Prediction on the spatial distribution of the seropositive rate of schistosomiasis in Hunan Province, China: a machine learning model integrated with the Kriging method.

IF 1.8 3区 医学 Q2 PARASITOLOGY
Ning Xu, Yu Cai, Yixin Tong, Ling Tang, Yu Zhou, Yanfeng Gong, Junhui Huang, Jiamin Wang, Yue Chen, Qingwu Jiang, Mao Zheng, Yibiao Zhou
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Abstract

Schistosomiasis remains a formidable challenge to global public health. This study aims to predict the spatial distribution of schistosomiasis seropositive rates in Hunan Province, pinpointing high-risk transmission areas and advocating for tailored control measures in low-endemic regions. Six machine learning models and their corresponding hybrid machine learning-Kriging models were employed to predict the seropositive rate. The optimal model was selected through internal and external validations to simulate the spatial distribution of seropositive rates. Our results showed that the hybrid machine learning-Kriging model demonstrated superior predictive performance compared to basic machine learning model and the Cubist-Kriging model emerged as the most optimal model for this study. The predictive map revealed elevated seropositive rates around Dongting Lake and its waterways with significant clustering, notably in the central and northern regions of Yiyang City and the northeastern areas of Changde City. The model identified gross domestic product, annual average wind speed and the nearest distance from the river as the top three predictors of seropositive rates, with annual average daytime surface temperature contributing the least. In conclusion, our research has revealed that integrating the Kriging method significantly enhances the predictive performance of machine learning models. We developed a Cubist-Kriging model with high predictive performance to forecast the spatial distribution of schistosomiasis seropositive rates. These findings provide valuable guidance for the precise prevention and control of schistosomiasis.

Abstract Image

中国湖南省血吸虫病血清阳性率空间分布预测:与克里金法相结合的机器学习模型。
血吸虫病仍然是全球公共卫生面临的一项严峻挑战。本研究旨在预测湖南省血吸虫病血清阳性率的空间分布,准确定位高危传播地区,并倡导在低流行地区采取有针对性的控制措施。研究采用了六个机器学习模型及其相应的混合机器学习-克里金模型来预测血清阳性率。通过内部和外部验证,选出了最佳模型来模拟血清阳性率的空间分布。结果表明,与基本机器学习模型相比,混合机器学习-克里金模型显示出更优越的预测性能,Cubist-克里金模型成为本研究的最优模型。预测图显示,洞庭湖及其水道周边地区血清阳性率升高,且具有明显的聚集性,尤其是益阳市中北部地区和常德市东北部地区。该模型发现,国内生产总值、年平均风速和与河流的最近距离是预测血清阳性率的前三位因素,而日间地表年平均温度的作用最小。总之,我们的研究表明,整合克里金法可显著提高机器学习模型的预测性能。我们开发的 Cubist-Kriging 模型预测血吸虫病血清阳性率的空间分布具有很高的预测性能。这些发现为血吸虫病的精准防控提供了宝贵的指导。
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来源期刊
Parasitology Research
Parasitology Research 医学-寄生虫学
CiteScore
4.10
自引率
5.00%
发文量
346
审稿时长
6 months
期刊介绍: The journal Parasitology Research covers the latest developments in parasitology across a variety of disciplines, including biology, medicine and veterinary medicine. Among many topics discussed are chemotherapy and control of parasitic disease, and the relationship of host and parasite. Other coverage includes: Protozoology, Helminthology, Entomology; Morphology (incl. Pathomorphology, Ultrastructure); Biochemistry, Physiology including Pathophysiology; Parasite-Host-Relationships including Immunology and Host Specificity; life history, ecology and epidemiology; and Diagnosis, Chemotherapy and Control of Parasitic Diseases.
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