Dravillas Caroline E, Coleman Samuel S, Hoyd Rebecca, Caryotakis Griffin, Denko Louis, Chan Carlos H F, Churchman Michelle L, Denko Nicholas, Dodd Rebecca D, Eljilany Islam, Hardikar Sheetal, Husain Marium, Ikeguchi Alexandra P, Jin Ning, Ma Qin, McCarter Martin D, Osman Afaf E G, Robinson Lary A, Singer Eric A, Tinoco Gabriel, Ulrich Cornelia M, Zakharia Yousef, Spakowicz Daniel, Tarhini Ahmad A, Tan Aik Choon
Division of Medical Oncology, The Ohio State University Comprehensive Cancer Center, Columbus, Ohio.
Department of Oncological Science, Huntsman Cancer Institute, University of Utah, Salt Lake City, Utah.
Cancer Res Commun. 2024 Aug 1;4(8):1978-1990. doi: 10.1158/2767-9764.CRC-23-0170.
Emerging evidence supports the important role of the tumor microbiome in oncogenesis, cancer immune phenotype, cancer progression, and treatment outcomes in many malignancies. In this study, we investigated the metastatic melanoma tumor microbiome and its potential roles in association with clinical outcomes, such as survival, in patients with metastatic disease treated with immune checkpoint inhibitors (ICI). Baseline tumor samples were collected from 71 patients with metastatic melanoma before treatment with ICIs. Bulk RNA sequencing (RNA-seq) was conducted on the formalin-fixed, paraffin-embedded and fresh frozen tumor samples. Durable clinical benefit (primary clinical endpoint) following ICIs was defined as overall survival >24 months and no change to the primary drug regimen (responders). We processed RNA-seq reads to carefully identify exogenous sequences using the {exotic} tool. The age of the 71 patients with metastatic melanoma ranged from 24 to 83 years, 59% were male, and 55% survived >24 months following the initiation of ICI treatment. Exogenous taxa were identified in the tumor RNA-seq, including bacteria, fungi, and viruses. We found differences in gene expression and microbe abundances in immunotherapy-responsive versus nonresponsive tumors. Responders showed significant enrichment of bacteriophages in the phylum Uroviricota, and nonresponders showed enrichment of several bacteria, including Campylobacter jejuni. These microbes correlated with immune-related gene expression signatures. Finally, we found that models for predicting prolonged survival with immunotherapy using both microbe abundances and gene expression outperformed models using either dataset alone. Our findings warrant further investigation and potentially support therapeutic strategies to modify the tumor microbiome in order to improve treatment outcomes with ICIs.
We analyzed the tumor microbiome and interactions with genes and pathways in metastatic melanoma treated with immunotherapy and identified several microbes associated with immunotherapy response and immune-related gene expression signatures. Machine learning models that combined microbe abundances and gene expression outperformed models using either dataset alone in predicting immunotherapy responses.
新出现的证据支持肿瘤微生物群在许多恶性肿瘤的肿瘤发生、癌症免疫表型、癌症进展和治疗结果中发挥重要作用。在本研究中,我们调查了转移性黑色素瘤的肿瘤微生物群及其与临床结果(如接受免疫检查点抑制剂(ICI)治疗的转移性疾病患者的生存率)相关的潜在作用。在71例转移性黑色素瘤患者接受ICI治疗前收集基线肿瘤样本。对福尔马林固定、石蜡包埋和新鲜冷冻的肿瘤样本进行了批量RNA测序(RNA-seq)。ICI治疗后的持久临床获益(主要临床终点)定义为总生存期>24个月且主要药物方案无变化(反应者)。我们使用{exotic}工具处理RNA-seq读数,以仔细识别外源序列。71例转移性黑色素瘤患者的年龄在24岁至83岁之间,59%为男性,55%在开始ICI治疗后存活>24个月。在肿瘤RNA-seq中鉴定出了外源分类群,包括细菌、真菌和病毒。我们发现免疫治疗反应性肿瘤与无反应性肿瘤在基因表达和微生物丰度方面存在差异。反应者在尿病毒门中显示噬菌体显著富集,无反应者显示包括空肠弯曲菌在内的几种细菌富集。这些微生物与免疫相关基因表达特征相关。最后,我们发现使用微生物丰度和基因表达预测免疫治疗延长生存期的模型比单独使用任一数据集的模型表现更好。我们的发现值得进一步研究,并可能支持修改肿瘤微生物群的治疗策略,以改善ICI的治疗结果。
我们分析了接受免疫治疗的转移性黑色素瘤的肿瘤微生物群及其与基因和通路的相互作用,并确定了几种与免疫治疗反应和免疫相关基因表达特征相关的微生物。在预测免疫治疗反应方面,结合微生物丰度和基因表达的机器学习模型比单独使用任一数据集的模型表现更好。