Department of Veterinary Bioscience and Veterinary Public Health, Faculty of Veterinary Medicine, Chiang Mai University, Chiang Mai 50100, Thailand; Center of Excellence in Veterinary Public Health, Faculty of Veterinary Medicine, Chiang Mai University, Chiang Mai 50100, Thailand.
Department of Livestock Development, Animal Health Section, The 4th Regional Livestock Office, Khon Kaen 40260, Thailand.
Prev Vet Med. 2023 Aug;217:105964. doi: 10.1016/j.prevetmed.2023.105964. Epub 2023 Jun 16.
Lumpy skin disease (LSD) is an important transboundary disease affecting cattle in numerous countries in various continents. In Thailand, LSD is regarded as a serious threat to the cattle industry. Disease forecasting can assist authorities in formulating prevention and control policies. Therefore, the objective of this study was to compare the performance of time series models in forecasting a potential LSD epidemic in Thailand using nationwide data. For the forecasting of daily new cases, fuzzy time series (FTS), neural network auto-regressive (NNAR), and auto-regressive integrated moving average (ARIMA) models were applied to various datasets representing the different stages of the epidemic. Non-overlapping sliding and expanding window approaches were also employed to train the forecasting models. The results showed that the FTS outperformed other models in five of the seven validation datasets based on various error metrics. The predictive performance of the NNAR and ARIMA models was comparable, with NNAR outperforming ARIMA in some datasets and vice versa. Furthermore, the performance of models built from sliding and expanding window techniques was different. This is the first study to compare the forecasting abilities of the FTS, NNAR, and ARIMA models across multiple phases of the LSD epidemic. Livestock authorities and decision-makers may incorporate the forecasting techniques demonstrated herein into the LSD surveillance system to enhance its functionality and utility.
块状皮肤病(LSD)是一种重要的跨界疾病,影响着各大洲众多国家的牛群。在泰国,块状皮肤病被视为对养牛业的严重威胁。疾病预测有助于当局制定预防和控制政策。因此,本研究的目的是比较时间序列模型在使用全国性数据预测泰国潜在块状皮肤病流行方面的性能。 对于每日新发病例的预测,采用模糊时间序列(FTS)、神经网络自回归(NNAR)和自回归综合移动平均(ARIMA)模型对代表疫情不同阶段的各种数据集进行预测。还采用了非重叠滑动和扩展窗口方法来训练预测模型。结果表明,基于各种误差指标,FTS 在七个验证数据集中的五个中表现优于其他模型。NNAR 和 ARIMA 模型的预测性能相当,在某些数据集中 NNAR 优于 ARIMA,反之亦然。此外,滑动窗口和扩展窗口技术构建的模型的性能不同。这是首次比较 FTS、NNAR 和 ARIMA 模型在 LSD 疫情多个阶段的预测能力的研究。牲畜当局和决策者可以将本文中展示的预测技术纳入 LSD 监测系统,以增强其功能和实用性。