| Literature DB >> 24646694 |
Shi Huang1, Rui Li2, Xiaowei Zeng3, Tao He4, Helen Zhao2, Alice Chang2, Cunpei Bo3, Jie Chen3, Fang Yang5, Rob Knight6, Jiquan Liu2, Catherine Davis7, Jian Xu3.
Abstract
Predictive modeling of human disease based on the microbiota holds great potential yet remains challenging. Here, 50 adults underwent controlled transitions from naturally occurring gingivitis, to healthy gingivae (baseline), and to experimental gingivitis (EG). In diseased plaque microbiota, 27 bacterial genera changed in relative abundance and functional genes including 33 flagellar biosynthesis-related groups were enriched. Plaque microbiota structure exhibited a continuous gradient along the first principal component, reflecting transition from healthy to diseased states, which correlated with Mazza Gingival Index. We identified two host types with distinct gingivitis sensitivity. Our proposed microbial indices of gingivitis classified host types with 74% reliability, and, when tested on another 41-member cohort, distinguished healthy from diseased individuals with 95% accuracy. Furthermore, the state of the microbiota in naturally occurring gingivitis predicted the microbiota state and severity of subsequent EG (but not the state of the microbiota during the healthy baseline period). Because the effect of disease is greater than interpersonal variation in plaque, in contrast to the gut, plaque microbiota may provide advantages in predictive modeling of oral diseases.Entities:
Mesh:
Year: 2014 PMID: 24646694 PMCID: PMC4139724 DOI: 10.1038/ismej.2014.32
Source DB: PubMed Journal: ISME J ISSN: 1751-7362 Impact factor: 10.302