| Literature DB >> 32706697 |
Meshari F Alwashmi1, Beverly Fitzpatrick1, Jamie Farrell1, John-Michael Gamble2, Erin Davis1, Hai Van Nguyen1, Gerard Farrell1, John Hawboldt1.
Abstract
BACKGROUND: Using a mobile health (mHealth) intervention consisting of a smartphone and compatible medical device has the potential to enhance chronic obstructive pulmonary disease (COPD) treatment outcomes while mitigating health care costs.Entities:
Keywords: COPD; health technology; mhealth; mobile phone; smartphone
Mesh:
Year: 2020 PMID: 32706697 PMCID: PMC7413289 DOI: 10.2196/17409
Source DB: PubMed Journal: JMIR Mhealth Uhealth ISSN: 2291-5222 Impact factor: 4.773
Participant demographics and health information (N=77).
| Variables | Values, n (%) | ||
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| 30-34 | 2 (2.6) | |
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| 45-54 | 3 (3.9) | |
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| 55-64 | 15 (19.5) | |
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| 65 or older | 57 (74) | |
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| Female | 44 (59.5) | |
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| Male | 30 (40.5) | |
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| Married | 44 (59.5) | |
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| Common law | 6 (8.1) | |
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| Single (never married) | 6 (8.1) | |
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| Widowed, separated, or divorced | 18 (24.3) | |
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| Under 20,000 | 14 (26.9) | |
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| 20,000-39,000 | 18 (34.6) | |
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| 40,000-59,000 | 6 (11.5) | |
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| 60,000-79,000 | 4 (7.7) | |
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| 80,000-150,000 | 8 (15.4) | |
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| Over 150,000 | 2 (3.8) | |
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| Employed full time | 6 (8.8) | |
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| Employed part time | 2 (2.9) | |
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| Self-employed | 2 (2.9) | |
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| Retired | 52 (76.5) | |
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| Unemployed | 6 (8.8) | |
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| Less than high school | 14 (20.6) | |
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| High school equivalency (GED) | 9 (13.2) | |
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| High school | 25 (36.8) | |
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| College/trade | 10 (14.7) | |
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| Bachelor’s degree | 5 (7.4) | |
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| Master’s degree | 4 (5.9) | |
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| PhD/MD/JD | 1 (1.5) | |
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| Rural area (with a population less than 1000) | 18 (25.4) | |
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| Small population center (with a population between 1000 and 29,999) | 23 (32.4) | |
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| Medium population center (with a population between 30,000 and 99,999) | 6 (8.5) | |
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| Large urban population center (with a population of 100,000 or more) | 24 (33.8) | |
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| Cancer | 18 (28.1) | |
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| Diabetes | 15 (23.4) | |
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| Heart disease | 14 (21.9) | |
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| Skeletal or muscular disease | 12 (18.8) | |
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| Kidney disease | 4 (6.3) | |
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| Mental health issues | 2 (3.1) | |
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| None | 2 (2.9) | |
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| 1-2 | 10 (14.7) | |
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| 3-4 | 12 (17.6) | |
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| 4-6 | 16 (23.5) | |
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| More than 6 | 28 (41.2) | |
aSome patients reported several comorbidities.
Mobile health technology ownership (N=77).
| Mobile health technology ownership | Values, n (%) |
| Mobile phone | 56 (72.7) |
| Smartphone | 18 (23.4) |
| iPad | 25 (32.5) |
| Availability of a smartphone in the household | 21 (27.3) |
| Internet access through a mobile phone | 22 (28.6) |
| Spirometer/peak flow meter | 4 (5.2) |
| Glucometer | 17 (22.0) |
| Blood pressure monitor | 27 (35.1) |
| Heart rate monitor | 10 (13.0) |
| Accelerometer/activity counter | 3 (3.9) |
| Scale | 15 (19.5) |
| Thermometer | 18 (23.4) |
Logistic regression predicting the likelihood of smartphone ownership.
| Variables | Adjusted odds ratio (95% CI) | Crude odds ratio (95% CI) | |||||||
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| 30-64 | 2.24 (0.57-8.77) | .25 | 1.97 (0.65-6.04) | .23 | ||||
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| 65 or older | Reference | N/Aa | Reference | N/A | ||||
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| Female | 2.10 (0.54-8.19) | .29 | 1.03 (0.36-2.94) | .95 | ||||
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| Male | Reference | N/A | Reference | N/A | ||||
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| In a relationshipb | 2.36 (0.494-11.29) | .28 | 1.63 (0.51-5.17) | .41 | ||||
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| Not in a relationshipc | Reference | N/A | Reference | N/A | ||||
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| Less than high school | 0.12 (0.02-0.86) |
| 0.11 (0.02-0.64) |
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| High schoole | 0.13 (0.03-0.54) |
| 0.14 (0.04-0.50) |
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| More than high school | Reference | N/A | Reference | N/A | ||||
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| Rural area | 0.50 (0.09-2.76) | .43 | 0.35 (0.08-1.47) | .15 | ||||
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| Small population center | 0.46 (0.11-1.92) | .29 | 0.61 (0.19-2.01) | .42 | ||||
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| A medium population center or a large population center | Reference | N/A | Reference | N/A | ||||
aN/A: not applicable.
bIn a relationship includes being married or in common law.
cNot in a relationship includes being single, widowed, separated, or divorced.
dSignificance level <.05.
eHigh school includes General Educational Development.
Mobile health technology use.
| Variables | Values, n (%) | ||
| Understood the term “app” (n=77)a | 20 (26) | ||
| Use apps (n=20)b | 10 (50) | ||
| Use health apps (n=10)c | 3 (30) | ||
| Interested in using health apps (n=10) | 7 (70) | ||
| Comfortable allowing a family member to access health information (n=10) | 6 (60) | ||
| Comfortable allowing a health care provider to access health information (n=10) | 7 (70) | ||
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| 29 (38) | ||
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| 2 (3) | ||
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| 2 (3) | ||
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| Snapchat | 1 (1) | |
| Interested in using social media to share health experience (n=77) | 9 (12) | ||
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| Never | 1 (3.4) | |
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| A few times a month | 5 (17.2) | |
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| A few times a week | 3 (10.3) | |
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| About once a day | 7 (24.1) | |
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| More than once a day | 13 (44.8) | |
aTotal study population.
bSample population that understood the term “app.”
cSample population that uses apps.
dSample population that uses social media.
Joint display of barriers to mobile health adoption.
| Quantitative results: variables | Values, n (%) | Qualitative results: exemplar quotes | Interpretation of mixed methods findings | |
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| Cost of smartphones | 21 (27.3) |
“I can’t afford one (smartphone)” “I’ve got no data right now because it’s all extra” “we can always get one (smartphone)” | Costs include the cost of a smartphone and the data to enable its functionalities. However, some patients could afford to get a smartphone, or it could be provided by the health care system |
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| Not easy to use | 9 (11.7) |
“I wouldn’t know how to turn a computer on. I’m not very good...” “There’s nothing to it, it’s just hit the button, use your device and it’s so easy to use” | Although some participants owned a smartphone, their use was limited to making phone calls and taking pictures. On the other hand, some participants did not own a smartphone, but they were able to enroll in a mobile health intervention and complete the program. This finding highlights the need for education and confidence building among patients with COPDb |
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| Worried about personal information disclosure | 6 (60) |
“I don’t want to make them worry because I told them nothing about my cancer...I just told my sister a week before I had my surgery...I don’t like to worry my family” “I don’t care who sees it...They can put it in the Evening Telegram, doesn’t bother me” | There was inconclusive evidence regarding confidentiality. Patients should have a choice in what to share and who should have access to their health information |
aThe total study population.
bCOPD: chronic obstructive pulmonary disease.
cThe sample population that uses apps.