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A comparative study of the use of four fall risk assessment tools on acute medical wards

A comparative study of the use of four fall risk assessment tools on acute medical wards
A comparative study of the use of four fall risk assessment tools on acute medical wards
Objectives: To compare the effectiveness of four falls risk assessment tools (STRATIFY, Downton, Tullamore, and Tinetti) by using them simultaneously in the same environment.

Design: Prospective, open, observational study.

Setting: Two acute medical wards admitting predominantly older patients.

Participants: One hundred thirty-five patients, 86 female, mean age±standard deviation 83.8±8.01 (range 56–100).

Measurements: A single clinician prospectively completed the four falls risk assessment tools. The extent of completion and time to complete each tool was recorded. Patients were followed until discharge, noting the occurrence of falls. The sensitivity, specificity, negative predictive accuracy, positive predictive accuracy, and total predictive accuracy were calculated.

Results: The number of patients that the STRATIFY correctly identified (n=90) was significantly higher than the Downton (n=46; P<.001), Tullamore (n=66; P=.005), or Tinetti (n=52; P<.001) tools, but the STRATIFY had the poorest sensitivity (68.2%). The STRATIFY was also the only tool that could be fully completed in all patients (n=135), compared with the Downton (n=130; P=.06), Tullamore (n=130; P=.06), and Tinetti (n=17; P<.001). The time required to complete the STRATIFY tool (average 3.85 minutes) was significantly less than for the Downton (6.34 minutes; P<.001), Tinetti (7.4 minutes; P<.001), and Tullamore (6.25 minutes; P<.001). The Kaplan-Meier test showed that the STRATIFY (log rank P=.001) and Tullamore tools (log rank P<.001) were effective at predicting falls over the first week of admission. The Downton (log rank P=.46) and Tinetti tools (log rank P=.41) did not demonstrate this characteristic.

Conclusion: Significant differences were identified in the performance and complexity between the four risk assessment tools studied. The STRATIFY tool was the shortest and easiest to complete and had the highest predictive value but the lowest sensitivity.
0002-8614
1034-1038
Vassalo, M.
559d6ac8-7f5a-4e34-9660-6682408ea2b1
Stockdale, R.
e2be5e84-7808-4fe4-aaa5-fcac82b03574
Sharma, J. C.
5e71a6d5-ba55-4df9-b083-1ead733ca1bb
Briggs, R.
a6b65ef0-e90c-4c07-bf5b-b70130c128b3
Allen, S.
48aec8ad-441b-4cec-8bd8-c90296ed54b2
Vassalo, M.
559d6ac8-7f5a-4e34-9660-6682408ea2b1
Stockdale, R.
e2be5e84-7808-4fe4-aaa5-fcac82b03574
Sharma, J. C.
5e71a6d5-ba55-4df9-b083-1ead733ca1bb
Briggs, R.
a6b65ef0-e90c-4c07-bf5b-b70130c128b3
Allen, S.
48aec8ad-441b-4cec-8bd8-c90296ed54b2

Vassalo, M., Stockdale, R., Sharma, J. C., Briggs, R. and Allen, S. (2005) A comparative study of the use of four fall risk assessment tools on acute medical wards. Journal of the American Geriatrics Society, 53 (6), 1034-1038. (doi:10.1111/j.1532-5415.2005.53316.x).

Record type: Article

Abstract

Objectives: To compare the effectiveness of four falls risk assessment tools (STRATIFY, Downton, Tullamore, and Tinetti) by using them simultaneously in the same environment.

Design: Prospective, open, observational study.

Setting: Two acute medical wards admitting predominantly older patients.

Participants: One hundred thirty-five patients, 86 female, mean age±standard deviation 83.8±8.01 (range 56–100).

Measurements: A single clinician prospectively completed the four falls risk assessment tools. The extent of completion and time to complete each tool was recorded. Patients were followed until discharge, noting the occurrence of falls. The sensitivity, specificity, negative predictive accuracy, positive predictive accuracy, and total predictive accuracy were calculated.

Results: The number of patients that the STRATIFY correctly identified (n=90) was significantly higher than the Downton (n=46; P<.001), Tullamore (n=66; P=.005), or Tinetti (n=52; P<.001) tools, but the STRATIFY had the poorest sensitivity (68.2%). The STRATIFY was also the only tool that could be fully completed in all patients (n=135), compared with the Downton (n=130; P=.06), Tullamore (n=130; P=.06), and Tinetti (n=17; P<.001). The time required to complete the STRATIFY tool (average 3.85 minutes) was significantly less than for the Downton (6.34 minutes; P<.001), Tinetti (7.4 minutes; P<.001), and Tullamore (6.25 minutes; P<.001). The Kaplan-Meier test showed that the STRATIFY (log rank P=.001) and Tullamore tools (log rank P<.001) were effective at predicting falls over the first week of admission. The Downton (log rank P=.46) and Tinetti tools (log rank P=.41) did not demonstrate this characteristic.

Conclusion: Significant differences were identified in the performance and complexity between the four risk assessment tools studied. The STRATIFY tool was the shortest and easiest to complete and had the highest predictive value but the lowest sensitivity.

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More information

e-pub ahead of print date: 1 April 2005
Published date: 31 May 2005

Identifiers

Local EPrints ID: 70729
URI: http://eprints.soton.ac.uk/id/eprint/70729
ISSN: 0002-8614
PURE UUID: 41659876-b355-4a8c-ac89-18c54a71ec38

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Date deposited: 09 Feb 2010
Last modified: 13 Mar 2024 20:06

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Contributors

Author: M. Vassalo
Author: R. Stockdale
Author: J. C. Sharma
Author: R. Briggs
Author: S. Allen

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