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2009 | 19 | 1 | 121-142

Article title

Metody zarządzania zasobami na przykładzie służby zdrowia

Selected contents from this journal

Title variants

EN
Methods of resource management – the case of healthcare

Languages of publication

PL

Abstracts

PL
W artykule przedstawiono i zanalizowano problem zarządzania zasobami w służbie zdrowia. Omówiono podstawowe zagadnienia w procesie alokacji zasobów medycznych. Zaprezentowano przykłady zastosowania wybranych metod: programowania matematycznego (liniowego, całkowitoliczbowego, celowego, sieciowego), teorii kolejek, modelowania symulacyjnego, systemów hybrydowych oraz standardowych metod kosztowo-efektywnościowych do analizy zagadnień, związanych z podziałem zasobów w systemach opieki zdrowotnej. Przedyskutowano użyteczność tych metod do rozwiązywania szczegółowych problemów dotyczących zarządzania zasobami medycznymi.
EN
Various issues referring to general problems of resource allocation in the area of healthcare were discussed in the article. Fundamental questions regarding the process of allocating healthcare resources were pointed out. The topics were presented according to the categories of methods used to potentially solve these problems. The following approaches were considered: chosen methods of mathematical programming, queuing theory, simulation, hybrid algorithms combining, among others, artificial intelligence and other techniques, as well as standard cost-effectiveness methods. Such methods were applied to the following problems: analyzing the current state of health care units and presenting proposals of changes to such systems. The modifications suggested referred to: allocation of material resources, planning the work schedules of medical personnel and patient admission. The question of determining the effectiveness of various medical strategies was also discussed. The article clearly underlined the importance and complexity of the problem of managing healthcare resources.

Year

Volume

19

Issue

1

Pages

121-142

Physical description

Contributors

  • Instytut Organizacji i Zarządzania, Politechnika Wrocławska, ul. Smoluchowskiego 25, 50-372 Wrocław, Poland
  • Instytut Organizacji i Zarządzania, Politechnika Wrocławska, ul. Smoluchowskiego 25, 50-372 Wrocław, Poland

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Document Type

Publication order reference

Identifiers

YADDA identifier

bwmeta1.element.desklight-a83c13e7-36e1-42d0-b89c-7fc5af5b8e7b
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