| Literature DB >> 32240032 |
Yajuan Zheng1, Zhaoyuan Fang1, Yun Xue1, Jian Zhang1, Junjie Zhu2, Renyuan Gao3, Shun Yao1, Yi Ye4, Shihui Wang1, Changdong Lin1, Shiyang Chen1, Hsinyi Huang1, Liang Hu1, Ge-Ning Jiang2, Huanlong Qin3, Peng Zhang2, Jianfeng Chen1, Hongbin Ji1,4.
Abstract
Alterations of gut microbiota have been implicated in multiple diseases including cancer. However, the gut microbiota spectrum in lung cancer remains largely unknown. Here we profiled the gut microbiota composition in a discovery cohort containing 42 early-stage lung cancer patients and 65 healthy individuals through the 16S ribosomal RNA (rRNA) gene sequencing analysis. We found that lung cancer patients displayed a significant shift of microbiota composition in contrast to the healthy populations. To identify the optimal microbiota signature for noninvasive diagnosis purpose, we took advantage of Support-Vector Machine (SVM) and found that the predictive model with 13 operational taxonomic unit (OTU)-based biomarkers achieved a high accuracy in lung cancer prediction (area under curve, AUC = 97.6%). This signature performed reasonably well in the validation cohort (AUC = 76.4%), which contained 34 lung cancer patients and 40 healthy individuals. To facilitate potential clinical practice, we further constructed a 'patient discrimination index' (PDI), which largely retained the prediction efficiency in both the discovery cohort (AUC = 92.4%) and the validation cohort (AUC = 67.7%). Together, our study uncovered the microbiota spectrum of lung cancer patients and established the specific gut microbial signature for the potential prediction of the early-stage lung cancer.Entities:
Keywords: Gut microbiota; biomarkers; early-stage lung cancer; noninvasive diagnosis; patient discrimination index
Year: 2020 PMID: 32240032 PMCID: PMC7524275 DOI: 10.1080/19490976.2020.1737487
Source DB: PubMed Journal: Gut Microbes ISSN: 1949-0976