Methods Used to Evaluate mHealth Applications for Cardiovascular Disease: A Quasi-Systematic Scoping Review
Abstract
:1. Introduction
2. Materials and Methods
2.1. Preliminary Scoping Review
2.2. Inclusion and Exclusion Criteria
2.3. Search Strategy
2.4. Literature Selection
2.5. Data Extraction and Analysis
3. Results
3.1. Characteristics of the Identified Studies
3.2. Methods and Measurements for Evaluating mHealth Technologies
4. Discussion
4.1. Patient Empowerment in mHealth Interventions for CR
4.2. Usage Behavior and Motivation
4.3. Quantitative and Qualitative Research Methods
4.4. Quality Assessment
4.5. Privacy and Data Security
4.6. Economic Evaluation
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
PCC Elements | Inclusion Criteria | Exclusion Criteria |
---|---|---|
Population | Patients (>18 years) with a diagnosed CHD No limitation of the number of participants, origin, gender of the study participants | Patients who are at risk of coronary heart disease Relatives of cardiovascular patients, e.g., children Comorbid heart disease (e.g., congenital heart defect, heart transplant) Healthy, voluntary study participants |
Concept | mHealth Application | |
Wearable mHealth applications for patients with CHD Studies using qualitative or quantitative methods to evaluate mHealth applications (e.g., standardized questionnaires, quality guidelines, device data sets, usage logs) No limitation of the evaluation parameters Fully developed mHealth applications | mHealth applications for the use of exclusively: Risk factors (e.g., high blood pressure) Diabetes Chronic Obstructive Pulmonary Disease Pregnancy Nutrition assessment (e.g., food tracking) Sport and Wellness Sensor technology (e.g., implanted sensor) Applications that are only designed for health care providers, e.g., Clinical Assessment Tool A risk screening tool of CHD for the population Pure descriptions of the apps (e.g., system, technical, program, algorithm description) | |
Study Design | ||
Single study designs for evaluating a mHealth intervention for patients with CHD Written in English or German | Study protocols Preliminary studies (e.g., for the development of the app) Reviews (e.g., systematic reviews, scoping reviews) Case studies | |
Context | No limitation of cultural parameters (e.g., geographical location, social origin, gender-specific interests) | Unpublished literature |
No restriction of the setting, e.g., acute care, primary care, rehabilitation facilities | ||
Full texts |
Database | Search String | Search Date | Results (n) |
---|---|---|---|
PubMed | Heart Disease* OR Cardiovascular Disease* AND “Mobile Health” OR “mHealth” OR Smartphone App* AND Evaluation | 5 January 2021 | 2916 |
Livivo | Cardiovascular disease AND mHealth OR mobile health app AND evaluation | 13 January 2021 | 485 |
Proquest | (mHealth OR “mobile health” app) AND Evaluation AND cardiovascular disease | 13 January 2021 | 1356 |
Total records | 4757 | ||
+ Additional studies from reference lists of 37 systematic reviews | |||
Pubmed | 6 April 2021 | 287 | |
Total records generated by search | 5044 |
Country [Ref] | Setting | Type of Intervention | Study Design | Type(s) of Evaluation | Evaluation Indicators | Evaluation Methods |
---|---|---|---|---|---|---|
Canada [24] | Home-based and hospital | mHealth system devices: mobile phone, weight scale, blood pressure monitor, ECG recordings | RCT Sample size n = 100 Duration: 6 months Retention rate: 94% Loss to follow-up: 6 | Feasibility Medical Outcomes Comparison with standard of care Utilization Clinical Management Quality of Life Effectiveness/Efficiency | Clinical endpoints Physical well-being Health parameters (BP, weight, ECG) Hospital KPIs application: Patient perception /feedback Clinicians’ interaction | Medical measurements Standardized questionnaires Collection of hospital KPI data |
USA [34] | Home-based | mHealth app | Usability study Sample: n = 15 Duration: - Retention rate: 87% Loss to follow-up: 2 | Acceptability Usability Medical outcome Self-efficacy | Clinical endpoints: Physical activity Application: Task completion success Mobile technology use Patients’ interaction | Interviews Standardized questionnaires Open feedback Usability testing Guidance by UTAUT2 construct |
USA [30] | Home-based and cardiac rehabilitation | mHealth system devices: app, monitoring dashboard | Single-arm prospective study Sample: n = 18 Duration: 3 months Retention rate: 72% Loss to follow-up: 5 | Feasibility Engagement Acceptability Medical outcome | Clinical endpoints: Health parameters (BP, functional capacity, safety) Application: Patients’ interaction with app Patient perception/feedback | Open feedback Usage logs |
Belgium [31] | Home-based and cardiac rehabilitation | mHealth app | Mixed-methods study Sample: n = 32 Duration: 4 months Retention rate: 88% Loss to follow-up: 4 | Comparison of usual care Engagement Effectiveness Usefulness Medical outcome Quality of life | Clinical endpoints: Physical activity Health parameters Application: Patients’ perception/feedback Patients’ interaction | Interviews Standardized questionnaires Medical measurements Usage logs |
China [39] | Home-based | mHealth app | Cluster randomized trial Sample: n = 209 Duration: 3 months Retention rate: 80% Loss to follow-up: 42 | Usability Feasibility Acceptability Medical outcome Safety accuracy/consistency Quality of life Self-efficacy | Clinical endpoints: Health parameters Psychological well-being Application: Patients’ perception/feedback Knowledge Data management | Open Feedback Medical measurements Standardized questionnaires Questionnaires (self-defined) Collection of cointervention data (medical outcome data) |
USA [55] | Home-based and hospital | mHealth system devices: wireless ECG, app | Cohort study Sample: n = 46 Duration: 6 months Retention rate: 76% Loss to follow-up: 11 | Comparison of usual care Feasibility Quality of life Medical outcome Self-efficacy | Clinical endpoints: Physical and psychological well-being Health parameters (ECG) Application: Patient perception/feedback | Standardized questionnaires Medical measurements Usability testing |
USA [40] | Home-based and hospital | mHealth system devices: tablet, Bluetooth-weight scale, pulse wave blood pressure wrist monitor | Mixed-methods study Sample: n = 28 Duration: 3 months Retention rate: 89% Loss to follow-up: 3 | Feasibility Comparison of usual care Usability Acceptability Medical outcome Clinical management Self-efficacy | Clinical endpoints: Health parameters Physical well-being Physical activity Application: Adherence Patients’ perception/feedback Clinicians’ interaction | Standardized questionnaires Medical measurements Interviews |
USA [41] | Home-based | mHealth app | RCT Sample: n = 60 Duration: one month Retention rate: 92% Loss to follow-up: 5 | Comparison of telehealth Medication adherence Feasibility Quality of life Acceptability Self-efficacy | Clinical endpoints: psychological and physical well-being Application: App features Patients’ interaction | Questionnaires (self-defined) Usage logs |
New Zealand [56] | Home-based | mHealth system devices: mobile phone, device for internet support | RCT Sample: n = 171 Duration: 6 months Retention rate: 92% Loss to follow-up: 14 | Medical outcome Self-efficacy | Clinical endpoints: Physical well-being Physical activity (leisure-time and walking) Health parameters | Standardized questionnaires Medical measurements |
USA [42] | Home-based | mHealth app | Mixed-methods study Sample: n = 12 Duration: one month Retention rate: 92% Loss to follow-up: 1 | Feasibility Usability Quality of life Self-efficacy Acceptability Effectiveness/efficacy Medical outcome | Clinical endpoints: Health parameters Hospital KPIs Application: Patient perception/feedback Message characteristics | Open feedback Medical measurements Standardized questionnaires Collection of hospital KPI data |
Australia [35] | Home-based | mHealth system devices: app, tracking tools (accelerometer, wrist-worn Fitbit Flex), web-based program | Cohort Study Sample: n = 21 Duration: 4 months Retention rate: 62% Loss to follow-up: 8 | Feasibility Usability Medical outcome Self-efficacy Quality of life Medical outcome | Clinical endpoints: Health parameters Physical activity Psychological well-being Application: Mobile Technology Use Patient perception/Feedback Resource Requirements Patients’ interaction | Medical measurements Standardized questionnaires Usage logs |
USA [16] | Home-based | mHealth—Text messaging | RCT Sample: n = 84 Duration: 12 months Retention rate: 99% Loss to follow-up: 1 | Comparison of usual care Medication adherence | Clinical endpoints: Physical well- Physical activity Application: Patients’ interaction | Usage logs Medical measurements Questionnaire |
USA [57] | Home-based and hospital | mHealth system devices: apps, bp cuff, scale, dashboard, medicine software platform | Registry study Sample: n = 60 Duration: one month Retention rate: 97% Loss to follow-up: 2 | Feasibility Acceptability Effectiveness/efficacy Medical outcome | Clinical endpoints: Health parameters Hospital KPIs Application: Patients’ interaction | Collection of hospital KPI data Usage logs |
Australia [23] | Home-based | mHealth app | RCT Sample: n = 166 Duration: 3 months Retention rate: 92% Loss to follow-up: 14 | Medication adherence Feasibility Comparison of usual care Adherence Acceptability Medical outcome | Clinical endpoints: Health parameters Application: Patient perception/feedback | Standardized questionnaires Open feedback Medical measurements |
Malaysia [25] | Home-based | mHealth -text messaging | RCT Sample: n = 62 Duration: 2 months Retention rate: 97% Loss to follow-up: 2 | Medication adherence Medical outcome Effectiveness/efficacy | Clinical endpoints: Health parameters Hospital KPIs Application: Patient perception/feedback | Medical measurements Standardized Questionnaires Collection of Hospital KPIs data |
USA [32] | Home-based | mHealth system devices: mobile phone, electronic pillbox, web-based platform | RCT Sample: n = 90 Duration: one month Retention rate: 93% Loss to follow-up: 6 | Medication adherence Feasibility Acceptability Comparison of usual care Usability | Application: Patient perception/feedback Patients’ interaction | Standardized Questionnaires Usage logs |
USA [58] | Home-based and hospital | mHealth system devices: tablet, blood pressure cuff, weight scale, web-based platform | Single-arm prospective study Sample: n = 21 Duration: 3.2 months Retention rate: 95% Loss to follow-up: 1 | Engagement Effectiveness/efficacy Acceptability Feasibility Usability (incl. ease of use) Quality of life Medical outcome | Clinical endpoints: Health parameters Hospital KPIs Application: Patient perception/feedback Patients’ interaction | Questionnaires (self-defined) Medical measurements Usage logs Collection of hospital KPIs data Standardized questionnaires |
Norway [33] | Home-based and cardiac rehabilitation | mHealth app | Single-arm prospective study Sample: n = 14 Duration: 3 months Retention rate: 100% Loss to follow-up: 0 | Feasibility Quality of life Usability Effectiveness/efficacy | Clinical endpoints: Physical well-being Hospital KPIs Application: Patient perception/feedback Patient satisfaction Adherence Patients’ interaction | Standardized questionnaires Open feedback Usage logs Collection of hospital KPIs data |
New Zealand [37] | Home-based | mHealth System Devices: mobile phone, web-based platform | RCT Sample: n = 171 Duration: 6 months Retention rate: 89% Loss to follow-up: 18 | Comparison of usual care Effectiveness Self-efficacy Engagement Medical outcome Quality of life Economic outcome | Clinical endpoints: Physical activity Health parameters Application: Patient perception/feedback Cost and Cost-effectiveness | Medical measurements Standardized questionnaires Economic measurements |
Norway [15] | Home-based and cardiac rehabilitation | mHealth app | RCT Sample: n = 113 Duration: 12 months Retention rate: 98% Loss to follow-up: 2 | Comparison of usual care Medical outcome Quality of life | Clinical endpoints: Health parameters Application: Patient perception/feedback Patient satisfaction | Medical measurements Standardized questionnaires |
France [59] | Home-based | mHealth—text messaging | RCT Sample: n = 521 Duration: one month Retention rate: 96% Loss to follow-up: 22 | Medication adherence Comparison of usual care | Clinical endpoints: Health parameters Application: Patient perception/feedback | Open feedback Medical measurements |
China [28] | Home-based and hospital | mHealth system devices: apps, smart tracking devices (bp cuff, weight scale, wearable ECG), remote monitoring service platform | Single-arm prospective study Sample: n = 70 Duration: 4 months Retention rate: 94% Loss to follow-up: 4 | Usability Medical outcome Satisfaction Engagement Feasibility | Clinical endpoints: Physical activity Health parameters Application: Mobile Technology Use Patient perception/feedback Health care provider experience Relatives’ experience Patients’ interaction | Interviews Standardized questionnaires Usage logs Medical record entries Medical measurements |
Netherlands [60] | Home-based and hospital | mHealth system devices: app, weight scale, blood pressure monitor, rhythm monitor, step counter | RCT Sample: n = 200 Duration: - Retention rate: 90% Loss to follow-up: 20 | Medical outcome Feasibility Satisfaction Effectiveness/efficacy Comparison of usual care | Clinical endpoints: Health parameters Hospital KPIs Application: Patients’ interaction Patient perception/feedback | Medical measurements Standardized questionnaires Collection of hospital KPIs data Medical record entries Usage logs |
Canada [61] | Home-based and hospital | mHealth system devices: app, weight scales, blood pressure monitors | Single-arm prospective study Sample: n = 315 Duration: 6 months Retention rate: 90% Loss to follow-up: 30 | Quality of life Effectiveness/efficacy Medical outcome Self-care | Clinical endpoints: Hospital KPIs Health parameters Application: Patient perception/feedback | Collection of hospital KPIs data Standardized questionnaires Medical measurements |
USA [21] | Home-based and cardiac rehabilitation | mHealth app | Qualitative Study Sample: n = 16 Duration: 2.2 months Retention rate: 25% Loss to follow-up: 12 | Feasibility Acceptability Medical outcome Medication adherence Engagement Effectiveness/efficacy | Clinical endpoints: Health parameters Physical activity Hospital KPIs Application: Patients’ interaction Patient perception/feedback | Medical measurement Usage logs Collection of hospital KPIs data |
China [19] | Home-based | mHealth—text messaging | RCT Sample: n = 767 Duration: 6.4 months Retention rate: 95% Loss to follow-up: 37 | Effectiveness/Efficacy Quality of life Self-efficacy Medication adherence | Clinical endpoints: Hospital KPIs Health parameters Application: Patient perception/feedback | Collection of hospital KPIs data Standardized questionnaires |
USA [62] | Home-based | mHealth system | RCT Sample: n = 90 Duration: one month Retention rate: 93% Loss to follow-up: 6 | Medication adherence Self-efficacy | Clinical endpoints: Psychological well-being Application: Patients’ interaction Patient perception/feedback | Standardized questionnaires Usage logs |
Spain [38] | Home-based | mHealth app | RCT Sample: n = 630 Duration: - Retention rate: 86% Loss to follow-up: 86 | Economic outcome Engagement Quality of life Efficacy | Application: Cost-effectiveness Patient satisfaction Data management Communication | Economic measurements |
Australia [18] | Home-based | mHealth app | Mixed-methods study Sample: n = 8 Duration: between 2 and 4 weeks Retention rate: 75% Loss to follow-up: 2 | Usability | Clinical endpoints: Physical activity Application: Patient perception/feedback App features Mobile technology use | Standardized questionnaires Interviews |
Canada [17] | Home-based and hospital | mHealth system devices: app, weight scales, blood pressure monitors | Mixed-methods study Sample: n = 231 Duration: 12 months Retention rate: 87% Loss to follow-up: 30 | Usability Adherence Engagement Medical outcome | Clinical endpoints: Health parameters Application: Mobile technology use Adherence Patients’ interaction Patient perception/Feedback | Guidance by UTAUT2 construct interviews Usage logs Standardized questionnaire Medical measurements |
China [63] | Home-based and hospital | mHealth—text messaging | Mixed-methods study Sample: n = 190 Duration: 3 months Retention rate: 93% Loss to follow-up: 13 | Feasibility Usability Acceptability Medication adherence Economic outcome | Clinical endpoints: Physical activity Application: Patient satisfaction Patient perception/feedback costs | Standardized questionnaires Open feedback Economic measurements |
Israel [64] | Home-based and cardiac rehabilitation | mHealth system devices: mobile phone, smartwatch, monitoring system | Single-arm prospective study Sample: n = 22 Duration: 6 months Retention rate: 100% Loss to follow-up: 0 | Feasibility Safety Adherence Effectiveness/efficacy Medical outcome Usability | Clinical endpoints: Physical activity Hospital KPIs Health parameters Application: Patient satisfaction Patients’ interaction Patient perception/Feedback | Collection of hospital KPIs data Medical measurements Usage logs Standardized questionnaires |
Norway [20] | Home-based | mHealth system devices: mobile phone, web-based platform | RCT Sample: n = 69 Duration: 3 months Retention rate: 28% Loss to follow-up: 50 | Comparison of usual care Usability Self-efficacy Adherence | Clinical endpoints: Physical activity Psychological well-being Application: Patients’ interaction Patient perception/Feedback | Standardized questionnaires Usage logs |
Australia [43] | Home-based and cardiac rehabilitation | mHealth system devices: app, blood pressure monitor, weight scale, web-based platform | RCT Sample: n = 66 Duration: 6 months Retention rate: 77% Loss to follow-up: 15 | Medical outcome Feasibility Security | Clinical endpoints: Physical activity Health parameters Psychological well-being Application: Technology and algorithm | Medical measurement Standardized questionnaires |
New Zealand [65] | Home-based and cardiac rehabilitation | mHealth system devices: mobile phone, web-based platform, pedometer | RCT Sample: n = 123 Duration: 6 months Retention rate: 94% Loss to follow-up: 7 | Comparison of usual care Medical outcome Medication adherence Self-efficacy Acceptancy | Clinical endpoints: Physical activity Psychological well-being Health parameters Application: Patient perception/feedback | Standardized questionnaire Open feedback Guidance following on the mHealth development and evaluation framework |
Australia [23] | Home-based | mHealth App | Mixed-methods study Sample: n = 58 Duration: 3 months Retention rate: 26% Loss to follow-up: 43 | Comparison of usual care Medication adherence Acceptability Utilization Engagement | Clinical endpoints: Health parameters Application: Patient perception/feedback Patients’ interaction | Standardized questionnaire Usage logs Open feedback |
Spain [14] | Home-based and cardiac rehabilitation | mHealth system devices: mobile phone, web-based platform, sphygmomanometer, glucose, and lipid meter | RCT Sample: n = 203 Duration: 12 months Retention rate: 90% Loss to follow-up: 21 | Usefulness Medical outcome Quality of life | Clinical endpoints: Health parameters Psychological well-being Application: Patient perception/feedback | Medical measurement Standardized questionnaires |
USA [22] | Home-based | mHealth—text messaging | Single-arm prospective study Sample: n = 15 Duration: one month Retention rate: 40% Loss to follow-up: 9 | Feasibility Acceptability Medication adherence Adherence Engagement | Application: Patient perception/feedback Patient satisfaction Patients’ interaction | Usage logs Standardized questionnaires |
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Holl, F.; Kircher, J.; Swoboda, W.J.; Schobel, J. Methods Used to Evaluate mHealth Applications for Cardiovascular Disease: A Quasi-Systematic Scoping Review. Int. J. Environ. Res. Public Health 2021, 18, 12315. https://doi.org/10.3390/ijerph182312315
Holl F, Kircher J, Swoboda WJ, Schobel J. Methods Used to Evaluate mHealth Applications for Cardiovascular Disease: A Quasi-Systematic Scoping Review. International Journal of Environmental Research and Public Health. 2021; 18(23):12315. https://doi.org/10.3390/ijerph182312315
Chicago/Turabian StyleHoll, Felix, Jennifer Kircher, Walter J. Swoboda, and Johannes Schobel. 2021. "Methods Used to Evaluate mHealth Applications for Cardiovascular Disease: A Quasi-Systematic Scoping Review" International Journal of Environmental Research and Public Health 18, no. 23: 12315. https://doi.org/10.3390/ijerph182312315
APA StyleHoll, F., Kircher, J., Swoboda, W. J., & Schobel, J. (2021). Methods Used to Evaluate mHealth Applications for Cardiovascular Disease: A Quasi-Systematic Scoping Review. International Journal of Environmental Research and Public Health, 18(23), 12315. https://doi.org/10.3390/ijerph182312315