Original Research

A Comprehensive Evaluation of the Relationship Between Fall Risk and Other Geriatric Syndromes

10.4274/ejgg.galenos.2021.2021-9-4

  • Güzin Çakmak

Received Date: 28.09.2021 Accepted Date: 28.12.2021 Eur J Geriatric Gerontol 2022;4(2):58-63

Objective:

Falls are important geriatric syndromes that can result in morbidity and mortality in elderly individuals. Many factors increase the risk of falls. To effectively control falls it is important to reveal its relationship with other geriatric syndromes.

Materials and Methods:

This cross-sectional study was conducted for a period of 4 months from September 2019 to January 2020. Fall risk assessment was done with the Tinetti test and the timed up and go (TUG) test. All patients underwent comprehensive geriatric assessment tests.

Results:

The study population was composed of 93 women and 57 men, and the mean age was 73±9.2 years. It was observed that the scores obtained from the Katz and Lawton-Brody scales were lower in patients with a high risk of falls. Handgrip strength, skeletal muscle mass index, mini-nutritional assessment score, and mini-mental status assessment score were lower in these patients. Geriatric depression scale score, fried and SOF frailty index scores, and the number of drugs used were higher in them. Frailty, handgrip strength, gait speed, and depression were independently associated with Tinetti-measured fall risk in linear regression analysis (R²=0.414; p<0.001, p=0.004, p=0.002, p=0.027). IADL and gait speed were found to be independently associated with fall risk according to TUG (R²=0.550; p=0.012, p<0.001).

Conclusion:

In our study, we concluded that there is a close relationship between the risk of falls and other geriatric syndromes. Effective management of geriatric syndromes will help reduce the risk of falls.

Keywords: Fall, geriatric syndromes, timed up and go, Tinetti

Introduction

Falls are important problems that limit independent mobility in older adults and are considered as one of the important geriatric syndromes (1). It is known that falls cause an increase in hospital stays and health expenditures due to complications such as injuries and fractures (2). About 30% of adults aged 65 and over have been experiencing falls each year (3). The causes of falls can be examined under two main headings as intrinsic and extrinsic causes. We can consider intrinsic factors in the two groups as age-related physiological and pathological changes. The decrease in visual sensitivity, age-related hearing loss, decrease in tactile sense and vibration sense, and balance disorders can be considered as examples of age-related physiological changes. An increase in fat mass and decrease in muscle mass with age can also be listed among them. Stroke, dementia, parkinsonism, epilepsy, and carotid sinus hypersensitivity syndrome are among the pathological causes of falls (4).

Conditions that are more common in old age and known to reduce life expectancy, such as dementia, depression, delirium, incontinence, falls, frailty, sarcopenia, and malnutrition, are called geriatric syndromes (5). Geriatric syndromes are usually seen together, not as isolated clinical conditions. Co-occurrence of geriatric syndromes can be explained by the fact that they have a common pathogenesis. They can be prevented and treated with similar approaches.

It is important to reveal the relationship between falls and other geriatric syndromes to determine preventive and therapeutic approaches. Although studies are describing these relationships separately, there is no study evaluating the relationship between fall risk and all geriatric syndromes together. We aimed to examine the relationship between fall risk and other geriatric syndromes in this study.


Materials and Methods

Participants

This cross-sectional study was carried out for a period of 4 months from September 2019 to January 2020. Patients who applied to the geriatrics outpatient clinic were included in the study. The Local Research Ethics Committee approved the study (number: 2019/269, date: 03.07.2019). All participants gave informed consent.

Exclusion criteria

Patients, who were below 65 years of age, and had already been diagnosed with any of the geriatric syndromes such as sarcopenia, frailty, malnutrition, polypharmacy, fall, urinary and fecal incontinence were not included in the study. Those with cancer and severe inflammatory disease were also excluded from the study.

Assessment of fall risk

Tinetti balance-gait evaluation scale and timed up and go test (TUG) were used for evaluation of the fall risk. Tinetti assessment tool scores gait and balance according to the ability to perform certain tasks. In the Tinetti balance-gait evaluation scale, a score of >24 means low risk of fall, 19-23 moderate risk of fall, and <19 high risks of fall (6). TUG is a test that evaluates both static and dynamic balance. It uses the time it takes for the person to get up from the chair, walk three meters, turn 180 degrees, walk back to the chair, and sit. Patients who took 14 seconds, or longer from the TUG test, were classified as high-risk for fall too (7).

Comprehensive geriatric assessment

A cognitive evaluation was done by the standardized form of mini-mental state examination (MMSE), assessment of abilities of daily living (ADL) by Katz index, and instrumental activities of daily living (IADL) by the Lawton Brody index. The evaluation of psychological status was done by the short form of the Yesavage geriatric depression scale.

In MMSE, patients were evaluated for six different areas; orientation, attention, registration, language, calculation, and recall (8). Patients whose scores ≤24 were evaluated as dementia (9). Patients were evaluated for personal hygiene, continence, toileting, dressing, feeding, and ambulating by Katz index of ADL. High scores were considered high self-sufficiency (10). Lawton Brody index was used for evaluating IADL like house cleaning, doing the laundry, shopping, managing medications, cooking, communicating with others, using transportation, and doing financial management; higher scores meant higher independence (11). Patients with GDS scores of 5 and higher were accepted as positive for depression (12).

Malnutrition was assessed by a mini nutritional assessment, short-formed (MNA-SF), long-form (MNA-LF), and the Global Leadership Initiative on malnutrition criteria (GLIM) (13-15). MNA-SF is the first part of the MNA test and takes only a few minutes to complete. The maximum score for MNA-SF is 14; a score of 12 points or greater indicates that the patient has an acceptable nutritional status and the full MNA is not needed to be done. However, a score of 11 points or below is an indication to proceed with the MNA-LF. Completing the MNA-LF takes 10 to 15 minutes. The maximum score for the second part is 16 and the maximum score for MNA-LF is 30. Scores <17 are accepted as malnutrition, 17-23.5 is accepted as the risk for malnutrition, and 24-30 is accepted as normal. GLIM criteria are new criteria for diagnosing malnutrition. These criteria are based on the verification of phenotypic criteria, such as low body mass index, non-volitional loss of weight, or reduced muscle mass, associated with etiological variables, such as reduced food intake, the presence of inflammation, or disease burden. Also, the stage of malnutrition can be determined as moderate and severe according to body mass index, loss of weight, and muscle mass.

Assessment for sarcopenia

For defining sarcopenia, muscle strength, muscle mass, and physical performance were assessed. SARC-F (strength, assistance need for walking, rising from a chair, climbing stairs, and falls) test was used to select cases to be evaluated for muscle strength (16). The handgrip test was performed if the patient had a score ≥4 from SARC-F to diagnose probable sarcopenia. The handgrip test was performed by using a hand dynamometer with the dominant hand. For females <16 kg (kilograms), for males <27 kg were accepted as probable sarcopenic (17). A bioimpedance test was carried out on probable sarcopenic patients to assess skeletal muscle mass. Sarcopenia was diagnosed by skeletal muscle mass index. In this study, we used skeletal muscle mass index (SMMI) adjusted to height. SMMI was calculated by dividing skeletal muscle mass by the square of height (18). We evaluated gait speed with a four-meter gait speed test to diagnose severe sarcopenia (19).

Assessment for frailty syndrome

Frailty was assessed by using the fried frailty index (FFI) and study of osteoporotic fractures (SOF) index. FFI is constituted from five criteria: Unintentional weight loss, self-reported poor energy, weakness (reduced grip strength), slow gait speed, and low physical activity. People who were positive for three and more FFI criteria were defined as frail. Those who were positive for one or two criteria were described as pre-frail (20). The SOF index evaluates frailty syndrome by using three components (weight loss, inability to rise from a chair five times without using the arms, and reduced energy). The presence of frailty syndrome was determined by the presence of two or more of the three criteria in the SOF index. Patients that were positive for 1 criterion were described as pre-frail (21). People not meeting any criteria were defined as robust in both assessment tools.

Statistics

The variables were analyzed for the normality of their distribution using the Kolmogorov-Smirnov test. All data were normally distributed. Numerical variables were denoted as mean ± standard deviation. Categorical variables were represented as frequencies. Comparison groups were done by independent sample t-test and ANOVA. A univariate linear regression model was used to study the linear relationship between the risk of falls and other geriatric syndromes. The significance check in the linear regression analysis was based on an F-test and the significance of single independent variables was assessed by a t-test. The IBM SPSS for Windows, version 22.0 (IBM Corp., Armonk, NY, USA) was used for statistical analysis.


Results

One hundred and fifty subjects were included in this study evaluating the relationship between fall risk and geriatric syndromes. Fifty-six were women and 94 were men. The mean age was 73±9.2. ADL and IADL seemed to be impaired more in patients with a high risk of fall than in patients with low risk when evaluated with the Tinetti test (p<0.001, p=0.044). Nutritional status evaluated by MNA, MNA-SF, and GLIM criteria were found to be better in patients with a low risk of fall than in patients with moderate and high risk (p<0.001). Handgrip strength was preserved better in those with a low risk than in those with a high risk (p=0.003). Gait speed was also higher in those who were at low risk of fall when compared to the patients who had moderate and high risk (p<0.001). It was observed that low-risk patients met the criteria of fried and SOF frailty indexes less than others (p<0.001). The geriatric depression score was also lower in those with a low risk of fall compared to those with a moderate and high risk of fall (p=0.008, p<0.001). The number of drugs used was higher in high-risk patients than in low-risk patients (p=0.003). The relationship between fall risk and other geriatric syndromes according to the Tinetti test is summarized in Table 1.

When we evaluated the fall risk with TUG, we found that ADL and IADL were better in those with a low risk of fall (p<0.001). The MMSE score was lower in those with a high risk of falls (p=0.003). Fried and SOF frailty index scores were higher in those with a high risk of fall (p=0.003, p=0.001). Handgrip strength, SMMI, and gait speed were decreased in the high-risk group (p=0.023, p<0.001, p<0.001). The number of drugs used was higher in the high-risk group (p=0.032). The relationship between fall risk and other geriatric syndromes according to the TUG test is summarized in Table 2.

We found that the FFI score, handgrip strength, gait speed, and GDS were independently related to fall risk measured with Tinetti in linear regression analysis (R²=0.414; p<0.001, p=0.004, p=0.002, p=0.027). IADL and gait speed were independently related to fall risk according to the TUG in linear regression analysis (R²=0.550; p=0.012, p<0.001). In the linear regression analysis performed with the risk of falling according to the Tinetti test, the R2 value was 40% in the analysis and 50% in the analysis performed with the TUG. Considering this, we can say that the model fit is moderate. Results of linear regression analysis were summarized in Table 3 and 4.


Discussion

In our study, we observed that the risk of falls was associated with ADL and IADL. Sekaran et al. (22) had evaluated the association between falls and ADL in a 10-year prospective cohort study in adults aged 65-69 years. The researchers concluded that there is a significant association between increased risk of falls and ADL difficulties (22). Brown et al. (23) revealed that loss of IADL was strongly associated with the risk of falls. The authors suggested that IADL levels could be a powerful and practical tool for screening patients for fall risk (23). Because the risk of fall makes independent movement more difficult, the risk of fall and disability are closely related.

We found a significant relationship between the risk of falls and malnutrition. Bórikova et al. (24) had shown the association between malnutrition and the risk of fall, in their study. The authors revealed that none of the patients with a history of a single fall were suffered from malnutrition at hospitalization, but malnutrition was frequently seen in those with a history of multiple falls (24). Malnutrition can lead to nutrient deficiencies such as vitamin B12 deficiency, leading to loss of balance and fall. In addition, muscle wasting, which is directly affected by malnutrition, can increase the risk of falls. Frailty was also related to fall risk according to our study results. Cognitive and physical fragility, which are components of frailty, can increase the risk of falls (25). Clegg et al. (26) have previously shown that frailty is associated with an increased risk of falls Additionally, more than half of the frail adults suffered from falls.

In our study, high GDS scores and low MMSE were found to be related to falling risk. Kamińska et al. (27) also revealed that the risk of fall is associated with regression in ADL, depression, and cognitive decline. Unlike our study, cognitive functions were evaluated with abbreviated mental test scores in this study. The relationship between depression, dementia, and the risk of falls can be attributed to many reasons. Both situations are accompanied by distraction, we can specify this as one of the reasons. In both cases, antipsychotics that have a place in the treatment may also increase the risk of falls in older individuals. In both cases, deterioration of nutritional status can lead to muscle loss and falls.

We revealed that the risk of fall was found to be associated with the parameters evaluating sarcopenia. Different studies have shown that sarcopenia is one of the parameters that increase the risk of falls in older adults. These studies were reviewed in a meta-analysis by Yeung et al. (28). The positive association between sarcopenia and falls in older adults reinforces the need to take measures to see the impact of sarcopenia prevention on falls.

We also concluded that the increase in the number of drugs used increases the risk of falls. In the study of Dhalwani et al. (29), the use of ≥4 drugs increased the frequency of falls by 18%, while the use of ≥10 drugs increased the frequency of falls by 50%. The relationship between the increase in the number of drugs used and the increase in the risk of fall may be related to the use of drugs that increase the risk of fall. According to the study of Woolcott et al. (30) antidepressants, neuroleptics, antipsychotics, benzodiazepines, sedative-hypnotics, and antihypertensive drugs were shown as the drugs that increase the risk of falling the most. In addition, it should be taken into account that people with multimorbidity will use drugs more and these people may have co-morbid diseases that may trigger falls.

In their article, van der Velde and Seppala (31) stated that there is a lack of knowledge about the role of drugs as a fall risk factor in caregivers of the elderly. They also stated that the members of the task & finish group of European Geriatric Medicine Association are engaged in activities aimed at raising public awareness and disseminating information to facilitate appropriate (de)prescription in elderly people at risk of fall. It is important to increase such educational activities for healthcare professionals, caregivers, and patients about drugs that increase the risk of falls (31).

Measures that can be taken to prevent falls are not limited to deprescribing risky drugs. Exercises aimed at strengthening muscles and increasing balance are among them too. Correction of visual and hearing disorders, improvement of nutrition, and support of cognitive functions are other measures that can be taken. It is also important to make the environmental conditions safe for the patients at risk of falls (32).

Although there have been studies evaluating the relationship between fall risks and different geriatric syndromes, there is no study evaluating the effect of many geriatric syndromes on fall risk at the same time. This is a strong side of our work.

Study Limitations

The most important limitation of our study is that multiple analyzes were performed with data from a relatively small sample. In a prospective study with a larger sample, the relationship between geriatric syndromes and falls, fall-related morbidity, and mortality can be revealed. Another limitation of the study is that the assessment of depression made by the geriatric depression scale was not confirmed by the clinical assessment made by a psychiatrist. The relationship between depression and fall can be better demonstrated with a prospective study in which both detailed psychiatric evaluation and response to depression treatment and drug side effects are evaluated.


Conclusion

In our study, it was concluded that disability, malnutrition, frailty, sarcopenia, depression, and polypharmacy were more common in patients with a high risk of falls. In addition, deterioration in cognitive functions was also higher.

Falls are important geriatric syndromes that can result in morbidity and mortality in the elderly. Predicting situations that increase the risk of falling is important for effective planning of the measures to be taken. Revealing the relationship with geriatric syndromes leads us to the conclusion that effective management of geriatric syndromes can reduce the risk of falls. It would be useful to carry out studies evaluating the measures and effectiveness that can be taken in this regard.

Ethics

Ethics Committee Approval: The study protocol was approved by the Local Research Ethics Committee (number: 2019/269, date: 03.07.2019).

Informed Consent: All participants gave informed consent.

Peer-review: Externally peer-reviewed.

Financial Disclosure: The author declared that this study received no financial support.


Images

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