PURPOSE: The purpose of this research is twofold. The first purpose is to utilize a new methodology (Bayesian networks) for aggregating various quality indicators to measure the overall quality of care in nursing homes. The second is to provide new insight into the relationships that exist among various measures of quality and how such measures affect the overall quality of nursing home care as measured by the Observable Indicators of Nursing Home Care Quality Instrument. In contrast to many methods used for the same purpose, our method yields both qualitative and quantitative insight into nursing home care quality. DESIGN AND METHODS: We construct several Bayesian networks to study the influences among factors associated with the quality of nursing home care; we compare and measure their accuracy against other predictive models. RESULTS: We find the best Bayesian network to perform better than other commonly used methods. We also identify key factors, including number of certified nurse assistant hours, prevalence of bedfast residents, and prevalence of daily physical restraints, that significantly affect the quality of nursing home care. Furthermore, the results of our analysis identify their probabilistic relationships. IMPLICATIONS: The findings of this research indicate that nursing home care quality is most accurately represented through a mix of structural, process, and outcome measures of quality. We also observe that the factors affecting the quality of nursing home care collectively determine the overall quality. Hence, focusing on only key factors without addressing other related factors may not substantially improve the quality of nursing home care.
PURPOSE: The purpose of this research is twofold. The first purpose is to utilize a new methodology (Bayesian networks) for aggregating various quality indicators to measure the overall quality of care in nursing homes. The second is to provide new insight into the relationships that exist among various measures of quality and how such measures affect the overall quality of nursing home care as measured by the Observable Indicators of Nursing Home Care Quality Instrument. In contrast to many methods used for the same purpose, our method yields both qualitative and quantitative insight into nursing home care quality. DESIGN AND METHODS: We construct several Bayesian networks to study the influences among factors associated with the quality of nursing home care; we compare and measure their accuracy against other predictive models. RESULTS: We find the best Bayesian network to perform better than other commonly used methods. We also identify key factors, including number of certified nurse assistant hours, prevalence of bedfast residents, and prevalence of daily physical restraints, that significantly affect the quality of nursing home care. Furthermore, the results of our analysis identify their probabilistic relationships. IMPLICATIONS: The findings of this research indicate that nursing home care quality is most accurately represented through a mix of structural, process, and outcome measures of quality. We also observe that the factors affecting the quality of nursing home care collectively determine the overall quality. Hence, focusing on only key factors without addressing other related factors may not substantially improve the quality of nursing home care.
Authors: M J Rantz; M Zwygart-Stauffacher; L Popejoy; V T Grando; D R Mehr; L L Hicks; V S Conn; D Wipke-Tevis; R Porter; J Bostick; M Maas; J Scott Journal: J Nurs Care Qual Date: 1999-10 Impact factor: 1.597
Authors: M J Rantz; D R Mehr; G F Petroski; R W Madsen; L L Popejoy; L L Hicks; V S Conn; V T Grando; D D Wipke-Tevis; J Bostick; R Porter; M Zwygart-Stauffacher; M Maas Journal: J Nurs Care Qual Date: 2000-04 Impact factor: 1.597
Authors: Marilyn J Rantz; Mary Zwygart-Stauffacher; David R Mehr; Gregory F Petroski; Steven V Owen; Richard W Madsen; Marcia Flesner; Vicki Conn; Jane Bostick; Robyn Smith; Meridean Maas Journal: J Nurs Meas Date: 2006
Authors: Vikram R Comondore; P J Devereaux; Qi Zhou; Samuel B Stone; Jason W Busse; Nikila C Ravindran; Karen E Burns; Ted Haines; Bernadette Stringer; Deborah J Cook; Stephen D Walter; Terrence Sullivan; Otavio Berwanger; Mohit Bhandari; Sarfaraz Banglawala; John N Lavis; Brad Petrisor; Holger Schünemann; Katie Walsh; Neera Bhatnagar; Gordon H Guyatt Journal: BMJ Date: 2009-08-04