Literature DB >> 18616052

Evidence-based staffing: potential roles for informatics.

Sookyung Hyun1, Suzanne Bakken, Kathy Douglas, Patricia W Stone.   

Abstract

Over the last 15 years, evidence has been accumulating relating higher levels of nurse staffing in both quantity and experience to lower rates of adverse patient outcomes. Consequently, to promote quality patient outcomes efficiently, making staffing decisions based in evidence is of increasing importance. However, there is still limited data to help decide how to effectively allocate scarce nurse resources in practice. Existing principles, frameworks, and guidelines provide a foundation for nurse staffing decisions but face poor adoption. To determine optimal nurse staffing practices and provide evidence-based recommendations for policy, and integration into operations, comprehensive data are necessary. Information technology can assist nurse staffing decisions. Four informatics processes that may support evidence-based nurse staffing are described: (a) Data acquisition from multiple data sources, (b) Representation of data in a way it can be re-used for multiple purposes, (c) Sophisticated data processing and mining, and (d) Presentation of data in standardized and user-configurable ways.

Entities:  

Mesh:

Year:  2008        PMID: 18616052      PMCID: PMC4440797     

Source DB:  PubMed          Journal:  Nurs Econ        ISSN: 0746-1739            Impact factor:   1.085


  61 in total

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Journal:  Nurs Econ       Date:  1998 Jul-Aug       Impact factor: 1.085

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Authors:  L M Walts; A S Kapadia
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5.  Outcomes of variation in hospital nurse staffing in English hospitals: cross-sectional analysis of survey data and discharge records.

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Journal:  Int J Nurs Stud       Date:  2006-10-24       Impact factor: 5.837

6.  Using medical language processing to support real-time evaluation of pneumonia guidelines.

Authors:  M Fiszman; P J Haug
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Review 7.  Acuity systems dialogue and patient classification system essentials.

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Journal:  Nurs Adm Q       Date:  2007 Oct-Dec

8.  The effects of nurse staffing on adverse events, morbidity, mortality, and medical costs.

Authors:  Sung-Hyun Cho; Shaké Ketefian; Violet H Barkauskas; Dean G Smith
Journal:  Nurs Res       Date:  2003 Mar-Apr       Impact factor: 2.381

Review 9.  Data mining issues and opportunities for building nursing knowledge.

Authors:  Linda Goodwin; Michele VanDyne; Simon Lin; Steven Talbert
Journal:  J Biomed Inform       Date:  2003 Aug-Oct       Impact factor: 6.317

10.  The implications of nurse staffing information: the real value of reporting nursing data.

Authors:  Gina Petrone Mumolie; Leo K Lichtig; Robert A Knauf
Journal:  Nurs Econ       Date:  2007 Jul-Aug       Impact factor: 1.085

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  2 in total

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Authors:  Ellen M Harper
Journal:  NI 2012 (2012)       Date:  2012-06-23

2.  Using the nursing interventions classification as a potential measure of nurse workload.

Authors:  Pamela B de Cordova; Robert J Lucero; Sookyung Hyun; Patricia Quinlan; Kwanza Price; Patricia W Stone
Journal:  J Nurs Care Qual       Date:  2010 Jan-Mar       Impact factor: 1.597

  2 in total

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