Literature detail

Integrating data mining and transmission theory in the ecology of infectious diseases.

Barbara A Han1 Suzanne M O'Regan2 John Paul Schmidt3,4 John M Drake3,4
Affiliations 4 institutions
  1. Cary Institute of Ecosystem Studies, Box AB Millbrook, NY, 12571, USA.
  2. Department of Mathematics and Statistics, North Carolina A&T State University, 1601 E. Market St., Greensboro, NC, 27411, USA.
  3. Odum School of Ecology, University of Georgia, 140 E. Green St., Athens, GA, 30602, USA.
  4. Center for the Ecology of Infectious Diseases, University of Georgia, 203 D.W. Brooks Drive, Athens, GA, 30602, USA.
PMID 32441459 2020 Ecol Lett eng ppublish
PubMed DOI Browse context

Article

Publication summary

Our understanding of ecological processes is built on patterns inferred from data. Applying modern analytical tools such as machine learning to increasingly high dimensional data offers the potential to expand our perspectives on these processes, shedding new light on complex ecological phenomena such as pathogen transmission in wild populations. Here, we propose a novel approach that combines data mining with theoretical models of disease dynamics. Using rodents as an example, we incorporate statistical differences in the life history features of zoonotic reservoir hosts into pathogen transmission models, enabling us to bound the range of dynamical phenomena associated with hosts, based on their traits. We then test for associations between equilibrium prevalence, a key epidemiological metric and data on human outbreaks of rodent-borne zoonoses, identifying matches between empirical evidence and theoretical predictions of transmission dynamics. We show how this framework can be generalized to other systems through a rubric of disease models and parameters that can be derived from empirical data. By linking life history components directly to their effects on disease dynamics, our mining-modelling approach integrates machine learning and theoretical models to explore mechanisms in the macroecology of pathogen transmission and their consequences for spillover infection to humans.

Boosted regression disease dynamics disease macroecology pathogen transmission random forest statistical learning zoonosis zoonotic spillover Rodentia Animals Data Mining Disease Outbreaks Humans Models, Theoretical Zoonoses

Structured evidence records

Evidence records

2 total
1 records
Extraction confidence 0.88
Key finding

Rodent reservoir host life‑history traits were incorporated into pathogen transmission models to characterize ecological processes driving zoonotic maintenance and spillover dynamics.

Virus
Not specified
Host
Location
Not specified
Supporting text

Using rodents as an example, we incorporate statistical differences in the life history features of zoonotic reservoir hosts into pathogen transmission models, enabling us to bound the range of dynamical phenomena associated with hosts, based on their traits.

Method
data mining; theoretical modeling
1 records
Extraction confidence 0.82
Key finding

Rodent-borne pathogens were modeled and compared with empirical human outbreak data, explicitly addressing spillover infection from rodents to humans.

Virus
Not specified
Location
Not specified
Supporting text

Using rodents as an example, we incorporate statistical differences in the life history features of zoonotic reservoir hosts into pathogen transmission models... identifying matches between empirical evidence and theoretical predictions of transmission dynamics... and their consequences for spillover infection to humans.

Method
data mining; machine learning; theoretical models
Study design
theoretical modeling
Transmission direction
animal-to-human