Ryan Ng1, Natasha Lane2,3, Peter Tanuseputro4,5,6,7, Nassim Mojaverian4, Robert Talarico4, Walter P Wodchis2,3,8, Susan E Bronskill2,3,9, Amy T Hsu4,5,6. 1. Dalla Lana School of Public Health, University of Toronto, Toronto, Ontario, Canada. 2. Institute of Health Policy, Management and Evaluation, University of Toronto, Toronto, Ontario, Canada. 3. Institute for Clinical Evaluative Sciences (ICES), Toronto, Ontario, Canada. 4. ICES uOttawa, The Ottawa Hospital Research Institute, Ottawa, Ontario, Canada. 5. The Ottawa Hospital Research Institute, Ottawa, Ontario, Canada. 6. Bruyère Research Institute, Ottawa, Ontario, Canada. 7. Department of Medicine, Division of Palliative Care, University of Ottawa, Ottawa, Ontario, Canada. 8. Institute for Better Health, Trillium Health Partners, Mississauga, Ontario, Canada. 9. Women's College Research Institute, Toronto, Ontario, Canada.
Abstract
OBJECTIVES: The main objective of the study was to investigate annual changes in the sociodemographic characteristics, morbidity, and functional status of new nursing home residents in Ontario, Canada, between 2000 and 2015. A secondary objective was to develop and assess the quality of an algorithm for ascertaining admissions into publicly funded nursing homes in Ontario using a combination of health administrative data sources that indirectly identifies the residential status of new nursing home residents. DESIGN: Population-based serial cross-sectional study with an accompanying quality assessment study of algorithms. SETTING: Publicly funded nursing care homes in Ontario, Canada. PARTICIPANTS: The reference standard for the assessment of algorithm performance was 21 544 newly admitted nursing home residents identified from the Resident Assessment Instrument-Minimum Data Set in 2012. The selected algorithm was then used to identify serial cross-sectional cohorts of newly admitted residents between 2000 and 2015 that ranged in size between 14 651 and 23 630 residents. MEASUREMENTS: Sociodemographic characteristics, morbidity, and functional status of new residents were determined upon admission to examine patterns in the cohorts' profiles. RESULTS: The proportion of residents aged 85 years and older increased from 45.1% to 53.8% over 16 years. The proportions of individuals with seven or more chronic conditions (from 14.1% to 22.1%) and with nine or more prescription medications (from 44.9% to 64.2%) have also increased in parallel over time. Hypertension, osteoarthritis, and dementia were the most prevalent conditions captured, with the proportion of incoming residents with dementia increasing from 42.3% to 54.1% between 2000 and 2015. Newly admitted residents were more likely to have extensive physical and cognitive impairments upon admission. CONCLUSION: Admission trends show that new residents were older and had greater multimorbidity and limitations in physical functioning over time. J Am Geriatr Soc 68:1293-1300, 2020.
OBJECTIVES: The main objective of the study was to investigate annual changes in the sociodemographic characteristics, morbidity, and functional status of new nursing home residents in Ontario, Canada, between 2000 and 2015. A secondary objective was to develop and assess the quality of an algorithm for ascertaining admissions into publicly funded nursing homes in Ontario using a combination of health administrative data sources that indirectly identifies the residential status of new nursing home residents. DESIGN: Population-based serial cross-sectional study with an accompanying quality assessment study of algorithms. SETTING: Publicly funded nursing care homes in Ontario, Canada. PARTICIPANTS: The reference standard for the assessment of algorithm performance was 21 544 newly admitted nursing home residents identified from the Resident Assessment Instrument-Minimum Data Set in 2012. The selected algorithm was then used to identify serial cross-sectional cohorts of newly admitted residents between 2000 and 2015 that ranged in size between 14 651 and 23 630 residents. MEASUREMENTS: Sociodemographic characteristics, morbidity, and functional status of new residents were determined upon admission to examine patterns in the cohorts' profiles. RESULTS: The proportion of residents aged 85 years and older increased from 45.1% to 53.8% over 16 years. The proportions of individuals with seven or more chronic conditions (from 14.1% to 22.1%) and with nine or more prescription medications (from 44.9% to 64.2%) have also increased in parallel over time. Hypertension, osteoarthritis, and dementia were the most prevalent conditions captured, with the proportion of incoming residents with dementia increasing from 42.3% to 54.1% between 2000 and 2015. Newly admitted residents were more likely to have extensive physical and cognitive impairments upon admission. CONCLUSION: Admission trends show that new residents were older and had greater multimorbidity and limitations in physical functioning over time. J Am Geriatr Soc 68:1293-1300, 2020.
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