| Literature DB >> 35029533 |
Jonathan W Leigh1,2, Ben S Gerber3, Christopher P Gans2, Mayank M Kansal2, Spyros Kitsiou1.
Abstract
BACKGROUND: Heart failure (HF) is a highly prevalent chronic condition that places a substantial burden on patients, families, and health care systems worldwide. Recent advances in mobile health (mHealth) technologies offer great opportunities for supporting many aspects of HF self-care. There is a need to better understand patients' adoption of and interest in using mHealth for self-monitoring and management of HF symptoms.Entities:
Keywords: heart failure; mHealth; mobile phone; self-care; self-management; smartphone
Year: 2022 PMID: 35029533 PMCID: PMC8800088 DOI: 10.2196/31982
Source DB: PubMed Journal: JMIR Cardio ISSN: 2561-1011
Participant demographics (N=100).
| Demographics | Values | |
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| Male | 37 (37) |
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| Female | 63 (63) |
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| White (non-Hispanic) | 17 (17) |
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| Black or African American | 61 (61) |
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| Hispanic or Latino | 18 (18) |
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| Asian | 1 (1) |
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| Other | 3 (3) |
| Age (years), mean (SD) | 61.32 (12.3) | |
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| 29-49 | 12 (12) |
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| 50-64 | 49 (49) |
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| ≥65 | 39 (39) |
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| Lower than high school | 18 (18) |
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| High school | 47 (47) |
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| Undergraduate | 26 (26) |
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| Graduate | 9 (9) |
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| Employed | 28 (28) |
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| Unemployed | 17 (17) |
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| Retired or on disability | 55 (55) |
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| <25,000 | 26 (26) |
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| 25,000-49,000 | 12 (12) |
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| 50,000-74,999 | 6 (6) |
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| 75,000-99,999 | 0 (0) |
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| >100,000 | 5 (5) |
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| Not sure or declined to respond | 51 (51) |
Profile and smartphone ownership of participants across demographic groups (N=100)a.
| Demographics | Participants with smartphone (n=68)b, n (%) | Participants with mobile phone but not smartphone (n=25)c, n (%) | Participants without mobile phone (n=7)d, n (%) | ΦCe | Chi-square ( | |||||||||||
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| 0.122 | 1.5 (2) | .48 | |||||||||||||
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| Male | 25 (68) | 8 (22) | 4 (11) |
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| Female | 43 (68) | 17 (27) | 3 (5) |
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| 0.273 | 14.9 (8) | .06 | |||||||||||||
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| White (non-Hispanic) | 9 (53) | 4 (24) | 4 (24) |
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| Black or African American | 45 (74) | 15 (25) | 1 (2) |
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| Hispanic or Latino | 11 (61) | 6 (33) | 1 (6) |
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| Asian | 1 (100) | 0 (0) | 0 (0) |
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| Other | 2 (67) | 1 (33) | 0 (0) |
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| 0.351 | 24.7 (4) | <.001 | |||||||||||||
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| 29-49 | 11 (92) | 1 (8) | 0 (0) |
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| 50-64 | 41 (84) | 8 (16) | 0 (0) |
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| ≥65 | 16 (41) | 16 (41) | 7 (18) |
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| 0.291 | 16.9 (6) | .01 | |||||||||||||
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| Lower than high school | 11 (61) | 6 (33) | 1 (6) |
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| High school | 29 (62) | 15 (32) | 3 (6) |
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| Undergraduate | 22 (85) | 4 (15) | 0 (0) |
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| Graduate | 6 (67) | 0 (0) | 3 (33) |
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| 0.299 | 17.9 (4) | .001 | |||||||||||||
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| Employed | 25 (89) | 1 (4) | 2 (7) |
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| Unemployed | 12 (71) | 2 (12) | 3 (18) |
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| Retired or on disability | 31 (56) | 22 (40) | 2 (4) |
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| 0.277 | 7.5 (6) | .27 | |||||||||||||
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| <25,000 | 17 (65) | 8 (31) | 1 (4) |
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| 25,000-49,000 | 11 (92) | 0 (0) | 1 (8) |
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| 50,000-74,999 | 4 (67) | 2 (33) | 0 (0) |
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| 75,000-99,999 | 0 (0) | 0 (0) | 0 (0) |
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| >100,000 | 5 (100) | 0 (0) | 0 (0) |
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| Not sure | 14 (54) | 8 (31) | 4 (15) |
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| Declined to respond | 17 (68) | 7 (28) | 1 (4) |
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aPercentages add up to 100 horizontally.
bMean age 57.49 (SD 11.05) years.
cMean age 67.32 (SD 10.54) years.
dMean age 77.14 (SD 7.65) years.
eCramér V
Frequently used smartphone features and popular heart failure (HF) parameters that patients would like to self-monitor using mobile apps and connected health devices, grouped by age (N=68).
| Item | Overall sample, n (%) | 29-49 years (n=11), n (%) | 50-64 years (n=41), n (%) | ≥65 years (n=16), n (%) | ΦCa | Chi-square ( | ||
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| SMS text messaging | 51 (75) | 11 (100) | 31 (76) | 9 (56) | 0.313 | 6.7 (2) | .04 |
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| Internet browsing | 46 (63) | 11 (100) | 25 (61) | 7 (44) | 0.366 | 9.1 (2) | .01 |
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| Mobile apps | 41 (60) | 9 (82) | 26 (63) | 6 (38) | 0.291 | 5.8 (2) | .06 |
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| Social media | 39 (57) | 10 (91) | 23 (56) | 6 (38) | 0.336 | 7.7 (2) | .02 |
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| 33 (49) | 10 (91) | 17 (42) | 6 (38) | 0.374 | 9.5 (2) | .009 | |
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| Appointment scheduling | 27 (40) | 8 (73) | 18 (44) | 1 (6) | 0.434 | 12.8 (2) | .002 |
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| Physical activity tracking | 46 (68) | 11 (100) | 25 (61) | 10 (63) | 0.304 | 6.3 (2) | .04 |
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| Blood pressure tracking | 44 (65) | 10 (91) | 23 (56) | 11 (69) | 0.264 | 4.8 (2) | .09 |
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| Medication tracking | 40 (59) | 10 (91) | 23 (56) | 7 (44) | 0.304 | 6.3 (2) | .04 |
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| Weight tracking | 38 (56) | 9 (82) | 20 (49) | 9 (56) | 0.238 | 3.8 (2) | .15 |
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| Diet tracking | 36 (53) | 8 (73) | 19 (46) | 9 (56) | 0.192 | 2.5 (2) | .28 |
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| Symptom tracking | 35 (52) | 8 (73) | 20 (49) | 7 (44) | 0.191 | 2.5 (2) | .29 |
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| Sleep tracking | 31 (46) | 7 (64) | 17 (42) | 7 (44) | 0.160 | 1.8 (2) | .42 |
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| Mood tracking | 29 (43) | 7 (64) | 14 (34) | 8 (50) | 0.228 | 3.6 (2) | .17 |
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| Blood sugar or diabetes | 28 (41) | 8 (73) | 14 (34) | 6 (38) | 0.283 | 5.5 (2) | .07 |
aCramér V.