Department of Integrative Oncology, BC Cancer Research Institute, Vancouver, BC, Canada.
Interdisciplinary Oncology Program, University of British Columbia, Vancouver, BC, Canada.
Mol Cancer. 2022 Mar 7;21(1):68. doi: 10.1186/s12943-022-01544-6.
Resident microbial populations have been detected across solid tumors of diverse origins. Sequencing of the airway microbiota represents an opportunity for establishing a novel omics approach to early detection of lung cancer, as well as risk prediction of cancer development. We hypothesize that bacterial shifts in the pre-malignant lung may be detected in non-cancerous airway liquid biopsies collected during bronchoscopy. We analyzed the airway microbiome profile of near 400 patients: epithelial brushing samples from those with lung cancer, those who developed an incident cancer, and those who do not develop cancer after 10-year follow-up. Using linear discriminate analysis, we define and validate a microbial-based classifier that is able to predict incident cancer in patients before diagnosis with no clinical signs of cancer. Our results demonstrate the potential of using lung microbiome profiling as a method for early detection of lung cancer.
已经在不同来源的实体瘤中检测到常驻微生物群。对气道微生物组进行测序为建立一种新的组学方法来早期检测肺癌以及预测癌症发展风险提供了机会。我们假设,在支气管镜检查中收集的非癌性气道液体活检中,可以检测到癌前肺部的细菌转移。我们分析了近 400 名患者的气道微生物组谱:来自肺癌患者、在 10 年随访后发生癌症的患者以及未发生癌症的患者的上皮刷取样本。使用线性判别分析,我们定义并验证了一种基于微生物的分类器,该分类器能够在没有癌症临床迹象的情况下在诊断前预测患者的癌症发生。我们的研究结果表明,使用肺部微生物组分析作为早期检测肺癌的一种方法具有潜力。