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对来自配对原发性肺癌和脑转移的多组学数据的综合分析揭示了代谢脆弱性作为一个新的治疗靶点。

Integrated analyses of multi-omic data derived from paired primary lung cancer and brain metastasis reveal the metabolic vulnerability as a novel therapeutic target.

机构信息

Department of Neurosurgery/Neuro-Oncology, State Key Laboratory of Oncology in South China, Guangdong Provincial Clinical Research Center for Cancer, Sun Yat-Sen University Cancer Center, Guangzhou, 510060, China.

Department of Computer Science, Ying Wu College of Computing, New Jersey Institute of Technology, Newark, NJ, 07102, USA.

出版信息

Genome Med. 2024 Nov 26;16(1):138. doi: 10.1186/s13073-024-01410-8.

Abstract

BACKGROUND

Lung cancer brain metastases (LC-BrMs) are frequently associated with dismal mortality rates in patients with lung cancer; however, standard of care therapies for LC-BrMs are still limited in their efficacy. A deep understanding of molecular mechanisms and tumor microenvironment of LC-BrMs will provide us with new insights into developing novel therapeutics for treating patients with LC-BrMs.

METHODS

Here, we performed integrated analyses of genomic, transcriptomic, proteomic, metabolomic, and single-cell RNA sequencing data which were derived from a total number of 154 patients with paired and unpaired primary lung cancer and LC-BrM, spanning four published and two newly generated patient cohorts on both bulk and single cell levels.

RESULTS

We uncovered that LC-BrMs exhibited a significantly greater intra-tumor heterogeneity. We also observed that mutations in a subset of genes were almost always shared by both primary lung cancers and LC-BrM lesions, including TTN, TP53, MUC16, LRP1B, RYR2, and EGFR. In addition, the genome-wide landscape of somatic copy number alterations was similar between primary lung cancers and LC-BrM lesions. Nevertheless, several regions of focal amplification were significantly enriched in LC-BrMs, including 5p15.33 and 20q13.33. Intriguingly, integrated analyses of transcriptomic, proteomic, and metabolomic data revealed mitochondrial-specific metabolism was activated but tumor immune microenvironment was suppressed in LC-BrMs. Subsequently, we validated our results by conducting real-time quantitative reverse transcription PCR experiments, immunohistochemistry, and multiplexed immunofluorescence staining of patients' paired tumor specimens. Therapeutically, targeting oxidative phosphorylation with gamitrinib in patient-derived organoids of LC-BrMs induced apoptosis and inhibited cell proliferation. The combination of gamitrinib plus anti-PD-1 immunotherapy significantly improved survival of mice bearing LC-BrMs. Patients with a higher expression of mitochondrial metabolism genes but a lower expression of immune genes in their LC-BrM lesions tended to have a worse survival outcome.

CONCLUSIONS

In conclusion, our findings not only provide comprehensive and integrated perspectives of molecular underpinnings of LC-BrMs but also contribute to the development of a potential, rationale-based combinatorial therapeutic strategy with the goal of translating it into clinical trials for patients with LC-BrMs.

摘要

背景

肺癌脑转移(LC-BrMs)常导致肺癌患者死亡率极高;然而,LC-BrMs 的标准治疗方法在疗效上仍然有限。深入了解 LC-BrMs 的分子机制和肿瘤微环境将为我们开发治疗 LC-BrMs 患者的新疗法提供新的见解。

方法

在这里,我们对来自总共 154 名配对和非配对原发性肺癌和 LC-BrM 患者的基因组、转录组、蛋白质组、代谢组和单细胞 RNA 测序数据进行了综合分析,这些数据跨越了四个已发表的和两个新生成的患者队列,涵盖了批量和单细胞水平。

结果

我们发现 LC-BrMs 表现出明显更大的肿瘤内异质性。我们还观察到一组基因的突变几乎总是同时存在于原发性肺癌和 LC-BrM 病变中,包括 TTN、TP53、MUC16、LRP1B、RYR2 和 EGFR。此外,原发性肺癌和 LC-BrM 病变之间的全基因组体细胞拷贝数改变图谱相似。然而,几个局灶性扩增区域在 LC-BrMs 中显著富集,包括 5p15.33 和 20q13.33。有趣的是,转录组、蛋白质组和代谢组数据的综合分析表明,线粒体特异性代谢在 LC-BrMs 中被激活,但肿瘤免疫微环境受到抑制。随后,我们通过对患者配对肿瘤标本进行实时定量逆转录 PCR 实验、免疫组化和多重免疫荧光染色来验证我们的结果。在 LC-BrMs 患者来源的类器官中,用加替替尼靶向氧化磷酸化诱导细胞凋亡并抑制细胞增殖。加替替尼联合抗 PD-1 免疫治疗显著改善了携带 LC-BrMs 的小鼠的生存。LC-BrM 病变中具有更高线粒体代谢基因表达但更低免疫基因表达的患者往往生存结局更差。

结论

总之,我们的研究结果不仅提供了 LC-BrMs 分子基础的全面综合视角,还为开发潜在的、基于原理的联合治疗策略做出了贡献,以期将其转化为 LC-BrMs 患者的临床试验。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/386f/11590298/4f7b93964aa5/13073_2024_1410_Fig1_HTML.jpg

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