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利用物种分布模型预测单一栽培中甘蓝黄萎病的发病情况。

Predicting disease occurrence of cabbage Verticillium wilt in monoculture using species distribution modeling.

作者信息

Ikeda Kentaro, Osawa Takeshi

机构信息

Department of Agriculture, Gunma Prefectural Office, Isesaki, Gunma, Japan.

Graduate School of Urban Environmental Sciences, Tokyo Metropolitan University, Hachioji, Tokyo, Japan.

出版信息

PeerJ. 2020 Nov 17;8:e10290. doi: 10.7717/peerj.10290. eCollection 2020.

Abstract

BACKGROUND

Although integrated pest management (IPM) is essential for conservation agriculture, this method can be inadequate for severely infected fields. The ability to predict the potential occurrence of severe infestation of soil-borne disease would enable farmers to adopt suitable methods for high-risk areas, such as soil disinfestation, and apply other options for lower risk areas. Recently, researchers have used species distribution modeling (SDM) to predict the occurrence of target plant and animal species based on various environmental variables. In this study, we applied this technique to predict and map the occurrence probability of a soil-borne disease, Verticillium wilt, using cabbage as a case study.

METHODS

A disease survey assessing the distribution of Verticillium wilt in cabbage fields in Tsumagoi village (central Honshu, Japan) was conducted two or three times annually from 1997 to 2013. Road density, elevation and topographic wetness index (TWI) were selected as explanatory variables for disease occurrence potential. A model of occurrence probability of Verticillium wilt was constructed using the MaxEnt software for SDM analysis. As the disease survey was mainly conducted in an agricultural area, the area was weighted as "Bias Grid" and area except for the agricultural area was set as background.

RESULTS

Grids with disease occurrence showed a high degree of coincidence with those with a high probability occurrence. The highest contribution to the prediction of disease occurrence was the variable at 97.1%, followed by at 2.3%, and at 0.5%. The highest permutation importance was at 93.0%, followed by at 7.0%, while the variable at 0.0%. This method of predicting disease probability occurrence can help with disease monitoring in areas with high probability occurrence and inform farmers about the selection of control measures.

摘要

背景

尽管综合虫害管理(IPM)对保护性农业至关重要,但这种方法对于严重感染的田地可能并不适用。预测土壤传播疾病严重侵染潜在发生情况的能力,将使农民能够针对高风险区域采用合适的方法,如土壤消毒,并对低风险区域采用其他措施。最近,研究人员已使用物种分布模型(SDM),基于各种环境变量预测目标动植物物种的发生情况。在本研究中,我们以卷心菜为例,应用该技术预测并绘制一种土壤传播疾病——黄萎病的发生概率图。

方法

1997年至2013年期间,每年在日本本州中部妻笼村的卷心菜田中进行两到三次黄萎病分布情况的病害调查。选择道路密度、海拔和地形湿度指数(TWI)作为病害发生可能性的解释变量。使用MaxEnt软件进行SDM分析,构建黄萎病发生概率模型。由于病害调查主要在农业区域进行,该区域被加权为“偏差网格”,农业区域以外的区域设为背景。

结果

病害发生的网格与高发生概率的网格高度吻合。对病害发生预测贡献最大的变量为 ,占97.1%,其次是 ,占2.3%, 占0.5%。排列重要性最高的是 ,占93.0%,其次是 ,占7.0%,而变量 占0.0%。这种预测病害发生概率的方法有助于对高发生概率区域进行病害监测,并为农民提供防治措施选择的信息。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8ceb/7678443/4556dde78f54/peerj-08-10290-g001.jpg

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