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Detecting Space-Time Cancer Clusters Using Residential Histories

机译:使用居住史检测时空癌症群

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Methods for analyzing geographic clusters of disease typically ignore the space-time variability inherent in epidemiologic datasets, do not adequately account for known risk factors (e.g., smoking and education) or covariates (e.g., age, gender, and race), and do not permit investigation of the latency window between exposure and disease. Our research group recently developed Q-statistics for evaluating space-time clustering in cancer case-control studies with residential histories. This technique relies on time-dependent nearest neighbor relationships to examine clustering at any moment in the life-course of the residential histories of cases relative to that of controls. In addition, in place of the widely used null hypothesis of spatial randomness, each individual's probability of being a case is instead based on his/her risk factors and covariates. Case-control clusters will be presented using residential histories of 220 bladder cancer cases and 440 controls in Michigan. In preliminary analyses of this dataset, smoking, age, gender, race and education were sufficient to explain the majority of the clustering of residential histories of the cases. Clusters of unexplained risk, however, were identified surrounding the business address histories of 10 industries that emit known or suspected bladder cancer carcinogens. The clustering of 5 of these industries began in the 1970's and persisted through the 1990's. This systematic approach for evaluating space-time clustering has the potential to generate novel hypotheses about environmental risk factors. These methods may be extended to detect differences in space-time patterns of any two groups of people, making them valuable for security intelligence and surveillance operations.
机译:用于分析疾病地理集群的方法通常忽略了流行病学数据集固有的时空变异性,没有充分考虑已知的风险因素(例如吸烟和受教育程度)或协变量(例如年龄,性别和种族),并且没有允许调查暴露与疾病之间的潜伏期。我们的研究小组最近开发了Q统计量,用于评估具有居住历史的癌症病例对照研究中的时空聚类。该技术依赖于时间相关的最近邻居关系,以检查病例居住历史相对于对照生活史中任何时候的聚类情况。另外,代替每个人普遍使用的空间随机性零假设,每个人成为案例的概率都基于他/她的风险因素和协变量。将使用密歇根州220例膀胱癌病例和440例对照的居住史来介绍病例对照群。在对该数据集进行的初步分析中,吸烟,年龄,性别,种族和教育程度足以解释病例居住历史的大部分聚类。但是,围绕着释放已知或怀疑的膀胱癌致癌物的10个行业的企业地址历史记录,发现了无法解释的风险。这些行业中的5个行业的集群始于1970年代,并一直持续到1990年代。这种用于评估时空聚类的系统方法可能会产生有关环境风险因素的新假设。这些方法可以扩展为检测任何两组人的时空模式差异,从而使其对安全情报和监视操作有价值。

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