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1.
Mar Environ Res ; 109: 140-7, 2015 Aug.
Article in English | MEDLINE | ID: mdl-26186681

ABSTRACT

This paper presents a new modeling system for nowcasting and forecasting enterococci levels in coastal recreation waters at any time during the day. The modeling system consists of (1) an artificial neural network (ANN) model for predicting the enterococci level at sunrise time, (2) a clear-sky solar radiation and turbidity correction to the ANN model, (3) remote sensing algorithms for turbidity, and (4) nowcasting/forecasting data. The first three components are also unique features of the new modeling system. While the component (1) is useful to beach monitoring programs requiring enterococci levels in early morning, the component (2) in combination with the component (1) makes it possible to predict the bacterial level in beach waters at any time during the day if the data from the components (3) and (4) are available. Therefore, predictions from the component (2) are of primary interest to beachgoers. The modeling system was developed using three years of swimming season data and validated using additional four years of independent data. Testing results showed that (1) the sunrise-time model correctly reproduced 82.63% of the advisories issued in seven years with a false positive rate of 2.65% and a false negative rate of 14.72%, and (2) the new modeling system was capable of predicting the temporal variability in enterococci levels in beach waters, ranging from hourly changes to daily cycles. The results demonstrate the efficacy of the new modeling system in predicting enterococci levels in coastal beach waters. Applications of the modeling system will improve the management of recreational beaches and protection of public health.


Subject(s)
Bathing Beaches , Enterococcus/physiology , Environmental Microbiology , Environmental Monitoring/methods , Seawater/microbiology , Algorithms , Decision Support Techniques , Louisiana , Models, Theoretical , Neural Networks, Computer , Remote Sensing Technology , Sunlight , Water Movements , Water Quality
2.
Proc Natl Acad Sci U S A ; 109(50): 20298-302, 2012 Dec 11.
Article in English | MEDLINE | ID: mdl-21949382

ABSTRACT

The biological consequences of the Deepwater Horizon oil spill are unknown, especially for resident organisms. Here, we report results from a field study tracking the effects of contaminating oil across space and time in resident killifish during the first 4 mo of the spill event. Remote sensing and analytical chemistry identified exposures, which were linked to effects in fish characterized by genome expression and associated gill immunohistochemistry, despite very low concentrations of hydrocarbons remaining in water and tissues. Divergence in genome expression coincides with contaminating oil and is consistent with genome responses that are predictive of exposure to hydrocarbon-like chemicals and indicative of physiological and reproductive impairment. Oil-contaminated waters are also associated with aberrant protein expression in gill tissues of larval and adult fish. These data suggest that heavily weathered crude oil from the spill imparts significant biological impacts in sensitive Louisiana marshes, some of which remain for over 2 mo following initial exposures.


Subject(s)
Fundulidae/genetics , Fundulidae/physiology , Petroleum Pollution/adverse effects , Animals , Cytochrome P-450 CYP1A1/genetics , Cytochrome P-450 CYP1A1/metabolism , Ecosystem , Ecotoxicology , Fish Proteins/genetics , Fish Proteins/metabolism , Fundulidae/growth & development , Gulf of Mexico , Petroleum Pollution/analysis , Toxicogenetics , Water Pollutants, Chemical/analysis , Water Pollutants, Chemical/toxicity
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