Shin Hye Park1, Mary A Blegen, Joanne Spetz, Susan A Chapman, Holly A De Groot. 1. *National Database of Nursing Quality Indicators, School of Nursing, University of Kansas Medical Center, Kansas City, KS †Department of Community Health Systems, School of Nursing ‡Philip R. Lee Institute for Health Policy Studies §Department of Social and Behavioral Sciences, School of Nursing ∥Department of Community Health Systems, School of Nursing, University of California, San Francisco ¶Catalyst Systems, LLC, Novato, CA.
Abstract
BACKGROUND: Investigators have used a variety of operational definitions of nursing hours of care in measuring nurse staffing for health services research. However, little is known about which approach is best for nurse staffing measurement. OBJECTIVE: To examine whether various nursing hours measures yield different model estimations when predicting patient outcomes and to determine the best method to measure nurse staffing based on the model estimations. DATA SOURCES/ SETTING: We analyzed data from the University HealthSystem Consortium for 2005. The sample comprised 208 hospital-quarter observations from 54 hospitals, representing information on 971 adult-care units and about 1 million inpatient discharges. METHODS: We compared regression models using different combinations of staffing measures based on productive/nonproductive and direct-care/indirect-care hours. Akaike Information Criterion and Bayesian Information Criterion were used in the assessment of staffing measure performance. RESULTS: The models that included the staffing measure calculated from productive hours by direct-care providers were best, in general. However, the Akaike Information Criterion and Bayesian Information Criterion differences between models were small, indicating that distinguishing nonproductive and indirect-care hours from productive direct-care hours does not substantially affect the approximation of the relationship between nurse staffing and patient outcomes. CONCLUSIONS: This study is the first to explicitly evaluate various measures of nurse staffing. Productive hours by direct-care providers are the strongest measure related to patient outcomes and thus should be preferred in research on nurse staffing and patient outcomes.
BACKGROUND: Investigators have used a variety of operational definitions of nursing hours of care in measuring nurse staffing for health services research. However, little is known about which approach is best for nurse staffing measurement. OBJECTIVE: To examine whether various nursing hours measures yield different model estimations when predicting patient outcomes and to determine the best method to measure nurse staffing based on the model estimations. DATA SOURCES/ SETTING: We analyzed data from the University HealthSystem Consortium for 2005. The sample comprised 208 hospital-quarter observations from 54 hospitals, representing information on 971 adult-care units and about 1 million inpatient discharges. METHODS: We compared regression models using different combinations of staffing measures based on productive/nonproductive and direct-care/indirect-care hours. Akaike Information Criterion and Bayesian Information Criterion were used in the assessment of staffing measure performance. RESULTS: The models that included the staffing measure calculated from productive hours by direct-care providers were best, in general. However, the Akaike Information Criterion and Bayesian Information Criterion differences between models were small, indicating that distinguishing nonproductive and indirect-care hours from productive direct-care hours does not substantially affect the approximation of the relationship between nurse staffing and patient outcomes. CONCLUSIONS: This study is the first to explicitly evaluate various measures of nurse staffing. Productive hours by direct-care providers are the strongest measure related to patient outcomes and thus should be preferred in research on nurse staffing and patient outcomes.
Authors: Andrew W Dick; Meghan T Murray; Ashley M Chastain; Elizabeth A Madigan; Mark Sorbero; Patricia W Stone; Jingjing Shang Journal: J Am Geriatr Soc Date: 2019-05-07 Impact factor: 5.562
Authors: Pamela B de Cordova; Terry Jones; Kathryn A Riman; Jeannette Rogowski; Matthew D McHugh Journal: J Nurs Care Qual Date: 2020 Oct/Dec Impact factor: 1.728