Caldwell Jamie M, Heron Scott F, Eakin C Mark, Donahue Megan J
Hawai'i Institute of Marine Biology, School of Ocean and Earth Science and Technology, University of Hawai'i, Kāne'ohe, HI 96744, USA;
Coral ReefWatch, U.S. National Oceanic and Atmospheric Administration, College Park, MD 20740, USA;
Remote Sens (Basel). 2016 Feb;8(2):93. doi: 10.3390/rs8020093. Epub 2016 Jan 26.
Predicting wildlife disease risk is essential for effective monitoring and management, especially for geographically expansive ecosystems such as coral reefs in the Hawaiian archipelago. Warming ocean temperature has increased coral disease outbreaks contributing to declines in coral cover worldwide. In this study we investigated seasonal effects of thermal stress on the prevalence of the three most widespread coral diseases in Hawai'i: white syndrome, growth anomalies and tissue loss syndrome. To predict outbreak likelihood we compared disease prevalence from surveys conducted between 2004 and 2015 from 18 Hawaiian Islands and atolls with biotic (e.g., coral density) and abiotic (satellite-derived sea surface temperature metrics) variables using boosted regression trees. To date, the only coral disease forecast models available were developed for white syndrome on the Great Barrier Reef (GBR). Given the complexities of disease etiology, differences in host demography and environmental conditions across reef regions, it is important to refine and adapt such models for different diseases and geographic regions of interest. Similar to the white syndrome models, anomalously warm conditions were important for predicting white syndrome, possibly due to a relationship between thermal stress and a compromised host immune system. However, coral density and winter conditions were the most important predictors of all three coral diseases in this study, enabling development of a forecasting system that can predict regions of elevated disease risk up to six months before an expected outbreak. Our research indicates satellite-derived systems for forecasting disease outbreaks can be appropriately adapted from the GBR tools and applied for a variety of diseases in a new region. These models can be used to enhance management capacity to prepare for and respond to emerging coral diseases throughout Hawai'i and can be modified for other diseases and regions around the world.
预测野生动物疾病风险对于有效的监测和管理至关重要,特别是对于像夏威夷群岛珊瑚礁这样地域广阔的生态系统。海洋温度上升导致全球珊瑚疾病爆发增加,进而造成珊瑚覆盖率下降。在本研究中,我们调查了热应激对夏威夷三种最普遍的珊瑚疾病患病率的季节性影响:白色综合征、生长异常和组织损失综合征。为了预测爆发可能性,我们使用增强回归树,将2004年至2015年间在18个夏威夷岛屿和环礁进行的调查中得出的疾病患病率与生物变量(如珊瑚密度)和非生物变量(卫星衍生的海面温度指标)进行比较。迄今为止,现有的唯一珊瑚疾病预测模型是针对大堡礁的白色综合征开发的。鉴于疾病病因的复杂性、不同珊瑚礁区域宿主种群统计学和环境条件的差异,针对不同疾病和感兴趣的地理区域改进和调整此类模型很重要。与白色综合征模型类似,异常温暖的条件对于预测白色综合征很重要,这可能是由于热应激与宿主免疫系统受损之间的关系。然而,在本研究中,珊瑚密度和冬季条件是所有三种珊瑚疾病最重要的预测因素,从而能够开发出一个预测系统,该系统可以在预期爆发前长达六个月预测疾病风险升高的区域。我们的研究表明,源自卫星的疾病爆发预测系统可以从大堡礁的工具中适当改编,并应用于新区域的各种疾病。这些模型可用于提高整个夏威夷应对新出现的珊瑚疾病的准备和应对管理能力,并可针对世界其他疾病和地区进行修改。