| Literature DB >> 32254044 |
Michael Fortunato1, Srinath Adusumalli1, Neel Chokshi1, Joseph Harrison1, Charles Rareshide1, Mitesh Patel1,2.
Abstract
BACKGROUND: There is growing interest in using wearable devices to remotely monitor patient behaviors. However, there has been little evaluation of how often these technologies are used to monitor sleep patterns over longer term periods, particularly among more high-risk patients.Entities:
Keywords: ischemic heart disease; sleep; wearable devices
Year: 2020 PMID: 32254044 PMCID: PMC7175186 DOI: 10.2196/14508
Source DB: PubMed Journal: JMIR Form Res ISSN: 2561-326X
Proportion of patient-days that sleep data was collected by period and arm.
| Trial phase | Control (n=2912), n (%) | Intervention (n=2632), n (%) |
| Ramp-up period: weeks 1-8 | 2170 (75.52) | 2122 (80.62) |
| Maintenance period: weeks 9-16 | 1444 (49.59) | 1744 (66.26) |
| Follow-up period: weeks 17-24 | 1153 (39.59) | 1391 (52.85) |
Patient characteristics by use of wearable devices to track sleep. Sleep data are based on the main intervention period (weeks 9 to 16) of the trial.
| Characteristics | ≥50% sleep data collected (n=60) | <50% sleep data collected (n=18) | No sleep data collected (n=21) | |||
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| Age in years, mean (SD) | 62 (9.2) | 55.1 (12.4) | 55.8 (11.5) | .03 | |
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| Male, n (%) | 40 (67) | 13 (72) | 15 (71) | .86 | |
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| .32 | |
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| White non-Hispanic | 49 (82) | 11 (61) | 14 (67) |
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| Black non-Hispanic | 8 (13) | 5 (28) | 6 (29) |
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| Other | 3 (5) | 2 (11) | 1 (5) |
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| .77 | |
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| Some high school | 3 (5) | 2 (11) | 1 (5) |
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| High school graduate | 12 (20) | 5 (28) | 4 (19) |
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| Some college or specialized training | 13 (22) | 3 (17) | 8 (38) |
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| College graduate | 31 (52) | 8 (44) | 8 (38) |
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| Missing | 1 (2) | 0 (0) | 0 (0) |
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| .37 | |
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| Single | 12 (20) | 5 (28) | 6 (29) |
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| Married | 40 (67) | 8 (44) | 13 (62) |
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| Other | 8 (13) | 5 (28) | 2 (10) |
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| .03 | |
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| Private | 35 (58) | 5 (28) | 9 (43) |
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| Medicare | 23 (38) | 9 (50) | 11 (52) |
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| Medicaid | 1 (2) | 4 (22) | 1 (5) |
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| Military | 1 (2) | 0 (0) | 0 (0) |
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| .74 | |
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| Less than $50,000 | 20 (33) | 9 (50) | 7 (33) |
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| $50,000 to $100,000 | 12 (20) | 4 (22) | 6 (29) |
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| Greater than $100,000 | 18 (30) | 4 (22) | 6 (29) |
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| Missing | 10 (17) | 1 (6) | 2 (10) |
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| Baseline step count, mean (SD) | 7214.5 (3618.2) | 6617.7 (2584.1) | 5481.2 (1808.4) | .13 | |
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| Body mass index, mean (SD) | 30.1 (5.9) | 29.6 (5.7) | 32 (6.2) | .35 | |
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| Diabetes, n (%) | 16 (27) | 4 (22) | 11 (52) | .06 | |
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| Hypertension, n (%) | 49 (82) | 16 (89) | 17 (81) | .75 | |
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| Hyperlipidemia, n (%) | 51 (85) | 14 (78) | 16 (76) | .59 | |
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| .007 | |
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| Nonsmoker | 30 (50) | 10 (56) | 5 (24) |
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| History of smoking | 29 (48) | 5 (28) | 11 (52) |
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| Actively smoking | 1 (2) | 3 (17) | 5 (24) |
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