| Literature DB >> 33430705 |
Chenchen Ma1,2, Kaining Chen3, Yuanyuan Wang1,2, Chaoping Cen3, Qixiao Zhai4,5, Jiachao Zhang1,2.
Abstract
Current metagenomic species-based colorectal cancer (CRC) microbial biomarkers may confuse diagnosis because the genetic content of different microbial strains, even those belonging to the same species, may differ from 5% to 30%. Here, a total of 7549 non-redundant single nucleotide variants (SNVs) were annotated in 25 species from 3 CRC cohorts (n = 249). Then, 22 microbial SNV markers that contributed to distinguishing subjects with CRC from healthy subjects were identified by the random forest algorithm to construct a novel CRC predictive model. Excitingly, the predictive model showed high accuracy both in the training (AUC = 75.35%) and validation cohorts (AUC = 73.08%-88.02%). We further explored the specificity of these SNV markers in a broader background by performing a meta-analysis across 4 metabolic disease cohorts. Among these SNV markers, 3 SNVs that were enriched in CRC patients and located in the genomes of Eubacterium rectale and Faecalibacterium prausnitzii were CRC specific (AUC = 72.51%-94.07%).Entities:
Keywords: Metagenome; colorectal cancer; diagnostic markers; gut microbiota; single nucleotide variants
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Year: 2021 PMID: 33430705 PMCID: PMC7808391 DOI: 10.1080/19490976.2020.1869505
Source DB: PubMed Journal: Gut Microbes ISSN: 1949-0976