Fudan University School of Public Health, Shanghai, 200032, China.
Key Laboratory of Public Health Safety, Fudan University, Ministry of Education, Shanghai, 200032, China.
Parasit Vectors. 2023 Oct 23;16(1):377. doi: 10.1186/s13071-023-05952-5.
Oncomelania hupensis is the sole intermediate host of Schistosoma japonicum. Its emergence and recurrence pose a constant challenge to the elimination of schistosomiasis in China. It is important to accurately predict the snail distribution for schistosomiasis prevention and control.
Data describing the distribution of O. hupensis in 2016 was obtained from the Yunnan Institute of Endemic Disease Control and Prevention. Eight machine learning algorithms, including eXtreme Gradient Boosting (XGB), support vector machine (SVM), random forest (RF), generalized boosting model (GBM), neural network (NN), classification and regression trees (CART), k-nearest neighbors (KNN), and generalized additive model (GAM), were employed to explore the impacts of climatic, geographical, and socioeconomic variables on the distribution of suitable areas for O. hupensis. Predictions of the distribution of suitable areas for O. hupensis were made for various periods (2030s, 2050s, and 2070s) under different climate scenarios (SSP126, SSP245, SSP370, and SSP585).
The RF model exhibited the best performance (AUC: 0.991, sensitivity: 0.982, specificity: 0.995, kappa: 0.942) and the CART model performed the worst (AUC: 0.884, sensitivity: 0.922, specificity: 0.943, kappa: 0.829). Based on the RF model, the top six important variables were as follows: Bio15 (precipitation seasonality) (33.6%), average annual precipitation (25.2%), Bio2 (mean diurnal temperature range) (21.7%), Bio19 (precipitation of the coldest quarter) (14.5%), population density (13.5%), and night light index (11.1%). The results demonstrated that the overall suitable habitats for O. hupensis were predominantly distributed in the schistosomiasis-endemic areas located in northwestern Yunnan Province under the current climate situation and were predicted to expand north- and westward due to climate change.
This study showed that the prediction of the current distribution of O. hupensis corresponded well with the actual records. Furthermore, our study provided compelling evidence that the geographical distribution of snails was projected to expand toward the north and west of Yunnan Province in the coming decades, indicating that the distribution of snails is driven by climate factors. Our findings will be of great significance for formulating effective strategies for snail control.
钉螺是日本血吸虫唯一的中间宿主。其出现和重现给中国血吸虫病的消除带来了持续的挑战。准确预测钉螺的分布对于血吸虫病的防治至关重要。
从云南省地方病防治所获得了 2016 年钉螺分布数据。使用了 8 种机器学习算法,包括极端梯度提升(XGB)、支持向量机(SVM)、随机森林(RF)、广义增强模型(GBM)、神经网络(NN)、分类回归树(CART)、k 最近邻(KNN)和广义加性模型(GAM),探讨气候、地理和社会经济变量对钉螺适宜区分布的影响。在不同气候情景(SSP126、SSP245、SSP370 和 SSP585)下,对不同时期(2030 年代、2050 年代和 2070 年代)的钉螺适宜区分布进行了预测。
RF 模型表现最佳(AUC:0.991,灵敏度:0.982,特异性:0.995,kappa:0.942),CART 模型表现最差(AUC:0.884,灵敏度:0.922,特异性:0.943,kappa:0.829)。基于 RF 模型,前六个重要变量如下:生物 15(降水季节性)(33.6%)、年平均降水量(25.2%)、生物 2(日平均温度范围)(21.7%)、生物 19(最冷月降水量)(14.5%)、人口密度(13.5%)和夜间灯光指数(11.1%)。结果表明,在当前气候条件下,钉螺的适宜生境主要分布在云南省西北部的血吸虫病流行地区,预计由于气候变化,这些地区将向北和向西扩展。
本研究表明,当前钉螺分布的预测与实际记录相符。此外,本研究有力地证明了在未来几十年,云南省钉螺的地理分布将向北和向西扩展,表明钉螺的分布受气候因素驱动。我们的研究结果对于制定有效的钉螺控制策略具有重要意义。