Modifiable Areal Unit Problems for Infectious Disease Cases Described in Medicare and Medicaid Claims, 2016-2019.

Journal of bacteriology & parasitology Pub Date : 2024-01-01 Epub Date: 2024-05-13
Nick Williams
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Abstract

Introduction: Modifiable Areal Unit Problems are a major source of spatial uncertainty, but their impact on infectious diseases and epidemic detection is unknown.

Methods: CMS claims (2016-2019) which included infectious disease codes learned through Systematized Nomenclature of Medicine Clinical Terms (SNOMED CT) were extracted and analysed at two different units of geography; states and 'home to work commute extent' mega regions. Analysis was per member per month. Rolling average above the series median within geography and agent of infection was used to assess peak detection. Spatial random forest was used to assess region segmentation by agent of infection.

Results: Mega-regions produced better peak discovery for most, but not all agents of infection. Variable importance and Gini measures from spatial random forest show agent-location discrimination between states and regions.

Conclusion: Researchers should defend their geographic unit of report used in peer review studies on an agent by-agent basis.

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2016-2019年医疗保险和医疗补助索赔中描述的传染病病例的可修改面积单位问题
可修改的面积单位问题是空间不确定性的主要来源,但它们对传染病和流行病检测的影响是未知的。方法:在两个不同的地理单元提取和分析CMS索赔(2016-2019),其中包括通过医学临床术语系统化命名法(SNOMED CT)学习的传染病代码;州和“家到工作的通勤范围”的超级地区。分析是按每个会员每月进行的。在地理和感染因子范围内高于序列中位数的滚动平均值用于评估峰值检测。采用空间随机森林法评价病原菌对区域的分割。结果:大区域对大多数感染因子产生了更好的峰值发现,但不是所有感染因子。空间随机森林的变量重要性和基尼系数显示了国家和地区之间的代理位置歧视。结论:研究人员应该捍卫他们在同行评议研究中使用的地理单位报告。
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Modifiable Areal Unit Problems for Infectious Disease Cases Described in Medicare and Medicaid Claims, 2016-2019.
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