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Nurse forecasting in Europe (RN4CAST): Rationale, design and methodology.

Authors :
Sermeus, W.
Aiken, L.H.
Heede, K. Van den
Rafferty, A.M.
Griffiths, P.
Moreno-Casbas, M.T.
Busse, R.
Lindqvist, R.
Scott, A.P.
Bruyneel, L.
Brzostek, T.
Kinnunen, J.
Schubert, M.
Schoonhoven, L.
Zikos, D.
Sermeus, W.
Aiken, L.H.
Heede, K. Van den
Rafferty, A.M.
Griffiths, P.
Moreno-Casbas, M.T.
Busse, R.
Lindqvist, R.
Scott, A.P.
Bruyneel, L.
Brzostek, T.
Kinnunen, J.
Schubert, M.
Schoonhoven, L.
Zikos, D.
Source :
BMC Nursing; 6; 6; 1472-6955; vol. 10; ~BMC Nursing~6~6~~~1472-6955~~10~~
Publication Year :
2011

Abstract

Contains fulltext : 97171.pdf (postprint version ) (Open Access)<br />BACKGROUND: Current human resources planning models in nursing are unreliable and ineffective as they consider volumes, but ignore effects on quality in patient care. The project RN4CAST aims innovative forecasting methods by addressing not only volumes, but quality of nursing staff as well as quality of patient care. METHODS/DESIGN: A multi-country, multilevel cross-sectional design is used to obtain important unmeasured factors in forecasting models including how features of hospital work environments impact on nurse recruitment, retention and patient outcomes. In each of the 12 participating European countries, at least 30 general acute hospitals were sampled. Data are gathered via four data sources (nurse, patient and organizational surveys and via routinely collected hospital discharge data). All staff nurses of a random selection of medical and surgical units (at least 2 per hospital) were surveyed. The nurse survey has the purpose to measure the experiences of nurses on their job (e.g. job satisfaction, burnout) as well as to allow the creation of aggregated hospital level measures of staffing and working conditions. The patient survey is organized in a sub-sample of countries and hospitals using a one-day census approach to measure the patient experiences with medical and nursing care. In addition to conducting a patient survey, hospital discharge abstract datasets will be used to calculate additional patient outcomes like in-hospital mortality and failure-to-rescue. Via the organizational survey, information about the organizational profile (e.g. bed size, types of technology available, teaching status) is collected to control the analyses for institutional differences.This information will be linked via common identifiers and the relationships between different aspects of the nursing work environment and patient and nurse outcomes will be studied by using multilevel regression type analyses. These results will be used to simulate the impact of changing dif

Details

Database :
OAIster
Journal :
BMC Nursing; 6; 6; 1472-6955; vol. 10; ~BMC Nursing~6~6~~~1472-6955~~10~~
Publication Type :
Electronic Resource
Accession number :
edsoai.on1284109631
Document Type :
Electronic Resource