| Literature DB >> 35239950 |
Sarah Richardson1,2, James Murray1,2, Daniel Davis3, Blossom C M Stephan4, Louise Robinson5, Carol Brayne6, Linda Barnes6, Stuart Parker5, Avan A Sayer1,2, Richard M Dodds1,2, Louise Allan7.
Abstract
BACKGROUND: Delirium is common, distressing, and associated with poor outcomes. Despite this, delirium remains poorly recognized, resulting in worse outcomes. There is an urgent need for methods to objectively assess for delirium. Physical function has been proposed as a potential surrogate marker, but few studies have monitored physical function in the context of delirium. We examined if trajectories of physical function are affected by the presence and severity of delirium in a representative sample of hospitalized participants older than 65 years.Entities:
Keywords: Epidemiology; Hospital related; Physical function
Mesh:
Year: 2022 PMID: 35239950 PMCID: PMC8893191 DOI: 10.1093/gerona/glab081
Source DB: PubMed Journal: J Gerontol A Biol Sci Med Sci ISSN: 1079-5006 Impact factor: 6.053
Characteristics of Sample by Delirium Status
| Variable | Total ( | Delirium ( | No Delirium ( |
|
|---|---|---|---|---|
| Age, mean ( | 82.3 (6.42) | 84.8 (6.31) | 81.1 (6.13) | .004 |
| Sex: women, | 96 (53.9) | 32 (55.2) | 64 (53.3) | .944 |
| Living in 24-h care, | 11 (6.2) | 6 (10.3) | 5 (4.2) | .109 |
| Comorbidity score, mean ( | 8.6 (4.4) | 10.5 (4.2) | 7.7 (4.2) | <.001 |
| Clinical frailty score, median [IQR] | 4 [3, 5] | 5 [5, 6] | 4 [3, 5] | <.001 |
| Diagnosis of dementia, | 19 (10.7) | 16 (27.6) | 3 (2.5) | <.001 |
| Admission type, | .218 | |||
| Medical | 123 (69.1) | 44 (75.9) | 79 (65.8) | |
| Surgical (elective) | 31 (17.4) | 6 (10.3) | 25 (20.8) | |
| Surgical (emergency) | 24 (13.5) | 8 (13.8) | 16 (13.3) | |
| Length of admission, median [IQR] | 7 [4, 14] | 13 [9, 29] | 5 [3, 8] | <.001 |
| Number of assessments, median [IQR] | 5 [3, 7] | 7 [6, 11] | 4 [2, 5] | <.001 |
| Day of admission when HABAM first assessed, median [IQR] | 1 [1, 2] | 1 [1, 2] | 2 [1, 2] | .131 |
| HABAM total scoreb, median [IQR] and components: | 0.99 [0.31, 1.93] | 1.4 [0.76, 2.01] | 0.76 [0.04, 1.69] | <.001 |
| Balance component | 0.33 [0.0, 0.67] | 0.52 [0.33, 0.67] | 0.33 [0.0, 0.52] | <.001 |
| Mobility component | 0.54 [0.04, 0.65] | 0.54 [0.42, 0.65] | 0.42 [0.04, 0.65] | <.001 |
| Transfers component | 0.0 [0.0, 0.61] | 0.33 [0.0, 0.83] | 0.0 [0.0, 0.61] | <.001 |
Notes: HABAM = Hierarchical Assessment of Balance and Mobility; IQR= interquartile range.
a p Value from appropriate test for difference between delirium status. Where characteristic of interest reported as median [IQR], Wilcoxon rank-sum test was used; where mean (SD), student t test was used; and where categorical, chi-squared test was used. bWith higher values indicating worse function (see Method section).
Figure 1.HABAM profiles during the first 14 d of admission in those with and without delirium. Predictions (with 95% confidence intervals) from linear mixed-effects model with fixed effects for assessment day, delirium diagnosis, and the interaction between the 2. Horizontal lines show the previously recommended cut points: ≤1.25 mild, 1.26–1.74 moderate, and ≥1.75 severe functional impairment.
Figure 2.Examples of the day-by-day variation in total HABAM scores in individual participants. This figure shows examples of 4 patients who experienced delirium during their admission. The markers show the HABAM scores on the days it was assessed, with crosses and circles, indicating days when delirium was present and absent, respectively. The modeled lines are produced from a linear mixed model with delirium status (present or absent) as a time-varying covariate. Horizontal lines show the previously recommended cut points: ≤1.25 mild, 1.26–1.74 moderate, and ≥1.75 severe functional impairment.