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Incident disability in older adults: prediction models based on two British prospective cohort studies

Incident disability in older adults: prediction models based on two British prospective cohort studies
Incident disability in older adults: prediction models based on two British prospective cohort studies
Objective: to develop and validate a prediction model for incident locomotor disability after 7 years in older adults.

Setting: prospective British cohort studies: British Women's Heart and Health Study (BWHHS) for development and the English Longitudinal Study of Ageing (ELSA) for validation.

Subjects: community-dwelling older adults.

Methods: multivariable logistic regression models after selection of predictors with backward elimination. Model performance was assessed using metrics of discrimination and calibration. Models were internally and externally validated.

Results: locomotor disability was reported in BWHHS by 861 of 1,786 (48%) women after 7 years. Age, a history of arthritis and low physical activity levels were the most important predictors of locomotor disability. Models using routine measures as predictors had satisfactory calibration and discrimination (c-index 0.73). Addition of 31 blood markers did not increase the predictive performance. External validation in ELSA showed reduced discrimination (c-index 0.65) and an underestimation of disability risks. A web-based calculator for locomotor disability is available (http://www.sealedenvelope.com/trials/bwhhsmodel/).

Conclusions: we developed and externally validated a prediction model for incident locomotor disability in older adults based on routine measures available to general practitioners, patients and public health workers, and showed an adequate discrimination. Addition of blood markers from major biological pathways did not improve the performance of the model. Further replication in additional data sets may lead to further enhancement of the current model.
aged, clinical prediction rule, locomotor disability, older people
0002-0729
1-8
Nuesch, E.
4aa21bcf-1fe2-45d7-8e41-d2d4ba727f62
Pablo, P.
2de2818f-116b-4bdf-bc12-738b727dbb68
Dale, C.E.
3eb6c0ef-8196-4c17-b12e-232265989673
Prieto-Merino, D.
7a463f15-3401-448a-9d93-47c789af7342
Kumari, M.
b5ac445e-8cbd-4f37-a99e-630bf0e9b600
Bowling, A.
796ca209-687f-4079-8a40-572076251936
Ebrahim, S.
cc462d6d-f796-479f-8126-7a48fcb965d4
Casas, J.P.
a2719845-fe05-4a65-ad60-d3a908582edc
Nuesch, E.
4aa21bcf-1fe2-45d7-8e41-d2d4ba727f62
Pablo, P.
2de2818f-116b-4bdf-bc12-738b727dbb68
Dale, C.E.
3eb6c0ef-8196-4c17-b12e-232265989673
Prieto-Merino, D.
7a463f15-3401-448a-9d93-47c789af7342
Kumari, M.
b5ac445e-8cbd-4f37-a99e-630bf0e9b600
Bowling, A.
796ca209-687f-4079-8a40-572076251936
Ebrahim, S.
cc462d6d-f796-479f-8126-7a48fcb965d4
Casas, J.P.
a2719845-fe05-4a65-ad60-d3a908582edc

Nuesch, E., Pablo, P., Dale, C.E., Prieto-Merino, D., Kumari, M., Bowling, A., Ebrahim, S. and Casas, J.P. (2014) Incident disability in older adults: prediction models based on two British prospective cohort studies. Age and Ageing, 1-8. (doi:10.1093/ageing/afu159). (PMID:25349151)

Record type: Article

Abstract

Objective: to develop and validate a prediction model for incident locomotor disability after 7 years in older adults.

Setting: prospective British cohort studies: British Women's Heart and Health Study (BWHHS) for development and the English Longitudinal Study of Ageing (ELSA) for validation.

Subjects: community-dwelling older adults.

Methods: multivariable logistic regression models after selection of predictors with backward elimination. Model performance was assessed using metrics of discrimination and calibration. Models were internally and externally validated.

Results: locomotor disability was reported in BWHHS by 861 of 1,786 (48%) women after 7 years. Age, a history of arthritis and low physical activity levels were the most important predictors of locomotor disability. Models using routine measures as predictors had satisfactory calibration and discrimination (c-index 0.73). Addition of 31 blood markers did not increase the predictive performance. External validation in ELSA showed reduced discrimination (c-index 0.65) and an underestimation of disability risks. A web-based calculator for locomotor disability is available (http://www.sealedenvelope.com/trials/bwhhsmodel/).

Conclusions: we developed and externally validated a prediction model for incident locomotor disability in older adults based on routine measures available to general practitioners, patients and public health workers, and showed an adequate discrimination. Addition of blood markers from major biological pathways did not improve the performance of the model. Further replication in additional data sets may lead to further enhancement of the current model.

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e-pub ahead of print date: 27 October 2014
Published date: 27 October 2014
Keywords: aged, clinical prediction rule, locomotor disability, older people
Organisations: Faculty of Health Sciences

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Local EPrints ID: 370560
URI: http://eprints.soton.ac.uk/id/eprint/370560
ISSN: 0002-0729
PURE UUID: 2fb3f55a-6892-4088-aad8-06209a54521c

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Date deposited: 29 Oct 2014 11:38
Last modified: 14 Mar 2024 18:18

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Contributors

Author: E. Nuesch
Author: P. Pablo
Author: C.E. Dale
Author: D. Prieto-Merino
Author: M. Kumari
Author: A. Bowling
Author: S. Ebrahim
Author: J.P. Casas

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