1. Regional variation limits applications of healthy gut microbiome reference ranges and disease models
- Author
-
Hongwei Zhou, Guiyuan Ji, Nan Yu, Hui-Min Zheng, Li-Yi Lyu, Peng Chen, Zu-Hua Rong, Daniel McDonald, Prabhakar Mujagond, Pan Li, Wei Wu, Xian Wang, Jia Yin, Chong-Bin Wu, Xiaojiao Chen, Zihui Chen, Yan He, Wenjun Ma, Mu-Xuan Chen, Hua-Fang Sheng, Zhong-Dai-Xi Zheng, Yanjun Xu, Jeroen Raes, and Rob Knight
- Subjects
0301 basic medicine ,medicine.medical_specialty ,biology ,Public health ,General Medicine ,Disease ,Gut flora ,medicine.disease ,biology.organism_classification ,Inflammatory bowel disease ,General Biochemistry, Genetics and Molecular Biology ,Biomarker (cell) ,03 medical and health sciences ,030104 developmental biology ,0302 clinical medicine ,030220 oncology & carcinogenesis ,Environmental health ,medicine ,Microbiome ,Risk assessment ,Dysbiosis - 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. The definition of a 'healthy' microbiome is impacted by geographic regional variations.
- Published
- 2018