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首页> 外文期刊>MBio >Leveraging Existing 16S rRNA Gene Surveys To Identify Reproducible Biomarkers in Individuals with Colorectal Tumors
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Leveraging Existing 16S rRNA Gene Surveys To Identify Reproducible Biomarkers in Individuals with Colorectal Tumors

机译:利用现有的16S rRNA基因调查来确定结直肠肿瘤患者中可再现的生物标志物

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ABSTRACT An increasing body of literature suggests that both individual and collections of bacteria are associated with the progression of colorectal cancer. As the number of studies investigating these associations increases and the number of subjects in each study increases, a meta-analysis to identify the associations that are the most predictive of disease progression is warranted. We analyzed previously published 16S rRNA gene sequencing data collected from feces and colon tissue. We quantified the odds ratios (ORs) for individual bacterial taxa that were associated with an individual having tumors relative to a normal colon. Among the fecal samples, there were no taxa that had significant ORs associated with adenoma and there were 8 taxa with significant ORs associated with carcinoma. Similarly, among the tissue samples, there were no taxa that had a significant OR associated with adenoma and there were 3 taxa with significant ORs associated with carcinoma. Among the significant ORs, the association between individual taxa and tumor diagnosis was equal to or below 7.11. Because individual taxa had limited association with tumor diagnosis, we trained Random Forest classification models using only the taxa that had significant ORs, using the entire collection of taxa found in each study, and using operational taxonomic units defined based on a 97% similarity threshold. All training approaches yielded similar classification success as measured using the area under the curve. The ability to correctly classify individuals with adenomas was poor, and the ability to classify individuals with carcinomas was considerably better using sequences from feces or tissue. IMPORTANCE Colorectal cancer is a significant and growing health problem in which animal models and epidemiological data suggest that the colonic microbiota have a role in tumorigenesis. These observations indicate that the colonic microbiota is a reservoir of biomarkers that may improve our ability to detect colonic tumors using noninvasive approaches. This meta-analysis identifies and validates a set of 8 bacterial taxa that can be used within a Random Forest modeling framework to differentiate individuals as having normal colons or carcinomas. When models trained using one data set were tested on other data sets, the models performed well. These results lend support to the use of fecal biomarkers for the detection of tumors. Furthermore, these biomarkers are plausible candidates for further mechanistic studies into the role of the gut microbiota in tumorigenesis.
机译:摘要越来越多的文献表明,细菌的个体和集合都与大肠癌的发展有关。随着研究这些关联的研究数量的增加以及每项研究中受试者人数的增加,需要进行荟萃分析,以鉴定出最能预测疾病进展的关联。我们分析了从粪便和结肠组织收集的先前发表的16S rRNA基因测序数据。我们量化了与具有相对于正常结肠的肿瘤的个体相关的个体细菌分类群的比值比(OR)。在粪便样本中,没有与腺瘤相关的明显OR的分类单元,有8个与癌相关的显着OR的分类单元。同样,在组织样本中,没有与腺瘤相关的显着OR的分类单元,有3个与癌相关的显着OR的分类单元。在重要的OR中,单个分类群与肿瘤诊断之间的关联性等于或低于7.11。因为单个分类单元与肿瘤诊断的关联有限,所以我们仅使用具有显着OR的分类单元,使用每个研究中发现的整个分类单元集合,并使用基于97%相似性阈值定义的可操作分类单元,来训练Random Forest分类模型。使用曲线下的面积测量,所有训练方法均获得了相似的分类成功。正确地将腺瘤个体分类的能力很差,使用粪便或组织中的序列对癌症个体进行分类的能力要好得多。重要信息结直肠癌是一个重要且日益严重的健康问题,其中动物模型和流行病学数据表明结肠菌群在肿瘤发生中起作用。这些观察结果表明,结肠微生物群是生物标志物的储库,可以提高我们使用非侵入性方法检测结肠肿瘤的能力。这项荟萃分析确定并验证了一套8种细菌分类群,可在随机森林建模框架内使用它们来区分具有正常结肠或癌的个体。当使用一个数据集训练的模型在其他数据集上进行测试时,模型表现良好。这些结果为粪便生物标志物用于肿瘤检测提供了支持。此外,这些生物标志物可能是进一步研究肠道微生物群在肿瘤发生中作用的机制的合理候选者。

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