Optimized strategy for schistosomiasis elimination: results from marginal benefit modeling

Author:

Li Qin,Zheng Jin-Xin,Jia Tie-Wu,Feng Xin-Yu,Lv Chao,Zhang Li-Juan,Yang Guo-Jing,Xu Jing,Zhou Xiao-Nong

Abstract

Abstract Background Poverty contributes to the transmission of schistosomiasis via multiple pathways, with the insufficiency of appropriate interventions being a crucial factor. The aim of this article is to provide more economical and feasible intervention measures for endemic areas with varying levels of poverty. Methods We collected and analyzed the prevalence patterns along with the cost of control measures in 11 counties over the last 20 years in China. Seven machine learning models, including XGBoost, support vector machine, generalized linear model, regression tree, random forest, gradient boosting machine and neural network, were used for developing model and calculate marginal benefits. Results The XGBoost model had the highest prediction accuracy with an R2 of 0.7308. Results showed that risk surveillance, snail control with molluscicides and treatment were the most effective interventions in controlling schistosomiasis prevalence. The best combination of interventions was interlacing seven interventions, including risk surveillance, treatment, toilet construction, health education, snail control with molluscicides, cattle slaughter and animal chemotherapy. The marginal benefit of risk surveillance is the most effective intervention among nine interventions, which was influenced by the prevalence of schistosomiasis and cost. Conclusions In the elimination phase of the national schistosomiasis program, emphasizing risk surveillance holds significant importance in terms of cost-saving. Graphical Abstract

Funder

National Key Research and Development Program of China

Department of S&T, Shanghai Municipality Government

Publisher

Springer Science and Business Media LLC

Subject

Infectious Diseases,Parasitology,General Veterinary

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