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利用机器学习预测大豆锈病菌夏孢子的短距离空中传播

Prediction of Short-Distance Aerial Movement of Phakopsora pachyrhizi Urediniospores Using Machine Learning.

作者信息

Wen L, Bowen C R, Hartman G L

机构信息

All authors: Department of Crop Sciences, University of Illinois, Urbana 61801; and second and third authors: United States Department of Agriculture-Agricultural Research Service, University of Illinois, Urbana 61801.

出版信息

Phytopathology. 2017 Oct;107(10):1187-1198. doi: 10.1094/PHYTO-04-17-0138-FI. Epub 2017 Sep 6.

DOI:10.1094/PHYTO-04-17-0138-FI
PMID:28609157
Abstract

Dispersal of urediniospores by wind is the primary means of spread for Phakopsora pachyrhizi, the cause of soybean rust. Our research focused on the short-distance movement of urediniospores from within the soybean canopy and up to 61 m from field-grown rust-infected soybean plants. Environmental variables were used to develop and compare models including the least absolute shrinkage and selection operator regression, zero-inflated Poisson/regular Poisson regression, random forest, and neural network to describe deposition of urediniospores collected in passive and active traps. All four models identified distance of trap from source, humidity, temperature, wind direction, and wind speed as the five most important variables influencing short-distance movement of urediniospores. The random forest model provided the best predictions, explaining 76.1 and 86.8% of the total variation in the passive- and active-trap datasets, respectively. The prediction accuracy based on the correlation coefficient (r) between predicted values and the true values were 0.83 (P < 0.0001) and 0.94 (P < 0.0001) for the passive and active trap datasets, respectively. Overall, multiple machine learning techniques identified the most important variables to make the most accurate predictions of movement of P. pachyrhizi urediniospores short-distance.

摘要

由风传播夏孢子是引起大豆锈病的大豆锈菌传播的主要方式。我们的研究聚焦于夏孢子在大豆冠层内以及从田间感染锈病的大豆植株向上至61米的短距离移动。利用环境变量来开发和比较模型,包括最小绝对收缩和选择算子回归、零膨胀泊松/常规泊松回归、随机森林和神经网络,以描述在被动和主动诱捕器中收集到的夏孢子的沉降情况。所有这四种模型都将诱捕器与源的距离、湿度、温度、风向和风速确定为影响夏孢子短距离移动的五个最重要变量。随机森林模型提供了最佳预测结果,分别解释了被动和主动诱捕器数据集中总变异的76.1%和86.8%。基于预测值与真实值之间的相关系数(r),被动和主动诱捕器数据集的预测准确率分别为0.83(P < 0.0001)和0.94(P < 0.0001)。总体而言,多种机器学习技术确定了最重要的变量,以便对大豆锈菌夏孢子的短距离移动做出最准确的预测。

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