Scale of analysis drives the observed ratio of spatial to non-spatial variance in microbial water quality: insights from two decades of citizen science data

Author:

Weller Daniel L12,Love Tanzy M T1,Weller Donald E3,Murphy Claire M2,Strawn Laura K2ORCID

Affiliation:

1. Department of Biostatistics and Computational Biology, University of Rochester , Rochester, NY 14642 , USA , 14642

2. Department of Food Science, Virginia Tech , Blacksburg, VA 24061 , USA , 24061

3. Smithsonian Environmental Research Center , Edgewater, MD 21037 , USA , 21037

Abstract

Abstract Aims While fecal indicator bacteria (FIB) testing is used to monitor surface water for potential health hazards, observed variation in FIB levels may depend on the scale of analysis (SOA). Two decades of citizen science data, coupled with random effects models, were used to quantify the variance in FIB levels attributable to spatial versus temporal factors. Methods and results Separately, Bayesian models were used to quantify the ratio of spatial to non-spatial variance in FIB levels and identify associations between environmental factors and FIB levels. Separate analyses were performed for three SOA: waterway, watershed, and statewide. As SOA increased (from waterway to watershed to statewide models), variance attributable to spatial sources generally increased and variance attributable to temporal sources generally decreased. While relationships between FIB levels and environmental factors, such as flow conditions (base versus stormflow), were constant across SOA, the effect of land cover was highly dependent on SOA and consistently smaller than the effect of stormwater infrastructure (e.g. outfalls). Conclusions This study demonstrates the importance of SOA when developing water quality monitoring programs or designing future studies to inform water management.

Funder

United States Department of Agriculture

National Institutes of Health

Publisher

Oxford University Press (OUP)

Subject

Applied Microbiology and Biotechnology,General Medicine,Biotechnology

Reference70 articles.

1. An outbreak of Escherichia coli O157: H7 infections associated with leaf lettuce consumption;Ackers;J Infect Dis,1998

2. Australian and New Zealand guidelines for fresh and marine water quality;Australian and New Zealand Environment and Conservation Council and Agriculture and Resource Management Council of Australia and New Zealand (ANZECC);Canberra,2000

3. MuMIn: multi-model inference;Barton,2009

4. lme4: linear mixed-effects models using Eigen and S4;Bates,2014

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