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Liver Cancer Incidence and Area-Level Geographic Disparities in Pennsylvania—A Geo-Additive Approach

机译:宾夕法尼亚州的肝癌发病率和面积级地理差异 - 一种地质添加剂方法

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摘要

Many neighborhood socioeconomic index measures (nSES) that capture neighborhood deprivation exist but the impact of measure selection on liver cancer (LC) geographic disparities remains unclear. We introduce a Bayesian geoadditive modeling approach to identify clusters in Pennsylvania (PA) with higher than expected LC incidence rates, adjusted for individual-level factors (age, sex, race, diagnosis year) and compared them to models with 7 different nSES index measures to elucidate the impact of nSES and measure selection on LC geospatial variation. LC cases diagnosed from 2007–2014 were obtained from the PA Cancer Registry and linked to nSES measures from U.S. census at the Census Tract (CT) level. Relative Risks (RR) were estimated for each CT, adjusted for individual-level factors (baseline model). Each nSES measure was added to the baseline model and changes in model fit, geographic disparity and state-wide RR ranges were compared. All 7 nSES measures were strongly associated with high risk clusters. Tract-level RR ranges and geographic disparity from the baseline model were attenuated after adjustment for nSES measures. Depending on the nSES measure selected, up to 60% of the LC burden could be explained, suggesting methodologic evaluations of multiple nSES measures may be warranted in future studies to inform LC prevention efforts.
机译:许多社区社会经济指标措施(NSE)存在捕获邻域剥夺的措施,但测量选择对肝癌(LC)地理差异的影响尚不清楚。我们介绍了贝叶斯Geoadditive建模方法,以识别宾夕法尼亚州(PA)的簇,高于预期的LC发病率,适用于个性级别因素(年龄,性别,种族,诊断年),并将其与7种不同的NSE指数措施进行比较阐明NSE的影响和测量选择对LC地理空间变异的影响。诊断为2007 - 2014年的LC病例从PA癌症登记处获得,并与美国人口普查的NSES措施联系在人口普查(CT)水平。为每个CT估计相对风险(RR),调整为个体级别因子(基线模型)。将每个NSE测量添加到基线模型中,并比较模型拟合,地理差距和全宽RR范围的变化。所有7个NSES措施都与高风险集群密切相关。在对NSES措施进行调整后,基线模型的道路级RR范围和来自基线模型的地理差异。根据所选的NSES措施,可以解释高达60%的LC负担,建议在未来的研究中可能有权向LC预防努力提供多个NSES措施的方法评估。

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