An analysis of human microbe–disease associations

Wei Ma(Peking University), Lu Zhang(Peking University), Pan Zeng(Peking University), Chuanbo Huang(Huaqiao University), Jianwei Li(Hebei University of Technology), Bin Geng(Peking University), Jichun Yang(Peking University), Wei Kong(Peking University), Xuezhong Zhou(Beijing Jiaotong University), Qinghua Cui(Peking University)
Briefings in Bioinformatics
February 15, 2016
Cited by 242Open Access
Full Text

Abstract

The microbiota living in the human body has critical impacts on our health and disease, but a systems understanding of its relationships with disease remains limited. Here, we use a large-scale text mining-based manually curated microbe-disease association data set to construct a microbe-based human disease network and investigate the relationships between microbes and disease genes, symptoms, chemical fragments and drugs. We reveal that microbe-based disease loops are significantly coherent. Microbe-based disease connections have strong overlaps with those constructed by disease genes, symptoms, chemical fragments and drugs. Moreover, we confirm that the microbe-based disease analysis is able to predict novel connections and mechanisms for disease, microbes, genes and drugs. The presented network, methods and findings can be a resource helpful for addressing some issues in medicine, for example, the discovery of bench knowledge and bedside clinical solutions for disease mechanism understanding, diagnosis and therapy.


Related Papers