Literature DB >> 33490125

Prediction for Global Peste des Petits Ruminants Outbreaks Based on a Combination of Random Forest Algorithms and Meteorological Data.

Bing Niu1, Ruirui Liang1, Guangya Zhou1, Qiang Zhang2, Qiang Su3,4, Xiaosheng Qu5, Qin Chen1.   

Abstract

Peste des Petits Ruminants (PPR) is an acute and highly contagious transboundary disease caused by the PPR virus (PPRV). The virus infects goats, sheep and some wild relatives of small domestic ruminants, such as antelopes. PPR is listed by the World Organization for Animal Health as an animal disease that must be reported promptly. In this paper, PPR outbreak data combined with WorldClim database meteorological data were used to build a PPR prediction model. Using feature selection methods, eight sets of features were selected: bio3, bio10, bio15, bio18, prec7, prec8, prec12, and alt for modeling. Then different machine learning algorithms were used to build models, among which the random forest (RF) algorithm was found to have the best modeling effect. The ACC value of prediction accuracy for the model on the training set can reach 99.10%, while the ACC on the test sets was 99.10%. Therefore, RF algorithms and eight features were finally selected to build the model in order to build the online prediction system. In addition, we adopt single-factor modeling and correlation analysis of modeling variables to explore the impact of each variable on modeling results. It was found that bio18 (the warmest quarterly precipitation), prec7 (the precipitation in July), and prec8 (the precipitation in August) contributed significantly to the model, and the outbreak of the epidemic may have an important relationship with precipitation. Eventually, we used the final qualitative prediction model to establish a global online prediction system for the PPR epidemic.
Copyright © 2021 Niu, Liang, Zhou, Zhang, Su, Qu and Chen.

Entities:  

Keywords:  Worldclim; global online prediction system; outbreaks; peste des petits ruminants; random forest algorithm

Year:  2021        PMID: 33490125      PMCID: PMC7817769          DOI: 10.3389/fvets.2020.570829

Source DB:  PubMed          Journal:  Front Vet Sci        ISSN: 2297-1769


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