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Does Breast Cancer Drive the Building of Survival Probability Models among States? An Assessment of Goodness of Fit for Patient Data from SEER Registries

机译:乳腺癌是否会推动国家之间的生存概率模型的建立?对来自SEER注册中心的患者数据的适合度评估

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Background: Breast cancer is a worldwide public health concern and is the most prevalent type of cancer in women in the United States. This study concerned the best fit of statistical probability models on the basis of survival times for nine state cancer registries: California, Connecticut, Georgia, Hawaii, Iowa, Michigan, New Mexico, Utah, and Washington. Materials and Methods: A probability random sampling method was applied to select and extract records of 2,000 breast cancer patients from the Surveillance Epidemiology and End Results (SEER) database for each of the nine state cancer registries used in this study. EasyFit software was utilized to identify the best probability models by using goodness of fit tests, and to estimate parameters for various statistical probability distributions that fit survival data. Results: Statistical analysis for the summary of statistics is reported for each of the states for the years 1973 to 2012. Kolmogorov-Smirnov, Anderson-Darling, and Chi-squared goodness of fit test values were used for survival data, the highest values of goodness of fit statistics being considered indicative of the best fit survival model for each state. Conclusions: It was found that California, Connecticut, Georgia, Iowa, New Mexico, and Washington followed the Burr probability distribution, while the Dagum probability distribution gave the best fit for Michigan and Utah, and Hawaii followed the Gamma probability distribution. These findings highlight differences between states through selected sociodemographic variables and also demonstrate probability modeling differences in breast cancer survival times. The results of this study can be used to guide healthcare providers and researchers for further investigations into social and environmental factors in order to reduce the occurrence of and mortality due to breast cancer.
机译:背景:乳腺癌是世界范围内公共卫生关注的问题,并且是美国女性中最普遍的癌症类型。这项研究涉及基于九个州癌症登记处生存时间的统计概率模型的最佳拟合:加利福尼亚州,康涅狄格州,乔治亚州,夏威夷州,爱荷华州,密歇根州,新墨西哥州,犹他州和华盛顿州。材料和方法:采用概率随机抽样方法从本研究使用的9个州癌症登记处的监测流行病学和最终结果(SEER)数据库中选择和提取2,000名乳腺癌患者的记录。 EasyFit软件用于通过使用拟合优度检验来确定最佳概率模型,并估算适合生存数据的各种统计概率分布的参数。结果:报告了每个州1973年至2012年的统计摘要,进行了统计分析。Kolmogorov-Smirnov,Anderson-Darling和卡方拟合优度检验值用于生存数据,其中最高值拟合优度统计数据被认为是每种状态下最佳拟合生存模型的指示。结论:发现加州,康涅狄格州,乔治亚州,爱荷华州,新墨西哥州和华盛顿州遵循伯尔概率分布,而达格姆概率分布最适合密歇根州和犹他州,夏威夷州遵循伽马概率分布。这些发现通过选定的社会人口统计学变量突出显示了各州之间的差异,也证明了乳腺癌生存时间的概率模型差异。这项研究的结果可用于指导医疗保健提供者和研究人员进一步研究社会和环境因素,以减少乳腺癌的发生和死亡率。

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