Kesorn Kraisak, Ongruk Phatsavee, Chompoosri Jakkrawarn, Phumee Atchara, Thavara Usavadee, Tawatsin Apiwat, Siriyasatien Padet
Computer Science and Information Technology Department, Faculty of Science, Naresuan University, Phitsanulok, Thailand.
National Institute of Health, Department of Medical Sciences, Ministry of Public Health, Nonthaburi, Thailand.
PLoS One. 2015 May 11;10(5):e0125049. doi: 10.1371/journal.pone.0125049. eCollection 2015.
In the past few decades, several researchers have proposed highly accurate prediction models that have typically relied on climate parameters. However, climate factors can be unreliable and can lower the effectiveness of prediction when they are applied in locations where climate factors do not differ significantly. The purpose of this study was to improve a dengue surveillance system in areas with similar climate by exploiting the infection rate in the Aedes aegypti mosquito and using the support vector machine (SVM) technique for forecasting the dengue morbidity rate.
Areas with high incidence of dengue outbreaks in central Thailand were studied. The proposed framework consisted of the following three major parts: 1) data integration, 2) model construction, and 3) model evaluation. We discovered that the Ae. aegypti female and larvae mosquito infection rates were significantly positively associated with the morbidity rate. Thus, the increasing infection rate of female mosquitoes and larvae led to a higher number of dengue cases, and the prediction performance increased when those predictors were integrated into a predictive model. In this research, we applied the SVM with the radial basis function (RBF) kernel to forecast the high morbidity rate and take precautions to prevent the development of pervasive dengue epidemics. The experimental results showed that the introduced parameters significantly increased the prediction accuracy to 88.37% when used on the test set data, and these parameters led to the highest performance compared to state-of-the-art forecasting models.
The infection rates of the Ae. aegypti female mosquitoes and larvae improved the morbidity rate forecasting efficiency better than the climate parameters used in classical frameworks. We demonstrated that the SVM-R-based model has high generalization performance and obtained the highest prediction performance compared to classical models as measured by the accuracy, sensitivity, specificity, and mean absolute error (MAE).
在过去几十年里,几位研究人员提出了通常依赖气候参数的高精度预测模型。然而,气候因素可能不可靠,并且当在气候因素差异不显著的地区应用时,会降低预测的有效性。本研究的目的是通过利用埃及伊蚊的感染率并使用支持向量机(SVM)技术预测登革热发病率,来改进气候相似地区的登革热监测系统。
对泰国中部登革热疫情高发地区进行了研究。所提出的框架由以下三个主要部分组成:1)数据整合,2)模型构建,3)模型评估。我们发现埃及伊蚊雌蚊和幼虫的感染率与发病率显著正相关。因此,雌蚊和幼虫感染率的增加导致登革热病例数增多,当将这些预测因子纳入预测模型时,预测性能提高。在本研究中,我们应用具有径向基函数(RBF)核的支持向量机来预测高发病率,并采取预防措施以防止登革热大规模流行的发展。实验结果表明,在测试集数据上使用时,引入的参数显著提高了预测准确率至88.37%,并且与现有最先进的预测模型相比,这些参数带来了最高的性能。
埃及伊蚊雌蚊和幼虫的感染率比传统框架中使用的气候参数能更好地提高发病率预测效率。我们证明基于支持向量机 - R的模型具有高泛化性能,并且与传统模型相比,在准确率、灵敏度、特异性和平均绝对误差(MAE)方面获得了最高的预测性能。