| Literature DB >> 36094962 |
Nina H Fefferman1,2,3, Charles A Price1, Oliver C Stringham3,4.
Abstract
The realization that ecological principles play an important role in infectious disease dynamics has led to a renaissance in epidemiological theory. Ideas from ecological succession theory have begun to inform an understanding of the relationship between the individual microbiome and health but have not yet been applied to investigate broader, population-level epidemiological dynamics. We consider human hosts as habitat and apply ideas from succession to immune memory and multi-pathogen dynamics in populations. We demonstrate that ecologically meaningful life history characteristics of pathogens and parasites, rather than epidemiological features alone, are likely to play a meaningful role in determining the age at which people have the greatest probability of being infected. Our results indicate the potential importance of microbiome succession in determining disease incidence and highlight the need to explore how pathogen life history traits and host ecology influence successional dynamics. We conclude by exploring some of the implications that inclusion of successional theory might have for understanding the ecology of diseases and their hosts.Entities:
Mesh:
Year: 2022 PMID: 36094962 PMCID: PMC9467372 DOI: 10.1371/journal.pbio.3001770
Source DB: PubMed Journal: PLoS Biol ISSN: 1544-9173 Impact factor: 9.593
Fig 1Analyses of the correlation between Successional Score and Age of Greatest Prevalence.
In Panel A [F(1,28) = 21.85, p < 0.001 with an R2 of 0.44], note the classification of Age of Greatest Prevalence into “Early” and “Late” by Successional Score alone (with a break-point of ≥2) (B) [Z-Score = −3.59, p < 0.001]. (B) Unfilled boxes represent sexually transmitted infections, except hepatitis B, represented by the striped box. The red box represents Ebola. Dashed horizontal lines provide mean maximum and minimum ages across pathogens in the “Early” and “Late” classification, respectively. The data underlying this figure can be found in S1 Data.
Fig 2Correlation between Successional Score and Age of Greatest Prevalence.
After omitting sexually transmitted infections and Ebola from the analysis, the observed R2 value increases [F (1, 22) = 46.49, p < 0.00001 with an R2 of 0.68]. The data underlying this figure can be found in S1 Data.
Fig 3Frequency distribution of permutation test regression slopes (Panel A) and values (Panel B) (see Methods). Note observed slope and R value for all data (blue star and line) and for data without sexually transmitted diseases and Ebola (red star and line) fall well outside of permutation test distributions. The data underlying this figure can be found in S2 Data.