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A Place-Oriented, Mixed-Level Regionalization Method for Constructing Geographic Areas in Health Data Dissemination and Analysis

机译:在卫生数据发布和分析中构建地理区域的面向位置的混合级别区域化方法

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摘要

Similar geographic areas often have great variations in population size. In health data management and analysis, it is desirable to obtain regions of comparable population by decomposing areas of large population (to gain more spatial variability) and merging areas of small population (to mask privacy of data). Based on the Peano curve algorithm and modified scale-space clustering, this research proposes a mixed-level regionalization (MLR) method to construct geographic areas with comparable population. The method accounts for spatial connectivity and compactness, attributive homogeneity, and exogenous criteria such as minimum (and approximately equal) population or disease counts. A case study using Louisiana cancer data illustrates the MLR method and its strengths and limitations. A major benefit of the method is that most upper level geographic boundaries can be preserved to increase familiarity of constructed areas. Therefore, the MLR method is more human-oriented and place-based than computer-oriented and space-based.
机译:相似的地理区域通常在人口规模上有很大的差异。在健康数据管理和分析中,希望通过分解大人口区域(以获得更大的空间可变性)和合并小人口区域(以掩盖数据的隐私)来获得可比较人口的区域。基于Peano曲线算法和改进的尺度空间聚类,本研究提出了一种混合层次的区域化(MLR)方法来构建人口可比的地理区域。该方法考虑了空间连通性和紧凑性,归因同质性以及诸如最小(和大约相等)人口或疾病计数之类的外生标准。使用路易斯安那州癌症数据进行的案例研究说明了MLR方法及其优势和局限性。该方法的主要优点是可以保留大多数较高级别的地理边界,以提高对构造区域的熟悉程度。因此,MLR方法比面向计算机和基于空间的方法更加面向人类和基于位置。

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