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首页> 外文期刊>Preventive Veterinary Medicine >Forecasting herd-level porcine epidemic diarrhea (PED) frequency trends in Ontario (Canada)
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Forecasting herd-level porcine epidemic diarrhea (PED) frequency trends in Ontario (Canada)

机译:安大略省(加拿大)的预测畜群猪流行性腹泻(PED)频率趋势

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摘要

Porcine Epidemic Diarrhea Virus (PEDV) emerged in North America in 2013. The first case of PEDV in Canada was identified on an Ontario farm in January 2014. Surveillance was instrumental in identifying the initial case and in minimizing the spread of the virus to other farms. With recent advances in predictive analytics showing promise for health and disease forecasting, the primary objective of this study was to apply machine learning predictive methods (random forest, artificial neural networks, and classification and regression trees) to provincial PEDV incidence data, and in so doing determine their accuracy for predicting future PEDV trends. Trend was defined as the cumulative number of new cases over a four-week interval, and consisted of four levels (zero, low, medium and high). Provincial PEDV incidence and prevalence estimates from an industry database, as well as temperature, humidity, and precipitation data, were combined to create the forecast dataset. With 10-fold cross validation performed on the entire dataset, the overall accuracy was 0.68 (95% CI: 0.60 - 0.75), 0.57 (95% CI: 0.49 - 0.64), and 0.55 (0.47 - 0.63) for the random forest, artificial neural network, and classification and regression tree models, respectively. Based on the cross-validation approach to evaluating predictive accuracy, the random forest model provided the best prediction.
机译:2013年北美出现的猪流行病毒病毒(PEDV)在北美出现。加拿大的第一个案件在2014年1月的安大略省农场上被识别出来。监督在识别最初的案例和最小化病毒到其他农场的蔓延方面有助于。 。随着预测分析的最新进展,展示了健康和疾病预测的承诺,本研究的主要目标是将机器学习预测方法(随机林,人工神经网络和分类和回归树)应用于省级PEDV发病数据,因此做出他们的准确性,以预测未来的PEDV趋势。趋势被定义为4周间隔内的新案例的累积数量,并由四个级别(零,低,中和高)组成。省级PEDV发病率和行业数据库的估计,以及温度,湿度和降水数据,组合以创建预测数据集。在整个数据集上执行的10倍交叉验证,总体精度为0.68(95%CI:0.60-0.75),0.57(95%CI:0.49-0.64),随机森林为0.55(0.47 - 0.63),人工神经网络和分类和回归树模型。基于评估预测准确性的交叉验证方法,随机林模型提供了最佳预测。

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