Jieun Kim Hani, Ruan Travis, Swarbrick Alexander
Cancer Ecosystems Program, Garvan Institute of Medical Research, Darlinghurst, Australia.
School of Clinical Medicine, St Vincent's Healthcare Clinical Campus, Faculty of Medicine and Health, UNSW Sydney, Sydney, Australia.
Cancer Res. 2025 Jul 15;85(14):2555-2557. doi: 10.1158/0008-5472.CAN-25-2181.
Solid cancers are complex "ecosystems" comprised of diverse cell types and extracellular molecules, in which heterotypic interactions significantly influence disease etiology and therapeutic response. However, our current understanding of tumor microenvironments remains incomplete, hindering the development and implementation of novel tumor microenvironment-targeted drugs. To maximize cancer therapeutic development, we require a system-level understanding of the malignant, stromal, and immune states that define the tumor and determine treatment response. In their recent study, Liu and colleagues took a new approach to resolving the complexity of stromal heterogeneity. They leveraged extensive single-cell spatial multiomic datasets across various cancer types and platforms to identify four conserved spatial cancer-associated fibroblast (CAF) subtypes, classified by their spatial organization and cellular neighborhoods. Their work expands upon prior efforts to develop a CAF taxonomy, which primarily relied on single-cell RNA sequencing and yielded a multitude of classification systems. This study advances our understanding of CAF biology by establishing a link between spatial context and CAF identity across diverse tumor types. Departing from recent single-cell transcriptomic studies that employed a marker-based approach for substate identification, Liu and colleagues conducted de novo discovery of CAF subtypes using spatial neighborhood information alone. By positioning spatial organization as the defining axis of CAF heterogeneity, this research redefines CAF classification and provides a new framework for exploring the rules governing tumor ecosystems and developing novel ecosystem-based therapeutic strategies. This article is part of a special series: Driving Cancer Discoveries with Computational Research, Data Science, and Machine Learning/AI.
实体癌是由多种细胞类型和细胞外分子组成的复杂“生态系统”,其中异型相互作用显著影响疾病病因和治疗反应。然而,我们目前对肿瘤微环境的理解仍不完整,这阻碍了新型肿瘤微环境靶向药物的开发和应用。为了最大限度地推动癌症治疗的发展,我们需要从系统层面理解定义肿瘤并决定治疗反应的恶性、基质和免疫状态。在他们最近的研究中,刘及其同事采用了一种新方法来解决基质异质性的复杂性。他们利用跨多种癌症类型和平台的大量单细胞空间多组学数据集,识别出四种保守的空间癌症相关成纤维细胞(CAF)亚型,并根据它们的空间组织和细胞邻域进行分类。他们的工作扩展了先前开发CAF分类法的努力,此前的分类法主要依赖单细胞RNA测序,产生了众多分类系统。这项研究通过在不同肿瘤类型中建立空间背景与CAF身份之间的联系,推进了我们对CAF生物学的理解。与最近采用基于标记的方法进行亚状态识别的单细胞转录组学研究不同,刘及其同事仅使用空间邻域信息对CAF亚型进行了从头发现。通过将空间组织定位为CAF异质性的定义轴,这项研究重新定义了CAF分类,并为探索肿瘤生态系统的规则和开发基于新型生态系统的治疗策略提供了一个新框架。本文是一个特别系列的一部分:利用计算研究、数据科学和机器学习/人工智能推动癌症发现。