Abstract
Background
Atrial fibrillation (AF) is the most common arrhythmia, and its prevalence is increasing. Early diagnosis is important to reduce the risk of stroke. Mobile health (mHealth) devices, such as single-lead electrocardiogram (ECG) devices, have been introduced to the worldwide consumer market over the past decade. Recent studies have assessed the usability of these devices for detection of AF, but it remains unclear if the use of mHealth devices leads to a higher AF detection rate.
Objective
The goal of the research was to conduct a systematic review of the diagnostic detection rate of AF by mHealth devices compared with traditional outpatient follow-up. Study participants were aged 16 years or older and had an increased risk for an arrhythmia and an indication for ECG follow-up—for instance, after catheter ablation or presentation to the emergency department with palpitations or (near) syncope. The intervention was the use of an mHealth device, defined as a novel device for the diagnosis of rhythm disturbances, either a handheld electronic device or a patch-like device worn on the patient’s chest. Control was standard (traditional) outpatient care, defined as follow-up via general practitioner or regular outpatient clinic visits with a standard 12-lead ECG or Holter monitoring. The main outcome measures were the odds ratio (OR) of AF detection rates.
Methods
Two reviewers screened the search results, extracted data, and performed a risk of bias assessment. A heterogeneity analysis was performed, forest plot made to summarize the results of the individual studies, and albatross plot made to allow the P values to be interpreted in the context of the study sample size.
Results
A total of 3384 articles were identified after a database search, and 14 studies with a 4617 study participants were selected. All studies but one showed a higher AF detection rate in the mHealth group compared with the control group (OR 1.00-35.71), with all RCTs showing statistically significant increases of AF detection (OR 1.54-19.16). Statistical heterogeneity between studies was considerable, with a Q of 34.1 and an I2 of 61.9, and therefore it was decided to not pool the results into a meta-analysis.
Conclusions
Although the results of 13 of 14 studies support the effectiveness of mHealth interventions compared with standard care, study results could not be pooled due to considerable clinical and statistical heterogeneity. However, smartphone-connectable ECG devices provide patients with the ability to document a rhythm disturbance more easily than with standard care, which may increase empowerment and engagement with regard to their illness. Clinicians must beware of overdiagnosis of AF, as it is not yet clear when an mHealth-detected episode of AF must be deemed significant.
Keywords: eHealth, mHealth, telemedicine, cardiology, atrial fibrillation, systematic review
Introduction
Atrial fibrillation (AF) is the most commonly diagnosed arrhythmia [1]. It may be paroxysmal (present for 30 seconds to 7 days), persistent (present for more than 7 days), or permanent [2]. Risk factors for AF are diverse and include advanced age, male gender, diabetes mellitus, hypertension, obesity, valvular disease, obstructive sleep apnea, heart failure, and previous myocardial infarction [3]. Among other symptoms, AF can cause palpitations, dyspnea, and tiredness. Patients can, however, be asymptomatic [4].
The worldwide prevalence of AF is increasing. This increase has been attributed to an aging population and increased prevalence of cardiovascular risk factors [5]. A European study has shown that the number of patients with diagnosed AF is expected to increase from a prevalence of 2.3% in 2010 to 3.5% to 4.3% in 2050 [6]. Due to an increased risk of stroke, AF is associated with increased risk of mortality [7]. Compared with patients with sinus rhythm, those with AF are found to have a 2.4-fold risk of stroke, and the risk of ischemic heart disease and development of chronic kidney disease are both increased 1.6-fold [8].
Early diagnosis of AF and prophylactic treatment for ischemic stroke with oral anticoagulants is therefore important, whether the AF is paroxysmal, persistent, or permanent and symptomatic or silent [2]. Moreover, it has been demonstrated that excessive supraventricular ectopic activity, defined as the presence of either ≥30 premature atrial contractions (PACs) per hour daily or any runs of ≥20 PACs, increases the risk of stroke in patients with a CHA2DS2-VASc (congestive heart failure, hypertension, age ≥75 years, diabetes mellitus, stroke or transient ischemic attack [TIA], vascular disease, age 65 to 74 years, sex category) score of ≥2 by 2.4% [9].
Traditionally, patients are diagnosed with AF using a 12-lead electrocardiogram (ECG). In case of suspected paroxysmal AF, it is possible to perform prolonged monitoring via Holter registration. However, as paroxysmal AF is often silent and patients can have vast periods of sinus rhythm, diagnosing paroxysmal AF is a challenge [10].
Over the last decade, consumer grade health monitoring devices have been developed and marketed as beneficial for personal health monitoring [11]. Among those devices are several different smartphone connectable ECG devices. The majority are lead-I ECG devices, handheld instruments that register lead I of the ECG, measuring the electric current generated by the myocardium by using the fingers of the right and the left hand [12]. These devices are typically used for spot-checks. Another group of devices is meant for continuous monitoring and involve patches that stick to the chest and allow monitoring of the heart rate and rhythm continuously for up to 2 weeks [13]. Both groups of devices can be seen as mobile health (mHealth) devices and used for AF screening [12].
Studies have been done to assess the accuracy of mHealth devices compared with 12-lead ECGs. A recent systematic review suggests several mHealth devices are suitable in the use of detecting AF, based on the sensitivity and specificity of these devices [14]. However, it is still unclear if and to what extent the use of mHealth devices leads to higher detection rates of AF. Therefore, the objective of this systematic review is to evaluate studies comparing the detection rate of AF by mHealth devices with more traditional outpatient follow-up.
Methods
Literature Review and Definitions
A systematic literature review was conducted to evaluate the efficacy of mHealth devices using standard (traditional) care as the reference standard in people with an indication for follow-up for a suspected arrythmia (eg, after catheter ablation or electrical cardioversion) or in cases of an acute emergency department presentation with (near) syncope or palpitations where no arrhythmia could be found at the time of presentation. The efficacy of mHealth was defined as the detection rate of AF by a smartphone-connectable ECG device, either a handheld electronic device or patch-like device attached to the study subject’s chest or by requiring subject to send an ECG transtelephonically. Standard care was defined as follow-up via a general practitioner or regular outpatient clinic visit with a standard 12-lead ECG or Holter monitoring. This systematic review was conducted and reported by following the Cochrane Handbook for Systematic Reviews of Interventions [15].
Eligibility Criteria
The eligibility criteria for studies to be included in this systematic review were as follows:
Published studies comparing mHealth devices with standard care in patients with an indication for follow-up via ECG or Holter monitoring
Studies with AF detection as a primary or secondary outcome measure
Studies conducted in people aged 16 years and older reporting demographic data such as patient characteristics, study setting, sample size, and data points
Studies performed in a clinical or outpatient setting
Studies in patients without an internal cardioverter defibrillator, pacemaker, or ventricular assist device
Studies had to be published in English or Dutch to be selected. If a study has been indexed in multiple databases, only the PubMed version was included.
Literature Search Strategy
The search strategy is presented in Multimedia Appendix 1. No study design filters were applied, and all electronic databases were searched for articles from Jan 1, 2005, until February 19, 2020. The following databases were searched: Medline, Embase, PubMed, Web of Science, Emcare, Academic Search Premier, and the Cochrane Library. The search results were managed using EndNote X9 software (Clarivate Analytics). Relevant studies and reviews were manually searched to identify other possible relevant studies.
Article Selection and Data Synthesis
A 2-stage process was used for inclusion in the review. Two reviewers (TB, RT) first independently screened all titles and abstracts of the identified studies to find potentially relevant studies. The same reviewers then assessed the full-text articles independently for the eligibility criteria. Any disagreements were resolved by consensus.
Risk of Bias Assessment
Risk of bias was assessed with the RoB 2 (Risk of Bias 2) tool for randomized controlled trials (RCTs) and the ROBINS-I (Risk of Bias in Nonrandomized Studies of Interventions) tool for nonrandomized studies [16,17]. This is in accordance with the Cochrane Handbook’s recommendations [15]. The risk of bias had 3 levels: low risk of bias, some concerns, and high risk of bias.
Summary Measures
The primary outcome measure of this systematic review was the odds ratio (OR) of AF detection, comparing mHealth devices to standard care. The PATCH-ED (Patch Monitor in Patients With Unexplained Syncope After Initial Evaluation in the Emergency Department) and IPED (Investigation of Palpitations in the Emergency Department) study groups reported no events in the control groups [18,19]. Therefore, the Haldane correction was used [20]. A heterogeneity analysis between studies was performed with a chi-square test [15]. A forest plot was made to summarize the results of individual studies. Finally, an albatross plot was made to allow the P values to be interpreted in the context of study sample size. The contour lines of albatross plots are formed by hypothetical effect sizes [21]. In this case, this concerns odds ratios due to the outcome being dichotomous. The forest and albatross plots were made in Matlab (The Mathworks Inc).
Results
Study Selection
As of October 19, 2020, a total of 3384 articles were obtained from the database searches. Two investigators (TB and RT) excluded 3350 studies based on the title and abstract. A total of 34 abstracts meeting the eligibility criteria were identified. After reviewing the full text, the reviewers chose 14 studies with a total of 4617 study subjects. The selection process is shown in Figure 1. The kappa statistic for interrater reliability was .81, showing substantial agreement between the 2 investigators [22].
Figure 1.

Study search and selection process.
Study Characteristics
The 14 selected studies consist of 8 cohort studies, 4 RCTs, and 2 case-control studies [18,19,23-34]. Table 1 shows participant and study characteristics. Study populations were heterogenous: some studies included only patients without any history of AF, others included only patients with earlier documented AF. Participant genders varied between the study populations: 42% to 87% were male. Mean age varied from 44 to 73 years.
Table 1.
Study characteristics.
| Author, year, country | Study type | Patient charactertistics | Sample size; drop out; mean age; male | Intervention | Control | Follow-up | Primary outcome |
| Liu et al (2010), China [23] | Prospective cross-sectional | Catheter ablation patients | 92; 0 (0%); 54 ya; 78% male | Transtelephonic ECGb once daily | 24 h Holter+ at complaints | 90 dc | AFd detection |
| Rosenberg et al (2013), US [24] | Prospective cross-sectional | Patients who are managed for AF, no definition was given | 74; 0 (0%); 65 y; 55% male | ZioPatch | 24 h Holter | 14 d | AF detection |
| Barrett et al (2013), US [25] | Prospective cross-sectional | Outpatients with indication for Holter monitoring | 146; 4 (2.7%); n/ae; n/a | ZioPatch | 24 h Holter | 14 d | Arrhythmia detection |
| Hendrikx et al (2014), Sweden [26] | Prospective cross-sectional | Patients with unexplained palpitations or presyncope | 95; 0 (0%); 54 y; 44% male | Zenicor twice daily + 24 hf Holter | 24 h Holter | 28 d | Arrhythmia detection |
| Kimura et al (2016), Japan [27] | Prospective cross-sectional | Catheter ablation patients | 28; 2 (6.7%); 59 y; 87% male | CardioPhone twice daily | Monthly 24 h Holter | 6 mog | AF detection |
| Busch et al (2017), Germany [28] | Retrospective cross-sectional | Volunteers to join in an mHealthh study | 1678; n/a; 51 y; 48% male | SensorMobile twice daily | Single 12-lead ECG | 28 d | AF detection |
| Halcox et al (2017), UK [29] | Single center, open label RCTi | ≥65 y patients without AF at a GPj practice | 1001; 5 (0.5%); 73 y; 47% male | AliveCor Kardia twice a week | Follow-up at the GP | 1 y | Time to diagnosis of AF |
| Hickey et al (2017), US [30] | Prospective, matched cohort study | Patients with a history of AF | 46; 0 (0%); 55 y; 65% male | AliveCor Kardia once daily | Standard care (no added care) | 6 mo | Atrial arrhythmia detection |
| Narasimha et al (2018), US [31] | Prospective cross-sectional | Patients with unexplained palpitations who underwent previous Holter monitoring | 33; 5 (13.2%); 48 y; 42% male | AliveCor Kardia at complaints | External loop recorder | 30 d | Arrhythmia detection |
| Reed et al (2018), Scotland [18] | Prospective, unmatched case-control study | ≥16 y ER patients with unexplained syncope | 689; 0 (0%); 67 y; 47% male | ZioPatch | Standard care (no added care) | 14 d | Symptomatic rhythm detection |
| Reed et al (2019), Scotland [19] | Multicenter, open label RCT | ≥16 y ER patients with unexplained palpitations or (pre)syncope | 240; 2 (0.8%); 40 y; 44% male | Alivecor Kardia at complaints | Standard care (no added care) | 90 d | Symptomatic rhythm detection |
| Goldenthal et al (2019), US [32] | Single center, open label RCT | Patients with documented AF, undergoing ablation or ECVk | 238; 5 (2.1%); 61 y; 76% male | AliveCor Kardia daily and at complaints | Standard care (no added care) | 6 mo | AF detection |
| Karunadas et al (2019), India [33] | Prospective cross-sectional | Admitted patients to cardiology ward who required monitoring | 141; 0 (0%); 44 y; 53% male | WebCardio (patch) | 24 h Holter | 1 d | Arrhythmia detection |
| Kaura et al (2019), UK [34] | Multicenter, open label RCT | Non-AF patients with nonlacunar stroke or TIAl | 116; 26 (22.4%); 70 y; 47% male | ZioPatch | 24 h Holter | 14 d | AF detection |
ay: year.
bECG: electrocardiogram.
cd: day.
dAF: atrial fibrillation.
eNot applicable.
fh: hour.
gmo: month.
hmHealth: mobile health.
iRCT: randomized controlled trial.
jGP: general practice.
kECV: electrical cardioversion.
lTIA: transient ischemic attack.
A total of 9 studies used handheld devices such as the Kardia (AliveCor Inc) or Zenicor-ECG (Zenicor Medical Systems AB) as an intervention, while 5 studies used a patch such as the Zio (iRhythm Technologies Inc), which was placed on the participant’s chest [13,35,36]. The duration of the intervention was 1 to 14 days for studies with patches and 28 days to 1 year for studies with handheld devices. All studies published data about AF detection, although AF detection was the primary outcome in only 6 studies. A total of 4 studies used detection of any arrhythmia (AF, atrial flutter, supraventricular or ventricular tachycardia, sinus pauses of more than 3 seconds, and second- and third-degree atrioventricular blocks), and 2 other studies reported symptomatic arrhythmias as the primary outcome; 1 study used atrial arrhythmia detection and the final study reported the time to AF diagnosis as the primary outcome. One study reported a composite endpoint of AF, ventricular tachycardia, and sinus pauses of more than 3 seconds instead [25].
A total of 6 studies used 24-hour Holter monitoring as standard care, with 1 study adding another 24-hour Holter monitoring when study patients experienced an episode of palpitations and another study adding another 24-hour Holter monitoring every month, 6 times in total. However, 5 studies only saw patients back in the outpatient clinic or general practitioner. One study used an external loop recorder as standard care, activated at complaints during the entire follow-up duration, and the final study documented one extra standard ECG as standard care. Holter timing was at the start of the study in 4 of 6 studies that used Holter monitoring. In the other 2 studies, the timing of the Holter monitoring was unclear.
Study Results
Table 2 shows the number of events throughout the studies. The individual study results are shown in a forest plot (Figure 2) but not pooled due to the considerable clinical and statistical heterogeneity. To show the P values in the context of the study sample size, an albatross plot is presented (Figure 3).
Table 2.
Study outcomes.
| Author | Sample size, n | Intervention group, n | Control group, n | Events (intervention), n (%) | Events (control), n (%) | Odds ratio (95% CI) | |
| Nonpatch studies | |||||||
|
|
Liu et al, 2010 [23] | 92 | —a | — | 39 (42.4) | 27 (29.2) | 1.77 (0.96-3.26) |
|
|
Hendrikx et al, 2014 [26] | 95 | — | — | 9 (9.5) | 2 (2.1) | 4.87 (1.02-23.16) |
|
|
Kimura et al, 2016 [27] | 28 | — | — | 15 (53.6) | 6 (21.4) | 4.23 (1.31-13.62) |
|
|
Busch et al, 2017 [28] | 1678 | — | — | 42 (2.6) | 21 (1.3) | 2.03 (1.19-3.44) |
|
|
Halcox et al, 2017 [29] | 1001 | 500 | 501 | 19 (3.8) | 5 (1.0) | 3.92 (1.45-10.58) |
|
|
Hickey et al, 2017 [30] | 46 | 23 | 23 | 14 (60.9) | 7 (30.4) | 3.56 (1.05-12.05) |
|
|
Narasimha et al, 2018 [31] | 33 | — | — | 6 (18.2) | 3 (9.1) | 2.22 (0.51-9.76) |
|
|
Reed et al, 2019 [19] | 240 | 124 | 116 | 9 (7.3) | 0 (0) | 19.16b (1.10-333.12) |
|
|
Goldenthal et al, 2019 [32] | 238 | 115 | 123 | 58 (50.4) | 49 (41.5) | 1.54 (0.92-2.57) |
| Patch studies | |||||||
|
|
Rosenberg et al, 2013 [24] | 74 | — | — | 38 (51.3) | 21 (28.4) | 2.66 (1.35-5.26) |
|
|
Barrett et al, 2013 [25] | 146 | — | — | 41 (28.1) | 27 (18.5) | 1.72 (0.99-2.99) |
|
|
Reed et al, 2018 [18] | 689 | 86 | 603 | 2 (2.3) | 0 (0) | 35.71b (1.70-750.18) |
|
|
Karunadas et al, 2019 [33] | 141 | — | — | 3 (2.1) | 3 (2.1) | 1.00 (0.20-5.04) |
|
|
Kaura et al, 2019 [34] | 116 | 56 | 60 | 7 (16.3) | 1 (2.1) | 8.43 (1.00-70.87) |
aNot applicable.
bHaldane correction applied.
Figure 2.

Forest plot of the study results. No pooling due to heterogeneity.
Figure 3.

Albatross plot, with plotted odds ratio lines.
All studies showed a higher AF detection rate in the mHealth group compared with the control group except the study by Karunadas, which showed an equal number of events (3; 2.1%) in both groups [33]. This study used an mHealth patch for 1 day and compared it to Holter monitoring performed on the same day. The 24-hour to 72-hour patch data have been disregarded for the analysis.
All RCTs showed a statistically significant improvement of AF detection with mHealth devices. ORs were 3.92 (95% CI 1.45-10.58) for the REHEARSE-AF (Assessment of Remote Heart Rhythm Sampling Using the AliveCor Heart Monitor to Screen for Atrial Fibrillation) trial, 19.16 (95% CI 1.10-333.12) for IPED, 1.54 (95% CI 0.92-2.57) in the iHeart (Information Technology Approach to Implementing Depression Treatment in Cardiac Patients) trial, and 8.43 (95% CI 1.00-70.87) in the EPACS (Early Prolonged Ambulatory Cardiac Monitoring in Stroke) trial.
Statistical Heterogeneity
The 14 selected studies showed a variety of populations, interventions, and outcomes and are therefore considerably clinically heterogenic. A chi-square test was conducted to assess statistical heterogeneity, which showed a Q of 34.1 and an I2 of 61.9, and therefore the studies show considerable statistical heterogeneity.
Quality Appraisal
Figure 4 presents the generic risk of bias, assessed with the RoB 2 and ROBINS-I tools. In the selected RCTs, blinding of participants was not possible due to the nature of the intervention. Of all selected RCTs, one had a high risk of bias on the outcome data. Kaura et al [34] reported a dropout of 22.4% and did not address this data in the report. This was also true for the RCT by Goldenthal et al [32], but the dropout in this trial was just 2.1%. As for allocation concealment in the trial carried out by Halcox et al [29], no clarity was provided in the method section of the paper.
Figure 4.

Risk of bias assessment. Randomized trials were assessed with the ROB 2 (Risk of Bias 2) tool, while ROBINS-I was used for nonrandomized studies. ROBINS-I: Risk of Bias in Nonrandomized Studies of Interventions.
Of the nonrandomized studies, the studies by Liu et al [23], Rosenberg et al [24], Hendrikx et al [26], Kimura et al [27], and Hickey et al [30] were scored as strong. Several studies showed an intermediate risk of bias. Barrett et al [18] reported no baseline characteristics, and Holter timing was unclear. Narasimha et al [25] reported a dropout of 13.2% but performed separate per-protocol and intention-to-treat analyses. Reed et al [31] used unmatched cohorts with several parameters not being known or stated. Also, there was a time interval of 7 to 8 years between gathering of the data in the intervention and control cohorts.
Two studies showed a high risk of bias. Busch et al [28] used data from a registry, in which the study subjects were volunteers willing to participate in an mHealth study. Karunadas et al [33] reported no baseline characteristics, and only WebCardio data from the first 24 hours were used. The 24-hour to 72-hour data, although gathered, were not reported.
Discussion
Summary of Evidence
The main finding of this systematic review of 14 studies is the increased AF detection rate when using mHealth devices compared with standard follow-up. Moreover, the 4 RCTs included all showed a statistically significant difference. However, there was a considerable clinical and statistical interstudy heterogeneity. The results of all studies but one show that mHealth devices lead to an increased detection of AF.
An argument can be made that conducting more (spot) measurements will automatically lead to more diagnoses of any illness. However, as AF is often only present for a short period of time and untraceable once sinus rhythm is restored, the clinical implications of the opportunity for conducting more spot measurements could be of importance with regard to stroke risk, for example. Following standard care does not allow patients to record their ECG without a delay, as they must visit their care provider or call an ambulance. Meanwhile, a paroxysm of AF may already have disappeared. Smartphone-connectable ECG devices could therefore provide patients with the opportunity to act immediately by documenting their rhythm disturbance. This is not only true for AF but also for other paroxysmal arrhythmias.
Although both handheld devices and patches lead to an increased AF detection rate, there may be a different use case to both groups of devices. Patches could be seen as prolonged Holter monitoring. The Zio patch can remain on the body for up to 14 days [13]. Handheld devices are used to do spot measurements for a longer period of time and can therefore only be used for screening or in patients with complaints that could fit with a rhythm disturbance. Therefore, the benefit of patches over handheld devices is that asymptomatic rhythm disturbances may be diagnosed with the use of a patch, although patient-triggered recordings with handheld ECG devices may be a more viable solution when a longer period of follow-up is indicated.
Potential of mHealth for Population-Based Screening
Smartphone-connectable ECG devices cannot only be used in patients with a suspected paroxysmal rhythm disturbance but also for screening purposes. As stroke has been found to be the first symptom of AF in 37% of patients aged younger than 75 years with no history of cardiovascular diseases, secondary prevention in the form of screening risk groups for AF de novo may be of clinical relevance [37]. When it comes to screening for AF, there are several possibilities. Individuals can be screened regardless of medical history (systematic screening), on presenting to a physician for issues unrelated to AF (systematic opportunistic screening), or based on the presence of AF-associated risk factors (targeted screening). A recent meta-analysis has shown opportunistic screening, with a number needed to screen of 170, to be a likely cost-effective use of resources [38]. However, the number needed to screen varies between age groups and is found to be lowest, 83, in patients aged older than 65 years, against 926 for ages 60 to 64 years and 1089 for patients aged younger than 60 years, and therefore screening might be most opportune in people aged older than 65 years [39]. A very recent study using a Monte Carlo simulation to assess the cost-effectiveness of screening for AF with mHealth devices using 30,000 patients per CHA2DS2-VASc score (1-9) has found this type of screening to cause increased health care costs but a reduction in the incidence of stroke [40]. Several mHealth studies have used a systematic opportunistic screening approach such as screening for AF with handheld devices in individuals who visit pharmacies or those who visit their general practitioner for a flu vaccination [41-45]. These studies have all concluded handheld smartphone-connectable ECG devices to be viable screening tools.
Clinical Implications
In this era of mHealth, patients are increasingly able to take (spot) measurements by using smartphone-connectable ECG devices, as those devices are commercially available. However, no consensus exists within the scientific community whether each episode of AF should be seen as clinically significant. AF is traditionally defined as an irregular arrhythmia without visible P waves lasting 30 seconds or more or documented on a standard 10-second 12-lead ECG [46]. The Kardia and other devices that register a lead-I ECG document a period of 30 seconds [35]. However, the clinical significance of a short paroxysm of AF is debated. Looking at AF ablation patients, it is known that the quality of life response is proportional to the burden rather than to a short-lived event and the AF burden is also a better predictor for stroke risk compared solely with a history of AF [47,48]. A recent study in patients with pacemakers tested various AF episode duration thresholds and found that patients with initial AF events up to 3.8 hours only had a median AF burden of 0.2% compared with 9.5% for those with initial AF episodes of more than 3.8 hours. This was a statistically significant difference with a P value of <.0001 [49].
Limitations
Due to considerable clinical and statistic heterogeneity, with an I2 of 61.9, the results of the included studies could not be pooled into a meta-analysis. The study populations varied from healthy adults to patients with an extensive history of AF, interventions ranged from short-term follow-up with a patch to long-term follow-up with a handheld device, and primary outcomes were also diverse. These differences led to a wide spread in the number of detected cases of AF, from 1% to 3% in the study by Busch et al [28] to 30% to 61% in the study by Hickey et al [30]. Instead of performing a meta-analysis, a forest plot without a diamond and an albatross plot were made. Furthermore, participants in RCTs could not be blinded due to the nature of the intervention. This is a small problem, however, since a diagnosis of AF is not a subjective end point.
Conclusion
This systematic review reflects on 14 studies with different populations, interventions, and (primary) outcomes. A total of 13 studies found an increased number of AF diagnoses with the use of an mHealth intervention compared with standard care, with the remaining study by Karunadas et al [33] showing equal effectiveness. All 4 RCTs showed a statistically significant result in favor of the mHealth intervention. Due to considerable clinical and statistical heterogeneity, individual study results could not be pooled into a meta-analysis, and as a result, it cannot be concluded that those mHealth interventions are effective in certain populations or every population. However, smartphone-connectable ECG devices provide patients with the ability to document a rhythm disturbance more easily than with standard care, and with the introduction of more mHealth devices and specifically devices that can diagnose AF like the Apple Watch (Apple Inc) and Move ECG (Withings) [50,51], this is unlikely to change. With increased patient expectations and the increased empowerment and engagement with regard to their illness that mHealth devices may provide [52], future patients may request mHealth to be a part of their standard follow-up. However, as it is not yet clear when an mHealth-detected episode of AF should be deemed significant [48], clinicians must beware of overdiagnosis of AF and, sequentially, overtreatment with oral anticoagulants.
Abbreviations
- AF
atrial fibrillation
- CHA2DS2-VASc
congestive heart failure, hypertension, age ≥75 years, diabetes mellitus, stroke or transient ischemic attack (TIA), vascular disease, age 65 to 74 years, sex category
- ECG
electrocardiogram
- EPACS
Early Prolonged Ambulatory Cardiac Monitoring in Stroke
- iHeart
An Information Technology Approach to Implementing Depression Treatment in Cardiac Patients
- IPED
Investigation of Palpitations in the Emergency Department
- mHealth
mobile health
- OR
odds ratio
- PAC
premature atrial contraction
- PATCH-ED
Patch Monitor in Patients With Unexplained Syncope After Initial Evaluation in the Emergency Department
- RCT
randomized controlled trial
- REHEARSE-AF
Assessment of Remote Heart Rhythm Sampling Using the AliveCor Heart Monitor to Screen for Atrial Fibrillation
- RoB 2
Risk of Bias 2
- ROBINS-I
Risk Of Bias in Nonrandomized Studies of Interventions
Appendix
Search strategy.
Footnotes
Conflicts of Interest: None declared.
References
- 1.Chugh SS, Havmoeller R, Narayanan K, Singh D, Rienstra M, Benjamin EJ, Gillum RF, Kim Y, McAnulty JH, Zheng Z, Forouzanfar MH, Naghavi M, Mensah GA, Ezzati M, Murray CJL. Worldwide epidemiology of atrial fibrillation: a Global Burden of Disease 2010 study. Circulation. 2014 Feb 25;129(8):837–847. doi: 10.1161/CIRCULATIONAHA.113.005119. http://circ.ahajournals.org/cgi/pmidlookup?view=long&pmid=24345399. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 2.January CT, Wann LS, Alpert JS, Calkins H, Cigarroa JE, Cleveland JC, Conti JB, Ellinor PT, Ezekowitz MD, Field ME, Murray KT, Sacco RL, Stevenson WG, Tchou PJ, Tracy CM, Yancy CW, American College of Cardiology/American Heart Association Task Force on Practice Guidelines 2014 AHA/ACC/HRS guideline for the management of patients with atrial fibrillation: a report of the American College of Cardiology/American Heart Association Task Force on Practice Guidelines and the Heart Rhythm Society. J Am Coll Cardiol. 2014 Dec 02;64(21):e1–e76. doi: 10.1016/j.jacc.2014.03.022. https://linkinghub.elsevier.com/retrieve/pii/S0735-1097(14)01740-9. [DOI] [PubMed] [Google Scholar]
- 3.Rienstra M, McManus DD, Benjamin EJ. Novel risk factors for atrial fibrillation: useful for risk prediction and clinical decision making? Circulation. 2012 May 22;125(20):e941–e946. doi: 10.1161/CIRCULATIONAHA.112.112920. http://europepmc.org/abstract/MED/22615425. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 4.Kirchhof P, Benussi S, Kotecha D, Ahlsson A, Atar D, Casadei B, Castella M, Diener H, Heidbuchel H, Hendriks J, Hindricks G, Manolis AS, Oldgren J, Popescu BA, Schotten U, Vardas P, Agewall S, Camm J, Baron EG, Budts W, Carerj S, Casselman F, Coca A, Deftereos S, Dobrev D, Ferro JM, Filippatos G, Fitzsimons D, Gorenek B, Guenoun M, Hohnloser SH, Kolh P, Lip GYH, Manolis A, McMurray J, Ponikowski P, Rosenhek R, Ruschitzka F, Savelieva I, Sharma S, Suwalski P, Tamargo JL, Taylor CJ, Voors AA, Windecker S, Zamorano JL, Zeppenfeld K. 2016 ESC Guidelines for the management of atrial fibrillation developed in collaboration with EACTS. Eur Heart J. 2016 Oct 07;37(38):2893–2962. doi: 10.1093/eurheartj/ehw210. [DOI] [PubMed] [Google Scholar]
- 5.Pistoia F, Sacco S, Tiseo C, Degan D, Ornello R, Carolei A. The epidemiology of atrial fibrillation and stroke. Cardiol Clin. 2016 May;34(2):255–268. doi: 10.1016/j.ccl.2015.12.002. [DOI] [PubMed] [Google Scholar]
- 6.Stefansdottir H, Aspelund T, Gudnason V, Arnar DO. Trends in the incidence and prevalence of atrial fibrillation in Iceland and future projections. Europace. 2011 Aug;13(8):1110–1117. doi: 10.1093/europace/eur132. [DOI] [PubMed] [Google Scholar]
- 7.Lip GYH, Tse HF, Lane DA. Atrial fibrillation. Lancet. 2012 Feb 18;379(9816):648–661. doi: 10.1016/S0140-6736(11)61514-6. [DOI] [PubMed] [Google Scholar]
- 8.Odutayo A, Wong CX, Hsiao AJ, Hopewell S, Altman DG, Emdin CA. Atrial fibrillation and risks of cardiovascular disease, renal disease, and death: systematic review and meta-analysis. BMJ. 2016 Sep 06;354:i4482. doi: 10.1136/bmj.i4482. doi: 10.1136/bmj.i4482. [DOI] [PubMed] [Google Scholar]
- 9.Larsen BS, Kumarathurai P, Falkenberg J, Nielsen OW, Sajadieh A. Excessive atrial ectopy and short atrial runs increase the risk of stroke beyond incident atrial fibrillation. J Am Coll Cardiol. 2015 Jul 21;66(3):232–241. doi: 10.1016/j.jacc.2015.05.018. https://linkinghub.elsevier.com/retrieve/pii/S0735-1097(15)02374-8. [DOI] [PubMed] [Google Scholar]
- 10.Thakkar S, Bagarhatta R. Detection of paroxysmal atrial fibrillation or flutter in patients with acute ischemic stroke or transient ischemic attack by Holter monitoring. Indian Heart J. 2014;66(2):188–192. doi: 10.1016/j.ihj.2014.02.009. https://linkinghub.elsevier.com/retrieve/pii/S0019-4832(14)00065-0. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 11.Treskes RW, Van Der Velde ET, Atsma DE, Schalij MJ. Redesigning healthcare: the 2.4 billion euro question—connecting smart technology to improve outcome of patients. Neth Heart J. 2016 Jul;24(7-8):441–446. doi: 10.1007/s12471-016-0834-6. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 12.Duarte R, Stainthorpe A, Mahon J, Greenhalgh J, Richardson M, Nevitt S, Kotas E, Boland A, Thom H, Marshall T, Hall M, Takwoingi Y. Lead-I ECG for detecting atrial fibrillation in patients attending primary care with an irregular pulse using single-time point testing: a systematic review and economic evaluation. PLoS One. 2019;14(12):e0226671. doi: 10.1371/journal.pone.0226671. https://dx.plos.org/10.1371/journal.pone.0226671. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 13.iRhythmTech. [2020-11-17]. http://www.irhythmtech.com.
- 14.Giebel GD, Gissel C. Accuracy of mHealth devices for atrial fibrillation screening: systematic review. JMIR Mhealth Uhealth. 2019 Jun 16;7(6):e13641. doi: 10.2196/13641. https://mhealth.jmir.org/2019/6/e13641/ [DOI] [PMC free article] [PubMed] [Google Scholar]
- 15.Higgins J, Thomas J, Chandler J. Cochrane Handbook for Systematic Reviews of Interventions version 6.0. 2019. [2020-11-17]. https://training.cochrane.org/handbook.
- 16.Sterne JAC, Savović J, Page MJ, Elbers RG, Blencowe NS, Boutron I, Cates CJ, Cheng H, Corbett MS, Eldridge SM, Emberson JR, Hernán MA, Hopewell S, Hróbjartsson A, Junqueira DR, Jüni P, Kirkham JJ, Lasserson T, Li T, McAleenan A, Reeves BC, Shepperd S, Shrier I, Stewart LA, Tilling K, White IR, Whiting PF, Higgins JPT. RoB 2: a revised tool for assessing risk of bias in randomised trials. BMJ. 2019 Aug 28;366:l4898. doi: 10.1136/bmj.l4898. [DOI] [PubMed] [Google Scholar]
- 17.Sterne JA, Hernán MA, Reeves BC, Savović J, Berkman ND, Viswanathan M, Henry D, Altman DG, Ansari MT, Boutron I, Carpenter JR, Chan A, Churchill R, Deeks JJ, Hróbjartsson A, Kirkham J, Jüni P, Loke YK, Pigott TD, Ramsay CR, Regidor D, Rothstein HR, Sandhu L, Santaguida PL, Schünemann HJ, Shea B, Shrier I, Tugwell P, Turner L, Valentine JC, Waddington H, Waters E, Wells GA, Whiting PF, Higgins JP. ROBINS-I: a tool for assessing risk of bias in non-randomised studies of interventions. BMJ. 2016 Oct 12;355:i4919. doi: 10.1136/bmj.i4919. http://www.bmj.com/cgi/pmidlookup?view=long&pmid=27733354. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 18.Reed MJ, Grubb NR, Lang CC, Gray AJ, Simpson K, MacRaild A, Weir CJ. Diagnostic yield of an ambulatory patch monitor in patients with unexplained syncope after initial evaluation in the emergency department: the PATCH-ED study. Emerg Med J. 2018 Aug;35(8):477–485. doi: 10.1136/emermed-2018-207570. [DOI] [PubMed] [Google Scholar]
- 19.Reed MJ, Grubb NR, Lang CC, O'Brien R, Simpson K, Padarenga M, Grant A, Tuck S, Keating L, Coffey F, Jones L, Harris T, Lloyd G, Gagg J, Smith JE, Coats T. Multi-centre randomised controlled trial of a smartphone-based event recorder alongside standard care versus standard care for patients presenting to the emergency department with palpitations and pre-syncope: the IPED (Investigation of Palpitations in the ED) study. EClinicalMedicine. 2019 Feb;8:37–46. doi: 10.1016/j.eclinm.2019.02.005. https://linkinghub.elsevier.com/retrieve/pii/S2589-5370(19)30026-4. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 20.Valenzuela C. [2 solutions for estimating odds ratios with zeros] Rev Med Chil. 1993 Dec;121(12):1441–1444. [PubMed] [Google Scholar]
- 21.Harrison S, Jones HE, Martin RM, Lewis SJ, Higgins JPT. The albatross plot: a novel graphical tool for presenting results of diversely reported studies in a systematic review. Res Synth Methods. 2017 Sep;8(3):281–289. doi: 10.1002/jrsm.1239. http://europepmc.org/abstract/MED/28453179. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 22.McHugh ML. Interrater reliability: the kappa statistic. Biochem Med (Zagreb) 2012;22(3):276–282. http://www.biochemia-medica.com/2012/22/276. [PMC free article] [PubMed] [Google Scholar]
- 23.Liu J, Fang P, Hou Y, Li X, Liu Y, Wang Y, Zhang S. The value of transtelephonic electrocardiogram monitoring system during the "Blanking Period" after ablation of atrial fibrillation. J Electrocardiol. 2010;43(6):667–672. doi: 10.1016/j.jelectrocard.2010.06.007. [DOI] [PubMed] [Google Scholar]
- 24.Rosenberg MA, Samuel M, Thosani A, Zimetbaum PJ. Use of a noninvasive continuous monitoring device in the management of atrial fibrillation: a pilot study. Pacing Clin Electrophysiol. 2013 Mar;36(3):328–333. doi: 10.1111/pace.12053. doi: 10.1111/pace.12053. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 25.Barrett PM, Komatireddy R, Haaser S, Topol S, Sheard J, Encinas J, Fought AJ, Topol EJ. Comparison of 24-hour Holter monitoring with 14-day novel adhesive patch electrocardiographic monitoring. Am J Med. 2014 Jan;127(1):e11–e17. doi: 10.1016/j.amjmed.2013.10.003. http://linkinghub.elsevier.com/retrieve/pii/S0002-9343(13)00870-X. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 26.Hendrikx T, Rosenqvist M, Wester P, Sandström H, Hörnsten R. Intermittent short ECG recording is more effective than 24-hour Holter ECG in detection of arrhythmias. BMC Cardiovasc Disord. 2014 Apr 01;14:41. doi: 10.1016/j.jelectrocard.2014.02.006. doi: 10.1016/j.jelectrocard.2014.02.006. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 27.Kimura T, Aizawa Y, Kurata N, Nakajima K, Kashimura S, Kunitomi A, Nishiyama T, Katsumata Y, Nishiyama N, Fukumoto K, Tanimoto Y, Fukuda K, Takatsuki S. Assessment of atrial fibrillation ablation outcomes with clinic ECG, monthly 24-h Holter ECG, and twice-daily telemonitoring ECG. Heart Vessels. 2017 Mar;32(3):317–325. doi: 10.1007/s00380-016-0866-2. [DOI] [PubMed] [Google Scholar]
- 28.Busch MC, Gross S, Alte D, Kors JA, Völzke H, Ittermann T, Werner A, Krüger A, Busch R, Dörr M, Felix SB. Impact of atrial fibrillation detected by extended monitoring: a population-based cohort study. Ann Noninvasive Electrocardiol. 2017 Nov;22(6):1. doi: 10.1111/anec.12453. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 29.Halcox JPJ, Wareham K, Cardew A, Gilmore M, Barry JP, Phillips C, Gravenor MB. Assessment of remote heart rhythm sampling using the alivecor heart monitor to screen for atrial fibrillation: the REHEARSE-AF study. Circulation. 2017 Nov 07;136(19):1784–1794. doi: 10.1161/CIRCULATIONAHA.117.030583. [DOI] [PubMed] [Google Scholar]
- 30.Hickey K, Biviano A, Garan H, Sciacca RR, Riga T, Warren K, Frulla AP, Hauser NR, Wang DY, Whang W. Evaluating the utility of mHealth ECG heart monitoring for the detection and management of atrial fibrillation in clinical practice. J Atr Fibrillation. 2017;9(5):1546. doi: 10.4022/jafib.1546. http://europepmc.org/abstract/MED/29250277. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 31.Narasimha D, Hanna N, Beck H, Chaskes M, Glover R, Gatewood R, Bourji M, Gudleski GD, Danzer S, Curtis AB. Validation of a smartphone-based event recorder for arrhythmia detection. Pacing Clin Electrophysiol. 2018 May;41(5):487–494. doi: 10.1111/pace.13317. [DOI] [PubMed] [Google Scholar]
- 32.Goldenthal IL, Sciacca RR, Riga T, Bakken S, Baumeister M, Biviano AB, Dizon JM, Wang D, Wang KC, Whang W, Hickey KT, Garan H. Recurrent atrial fibrillation/flutter detection after ablation or cardioversion using the AliveCor KardiaMobile device: iHEART results. J Cardiovasc Electrophysiol. 2019 Nov;30(11):2220–2228. doi: 10.1111/jce.14160. http://europepmc.org/abstract/MED/31507001. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 33.Karunadas CP, Mathew C. Comparison of arrhythmia detection by conventional Holter and a novel ambulatory ECG system using patch and Android app over 24 hour period. Indian Pacing Electrophysiol J. 2020;20(2):49–53. doi: 10.1016/j.ipej.2019.12.013. https://linkinghub.elsevier.com/retrieve/pii/S0972-6292(19)30152-4. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 34.Kaura A, Sztriha L, Chan FK, Aeron-Thomas J, Gall N, Piechowski-Jozwiak B, Teo JT. Early prolonged ambulatory cardiac monitoring in stroke (EPACS): an open-label randomised controlled trial. Eur J Med Res. 2019 Jul 26;24(1):25. doi: 10.1186/s40001-019-0383-8. https://eurjmedres.biomedcentral.com/articles/10.1186/s40001-019-0383-8. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 35.AliveCor. [2020-11-17]. https://www.alivecor.com/
- 36.Zenicor. [2020-11-17]. https://www.zenicor.com/
- 37.Jaakkola J, Mustonen P, Kiviniemi T, Hartikainen JEK, Palomäki A, Hartikainen P, Nuotio I, Ylitalo A, Airaksinen KEJ. Stroke as the first manifestation of atrial fibrillation. PLoS One. 2016;11(12):e0168010. doi: 10.1371/journal.pone.0168010. https://dx.plos.org/10.1371/journal.pone.0168010. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 38.Welton NJ, McAleenan A, Thom HH, Davies P, Hollingworth W, Higgins JP, Okoli G, Sterne JA, Feder G, Eaton D, Hingorani A, Fawsitt C, Lobban T, Bryden P, Richards A, Sofat R. Screening strategies for atrial fibrillation: a systematic review and cost-effectiveness analysis. Health Technol Assess. 2017 May;21(29):1–236. doi: 10.3310/hta21290. doi: 10.3310/hta21290. [DOI] [PubMed] [Google Scholar]
- 39.Lowres N, Olivier J, Chao T, Chen S, Chen Y, Diederichsen A, Fitzmaurice DA, Gomez-Doblas JJ, Harbison J, Healey JS, Hobbs FDR, Kaasenbrood F, Keen W, Lee VW, Lindholt JS, Lip GYH, Mairesse GH, Mant J, Martin JW, Martín-Rioboó E, McManus DD, Muñiz J, Münzel T, Nakamya J, Neubeck L, Orchard JJ, de Torres P, Proietti M, Quinn FR, Roalfe AK, Sandhu RK, Schnabel RB, Smyth B, Soni A, Tieleman R, Wang J, Wild PS, Yan BP, Freedman B. Estimated stroke risk, yield, and number needed to screen for atrial fibrillation detected through single time screening: a multicountry patient-level meta-analysis of 141,220 screened individuals. PLoS Med. 2019 Sep;16(9):e1002903. doi: 10.1371/journal.pmed.1002903. https://dx.plos.org/10.1371/journal.pmed.1002903. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 40.Giebel GD. Use of mHealth devices to screen for atrial fibrillation: cost-effectiveness analysis. JMIR Mhealth Uhealth. 2020 Oct 06;8(10):e20496. doi: 10.2196/20496. https://mhealth.jmir.org/2020/10/e20496/ [DOI] [PMC free article] [PubMed] [Google Scholar]
- 41.Bacchini M, Bonometti S, Del Zotti F, Lechi A, Realdon F, Fava C, Minuz P. Opportunistic screening for atrial fibrillation in the pharmacies: a population-based cross-sectional study. High Blood Press Cardiovasc Prev. 2019 Aug;26(4):339–344. doi: 10.1007/s40292-019-00334-4. [DOI] [PubMed] [Google Scholar]
- 42.Lowres N, Neubeck L, Salkeld G, Krass I, McLachlan AJ, Redfern J, Bennett AA, Briffa T, Bauman A, Martinez C, Wallenhorst C, Lau JK, Brieger DB, Sy RW, Freedman SB. Feasibility and cost-effectiveness of stroke prevention through community screening for atrial fibrillation using iPhone ECG in pharmacies: the SEARCH-AF study. Thromb Haemost. 2014 Jun;111(6):1167–1176. doi: 10.1160/TH14-03-0231. [DOI] [PubMed] [Google Scholar]
- 43.Lowres N, Krass I, Neubeck L, Redfern J, McLachlan AJ, Bennett AA, Freedman SB. Atrial fibrillation screening in pharmacies using an iPhone ECG: a qualitative review of implementation. Int J Clin Pharm. 2015 Dec;37(6):1111–1120. doi: 10.1007/s11096-015-0169-1. [DOI] [PubMed] [Google Scholar]
- 44.Kaasenbrood F, Hollander M, Rutten FH, Gerhards LJ, Hoes AW, Tieleman RG. Yield of screening for atrial fibrillation in primary care with a hand-held, single-lead electrocardiogram device during influenza vaccination. Europace. 2016 Oct;18(10):1514–1520. doi: 10.1093/europace/euv426. http://europepmc.org/abstract/MED/26851813. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 45.Orchard J, Lowres N, Freedman SB, Ladak L, Lee W, Zwar N, Peiris D, Kamaladasa Y, Li J, Neubeck L. Screening for atrial fibrillation during influenza vaccinations by primary care nurses using a smartphone electrocardiograph (iECG): a feasibility study. Eur J Prev Cardiol. 2016 Dec;23(2 suppl):13–20. doi: 10.1177/2047487316670255. [DOI] [PubMed] [Google Scholar]
- 46.Calkins H, Brugada J, Packer DL, Cappato R, Chen S, Crijns HJG, Damiano RJ, Davies DW, Haines DE, Haissaguerre M, Iesaka Y, Jackman W, Jais P, Kottkamp H, Kuck KH, Lindsay BD, Marchlinski FE, McCarthy PM, Mont JL, Morady F, Nademanee K, Natale A, Pappone C, Prystowsky E, Raviele A, Ruskin JN, Shemin RJ, Heart Rhythm Society. European Heart Rhythm Association. European Cardiac Arrhythmia Society. American College of Cardiology. American Heart Association. Society of Thoracic Surgeons HRS/EHRA/ECAS expert consensus statement on catheter and surgical ablation of atrial fibrillation: recommendations for personnel, policy, procedures and follow-up. A report of the Heart Rhythm Society (HRS) Task Force on Catheter and Surgical Ablation of Atrial Fibrillation developed in partnership with the European Heart Rhythm Association (EHRA) and the European Cardiac Arrhythmia Society (ECAS); in collaboration with the American College of Cardiology (ACC), American Heart Association (AHA), and the Society of Thoracic Surgeons (STS). Endorsed and approved by the governing bodies of the American College of Cardiology, the American Heart Association, the European Cardiac Arrhythmia Society, the European Heart Rhythm Association, the Society of Thoracic Surgeons, and the Heart Rhythm Society. Europace. 2007 Jun;9(6):335–379. doi: 10.1093/europace/eum120. [DOI] [PubMed] [Google Scholar]
- 47.Mantovan R, Macle L, De Martino G, Chen J, Morillo CA, Novak P, Calzolari V, Khaykin Y, Guerra PG, Nair G, Torrecilla EG, Verma A. Relationship of quality of life with procedural success of atrial fibrillation (AF) ablation and postablation AF burden: substudy of the STAR AF randomized trial. Can J Cardiol. 2013 Oct;29(10):1211–1217. doi: 10.1016/j.cjca.2013.06.006. [DOI] [PubMed] [Google Scholar]
- 48.Boriani G, Glotzer TV, Santini M, West TM, De Melis M, Sepsi M, Gasparini M, Lewalter T, Camm JA, Singer DE. Device-detected atrial fibrillation and risk for stroke: an analysis of >10,000 patients from the SOS AF project (Stroke preventiOn Strategies based on Atrial Fibrillation information from implanted devices) Eur Heart J. 2014 Feb;35(8):508–516. doi: 10.1093/eurheartj/eht491. http://europepmc.org/abstract/MED/24334432. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 49.Steinberg JS, O’Connell H, Li S, Ziegler PD. Thirty-second gold standard definition of atrial fibrillation and its relationship with subsequent arrhythmia patterns. Circ Arrhythm Electrophysiol. 2018 Jul;11(7):e006274. doi: 10.1161/circep.118.006274. [DOI] [PubMed] [Google Scholar]
- 50.Apple Inc. [2020-11-17]. https://support.apple.com/en-us/HT208955.
- 51.Withings. [2020-11-17]. https://www.withings.com/
- 52.Risling T, Martinez J, Young J, Thorp-Froslie N. Evaluating patient empowerment in association with eHealth technology: scoping review. J Med Internet Res. 2017 Sep 29;19(9):e329. doi: 10.2196/jmir.7809. http://www.jmir.org/2017/9/e329/ [DOI] [PMC free article] [PubMed] [Google Scholar]
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