| Literature DB >> 27126440 |
Ana Diez-Ruiz1, Antonio Bueno-Errandonea1, Jazmina Nuñez-Barrio1, Inmaculada Sanchez-Martín1, Kalliopi Vrotsou2, Itziar Vergara3.
Abstract
BACKGROUND: Frailty can be defined as a progressive loss of reserve and adaptive capacity associated with an overall deterioration in health that can result in disability, loss of independence, hospitalisation, extensive use of healthcare resources, admission to long-term care and death. Nevertheless, despite widespread use of the term, there is no agreement on the definition of frailty or an instrument to identify it in a straightforward way. The purpose of the current study was to explore which factors are associated with frailty-related adverse outcomes in elderly individuals and to propose a suitable tool for identifying such individuals, particularly in primary care settings.Entities:
Keywords: Frailty; Identification; Primary care
Mesh:
Year: 2016 PMID: 27126440 PMCID: PMC4850657 DOI: 10.1186/s12877-016-0263-9
Source DB: PubMed Journal: BMC Geriatr ISSN: 1471-2318 Impact factor: 3.921
Fig. 1Flow chart of patient recruitment and follow-up
Baseline data of the entire sample and comparison between the two groups of adverse events
| Adverse event | ||||
|---|---|---|---|---|
| Baseline variables | Total ( | Yes ( | No ( |
|
| Age; mean (SD) | 79.4 (4.1) | 81.7 (4.6) | 78.4 (3.5) | <0.001 |
| Sex: Female | 136 (63) | 32 (64) | 76 (64) | 0.987 |
| Able to read and write | 205 (95) | 47 (94) | 114 (96) | 0.695 |
| Living with spouse of family member | 162 (75) | 35 (70) | 88 (74) | 0.599 |
| Weight loss in the last yearb | 18 (8) | 6 (12) | 5 (4) | 0.085 |
| Low level of physical activity | 22 (10) | 11 (22) | 6 (5) | 0.001 |
| Polipharmacy | 131 (61) | 41 (82) | 65 (55) | 0.001 |
| Fall in the previous year | 52 (24) | 12 (24) | 30 (25) | 0.868 |
| Hospital admission in the previous year | 36 (17) | 13 (26) | 13 (11) | 0.013 |
| Self-perceived health | ||||
| Good/very good | 136 (63) | 26 (52) | 91 (77) | 0.003 |
| Fair | 73 (34) | 23 (46) | 26 (22) | |
| Poor/very poor | 7 (3) | 1 (2) | 2 (1) | |
| Social risk (Gijon); median (Q1, Q3) | 10 (9, 12) | 10 (8, 12) | 10 (9, 12) | 0.442 |
| Comorbidity: Yes | 153 (72) | 35 (70) | 62 (52) | 0.032 |
| Presence of health problems a | ||||
| Body mass index >30 kg/m2 | 63 (29) | 18 (36) | 33 (28) | 0.285 |
| Musculoskeletal disorders | 52 (24) | 17 (34) | 21 (18) | 0.020 |
| Diabetes under treatment | 37 (17) | 8 (16) | 23 (19) | 0.610 |
| Chronic obstructive pulmonary diseaseb | 12 (6) | 6 (12) | 1 (1) | 0.003 |
| Visual deficit b | 8 (4) | 3 (6) | 2 (1) | 0.154 |
| Auditory deficit b | 6 (3) | 1 (2) | 4 (4) | 1.000 |
Adverse event: death or loss of independence defined as ≥10 % drop in Barthel’s score compared to baseline, during the follow-up. Data are expressed as frequencies (percentages), unless otherwise stated. For dichotomous variables one of the two categories are presented.
aPresented health problems are not exclusive; a patient can suffer by more than one. P values in the last column refer to comparisons between the groups with and without adverse events (Yes vs. No). Age was compared with Student’s t test
bthese variables were compared with Fisher’s exact test, the Chi-square test was implemented for the rest of the variables
Baseline data on functioning and comparison between groups with and without adverse frailty-related outcomes
| Adverse event | |||
|---|---|---|---|
| Functional tests | Yes ( | No ( |
|
| Barthel’s index; | |||
| 90 points | 16 (32) | 7 (6) | <0.001 |
| 95–100 points | 34 (68) | 112 (94) | |
| Lawton IADL; median (Q1, Q3) | 6 (4, 8) | 8 (5, 8) | <0.001 |
| Timed Up and Go time, s; median (Q1, Q3) | 15 (13, 22) | 12.5 (11, 14) | <0.001 |
| Gait Speed, m/s.; mean (SD) | 0.8 (0.2) | 1.1 (0.2) | <0.001 |
Categorical variables were compared with the chi-squared test; means and medians were compared using the Student’s t and Wilcoxon tests, respectively
Adverse event death or loss of independence defined as ≥10 % drop in Barthel’s score compared to baseline, during the follow-up, IADL Instrumental activities of daily living. The abbreviations: s and m/s indicate seconds and meters per second respectively. Q1, Q3 interquartile range from the first to the third quartile, SD standard deviation
Multivariate logistic regression model for the onset of adverse events related to frailty
| Variable | Odds ratio | 95 % CI |
|
|---|---|---|---|
| Age, years | 1.14 | 1.03, 1.25 | 0.012 |
| Timed Up and Go time, s | 1.28 | 1.14, 1.44 | <0.001 |
| Polipharmacy | |||
| No | Ref | – | – |
| Yes | 2.74 | 1.06, 7.06 | 0.037 |
| Goodness-of-fit statistics | |||
| Area under the curve: 0.822 | |||
| R squared / adjusted R squared: 0.270/ 0.384 | |||
| Hosmer-Lemeshow: | |||
The probability of suffering a frailty-related adverse event during the follow-up period was modelled. Adverse event: death or loss of independence defined as ≥10 % drop in Barthel’s score compared to baseline, during the follow-up, 95 % CI: 95 % confidence interval. Polypharmacy: long-term prescription of ≥ 4 drugs. The model is based on n = 50 adverse events and n = 118 positive events due to 1 missing value in TUG test
Fig. 2ROC of the proposed model for identifying frailty in primary care. Receiver operating characteristic curve for the final model to predict frailty-related outcomes, based on age, Timed Up and Go time and polypharmacy status. The curve represents the relationship between sensitivity and 1-specificity for all potential cut-off points of the diagnostic test under study. The area under the curve (AUC), a measure of the discriminatory power of the test, is 0.822. The cut-off point that maximises sensitivity and specificity (i.e., 76 %) is 0.288