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基于贝叶斯统计的胃癌空间趋势及影响因素研究——以中国山西省为例

Exploring Spatial Trends and Influencing Factors for Gastric Cancer Based on Bayesian Statistics: A Case Study of Shanxi, China.

机构信息

Medical Imaging Department, Shanxi Medical University, Taiyuan 030001, Shanxi, China.

School of Statistics, Shanxi University of Finance and Economics, Taiyuan 030006, Shanxi, China.

出版信息

Int J Environ Res Public Health. 2018 Aug 23;15(9):1824. doi: 10.3390/ijerph15091824.

Abstract

Gastric cancer (GC) is the fourth most common type of cancer and the second leading cause of cancer-related deaths worldwide. To detect the spatial trends of GC risk based on hospital-diagnosed patients, this study presented a selection probability model and integrated it into the Bayesian spatial statistical model. Then, the spatial pattern of GC risk in Shanxi Province in north central China was estimated. In addition, factors influencing GC were investigated mainly using the Bayesian Lasso model. The spatial variability of GC risk in Shanxi has the conspicuous feature of being 'high in the south and low in the north'. The highest GC relative risk was 1.291 (95% highest posterior density: 0.789⁻4.002). The univariable analysis and Bayesian Lasso regression results showed that a diverse dietary structure and increased consumption of beef and cow milk were significantly ( ≤ 0.08) and in high probability (greater than 68%) negatively associated with GC risk. Pork production per capita has a positive correlation with GC risk. Moreover, four geographic factors, namely, temperature, terrain, vegetation cover, and precipitation, showed significant ( < 0.05) associations with GC risk based on univariable analysis, and associated with GC risks in high probability (greater than 60%) inferred from Bayesian Lasso regression model.

摘要

胃癌(GC)是全球第四大常见癌症类型,也是癌症相关死亡的第二大主要原因。为了根据医院诊断的患者检测 GC 风险的空间趋势,本研究提出了一种选择概率模型,并将其整合到贝叶斯空间统计模型中。然后,估计了中国中北部山西省的 GC 风险的空间模式。此外,主要使用贝叶斯套索模型研究了影响 GC 的因素。山西省 GC 风险的空间变异性具有“南高北低”的明显特征。GC 的最高相对风险为 1.291(95%最高后验密度:0.789⁻4.002)。单变量分析和贝叶斯套索回归结果表明,多样化的饮食结构和增加牛肉和牛奶的消费与 GC 风险呈显著(≤0.08)和高概率(大于 68%)负相关。人均猪肉产量与 GC 风险呈正相关。此外,基于单变量分析,四个地理因素(温度、地形、植被覆盖和降水)与 GC 风险显著相关(<0.05),并根据贝叶斯套索回归模型推断出与 GC 风险相关的高概率(大于 60%)。

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