Literature DB >> 18581820

Managing an emergency department by analysing HIS medical data: a focus on elderly patient clinical pathways.

Delphine Rossille1, Marc Cuggia, Aude Arnault, Jacques Bouget, Pierre Le Beux.   

Abstract

INTRODUCTION: The objective of this paper is to present complementary views of the activity of the emergency department for a specific group of patients. Once validated, these views will be used as decision support tools for better managing the department and providing better care delivery for this population. The views are produced from the data stored in Healthcare Information Systems that correspond potentially to a vast source of information for supporting decisions on management or public health issues.
METHOD: The study focuses on two groups of patients: the elderly population (over 75-years-old) and the under 75-year-old patients, at the Rennes hospital. The validation of the views is performed by comparing results for the two distinct groups. Relevant data were extracted from the Emergency Department database. Several analysis (like cusum chart) and representation tools (Graphviz) were used to study the patients' pathways, the dynamics of arrivals and the patients' characteristics.
RESULTS: The representations provided a synthetic, global and comprehensive view of the department activities, to the satisfaction of the clinicians. The study showed that ICD-10 coding, assigned at the patient's departure from the emergency department hence from all available known clinical data, is not appropriate for the elderly population as these patients are mainly diagnosed by "symptoms" and several solutions are proposed. Finally, it is stressed out that a proper delivery of care to elderly patients should require some level of scheduling in the emergency department that is by essence characterized by its non scheduled activity.

Entities:  

Mesh:

Year:  2008        PMID: 18581820     DOI: 10.1007/s10729-008-9059-6

Source DB:  PubMed          Journal:  Health Care Manag Sci        ISSN: 1386-9620


  9 in total

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2.  Improved coding of the primary reason for visit to the emergency department using SNOMED.

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8.  An automated, broad-based, near real-time public health surveillance system using presentations to hospital Emergency Departments in New South Wales, Australia.

Authors:  David J Muscatello; Tim Churches; Jill Kaldor; Wei Zheng; Clayton Chiu; Patricia Correll; Louisa Jorm
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  9 in total
  1 in total

1.  Addressing overcrowding in an emergency department: an approach for identifying and treating influential factors and a real-life application.

Authors:  Guy Wachtel; Amir Elalouf
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  1 in total

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