Spatial Multiomics Reveals Intratumoral Immune Heterogeneity with Distinct Cytokine Networks in Lung Cancer Brain Metastases.

IF 2 Q3 ONCOLOGY
Gustav Christensson, Matteo Bocci, Julhash U Kazi, Geoffroy Durand, Gustav Lanzing, Kristian Pietras, Hugo Gonzalez Velozo, Catharina Hagerling
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Abstract

The tumor microenvironment of brain metastases has become a focus in the development of immunotherapeutic drugs. However, countless patients with brain metastasis have not experienced clinical benefit. Thus, understanding the immune cell composition within brain metastases and how immune cells interact with each other and other microenvironmental cell types may be critical for optimizing immunotherapy. We applied spatial whole-transcriptomic profiling with extensive multiregional sampling (19-30 regions per sample) and multiplex IHC on formalin-fixed, paraffin-embedded lung cancer brain metastasis samples. We performed deconvolution of gene expression data to infer the abundances of immune cell populations and inferred spatial relationships from the multiplex IHC data. We also described cytokine networks between immune and tumor cells and used a protein language model to predict drug-target interactions. Finally, we performed deconvolution of bulk RNA data to assess the prognostic significance of immune-metastatic tumor cellular networks. We show that immune cell infiltration has a negative prognostic role in lung cancer brain metastases. Our in-depth multiomics analyses further reveal recurring intratumoral immune heterogeneity and the segregation of myeloid and lymphoid cells into distinct compartments that may be influenced by distinct cytokine networks. By using computational modeling, we identify drugs that may target genes expressed in both tumor core and regions bordering immune infiltrates. Finally, we illustrate the potential negative prognostic role of our immune-metastatic tumor cell networks. Our findings advocate for a paradigm shift from focusing on individual genes or cell types toward targeting networks of immune and tumor cells.

Significance: Immune cell signatures are conserved across lung cancer brain metastases, and immune-metastatic tumor cell networks have a prognostic effect, implying that targeting cytokine networks between immune and metastatic tumor cells may generate more precise immunotherapeutic approaches.

空间多组学揭示了肺癌脑转移瘤内具有不同细胞因子网络的瘤内免疫异质性。
脑转移瘤的肿瘤微环境已成为免疫治疗药物开发的重点。然而,无数脑转移瘤患者并未获得临床获益。因此,了解脑转移瘤内的免疫细胞组成,以及免疫细胞如何与其他微环境细胞类型相互作用,可能是优化免疫疗法的关键。我们对福尔马林固定、石蜡包埋的肺癌脑转移瘤样本进行了空间全转录组分析,并进行了广泛的多区域取样(每个样本19-30个区域)和多重免疫组化。我们对基因表达数据进行了解卷积,以推断免疫细胞群的丰度,并从多重免疫组化数据中推断空间关系。我们还描述了免疫细胞和肿瘤细胞之间的细胞因子网络,并使用蛋白质语言模型预测药物与靶点之间的相互作用。最后,我们对大量 RNA 数据进行了解卷积,以评估免疫转移性肿瘤细胞网络的预后意义。我们的研究表明,免疫细胞浸润在肺癌脑转移中具有负面预后作用。我们深入的多组学分析进一步揭示了肿瘤内反复出现的免疫异质性,以及髓系细胞和淋巴细胞被分隔成可能受不同细胞因子网络影响的不同区室。通过计算建模,我们确定了可靶向肿瘤核心和免疫浸润边缘区域所表达基因的药物。最后,我们说明了免疫转移性肿瘤细胞网络的潜在负面预后作用。我们的研究结果主张将研究范式从关注单个基因或细胞类型转向针对免疫细胞和肿瘤细胞网络。
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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