论文
论文题目: Spatial distribution of esophageal cancer mortality in China: a machine learning approach
第一作者: Liao Yilan, Li Chunlin, Xia Changfa, Zheng Rongshou, Xu Bing etc.
联系作者:
发表年度: 2021
摘  要:
英文摘要: Background: Esophageal cancer (EC) is one of the most common cancers, causing many people to die every year worldwide. Accurate estimations of the spatial distribution of EC are essential for effective cancer prevention. Methods: EC mortality surveillance data covering 964 surveyed counties in China in 2014 and three classes of auxiliary data, including physical condition, living habits and living environment data, were collected. Genetic programming (GP), a hierarchical Bayesian model and sandwich estimation were used to estimate the spatial distribution of female EC mortality. Finally, we evaluated the accuracy of the three mapping methods. Results: The results show that compared with the root square mean error (RMSE) of the hierarchical Bayesian model at 6.546 and the sandwich estimation at 7.611, the RMSE of GP is the lowest at 5.894. According to the distribution estimated by GP, themortality of female EC was low in some regions of Northeast China, Northwest China and southern China; in some regions downstream of the Yellow River Basin, north of the Yangtze River in the Yangtze River Basin and in Southwest China, the mortality rate was relatively high. Conclusions: This paper provides an accurate map of female ECmortality in China. A series of targeted preventive measures can be proposed based on the spatial disparities displayed on the map.
刊物名称: INTERNATIONAL HEALTH
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论文类别: SCI