| Literature DB >> 33999374 |
Lochan M Shah1,2, Jie Ding1,2, Erin M Spaulding2,3,4, William E Yang1,2, Matthias A Lee5, Ryan Demo5, Francoise A Marvel1,3, Seth S Martin6,7,8,9.
Abstract
Increasing evidence suggests that digital health interventions (DHIs) are an effective tool to reduce hospital readmissions by improving adherence to guideline-directed therapy. We investigated whether sociodemographic characteristics influence use of a DHI targeting 30-day readmission reduction after acute myocardial infarction (AMI). Covariates included age, sex, race, native versus loaner iPhone, access to a Bluetooth-enabled blood pressure monitor, and disease severity as marked by treatment with CABG. Age, sex, and race were not significantly associated with DHI use before or after covariate adjustment (fully adjusted OR 0.98 (95%CI: 0.95-1.01), 0.6 (95%CI: 0.29-1.25), and 1.22 (95% CI: 0.60-2.48), respectively). Being married was associated with high DHI use (OR 2.12; 95% CI 1.02-4.39). Our findings suggest that DHIs may have a role in achieving equity in cardiovascular health given similar use by age, sex, and race. The presence of a spouse, perhaps a proxy for enhanced caregiver support, may encourage DHI use.Entities:
Keywords: Digital health; Health disparities; Hospital readmission; Myocardial infarction; Sociodemographic factors; mHealth
Mesh:
Year: 2021 PMID: 33999374 PMCID: PMC8127845 DOI: 10.1007/s12265-021-10098-9
Source DB: PubMed Journal: J Cardiovasc Transl Res ISSN: 1937-5387 Impact factor: 3.216
Fig. 1Screening and enrollment of study participants
Multivariable adjusted odds ratios (ORs) with 95% confidence intervals of being in the highest DHI group versus the lower tertiles for various sociodemographic variables
| Composite measure | Vital signs feature | Medication feature | ||||
|---|---|---|---|---|---|---|
| Model 1a | Model 2b | Model 1 | Model 2 | Model 1 | Model 2 | |
| Age | 1.00 (0.97–1.02) | 0.98 (0.95–1.01) | 1.00 (0.96–1.02) | 0.98 (0.95–1.01) | 1.00 (0.97–1.03) | 0.99 (0.96–1.02) |
| Female sex | 0.51 (0.25–1.01) | 0.60 (0.29–1.25) | 0.61 (0.30–1.21) | 0.70 (0.34–1.45) | 0.52 (0.26–1.03) | 0.59 (0.29–1.23) |
| White race | 1.30 (0.66–2.55) | 1.22 (0.60–2.48) | 1.33 (0.68–2.64) | 1.34 (0.65–2.77) | 1.23 (0.64–2.50) | 1.10 (0.55–2.21) |
| Married status | 2.40 (1.18–4.88)* | 2.12 (1.02–4.39)* | 2.50 (1.23–5.10)* | 2.28 (1.10–4.73)* | 2.42 (1.20–4.91)* | 2.17 (1.06–4.47)* |
| Insurance status | ||||||
| Medicaid/self-pay | 1.00 (Ref.) | 1.00 (Ref.) | 1.00 (Ref.) | 1.00 (Ref.) | 1.00 (Ref.) | 1.00 (Ref.) |
| Private insurance | 3.57 (1.22–10.41)* | 2.62 (0.81–8.46) | 3.80 (1.25–11.57)* | 3.41 (1.01–11.52)* | 3.89 (1.30–11.64)* | 2.78 (0.85–9.05) |
| Medicare | 1.53 (0.42–5.55) | 1.15 (0.29–4.50) | 1.46 (0.38–5.64) | 1.22 (0.29–5.17) | 1.83 (0.49–6.77) | 1.49 (0.38–5.84) |
aModel 1: adjusted for age, sex, and race, unless variable was included in model
bModel 2: adjusted for age, sex, race, loaner iPhone, and treatment with CABG as a surrogate measure of disease severity. Analyses that included use of the vital signs feature were additionally adjusted for presence of Bluetooth-enabled BP monitor
*Reached formal significance
Clinical and digital health characteristics of Corrie participants (n = 133)
| Characteristics during hospital admission | |
|---|---|
| Clinical characteristics | |
| Age, years, mean ± SD (range) | 58.3 ± 11.5 (30–89) |
| Age 65+, n (%) | 43 (32.3) |
| Female, n (%) | 41 (30.8) |
| White race, n (%) | 91 (68.4) |
| Health insurance status | |
| Private health insurance, n (%) | 70 (52.6) |
| Medicare, n (%) | 44 (33.1) |
| Medicaid/self-pay, n (%) | 19 (14.3) |
| Annual incomea, median dollars (IQR) | 72,000 (33,500–114,500) |
| Years of educationb, mean ± SD | 14.7 ± 3.7 |
| Marriedc, n (%) | 82 (61.7) |
| Body mass index, kg/m2, mean ± SD | 30.9 ± 5.9 |
| Current/former smoking status, n (%) | 69 (51.9) |
| Length of admission, median days (IQR) | 5 (3–11) |
| Diagnosis of STEMI, n (%) | 56 (42.1) |
| Patients requiring CABG, n (%) | 38 (28.6) |
| Digital Health characteristics | |
| mHealth literacy score out of 40d, mean ± SD | 31.0 ± 6.6 |
| Time with Corrie during admission, median days (IQR) | 2 (1–6) |
| Patients with loaner iPhone, n (%) | 53 (39.9) |
| Patients given Bluetooth-enabled BP monitor, n (%) | 108 (81.2) |
SD standard deviation, IQR interquartile range, STEMI ST-elevation myocardial infarction, CABG coronary artery bypass grafting, BP blood pressure
an = 80 for income
bn = 116 for years of education
cn = 128 for marital status
dn = 111 for mHealth literacy
DHI use and readmissions 30-day post-discharge
| DHI use during 30-day post-discharge period | |
|---|---|
| Time spent on medication feature, median days (IQR) | 11 (2–27) |
| Tertiles of medication feature use | |
| 1st tertile (< 3 days), n (%) | 47 (35.3) |
| 2nd tertile (3–22 days), n (%) | 44 (33.1) |
| 3rd tertile (≥ 22 days), n (%) | 42 (31.6) |
| Time spent on vital signs feature, median days (IQR) | 7 (1–25) |
| Tertiles of vital signs feature use | |
| 1st tertile (< 2 days), n (%) | 51 (38.3) |
| 2nd tertile (2–18 days), n (%) | 38 (28.6) |
| 3rd tertile (≥ 18 days), n (%) | 44 (33.1) |
| Number of patients in composite DHI use groups | |
| Low composite use, n (%) | 44 (33.1) |
| Moderate composite use, n (%) | 49 (36.8) |
| High composite use, n (%) | 40 (30.1) |
| 30-day all cause readmissions, n (%) | 12 (9.0) |
| Low composite DHI use, n (%) | 4 (9.1) |
| Moderate composite DHI use, n (%) | 6 (12.2) |
| High composite DHI use, n (%) | 2 (5.0) |
DHI digital health intervention, IQR interquartile range
Fig. 2Medication feature (n = 130) and vital signs feature (n = 121) use over 30 days post-discharge
Sociodemographic characteristics of patients with different levels of DHI use
| Vital signs featurea | Medication featureb | Composite DHI use | ||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| 1st tertile( | 2nd tertile( | 3rd tertile( | 1st tertile( | 2nd tertile( | 3rd tertile( | Low use( | Moderate use( | High use( | ||||
| Age, mean (SD) | 59.0 (13.6) | 58.1 (9.8) | 57.6 (10.4) | 0.06 | 58.5 (13.7) | 58.2 (9.9) | 58.1 (10.6) | 0.07 | 59.0 (13.9) | 58.0 (9.8) | 57.8 (10.7) | 0.05 |
| Female, n (%) | 19 (37.3%) | 12 (31.6%) | 10 (22.7%) | 0.30 | 18 (38.3%) | 15 (34.1%) | 8 (19.1%) | 0.12 | 17 (38.6%) | 17 (34.7%) | 7 (17.5%) | 0.09 |
| White race, n (%) | 34 (66.7%) | 24 (63.2%) | 33 (75.0%) | 0.49 | 31 (66.0%) | 29 (65.9%) | 31 (73.8%) | 0.66 | 30 (68.2%) | 30 (61.2%) | 31 (77.5%) | 0.26 |
| Married status, n (%) | 22 (45.8%) | 25 (67.6%) | 32 (74.4%) | 0.01* | 20 (45.5%) | 28 (65.1%) | 31 (75.6%) | 0.01* | 19 (46.3%) | 29 (61.7%) | 31 (77.5%) | 0.02* |
| Insurance status | ||||||||||||
| Private insurance, n (%) | 18 (35.3%) | 22 (57.9%) | 30 (68.2%) | < 0.01* | 18 (38.3%) | 23 (52.3%) | 29 (69.1%) | 0.02* | 16 (36.4%) | 26 (53.1%) | 28 (70.0%) | 0.02* |
| Medicare, n (%) | 22(43.1%) | 11 (29.0%) | 11 (25.0%) | 19 (40.4%) | 13 (29.6%) | 12 (28.6%) | 19 (43.2%) | 14 (28.6%) | 11 (27.5%) | |||
| Medicaid/self-pay, n (%) | 11 (21.6%) | 5 (13.2%) | 3 (6.8%) | 10 (21.3%) | 8 (18.2%) | 1 (2.4%) | 9 (20.5%) | 9 (18.4%) | 1 (2.5%) | |||
Column percentages shown
aFor marital status, n = 48, 37, and 43 for low, medium, and high use, respectively
bFor marital status, n = 44, 43, and 41 for low, medium, and high use, respectively
*Reached formal significance