Furkan Hamed Bin, Ayman Nabila, Uddin Md Jamal
Department of Statistics, Shahjalal University of Science and Technology, Sylhet, Bangladesh.
Department of Computer Science & Engineering, University of Chittagong, Chittagong, Bangladesh.
MethodsX. 2024 Dec 9;14:103093. doi: 10.1016/j.mex.2024.103093. eCollection 2025 Jun.
In infectious disease outbreak modeling, there remains a gap in addressing spatiotemporal challenges present in established models. This study addresses this gap by evaluating four established hybrid neural network models for predicting influenza outbreaks. These models were analyzed by employing time series data from eight different countries to challenge the models with imposed spatial difficulties, in a month-on-month structure. The models' predictions were compared using MAPE, and RMSE, as well as graphical representations generated by employed models. The SARIMA-LSTM model excelled in achieving the lowest average RMSE score of 66.93 as well as reporting the lowest RMSE score for three out of eight countries studied. In this case also, GA-ConvLSTM-CNN model comes in second place with an average RMSE score of 68.46. Considering these results and the ability to follow the seasonal trends of the actual values, this study suggests the SARIMA-LSTM model to be more robust to spatiotemporal challenges compared with the other models under examination. This study•Evaluated established methods with unique imposed difficulty.•Addressed spatiotemporal characteristics of the data.•Proposed the SARIMA-LSTM model based on evaluation metrics.
在传染病爆发建模中,现有模型在应对时空挑战方面仍存在差距。本研究通过评估四种用于预测流感爆发的成熟混合神经网络模型来填补这一差距。通过采用来自八个不同国家的时间序列数据,以逐月结构给模型施加空间难题,从而对这些模型进行分析。使用平均绝对百分比误差(MAPE)、均方根误差(RMSE)以及所采用模型生成的图形表示来比较模型的预测结果。自回归积分移动平均-长短期记忆模型(SARIMA-LSTM)表现出色,实现了最低平均RMSE分数66.93,并且在所研究的八个国家中的三个国家报告了最低RMSE分数。同样在这种情况下,遗传算法-卷积长短期记忆-卷积神经网络模型(GA-ConvLSTM-CNN)以平均RMSE分数68.46位居第二。考虑到这些结果以及跟踪实际值季节性趋势的能力,本研究表明与其他受检验模型相比,SARIMA-LSTM模型在应对时空挑战方面更强健。本研究•用独特的施加难题评估现有方法。•处理数据的时空特征。•基于评估指标提出SARIMA-LSTM模型。