首页> 外文期刊>Philosophical Transactions of the Royal Society of London, Series B. Biological Sciences >A probabilistic census-travel model to predict introduction sites of exotic plant, animal and human pathogens
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A probabilistic census-travel model to predict introduction sites of exotic plant, animal and human pathogens

机译:预测异国植物,动物和人类病原体的引入遗址的概率普查 - 旅行模式

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摘要

International travel offers an extensive network for new and recurring human-mediated introductions of exotic infectious pathogens and biota, freeing geographical constraints. We present a predictive census-travel model that integrates international travel with endpoint census data and epidemiological characteristics to predict points of introduction. Population demographics, inbound and outbound travel patterns, and quantification of source strength by country are combined to estimate and rank risk of introduction at user-scalable land parcel areas (e.g. state, county, zip code, census tract, gridded landscapes (1 mi(2), 5 km(2), etc.)). This risk ranking by parcel can be used to develop pathogen surveillance programmes, and has been incorporated in multiple US state/federal surveillance protocols. The census-travel model is versatile and independent of pathosystems, and applies a risk algorithm to generate risk maps for plant, human and animal contagions at different spatial scales. An interactive, user-friendly interface is available online (https://epi-models.shinyapps.io/Census_Travel/) to provide ease-of-use for regulatory agencies for early detection of high-risk exotics. The interface allows users to parametrize and run the model without knowledge of background code and underpinning data.
机译:国际旅行为新的和经常性的人类介导的外来传染病病原体和生物遗传造出的广泛网络提供了广泛的网络,释放地理限制。我们提出了一种预测的人口普查 - 旅行模式,将国际旅行与端点人口普查数据和流行病学特征集成,以预测引入点。人口人口统计学,入境和出境旅行模式,以及国家源强度的量化,以估计和排名在用户可扩展的土地包裹区域(例如国家,县,邮政编码,人口普查,网格景观(1英里) 2),5公里(2)等)))。包裹的这种风险排名可用于开发病原体监督计划,并已纳入多个美国州/联邦监测协议。人口普查 - 旅行模型是多功能的,独立于病理系统,并应用风险算法在不同的空间尺度上产生植物,人和动物传染的风险地图。在线提供互动,用户友好的界面(https://epi-models.shinyapps.io/census_travel/),以便于监管机构的早期检测高风险开场的监管机构提供易用性。该界面允许用户参加参数化并运行模型,而无需了解背景代码和支撑数据。

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