| Literature DB >> 31253856 |
Alex Carr1,2, Christian Diener1, Nitin S Baliga3,4,5,6, Sean M Gibbons7,8,9.
Abstract
Correlation analyses are often included in bioinformatic pipelines as methods for inferring taxon-taxon interactions. In this perspective, we highlight the pitfalls of inferring interactions from covariance and suggest methods, study design considerations, and additional data types for improving high-throughput interaction inferences. We conclude that correlation, even when augmented by other data types, almost never provides reliable information on direct biotic interactions in real-world ecosystems. These bioinformatically inferred associations are useful for reducing the number of potential hypotheses that we might test, but will never preclude the necessity for experimental validation.Mesh:
Year: 2019 PMID: 31253856 PMCID: PMC6794304 DOI: 10.1038/s41396-019-0459-z
Source DB: PubMed Journal: ISME J ISSN: 1751-7362 Impact factor: 10.302