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癌症微生物组图谱:一种泛癌症比较分析,用于区分组织驻留微生物群与污染物。

The cancer microbiome atlas: a pan-cancer comparative analysis to distinguish tissue-resident microbiota from contaminants.

机构信息

Department of Biomedical Engineering, Center for Genomics and Computational Biology, Duke Microbiome Center, Duke University, Durham, NC 27708, USA.

Department of Biomedical Engineering, Center for Genomics and Computational Biology, Duke Microbiome Center, Duke University, Durham, NC 27708, USA.

出版信息

Cell Host Microbe. 2021 Feb 10;29(2):281-298.e5. doi: 10.1016/j.chom.2020.12.001. Epub 2021 Jan 6.

Abstract

Studying the microbial composition of internal organs and their associations with disease remains challenging due to the difficulty of acquiring clinical biopsies. We designed a statistical model to analyze the prevalence of species across sample types from The Cancer Genome Atlas (TCGA), revealing that species equiprevalent across sample types are predominantly contaminants, bearing unique signatures from each TCGA-designated sequencing center. Removing such species mitigated batch effects and isolated the tissue-resident microbiome, which was validated by original matched TCGA samples. Gene copies and nucleotide variants can further distinguish mixed-evidence species. We, thus, present The Cancer Microbiome Atlas (TCMA), a collection of curated, decontaminated microbial compositions of oropharyngeal, esophageal, gastrointestinal, and colorectal tissues. This led to the discovery of prognostic species and blood signatures of mucosal barrier injuries and enabled systematic matched microbe-host multi-omic analyses, which will help guide future studies of the microbiome's role in human health and disease.

摘要

由于获取临床活检样本具有挑战性,因此研究内部器官的微生物组成及其与疾病的关联仍然具有挑战性。我们设计了一个统计模型来分析来自癌症基因组图谱 (TCGA) 的样本类型的物种流行率,结果表明,在样本类型中具有相同流行率的物种主要是污染物,具有来自每个 TCGA 指定测序中心的独特特征。去除这些物种减轻了批次效应,并分离了组织驻留微生物组,这通过原始匹配的 TCGA 样本得到了验证。基因拷贝和核苷酸变体可以进一步区分混合证据物种。因此,我们提出了癌症微生物组图谱 (TCMA),这是一个经过精心整理的、去污染的口咽、食管、胃肠道和结直肠组织的微生物组成集合。这导致了预后物种和粘膜屏障损伤的血液特征的发现,并使系统的匹配微生物 - 宿主多组学分析成为可能,这将有助于指导未来对微生物组在人类健康和疾病中的作用的研究。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ccb7/7878430/c51b9b86f993/nihms-1654880-f0002.jpg

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