumor establishes its unique spatial landscape and what factors drive the landscape for tumor fitness remains significantly challenging. Here, we analyzed over 2 million cells from 50 tumor biospecimens using spatial single-cell imaging and single-cell RNA sequencing. We developed a deep learning-based strategy to spatially map tumor cell states and the architecture surrounding them, which we referred to as Spatial Dynamics Network (SDN). We found that different tumor cell states may be organized into distinct clusters, or 'villages', each supported by unique SDNs. Notably, tumor cell villages exhibited village-specific molecular co-dependencies between tumor cells and their microenvironment and were associated with patient outcomes. Perturbation of molecular co-dependencies via random spatial shuffling of the microenvironment resulted in destabilization of the corresponding villages. This study provides new insights into understanding tumor spatial landscape and its impact on tumor aggressiveness.
空间细胞环境在塑造肿瘤内异质性方面至关重要。然而,了解每个肿瘤如何建立其独特的空间格局以及哪些因素驱动这种格局以实现肿瘤适应性仍然极具挑战性。在此,我们使用空间单细胞成像和单细胞RNA测序分析了来自50个肿瘤生物样本的超过200万个细胞。我们开发了一种基于深度学习的策略来对肿瘤细胞状态及其周围结构进行空间映射,我们将其称为空间动力学网络(SDN)。我们发现不同的肿瘤细胞状态可能被组织成不同的簇,即“村落”,每个“村落”都由独特的SDN支持。值得注意的是,肿瘤细胞“村落”在肿瘤细胞与其微环境之间表现出特定于“村落”的分子共依赖性,并且与患者预后相关。通过微环境的随机空间重排对分子共依赖性进行扰动会导致相应“村落”的不稳定。这项研究为理解肿瘤空间格局及其对肿瘤侵袭性的影响提供了新的见解。