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Published in: BMC Geriatrics 1/2019

Open Access 01-12-2019 | Care | Research article

Development and validation of an algorithm to assess risk of first-time falling among home care clients

Authors: Ayse Kuspinar, John P. Hirdes, Katherine Berg, Caitlin McArthur, John N. Morris

Published in: BMC Geriatrics | Issue 1/2019

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Abstract

Background

The falls literature focuses on individuals with previous falls, so little is known about individuals who have not experienced a fall in the past. Predicting falls in those without a prior event is critical for primary prevention of injuries. Identifying and intervening before the first fall may be an effective strategy for reducing the high personal and economic costs of falls among older adults. The purpose of this study was to derive and validate a prediction algorithm for first-time falls (1stFall) among home care clients who had not fallen in the past 90 days.

Methods

Decision tree analysis was used to develop a prediction algorithm for the occurrence of a first fall from a cohort of home care clients who had not fallen in the last 90 days, and who were prospectively followed over 6 months. Ontario home care clients who were assessed with the Resident Assessment Instrument-Home Care (RAI-HC) between 2002 and 2014 (n = 88,690) were included in the analysis. The dependent variable was falls in the past 90 days in follow-up assessments. The independent variables were taken from the RAI-HC. The validity of the 1stFall algorithm was tested among home care clients in 4 Canadian provinces: Ontario (n = 38,013), Manitoba (n = 2738), Alberta (n = 1226) and British Columbia (n = 9566).

Results

The 1stFall algorithm includes the utilization of assistive devices, unsteady gait, age, cognition, pain and incontinence to identify 6 categories from low to high risk. In the validation samples, fall rates and odds ratios increased with risk levels in the algorithm in all provinces examined.

Conclusions

The 1stFall algorithm predicts future falls in persons who had not fallen in the past 90 days. Six distinct risk categories demonstrated predictive validity in 4 independent samples.
Literature
1.
go back to reference Ageing WHO, Unit LC. WHO global report on falls prevention in older age: World Health Organization; 2008. Ageing WHO, Unit LC. WHO global report on falls prevention in older age: World Health Organization; 2008.
2.
go back to reference Stinchcombe A, Kuran N, Powell S. Report Summary-Seniors' Falls in Canada: Second Report: key highlights. Chronic Dis Inj Can. 2014;34(2–3). Stinchcombe A, Kuran N, Powell S. Report Summary-Seniors' Falls in Canada: Second Report: key highlights. Chronic Dis Inj Can. 2014;34(2–3).
3.
go back to reference Biderman A, Cwikel J, Fried A, Galinsky D. Depression and falls among community dwelling elderly people: a search for common risk factors. J Epidemiol Community Health. 2002;56:631–6.CrossRef Biderman A, Cwikel J, Fried A, Galinsky D. Depression and falls among community dwelling elderly people: a search for common risk factors. J Epidemiol Community Health. 2002;56:631–6.CrossRef
4.
go back to reference He W, Goodkind D, Kowal PR. An aging world. United States Census Bureau. 2015:2016. He W, Goodkind D, Kowal PR. An aging world. United States Census Bureau. 2015:2016.
5.
go back to reference Pluijm SM, Smit JH, Tromp E, Stel V, Deeg DJ, Bouter LM, Lips P. A risk profile for identifying community-dwelling elderly with a high risk of recurrent falling: results of a 3-year prospective study. Osteoporos Int. 2006;17:417–25.CrossRef Pluijm SM, Smit JH, Tromp E, Stel V, Deeg DJ, Bouter LM, Lips P. A risk profile for identifying community-dwelling elderly with a high risk of recurrent falling: results of a 3-year prospective study. Osteoporos Int. 2006;17:417–25.CrossRef
6.
go back to reference Stalenhoef P, Diederiks J, Knottnerus J, Kester A, Crebolder H. A risk model for the prediction of recurrent falls in community-dwelling elderly: a prospective cohort study. J Clin Epidemiol. 2002;55:1088–94.CrossRef Stalenhoef P, Diederiks J, Knottnerus J, Kester A, Crebolder H. A risk model for the prediction of recurrent falls in community-dwelling elderly: a prospective cohort study. J Clin Epidemiol. 2002;55:1088–94.CrossRef
7.
go back to reference Deandrea S, Lucenteforte E, Bravi F, Foschi R, La Vecchia C, Negri E. Risk factors for falls in community-dwelling older people:" a systematic review and meta-analysis". Epidemiology. 2010:658–68. Deandrea S, Lucenteforte E, Bravi F, Foschi R, La Vecchia C, Negri E. Risk factors for falls in community-dwelling older people:" a systematic review and meta-analysis". Epidemiology. 2010:658–68.
8.
go back to reference Ivziku D, Matarese M, Pedone C. Predictive validity of the Hendrich fall risk model II in an acute geriatric unit. Int J Nurs Stud. 2011;48:468–74.CrossRef Ivziku D, Matarese M, Pedone C. Predictive validity of the Hendrich fall risk model II in an acute geriatric unit. Int J Nurs Stud. 2011;48:468–74.CrossRef
9.
go back to reference Kojima G, Masud T, Kendrick D, Morris R, Gawler S, Treml J, Iliffe S. Does the timed up and go test predict future falls among British community-dwelling older people? Prospective cohort study nested within a randomised controlled trial. BMC Geriatrics. 2015;15:38.CrossRef Kojima G, Masud T, Kendrick D, Morris R, Gawler S, Treml J, Iliffe S. Does the timed up and go test predict future falls among British community-dwelling older people? Prospective cohort study nested within a randomised controlled trial. BMC Geriatrics. 2015;15:38.CrossRef
10.
go back to reference Schoene D, Wu SMS, Mikolaizak AS, Menant JC, Smith ST, Delbaere K, Lord SR. Discriminative ability and predictive validity of the timed up and go test in identifying older people who fall: systematic review and meta-analysis. J Am Geriatr Soc. 2013;61:202–8.CrossRef Schoene D, Wu SMS, Mikolaizak AS, Menant JC, Smith ST, Delbaere K, Lord SR. Discriminative ability and predictive validity of the timed up and go test in identifying older people who fall: systematic review and meta-analysis. J Am Geriatr Soc. 2013;61:202–8.CrossRef
11.
go back to reference Verghese J, Holtzer R, Lipton RB, Wang C. Quantitative gait markers and incident fall risk in older adults. J Gerontol A Biol Sci Med Sci. 2009;64:896–901.CrossRef Verghese J, Holtzer R, Lipton RB, Wang C. Quantitative gait markers and incident fall risk in older adults. J Gerontol A Biol Sci Med Sci. 2009;64:896–901.CrossRef
12.
go back to reference Strobl C, Malley J, Tutz G. An introduction to recursive partitioning: rationale, application, and characteristics of classification and regression trees, bagging, and random forests. Psychol Methods. 2009;14:323.CrossRef Strobl C, Malley J, Tutz G. An introduction to recursive partitioning: rationale, application, and characteristics of classification and regression trees, bagging, and random forests. Psychol Methods. 2009;14:323.CrossRef
13.
go back to reference Morris JN: interRAI Home Care (HC) assessment form and user's manual: interRAI Publications. 2010. Morris JN: interRAI Home Care (HC) assessment form and user's manual: interRAI Publications. 2010.
14.
go back to reference Morris JN, Fries BE, Steel K, Ikegami N, Bernabei R, Carpenter GI, Gilgen R, Hirdes JP, Topinková E. Comprehensive clinical assessment in community setting: applicability of the MDS-HC. J Am Geriatr Soc. 1997;45:1017–24.CrossRef Morris JN, Fries BE, Steel K, Ikegami N, Bernabei R, Carpenter GI, Gilgen R, Hirdes JP, Topinková E. Comprehensive clinical assessment in community setting: applicability of the MDS-HC. J Am Geriatr Soc. 1997;45:1017–24.CrossRef
15.
go back to reference Hirdes JP, Ljunggren G, Morris JN, Frijters DH, Soveri HF, Gray L, Björkgren M, Gilgen R. Reliability of the interRAI suite of assessment instruments: a 12-country study of an integrated health information system. BMC Health Serv Res. 2008;8:277.CrossRef Hirdes JP, Ljunggren G, Morris JN, Frijters DH, Soveri HF, Gray L, Björkgren M, Gilgen R. Reliability of the interRAI suite of assessment instruments: a 12-country study of an integrated health information system. BMC Health Serv Res. 2008;8:277.CrossRef
16.
go back to reference Landi F, Tua E, Onder G, Carrara B, Sgadari A, Rinaldi C, Gambassi G, Lattanzio F, Bernabei R. Minimum data set for home care: a valid instrument to assess frail older people living in the community. Med Care. 2000;38:1184–90.CrossRef Landi F, Tua E, Onder G, Carrara B, Sgadari A, Rinaldi C, Gambassi G, Lattanzio F, Bernabei R. Minimum data set for home care: a valid instrument to assess frail older people living in the community. Med Care. 2000;38:1184–90.CrossRef
17.
go back to reference Poss J, Jutan N, Hirdes J, Fries B, Morris J, Teare G, Reidel K A review of evidence on the reliability and validity of Minimum Data Set data. In: Healthcare Management Forum: 2008. SAGE publications Sage CA: Los Angeles, CA: 33–39. Poss J, Jutan N, Hirdes J, Fries B, Morris J, Teare G, Reidel K A review of evidence on the reliability and validity of Minimum Data Set data. In: Healthcare Management Forum: 2008. SAGE publications Sage CA: Los Angeles, CA: 33–39.
18.
go back to reference Morris JN, Fries BE, Mehr DR, Hawes C, Phillips C, Mor V, Lipsitz LA. MDS cognitive performance scale©. J Gerontol. 1994;49:M174–82.CrossRef Morris JN, Fries BE, Mehr DR, Hawes C, Phillips C, Mor V, Lipsitz LA. MDS cognitive performance scale©. J Gerontol. 1994;49:M174–82.CrossRef
19.
go back to reference Fries BE, Simon SE, Morris JN, Flodstrom C, Bookstein FL. Pain in US nursing homes: validating a pain scale for the minimum data set. The Gerontologist. 2001;41:173–9.CrossRef Fries BE, Simon SE, Morris JN, Flodstrom C, Bookstein FL. Pain in US nursing homes: validating a pain scale for the minimum data set. The Gerontologist. 2001;41:173–9.CrossRef
20.
go back to reference Morris JN, Fries BE, Morris SA. Scaling ADLs within the MDS. The Journals of Gerontology: Series A. 1999;54:M546–53.CrossRef Morris JN, Fries BE, Morris SA. Scaling ADLs within the MDS. The Journals of Gerontology: Series A. 1999;54:M546–53.CrossRef
21.
go back to reference Data Mining Using SAS® Enterprise MinerTM. A Case Study Approach. In. Edited by Inc. SI, Third Edition edn. Cary, NC: SAS Institute Inc.; 2013. Data Mining Using SAS® Enterprise MinerTM. A Case Study Approach. In. Edited by Inc. SI, Third Edition edn. Cary, NC: SAS Institute Inc.; 2013.
22.
go back to reference Miner SE: 13.1. SAS Institute Inc, Cary, NC. 2011. Miner SE: 13.1. SAS Institute Inc, Cary, NC. 2011.
23.
go back to reference Matignon R. Data mining using SAS enterprise miner, vol. 638: John Wiley & Sons; 2007. Matignon R. Data mining using SAS enterprise miner, vol. 638: John Wiley & Sons; 2007.
24.
go back to reference Fletcher PC, Hirdes JP. Risk factors for falling among community-based seniors using home care services. J Gerontol Ser A Biol Med Sci. 2002;57:M504–10.CrossRef Fletcher PC, Hirdes JP. Risk factors for falling among community-based seniors using home care services. J Gerontol Ser A Biol Med Sci. 2002;57:M504–10.CrossRef
25.
go back to reference Morris JN, Howard EP, Steel K, Berg K, Tchalla A, Munankarmi A, David D. Strategies to reduce the risk of falling: cohort study analysis with 1-year follow-up in community dwelling older adults. BMC Geriatr. 2016;16:92.CrossRef Morris JN, Howard EP, Steel K, Berg K, Tchalla A, Munankarmi A, David D. Strategies to reduce the risk of falling: cohort study analysis with 1-year follow-up in community dwelling older adults. BMC Geriatr. 2016;16:92.CrossRef
26.
go back to reference Sai A, Gallagher JC, Smith LM, Logsdon S. Fall predictors in the community dwelling elderly: a cross sectional and prospective cohort study. J Musculoskelet Neuronal Interact. 2010;10:142–50.PubMed Sai A, Gallagher JC, Smith LM, Logsdon S. Fall predictors in the community dwelling elderly: a cross sectional and prospective cohort study. J Musculoskelet Neuronal Interact. 2010;10:142–50.PubMed
27.
go back to reference Lemon SC, Roy J, Clark MA, Friedmann PD, Rakowski W. Classification and regression tree analysis in public health: methodological review and comparison with logistic regression. Ann Behav Med. 2003;26:172–81.CrossRef Lemon SC, Roy J, Clark MA, Friedmann PD, Rakowski W. Classification and regression tree analysis in public health: methodological review and comparison with logistic regression. Ann Behav Med. 2003;26:172–81.CrossRef
28.
go back to reference Piper ME, Loh W-Y, Smith SS, Japuntich SJ, Baker TB. Using decision tree analysis to identify risk factors for relapse to smoking. Substance use & misuse. 2011;46:492–510.CrossRef Piper ME, Loh W-Y, Smith SS, Japuntich SJ, Baker TB. Using decision tree analysis to identify risk factors for relapse to smoking. Substance use & misuse. 2011;46:492–510.CrossRef
29.
go back to reference Burns ER, Stevens JA, Lee R. The direct costs of fatal and non-fatal falls among older adults—United States. J Saf Res. 2016;58:99–103.CrossRef Burns ER, Stevens JA, Lee R. The direct costs of fatal and non-fatal falls among older adults—United States. J Saf Res. 2016;58:99–103.CrossRef
30.
go back to reference Parachute: The cost of injury in Canada. In.: Parachute Toronto, ON; 2015. Parachute: The cost of injury in Canada. In.: Parachute Toronto, ON; 2015.
31.
go back to reference Lourens H, Woodward M. Impact of a medication card on compliance in older people. Australasian Journal on Ageing. 1994;13:72–6.CrossRef Lourens H, Woodward M. Impact of a medication card on compliance in older people. Australasian Journal on Ageing. 1994;13:72–6.CrossRef
32.
go back to reference Tricco AC, Thomas SM, Veroniki AA, Hamid JS, Cogo E, Strifler L, Khan PA, Robson R, Sibley KM, MacDonald H. Comparisons of interventions for preventing falls in older adults: a systematic review and meta-analysis. Jama. 2017;318:1687–99.CrossRef Tricco AC, Thomas SM, Veroniki AA, Hamid JS, Cogo E, Strifler L, Khan PA, Robson R, Sibley KM, MacDonald H. Comparisons of interventions for preventing falls in older adults: a systematic review and meta-analysis. Jama. 2017;318:1687–99.CrossRef
Metadata
Title
Development and validation of an algorithm to assess risk of first-time falling among home care clients
Authors
Ayse Kuspinar
John P. Hirdes
Katherine Berg
Caitlin McArthur
John N. Morris
Publication date
01-12-2019
Publisher
BioMed Central
Keyword
Care
Published in
BMC Geriatrics / Issue 1/2019
Electronic ISSN: 1471-2318
DOI
https://doi.org/10.1186/s12877-019-1300-2

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