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Geography of spatial utilization of the health services: a Newtonian modelling of hospital catchment areas.

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Géographie de l'utilisation spatiale des services de santé: une modélisation newtonienne des zones de recrutement des hôpitaux.

Document type :
Autre communication scientifique (congrès sans actes - poster - séminaire...): Communication dans un congrès sans actes
Link :
https://lilloa.univ-lille.fr/handle/20.500.12210/29187
Title :
Geography of spatial utilization of the health services: a Newtonian modelling of hospital catchment areas.
Géographie de l'utilisation spatiale des services de santé: une modélisation newtonienne des zones de recrutement des hôpitaux.
Author(s) :
QUESNEL-BARBET, Anne [Auteur] refId
Conference title :
Emerging and New Research in Geographies of Health and Impairment
City :
DURHAM
Country :
Royaume-Uni
Start date of the conference :
2009-04-06
Volume number :
14
Publication date :
2009
Keyword(s) :
Catchment Area
Spatial Practices
Gravitational ModeL K-Means Algorithm
Planning Modelling Process
HAL domain(s) :
Sciences de l'Homme et Société/Géographie
English abstract : [en]
Modelling hospital attraction is a major interest for healthcare planners, The impacts of any project can therefore be analyzed prospectively. Our aim is to build an efficient tool for observation, simulation and prediction ...
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Modelling hospital attraction is a major interest for healthcare planners, The impacts of any project can therefore be analyzed prospectively. Our aim is to build an efficient tool for observation, simulation and prediction of hospital catchment areas by medical field for health policy makers. The study covers the French Nord - Pas-de-Calais region (four million inhabitants) for the evaluation of onco-haematology and Trauma orthopedics care activities with the French Medical Program of Information System (PMSI). Our geographical and mathematical model is based on the hypothesis: there is a link between recourse to health care and distance in km or in time. The "principle of least effort" is expected to hold for peripheral hospitals (non-university hospitals). We have improved Reilly's formula by using usual weight (number of beds) and also refining parameters (calculated population from one of the both algorithms: Relative Neighborhood Graph and K-means calculations). So we propose a modelling Process of the spatial health services utilization in four parts. The first phase is a descriptive geographic study from the observed situation of the catchment area, which is completed by a descriptive study of a few haematology departments. The second phase concerns the implementation of our geographical and mathematical model. In the third phase we compare the observed situations with those predicted by our model. The last part is devoted to the spatial prediction of the attraction using a simulation model for reorganization with opening closing and aggregation of health services. After comparison and simulation steps out model appears to be robust, reliable and predictive and along with a better knowledge of the spatial utilization by specialty. It can be a new tool for development and management in health care districts and could be integrated inside a geomatics platform or\/and GIS.Show less >
Language :
Anglais
Audience :
Internationale
Popular science :
Non
Administrative institution(s) :
CHU Lille
Université de Lille
Collections :
  • METRICS : Evaluation des technologies de santé et des pratiques médicales - ULR 2694
Submission date :
2020-06-08T14:10:20Z
Université de Lille

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