Literature DB >> 35206936

mHealth Apps for Self-Management of Cardiovascular Diseases: A Scoping Review.

Nancy Aracely Cruz-Ramos1, Giner Alor-Hernández1, Luis Omar Colombo-Mendoza2, José Luis Sánchez-Cervantes3, Lisbeth Rodríguez-Mazahua1, Luis Rolando Guarneros-Nolasco1.   

Abstract

The use of mHealth apps for the self-management of cardiovascular diseases (CVDs) is an increasing trend in patient-centered care. In this research, we conduct a scoping review of mHealth apps for CVD self-management within the period 2014 to 2021. Our review revolves around six main aspects of the current status of mHealth apps for CVD self-management: main CVDs managed, main app functionalities, disease stages managed, common approaches used for data extraction, analysis, management, common wearables used for CVD detection, monitoring and/or identification, and major challenges to overcome and future work remarks. Our review is based on Arksey and O'Malley's methodological framework for conducting studies. Similarly, we adopted the PRISMA model for reporting systematic reviews and meta-analyses. Of the 442 works initially retrieved, the review comprised 38 primary studies. According to our results, the most common CVDs include arrhythmia (34%), heart failure (32%), and coronary heart disease (18%). Additionally, we found that the majority mHealth apps for CVD self-management can provide medical recommendations, medical appointments, reminders, and notifications for CVD monitoring. Main challenges in the use of mHealth apps for CVD self-management include overcoming patient reluctance to use the technology and achieving the interoperability of mHealth applications with other systems.

Entities:  

Keywords:  cardiovascular diseases; mHealth; self-management

Year:  2022        PMID: 35206936      PMCID: PMC8872534          DOI: 10.3390/healthcare10020322

Source DB:  PubMed          Journal:  Healthcare (Basel)        ISSN: 2227-9032


1. Introduction

According to the World Health Organization (WHO), cardiovascular diseases (CVDs) are a group of disorders of the heart and blood vessels. They affect the normal behavior of the organism and have an adverse impact on a patient’s emotional wellbeing, as well as on their work, family, social, and economic environments. On a much larger scale, CVDs are a public health concern due to their high prevalence, mortality, vulnerability, and the high public costs implied in their management. According to the WHO, CVDs are and will remain the number one cause of death globally at least for the following eight years. In fact, by 2030 almost 23.6 million people are estimated to die from some form of CVD [1]. In 2017 alone, approximately 17.9 million people died from CVDs, representing 31% of all global deaths. Overall, 85% of CVD-related deaths are due to either heart attacks or strokes. People suffering from CVDs or those at greater risk of developing them need to rely on effective means, such as counseling and medicines, for early CVD detection and management. Mobile health (mHealth) is a medical and public health practice supported by mobile devices, such as mobile phones, portable monitoring devices, and personal digital assistants. It involves using strategies such as smartphone apps, global positioning systems (GPS), and Bluetooth technologies. Approximately 500 million patients use mobile health (mHealth) applications to support their self-healthcare activities [2]. In this sense, cardiovascular mHealth is the most used in the mHealth domain through innovation, research, and implementation in the areas of CVD prevention, cardiac rehabilitation, and education [3]. Additionally, the most promising domains of mHealth use have to do with blood pressure monitoring, cardiac rehabilitation, arrhythmia monitoring, medication management, and social support. mHealth apps hold promise for delivering health information and services to patients, especially for chronic diseases such as CVDs, which require extensive self-management. Self-management is key to person-centered care, but its support requires an understanding of individual preferences for different types of health information and decision-making autonomy. The self-management of chronic conditions requires the ability to manage the symptoms, treatment, physical, and psychosocial consequences and lifestyle changes inherent to living with a chronic condition. Additionally, self-management is inherent to person-centered care that promotes a balanced consideration of the values, needs, expectations, preferences, capacities, health, and wellbeing of all the constituents and stakeholders of the healthcare system. Effective self-management and person-centered care require full accommodation of people’s needs and preferences for different types and amounts of information and other care services, a degree of autonomy in health-related decision-making, and support from their healthcare professionals and family members [4]. Current studies investigating mHealth interventions for patients with CVDs have returned mixed findings. Hence, more effort and work are needed to create engaging mHealth platforms that provide the necessary level of support to make sustained behavioral change. Similarly, addressing specific motivational, physical, and cognitive barriers to mHealth adoption among patients might increase the utilization of future interventions. It is also important to adopt new approaches that minimize the weaknesses of commercially available mobile apps [5]. We found related reviews that are focused on mobile apps for CVDs self-management using different technologies. These reviews studied the impact of incorporating mobile applications for symptom tracking, medication reminding, self-care support, and physiological state monitoring on the self-management of CVD patients’ health. In addition, we identified that most of these proposals addressed the prevention and treatment of heart failure, arrhythmias, and coronary disease. Searcy et al. [5] documented the use domains of mHealth in CVD management, the barriers to mHealth adoption in older adults, and future directions for mHealth to increase engagement in this population. Furthermore, other studies [6,7,8,9,10,11] have explored the effectiveness, acceptability, and usefulness of mobile applications for CVD self-management and risk factor control using a variety of performance metrics. These studies have identified the most attractive features of the applications, such as the monitoring of healthy behaviors and the personalization of content. In addition, they have concluded that cardiovascular disease risk factors and behaviors are modifiable in the short term. Other authors [3,4,12] studied the mHealth apps for CVD prevention and management. Likewise, Cruz-Martínez et al. [13] identified interventions of self-management through the use of remote monitoring technologies. Other studies have rather focused on the self-management of specific CVDs. For instance, Refs. [14,15] analyzed the effect of the use of wearables and apps for cardiac rehabilitation of arrhythmia patients, whereas [16,17,18] studied a series of prevention and treatment programs for heart failure management through mHealth. Additionally, in [2,19,20,21,22] the functionalities of mHealth apps for heart failure self-management were evaluated. The main difference between our scoping review and similar state-of-the-art reviews is that ours addresses more CVDs than those more frequently addressed in other reviews. Our scoping review aims at describing the current state of mHealth apps for CVD self-management by analyzing six aspects: (1) main CVDs managed, (2) main app functionalities, (3) common wearables used with these apps, (4) disease stages managed, (5) common approaches used for data extraction, analysis, and management, and (6) challenges and future work remarks. The review comprises a body of scientific literature issued from 2014 to mid-2021. The remainder of this paper is organized as follows: Section 2 introduces the materials and methods used to conduct the review. In Section 3, we present our results with respect to the research questions, whereas in Section 4, we discuss such findings. Finally, our conclusions are summarized in Section 5.

2. Materials and Methods

Our review is based on Arksey and O’Malley’s [23] methodological framework for conducting studies as well as on the recommendations of Levac regarding such a framework [24]. Similarly, we adopted the PRISMA model proposed by Moher et al. [25] for reporting systematic reviews and meta-analyses and the PRISMA-ScR model extension. Next, we relied on the work of Tricco et al. [26] to determine how to organize and present the scoping review findings. The scoping review comprises five development phases: (1) identify research questions, (2) identify relevant studies, (3) select relevant studies, (4) chart the data, and (5) collate, summarize, and report findings.

2.1. Research Questions

We formulated seven research questions that framed our scoping review, helped us meet our research goals, and guided us throughout the reviewing process. RQ1. Which CVDs are most commonly managed by mHealth apps? RQ2. Which mHealth apps for CVD self-management are reported in the literature? RQ3. What are the main functionalities of mHealth apps for CVD self-management? RQ4. What are the major remarks for future work and challenges to be overcome by mHealth apps for CVD self-management? RQ5. Which approaches to data extraction, analysis, and management are commonly implemented in mHealth apps for CVD self-management? RQ6. Which wearables are commonly used to detect, monitor, and/or identify CVDs? RQ7. Which CVD stages are commonly managed by mHealth apps?

2.2. Inclusion and Exclusion Criteria

At the first stage of the search strategy, we defined the repositories in which we would search for the primary studies. These repositories included IEEE Xplore Digital Library, PubMed, ScienceDirect (Elsevier), SpringerLink, and Wiley Online Library. According to our preliminary search, these digital libraries hosted a greater amount of related literature when compared to other repositories, such as ACM (Association for Computing Machinery) Digital Library and Web of Science. Additionally, we relied on Google Scholar to expand our search. At the second stage of the search strategy, we performed a keyword search for primary studies issued within the 2014–2021 period. Table 1 lists such keywords, which were used both individually and combined using the conjunctions “and” and “or” to broaden our results.
Table 1

Keywords and related concepts.

AreaKeywordsRelated Concepts
Cardiovascular diseaseSelf-managementSelf-careSelf-monitoringHeart diseaseCardiac issuesHeart failureArrhythmiaCoronary heart diseaseAtrial Fibrillation (AF)HypertensionCardiac arrestPeripheral artery diseasemHealthmobile applicationsmart applicationwearablesmartwatchapp
The following queries were built to search for primary studies in each selected repository. ‘Cardiovascular disease’ AND (‘Self-management’ OR ‘Self-care’ OR ‘Self-monitoring’) AND (‘mHealth’ OR ‘mobile application’ OR ‘smart application’ OR ‘wearable’ OR ‘smartwatch’ OR ‘app’). The analysis of the preliminary results of this query revealed relevant search terms related to different cardiovascular disease types. Query 2 includes these search terms to expand on the relationship identified. (‘Heart disease’ OR ‘Cardiac issues’ OR ‘Heart failure’ OR ‘Arrhythmia’ OR ‘Coronary heart disease’ OR ‘Atrial Fibrillation’ OR ‘Hypertension’ OR ‘Cardiac arrest’ OR ‘Peripheral artery disease’) AND (‘Self-management’ OR ‘Self-care’ OR ‘Self-monitoring’) AND (‘mHealth’ OR ‘mobile application’ OR ‘smart application’ OR ‘wearable’ OR ‘smartwatch’ OR ‘app’). Finally, we used the PRISMA model as a guide to organize and report our results.

2.3. Study Selection and Eligibility

At the end of the search process, we found 442 relevant results: 33 from IEEE Xplore Digital Library, 105 from PubMed, 96 from ScienceDirect (Elsevier), 57 from SpringerLink, 16 from Wiley Online Library, and 135 from Google Scholar. Then, after removing duplicates, we relied on 159 articles for the first analysis, which necessitated classifying these papers by title and abstract. We performed a full-text reading of 84 of these articles, 38 of which were finally used in the scoping review (see Figure 1).
Figure 1

Study selection process—PRISMA diagram flow.

Once we gathered the initial 442 studies, we selected those containing at least two of the keywords listed in Table 1 in their abstract. Then, we removed those papers that were not directly related to CVD self-management. Following this step, we kept just 159 studies: 16 from IEEE Xplore Digital Library, 35 from PubMed, 27 from ScienceDirect (Elsevier), 12 from SpringerLink, 10 from Wiley Online Library, and 59 from Google Scholar. Next, we analyzed these papers with respect to our set of established exclusion criteria: Studies on diseases other than CVDs; Studies conducted in domains other than health self-management; Studies written in languages other than English. The remaining 38 primary studies were those comprising the scoping review. We downloaded the entire file of each study to ensure its proper analysis. As depicted in Figure 2, the majority of the studies (92.1%) were published in journals, 2.6% were issued as book chapters, and 5.3% were published in conference proceedings. Moreover, most of the studies were published between 2017 and 2018.
Figure 2

Type of publication from 2014 to 2021.

Figure 3 illustrates the geographical distribution of our primary studies. As can be observed, most of them were conducted in the United States.
Figure 3

Geographical distribution of primary studies.

As regards allocation (see Figure 4), the majority of the primary studies were collected from PubMed, followed by Google Scholar, and then ScienceDirect. Research articles retrieved from SpringerLink, Wiley Online Library, and IEEE were less frequent.
Figure 4

Primary studies by digital libraries.

2.4. Data Collection and Analysis

Once we defined the primary studies to be used in the review, we retrieved their bibliographic data and content data. The former included research title, authors, research goals, and database of provenance. The latter refer to the information contained in each study helping us answer our research questions (see Section 2.1).

3. Results

We reviewed the studies with respect to six aspects (see Table 2) aligned with our research questions. These aspects are listed and briefly explained below:
Table 2

Comparison of the main characteristics of mHealth apps.

Study ReferenceCVDMain App FunctionalitiesChallenges and/or Future Work RemarksApproachesDevice or Web/Mobile ApplicationCVD Phase
Zisis et al. [27]Heart failureMedical recommendations, reminders, weight controlComputer skills of the patient, hearing problems, impaired vision, and cognitive impairmentSupervised machine learning (classification)Smartphone orTablet, Heart Failure appMonitoring, treatment
Bohanec et al. [28]Heart failureNutrition management, managing medication intake, psychological support, daily Exercise management, monitoring biomedical variables, medical recommendationsIncreased adaptation to the patients’ lifestyle, add methods for recognizingpatients’ activities, and integrating the optimization module in a smart-home environmentSupervised machine learning(random forest algorithm), classic differential evolution algorithm, and IoT device (heart rate, blood pressure)Wristband, Blood pressure monitor,HeartMan Web appMonitoring,treatment
Heiney et al. [29]Heart failureText messages for communication between patients and physicians, weight and symptoms control, medical recommendations, medication managementDisparate population with low literacy, low health literacy, and limited smartphone useIoT device (heart rate)Smartphone, Healthy Heart appMonitoring,treatment
Koirala et al. [30]Heart failureMedical recommendationsImplement the app in a real environmentBig data type (unstructured data), Supervised machine learningSmartphonePrevention, diagnosis
Gonzalez-Sanchez et al. [31]Heart failureMedical recommendationsOvercome patient resistance behavior toward using technologyAdd more functionality to the mobile appUnsupervised machine learningSmartphone, Evident II appPrevention
Barret et al. [32]Heart failureMedical recommendationsMeasure patient variablesGreater focus on CVDasymptomatic patientsUnsupervised machine learningSmartphone, Abby Web appPrevention, treatment
Silva et al. [33]Heart failureMedical recommendationsEnsure interoperability of mHealth apps for remote monitoring, Heart rate measurement automationUnsupervised machine learningSmartphone, MOVIDA.eros appMonitoring, treatment
Foster [34]Heart failureMedical recommendations, alertsImplement the app in a real environmentUnsupervised machine learningSmartphone, HF mobile appMonitoring, treatment
Sakakibara et al. [35]Heart failureMedical recommendations, alerts,medication managementImplement the app in a real environmentBig data type (unstructured data)Smartphone,mobile appPrevention,treatment
De la Torre-Diez et al. [36]Heart failureMedical recommendations, alertsIntegrate the app system with EMR systems, Improve the usability of the mobile app, Add serious games to the appUnsupervised machine learningSmartphone, Heartkeeper appTreatment
K. Rahimi et al. [37]Heart failureMedical recommendations, alerts,medication managementIntegrate the app system with EMR systems, Increase wearable precisionUnsupervised machine learning, IoT device (heart rate, sensor Sp02)Smartphone, SUPPORT-HF app, OximeterMonitoring, treatment
Bartlett et al. [38]Heart failureStep count calculation, weight control, blood pressure controlOvercome technological problemsIoT device (heart rate, blood pressure)SMART Personalized Self-Management System (PSMS), HTC HD2 phone, MiFi device, mobile appMonitoring,treatment
Turchioe et al. [39]ArrhythmiaMedical recommendationsOvercome patient resistance to technologyUnsupervised machine learningSmartphonePrevention, monitoring
Pierleoni et al. [40]ArrhythmiaMedical recommendations, alertsImplement application in a real environmentBig data type (unstructured data), Unsupervised machine learningSmartphoneMonitoring, treatment
Reverberi et al. [41]ArrhythmiaAF detectionImplement algorithm for AF detectionIoT device (heart rate, ECG), Supervised machine learning (classification)HR monitor of the chest-strap type, RITMIA appPrevention
Fukuma et al. [42]ArrhythmiaAF detectionIncrease patient monitoring timeIoT device (heart rate, ECG)T-Shirt-type wearable, ECG monitor,Hitoe Transmitter 01, smartphonePrevention,treatment
Bumgarner et al. [43]ArrhythmiaAF detectionIncrease sample size,Increase the performance of the KB smartwatch algorithm, Review the real-time display of the ECG recordingIoT device (heart rate, blood pressure), Unsupervised machine learningKardia Band, Apple Watch, KB appPrevention,monitoring
Krivoshei et al. [44]ArrhythmiaAF detection, monitoring of heart rate, pulse wave analysisTest the algorithm on a smartwatchUnsupervised machine learningSmartphone,iPhone 4SPrevention
Guo et al. [45]ArrhythmiaMedical recommendations, medication management, alerts, medical recordOvercome patient resistance to using technologySupervised machine learningSmartphone,mAF appTreatment
Evans et al. [46]ArrhythmiaAF detectionExtend study to other hospitals serving low-resource areas, Ensure interoperability with further systemsIoT device (heart rate, blood pressure), Supervised machine learning (classification)AliveCor Kardia mobile ECG device, iPhone and iPadDiagnosis,monitoring
Halcox et al. [47]ArrhythmiaAF detectionThe relatively high false-positive rate in the minor proportion of those reported as AF by the deviceIoT device (heart rate, blood pressure), Supervised machine learning (classification)AliveCor Kardia device, iPadDiagnosis,monitoring
Lowres et al. [48]ArrhythmiaiPhone handheld electrocardiogram (iECG)Using iECG self-monitoring among other patient groupsSupervised machine learningiPhone andAliveCor Heart monitor (iECG)Monitoring
Hickey et al. [49]ArrhythmiaAF detectionImplement the application in a real environmentIoT device (heart rate, blood pressure), Supervised machine learning (classification)AliveCor Kardia mobile ECG device, iPhoneDiagnosis,monitoring
McManus et al. [50]ArrhythmiaAF detectionImprove pulse recording and app performanceIoT device (heart rate), Supervised machine learning (classification)PULSE-SMART app, iPhone 4SDiagnosis,monitoring
Kakria et al. [51]ArrhythmiaAlerts, monitoring of heart rate, blood pressure, and temperatureSolve the problem of delayed alarms in remote areasIoT device (heart rate, blood pressure, stress level)Smartphone, Zephyr BT system, G plus sensor, the Omron Wireless Upper Arm blood pressure monitorDiagnosis,monitoring
Brouwers et al. [52]Coronary heart diseaseMedical recommendations, alertsSedentary patientsIoT device (heart rate)Patient-centered web app, accelerometer, heart rate monitorMonitoring,treatment
Zhang et al. [53]Coronary heart diseaseMedical recommendationsEnsure interoperability of applications for remote monitoringBig data type (unstructured data), Unsupervised machine learningSmartphone, Care4Heart appPrevention
Athilingam [54]Coronary heart diseaseMedical recommendations, alerts,medication managementOvercome patient resistance to using technologyReplace current sensor with handheld sensorIoT device (heart rate), Supervised machine learningSmartphone, HeartMapp, BioHarness Bluetooth sensorMonitoring, treatment
Dale et al. [55]Coronary heart diseaseText messages for communication of patients and physiciansImplement the app in a real environmentBig data type (structured data)SmartphoneTreatment
Skobel et al. [56]Coronary heart diseaseExercise module,activity level monitoringAutomatic arrhythmia detectionIoT device (heart rate, ECG, respiration, activity), Supervised machine learningHeartCycle’s guided exercise (GEX) system, tablet or laptop, portable PDA for ECG display, shirt with sensorsDiagnosis,monitoring
AM et al. [57]Coronary heart diseaseEducational material, medication reminders, and activity level monitoringTrain medical personnel and patientsIoT device (heart rate)SmartphoneMonitoring,treatment
Dale et al. [58]Coronary heart diseaseText messages for communication of patients and physicians, medical recommendations,weight controlImplement app in a real environmentIoT device (heart rate)Smartphone, web app Text4HeartTreatment
Jiang et al. [59]Several (coronary heart disease and hypertension)Alerts,medication managementAchieve acceptance of mHealth solutions among older patient populations, Improve app designSupervised machine learning (Regression)Smartphone,mobile appTreatment
Baek et al. [60]Several (atrial fibrillation, hypertension, chest pain, vasovagal syncope, variant angina, and dyspnea on exertion)Medical recommendations, alerts, diary, weight controlImprove app usability,Integrate app system with EMR (Electronic Medical Record) systemsIoT device (heart rate)SmartphoneTreatment,monitoring
Supervía & López-Jimenez [61]Several (heart failure, coronary heart disease, tachycardias, arrhythmia, and hypertension)Medical recommendationsGuarantee patient data protection and confidentialityUnsupervised machine learningSmartphoneTreatment
Tinsel et al. [62]Several (heart failure, Coronary heart disease, tachycardias, arrhythmia, and hypertension)Medical recommendations, alertsOvercome patient resistance to using technologyIoT device (heart rate)Mobile appPrevention,treatment
Martorella et al. [63]Several (heart failure, coronary heart disease, tachycardias, arrhythmia and hypertension)Medical recommendations, medication managementScreen questionnaire to tailor content according to chronic postsurgical pain (CPSP) risk factorsNot specifiedWeb appMonitoring,treatment
Johnston et al. [64]Several (myocardial infarction, angina pectoris, heart failure, atrial fibrillation, embolic stroke, peripheral artery disease, hypertension)Medication management, text messaging, reminders,e-diary, exercise module, BMI module, and blood pressure moduleImprove patient self-reported drug adherenceIoT device (heart rate)Smartphone, web-based appTreatment
Type of CVD that is managed by each mHealth app. Main app functionalities. Central capabilities of mHealth apps for CVD self-management, including (a) medical recommendations for patient follow-up, (b) real-time alerts before vital sign alterations, (c) medication management, (d) report of monitored parameters, (e) reminders for patient adherence to medication, physical activity, and/or dietary plans, (f) patient–physician communication via text messages, and (g) atrial fibrillation (AF) detection. Challenges and/or future work remarks (when applicable). Main challenges to overcome and/or suggestions for future work for mHealth apps used in CVD self-management. Approaches to data analysis, extraction, and management. The approaches were identified such as (a) machine learning techniques, (b) machine learning tasks, (c) big data types, and (d) device/sensor types. We identified mHealth apps relying on large datasets and big data analysis techniques. Additionally, there are apps relying on machine learning algorithms (MLAs) or techniques. Finally, we detected mHealth apps relying on sensors/wearables to obtain patient data (e.g., vital signs). Device and apps. Information on the wearables and web and mobile apps—either commercially available or purposefully developed in the study itself—used by each mHealth app to retrieve patient data and biomedical variables. CVD phase or set of phases managed by each mHealth app reviewed. The main CVD phases identified were diagnosis, prevention, monitoring, and treatment.

4. Discussion

4.1. RQ1. Which CVDs Are Most Commonly Managed by mHealth Apps?

The CVDs most commonly managed by mHealth apps in the literature are arrhythmias, heart failure, and coronary heart disease. Arrhythmia self-management is present in 34% of the reviewed studies [39,40,41,42,43,44,45,46,47,48,49,50,51], whereas heart failure self-management exhibited a frequency of 32% [27,28,29,30,31,32,33,34,35,36,37,38]. In turn, coronary heart disease self-management is present in 18% [52,53,54,55,56,57,58]. Additionally, 16% of the papers explore the self-management of several CVDs simultaneously [59,60,61,62,63,64]. We attribute this to the fact that these diseases have a high prevalence and mortality worldwide. In this regard, we believe that researchers are mainly focusing on solutions for the management of arrhythmias, specifically atrial fibrillation, because it affects 25% of the population aged over 40 years. Some studies analyzed mHealth apps that address more than one cardiovascular disease at a time; we believe that this is due to the patients’ risk factors, which can cause comorbidities, i.e., one disease can develop from another. However, our recommendation is that mHealth applications should focus only on one particular disease to provide more accurate forecasts, as each disease has its own characteristics.

4.2. RQ2. Which mHealth Apps for CVD Self-Management Are Reported in the Literature?

As regards arrhythmia self-management, mHealth apps include the RITMIA smartphone app [41], the KB app [43], the mAF app [45], and PULSE-SMART [50]. Generally speaking, these apps issue medical recommendations and allow for the early detection of AF, the most common type of arrhythmia. mHealth apps for arrhythmia self-management generally focus on arrhythmia prevention, diagnosis, and monitoring. The monitoring devices that can be connected to these apps are the T-shirt-type wearable ECG monitor and the AliveCor Kardia Mobile ECG. mHealth apps for heart failure self-management include the Heart Failure app [27], HeartMan [28], Healthy Heart [29], Evident II [31], Abby [32], MOVIDA.eros [33], HeartKeeper [36], and SUPPORT-HF [37]. The majority of them focus on heart failure monitoring and treatment through issuing medical recommendations and medication management. Oximeters and sensors for blood pressure measurement are the most common devices connected to these apps. The Care4Heart [53], HeartMapp [54], and Text4Heart [58] apps support coronary heart disease self-management. They primarily issue medical recommendations, reminders, and alerts and offer medication management. Most of these apps focus only on coronary heart disease monitoring. Devices and wearables such as heart rate monitors, the BioHarness Bluetooth sensor, portable ECG monitors, and T-shirts with sensors are usually connected to these applications. mHealth apps such as those reported in [59,60,61,62,63,64] aim at supporting the self-management of multiple CVDs. These mHealth apps mainly provide medical follow-up recommendations for physical activity or dietary plans. Likewise, they issue medication reminders and real-time warnings before potential vital sign alterations. We found that 63.6% of the mHealth apps are compatible with the Android operating system, whereas 13.6% support iOS, and 22.8% support both (see Table 3).
Table 3

mHealth applications for CVD self-management.

CVDStudyMobile App NameAndroidiOS
Heart failureZisis et al. [27]Heart Failure app
Bohanec et al. [28]HeartMan
Heiney et al. [29]Healthy Heart
Gonzalez-Sanchez et al. [31]Evident II
Barret et al. [32]Abby
Silva et al. [33]MOVIDA.eros
Foster [34]HF mobile app
Sakakibara et al. [35]Bartlett et al. [38]Not specified
De la Torre-Diez et al. [36]HeartKeeper
K. Rahimi et al. [37]SUPPORT-HF
ArrhythmiaReverberi et al. [41]RITMIA
Bumgarner et al. [43]Evans et al. [46]Halcox et al. [47]Lowres et al. [48]Hickey et al. [49]Kardia app
Krivoshei et al. [44]Unstated
Guo et al. [45]mAF app
McManus et al. [50]PULSE-SMART
Kakria et al. [51]Not specified
Coronary heart diseaseZhang et al. [53]Care4Heart
Athilingam [54]HeartMapp
AM et al. [57]Not specified
Dale et al. [58]Text4Heart
Other CVDsJiang et al. [59]Not specified
Supervía & López-Jimenez [61]Tinsel et al. [62]Not specified
It is reasonable to believe that there are more mHealth applications for the Android operating system because it is the most popular operating system in the world. However, we found in this research that the most complete mHealth application is the Kardia app, which is available for the iOS operating system only. Therefore, we believe that it is important to develop cross-platform mHealth applications; in this regard, an alternative would be the use of PWA (progressive web app) development technologies. Another remarkable finding is that only 2 of the 16 mobile applications analyzed are available through digital distribution platforms: (1) MOVIDA.eros and (2) the Kardia app. Moreover, some of the applications analyzed were subjected to user acceptance tests with small groups of patients; in addition, some of them are not widely available because they are still in development. In this regard, we believe there is an opportunity to release free trial versions of the mHealth applications to test them with larger patient samples.

4.3. RQ3. What Are the Main Functionalities of mHealth Apps for CVD Self-Management?

We identified six main functionalities of mHealth apps for CVD self-management (see Table 4):
Table 4

Main functionalities of mHealth apps for CVD self-management.

CVDStudyF1F2F3F4F5F6
Heart failureZisis et al. [27]
Bohanec et al. [28]
Heiney et al. [29]
Koirala et al. [30]
Gonzalez-Sanchez et al. [31]
Barret et al. [32]
Silva et al. [33]
Foster [34]
Sakakibara et al. [35]
De la Torre-Diez et al. [36]
K. Rahimi et al. [37]
Bartlett et al. [38]
ArrhythmiaTurchioe et al. [39]
Pierleoni et al. [40]
Reverberi et al. [41]
Fukuma et al. [42]
Bumgarner et al. [43]
Krivoshei et al. [44]
Guo et al. [45]
Evans et al. [46]
Halcox et al. [47]
Lowres et al. [48]
Hickey et al. [49]
McManus et al. [50]
Kakria et al. [51]
Coronary heart diseaseBrouwers et al. [52]
Zhang et al. [53]
Athilingam [54]
Dale et al. [55]
Skobel et al. [56]
AM et al. [57]
Dale et al. [58]
SeveralJiang et al. [59]
Baek et al. [60]
Supervía & López-Jimenez [61]
Tinsel et al. [62]
Martorella et al. [63]
Johnston et al. [64]
Recommendations (F1). Medical recommendations issued for patient follow-up in terms of dietary plans, physical activity, and overall health status. Alerts/reminders/text messages (F2). (a) Early, real-time warnings issued before potential vital signal alterations, (b) medication, physical activity, and/or dietary reminders, and (c) text messages communication between patients and physicians. Parameter monitoring (F3). Reports of monitored patient parameters, such as active minutes, burned calories, weight, step count, traveled distance, heart rate, blood pressure, body temperature, and physical activity. Medication management (F4). Control and follow-up of patient medication. Patient medical history (F5). Electronic health records (EHRs) including clinical data, medical history, diagnoses, medications, treatment plans, allergy test records, and laboratory and test results. AF detection (F6). Early detection of AF using heart rate monitoring and ECG results. To summarize our findings on the main functionalities of mHealth apps for CVD self-management, 57.9% of these apps issue medical recommendations to patients [27,28,29,30,31,32,33,34,35,36,37,39,40,45,52,53,54,58,60,61,62,63], whereas 47.3% can generate reminding notifications or alerts for medical appointments [27,29,34,35,36,37,40,45,51,52,54,55,57,58,59,60,62,64]. Additionally, 34.2% of these apps monitor patient parameters, such as physical activity, step count, weight control, blood pressure, heart rate, pulse wave, and body temperature [27,28,29,38,44,48,51,56,57,58,60,64], while 21% allow for AF detection [41,42,43,44,46,47,49,50]. Finally, 21% allow for medication management [27,29,35,37,45,54,59,63,64], and 10.5% allow patients to access their electronic health records [28,45,60,64]. Most of the mHealth applications studied in this work have been demonstrated to be useful in the self-management of CVDs. There is evidence that these applications have changed the behavior of CVDS patients. This can be attributed to the self-alignment of patients to healthier lifestyles and to the constant monitoring of their vital signs. In addition, in the event of any change in patients’ health status, these applications allow relatives and doctors to be notified to provide immediate care and avoid any health complications. As part of the findings of this research, we identified six main features of the analyzed applications: (1) simplicity of user interface, (2) professional medical assistance, (3) connection with other services, (4) management of medical record, (5) reliable information, and (6) real-time biometric data tracking. In addition, we identified characteristics that are currently not considered in the development of applications to prevent and detect cardiovascular diseases: management of psychological health and family participation. Additionally, we suggest incorporating the following features: virtual rewards/gaming features, social media integration, and data privacy, since they are characteristics commonly sought by users. The results of the usability tests performed for the mHealth applications have shown that the age factor influences the importance that users give to the applications’ characteristics. Therefore, for children and adolescents, we recommend applications with simple user interfaces, which include social media integration and are oriented towards virtual rewards/gaming. We recommend, however, fully customizable applications with features such as psychological health management and family integration for adult patients.

4.4. RQ4. What Are the Major Remarks for Future Work and Challenges to Be Overcome by mHealth Apps for CVD Self-Management?

Since CVD self-management implies dealing with and managing a significant number of data, a lack of comprehensive information may hinder the correct functioning of mHealth apps for CVD self-management. To overcome this problem, many studies recommend implementing scalable app designs and ensuring the interoperability of these apps with other systems. In this sense, we found that only 4 of the 38 applications reviewed allow patients to access their electronic health records, yet this information is crucial both for patients and for CVD self-management. Additionally, over 60% of the reviewed apps request access to patient personal information without a clear indication of how such information would be stored or used. In this sense, since privacy concerns might affect app usage, application developers should integrate privacy protection measures into their future designs. Other challenges to overcome include improving user satisfaction with respect to app functionalities and supporting patients in their learning of how to use the applications correctly. It is also important that future mHealth apps for CVD self-management address patient psychological health in their design [4]. We also found that none of the reviewed applications possess all the six functionalities for CVD self-management listed in Section 4.3. Hence, we conclude that the apps lack sufficient functions to support patients in effectively self-managing their CVD. Finally, functionalities for patient family involvement have not been sufficiently implemented in these apps.

4.5. RQ5. Which Approaches to Data Extraction, Analysis, and Management Are Commonly Implemented in mHealth Apps for CVD Self-Management?

The approaches to data extraction, analysis, and management used by mHealth apps for CVD self-management include machine learning techniques (supervised and unsupervised approaches), machine learning tasks (classification, clustering, regression), big data (structured and unstructured data), and IoT devices/sensors (see Table 5).
Table 5

Main approaches to data extraction and analysis in mHealth apps for CVD self-management.

CVDStudyMachine Learning Techniques and TasksBig Data TypesIoT Devices/Sensors
Heart failureZisis et al. [27]
Bohanec et al. [28]
Heiney et al. [29]
Koirala et al. [30]
Gonzalez-Sanchez et al. [31]
Barret et al. [32]
Silva et al. [33]
Foster [34]
Sakakibara et al. [35]
De la Torre-Diez et al. [36]
K. Rahimi et al. [37]
Bartlett et al. [38]
ArrhythmiaTurchioe et al. [39]
Pierleoni et al. [40]
Reverberi et al. [41]
Fukuma et al. [42]
Bumgarner et al. [43]
Krivoshei et al. [44]
Guo et al. [45]
Evans et al. [46]
Halcox et al. [47]
Lowres et al. [48]
Hickey et al. [49]
McManus et al. [50]
Kakria et al. [51]
Coronary heart diseaseBrouwers et al. [52]
Zhang et al. [53]
Athilingam [54]
Skobel et al. [56]
AM et al. [57]
Dale et al. [58]
SeveralJiang et al. [59]
Baek et al. [60]
Supervía & López-Jimenez [61]
Tinsel et al. [62]
Big data make it possible to take advantage of the large amount of information that results from patients accessing health services. These data include, for instance, personal information, electronic medical records, social media data, telehealth data, clinical trials, and even biometric data from wearables [65,66,67]. In this context, we also found that mHealth apps may equally rely on data mining and sentiment analysis techniques. As for association rules and neural networks, they allow mHealth apps to create solutions for better decision making based on real data, thus improving CVD diagnosis, proposing customized treatment plans, reducing medical errors, increasing the effectiveness of CVD prevention measures, and promoting better CVD self-management. In regard to the IoT devices/sensors, this approach allows mHealth apps to retrieve real-time data on patient biometric variables, such as body temperature, heart rate, and blood pressure, through wearables, which in turn allow physicians to monitor patients remotely [27,28,68,69,70]. Additionally, wearables provide apps with real-time data that facilitate risk factor tracking and prevent CVD events [71]. In this regard, even though IoT platforms can integrate data from medical devices, wearables, and apps, defining data privacy parameters seems to be a considerable challenge to overcome; nevertheless, wearables have been shown to enable effective CVD detection outside of clinics [72]. Finally, mHealth apps for CVD self-management may also resort to machine learning techniques to mainly create predictive models that support—for example—medical diagnosis and treatment plans and predict the evolution of CVDs and their potential complications [27,28,73,74,75,76,77].

4.6. RQ6. Which Wearables Are Commonly Used to Detect, Monitor, and/or Identify CVDs?

According to our findings, 85% of the reviewed mHealth apps for CVD self-management rely on smartphones, whereas the remaining 15% use some type of wearable. We identified the five wearable devices most commonly connected to mHealth apps for CVD self-management: chest strap (W1), heart rate monitors (W2), T-shirt-type wearable ECG monitor (W3), the portable ECG monitor (W4), and the smartwatch/smartbands (W5). Table 6 below summarizes such findings. On the other hand, less common devices include pulse oximeters (Sp02 sensors), MiFi devices, and the Hitoe Transmitter 01 device.
Table 6

Main Wearables for CVD Monitoring.

CVDStudyW1W2W3W4W5
Heart failureBohanec et al. [28]
Bartlett et al. [38]
ArrhythmiaReverberi et al. [41]
Fukuma et al. [42]
Bumgarner et al. [43]
Evans et al. [46]
Halcox et al. [47]
Lowres et al. [48]
Hickey et al. [49]
Kakria et al. [51]
Coronary heart diseaseBrouwers et al. [52]
Athilingam [54]
Skobel et al. [56]
We found that it is essential to consider the use of wearables and other types of devices for monitoring biomedical variables automatically. Wearables such as smartwatches and smartbands can successfully assist in CVD detection and prevention. In addition, in most cases, these devices can be synchronized with cloud platforms such as Google Fit, thus storing all the data generated in the cloud. These platforms also allow synchronized data to be retrieved and integrated into mHealth applications. The Xiaomi Mi Band is one of the most successful families of sport bracelets on the market, whose success could be due to its low price. It works, however, with another mobile application called Mi Fit, which can also be synchronized with Google Fit. We recommend this smartband as a great option for monitoring blood pressure and heart rate with high precision.

4.7. RQ7. Which CVD Stages Are Commonly Managed by mHealth Apps?

Many mHealth apps for CVD self-management can support patients throughout multiple stages of a CVD. As can be observed from Table 7, 63.2% of the mHealth apps can manage CVD treatment, 57.9% cover CVD monitoring, 28.9% focus on CVD prevention, and 18.4% allow for CVD diagnosis.
Table 7

Disease stages managed by mHealth apps for CVD self-management.

CVDStudyPreventionDiagnosisMonitoringTreatment
Heart failureZisis et al. [27]
Bohanec et al. [28]
Heiney et al. [29]
Koirala et al. [30]
Gonzalez-Sanchez et al. [31]
Barret et al. [32]
Silva et al. [33]
Foster [34]
Sakakibara et al. [35]
De la Torre-Diez et al. [36]
K. Rahimi et al. [37]
Bartlett et al. [38]
ArrhythmiaTurchioe et al. [39]
Pierleoni et al. [40]
Reverberi et al. [41]
Fukuma et al. [42]
Bumgarner et al. [43]
Krivoshei et al. [44]
Guo et al. [45]
Evans et al. [46]
Halcox et al. [47]
Lowres et al. [48]
Hickey et al. [49]
McManus et al. [50]
Kakria et al. [51]
Coronary heart diseaseBrouwers et al. [52]
Zhang et al. [53]
Athilingam [54]
Dale et al. [55]
Skobel et al. [56]
AM et al. [57]
Dale et al. [58]
SeveralJiang et al. [59]
Baek et al. [60]
Supervía & López-Jimenez [61]
Tinsel et al. [62]
Martorella et al. [63]
Johnston et al. [64]
Most of the analyzed applications focused on the treatment of CVDs. These apps were tested by patients diagnosed with a heart disease, showing positive results. We suggest that new mHealth apps focus on the early stages of CVD management, specifically on detection, to allow doctors and patients to prevent medical complications.

5. Conclusions

The goal of this scoping review was to describe the current state of mHealth apps for CVD self-management through our analysis of six aspects: (1) CVDs commonly addressed, (2) main functionalities of mHealth apps for CVD self-management, (3) wearables used for CVD detection, monitoring, and identification, (4) disease stages managed by mHealth apps, (5) current approaches to data extraction, analysis, and management, and (6) current challenges to overcome and future work remarks for mHealth apps used in CVD self-management. The scoping review was performed on 38 primary studies, from which we propose the following conclusions: First, arrhythmia is the most common CVD addressed by mHealth apps, with a frequency of 34% (RQ1). Additionally, 63.6% of the mobile applications used by these mHealth apps are compatible with the Android operating system, whereas 13.6% support iOS, and 22.8% support both (RQ2). Additionally, the majority of the reviewed mHealth apps can provide patients medical recommendations, issue medical appointment reminders, and generate notifications for CVD monitoring (RQ3). The two major challenges these applications must overcome are patient resistance to using the technology and the lack of interoperability between mHealth apps and other systems (RQ4). In regard to the approaches for data extraction, analysis, and management, we found that the majority of the mHealth apps for CVD management rely on big data (structured and unstructured data), IoT devices/sensors and machine learning techniques (supervised and unsupervised approaches), and implementing classification, clustering, and regression algorithms (RQ5). Finally, smartphones—specifically Android smartphones—are commonly connected to mHealth apps for CVD self-management, even though wearables are becoming increasingly used (RQ6). Finally, the great majority of mHealth apps for CVD self-management focus on CVD treatment rather than on any other disease phase (RQ7). As regards our suggestions for future work, we first recommend conducting a systematic review of diseases that are correlated with CVD, such as diabetes and hypertension. Likewise, new research efforts should concentrate on exploring the implications of the increasing use of wearables for managing CVDs such as arrhythmia, heart failure, coronary heart disease, and cardiopathies.
  61 in total

1.  Effectiveness, acceptability and usefulness of mobile applications for cardiovascular disease self-management: Systematic review with meta-synthesis of quantitative and qualitative data.

Authors:  Genevieve M Coorey; Lis Neubeck; John Mulley; Julie Redfern
Journal:  Eur J Prev Cardiol       Date:  2018-01-09       Impact factor: 7.804

2.  Wearable technology in healthcare.

Authors: 
Journal:  Nat Biotechnol       Date:  2019-04       Impact factor: 54.908

Review 3.  Wearables and the medical revolution.

Authors:  Jessilyn Dunn; Ryan Runge; Michael Snyder
Journal:  Per Med       Date:  2018-09-27       Impact factor: 2.512

Review 4.  The mobile revolution--using smartphone apps to prevent cardiovascular disease.

Authors:  Lis Neubeck; Nicole Lowres; Emelia J Benjamin; S Ben Freedman; Genevieve Coorey; Julie Redfern
Journal:  Nat Rev Cardiol       Date:  2015-03-24       Impact factor: 32.419

5.  Using Mobile-Health to Connect Women with Cardiovascular Disease and Improve Self-Management.

Authors:  Brodie M Sakakibara; Emily Ross; Gavin Arthur; Lynda Brown-Ganzert; Samantha Petrin; Tara Sedlak; Scott A Lear
Journal:  Telemed J E Health       Date:  2016-09-13       Impact factor: 3.536

6.  Scoping studies: advancing the methodology.

Authors:  Danielle Levac; Heather Colquhoun; Kelly K O'Brien
Journal:  Implement Sci       Date:  2010-09-20       Impact factor: 7.327

Review 7.  Effect of Mobile Health Interventions on the Secondary Prevention of Cardiovascular Disease: Systematic Review and Meta-analysis.

Authors:  Sumeet Gandhi; Shu Chen; Louisa Hong; Kelly Sun; Enying Gong; Chaoyun Li; Lijing L Yan; Jon-David Schwalm
Journal:  Can J Cardiol       Date:  2016-09-13       Impact factor: 5.223

8.  The effect of a smartphone-based coronary heart disease prevention (SBCHDP) programme on awareness and knowledge of CHD, stress, and cardiac-related lifestyle behaviours among the working population in Singapore: a pilot randomised controlled trial.

Authors:  Hui Zhang; Ying Jiang; Hoang D Nguyen; Danny Chiang Choon Poo; Wenru Wang
Journal:  Health Qual Life Outcomes       Date:  2017-03-14       Impact factor: 3.186

Review 9.  The Effectiveness of Self-Management Mobile Phone and Tablet Apps in Long-term Condition Management: A Systematic Review.

Authors:  Lisa Whitehead; Philippa Seaton
Journal:  J Med Internet Res       Date:  2016-05-16       Impact factor: 5.428

Review 10.  Artificial intelligence supported patient self-care in chronic heart failure: a paradigm shift from reactive to predictive, preventive and personalised care.

Authors:  Matthew Barrett; Josiane Boyne; Julia Brandts; Hans-Peter Brunner-La Rocca; Lieven De Maesschalck; Kurt De Wit; Lana Dixon; Casper Eurlings; Donna Fitzsimons; Olga Golubnitschaja; Arjan Hageman; Frank Heemskerk; André Hintzen; Thomas M Helms; Loreena Hill; Thom Hoedemakers; Nikolaus Marx; Kenneth McDonald; Marc Mertens; Dirk Müller-Wieland; Alexander Palant; Jens Piesk; Andrew Pomazanskyi; Jan Ramaekers; Peter Ruff; Katharina Schütt; Yash Shekhawat; Chantal F Ski; David R Thompson; Andrew Tsirkin; Kay van der Mierden; Chris Watson; Bettina Zippel-Schultz
Journal:  EPMA J       Date:  2019-11-22       Impact factor: 6.543

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  4 in total

1.  Human Activity Recognition Based on Embedded Sensor Data Fusion for the Internet of Healthcare Things.

Authors:  Mohamed E Issa; Ahmed M Helmi; Mohammed A A Al-Qaness; Abdelghani Dahou; Mohamed Abd Elaziz; Robertas Damaševičius
Journal:  Healthcare (Basel)       Date:  2022-06-10

2.  Patient and physician perspectives on the use and outcome measures of mHealth apps: Exploratory survey and focus group study.

Authors:  Rita Jezrawi; Sarmini Balakumar; Rafia Masud; Itzhak Gabizon; Vinai Bhagirath; Jobin Varughese; Michael Brown; Dan Trottier; J D Schwalm; Michael McGillion; Elizabeth Alvarez; Cynthia Lokker
Journal:  Digit Health       Date:  2022-05-24

Review 3.  Wearable Devices for Physical Monitoring of Heart: A Review.

Authors:  Guillermo Prieto-Avalos; Nancy Aracely Cruz-Ramos; Giner Alor-Hernández; José Luis Sánchez-Cervantes; Lisbeth Rodríguez-Mazahua; Luis Rolando Guarneros-Nolasco
Journal:  Biosensors (Basel)       Date:  2022-05-02

Review 4.  ECG Standards and Formats for Interoperability between mHealth and Healthcare Information Systems: A Scoping Review.

Authors:  Daniel Cuevas-González; Juan Pablo García-Vázquez; Miguel Bravo-Zanoguera; Roberto López-Avitia; Marco A Reyna; Nestor Alexander Zermeño-Campos; María Luisa González-Ramírez
Journal:  Int J Environ Res Public Health       Date:  2022-09-21       Impact factor: 4.614

  4 in total

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