Department of Virology II, National Institute of Infectious Diseases, Tokyo, Japan.
Department of Fungal Infection, National Institute of Infectious Diseases, Tokyo, Japan.
PLoS One. 2022 Jul 28;17(7):e0271820. doi: 10.1371/journal.pone.0271820. eCollection 2022.
Hand, foot, and mouth disease (HFMD) is a common febrile illness caused by enteroviruses in the Picornaviridae family. The major symptoms of HFMD are fever and a vesicular rash on the hand, foot, or oral mucosa. Acute meningitis and encephalitis are observed in rare cases. HFMD epidemics occur annually in Japan, usually in the summer season. Relatively large-scale outbreaks have occurred every two years since 2011. In this study, the epidemic patterns of HFMD in Japan are predicted four weeks in advance using a deep learning method. The time-series data were analyzed by a long short-term memory (LSTM) approach called a Recurrent Neural Network. The LSTM model was trained on the numbers of weekly HFMD cases in each prefecture. These data are reported in the Infectious Diseases Weekly Report, which compiles the national surveillance data from web sites at the National Institute of Infectious Diseases, Japan, under the Infectious Diseases Control Law. Consequently, our trained LSTM model distinguishes between relatively large-scale and small-scale epidemics. The trained model predicted the HFMD epidemics in 2018 and 2019, indicating that the LSTM approach can estimate the future epidemic patterns of HFMD in Japan.
手足口病(HFMD)是由小核糖核酸病毒科肠道病毒引起的常见发热性疾病。HFMD 的主要症状是发热和手、足或口腔黏膜上出现水疱性皮疹。在罕见情况下会出现急性脑膜炎和脑炎。日本每年都会发生 HFMD 疫情,通常在夏季。自 2011 年以来,每隔两年就会发生相对较大规模的疫情爆发。在这项研究中,使用深度学习方法提前四周预测日本的 HFMD 流行模式。使用长短期记忆(LSTM)方法,即递归神经网络,对时间序列数据进行分析。LSTM 模型是在每个县每周 HFMD 病例数的基础上进行训练的。这些数据是在《传染病周报》中报告的,该报告根据《传染病控制法》,从日本国立传染病研究所的网站上汇编了全国监测数据。因此,我们训练的 LSTM 模型可以区分大规模和小规模的疫情。训练后的模型预测了 2018 年和 2019 年的 HFMD 疫情,表明 LSTM 方法可以估计日本未来的 HFMD 流行模式。