| Literature DB >> 26251551 |
Lan Mu1, Fahui Wang2, Vivien W Chen3, Xiao-Cheng Wu3.
Abstract
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.Entities:
Keywords: health data analysis; mixed-level regionalization (MLR); modified Peano curve algorithm (MPC); modified scale-space clustering (MSSC); place-oriented, space and place
Year: 2014 PMID: 26251551 PMCID: PMC4523277 DOI: 10.1080/00045608.2014.968910
Source DB: PubMed Journal: Ann Assoc Am Geogr ISSN: 0004-5608