| Literature DB >> 31117020 |
Xiaofei Lv1,2, Kankan Zhao2, Ran Xue2, Yuanhui Liu2, Jianming Xu2, Bin Ma3.
Abstract
Networks encode the interactions between the components in complex systems and play an essential role in understanding complex systems. Microbial ecological networks provide a system-level insight for comprehensively understanding complex microbial interactions, which play important roles in microbial community assembly. However, microbial ecological networks are in their infancy of both network inference and biological interpretation. In this perspective, we articulate the theory gaps and limitations in building and interpreting microbial ecological networks, emphasize developing tools for evaluating the predicted microbial interaction relationships, and predict the potential applications of microbial ecological networks in the long run.Entities:
Keywords: evaluation; inference; interpretation; microbial ecological network; microbial interactions; network science
Year: 2019 PMID: 31117020 PMCID: PMC6529547 DOI: 10.1128/mSystems.00124-19
Source DB: PubMed Journal: mSystems ISSN: 2379-5077 Impact factor: 6.496
FIG 1Microbial ecological networks are considered to represent the relationships of complex microbial communities. However, there are still some gaps in theory and limitations in network inference and interpretation, such as selecting the statistical method, eliminating indirect edges, describing ecological implications description, and reviving work on network evolution. Hence, we need to evaluate the predicted interaction relationships through developing tools like lab-on-chip technologies and public verified interaction databases. Ultimately, it could be used to detect microbial dark matter and regulate microbial community functions.