Lei Bingbing, Zhu Xuanjun, Zhou Tao, Zhang Yuxi
School of Computer Science and Engineering, North Minzu University, Yinchuan, Ningxia, China.
Key Laboratory of Image and Graphics Intelligent Processing of State Ethnic Affairs Commission, North Minzu University, Yinchuan, Ningxia, China.
PLoS One. 2025 Jun 27;20(6):e0326206. doi: 10.1371/journal.pone.0326206. eCollection 2025.
Accurate prediction of Hand, Foot, and Mouth Disease (HFMD) is crucial for effective epidemic prevention and control. Existing prediction models often overlook the cross-regional transmission dynamics of HFMD, limiting their applicability to single regions. Furthermore, their ability to perceive spatio-temporal features holistically remains limited, hindering the precise modeling of epidemic trends. To address these limitations, a novel HFMD prediction model named Seq2Seq-HMF is proposed, which is based on the Sequence-to-Sequence(Seq2Seq) framework. This model leverages hybrid perception of multi-scale features. First, the model utilizes graph structure modeling for multi-regional epidemic-related features. Secondly, a novel Spatio-Temporal Parallel Encoding(STPE) Cell is designed; multiple STPE Cells constitute an encoder capable of hybrid perception across multi-scale spatio-temporal features. Within this encoder, graph-based feature representation and iterative convolution operations enable the capture of cumulative influence of neighboring regions across temporal and spatial dimensions, facilitating efficient extraction of spatio-temporal dependencies between multiple regions. Finally, the decoder incorporates a frequency-enhanced channel attention mechanism(FECAM) to improve the model's comprehension of temporal correlations and periodic features, further refining prediction accuracy and multi-step forecasting capabilities. Experimental results, utilizing multi-regional data from Japan to predict HFMD cases one to four weeks ahead, demonstrate that our proposed Seq2Seq-HMF model outperforms baseline models. Additionally, the model performs well on single-region data from a city in southern China, confirming its strong generalization ability.
准确预测手足口病(HFMD)对于有效的疫情防控至关重要。现有的预测模型往往忽视了手足口病的跨区域传播动态,限制了它们在单一区域的适用性。此外,它们整体感知时空特征的能力仍然有限,阻碍了对疫情趋势的精确建模。为了解决这些局限性,提出了一种名为Seq2Seq-HMF的新型手足口病预测模型,该模型基于序列到序列(Seq2Seq)框架。该模型利用多尺度特征的混合感知。首先,该模型利用图结构对多区域疫情相关特征进行建模。其次,设计了一种新颖的时空并行编码(STPE)单元;多个STPE单元构成一个编码器,能够跨多尺度时空特征进行混合感知。在这个编码器中,基于图的特征表示和迭代卷积操作能够捕获相邻区域在时间和空间维度上的累积影响,便于高效提取多个区域之间的时空依赖性。最后,解码器结合了频率增强通道注意力机制(FECAM),以提高模型对时间相关性和周期性特征的理解,进一步提高预测准确性和多步预测能力。利用来自日本的多区域数据提前一到四周预测手足口病病例的实验结果表明,我们提出的Seq2Seq-HMF模型优于基线模型。此外,该模型在中国南方一个城市的单区域数据上表现良好,证实了其强大的泛化能力。