Application of the SARIMA-LSTM model to evaluate the effectiveness of interventions for Visceral Leishmaniasis.

IF 1.2 4区 医学 Q4 INFECTIOUS DISEASES
Mengchen Han, Chongqi Hao, Zhiyang Zhao, Peijun Zhang, Bin Wu, Lixia Qiu
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Abstract

Introduction: This study proposes a combined Seasonal Autoregressive Integrated Moving Average and Long Short-Term Memory (SARIMA-LSTM) model to enhance the accuracy of evaluating the effectiveness of visceral leishmaniasis prevention and control efforts in Yangquan, China.

Methodology: Data were obtained from the Yangquan Centre for Disease Control and Prevention. The hybrid model integrates a SARIMA component with a residual-based LSTM neural network.

Results: In the SARIMA-LSTM model, the LSTM component included seven hidden layer nodes, a learning rate of 0.001, 500 training epochs, a batch size of 256, and utilized the Adam optimization algorithm. The SARIMA-LSTM model demonstrated superior performance (MSE = 2.824, MAE = 1.279, RMSE = 1.681). A paired samples t-test revealed a statistically significant difference between predicted and actual case counts (t = -4.058, p < 0.001), indicating that the actual number of cases was lower than predicted.

Conclusions: The combined SARIMA-LSTM model outperformed the individual SARIMA and LSTM models, suggesting that the implemented interventions were generally effective.

应用SARIMA-LSTM模型评估内脏利什曼病干预措施的有效性。
摘要:本研究提出了一种季节性自回归综合移动平均和长短期记忆(SARIMA-LSTM)组合模型,以提高评估阳泉市内脏利什曼病防控工作有效性的准确性。方法:数据来自阳泉市疾病预防控制中心。该混合模型将SARIMA组件与基于残差的LSTM神经网络相结合。结果:在SARIMA-LSTM模型中,LSTM组件包含7个隐藏层节点,学习率为0.001,500个训练epoch,批大小为256,并采用Adam优化算法。SARIMA-LSTM模型表现出较好的性能(MSE = 2.824, MAE = 1.279, RMSE = 1.681)。配对样本t检验显示,预测病例数与实际病例数差异有统计学意义(t = -4.058, p < 0.001),表明实际病例数低于预测。结论:SARIMA-LSTM联合模型优于SARIMA和LSTM单独模型,表明实施的干预措施总体有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.70
自引率
5.30%
发文量
239
审稿时长
4-8 weeks
期刊介绍: The Journal of Infection in Developing Countries (JIDC) is an international journal, intended for the publication of scientific articles from Developing Countries by scientists from Developing Countries. JIDC is an independent, on-line publication with an international editorial board. JIDC is open access with no cost to view or download articles and reasonable cost for publication of research artcles, making JIDC easily availiable to scientists from resource restricted regions.
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