Suppr超能文献

使用肠球菌超标概率和逻辑回归来评估长期每周海滩监测数据。

Using probabilities of enterococci exceedance and logistic regression to evaluate long term weekly beach monitoring data.

作者信息

Aranda Diana, Lopez Jose V, Solo-Gabriele Helena M, Fleisher Jay M

机构信息

Guy Harvey Oceanographic Center, Nova Southeastern University, Dania Beach, FL 33004, USA; Oceans and Human Health Center, University of Miami, Miami, FL 33149, USA.

Guy Harvey Oceanographic Center, Nova Southeastern University, Dania Beach, FL 33004, USA.

出版信息

J Water Health. 2016 Feb;14(1):81-9. doi: 10.2166/wh.2015.030.

Abstract

Recreational water quality surveillance involves comparing bacterial levels to set threshold values to determine beach closure. Bacterial levels can be predicted through models which are traditionally based upon multiple linear regression. The objective of this study was to evaluate exceedance probabilities, as opposed to bacterial levels, as an alternate method to express beach risk. Data were incorporated into a logistic regression for the purpose of identifying environmental parameters most closely correlated with exceedance probabilities. The analysis was based on 7,422 historical sample data points from the years 2000-2010 for 15 South Florida beach sample sites. Probability analyses showed which beaches in the dataset were most susceptible to exceedances. No yearly trends were observed nor were any relationships apparent with monthly rainfall or hurricanes. Results from logistic regression analyses found that among the environmental parameters evaluated, tide was most closely associated with exceedances, with exceedances 2.475 times more likely to occur at high tide compared to low tide. The logistic regression methodology proved useful for predicting future exceedances at a beach location in terms of probability and modeling water quality environmental parameters with dependence on a binary response. This methodology can be used by beach managers for allocating resources when sampling more than one beach.

摘要

娱乐用水水质监测涉及将细菌水平与设定的阈值进行比较,以确定海滩是否关闭。细菌水平可通过传统上基于多元线性回归的模型进行预测。本研究的目的是评估超标概率,而非细菌水平,作为表达海滩风险的另一种方法。为了确定与超标概率最密切相关的环境参数,将数据纳入逻辑回归分析。该分析基于2000年至2010年期间佛罗里达州南部15个海滩采样点的7422个历史样本数据点。概率分析表明数据集中哪些海滩最容易超标。未观察到年度趋势,也未发现与月降雨量或飓风有任何明显关系。逻辑回归分析结果发现,在所评估的环境参数中,潮汐与超标最为密切相关,涨潮时超标的可能性是落潮时的2.475倍。逻辑回归方法被证明在预测海滩位置未来超标概率以及对依赖二元响应的水质环境参数进行建模方面很有用。当对多个海滩进行采样时,海滩管理人员可使用这种方法来分配资源。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验