Abdullah Hazem, Zickuhr Greice M, Um In Hwa, Laird Alexander, Mullen Peter, Harrison David J, Dickson Alison L
School of Medicine, University of St Andrews, North Haugh, St Andrews, UK.
Department of Urology, Western General Hospital, Edinburgh, UK.
Npj Imaging. 2025 Sep 16;3(1):43. doi: 10.1038/s44303-025-00106-x.
Renal cell carcinoma (RCC) incidence is rising, and treatment remains challenging unless surgery is curative. Tumour heterogeneity contributes to resistance against both chemotherapy and immune checkpoint inhibitors, underscoring the need to better understand the complex tumour microenvironment (TME). While tumour models derived from cancer tissue from patients have advanced cancer research, they often fail to capture functional RCC heterogeneity and key TME components. We developed a 3D model system with a high success rate from resected tumour, retaining cancer, stromal, and immune cell populations. This system is fully compatible with advanced imaging technologies, including mass spectrometry imaging (MSI) and live-cell multiplex imaging. By integrating static spatial analysis with dynamic live-cell visualisation, our system provides unique insights into tumour heterogeneity, microenvironment metabolic crosstalk, and real-time cellular responses. Phenotypic characterization of the tumoroids showed strong histological resemblance to the original resected tissue, indicating that the tumoroids are reflective of the tumour in vivo and suitable as a representative model system. Additionally, DESI-MSI revealed distinct lipidomic profiles within patient-derived ccRCC tumoroids, capturing spatial metabolic heterogeneity reflective of the primary tissue. Lipid signatures varied across tumour regions, with phospholipid subclasses distinguishing epithelial, endothelial, and highly proliferative cell populations. Notably, non-clear cell regions exhibited reduced lipid droplet and fatty acid content, aligning with aggressive tumour phenotypes.
肾细胞癌(RCC)的发病率正在上升,除非手术能够治愈,否则治疗仍然具有挑战性。肿瘤异质性导致对化疗和免疫检查点抑制剂均产生耐药性,这突出表明需要更好地了解复杂的肿瘤微环境(TME)。虽然源自患者癌组织的肿瘤模型推动了癌症研究的进展,但它们往往无法捕捉功能性RCC异质性和关键的TME成分。我们从切除的肿瘤中开发出了一种成功率很高的3D模型系统,保留了癌症、基质和免疫细胞群体。该系统与包括质谱成像(MSI)和活细胞多重成像在内的先进成像技术完全兼容。通过将静态空间分析与动态活细胞可视化相结合,我们的系统为肿瘤异质性、微环境代谢串扰和实时细胞反应提供了独特的见解。肿瘤样结构的表型特征显示出与原始切除组织有很强的组织学相似性,表明肿瘤样结构反映了体内肿瘤情况,适合作为代表性模型系统。此外,DESI-MSI揭示了患者来源的ccRCC肿瘤样结构内不同的脂质组学图谱,捕捉到了反映原发组织的空间代谢异质性。脂质特征在肿瘤区域各不相同,磷脂亚类区分上皮细胞、内皮细胞和高增殖细胞群体。值得注意的是,非透明细胞区域的脂滴和脂肪酸含量降低,这与侵袭性肿瘤表型一致。