| Literature DB >> 32143634 |
S J Gordon1,2, N Baker3,4, M Kidd5,6, A Maeder4, K A Grimmer3,7.
Abstract
BACKGROUND: There is little known about pre-frailty attributes or when changes which contribute to frailty might be detectable and amenable to change. This study explores pre-frailty and frailty in independent community-dwelling adults aged 40-75 years.Entities:
Keywords: Aged; Frailty; Healthy aging; Middle aged; Prefrailty
Mesh:
Year: 2020 PMID: 32143634 PMCID: PMC7060633 DOI: 10.1186/s12877-020-1490-7
Source DB: PubMed Journal: BMC Geriatr ISSN: 1471-2318 Impact factor: 3.921
Thresholds/ cut points in elements relevant to expected performance (Bolded measures indicate the way that the Fried frailty phenotype attributes were calculated)
| Frailty measures | Calculation | Threshold for poor performance (referenced for published norms) |
|---|---|---|
| Walking speed | ||
| Grip strength | ||
| Self-reports of unintentional weight loss | ||
| Self-reported physical activity [ | ||
| K10_tiredness score (Q. 1) [ | ||
| Modified Functional Movement Screen (FMS) elements (0–3, with 0 being pain precluding activity, 1 being unable to attempt test, 2 being partial attempt; 3 successfullycompleted test) [ | Sum of scores for deep squat, hurdle step, in line floor lunge, opposite side arm / leg extension in four-point kneeling | ≤12 |
| Capacity to walk a flight of stairs [ | Self-report Yes / No | No (0) [ |
| GPCog [ | Summed scores | ≤8 [ |
| BMI [ | Underweight | ≤18 [ |
| BMI [ | Overweight / obese | ≥26 [ |
| Lean muscle mass [ | Calculated for males as 0.407* weight (kgs) + 0.267* height (cms)- 19.2; and for females as 0.252* weight (kgs) + 0.473* height (cms)- 48.3 [ | ≤24.5 [ |
| Chronic health conditions | Total number of current chronic conditions | ≥1 |
| Health concerns | Any | 1 |
| Pain | Any pain * length of time suffered (years) | ≥2 |
| Total nutrition score [ | Sum of (Yes scores to daily consumption of 5+ serves vegetables; 2+ serves fruit; mostly eat wholegrain or alternative grains; one serve day meat or alternatives; 2 serves dairy, limited intake of sugary drinks, processed foods and takeaways) | ≤6 |
| Water intake [ | Not answering ‘plenty’ | 0 [ |
| Modified K10 [ | Total score minus exhaustion component (Question 1) | ≥12 |
| Health concerns | Any | 1 |
| Continence concerns [ | Total score of urge incontinence, stress incontinence, frequency, problems emptying bladder, urinary leakage, discomfort, bulging pelvic floor, faecal incontinence | ≥3 |
| Unplanned health service use in past 12 months | Sum of number of unplanned hospitalisations, Emergency Department contacts | > 1 |
| Living status | Alone | 1 |
| Total sleep quality score (PSQI) [ | Summed scores | ≥8 [ |
| Near miss falls in last 6 months and/or falls in the last 6 months | yes, no | 1 = yes (any) |
| Balance for 5 s (eyes open, standing on R or L leg) [ | 5 s is compliant for each leg (summed for Right + Left leg) | 1 is < 10 s [ |
| Balance for 5 s (eyes closed, standing on R or L leg) [ | 5 s is compliant for each leg (summed for Right + Left leg) | 1 is < 10 s [ |
Percentage of pre-frail and frail participants with each component of Fried frailty phenotype
| Attribute | Pre-frail | Frail | N |
|---|---|---|---|
| Unintentional weight loss | 19 (7.4%) | 3 (25.0%) | 22 |
| Poor grip strength | 86 (33.6%) | 11 (91.7%) | 97 |
| Low physical activity | 36 (14.1%) | 5 (41.7%) | 41 |
| Exhaustion | 41 (16.0%) | 8 (66.7%) | 49 |
| Slow walking speed | 143 (55.9%) | 12 (100%) | 155 |
Factors, descriptions and important variable loadings
Key: Two factors that are greyed out are redundant. The shaded cells indicate the variables that were included in each factor, and their weightings in the latent frailty attributes (factors)
The number of participants and mean scores (SD) for the seven latent frailty attributes (factors), for the three Fried categories, and ANOVA statistics (F value, p value) for comparison across categories
Key: The paired frailty categories with significant differences in factor scores are bolded, and the factors for which adjacent categories were not significantly different are shaded grey (with the significantly different category bolded) (df = 2)
Receiver Operator Characteristic (ROC) curve statistics
| Comparing not frail with pre-frail | Comparing pre-frail with frail | |
|---|---|---|
| AUC | 0.64 | 0.60 |
| 95%CI | 0.60–0.68 | 0.53–0.66 |
| p | < 0.01 | 0.33 |
| Youden index | 0.23 | 0.12 |
| threshold score | > 114 | > 213 |
| Sens | 62.9 | 58.3 |
| Spec | 59.8 | 64.8 |
| AUC | 0.65 | |
| 95%CI | 0.59–0.70 | |
| p | < 0.01 | |
| Youden index | 0.37 | |
| threshold score | > 68.3 | |
| Sens | 75.0 | |
| Sp | 61.7 | |
| AUC | 0.63 | |
| 95%CI | 0.56–0.69 | |
| p | 0.25 | |
| Youden index | 016 | |
| threshold score | > 37 | |
| Sens | 33.3 | |
| Spec | 92.2 | |
| AUC | 0.55 | 0.61 |
| 95%CI | 0.52–0.58 | 0.55–0.67 |
| p | < 0.05 | 0.17 |
| Youden index | 0.07 | 0.16 |
| threshold score | > 40 | > 40 |
| Sens | 58.9 | 75.0 |
| Spec | 48.2 | 41.0 |
Fig. 1The factor descriptors able to discriminate between not-frail, pre-frail and frail status