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一种用于监测近海龙虾渔业中壳病的统计模型:以长岛海峡为例的研究

A statistical model for monitoring shell disease in inshore lobster fisheries: A case study in Long Island Sound.

作者信息

Tanaka Kisei R, Belknap Samuel L, Homola Jared J, Chen Yong

机构信息

School of Marine Sciences, University of Maine, Orono, Maine, United States of America.

Climate Change Institute, University of Maine, Orono, Maine, United States of America.

出版信息

PLoS One. 2017 Feb 14;12(2):e0172123. doi: 10.1371/journal.pone.0172123. eCollection 2017.

Abstract

The expansion of shell disease is an emerging threat to the inshore lobster fisheries in the northeastern United States. The development of models to improve the efficiency and precision of existing monitoring programs is advocated as an important step in mitigating its harmful effects. The objective of this study is to construct a statistical model that could enhance the existing monitoring effort through (1) identification of potential disease-associated abiotic and biotic factors, and (2) estimation of spatial variation in disease prevalence in the lobster fishery. A delta-generalized additive modeling (GAM) approach was applied using bottom trawl survey data collected from 2001-2013 in Long Island Sound, a tidal estuary between New York and Connecticut states. Spatial distribution of shell disease prevalence was found to be strongly influenced by the interactive effects of latitude and longitude, possibly indicative of a geographic origin of shell disease. Bottom temperature, bottom salinity, and depth were also important factors affecting the spatial variability in shell disease prevalence. The delta-GAM projected high disease prevalence in non-surveyed locations. Additionally, a potential spatial discrepancy was found between modeled disease hotspots and survey-based gravity centers of disease prevalence. This study provides a modeling framework to enhance research, monitoring and management of emerging and continuing marine disease threats.

摘要

壳病的蔓延对美国东北部近岸龙虾渔业构成了新的威胁。人们主张开发模型以提高现有监测计划的效率和精度,将其作为减轻壳病有害影响的重要一步。本研究的目的是构建一个统计模型,该模型可通过以下方式加强现有的监测工作:(1)识别与疾病相关的潜在非生物和生物因素,以及(2)估计龙虾渔业中疾病流行率的空间变化。利用2001年至2013年在纽约州和康涅狄格州之间的潮汐河口长岛海峡收集的底拖网调查数据,采用了一种增量广义相加模型(GAM)方法。发现壳病流行率的空间分布受纬度和经度交互作用的强烈影响,这可能表明壳病有一个地理起源。底层温度、底层盐度和深度也是影响壳病流行率空间变异性的重要因素。增量GAM预测了未调查区域的高疾病流行率。此外,在模拟的疾病热点和基于调查的疾病流行率重心之间发现了潜在的空间差异。本研究提供了一个建模框架,以加强对新出现和持续存在的海洋疾病威胁的研究、监测和管理。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6821/5308772/76dcfcc25554/pone.0172123.g001.jpg

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