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从功能表示的天气序列预测植物病害流行。

Predicting plant disease epidemics from functionally represented weather series.

机构信息

1 Department of Plant Pathology, Kansas State University , 4024 Throckmorton PSC, Manhattan, KS 66506 , USA.

2 Department of Plant Pathology, The Ohio State University , 1680 Madison Avenue, Wooster, OH 44691 , USA.

出版信息

Philos Trans R Soc Lond B Biol Sci. 2019 Jun 24;374(1775):20180273. doi: 10.1098/rstb.2018.0273.

Abstract

Epidemics are often triggered by specific weather patterns favouring the pathogen on susceptible hosts. For plant diseases, models predicting epidemics have therefore often emphasized the identification of early season weather patterns that are correlated with a disease outcome at some later point. Toward that end, window-pane analysis is an exhaustive search algorithm traditionally used in plant pathology for mining correlations in a weather series with respect to a disease endpoint. Here we show, with reference to Fusarium head blight (FHB) of wheat, that a functional approach is a more principled analytical method for understanding the relationship between disease epidemics and environmental conditions over an extended time series. We used scalar-on-function regression to model a binary outcome (FHB epidemic or non-epidemic) relative to weather time series spanning 140 days relative to flowering (when FHB infection primarily occurs). The functional models overall fit the data better than previously described standard logistic regression (lr) models. Periods much earlier than heretofore realized were associated with FHB epidemics. The findings were used to create novel weather summary variables which, when incorporated into lr models, yielded a new set of models that performed as well as existing lr models for real-time predictions of disease risk. This article is part of the theme issue 'Modelling infectious disease outbreaks in humans, animals and plants: approaches and important themes'. This issue is linked with the subsequent theme issue 'Modelling infectious disease outbreaks in humans, animals and plants: epidemic forecasting and control'.

摘要

疫情通常是由有利于病原体在易感宿主中传播的特定天气模式引发的。因此,预测植物病害流行的模型通常强调识别与疾病结果相关的早期季节天气模式。为此,窗格分析是植物病理学中传统上用于挖掘天气序列与疾病终点之间相关性的穷举搜索算法。在这里,我们以小麦赤霉病 (FHB) 为例,表明功能方法是一种更有原则的分析方法,用于理解疾病流行与扩展时间序列中环境条件之间的关系。我们使用标量函数回归来相对于跨越开花(FHB 感染主要发生时) 140 天的天气时间序列来对二元结果(FHB 流行或非流行)进行建模。功能模型总体上比以前描述的标准逻辑回归 (lr) 模型更能拟合数据。比以往认识到的更早的时期与 FHB 流行有关。这些发现被用于创建新的天气汇总变量,当将这些变量纳入 lr 模型中时,产生了一组新的模型,这些模型在实时预测疾病风险方面与现有的 lr 模型表现一样好。本文是主题为“人类、动物和植物传染病暴发的建模:方法和重要主题”的一部分。本期主题与后续主题“人类、动物和植物传染病暴发的建模:疫情预测和控制”相关。

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Predicting plant disease epidemics from functionally represented weather series.从功能表示的天气序列预测植物病害流行。
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本文引用的文献

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Methods for scalar-on-function regression.函数标量回归方法。
Int Stat Rev. 2017 Aug;85(2):228-249. doi: 10.1111/insr.12163. Epub 2016 Feb 23.
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