| Literature DB >> 30150716 |
Yan He1, Wei Wu2,3, Hui-Min Zheng1,2, Pan Li1,2, Daniel McDonald4, Hua-Fang Sheng1, Mu-Xuan Chen1, Zi-Hui Chen3, Gui-Yuan Ji3, Zhong-Dai-Xi Zheng2, Prabhakar Mujagond5, Xiao-Jiao Chen1, Zu-Hua Rong1,2, Peng Chen6, Li-Yi Lyu7, Xian Wang7, Chong-Bin Wu7, Nan Yu1, Yan-Jun Xu8, Jia Yin9, Jeroen Raes10,11,12, Rob Knight4,13,14, Wen-Jun Ma15, Hong-Wei Zhou16,17,18.
Abstract
Dysbiosis, departure of the gut microbiome from a healthy state, has been suggested to be a powerful biomarker of disease incidence and progression1-3. Diagnostic applications have been proposed for inflammatory bowel disease diagnosis and prognosis4, colorectal cancer prescreening5 and therapeutic choices in melanoma6. Noninvasive sampling could facilitate large-scale public health applications, including early diagnosis and risk assessment in metabolic7 and cardiovascular diseases8. To understand the generalizability of microbiota-based diagnostic models of metabolic disease, we characterized the gut microbiota of 7,009 individuals from 14 districts within 1 province in China. Among phenotypes, host location showed the strongest associations with microbiota variations. Microbiota-based metabolic disease models developed in one location failed when used elsewhere, suggesting that such models cannot be extrapolated. Interpolated models performed much better, especially in diseases with obvious microbiota-related characteristics. Interpolation efficiency decreased as geographic scale increased, indicating a need to build localized baseline and disease models to predict metabolic risks.Entities:
Mesh:
Year: 2018 PMID: 30150716 DOI: 10.1038/s41591-018-0164-x
Source DB: PubMed Journal: Nat Med ISSN: 1078-8956 Impact factor: 53.440