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681?Single pipeline re-analysis revises microbiome associations with anti-tumor response to checkpoint inhibitors

机译:681?单管道再分析对抗肿瘤反应来检测微生物组关联对检查点抑制剂

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Background Several studies suggest the gut microbiome may be a novel, modifiable biomarker for clinical efficacy of immune checkpoint inhibitors (ICIs). Microbiome profiling of pre-treatment samples demonstrated that high alpha-diversity and enrichment of specific bacterial species are associated with improved tumor responses in melanoma, renal cell cancer (RCC), and non-small cell lung cancer (NSCLC). Despite these reports, the specific bacteria or communities helpful or harmful have been inconsistent across study populations, and further correlation with immune and mutational biomarkers are limited or lacking. We hypothesize that, by use of a larger sample size and a consistent computational approach, we would derive a clearer microbial profile that correlated with immunotherapeutic outcomes. Methods We re-analyzed the available raw 16S rRNA amplicon and metagenomic sequencing data across five recently published ICI studies (n=303 unique patients) of responder (R) and nonresponse (NR) using a consistent computational approaches (Resphera Insight and MetaPhlAn2). Using novel microbiota signatures, we identified Re-analysis Indices for R- and NR-associated bacteria and validated the result in three addition cohorts with available raw sequencing data in patients with melanoma, hepatocellular cancer (HCC), and NSCLC (n=105). Results Our results confirm signals reported in each study, though some bacteria reported initially were not statistically significant after correction for false discovery rate. Likely, in part, because our analysis allows for comparison of individual species across cohorts, we were able to identify new bacterial signatures, such as Oxalobacter formigenes, Roseburia hominis and Veillonella parvula, Clostridium hathewayi, enriched in R and NR respectively. When our Re-analysis Index was compared to an index assembled from the literature, we noted improvement occurred in a sensitivity and specificity analysis, especially in NR-associated signals. Moreover, we found that alpha-diversity was not consistently predictive of response or nonresponse to ICIs. Our Re-analysis Index also validated in melanoma patients and HCC but did not perform as well in the NSCLC cohort, suggesting the need for further refinement based on tumor type. Conclusions In summary, this bioinformatics platform improves on existing pipelines by standardizing critical preprocessing and downstream analysis tools, enabling comprehensive evaluations of taxonomic and functional signals across sequencing datasets. Notably, the NR-associated Re-analysis Index shows the strongest and most consistent signal using a random effects model and in a sensitivity and specificity analysis (p 0.01). Our integrated analyses suggest an approach to identify patients who would benefit from microbiome-based interventions targeted to improve response rates by using a biomarker for nonresponse.
机译:背景技术几项研究表明肠道微生物组可以是一种新的可修饰的生物标志物,用于免疫检查点抑制剂(ICIS)的临床疗效。预处理样品的微生物组分析表明,特异性细菌物种的高α-多样性和富集是与黑色素瘤,肾细胞癌(RCC)和非小细胞肺癌(NSCLC)中的改善的肿瘤反应相关。尽管有这些报道,但在研究人群中有益或有害的特定细菌或群体的乐于助人或有害,并且与免疫和突变生物标志物的进一步相关是有限的或缺乏相关性。我们假设通过使用更大的样本大小和一致的计算方法,我们将导出与免疫治疗结果相关的更清晰的微生物轮廓。方法使用一致的计算方法(Resphera Insight和Metaph12)重新分析跨最近发表的5名ICI研究(N = 303个独特的患者)的最近发表的ICI研究(N = 303个独特的患者)和非响应(NR)的可用原始16S rRNA扩增子和Metagenomic测序数据。使用新型微生物瘤签名,我们确定了R-和NR相关细菌的再分析索引,并验证了三种加法队列的结果,在黑素瘤,肝细胞癌(HCC)和NSCLC患者中,具有可用的原始测序数据(n = 105) 。结果我们的结果证实了每项研究中报告的信号,尽管在纠正错误发现率后,一些报告的细菌最初没有统计学意义。部分原因是我们的分析允许比较跨群组的个体种类,我们能够识别新的细菌签名,例如Oxalobacter Formigenes,Rosebura Hominis和Veillonella parvula,Clostridium Hathewayi,分别富集R和NR。当我们的重新分析指数与从文献组装的索引进行比较时,我们注意到在灵敏度和特异性分析中发生改善,特别是在NR相关信号中。此外,我们发现α-多样性并不一致地预测ICIS的反应或非响应。我们的重新分析指数也在黑素瘤患者和HCC中验证,但在NSCLC队列中没有表现,表明需要基于肿瘤类型进一步细化。总结结论,这种生物信息学平台通过标准化关键的预处理和下游分析工具来改善现有管道,从而实现横跨排序数据集的分类和功能信号的全面评估。值得注意的是,NR相关的再分析指数使用随机效应模型和灵敏度和特异性分析显示最强,最一致的信号(P <0.01)。我们的综合分析表明,鉴定将受益于基于微生物组的干预措施的患者通过使用生物标志物进行非响应的生物标志物,从而抑制患者的患者。
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