| Literature DB >> 36005437 |
Sameer Quazi1,2,3, Javid Ahmad Malik4.
Abstract
Introduction: Currently, the deployment of human-computer interactive technologies to provide personalized care has grown and immensely taken shape in most healthcare settings. With the increasing growth of the internet and technology, personalized health interventions including smartphones, associated apps, and other interventions demonstrate prowess in various health fields, including cardiovascular management. This systematic review thus examines the effectiveness of various human-computer interactions technologies through telehealth (mainly eHealth) towards optimizing the outcomes in cardiovascular treatment.Entities:
Keywords: cardiovascular health; human–computer interaction; personalized health
Year: 2022 PMID: 36005437 PMCID: PMC9410340 DOI: 10.3390/jcdd9080273
Source DB: PubMed Journal: J Cardiovasc Dev Dis ISSN: 2308-3425
Figure 1PRISMA TABLE.
Characteristics of included studies.
| Author & Year | Country | Study Design | No. of Participants | Intervention | Follow up Duration | Measurement Methods | Results/Outcomes | Limitations | Conclusion |
|---|---|---|---|---|---|---|---|---|---|
| Feinberg et al., 2017 | India | Survey | 262 | mHealth (mobile phone use in healthcare) | NA | IBM-SPSS version 20 was used for data analysis. Kolmogorov–Smirnov tests were used to identify variable normality. Relevant variables with statistical significance of | 92% were willing to receive mHealth advice; | Over-presentation of high economic status in the sample affected generalizability for other population sectors. | Majority of the population approved the use of mHealth interventions, with preference of further investigation on mHealth use as educational tool to manage cardiovascular disease |
| Höchsmann et al., 2019 | Finland | RCT | 36 (45–70 years) | mHealth app (smartphone game as a behavioral change technique) | 24 weeks | Intrinsic physical activity (PA) motivation was assessed with an abridged 12-item version of the Intrinsic Motivation Inventory (IMI) before and after the intervention. | Intrinsic PA motivation (IMI total score) increased significantly in the intervention group (+6.4 (SD 4.2; | The study lacked an objective measure of records of any additional physical activity (PA) beyond phone recorded PA. These periods without phone wear likely led to an underestimation of unknown magnitude of the true number of daily steps. | Study shows that a novel smartphone exergame that incorporates established motivational elements and personalized PA recommendations in the storyline can generate significant increases in intrinsic PA motivation in inactive individuals with type 2 diabetes |
| Paldán et al., 2021 | Finland | RCT | 46 | mHealth app (mobile intervention software-TrackPAD) | 3 months | The distance covered in the 6-minute walking test using the TENALEA software. | The intervention group (n = 19) increased their mean 6-min walking distance (83 m, SD 72.2), while the control group (n = 20) decreased their mean distance after 3 months of follow-up (–38.8 m, SD 53.7; | There were weaknesses of the general gestural concept resulting from advanced age of the user groups who are inexperienced in using mHealth. Since the study designed a platform for both iOS and Android, some technical issues occurred due to the different technical implementations of the provider. | The mobile intervention TrackPAD was linked to a change in prognosis-relevant outcome measures combined with enhanced coping with the disease |
| Vollmer et al., 2014 | Kaiser Permanente health plan regions (Northwest, Hawaii and Georgia) | RCT | 21,752 (above 40 years) | Interactive voice recognition calls (IVR regular and IVR advanced). | 12 months | A modified version of the Proportion of Days Covered (PDC) was used to measure medication adherence as the primary measure. | IVR+ and IVR interventions increased adherence to statins and angiotensin-converting enzyme inhibitors/angiotensin receptor blockers (ACEIs/ARBs) compared with usual care (1.6 to 3.7 percentage points). | A substantial number of participants were never reached by phone, thus diluting delivery and potentially the effectiveness of the IVR intervention. Indeed, the IVR+ intervention was designed largely in recognition of this limitation, although the incremental effect of the added IVR+ components was also small/ | Technology-based tools, in conjunction with an EMR, can improve adherence to chronic disease medications and measured cardiovascular disease risk factors. |
| Fang & Li, 2016 | China | RCT | 280 outpatients, including 200 men (71.42%) and 80 women (28.58%) ranging in age from 38 to 69 years. | mHealth technologies (short message service, short message service + Micro Letter, and phone). | 6 months | Study used the four-item dichotomous Morisky Medication Adherence Scale (MMAS) to assess drug compliance. | Results showed that the SMS and SMS + ML groups had better cumulative adherence (lower MMAS scores) after six months compared to the phone group. The SMS + ML group had better cumulative adherence (lower MMAS scores) after six months compared to the SMS group. | Study limitations are that it required access to a cellular data network, literacy, and the ability to use a smart phone. | Short message service and messaging applications, such as Micro Letter, are effective means of providing discharged patients with reminders and coronary artery disease-related health information. Implementation of a short message service + Micro Letter program can improve outpatient adherence to medication. |
| Frederix et al., 2015 | Belgium | RCT | 140 (intervention group; n = 70) or to conventional cardiac rehabilitation alone (control group; n = 70) | Internet based, patient-tailored telerehabilitation program with short message service (SMS) | 24 weeks | The primary outcome measure was peak aerobic capacity (VO2 peak), measured during maximal cardiopulmonary exercise testing with breath-by-breath gas exchange analysis at baseline and after 6 and 24 weeks (Jaeger MS-CPX). | Mean aerobic capacity increased significantly in intervention group patients (n = 69) from baseline (mean 22.46, SD 0.78 mL/[min*kg]) to 24 weeks (mean 24.46, SD 1.00 mL/[min*kg], | The telerehab was designed to recruit broad cardiac patient population but ended up with minority of patient participants, thus reducing the generalizability of the findings for the chronic heart failure patients. | Study showed that comprehensive tele rehabilitation program can lead to a bigger improvement in both physical fitness (VO2 peak) and associated health-related quality of life (HRQL) compared to center-based cardiac rehabilitation alone. |
| Blasco et al., 2012 | Spain | RCT | 203 | Patients randomized to the TMG were temporarily provided with an automatic sphygmomanometer, glucose lipid meter, and cellular phone. | 12 months | Outcome measures were resting BP, body mass index | Telemonitoring (TMG) patients were more likely (RR 1.4; | A telemonitoring program, via mobile phone messages, | |
| Martin et al., 2015 | U.S.A, Marylland | RCT | 48 | Automated mHealth tracking technology (digital physical activity tracking was performed using the Fitbug Orb, a wearable, display-free, triaxial accelerometer that pairs with low-energy Bluetooth with compatible smartphones) linked with smart texting system | 6 months | The primary outcome measure was the mean change in accelerometer-measured daily step count assessed from baseline through phase I and II. | The phase I change in activity was non significantly higher in unblinded participants versus blinded controls by 1024 daily steps (95% confidence interval [CI], −580 to 2628; | The study had a limited sample size, hence, it best interpreted as exploratory evidence rather or a pilot trial study. The study also used adult smartphone participants thus making its generalizability uncertain. | An automated tracking-texting intervention increased physical activity with, but not without, the texting component. In ambulatory cardiology patients who are smartphone users, a novel mHealth intervention coupling smart texts to digital tracking significantly increased near-term physical activity. |
| Tian et al., 2015 | China & India | RCT | 2086 | Android-powered app (Simplified Cardiovascular management Study; SimCard) | 12 months | The primary outcome was the net difference between groups in the change in the proportion of patient-reported antihypertensive medication use. | In comparison with the control group, the intervention group had a 25.5% ( | This study was not able to evaluate the effectiveness of different components or specific measures of the simplified cardiovascular management program, e.g., any given lifestyle modification or prescription of appropriate medication. Additionally, the imbalances of two baseline characteristics (history of coronary heart disease and history of diabetes mellitus) in India could have potentially affected the outcome assessment. | The results indicate that the simplified cardiovascular management program improved quality of primary care and clinical outcomes in resource-poor settings in China and India. Larger trials in more places are needed to ascertain the potential impacts on mortality and morbidity outcomes. |
| McGillicuddy et al., 2013 | U.S.A | RCT | 20 | Prototype mHealth technology (A smartphone enabled medication adherence and BP self-management system). | 3 months | Medication adherence was examined using a 2 (treatment group: mHealth, SC) × 4 (time: pre-intervention, 1, 2, and 3 months) repeated measures analyses of variance (ANOVA). | Compared to the standard care control group (SC), the mHealth intervention group exhibited significant improvements in medication adherence and significant reductions in clinic-measured systolic blood pressures across the monthly evaluations. Physicians made more anti-hypertensive medication adjustments in the mHealth group versus the standard care group (7 adjustments in 5 patients versus 3 adjustments in 3 patients) during the 3-month trial based on the information provided in the weekly reports. | All the study subjects were recruited from a single transplant center which jeopardizes its generalizability. Besides, the randomly assigned groups differed significantly in age and adherence prior to the intervention raises questions about the validity of the conclusions. Finally, those who chose to participate in the mHealth-based RCT might be predisposed to a more positive attitude toward mHealth and thereby introduce a positive bias. | These data support the acceptability and feasibility of the prototype mHealth system. Further trials with larger sample sizes and additional biomarkers (e.g., whole blood medication levels) are needed to examine efficacy and effectiveness of the system for improving medication adherence and blood pressure control after kidney transplantation over longer time periods. |
Figure 2Risk of bias graph; (Red Circles indicating High Risk of Bias, while Green Circles Indicate Low Risk of bias).