Predicting the odds of chronic wasting disease with Habitat Risk software

IF 2.1 Q3 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH Spatial and Spatio-Temporal Epidemiology Pub Date : 2024-04-11 DOI:10.1016/j.sste.2024.100650
W. David Walter , Brenda Hanley , Cara E. Them , Corey I. Mitchell , James Kelly , Daniel Grove , Nicholas Hollingshead , Rachel C. Abbott , Krysten L. Schuler
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Abstract

Chronic wasting disease (CWD) is a transmissible spongiform encephalopathy that was first detected in captive cervids in Colorado, United States (US) in 1967, but has since spread into free-ranging white-tailed deer (Odocoileus virginianus) across the US and Canada as well as to Scandinavia and South Korea. In some areas, the disease is considered endemic in wild deer populations, and governmental wildlife agencies have employed epidemiological models to understand long-term environmental risk. However, continued rapid spread of CWD into new regions of the continent has underscored the need for extension of these models into broader tools applicable for wide use by wildlife agencies. Additionally, efforts to semi-automate models will facilitate access of technical scientific methods to broader users. We introduce software (Habitat Risk) designed to link a previously published epidemiological model with spatially referenced environmental and disease testing data to enable agency personnel to make up-to-date, localized, data-driven predictions regarding the odds of CWD detection in surrounding areas after an outbreak is discovered. Habitat Risk requires pre-processing publicly available environmental datasets and standardization of disease testing (surveillance) data, after which an autonomous computational workflow terminates in a user interface that displays an interactive map of disease risk. We demonstrated the use of the Habitat Risk software with surveillance data of white-tailed deer from Tennessee, USA.

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利用 Habitat Risk 软件预测慢性消耗性疾病的几率
慢性消耗性疾病(CWD)是一种可传播的海绵状脑病,1967 年首次在美国科罗拉多州的圈养鹿群中被发现,但此后便传播到美国和加拿大各地以及斯堪的纳维亚半岛和韩国的散养白尾鹿(Odocoileus virginianus)中。在某些地区,这种疾病被认为是野生鹿群中的地方病,政府野生动物机构已采用流行病学模型来了解长期的环境风险。然而,CWD 在欧洲大陆新地区的持续快速传播凸显了将这些模型扩展为适用于野生动物机构广泛使用的更广泛工具的必要性。此外,对模型进行半自动化的努力将有助于向更广泛的用户提供技术科学方法。我们介绍的软件(Habitat Risk)旨在将以前发布的流行病学模型与空间参考环境和疾病检测数据联系起来,使机构人员能够在发现疫情后,对周边地区发现 CWD 的几率做出最新的、本地化的、数据驱动的预测。栖息地风险需要对公开可用的环境数据集进行预处理,并对疾病检测(监控)数据进行标准化,然后在显示疾病风险交互式地图的用户界面上结束自主计算工作流程。我们利用美国田纳西州的白尾鹿监测数据演示了如何使用 "生境风险 "软件。
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来源期刊
Spatial and Spatio-Temporal Epidemiology
Spatial and Spatio-Temporal Epidemiology PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
CiteScore
5.10
自引率
8.80%
发文量
63
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