Combinations of multiple long term conditions and risk of hospital admission or death during winter 2021-22 in England: population based cohort study
Combinations of multiple long term conditions and risk of hospital admission or death during winter 2021-22 in England: population based cohort study
Objective: to describe which combinations of long term conditions were associated with a higher risk of hospital admission or death during winter 2021-22 (the third wave of the covid-19 pandemic) in adults in England.
Design: population based cohort study.
Setting: linked primary and secondary care data from the General Practice Extraction Service Data for Pandemic Planning and Research (GDPPR) database, Hospital Episode Statistics, and Office for National Statistics death registry, comprising pseudoanonymised routinely collected electronic medical records from the whole population of England registered at a general practice, 1 December 2021 to 31 March 2022.
Participants: 48 253 125 individuals, registered in GDPPR in England, aged ≥18 years, and alive on 1 December 2021.
Main outcomes measures: all cause hospital admissions and deaths associated with combinations of multiple long term conditions compared with those with no long term conditions, during the winter season (1 December 2021 to 31 March 2022). Overdispersed Poisson regression models were used to estimate the incidence rate ratios after adjusting for age, sex, ethnic group, and index of multiple deprivation.
Results: complete data were available for 48 253 125 adults, of whom 15 million (31.2%) had multiple long term conditions. Rates of hospital admissions and deaths among individuals with no long term conditions were 96.3 and 0.8 per 1000 person years, respectively. Compared with those with no long term conditions, the adjusted incidence rate ratio of hospital admissions were 11.0 (95% confidence interval (CI) 9.4 to 12.7) for those with a combination of cancer, chronic kidney disease, cardiovascular disease, and type 2 diabetes mellitus; 9.8 (8.3 to 11.4) for those with cancer, chronic kidney disease, cardiovascular disease, and osteoarthritis; and 9.6 (8.6 to 10.7) for those with cancer, chronic kidney disease, and cardiovascular disease. Compared with those with no long term conditions, the adjusted rate ratio of death was 21.4 (17.5 to 26.0) for those with chronic kidney disease, cardiovascular disease, and dementia; 23.2 (17.5 to 30.3) for those with cancer, chronic kidney disease, cardiovascular disease, and dementia; and 24.3 (19.1 to 30.4) for those with chronic kidney disease, cardiovascular disease, dementia, and osteoarthritis. Cardiovascular disease with dementia appeared in all of the top five combinations of multiple long term conditions for mortality, and this two disease combination was associated with a substantially higher rate of death than many three, four, and five disease combinations.
Conclusions: in this study, rates of hospital admission and death varied by combinations of multiple long term conditions and were substantially higher in those with than in those without any long term conditions. High risk combinations for prioritisation and preventive action by policy makers were highlighted to help manage the challenges imposed by winter pressures on the NHS.
Islam, Nazrul
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Shabnam, Sharmin
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Khan, Nusrat
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Gillies, Clare
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Zaccardi, Francesco
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Banerjee, Amitava
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Nafilyan, Vahé
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Khunti, Kamlesh
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Dambha-Miller, Hajira
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Islam, Nazrul
e5345196-7479-438f-b4f6-c372d2135586
Shabnam, Sharmin
b337b72e-6dc4-4b56-b09a-ba11bc63a657
Khan, Nusrat
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Gillies, Clare
fc26555a-79f4-4d0e-9a34-1dc4fbda4be9
Zaccardi, Francesco
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Banerjee, Amitava
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Nafilyan, Vahé
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Khunti, Kamlesh
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Dambha-Miller, Hajira
58961db5-31aa-460e-9394-08590c4b7ba1
Islam, Nazrul, Shabnam, Sharmin, Khan, Nusrat, Gillies, Clare, Zaccardi, Francesco, Banerjee, Amitava, Nafilyan, Vahé, Khunti, Kamlesh and Dambha-Miller, Hajira
(2024)
Combinations of multiple long term conditions and risk of hospital admission or death during winter 2021-22 in England: population based cohort study.
BMJ Medicine, 3 (1), [e001016].
(doi:10.1136/bmjmed-2024-001016).
Abstract
Objective: to describe which combinations of long term conditions were associated with a higher risk of hospital admission or death during winter 2021-22 (the third wave of the covid-19 pandemic) in adults in England.
Design: population based cohort study.
Setting: linked primary and secondary care data from the General Practice Extraction Service Data for Pandemic Planning and Research (GDPPR) database, Hospital Episode Statistics, and Office for National Statistics death registry, comprising pseudoanonymised routinely collected electronic medical records from the whole population of England registered at a general practice, 1 December 2021 to 31 March 2022.
Participants: 48 253 125 individuals, registered in GDPPR in England, aged ≥18 years, and alive on 1 December 2021.
Main outcomes measures: all cause hospital admissions and deaths associated with combinations of multiple long term conditions compared with those with no long term conditions, during the winter season (1 December 2021 to 31 March 2022). Overdispersed Poisson regression models were used to estimate the incidence rate ratios after adjusting for age, sex, ethnic group, and index of multiple deprivation.
Results: complete data were available for 48 253 125 adults, of whom 15 million (31.2%) had multiple long term conditions. Rates of hospital admissions and deaths among individuals with no long term conditions were 96.3 and 0.8 per 1000 person years, respectively. Compared with those with no long term conditions, the adjusted incidence rate ratio of hospital admissions were 11.0 (95% confidence interval (CI) 9.4 to 12.7) for those with a combination of cancer, chronic kidney disease, cardiovascular disease, and type 2 diabetes mellitus; 9.8 (8.3 to 11.4) for those with cancer, chronic kidney disease, cardiovascular disease, and osteoarthritis; and 9.6 (8.6 to 10.7) for those with cancer, chronic kidney disease, and cardiovascular disease. Compared with those with no long term conditions, the adjusted rate ratio of death was 21.4 (17.5 to 26.0) for those with chronic kidney disease, cardiovascular disease, and dementia; 23.2 (17.5 to 30.3) for those with cancer, chronic kidney disease, cardiovascular disease, and dementia; and 24.3 (19.1 to 30.4) for those with chronic kidney disease, cardiovascular disease, dementia, and osteoarthritis. Cardiovascular disease with dementia appeared in all of the top five combinations of multiple long term conditions for mortality, and this two disease combination was associated with a substantially higher rate of death than many three, four, and five disease combinations.
Conclusions: in this study, rates of hospital admission and death varied by combinations of multiple long term conditions and were substantially higher in those with than in those without any long term conditions. High risk combinations for prioritisation and preventive action by policy makers were highlighted to help manage the challenges imposed by winter pressures on the NHS.
Text
e001016.full
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Accepted/In Press date: 27 September 2024
e-pub ahead of print date: 12 November 2024
Identifiers
Local EPrints ID: 496495
URI: http://eprints.soton.ac.uk/id/eprint/496495
ISSN: 2754-0413
PURE UUID: e4868322-6c9c-4b95-89e0-6cbbf4b17ce9
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Date deposited: 17 Dec 2024 17:33
Last modified: 18 Dec 2024 03:14
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Contributors
Author:
Nazrul Islam
Author:
Sharmin Shabnam
Author:
Nusrat Khan
Author:
Clare Gillies
Author:
Francesco Zaccardi
Author:
Amitava Banerjee
Author:
Vahé Nafilyan
Author:
Kamlesh Khunti
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