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Preliminary machine learning model for citrus greening disease (Huanglongbing-HLB) prediction in Colombia

机译:哥伦比亚柑桔绿化病预测的初步机器学习模型(Huanglongbing-HLB)

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Citrus greening disease (Huanglongbing-HLB) is considered the most destructive citrus disease worldwide. Of the three species of Candidatus liberibacter associated with HLB, two have been recently reported in Latin America. The first report of HLB in Colombia was in March 2016. In this paper, a dataset was extracted for six departments in the northern zone of Colombia, where has been previously reported, applying image georeferencing with QGIS Software. Preliminary Random Forest and K-Nearest Neighbors (KNN) machine learning models were used in order to test and validate the obtained results, for disease monitoring and HLB incidence prediction. The performance of both models was also compared, obtaining a 100% AUC value with Random Forest model.
机译:柑橘绿化病(Huanglongbing-HLB)被认为是全球最具破坏力的柑橘病。与HLB相关的三种假丝酵母念珠菌中,最近在拉丁美洲报道了两种。 HLB在哥伦比亚的第一份报告是在2016年3月。在本文中,使用QGIS软件应用了图像地理配准,为哥伦比亚北部地区的六个部门提取了一个数据集,该数据先前已被报告过。为了检验和验证获得的结果,使用了初步的随机森林和K最近邻(KNN)机器学习模型,用于疾病监测和HLB发病率预测。还比较了两个模型的性能,使用随机森林模型获得了100%的AUC值。

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