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Comparative evaluation of time series models for predicting influenza outbreaks: application of influenza-like illness data from sentinel sites of healthcare centers in Iran

机译:预测流感爆发的时间序列模型的比较评估:来自伊朗医疗中心定点场所的流感样疾病数据的应用

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Abstract ObjectiveForecasting the time of future outbreaks would minimize the impact of diseases by taking preventive steps including public health messaging and raising awareness of clinicians for timely treatment and diagnosis. The present study investigated the accuracy of support vector machine, artificial neural-network, and random-forest time series models in influenza like illness (ILI) modeling and outbreaks detection. The models were applied to a data set of weekly ILI frequencies in Iran. The root mean square errors (RMSE), mean absolute errors (MAE), and intra-class correlation coefficient (ICC) statistics were employed as evaluation criteria.ResultsIt was indicated that the random-forest time series model outperformed other three methods in modeling weekly ILI frequencies (RMSE?=?22.78, MAE?=?14.99 and ICC?=?0.88 for the test set). In addition neural-network was better in outbreaks detection with total accuracy of 0.889 for the test set. The results showed that the used time series models had promising performances suggesting they could be effectively applied for predicting weekly ILI frequencies and outbreaks.
机译:摘要目的通过采取预防措施,包括公共卫生消息传递和提高临床医生对及时治疗和诊断的认识,预测未来爆发的时间将使疾病的影响最小化。本研究调查了支持向量机,人工神经网络和随机森林时间序列模型在流感样疾病(ILI)建模和暴发检测中的准确性。这些模型已应用于伊朗每周一次ILI频率的数据集。均方根误差(RMSE),平均绝对误差(MAE)和类内相关系数(ICC)统计量用作评估标准。结果表明,在每周建模中,随机森林时间序列模型优于其他三种方法ILI频率(测试集的RMSE?=?22.78,MAE?=?14.99,ICC?=?0.88)。另外,神经网络在爆发检测方面更好,测试集的总精度为0.889。结果表明,所使用的时间序列模型具有良好的性能,表明它们可以有效地用于预测每周ILI频率和暴发。

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