| Literature DB >> 26788432 |
Cinnamon S Bloss1, Nathan E Wineinger1, Melissa Peters1, Debra L Boeldt1, Lauren Ariniello1, Ju Young Kim2, Judith Sheard1, Ravi Komatireddy1, Paddy Barrett1, Eric J Topol1,3,4.
Abstract
Background. Mobile health and digital medicine technologies are becoming increasingly used by individuals with common, chronic diseases to monitor their health. Numerous devices, sensors, and apps are available to patients and consumers-some of which have been shown to lead to improved health management and health outcomes. However, no randomized controlled trials have been conducted which examine health care costs, and most have failed to provide study participants with a truly comprehensive monitoring system. Methods. We conducted a prospective randomized controlled trial of adults who had submitted a 2012 health insurance claim associated with hypertension, diabetes, and/or cardiac arrhythmia. The intervention involved receipt of one or more mobile devices that corresponded to their condition(s) (hypertension: Withings Blood Pressure Monitor; diabetes: Sanofi iBGStar Blood Glucose Meter; arrhythmia: AliveCor Mobile ECG) and an iPhone with linked tracking applications for a period of 6 months; the control group received a standard disease management program. Moreover, intervention study participants received access to an online health management system which provided participants detailed device tracking information over the course of the study. This was a monitoring system designed by leveraging collaborations with device manufacturers, a connected health leader, health care provider, and employee wellness program-making it both unique and inclusive. We hypothesized that health resource utilization with respect to health insurance claims may be influenced by the monitoring intervention. We also examined health-self management. Results & Conclusions. There was little evidence of differences in health care costs or utilization as a result of the intervention. Furthermore, we found evidence that the control and intervention groups were equivalent with respect to most health care utilization outcomes. This result suggests there are not large short-term increases or decreases in health care costs or utilization associated with monitoring chronic health conditions using mobile health or digital medicine technologies. Among secondary outcomes there was some evidence of improvement in health self-management which was characterized by a decrease in the propensity to view health status as due to chance factors in the intervention group.Entities:
Keywords: Arrhythmia; Diabetes; Digital medicine; Health insurance claims; Health monitoring; Hypertension; Mobile health
Year: 2016 PMID: 26788432 PMCID: PMC4715435 DOI: 10.7717/peerj.1554
Source DB: PubMed Journal: PeerJ ISSN: 2167-8359 Impact factor: 2.984
Study participant demographics.
Values are in counts, proportions in parentheses (proportions) unless otherwise noted.
| Monitoring | Control | p-value | |
|---|---|---|---|
| N (# completed) | 75 (65) | 85 (65) | 0.47 |
| Hypertension | 67 (89) | 71 (84) | 0.29 |
| NIDDM | 10 (13) | 17 (20) | 0.26 |
| IDDM | 10 (13) | 10 (12) | 0.76 |
| Arrhythmia | 10 (13) | 19 (22) | 0.14 |
| Comorbidity | 21 (28) | 30 (35) | 0.41 |
| Gender (% Female) | 50 (67) | 62 (73) | 0.24 |
| Age, Mean (SD) | 56 (9.0) | 55 (9.8) | 0.45 |
| Ethnicity, Caucasian | 57 (76) | 62 (73) | 0.39 |
| Education | 0.25 | ||
| High School or Less | 10 (13) | 19 (22) | |
| College | 32 (43) | 37 (44) | |
| More than College | 33 (44) | 29 (34) | |
| Family Size | 0.87 | ||
| Single | 12 (16) | 13 (15) | |
| Two | 27 (36) | 34 (40) | |
| Three or More | 36 (48) | 38 (45) | |
| Income | 0.09 | ||
| < $50,000 | 10 (13) | 11 (13) | |
| $50k–$149k | 47 (63) | 58 (68) | |
| >$149k | 18 (24) | 16 (19) | |
| Current Non-Smoker | 45 (60) | 64 (75) | 0.04 |
| Alcohol Use, <1/week | 54 (72) | 65 (77) | 0.31 |
| Active Exerciser | 37 (49) | 37 (44) | 0.46 |
| Smartphone owned | 0.76 | ||
| Did not own | 11 (17) | 10 (15) | |
| Owned non-iPhone | 20 (31) | 24 (37) | |
| Owned iPhone | 34 (52) | 31 (48) |
Health care utilization outcomes.
Top: mean (standard deviation); bottom: median (IQR). PDiff, p-value testing difference between control and monitoring group; PEquiv, p-value testing equivalence between groups; *, Median and IQR all zero.
| Baseline | Follow-up | Mean Difference | PDiff | PEquiv | ||||
|---|---|---|---|---|---|---|---|---|
| Control | Monitoring | Control | Monitoring | Control | Monitoring | |||
| Total Claims ($) | 4,265 (10,190) | 7,159 (25,251) | 5,596 (22,187) | 6,026 (21,426) | 1,331 (21,042) | −1,133 (31,465) | 0.62 | 0.027 |
| 961 (3,166) | 990 (2,340) | 807 (2,734) | 845 (2,273) | 0 (2,372) | 0 (1,780) | |||
| Condition Claims ($) | 1,512 (6,868) | 2,434 (14,296) | 6,165 (37,153) | 630 (21,43) | 4,653 (35,795) | −1,805 (14,406) | 0.50 | 0.105 |
| 163 (375) | 117 (387) | 111 (379) | 179 (516) | 0 (208) | 0 (283) | |||
| Pharmacy Claims ($) | 1,519 (2,687) | 1,859 (5,315) | 1,667 (2,780) | 2,188 (6,340) | 147 (1,057) | 329 (1,860) | 0.60 | 0.037 |
| 325 (1,590) | 345 (1,164) | 611 (1,603) | 340 (1,458) | 11 (531) | 0 (321) | |||
| Total Visits (#) | 4.49 (5.01) | 4.92 (6.51) | 4.17 (4.21) | 4.77 (5.35) | −0.32 (3.75) | −0.15 (6.35) | 0.57 | 0.014 |
| 3 (6) | 3 (4) | 2 (7) | 3 (5) | 0 (2) | 0 (3) | |||
| Office Visits (#) | 4.11 (4.41) | 4.05 (4.09) | 3.95 (3.92) | 4.32 (4.48) | −0.15 (3.30) | 0.28 (3.60) | 0.46 | 0.038 |
| 3 (5) | 3 (4) | 2 (5) | 3 (4) | 0 (2) | 0 (2) | |||
| ER Visits (#)* | 0.17 (0.60) | 0.03 (0.17) | 0.05 (0.37) | 0.06 (0.30) | −0.12 (0.72) | 0.03 (0.35) | 0.06 | 0.137 |
| Inpatient Stays (#)* | 0.22 (0.94) | 0.85 (4.27) | 0.17 (0.89) | 0.38 (1.88) | −0.05 (1.16) | −0.46 (4.30) | 0.82 | 0.042 |
Mean values of health self-management outcomes of study.
Standard deviation in parentheses.
| Baseline | Follow-up | Mean Difference | Effect Size | p | ||||
|---|---|---|---|---|---|---|---|---|
| Control | Monitoring | Control | Monitoring | Control | Monitoring | |||
| MHLC Internal | 26.0 (6.0) | 26.1 (6.7) | 26.3 (6.0) | 26.1 (5.9) | 0.08 (6.4) | 0.34 (5.3) | 0.11 | 0.80 |
| MHLC Chance | 12.3 (5.9) | 12.3 (5.6) | 13.4 (5.8) | 11.3 (5.3) | 1.30 (5.0) | −0.76 (4.9) | −0.93 | 0.02 |
| MHLC Doctor | 14.9 (2.7) | 15.3 (2.6) | 14.8 (3.0) | 15.7 (2.3) | −0.22 (3.8) | 0.43 (2.5) | 0.37 | 0.34 |
| MHLC Others | 8.4 (3.6) | 7.6 (3.0) | 8.1 (3.3) | 7.9 (3.1) | −0.15 (3.8) | 0.50 (3.2) | 0.35 | 0.59 |
| PERC Self-Efficacy | 7.5 (2.0) | 8.4 (1.4) | 7.8 (1.7) | 8.4 (1.7) | 0.31 (2.1) | −0.05 (1.4) | −0.27 | 0.85 |
| Patient Activation | 70.2 (14.2) | 77.6 (13.1) | 74.6 (18.9) | 79.0 (20.9) | 4.35 (18.2) | 0.75 (18.4) | −0.84 | 0.68 |
Abbreviations:
MHLC, Multidimensional Health Locus of Control; PERC, Patient Education Research Center.