Multivariate statistical monitoring system for microbial population dynamics.
Koji IshiyaSachiyo AburataniPublished in: Physical biology (2021)
Microbiomes in their natural environments vary dynamically with changing environmental conditions. The detection of these dynamic changes in microbial populations is critical for understanding the impact of environmental changes on the microbial community. Here, we propose a novel method to detect time-series changes in the microbiome, based on multivariate statistical process control. By focusing on the interspecies structures, this approach enables the robust detection of time-series changes in a microbiome composed of a large number of microbial species. Applying this approach to empirical human gut microbiome data, we accurately traced time-series changes in microbiota composition induced by a dietary intervention trial. This method was also excellent for tracking the recovery process after the intervention. Our approach can be useful for monitoring dynamic changes in complex microbial communities.
Keyphrases
- microbial community
- randomized controlled trial
- antibiotic resistance genes
- data analysis
- loop mediated isothermal amplification
- endothelial cells
- label free
- study protocol
- human health
- clinical trial
- high resolution
- electronic health record
- induced pluripotent stem cells
- genetic diversity
- phase ii
- machine learning
- sensitive detection
- wastewater treatment