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. 2018 Oct 19;31(8):1069–1076. doi: 10.1007/s40520-018-1051-5

Simulating the effects of a clinical guidelines screening algorithm for fall risk in community dwelling older adults

Pierpaolo Palumbo 1,, Clemens Becker 2, Stefania Bandinelli 3, Lorenzo Chiari 1,4
PMCID: PMC6661027  PMID: 30341644

Abstract

Background

The current guidelines for fall prevention in community-dwelling older adults issued by the American Geriatrics Society and British Geriatrics Society (AGS/BGS) indicate an algorithm for identifying who is at increased risk of falling. The predictive accuracy of this algorithm has never been assessed, nor have the consequences that its introduction in clinical practice would bring about.

Aims

To evaluate this risk screening algorithm, estimating its predictive accuracy and its potential impact.

Methods

The analyses are based on 438 community-dwelling older adults, participating in the InCHIANTI study. We analysed different tests for gait and balance assessment. We compared the AGS/BGS algorithm with alternative strategies for fall prevention not based on fall risk evaluation.

Results

The AGS/BGS screening algorithm (using TUG, cut-off 13.5 s) has a sensitivity for single falls of 35.8% (95% confidence interval 23.2%–52.7%) and a specificity of 84.0% (79.3%–88.4%). It marks 18.0% (13.7%–22.4%) of the older population as at high risk. A policy of targeting people with preventive intervention regardless of their individual risk could be as effective as the policy based on risk screening but at the price of intervening on 17.3% (4.1%–34.0%) more people of the older population.

Discussion

This study is the first that validates and estimates the impact of the screening algorithm of these guidelines. Main limitations are related to some modelling assumptions.

Conclusions

The AGS/BGS screening algorithm has low sensitivity. Nevertheless, its adoption would bring benefits with respect to policies of preventive interventions that act regardless of individual risk assessment.

Electronic supplementary material

The online version of this article (10.1007/s40520-018-1051-5) contains supplementary material, which is available to authorized users.

Keywords: Fall, Impact, Prevention, Risk, Validation, TUG

Introduction

Falls are common and burdensome accidents among older adults. About one-third of people over the age of 65 fall at least once a year [1]. Falls may lead to injuries and fear of falling, undermining health and wellbeing. Worldwide, it is estimated that falls are responsible for the annual loss of 35 million disability-adjusted life years [2].

Different national institutes of health have taken the guidelines for fall prevention issued by the American Geriatrics Society (AGS) and the British Geriatrics Society (BGS) [3, 4] as a model to elaborate their specific guidelines. This is the case for the National Institute for Health and Care Excellence in England and Wales [5] and the Italian National Institute of Health (Istituto Superiore di Sanità) [6].

The current AGS/BGS guidelines for fall prevention in community-dwelling older adults (last update 2011) describe a fall preventive service as composed of three main elements: a brief screening, an in-depth multifactorial fall risk assessment, and targeted interventions [3]. The screening is intended to be applied yearly on the whole population of older adults (65 years or older) to discriminate between high-risk and low-risk persons. The multifactorial fall risk assessment is then applied to those at high risk. Its function is to identify the factors underlying the fall risk and, consequently, to decide upon the most appropriate preventive intervention.

The screening makes use of information about previous falls and difficulties or abnormalities in gait and balance. The recommendations are reported in Table S1 of the Supplementary material. The flowchart in Fig. 1 further reports the related annotations (A–E). The tests that are suggested to evaluate gait and balance (annotation E, referred in recommendations 5, 6, and 7) are the Get Up and Go test, the Timed Up And Go (TUG) test, the Berg Balance Scale, and the Performance-Oriented Mobility Assessment [3, 4].

Fig. 1.

Fig. 1

Flowchart of the AGS/BGS screening algorithm [3] and results of its application. Falls after the screening are estimated in the observational/no-preventive-intervention scenario. Letters in square brackets refer to guideline annotations. Percentages are standardized according to the distribution of age and sex in the Italian older population (as detailed in Supplementary material). 95% confidence intervals are in round brackets. Numbers of persons in the InCHIANTI dataset are in grey. NA data not available. Criterion for E: TUG > 13.5 s

Methodological literature about risk models in medicine has identified two important steps to evaluate a risk model before its widespread use: external validation and impact analysis. External validation is the evaluation of the predictive accuracy of the model, employing data that have not been used for its development. Impact analysis is the evaluation of the clinical and organizational consequences that are brought about by its introduction in clinical practice [710]. Validation of tools for fall risk assessment has also been recognized recently by the United States Preventive Service Task Force as an important research need [11].

The risk screening algorithm proposed in the current AGS/BGS guidelines has neither undergone external validation nor impact analysis. In the present study, we aim to address these two points, evaluating its predictive accuracy and estimating the effects it would have when integrated within the whole fall preventive service (i.e. when followed by preventive interventions targeted on those screened as at high risk).

Methods

Data

As data source, we used the InCHIANTI, an epidemiological study about mobility in the elderly [12] (ClinicalTrials.gov NCT01331512). The InCHIANTI cohort is made of subjects from Bagno a Ripoli and Greve in Chianti, two little towns in Tuscany, Italy. At baseline, persons aged 65 years or more were randomly selected from the municipality registries. People aged 90 years or more were oversampled. Other persons aged between 20 and 65 years were randomly selected and sequentially invited to ensure at least 30 men and 30 women for decade of age in this younger age group [12]. For the present study, we have used data from the 4th follow-up (FU4) of this cohort, that took place between June 2013 and July 2014. The participants received a home interview and some weeks later they were invited to a clinical centre for the clinical evaluation and the physical performance assessment (tests: TUG, Short Physical Performance Battery (SPPB) [13], and 7 m-gait test at comfortable speed). To prospectively ascertain the occurrence of falls, the participants were contacted monthly with a phone interview for the following 6 months, and with a last call 12 months after the clinical assessment. In persons who scored 18 or less in the Mini Mental State Examination (MMSE), the interviews were administered to a proxy [12].

We have simulated how the InCHIANTI participants would be classified according to the AGS/BGS screening algorithm. Occurrence and number of falls in the year prior to the assessment (needed for annotations B and D of the AGS/BGS guidelines) were directly asked to the participants during the home interview. Information about reported difficulties with walking or balance (annotation B) was derived from the question ‘Any difficulty walking across a small room?’. Assessment in gait or balance abnormalities (annotation E) was determined according to different tests. In particular, we considered TUG, SPPB, and gait speed. The case of patients presenting to the physician with an acute fall (annotation B) was not considered.

Predictive accuracy and impact analysis

Using data about prospective falls, we have estimated fall rates for both high-risk and low-risk subjects. The true positive (TP), true negative (TN), false positive (FP), and false negative (FN) rates were calculated standardizing them to the Italian population of older adults, as explained in the Supplementary material.

The predictive accuracy was quantified from TP, TN, FP and FN in terms of sensitivity (Se), specificity (Sp), positive and negative predictive values (PPV, NPV), and accuracy (Acc).

We have taken the percentage of persons that are referred to costly multifactorial fall risk assessments and tailored interventions (Co) as a measure of the size and cost of the preventive service, and the percentage of persons that experience at least a fall in the 12 months after the screening (F) as a measure of its clinical effectiveness. We have assumed that the multifactorial risk assessment and the intervention determine a reduction in the risk of falling quantified by the relative risk RR = 0.78 (95% confidence interval (CI) 0.64–0.94) [14].

We have compared the advantages of the AGS/BGS screening with respect to three simple alternative scenarios that do not make use of fall risk screening: implementation of the multifactorial risk assessment and tailored intervention on none (scenario 1), everyone (scenario 2), and a fraction of the population chosen regardless of fall risk (scenario 3). For simplicity, it was assumed that the intervention-on-none scenario could be assimilated to what captured by the InCHIANTI observational data. The Co and F measures for all the alternatives were thus calculated as shown in Table 1 all the analyses were performed using the R statistical software, version 3.3.2 (R Core Team, Vienna, Austria) [15].

Table 1.

Number of persons referred to multifactorial intervention (Co) and number of persons that experience at least a fall in 1 year (F) for the screening strategy and the three alternative scenarios

Screening Intervention on none Intervention on everyone Intervention regardless of fall risk
Co TP + FP 0 100% Co
F RR·TP + FN TP + FN RR·(TP + FN) (TP + FN) [1 − Co + Co·RR]

TP true positive, FP false positive, FN false negative, RR relative risk

Results

Five hundred forty-one (541) participants of the InCHIANTI FU4 survey, aged 65 years or more, received the home interview. Of those, for 438 old participants it was possible to derive information about falls during the 12-month follow-up. Table 2 gives descriptive statistics of the included sample and after standardization.

Table 2.

Descriptive statistics

Sample (crude) statistics Population (standardized) statistics
N 438
Age Mean (sd): 82.4 (6.5) years Mean (sd): 75.9 (7.6) years
Gender (women) 60.7% 56.8%
MMSE

Mean (sd): 23.1 (7.9)

≥ 24: 72.3%

19–23: 8.6%

10–18: 9.6%

≤ 9: 9.6%

NA: n = 30

Mean (sd): 25.4 (6.7)

≥ 24: 85.1%

19–23: 4.3%

10–18: 5.7%

≤ 9: 5.0%

Self-reported walking difficulties 22.8% 12.3%
Use of mobility aid

25.9%

NA: n = 90

13.8%
TUG

Mean (sd): 12.2 (5.5) s

NA: n = 164

Mean (sd): 10.7 (4.4) s
SPPB

Mean (sd): 8.1 (3.6)

NA: n = 124

Mean (sd): 9.5 (3.1)
Gait speed (7 m, comfortable speed)

Mean (sd): 1.08 (0.30) m/s

NA: n = 171

Mean (sd): 1.19 (0.28) m/s
Number of falls in the previous 12 months

0: 73.1%

1: 16.9%

2+: 10.0%

NA: n = 7

0: 76.5%

1: 15.4%

2+: 8.1%

Number of falls in the following 12 months

0: 80.1%

1: 12.1%

2+: 7.8%

0: 85.9%

1: 8.1%

2+: 6.0%

Crude statistics are descriptive of the sample. Population statistics have been derived after standardization for age and gender according to the demographic structure of the Italian population of older adults (as mentioned in Methods and explained in Supplementary material). Descriptive statistics for the low and high risk sub-groups is given in Supplementary material

NA not available, MMSE mini mental state examination, TUG timed up and go test, SPPB short physical performance battery, sd standard deviation

Figure 1 shows the results of our analysis simulating the application of the screening algorithm suggested in the AGS/BGS guidelines, for the case of gait and balance assessed with TUG (cut-off 13.5 s). All the reported rates are standardized for age and sex, as detailed in the Supplementary material. 18.0% (95% CI 13.7%–22.4%) of the population would be considered at high risk and addressed with multifactorial fall risk assessment and possible multifactorial intervention, whereas 79.8% (95% CI 75.4%–84.2%) would be considered at low risk and given the sole advice to present for reassessment after 12 months. Evaluation of gait and balance with a functional test, as indicated in annotation E, would be required for 12.4% (95% CI 7.4%–17.5%).

Figure 2 reports the predictive accuracy measures in the form of Receiver Operating Characteristic (ROC) curves and the results of the impact analysis (i.e. Co and F), using TUG, SPPB, and gait speed for assessing gait and balance. Regardless of the functional test, the sensitivity with respect to at least one ranges from 33.8 to 47.8%, while the specificity from 74.1 to 84.4%. The extremes of these ranges do not depend on the specific functional test because they follow from assigning the whole part of the population undergoing gait and balance assessment (12.4%) to either the abnormality or non-abnormality branch of the flowchart. Tables S3 and S4 in the Supplementary material provide numerical results on particular cut-offs and for both single fallers and multiple fallers: TUG with cut-offs at 12, 13.5, and 15 s [16], SPPB with cut-offs at 9 and 11 [13], and gait speed with cut-offs at 0.8 and 1 m/s [17]. For these cut-offs the sensitivity with respect to at least one fall ranges from 35.1 to 43.3%, whereas the specificity from 79.0 to 84.3%.

Fig. 2.

Fig. 2

Panel a: Receiver operating characteristic (ROC) curves. Panel b: fraction of the population of older adults targeted by a preventive intervention (Co) vs fraction of the population of older adults experiencing at least one fall in the 12 months after the screening (F). The different colors codify different alternatives for assessing abnormalities in gait and balance: Timed Up And Go test (TUG), Short Physical Performance Battery (SPPB), and gait speed. The lines span all the possible cutoffs on these variables. Alternative preventive strategies: intervention on none (empty circle, scenario 1), intervention on everyone (filled circle, scenario 2), intervention on a given fraction of persons chosen regardless of their risk (random strategy, dashed line, scenario 3). The vertical and horizontal segments are for comparing the AGS/BGS with a cutoff of 13.5 s on TUG with the random strategy

In the intervention-on-none scenario (scenario 1), 14.1% (95% CI 9.8%–19%) of the older population fall at least once a year. Instead, the application of the AGS/BGS guidelines is estimated to result in 13.0% (95% CI 8.6%–17.3%) of fallers, i.e., a reduction of about 8% of fallers.

In Fig. 2b, the length of the horizontal segment indicates that, with respect to a preventive strategy that acts regardless of any fall risk estimation (scenario 3) and that reaches the same percentage of the population (18%), the application of the AGS/BGS screening algorithm would result in a further reduction of fallers equal to 0.5% (95% CI 0.08%–1.1%) of the older population.

Similarly, the length of the vertical segment indicates that the policy of targeting people regardless of their risk would be as effective as the screening policy (reduction of 8% of fallers) only at the price of intervening on 35.8%, i.e. 17.3% (95% CI 4.1%–34.0%) more people of the older population.

Discussion

Within this study we have simulated the possible effects of the AGS/BGS screening algorithm for fall risk, evaluating its predictive accuracy and estimating its impact in a population of community dwelling older adults. The relevance of this study lies in these elements of novelty and in the important role acknowledged to the AGS/BGS guidelines for fall prevention.

We tailored the analyses according to the age and sex distribution of the Italian population of older adults. The screening would select about 18% of the older population at a high risk of falling. The sensitivity for single falls is particularly low, ranging between 35.1 and 43.3%, which implies that a high number of people would fall despite being stratified in the low risk group. The specificity is between 79.0 and 84.3%. The accuracy is higher for multiple falls than single falls, which is consistent with other results in the literature [18, 19]. Gait and balance assessment, the most time-consuming elements of the screening algorithm, would be required for only 12.4% of the persons.

Our findings also show that a hypothetical policy that addresses a given percentage of the population for prevention regardless of their risk (scenario 3) could be as effective as the screening-based policy only at the price of addressing 35.8% of the population, i.e. 17.3% more than actually needed. Although hypothetical, this random policy mimics what happens when a fall preventive service is implemented heterogeneously over the territory, without risk-related inclusion criteria.

Lamb et al. [20] tested the performance of the screening algorithm of the American Geriatrics Society/British Geriatrics Society/American Academy of Orthopaedic Surgeons (AGS/BGS/AAOS) 2001 guidelines [21] and the Ganz guidelines [22], using data from the Women’s Health and Aging Study (WHAS). This population was made up of elderly women with disabilities. For the 2001 AGS/BGS/AAOS guidelines (that are slightly different from the current ones) they reported a sensitivity between 28 and 43%, and a specificity between 74 and 88%, which are similar to our findings. In particular, the low sensitivity indicates a high false negative rate with respect to true positive rate. Instead, for the Ganz guidelines Lamb et al. reported a higher sensitivity (59%–74%) and lower specificity (42%–64%).

Recommendation number 7 of the AGS/BGS guidelines suggests that “older persons who have fallen should have an assessment of gait and balance using one of the available evaluations”. Three distinct evaluation tools have been used within the geriatric scientific community for the last two decades: the TUG [16], the SPPB [23], and gait speed [24]. In this study, we have, therefore, tested all three tools, choosing different cut-offs, and have obtained similar results. Besides considering that these measures are correlated, the similarity of results is prominently explained by the fact that, according to the guidelines, these tools have to be applied only on a part of the population which in our analysis turned out to be relatively small (12.4% of the population). While underlining the similarity of these results, we think that an analysis to appreciate the finer differences among them would require a higher sample size [in our data source only 52 older adults fell in the case of needing the assessment (Fig. 1)].

In our data source (the InCHIANTI dataset), the prospective annual incidence of falling was 19.9%. After standardizing it for age and sex, this rate further dropped to 14.1%. This rate is considerably lower than the 30% that is commonly cited (e.g. [1, 25]), but in line with other European studies [26]. It is known from the literature that fall rates are largely variable among countries and studies. The reason may lie partly in the different distribution of intrinsic risk factors among populations, and partly due to different methods employed for fall assessment [26, 27].

For simplicity, we have used the data from the InCHIANTI observational study to simulate the intervention-on-none scenario. In the Tuscany region a program of group physical exercise (the Adaptive Physical Activity program [28]) has been in place since 2006. Thus, strictly speaking, the observational scenario does not correspond to no intervention. However, in the area where the InCHIANTI study is carried out, only 2.2% of the population of older people have taken part in this program (source Regione Toscana). Therefore, we consider our assumption of no intervention under observation to be reasonable. Another assumption was to consider the relative risk (RR) of the preventive intervention equal across risk strata. This was determined by a lack of more precise evidence and is common practice for these kinds of analyses (e.g. [29]).

Preventive strategies can be population-wide or high-risk targeting. High-risk targeting strategies are needed when the preventive intervention can have harmful side effects, or when its implementation is not feasible on the whole population [30]. Traditional fall preventive interventions belong to the latter due to their cost (the harms being no greater than small [11]). Consequently, their effectiveness sensibly depends on the criteria employed for risk stratification. Nevertheless, this dependency is not usually investigated, most likely because of the difficulties associated with running large clinical trials. Our modelling approach enabled us to overcome these difficulties, carrying out an impact analysis that links the statistical predictive properties of the AGS/BGS screening algorithm, the clinical efficacy of fall preventive interventions, and the consequences in terms of number of people to intervene on and number of prevented falls.

The modest predictive accuracy of the AGS/BGS screening algorithm, and in particular its low sensitivity, suggests that developing better tools for fall prediction should be in the research agenda. Current efforts in research and innovation also strive to obtain technologies that empower elderly people and shift the preventive efforts from dedicated health centres to their homes. This shift could lead the movement in fall prevention from high-risk to more population-wide strategies.

Conclusions

According to our analyses, the AGS/BGS screening tool for fall risk has a sensitivity for single falls between 35 and 43% and a specificity between 79 and 84%. It marks 18% of the older population as at high risk. Gait and balance assessment, that are the most time-consuming elements of the screening algorithm, are required for only 12% of the population. Despite the modest predictive accuracy of this screening, its adoption has benefits with respect to policies of preventive interventions that act regardless of individual risk assessment. These benefits could increase improving the predictive accuracy of the algorithm. The results of this study should be validated on larger observational or experimental datasets.

Electronic supplementary material

Below is the link to the electronic supplementary material.

Acknowledgements

The authors would like to kindly thank Dr. Oriana Ciani for reading early drafts of this work, Prof. Cinzia Viroli and Dr. Matteo Farnè for some advice on statistics, and Dr. Julia Marshal Leach for a linguistic revision. This study has been conducted despite the regulatory (Italian law 240/2010) and financial [31] problems of the Italian research system. We thank the anonymous reviewer for his/her constructive comments.

Funding

This work was supported by the European Commission (FARSEEING, Grant number 288940, and PreventIT, Grant number 689238). The InCHIANTI (Invecchiare in Chianti, aging in the Chianti area) follow-up study 4 (2013–2015) was coordinated and funded by the Tuscany Regional Health Agency in a partnership with the Florence Health Care Agency, the local Administrators and the primary care physicians of Greve in Chianti and Bagno a Ripoli. The Study was initially managed by the National Institute on Research and Care of the Elderly (INRCA, Ancona, Italy) and it was funded by Italian Health Ministry and by a National Institutes of Health—National Institute on Aging contract.

Compliance with ethical standards

Conflict of interest

PP and LC received funds from the European Commission under the schemes FP7 and Horizon 2020. CB received honoraria from Amgen for speaking about fall prevention. He was a consultant for E. Lilly for a study on myostatin inhibitor and for Bosch Health Care for a study on development of wearable sensors. LC is co-founder and stockholder of mHT, spin-off of the University of Bologna. The sponsors had no role in the design, methods, subject recruitment, data collections, analysis and preparation of the paper.

Statement of human rights

The study protocol was approved by the ethical committee of the Azienda Sanitaria di Firenze and complies with the Declaration of Helsinki.

Informed consent

All participants (and their proxies) received a detailed description of the study purpose and procedures, and gave their written informed consent.

Data availability statement

The dataset is available from the InCHIANTI steering committee on reasonable request.

References

  • 1.World Health Organization Department of Ageing and Life Course . WHO global report on falls prevention in older age. Geneva: World Health Organization; 2008. [Google Scholar]
  • 2.Murray CJL, Vos T, Lozano R, et al. Disability-adjusted life years (DALYs) for 291 diseases and injuries in 21 regions, 1990–2010: a systematic analysis for the Global Burden of Disease Study 2010. Lancet. 2012;380:2197–2223. doi: 10.1016/S0140-6736(12)61689-4. [DOI] [PubMed] [Google Scholar]
  • 3.Panel of Falls in Older Persons American Geriatrics Society and British Geriatrics Society Summary of the Updated American Geriatrics Society/British Geriatrics Society clinical practice guideline for prevention of falls in older persons. J Am Geriatr Soc. 2011;59:148–157. doi: 10.1111/j.1532-5415.2010.03234.x. [DOI] [PubMed] [Google Scholar]
  • 4.Panel on Prevention of Falls in Older Persons, American Geriatrics Society and British Geriatrics Society (2011) Prevention of falls in older persons: AGS/BGS clinical practice guideline. https://geriatricscareonline.org/toc/updated-american-geriatrics-societybritish-geriatrics-society-clinicalpractice-guideline-for-prevention-of-falls-in-older-persons-and-recommendations/CL014 [PubMed]
  • 5.National Institute for Health and Care Excellence (2013) Falls in older people: assessing risk and prevention | Guidance and guidelines | NICE. https://www.nice.org.uk/Guidance/CG161. Accessed 17 Apr 2016 [PubMed]
  • 6.Brigoni P, De Masi S, Di Franco M et al (2007) Prevenzione delle cadute da incidente domestico negli anziani | SNLG-ISS. http://www.salute.gov.it/imgs/C_17_pubblicazioni_975_allegato.pdf
  • 7.Altman DG, Vergouwe Y, Royston P, et al. Prognosis and prognostic research: validating a prognostic model. BMJ. 2009;338:1432–1435. doi: 10.1136/bmj.b1432. [DOI] [PubMed] [Google Scholar]
  • 8.Moons KGM, Altman DG, Vergouwe Y, et al. Prognosis and prognostic research: application and impact of prognostic models in clinical practice. BMJ. 2009;338:1487–1490. doi: 10.1136/bmj.b606. [DOI] [PubMed] [Google Scholar]
  • 9.Reilly BM, Evans AT. Translating clinical research into clinical practice: impact of using prediction rules to make decisions. Ann Intern Med. 2006;144:201–209. doi: 10.7326/0003-4819-144-3-200602070-00009. [DOI] [PubMed] [Google Scholar]
  • 10.Wallace E, Smith SM, Perera-Salazar R, et al. Framework for the impact analysis and implementation of Clinical Prediction Rules (CPRs) BMC Med Inf Decis Mak. 2011;11:62. doi: 10.1186/1472-6947-11-62. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 11.Grossman DC, Curry SJ, Owens DK, et al. Interventions to prevent falls in community-dwelling older adults. JAMA. 2018;319:1696. doi: 10.1001/jama.2018.0161. [DOI] [PubMed] [Google Scholar]
  • 12.Ferrucci L, Bandinelli S, Benvenuti E, et al. Subsystems contributing to the decline in ability to walk: bridging the gap between epidemiology and geriatric practice in the InCHIANTI study. J Am Geriatr Soc. 2000;48:1618–1625. doi: 10.1111/j.1532-5415.2000.tb03873.x. [DOI] [PubMed] [Google Scholar]
  • 13.Guralnik JM, Simonsick EM, Ferrucci L, et al. A short physical performance battery assessing lower extremity function: association with self-reported disability and prediction of mortality and nursing home admission. J Gerontol. 1994;49:M85–M94. doi: 10.1093/geronj/49.2.M85. [DOI] [PubMed] [Google Scholar]
  • 14.Gillespie LD, Robertson MC, Gillespie WJ, et al. Interventions for preventing falls in older people living in the community. Cochrane Database Syst Rev. 2012;2:CD007146. doi: 10.1002/14651858.CD007146.pub3. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 15.R Core Team (2016) R: a language and environment for statistical computing. R foundation for statistical computing, Vienna, Austria. https://www.R-project.org/
  • 16.Barry E, Galvin R, Keogh C, et al. Is the timed up and go test a useful predictor of risk of falls in community dwelling older adults: a systematic review and meta-analysis. BMC Geriatr. 2014;14:14. doi: 10.1186/1471-2318-14-14. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 17.Liang C-K, Chou M-Y, Peng L-N, et al. Gait speed and risk assessment for falls among men aged 80 years and older: a prospective cohort study in Taiwan. Eur Geriatr Med. 2014;5:298–302. doi: 10.1016/j.eurger.2014.06.034. [DOI] [Google Scholar]
  • 18.Palumbo P, Palmerini L, Chiari L. A probabilistic model to investigate the properties of prognostic tools for falls. Methods Inf Med. 2015;54:189–197. doi: 10.3414/ME13-01-0127. [DOI] [PubMed] [Google Scholar]
  • 19.Nevitt MC, Cummings SR, Kidd S, et al. Risk factors for recurrent nonsyncopal falls. A prospective study. JAMA. 1989;261:2663–2668. doi: 10.1001/jama.1989.03420180087036. [DOI] [PubMed] [Google Scholar]
  • 20.Lamb SE, McCabe C, Becker C, et al. The optimal sequence and selection of screening test items to predict fall risk in older disabled women: the Women’s Health and Aging Study. J Gerontol Med Sci. 2008;63:10821088. doi: 10.1093/gerona/63.10.1082. [DOI] [PubMed] [Google Scholar]
  • 21.American Geriatrics. Society, Society G, Of AA, On Falls Prevention OSP Guideline for the prevention of falls in older persons. J Am Geriatr Soc. 2001;49:664–672. doi: 10.1046/j.1532-5415.2001.49115.x. [DOI] [PubMed] [Google Scholar]
  • 22.Ganz DA, Bao Y, Shekelle PG, et al. Will my patient fall? JAMA. 2007;297:77–86. doi: 10.1001/jama.297.1.77. [DOI] [PubMed] [Google Scholar]
  • 23.Veronese N, Bolzetta F, Toffanello ED, et al. Association between short physical performance battery and falls in older people: the Progetto Veneto Anziani Study. Rejuvenation Res. 2014;17:276–284. doi: 10.1089/rej.2013.1491. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 24.Bongers KTJ, Schoon Y, Graauwmans MJ, et al. The predictive value of gait speed and maximum step length for falling in community-dwelling older persons. Age Ageing. 2014 doi: 10.1093/ageing/afu151. [DOI] [PubMed] [Google Scholar]
  • 25.Deandrea S, Lucenteforte E, Bravi F, et al. Risk factors for falls in community-dwelling older people: a systematic review and meta-analysis. Epidemiology. 2010;21:658–668. doi: 10.1097/EDE.0b013e3181e89905. [DOI] [PubMed] [Google Scholar]
  • 26.Franse CB, Rietjens JA, Burdorf A, et al. A prospective study on the variation in falling and fall risk among community-dwelling older citizens in 12 European countries. BMJ Open. 2017;7:e015827. doi: 10.1136/bmjopen-2017-015827. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 27.Rapp K, Freiberger E, Todd C, et al. Fall incidence in Germany: results of two population-based studies, and comparison of retrospective and prospective falls data collection methods. BMC Geriatr. 2014;14:105. doi: 10.1186/1471-2318-14-105. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 28.Macko RF, Benvenuti F, Stanphope S, et al. Adaptive physical activity improves mobility function and quality of life in chronic hemiparesis. J Rehabil Res Dev. 2008;45:323–328. doi: 10.1682/JRRD.2007.02.0025. [DOI] [PubMed] [Google Scholar]
  • 29.Pandya A, Sy S, Cho S, et al. Cost-effectiveness of 10-year risk thresholds for initiation of statin therapy for primary prevention of cardiovascular disease. JAMA. 2015;314:142. doi: 10.1001/jama.2015.6822. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 30.Zulman DM, Vijan S, Omenn GS, et al. The relative merits of population-based and targeted prevention strategies. Milbank Q. 2008;86:557–580. doi: 10.1111/j.1468-0009.2008.00534.x. [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 31.Parisi G. Governments: balance research funds across Europe. Nature. 2016;530:7588. doi: 10.1038/530033d. [DOI] [PubMed] [Google Scholar]

Associated Data

This section collects any data citations, data availability statements, or supplementary materials included in this article.

Supplementary Materials

Data Availability Statement

The dataset is available from the InCHIANTI steering committee on reasonable request.


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