| Literature DB >> 34104685 |
Line Christiansen1, Johan Sanmartin Berglund1, Peter Anderberg1,2, Selim Cellek3, Jufen Zhang3, Evi Lemmens4, Maite Garolera5, Fermin Mayoral-Cleries6, Lisa Skär1.
Abstract
Background: Quality of life (QoL) is affected even at early stages in older adults with cognitive impairment. The use of mobile health (mHealth) technology can offer support in daily life and improve the physical and mental health of older adults. However, a clarification of how mHealth technology can be used to support the QoL of older adults with cognitive impairment is needed. Objective: To investigate factors affecting mHealth technology use in relation to self-rated QoL among older adults with cognitive impairment.Entities:
Keywords: aging; cognitive impairment; gerontechnology; mobile health; quality of life
Year: 2021 PMID: 34104685 PMCID: PMC8155754 DOI: 10.1177/23337214211018924
Source DB: PubMed Journal: Gerontol Geriatr Med ISSN: 2333-7214
Distribution of Variables by Self-Rated QoL among Older Adults with Cognitive Impairment (N = 1,082).
| Variable | Good/excellent QoL | Poor/fair QoL | Total | |
|---|---|---|---|---|
| Gender | .00[ | |||
| Male | 405 (50.90) | 102 (35.70) | 507 (46.90) | |
| Female | 391 (49.10) | 184 (64.30) | 575 (53.10) | |
| Age groups | .00[ | |||
| 55–64 | 49 (6.20) | 49 (17.10) | 98 (9.10) | |
| 65–74 | 312 (39.20) | 116 (40.60) | 428 (39.60) | |
| 75–84 | 371 (46.60) | 108 (37.80) | 479 (44.30) | |
| 85+ | 64 (8.00) | 13 (4.50) | 77 (7.10) | |
| Education level ( | .00[ | |||
| Elementary school | 439 (55.40) | 207 (72.90) | 646 (60.00) | |
| Secondary school | 173 (21.80) | 51 (18.00) | 224 (20.80) | |
| Higher education | 181 (22.80) | 26 (9.20) | 207 (19.20) | |
| Living arrangement ( | .55[ | |||
| Living with others | 625 (79.10) | 230 (81.00) | 855 (79.60) | |
| Living alone | 165 (20.90) | 54 (19.00) | 219 (20.40) | |
| Diagnosis of dementia ( | .00[ | |||
| Yes | 202 (26.20) | 98 (35.80) | 300 (28.70) | |
| No | 569 (73.80) | 176 (64.20) | 745 (71.30) | |
| Access to internet ( | .04[ | |||
| Yes | 565 (74.20) | 170 (67.50) | 735 (72.60) | |
| No | 196 (25.80) | 82 (32.50) | 278 (27.40) | |
| Frequency of using mHealth technology | .14[ | |||
| Daily | 448 (56.30) | 144 (50.30) | 592 (54.70) | |
| Weekly | 65 (8.20) | 31 (10.80) | 96 (8.90) | |
| Rarely | 21 (2.60) | 8 (2.80) | 29 (2.70) | |
| Never | 262 (32.90) | 103 (36.00) | 365 (33.70) | |
| Frequency of using the internet with mHealth technology | .002[ | |||
| Daily | 304 (38.20) | 76 (26.60) | 380 (35.10) | |
| Weekly | 71 (8.90) | 23 (8.00) | 94 (8.70) | |
| Rarely | 41 (5.20) | 28 (9.80) | 69 (6.40) | |
| Never | 380 (47.70) | 159 (55.60) | 539 (49.80) | |
| Technical skills in using mHealth technology | .00[ | |||
| None | 278 (34.90) | 131 (45.80) | 409 (37.80) | |
| Low | 268 (33.70) | 118 (41.30) | 386 (35.70) | |
| Moderately | 208 (26.10) | 34 (11.90) | 242 (22.40) | |
| High | 42 (5.30) | 3 (1.00) | 45 (4.10) | |
| mHealth technology for memory support | .60[ | |||
| Yes | 155 (19.50) | 51 (17.80) | 206 (19.00) | |
| No | 641 (80.50) | 235 (82.20) | 876 (81.00) | |
| App/software for memory support | .73[ | |||
| Yes | 79 (9.90) | 26 (9.10) | 105 (9.70) | |
| No | 717 (90.10) | 260 (90.90) | 977 (90.30) | |
| Attitude toward mHealth technology for memory support | .02[ | |||
| Positive | 618 (77.60) | 202 (70.60) | 820 (75.80) | |
| Negative | 178 (22.40) | 84 (29.40) | 262 (24.20) | |
Note. Significance level p < .05.
Pearson Chi-square.
Mann–Whitney U-test.
Multivariate Logistic Regression Analysis (Forward: LR). Impact of mHealth Technology Use on Self-Rated QoL (N = 1,077).
| Coefficient OR | 95% CI for OR | ||
|---|---|---|---|
| Constant | 5.04 | — | 0 |
| Gender | |||
| Male | Ref. | ||
| Female | 0.62 | 0.46 | 0 |
| Age groups | |||
| 55–64 | Ref. | ||
| 65–74 | 2.6 | 1.57–4.30 | 0 |
| 75–84 | 4.79 | 2.82–8.14 | 0 |
| 85+ | 6.51 | 2.85–14.85 | 0 |
| Education level | |||
| Elementary school | 0.5 | 0.31–0.82 | .01 |
| Secondary school | 0.74 | 0.42–1.31 | .3 |
| Higher education | Ref. | ||
| Technical skills in using mHealth technology | |||
| None/low | 0.44 | 0.28–0.69 | 0 |
| Moderately/high | Ref. | ||
| Frequency of using internet with mHealth technology | |||
| Daily/weekly | Ref. | ||
| Rarely/never | 0.65 | 0.44–0.94 | .02 |
| Test | χ2 |
| |
| Overall model evaluation | |||
| Likelihood ratio test | 103.93 | 0 | |
| Goodness-of-fit test | |||
| Hosmer and Lemeshow | 4.07 | .77 | |
Note. Cox and Snell R2 = 0.10. Nagelkerke’s R2 = 0.15. QoL = quality of life is dichotomized (good/excellent QoL = reference).