4.4 Article

Algorithmic hospital catchment area estimation using label propagation

期刊

BMC HEALTH SERVICES RESEARCH
卷 22, 期 1, 页码 -

出版社

BMC
DOI: 10.1186/s12913-022-08127-7

关键词

Catchment area; Covid-19

资金

  1. EPSRC [EP/P01660X/1, EP/N014391/1]
  2. Alan Turing Institute under the EPSRC [EP/N510129/1, EP/T017856/1]
  3. NHS England, Global Digital Exemplar programme
  4. MRC [MC/PC/19067]
  5. ESRC postdoctoral fellowship [ES/T009101/1]

向作者/读者索取更多资源

This article presents a label propagation algorithm for estimating hospital catchment areas. The algorithm uses the capacity of the hospital and demographics of the nearby population to divide the geographic regions into catchment areas related to a single hospital or a group of hospitals, providing contiguous and realistic subdivisions. Validation against an alternative approach during the COVID-19 outbreak in the UK shows that the label propagation algorithm performs with a high level of agreement and accuracy.
Background Hospital catchment areas define the primary population of a hospital and are central to assessing the potential demand on that hospital, for example, due to infectious disease outbreaks. Methods We present a novel algorithm, based on label propagation, for estimating hospital catchment areas, from the capacity of the hospital and demographics of the nearby population, and without requiring any data on hospital activity. Results The algorithm is demonstrated to produce a mapping from fine grained geographic regions to larger scale catchment areas, providing contiguous and realistic subdivisions of geographies relating to a single hospital or to a group of hospitals. In validation against an alternative approach predicated on activity data gathered during the COVID-19 outbreak in the UK, the label propagation algorithm is found to have a high level of agreement and perform at a similar level of accuracy. Results The algorithm can be used to make estimates of hospital catchment areas in new situations where activity data is not yet available, such as in the early stages of a infections disease outbreak.

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