Factors associated with accessing long-term adult social care in people aged 75 and over: a retrospective cohort study
Abstract Background An ageing population and limited resources have put strain on state provision of adult social care (ASC) in England. With social care needs predicted to double over the next 20 years, there is a need for new approaches to inform service planning and development, including through...
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Published in | Age and ageing Vol. 51; no. 3 |
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Main Authors | , , , , , , , |
Format | Journal Article |
Language | English |
Published |
England
Oxford University Press
01.03.2022
Oxford Publishing Limited (England) |
Subjects | |
Online Access | Get full text |
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Abstract | Abstract
Background
An ageing population and limited resources have put strain on state provision of adult social care (ASC) in England. With social care needs predicted to double over the next 20 years, there is a need for new approaches to inform service planning and development, including through predictive models of demand.
Objective
Describe risk factors for long-term ASC in two inner London boroughs and develop a risk prediction model for long-term ASC.
Methods
Pseudonymised person-level data from an integrated care dataset were analysed. We used multivariable logistic regression to model associations of demographic factors, and baseline aspects of health status and health service use, with accessing long-term ASC over 12 months.
Results
The cohort comprised 13,394 residents, aged ≥75 years with no prior history of ASC at baseline. Of these, 1.7% became ASC clients over 12 months. Residents were more likely to access ASC if they were older or living in areas with high socioeconomic deprivation. Those with preexisting mental health or neurological conditions, or more intense prior health service use during the baseline period, were also more likely to access ASC. A prognostic model derived from risk factors had limited predictive power.
Conclusions
Our findings reinforce evidence on known risk factors for residents aged 75 or over, yet even with linked routinely collected health and social care data, it was not possible to make accurate predictions of long-term ASC use for individuals. We propose that a paradigm shift towards more relational, personalised approaches, is needed. |
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AbstractList | BACKGROUNDAn ageing population and limited resources have put strain on state provision of adult social care (ASC) in England. With social care needs predicted to double over the next 20 years, there is a need for new approaches to inform service planning and development, including through predictive models of demand. OBJECTIVEDescribe risk factors for long-term ASC in two inner London boroughs and develop a risk prediction model for long-term ASC. METHODSPseudonymised person-level data from an integrated care dataset were analysed. We used multivariable logistic regression to model associations of demographic factors, and baseline aspects of health status and health service use, with accessing long-term ASC over 12 months. RESULTSThe cohort comprised 13,394 residents, aged ≥75 years with no prior history of ASC at baseline. Of these, 1.7% became ASC clients over 12 months. Residents were more likely to access ASC if they were older or living in areas with high socioeconomic deprivation. Those with preexisting mental health or neurological conditions, or more intense prior health service use during the baseline period, were also more likely to access ASC. A prognostic model derived from risk factors had limited predictive power. CONCLUSIONSOur findings reinforce evidence on known risk factors for residents aged 75 or over, yet even with linked routinely collected health and social care data, it was not possible to make accurate predictions of long-term ASC use for individuals. We propose that a paradigm shift towards more relational, personalised approaches, is needed. Abstract Background An ageing population and limited resources have put strain on state provision of adult social care (ASC) in England. With social care needs predicted to double over the next 20 years, there is a need for new approaches to inform service planning and development, including through predictive models of demand. Objective Describe risk factors for long-term ASC in two inner London boroughs and develop a risk prediction model for long-term ASC. Methods Pseudonymised person-level data from an integrated care dataset were analysed. We used multivariable logistic regression to model associations of demographic factors, and baseline aspects of health status and health service use, with accessing long-term ASC over 12 months. Results The cohort comprised 13,394 residents, aged ≥75 years with no prior history of ASC at baseline. Of these, 1.7% became ASC clients over 12 months. Residents were more likely to access ASC if they were older or living in areas with high socioeconomic deprivation. Those with preexisting mental health or neurological conditions, or more intense prior health service use during the baseline period, were also more likely to access ASC. A prognostic model derived from risk factors had limited predictive power. Conclusions Our findings reinforce evidence on known risk factors for residents aged 75 or over, yet even with linked routinely collected health and social care data, it was not possible to make accurate predictions of long-term ASC use for individuals. We propose that a paradigm shift towards more relational, personalised approaches, is needed. An ageing population and limited resources have put strain on state provision of adult social care (ASC) in England. With social care needs predicted to double over the next 20 years, there is a need for new approaches to inform service planning and development, including through predictive models of demand. Describe risk factors for long-term ASC in two inner London boroughs and develop a risk prediction model for long-term ASC. Pseudonymised person-level data from an integrated care dataset were analysed. We used multivariable logistic regression to model associations of demographic factors, and baseline aspects of health status and health service use, with accessing long-term ASC over 12 months. The cohort comprised 13,394 residents, aged ≥75 years with no prior history of ASC at baseline. Of these, 1.7% became ASC clients over 12 months. Residents were more likely to access ASC if they were older or living in areas with high socioeconomic deprivation. Those with preexisting mental health or neurological conditions, or more intense prior health service use during the baseline period, were also more likely to access ASC. A prognostic model derived from risk factors had limited predictive power. Our findings reinforce evidence on known risk factors for residents aged 75 or over, yet even with linked routinely collected health and social care data, it was not possible to make accurate predictions of long-term ASC use for individuals. We propose that a paradigm shift towards more relational, personalised approaches, is needed. Background An ageing population and limited resources have put strain on state provision of adult social care (ASC) in England. With social care needs predicted to double over the next 20 years, there is a need for new approaches to inform service planning and development, including through predictive models of demand. Objective Describe risk factors for long-term ASC in two inner London boroughs and develop a risk prediction model for long-term ASC. Methods Pseudonymised person-level data from an integrated care dataset were analysed. We used multivariable logistic regression to model associations of demographic factors, and baseline aspects of health status and health service use, with accessing long-term ASC over 12 months. Results The cohort comprised 13,394 residents, aged ≥75 years with no prior history of ASC at baseline. Of these, 1.7% became ASC clients over 12 months. Residents were more likely to access ASC if they were older or living in areas with high socioeconomic deprivation. Those with preexisting mental health or neurological conditions, or more intense prior health service use during the baseline period, were also more likely to access ASC. A prognostic model derived from risk factors had limited predictive power. Conclusions Our findings reinforce evidence on known risk factors for residents aged 75 or over, yet even with linked routinely collected health and social care data, it was not possible to make accurate predictions of long-term ASC use for individuals. We propose that a paradigm shift towards more relational, personalised approaches, is needed. |
Author | Majeed, Azeem Woodcock, Thomas Junghans, Cornelia Aylin, Paul Nakubulwa, Mable Lovett, Derryn Lyons-Amos, Clare Novov, Vesselin |
AuthorAffiliation | 2 Department of Primary Care and Public Health, School of Public Health, Imperial College London , London W6 8RP, UK 3 Cambridgeshire and Peterborough NHS Foundation Trust, Elizabeth House, Fulbourn Hospital , Cambridge CB21 5EF, UK 4 Department of Adult Social Care and Public Health, Westminster City Council , London SW1E 6QP, UK 1 NIHR Applied Research Collaboration Northwest London, Imperial College London , London, UK |
AuthorAffiliation_xml | – name: 3 Cambridgeshire and Peterborough NHS Foundation Trust, Elizabeth House, Fulbourn Hospital , Cambridge CB21 5EF, UK – name: 1 NIHR Applied Research Collaboration Northwest London, Imperial College London , London, UK – name: 2 Department of Primary Care and Public Health, School of Public Health, Imperial College London , London W6 8RP, UK – name: 4 Department of Adult Social Care and Public Health, Westminster City Council , London SW1E 6QP, UK |
Author_xml | – sequence: 1 givenname: Mable surname: Nakubulwa fullname: Nakubulwa, Mable email: m.nakubulwa@imperial.ac.uk organization: NIHR Applied Research Collaboration Northwest London, Imperial College London, London, UK – sequence: 2 givenname: Cornelia surname: Junghans fullname: Junghans, Cornelia organization: Department of Primary Care and Public Health, School of Public Health, Imperial College London, London W6 8RP, UK – sequence: 3 givenname: Vesselin surname: Novov fullname: Novov, Vesselin email: v.novov@imperial.ac.uk organization: NIHR Applied Research Collaboration Northwest London, Imperial College London, London, UK – sequence: 4 givenname: Clare surname: Lyons-Amos fullname: Lyons-Amos, Clare email: clyons-amos@westminster.gov.uk organization: Department of Adult Social Care and Public Health, Westminster City Council, London SW1E 6QP, UK – sequence: 5 givenname: Derryn surname: Lovett fullname: Lovett, Derryn email: d.lovett@imperial.ac.uk organization: NIHR Applied Research Collaboration Northwest London, Imperial College London, London, UK – sequence: 6 givenname: Azeem surname: Majeed fullname: Majeed, Azeem email: a.majeed@imperial.ac.uk organization: NIHR Applied Research Collaboration Northwest London, Imperial College London, London, UK – sequence: 7 givenname: Paul surname: Aylin fullname: Aylin, Paul email: p.aylin@imperial.ac.uk organization: NIHR Applied Research Collaboration Northwest London, Imperial College London, London, UK – sequence: 8 givenname: Thomas surname: Woodcock fullname: Woodcock, Thomas email: thomas.woodcock99@imperial.ac.uk organization: NIHR Applied Research Collaboration Northwest London, Imperial College London, London, UK |
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Background
An ageing population and limited resources have put strain on state provision of adult social care (ASC) in England. With social care needs... An ageing population and limited resources have put strain on state provision of adult social care (ASC) in England. With social care needs predicted to double... Background An ageing population and limited resources have put strain on state provision of adult social care (ASC) in England. With social care needs... BACKGROUNDAn ageing population and limited resources have put strain on state provision of adult social care (ASC) in England. With social care needs predicted... |
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SubjectTerms | Access Adult care services Aging Cohort analysis Cohort Studies Demography Deprivation Economic deprivation Health services Health services utilization Health status Humans Integrated care Long-Term Care Mental disorders Mental Health Neurological disorders Population studies Prediction models Research Paper Retrospective Studies Risk factors Social services Social Support |
Title | Factors associated with accessing long-term adult social care in people aged 75 and over: a retrospective cohort study |
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