Literature DB >> 30224404

Atrial fibrillation detection using single lead portable electrocardiographic monitoring: a systematic review and meta-analysis.

Satish Ramkumar1,2,3, Nitesh Nerlekar1,3, Daniel D'Souza3, Derek J Pol3, Jonathan M Kalman4, Thomas H Marwick1,2.   

Abstract

OBJECTIVES: Recent technology advances have allowed for heart rhythm monitoring using single-lead ECG monitoring devices, which can be used for early diagnosis of atrial fibrillation (AF). We sought to investigate the AF detection rate using portable ECG devices compared with Holter monitoring. SETTING, PARTICIPANTS AND OUTCOME MEASURES: We searched the Medline, Embase and Scopus databases (conducted on 8 May 2017) using search terms related to AF screening and included studies with adults aged >18 years using portable ECG devices or Holter monitoring for AF detection. We excluded studies using implantable loop recorders and pacemakers. Using a random-effects model we calculated the overall AF detection rate. Meta-regression analysis was performed to explore potential sources for heterogeneity. Quality of reporting was assessed using the tool developed by Downs and Black.
RESULTS: Portable ECG monitoring was used in 18 studies (n=117 436) and Holter monitoring was used in 36 studies (n=8498). The AF detection rate using portable ECG monitoring was 1.7% (95% CI 1.4 to 2.1), with significant heterogeneity between studies (p<0.001). There was a moderate linear relationship between total monitoring time and AF detection rate (r=0.65, p=0.003), and meta-regression identified total monitoring time (p=0.005) and body mass index (p=0.01) as potential contributors to heterogeneity. The detection rate (4.8%, 95% CI 3.6% to 6.0%) in eight studies (n=10 199), which performed multiple ECG recordings was comparable to that with 24 hours Holter (4.6%, 95% CI 3.5% to 5.7%). Intermittent recordings for 19 min total produced similar AF detection to 24 hours Holter monitoring.
CONCLUSION: Portable ECG devices may offer an efficient screening option for AF compared with 24 hours Holter monitoring. PROSPERO REGISTRATION NUMBER: CRD42017061021. © Author(s) (or their employer(s)) 2018. Re-use permitted under CC BY-NC. No commercial re-use. See rights and permissions. Published by BMJ.

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Year:  2018        PMID: 30224404      PMCID: PMC6144487          DOI: 10.1136/bmjopen-2018-024178

Source DB:  PubMed          Journal:  BMJ Open        ISSN: 2044-6055            Impact factor:   2.692


First systematic review comparing single-lead ECG monitoring with 24 hours Holter monitoring for atrial fibrillation (AF) detection. Comprehensive literature search and specific inclusion criteria allowing for large patient numbers. Heterogeneity among individual studies with regard to patient population, AF definitions and monitoring time. Poor reporting of CHA2DS2-VASC scores among individual studies. Patient compliance unable to be accounted for in this meta-analysis. Atrial fibrillation (AF) is a leading cause of stroke and heart failure worldwide, and is associated with increased all-cause mortality1 2 as well as substantial financial cost.3 4 The prevalence of AF increases with age, exceeding >15% for those aged 85 years and older.5 The epidemics of obesity, diabetes mellitus and metabolic syndrome have also been associated with the increasing prevalence of AF.6–8 Up to 20% of patients with stroke have underlying AF, and detection allows the initiation of anticoagulation, which is associated with a significant reduction in stroke recurrence.9 Early diagnosis of AF may have several benefits, including individualised lifestyle intervention10 and anticoagulation, and may be associated with a reduction in complications and healthcare costs. The importance of early diagnosis has been recognised in recent guidelines from the European Society of Cardiology, which recommended opportunistic screening using pulse palpation and 12-lead ECG.11 However, screening for AF is challenging for several reasons; many patients are asymptomatic or may have atypical symptoms. There are a variety of monitoring techniques available, all of which vary in diagnostic accuracy and sensitivity, and there is no accepted reference standard. Subclinical AF is associated with an increased risk of stroke, cardiovascular disease and all-cause mortality,12 although there is controversy surrounding the significance of brief paroxysms of AF and the potential benefit of anticoagulant therapy. Implantable devices are expensive, and not cost-effective for mass screening, and the use of external devices for long periods of monitoring require electrodes, which may be poorly tolerated by patients. Recent advances in technology have allowed for the development of single-lead portable ECG monitoring devices. Multiple devices are available, all using multiple points of finger contact to create a single-lead ECG trace. The in-built memory of these devices allows for single or multiple time-point screening. Interpretation from a cardiologist or by automated algorithms has achieved high sensitivity and specificity for AF detection.13–15 Although they have not been incorporated into the latest AF guidelines, the accuracy, ease of use and potential cost-effectiveness of these devices may lead to them having an important role in AF screening. This paper describes a systematic review of the published literature to investigate the overall AF detection rate using portable ECG devices compared with traditional Holter monitoring.

Methods

Search strategy

We conducted our systematic review and meta-analysis using the Preferred Reporting Items for Systematic Reviews and Meta-Analyses guideline (PRISMA).16 We searched the Medline, Scopus and Embase databases using key terms including ‘atrial fibrillation/AF and screening/monitoring and electrocardiographic/Holter monitoring’, which were mapped to subject headings. We also searched the reference lists to identify other potential articles. The search was limited to adult human subjects aged >18 years and limited to the English language (see search strategy for Medline database in online supplementary material 1). The study was prospectively registered on the PROSPERO database on 22 April 2017 (CRD42017061021), and the search was conducted on 8 May 2017.

Study selection

Titles and abstracts of studies identified from the search were reviewed by two independent reviewers (SR and DDS). Studies which had a primary aim of AF detection in adult participants were included. We included all cohorts including community screening, those with risk factors and recent stroke. The screening methods included portable single-lead ECG devices or continuous (Holter) monitoring (up to 1 week). We included studies which used single-lead ECG devices for single episode screening or multiple intermittent screening periods. We included conference abstracts if demographic and outcome data were available. We excluded studies if participants were aged <18 years or if other forms of monitoring were used (pacemaker, implantable loop recorders, event recorders, monitoring patches and inpatient telemetry). We also excluded studies where AF detection was not the primary aim. The primary outcome of interest was the detection rate of new AF using either single-lead intermittent or continuous monitoring. Our secondary objective was to determine the optimal time of intermittent monitoring, which produced equivalent AF detection to continuous monitoring.

Data collection

Full-text manuscripts of studies fitting the inclusion criteria were obtained. Quality of reporting and risk of bias was assessed using the tool developed by Downs and Black.17 A standardised data-extraction form was used by the reviewers, which included information about the patient demographics, comorbidities, screening strategy, patients with known AF and overall new AF detection rate. Where data were not reported, we attempted to contact the primary authors of the study. Any disagreements between the two reviewers were resolved by consensus or by consulting a third reviewer (THM).

Statistical analysis

The cumulative AF detection rate for continuous and intermittent monitoring and the 95% CI was calculated using a random-effects model. The results were displayed as a forest plot and heterogeneity among the studies was assessed using the I2 statistic. A subgroup analysis was performed by comparing the cumulative detection rate of single-lead ECG studies, which performed multiple timepoint recordings with 24 hours Holter monitoring studies. Linear regression analysis was used to determine the association between the total monitoring time and AF detection using single-lead ECG devices. This formula was used to determine the monitoring time using single-lead ECG devices to approximate the overall AF detection rate using 24 hours continuous monitoring. Univariate meta-regression analysis was performed to assess the influence of various clinical and screening factors with AF detection. Publication bias was assessed using a funnel plot and the Egger test. Statistical analysis was performed using Stata V.13 (StataCorp, College Station, Texas, USA) with two-tailed p values <0.05 used to denote statistical significance.

Patient and public involvement

Patients were not involved in this review.

Results

Study characteristics

The PRISMA flow chart of our included studies is shown in figure 1 and the search strategy in online supplementary table 1. Our initial search strategy identified 5427 studies, with another 26 identified through other sources. After removing duplicate records, 4122 studies were left. After screening those using the inclusion/exclusion criteria, we identified 111 full-text studies for detailed review, which excluded 59 studies, leaving 52 full-text studies for inclusion in the meta-analysis (see online supplementary table 2 for excluded studies). Of the 52 studies included, 34 used continuous (Holter) monitoring (n=8154),18–51 16 studies (n=117 092) used single-lead portable ECG monitoring14 15 52–65 and 2 studies (n=344) used both continuous and intermittent single-lead monitoring for AF detection in a head-to-head comparison.66 67
Figure 1

Overview of inclusion and exclusion of studies based on the Preferred Reporting Items for Systematic Reviews and Meta-Analyses flow chart.

Overview of inclusion and exclusion of studies based on the Preferred Reporting Items for Systematic Reviews and Meta-Analyses flow chart. The baseline characteristics of the individual studies is presented in table 1. There was a considerable range in age (54–76 years), and gender (male 29%–77%) between studies. As many studies chose healthy volunteers and other studies focused on patients poststroke or those with AF risk factors, there was significant variation in comorbidities such as diabetes, hypertension and obesity. Stroke risk determined by the CHADS or CHA2DS2-VASC score was reported in only 14/52 studies (27%). Of the 52 studies, 36 (69%) were conducted in Europe, 8 (15%) in Asia, 5 (10%) in North America and 3 (6%) in Australia. Nine studies (17%) were retrospective, the remainder all being prospective cohort or randomised controlled trials.
Table 1

Summary of included trials investigating AF detection using single-lead ECG devices or Holter monitoring

StudynCountryType of patients usedDevice usedDuration of recording (s)Frequency of recording/ dayTotal monitoring (days)Mean/ median age (years)Male (%)BMI (kg/m2)HTN (%)DM (%)IHD (%)Previous diagnosis of AF (%)HF (%)Previous stroke (%)Mean/ median CHADS/ CHA2DS2-VASCDefinition of AFNew AF (n)New AF rate (%)
Lowres et al 52 1000AustraliaCommunity pharmacy screeningAlive Cor60107644NR62231610.4373.3Cardiologist interpretation151.5
Svennberg et al 53 7173SwedenCommunity screening (aged 75–76 years)Zenicor30214754625.950119.29.23.493.430 s irregular rhythm without P waves or 2× episodes between 10 and 29 s2183
Proietti et al 54 65 747BelgiumBelgian Heart Week screeningOmron Heartscan HCG-80130105841NR3621230.520202Irregular R-R interval, no distinct P waves, variable atrial cycle length6031.1
Kaasenbrood et al 55 3269HollandInfluenza vaccination—opportunistic screeningMyDiagnostik601064.149NRNRNRNR2.6NRNRNRCardiologist interpretation×2371.1
Engdahl et al 56 848SwedenCommunity screening (aged 75–76 years) in Halmstad, SwedenZenicor302147543NR5311NR9.64101.930 s duration of irregular rhythm or ≥2 episodes of 10 s or more404.7
Hendrikx et al 57 928SwedenGP practicesZenicor1022869.850NR90.331.619.803.78.6210 s irregular rhythm without P waves353.8
Hendrikx et al 67 95SwedenReferred for presyncope/ palpitationsZenicor3022854.144NR28.41.18.4006.3130 s irregular rhythm without P waves99.5
Chan et al 15 1013Hong KongPatients aged ≥65 years with HTN or diabetesAlive Cor601068.447NR90.436.616.22.24.410.53Cardiologist interpretation50.5
Doliwa Sobocinski et al 66 249SwedenPatients post-TIA/ strokeZenicor102307257NR65162004253Irregular rhythm of minimum 10 s without visible P waves156
Doliwa Sobocinski P et al 14 606SwedenCommunity eventZenicor1010NR64NRNRNRNRNRNRNRNRIrregular rhythm without visible P waves61
Ramkumar et al 60 204AustraliaCommunity aged ≥65 years with one or more risk factor for HFRemon RM-100605770.15129.172.156.45.900NR330 s duration of irregular rhythm with absent P waves209.8
Hendrikx et al 58 201SwedenPatients referred to respiratory clinics with suspicion of obstructive sleep apnoeaZenicor3021456693051109.204.63.1NRIrregular supraventricular extra systoles in series for 30 s136.5
Claes et al 61 10 758BelgiumCommunity heart rhythm screening programme through medical centresOmron HeartScan HCG-80130105938NR30.68.612.27.27.25.41Irregular RR intervals, absence of P waves and variable atrial cycle length (when visible)1671.6
Samol et al 62 132GermanyLarge proportion poststroke/TIA. Also recruited from diabetes, HTN and dyslipidemia clinicsOmron HeartScan HCG-80130106458NR6727NR0349NRCardiologist Interpretation×275.3
Battipaglia et al 63 855UKCommunity shopping centre screeningMyDiagnostik1510NRNRNRNRNRNRNRNRNRNRNR70.8
Chan and Choy59 13 122Hong KongNationwide community screening programmeAlive Cor301064.72923.738.214.82.200.72.8NRSoftware algorithm definition with minimum of 30 s1010.8
Chan et al 65 10 735Hong KongNationwide community screening programmeAlive Cor3010NRNRNRNRNRNR1.2NRNRNRCardiologist interpretation (≥30 s)740.7
Halcox et al 64 501UKCommunity based with individuals aged >65 years with CHA2DS2-VASC score≥2Alive Cor302× per week36572.648NR54261401.07.03.030 s duration of an irregular rhythm without P waves193.8
Gladstone et al 18 277CanadaPatients admitted with cryptogenic strokeHolterContinuousContinuous173.256NR6719.314.70712.6NR30 s or longer duration of irregular rhythm93.2
Barthélémy et al 19 60FranceConsecutive patients admitted with stroke/TIAHolterContinuousContinuous164.455NR5017NR0NR27NRFibrillatory waves associated with irregular ventricular response ratio at least 30 s duration813.3
Jabaudon et al 20 149SwitzerlandConsecutive patients admitted with stroke/TIAHolterContinuousContinuous166.968NR5816.716.84.7NR16.8NRNR74.7
Koudstaal et al 21 100HollandRetrospective study of 100 patients admitted with stroke/TIAHolterContinuousContinuous160.974NRNRNR41NRNRNRNRNR55
Hornig et al 22 268GermanyConsecutive patients admitted with stroke/TIAHolterContinuousContinuous159.161NR43.734NRNR14.945NRNR103.3
Rizos et al 23 496GermanyPatients admitted with stroke/TIAHolterContinuousContinuous16962NR78.824.6NRNRNR22.23Cardiologist interpretation (≥30 s)142.8
Schuchert et al 24 82GermanyConsecutive patients admitted with stroke/TIAHolterContinuousContinuous359.757NR36.5NR17.1NRNRNRNRSmall irregular baseline undulations of variable amplitudes and morphology at a rate >350/min with an irregular ventiruclar response for at least 1 min56
Schaer et al 25 241SwitzerlandConsecutive patients admitted with stroke/TIAHolterContinuousContinuous168.759NR7625417NR4.6NRNR00
Schaer et al 26 425SwitzerlandRetrospective review of patients poststroke/TIA with Holter monitoringHolterContinuousContinuous167.461NRNRNRNRNRNR1.2NRSelf-terminating sequence of >30 s of irregular RR intervals and the presence of fibrillatory P waves92.1
Shafqat et al 27 465PakistanRetrospective review of consecutive patients admitted with stroke/TIAHolterContinuousContinuous166.856NRNRNRNRNRNRNRNRNR52.4
Lazzaro et al 28 133USAConsecutive patients admitted with stroke/TIAHolterContinuousContinuous163.150NR7029.318.80NR2.3NRSupraventricular tachyarrhythmia characterised by uncoordinated atrial activation with fibrillatory waves varying in amplitude, shape and timing, replacing consistent P waves and with a duration >30 s86
Grond et al 29 1135GermanyPatients admitted in seven German centres with stroke/TIAHolterContinuousContinuous3675527.420.47.305.817.4NR≥1 period of >30 s duration of an absolute arrhythmia without detectable P waves and without a pattern more consistent with an alternate diagnosis494.3
Stahrenberg et al 30 224GermanyConsecutive patients admitted with stroke/TIAHolterContinuousContinuous7685827.672.922.314.805.216.2NR2x Cardiologist interpretation of software algorithm detection of events2812.5
Ritter et al 31 60GermanyPatients admitted with cryptogenic strokeHolterContinuousContinuous761.857NR7011.713.3NR0NR4Cardiologist interpretation (>30 s)11.7
Higgins et al 32 50ScotlandPatients admitted with stroke/TIAHolterContinuousContinuous767.148NR568160NRNRNRCardiologist interpretation (>30 s)48
Hendrikx et al 67 95SwedenPatients investigated for palpitations and presyncopeHolterContinuousContinuous154.142NR28.41.18.4006.3130 s irregular rhythm without P waves22.1
Thakkar and Bagarhatta33 52IndiaConsecutive patients admitted with stroke/TIAHolterContinuousContinuous159.577NR51.923.115.401.77.7NR30 s irregular rhythm without P waves35.8
Wachter et al 34 198GermanyConsecutive patients admitted with stroke/TIAHolterContinuousContinuous173.262NR80.726.49.104.621.74.8>30 s rhythm with irregular RR intervals and the presence of fibrillatory P waves95
Gumbinger et al 35 192GermanyPatients admitted with stroke/TIAHolterContinuousContinuous1NRNRNRNRNRNRNRNRNRNRNR21
Alhadramy et al 36 426CanadaRetrospective review of patients poststroke/TIA with Holter monitoringHolterContinuousContinuous164.948NR58.214.114.101.66.3NRIrregular ventricular response in the absence of p waves or with fibrillatory waves112.5
Doliwa Sobocinski et al 66 249SwedenConsecutive patients admitted with stroke/TIAHolterContinuousContinuous17257NR65162004253Irregular rhythm of minimum 10 s without visible P waves52
Dangayach et al 37 51USARetrospective audit of patients admitted with cryptogenic strokeHolterContinuousContinuous258.243NR35.31615.77.4NRNRNRNR1529.4
Gunalp et al 38 26TurkeyPatients admitted with ischaemic strokeHolterContinuousContinuous16669NR612631NRNRNRNRNR1142.3
Fonseca et al 39 80PortugalPatients admitted with cryptogenic strokeHolterContinuousContinuous169.353NR71.328.811.3NRNR22.5NRNR1721
Manina et al 40 114ItalyPatients admitted with cryptogenic strokeHolterContinuousContinuous463.1NRNR52.69.6NRNRNRNRNRIrregular ventricular response in the absence of P waves or with fibrillatory waves2925.4
Tagawa et al 41 308JapanConsecutive patients admitted with ischaemic strokeHolterContinuousContinuous172.660NR70.125.3NR20.4NRNRNRSmall irregular baseline undulations of variable amplitude and morphology at a rate of 300–350/min associated with irregular ventricular response268.4
Shibazaki et al 42 536JapanConsecutive patients admitted with ischaemic strokeHolterContinuousContinuous172.464NR65.925.79.8NR0.3NRNRNR122.2
Vandebroucke and Thijs43 136BelgiumRetrospective audit of patients admitted with ischaemic strokeHolterContinuousContinuous16852NRNRNRNRNRNRNRNRNR75.1
Yodogawa et al 44 68JapanConsecutive patients admitted with ischaemic strokeHolterContinuousContinuous169.954NR66.214.7NRNRNRNRNRIrregular and uncoordinated atrial electrical activity on surface ECG lasting >30 s1725
Atmuri et al 45 140AustraliaRetrospective audit of patients admitted with ischaemic stroke/TIAHolterContinuousContinuous1NRNRNR652037.118.6NRNRNRNR128.6
Salvatori et al 46 274ItalyCohort study of patients aged ≥65 years with HTN in multiple GP clinicsHolterContinuousContinuous27054NR100159742.2NRCardiologist interpretation41.5
Beaulieu-Boire et al 47 284CanadaConsecutive patients admitted with stroke/TIAHolterContinuousContinuous170.652NR68.726.727.4NR2.222.3NRCardiologist interpretation186.3
Dogan et al 48 400TurkeyRetrospective review of patients admitted poststrokeHolterContinuousContinuous1NRNRNRNRNRNRNRNRNRNRNR4010
Douen et al 49 126CanadaRetrospective review of patients admitted poststrokeHolterContinuousContinuous1NRNRNRNRNRNR7NRNRNRNR97.1
Suissa et al 50 354FranceConsecutive patients admitted with ischaemic strokeHolterContinuousContinuous162.457NR51.118.6NR0NRNRNRCardiologist interpretation20.6
Wohlfahrt et al 51 224GermanyPatients admitted with ischaemic strokeHolterContinuousContinuous768.559NR73.222.315.2NR5.424.1NR>30 s irregular rhythm2912.9

AF, atrial fibrillation; BMI, body mass index; DM, diabetes mellitus; GP, general practitioner; HF, heart failure; HTN, hypertension; IHD, ischaemic heart disease.

Of the 18 studies using single-lead ECG devices, 10 studies (56%) used a single 10–60 s recording for AF detection while 8 studies (44%) used multiple readings over a 1-week to 52-week period. There were five portable ECG devices used (table 1). Sixteen studies (89%) used healthy participants with risk factors.14 15 52–61 63–65 67 Two studies assessed patients following stroke or transient ischaemic attack (TIA).62 66 Of the 36 studies using continuous (Holter) monitoring, 27 studies (75%) used 24 hours continuous monitoring,18–23 25–28 33–36 38 39 41–45 47–50 66 674 studies (11%) used 1-week monitoring,30–32 51 2 studies (6%) used 48 hours monitoring,37 46 2 studies (6%) used 72 hours monitoring24 29 and 1 study (3%) used 96 hours monitoring.40 Summary of included trials investigating AF detection using single-lead ECG devices or Holter monitoring AF, atrial fibrillation; BMI, body mass index; DM, diabetes mellitus; GP, general practitioner; HF, heart failure; HTN, hypertension; IHD, ischaemic heart disease.

Overall AF detection

The combined AF detection rate using single-lead ECG monitoring (n=117 436 from 18 studies) was 1.7% (95% CI 1.4% to 2.1%). The cumulative AF detection rate using continuous (Holter) monitoring (n=8498 from 36 studies) was 5.5% (95% CI 4.4% to 6.6%). There was significant heterogeneity between studies (I2=94% for single-lead ECG monitoring, 87% for Holter monitoring). The overall new AF detection rate is presented in figure 2.
Figure 2

Forest plot showing the overall atrial fibrillation (AF) detection rate between single-lead ECG devices and Holter monitoring.

Forest plot showing the overall atrial fibrillation (AF) detection rate between single-lead ECG devices and Holter monitoring.

Comparison of multiple intermittent monitoring with 24 hours Holter

There was significant variation in the monitoring time using both single-lead and Holter monitoring, which contributed to the difference in the cumulative detection rate seen in figure 2. Figure 3 compares the detection rate of multiple intermittent single-lead recordings with 24 hours continuous monitoring, which is used routinely in clinical practice. There were eight studies (n=10 199, mean weighted age 68.8±8.4 years from six studies, 47% male from eight studies) that performed multiple intermittent single-lead ECG recordings and 27 studies (n=6284, mean weighted age 67.8±5.1 years from 23 studies, 58% male from 23 studies) that used 24 hours Holter monitoring. From the data available, the multiple intermittent ECG group had a lower AF risk to the 24 hours Holter group (hypertension 55% (n=8 studies) vs 65% (n=20 studies); diabetes mellitus 15% (n=8 studies) vs 22% (n=20 studies); heart failure 3.3% (n=8 studies) vs 3.9% (n=11 studies); ischaemic heart disease 11% (n=6 studies) vs 19% (n=15 studies) and previous stroke/TIA 9% (n=7 studies) vs 16% (n=15 studies)), respectively. The combined AF detection rate was 4.8% (95% CI 3.6% to 6.0%) using multiple intermittent ECG recordings. The cumulative AF detection rate using 24 hours Holter monitoring was 4.6% (95% CI 3.5% to 5.7%).
Figure 3

Forest plot comparing the atrial fibrillation (AF) detection rate between 24 hours Holter monitoring and performing multiple intermittent single-lead ECG recordings.

Forest plot comparing the atrial fibrillation (AF) detection rate between 24 hours Holter monitoring and performing multiple intermittent single-lead ECG recordings.

Association between monitoring time and AF detection

Using single-lead ECG devices, we found a moderate linear relationship between the total monitoring time and AF detection rate (β=0.13, R2=0.42). Using this formula, we noted that approximately 19 min of total intermittent monitoring produced similar AF detection to 24 hours continuous monitoring (figure 4). The study by Halcox et al was an outlier, with a much lower AF detection rate than other studies (3.8% from 52 min of total monitoring) and this reduced the linear correlation between total monitoring time and AF detection rate.64 Exclusion of these data led to a stronger linear relationship (β=0.26, R2=0.80) and a much lower total intermittent monitoring time required (12 min) to produce a similar AF detection rate to 24 hours Holter monitoring.
Figure 4

Graph showing the linear relationship between total monitoring time and atrial fibrillation (AF) detection rate in single-lead ECG devices.

Graph showing the linear relationship between total monitoring time and atrial fibrillation (AF) detection rate in single-lead ECG devices.

Meta-regression

Sources of heterogeneity in the 18 studies using single-lead ECG monitoring were investigated using meta-regression (table 2). Monitoring time per participant (β=0.11, 95% CI 0.04 to 0.18, p=0.005) and body mass index (β=1.1, 95% CI 0.58 to 1.5, p=0.01) were associated with AF detection.
Table 2

Meta-regression analysis for atrial fibrillation (AF) detection (single-lead ECG studies)

VariableNumber of studiesβ (95% CI)P values
Age (years)150.00 (−0.22 to 0.24)0.95
Monitoring time per participant (min)180.11 (0.04 to 0.18)0.005
Body mass index (kg/m2)41.1 (0.58 to 1.5)0.01
CHADS score (%)11−0.13 (−2.6 to 2.4)0.91
Hypertension (%)140.01 (−0.08 to 0.10)0.75
Previous diagnosis of AF (%)16−0.13 (−0.50 to 0.24)0.46
Ischaemic heart disease (%)12−0.10 (−0.42 to 0.21)0.48
Previous stroke (%)130.06 (−0.09 to 0.19)0.45
Male gender160.10 (−0.04 to 0.24)0.16
Meta-regression analysis for atrial fibrillation (AF) detection (single-lead ECG studies) Outlier studies omitted (all Holter studies) to assess the change to the overall atrial fibrillation (AF) detection rate

Sensitivity analysis

A number of outlier studies were observed in the meta-analysis that could influence the cumulative AF detection rate.37–40 44 Removal of these outlier studies resulted in a reduction in the overall AF detection rate in all Holter studies (table 3) and for 24 hours Holter studies (table 4). When these outlier studies were removed, the overall AF detection rate for 24 hours Holter was 3.86% (95% CI 2.88% to 4.83%), much lower than the detection rate by multiple intermittent ECG recordings using portable single lead devices (4.78%, 95% CI 3.58% to 5.97%). A cumulative meta-analysis (figure 5) did not show any significant variation in the AF detection rate over time using either Holter or single-lead ECG monitoring.
Table 3

Outlier studies omitted (all Holter studies) to assess the change to the overall atrial fibrillation (AF) detection rate

Study omittedOverall AF detection rate (%)95% CI (%)
Dangayach et al 37 5.274.17 to 6.38
Fonseca et al 39 5.264.15 to 6.36
Gunalp et al 38 5.324.21 to 6.42
Manina et al 40 5.114.03 to 6.20
Yadogawa et al 44 5.254.14 to 6.35
All studies excluded4.313.36 to 5.26
Table 4

Outlier studies omitted (24 hours Holter) to assess the change to the overall atrial fibrillation (AF) detection rate

Study omittedOverall AF detection rate (%)95% CI (%)
Fonseca et al 39 4.303.21 to 5.39
Gunalp et al 38 4.393.30 to 5.47
Yadogawa et al 44 4.303.22 to 5.38
All studies excluded3.862.88 to 4.83
Figure 5

Cumulative meta-analysis showing minimal variation in atrial fibrillation (AF) detection over time using Holter and single-lead ECG devices.

Outlier studies omitted (24 hours Holter) to assess the change to the overall atrial fibrillation (AF) detection rate Cumulative meta-analysis showing minimal variation in atrial fibrillation (AF) detection over time using Holter and single-lead ECG devices.

Publication bias

Publication bias was explored using a funnel plot of all included studies (see online supplementary figure 1). There was significant publication bias in both single-lead ECG device and Holter monitoring studies (Egger test, p=0.003 and p<0.001 respectively).

Quality of studies

A summary of the quality analysis (see online supplementary table 3) showed that overall quality of reporting was moderate. All studies described the primary objective of the trial and included a summary of the main findings. Detailed comorbidities of the study participants were only adequately reported in 28/52 (54%), and limitations were discussed in 35/52 (67%) of studies. Most had a very selective patient population, 31/52 (60%) were poststroke/TIA cohorts.

Discussion

Our study is the only systematic review that we are aware of that has studied the overall AF detection rate of single-lead portable ECG devices. The results of our systematic review suggest a linear relationship between monitoring time per patient and AF detection rate. Single timepoint screening has an approximate 1% AF detection rate, which can be increased to around 5% when multiple recordings are performed. We noted that approximately 19 min of intermittent monitoring produced similar detection rates to conventional 24 hours continuous Holter monitoring.

Early diagnosis of AF

AF creates a significant burden on both patients as well as the healthcare system. AF will continue to rise in incidence and the costs to the healthcare system will continue to increase, due to ageing, sedentariness and the prevalence of obesity and the metabolic syndrome.3 68 Early diagnosis offers the possibility for early initiation of treatment, which may reduce the occurrence of the complications and may lead to reduced hospital admissions and associated healthcare costs. Early treatment for AF can be achieved in different ways. Patients with subclinical AF have an increased risk of stroke and cardiovascular events, like those with established AF.12 69 Anticoagulation may help reduce the incidence of stroke in this cohort. The close relationship between metabolic syndrome and AF has encouraged research into the benefits of lifestyle intervention. Aggressive lifestyle intervention in patients with AF undergoing catheter ablation has been reported to lead to a reduction in symptom burden, improved quality of life and the need for repeat ablation procedures.10 It remains to be tested whether initiation of lifestyle intervention and aggressive risk factor modification following the early diagnosis of AF may be associated with positive LA remodelling and reduction of disease progression. Such a process may lead to additional health benefits, including reduction in cardiovascular risk and improvement in exercise capacity.

AF screening and feasibility

AF is a leading cause of stroke and heart failure in the community. As well as an association with increased all-cause mortality, it is associated with reduced quality of life. The availability of preventive therapies, including anticoagulation, has led to increasing recognition of the importance of AF screening for early diagnosis. However, AF screening shares the limitations of screening with other diagnostic tests. The screening tool must have high sensitivity, and needs to be inexpensive and cost-effective. We also need to minimise and have a method of addressing false positives. Current guidelines recommend opportunistic screening using pulse palpation and 12-lead ECG.11 In a previous systematic review, this was associated with a new AF detection rate of approximately 1%.5 Pulse palpation may be non-specific in patients with other irregular rhythms such as ventricular ectopy, and 12-lead ECG is only able to capture a single timepoint for screening. There are multiple other methods for AF detection. Continuous Holter monitoring is probably the most commonly used in clinical practice, especially in stroke cohorts. It has the potential advantage of assessing heart rhythm throughout the day and may be useful in detecting nocturnal subclinical AF. However, the disadvantages include the cost of Holter monitoring (especially for mass screening), the inconvenience of leads and electrodes (which may affect compliance) and typical limitation to 1–2 days of capture (as extended periods are more cumbersome and less cost-effective). Other event recorders are again expensive and limited to symptomatic patients. Extended period monitoring using implantable devices have shown promise in the cryptogenic stroke population (where many have been diagnosed with paroxysmal AF),70 but they are invasive and not feasible for mass screening. Portable single-lead ECG devices permit multiple 30–60 s recordings to be captured, and downloaded to a computer. These devices have several potential advantages over Holter monitoring. They are leadless and require finger contact (and are hence easy to use and acceptable to patients). They have a high degree of sensitivity for identifying AF.71–73 Most interface with a web-based cloud system where ECG rhythms can be wirelessly transferred to clinicians, allowing rapid analysis and diagnosis. The development of automated algorithms to detect AF is helpful for mass screening. In two small studies they have demonstrated superior AF detection compared with 24 hours Holter monitoring.66 67 Although screening using these portable devices are currently not in the latest AF guidelines, they may offer a feasible option for mass screening. Screening using these devices has been demonstrated to be cost-effective.74 75 We noted a moderate linear association between monitoring time and AF detection rate. Single timepoint screening for 30–60 s achieved an overall detection rate of approximately 1%. This is no better than what has been reported using pulse palpation or 12-lead ECG, hence does not add any incremental benefit in screening programmes.5 Multiple intermittent recordings improve AF detection; we found that at least 19 min of total monitoring should be performed to achieve detection rates similar to 24 Holter monitoring. The linear relationship between monitoring time and AF detection rate (R2=0.80) and the reproduction of AF detection rates of 24 hours Holter monitoring with only 12 min of intermittent monitoring was possible in our study only after exclusion of an outlier.64 Despite the inclusion of elderly participants with at least one risk factor for AF, the use of a validated single-lead ECG device and a prolonged monitoring period, that study had a lower AF detection rate (3.8%) than the remaining studies, even using a shorter monitoring period.53 56 57 Relatively low rates of adherence (only approximately 25% completed 2×30 s ECG recordings every week for the full year of monitoring) may be a potential explanation for the lower AF detection rate noted.64

Limitations

There are several challenges inherent in this meta-analysis of studies investigating AF detection. The most important is the target screening population. Most studies did not report the CHADS or CHA2DS2-VASC score, a history of previous stroke or other comorbidities. Consequently, it was difficult to ascertain if the risk profiles of patients in these studies were equivalent. Most Holter monitoring studies were performed in the stroke population—which is likely a population with higher AF risk than many studies using portable ECG devices, which recruited mainly healthy participants or those with AF risk factors from the community. The significant heterogeneity among both Holter and portable ECG device studies make it difficult to perform direct comparisons between both groups. The type/duration of monitoring and type of device used will also influence the overall AF detection rate and varied significantly between studies. There are several possible confounders which may not have been taken into account. The validity of the linear regression analysis comparing detection time and rate may be limited due to the significant differences in study population, study design and AF definitions. However, despite these limitations, the analysis may provide some important inferences into AF screening. Multiple intermittent ECG recordings achieved a similar AF detection rate to 24 hours Holter monitoring. This may suggest that in a similar cohort of patients with the same comorbidities, single-lead intermittent monitoring may be superior for AF detection. Compared with 24 hours continuous monitoring, single-lead portable ECG monitoring is more patient dependent. Good patient compliance is essential to obtain multiple readings across different timepoints which improves sensitivity. The analysis performed does not take into account patient compliance as this is difficult to assess and poorly reported across the individual studies. Most single-lead device manufacturers have proprietary automated AF detection algorithms, which were used for diagnosis. Not all of these algorithms have had rigorous testing and comparison to a reference standard. It is also difficult to distinguish AF from other supraventricular tachycardias using single-lead ECG devices as the P wave is often not readily discernible. The use of different automated algorithms makes AF definitions non-standardised and can potentially create issues with both overdiagnosis and underdiagnosis. There are other limitations in this analysis. The efficacy of intermittent monitoring is critically dependent on AF burden and density. All studies varied in their monitoring period and strategy. The linear regression model used was able to determine a total intermittent monitoring time, which produced similar AF detection rates to 24 hours continuous monitoring. However, it is difficult to translate the total monitoring time into an effective monitoring strategy. For example, we are unable to determine from our analysis if 12×60 s recordings over 12 consecutive days is different to 2×60 s recordings daily for six consecutive days. The definitions of AF also vary between studies. Many are based on individual physician interpretation and criteria for diagnosis were not explicitly specified. The duration of AF varied from 10 to 30 s between studies, although a cut-off of 30 s was the most widely adopted practice.

Conclusion

Single-lead portable ECG devices may offer an efficient screening option for AF compared with 24 hours Holter monitoring. Total monitoring time is related to AF detection and a total of 19 min may achieve a similar detection rate to 24 hours Holter monitoring.
  70 in total

1.  Atrial fibrillation and obesity an association of increasing importance.

Authors:  Nikolaos Dagres; Maria Anastasiou-Nana
Journal:  J Am Coll Cardiol       Date:  2010-05-25       Impact factor: 24.094

2.  Adverse prognosis of incidentally detected ambulatory atrial fibrillation. A cohort study.

Authors:  C Martinez; A Katholing; S B Freedman
Journal:  Thromb Haemost       Date:  2014-06-18       Impact factor: 5.249

3.  The feasibility of creating a checklist for the assessment of the methodological quality both of randomised and non-randomised studies of health care interventions.

Authors:  S H Downs; N Black
Journal:  J Epidemiol Community Health       Date:  1998-06       Impact factor: 3.710

4.  Optimal timing and duration of continuous electrocardiographic monitoring for detecting atrial fibrillation in stroke patients.

Authors:  Laurent Suissa; Sylvain Lachaud; Marie Hélène Mahagne
Journal:  J Stroke Cerebrovasc Dis       Date:  2012-02-18       Impact factor: 2.136

5.  Holter monitoring to detect silent atrial fibrillation in high-risk subjects: the Perugia General Practitioner Study.

Authors:  Valentina Salvatori; Cecilia Becattini; Stefano Laureti; Gregorio Baglioni; Fabrizio Germini; Piero Grilli; Francesco Guercini; Esmeralda Filippucci; Giancarlo Agnelli
Journal:  Intern Emerg Med       Date:  2015-05-06       Impact factor: 3.397

6.  Performance of handheld electrocardiogram devices to detect atrial fibrillation in a cardiology and geriatric ward setting.

Authors:  Lien Desteghe; Zina Raymaekers; Mark Lutin; Johan Vijgen; Dagmara Dilling-Boer; Pieter Koopman; Joris Schurmans; Philippe Vanduynhoven; Paul Dendale; Hein Heidbuchel
Journal:  Europace       Date:  2016-02-17       Impact factor: 5.214

7.  Enhanced detection of paroxysmal atrial fibrillation by early and prolonged continuous holter monitoring in patients with cerebral ischemia presenting in sinus rhythm.

Authors:  Raoul Stahrenberg; Mark Weber-Krüger; Joachim Seegers; Frank Edelmann; Rosine Lahno; Beatrice Haase; Meinhard Mende; Janin Wohlfahrt; Pawel Kermer; Dirk Vollmann; Gerd Hasenfuss; Klaus Gröschel; Rolf Wachter
Journal:  Stroke       Date:  2010-10-21       Impact factor: 7.914

8.  Prevalence and predictors of paroxysmal atrial fibrillation on Holter monitor in patients with stroke or transient ischemic attack.

Authors:  Osama Alhadramy; Thomas J Jeerakathil; Sumit R Majumdar; Emad Najjar; Jonathan Choy; Maher Saqqur
Journal:  Stroke       Date:  2010-10-14       Impact factor: 7.914

9.  Assessment of Remote Heart Rhythm Sampling Using the AliveCor Heart Monitor to Screen for Atrial Fibrillation: The REHEARSE-AF Study.

Authors:  Julian P J Halcox; Kathie Wareham; Antonia Cardew; Mark Gilmore; James P Barry; Ceri Phillips; Michael B Gravenor
Journal:  Circulation       Date:  2017-08-28       Impact factor: 29.690

10.  Paroxysmal atrial fibrillation in cryptogenic stroke.

Authors:  Neha S Dangayach; Kevin Kane; Majaz Moonis
Journal:  Ther Clin Risk Manag       Date:  2011-01-28       Impact factor: 2.423

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1.  2021 ISHNE/HRS/EHRA/APHRS Expert Collaborative Statement on mHealth in Arrhythmia Management: Digital Medical Tools for Heart Rhythm Professionals: From the International Society for Holter and Noninvasive Electrocardiology/Heart Rhythm Society/European Heart Rhythm Association/Asia-Pacific Heart Rhythm Society.

Authors:  Niraj Varma; Iwona Cygankiewicz; Mintu P Turakhia; Hein Heidbuchel; Yu-Feng Hu; Lin Yee Chen; Jean-Philippe Couderc; Edmond M Cronin; Jerry D Estep; Lars Grieten; Deirdre A Lane; Reena Mehra; Alex Page; Rod Passman; Jonathan P Piccini; Ewa Piotrowicz; Ryszard Piotrowicz; Pyotr G Platonov; Antonio Luiz Ribeiro; Robert E Rich; Andrea M Russo; David Slotwiner; Jonathan S Steinberg; Emma Svennberg
Journal:  Circ Arrhythm Electrophysiol       Date:  2021-02-12

2.  2021 ISHNE/HRS/EHRA/APHRS Collaborative Statement on mHealth in Arrhythmia Management: Digital Medical Tools for Heart Rhythm Professionals: From the International Society for Holter and Noninvasive Electrocardiology/Heart Rhythm Society/European Heart Rhythm Association/Asia Pacific Heart Rhythm Society.

Authors:  Niraj Varma; Iwona Cygankiewicz; Mintu P Turakhia; Hein Heidbuchel; Yufeng Hu; Lin Yee Chen; Jean-Philippe Couderc; Edmond M Cronin; Jerry D Estep; Lars Grieten; Deirdre A Lane; Reena Mehra; Alex Page; Rod Passman; Jonathan P Piccini; Ewa Piotrowicz; Ryszard Piotrowicz; Pyotr G Platonov; Antonio Luiz Ribeiro; Robert E Rich; Andrea M Russo; David Slotwiner; Jonathan S Steinberg; Emma Svennberg
Journal:  Cardiovasc Digit Health J       Date:  2021-01-29

3.  Feasible approaches and implementation challenges to atrial fibrillation screening: a qualitative study of stakeholder views in 11 European countries.

Authors:  Daniel Engler; Coral L Hanson; Lien Desteghe; Giuseppe Boriani; Søren Zöga Diederichsen; Ben Freedman; Elena Palà; Tatjana S Potpara; Henning Witt; Hein Heidbuchel; Lis Neubeck; Renate B Schnabel
Journal:  BMJ Open       Date:  2022-06-21       Impact factor: 3.006

4.  Diagnostic Accuracy of a Smartphone-Operated, Single-Lead Electrocardiography Device for Detection of Rhythm and Conduction Abnormalities in Primary Care.

Authors:  Jelle C L Himmelreich; Evert P M Karregat; Wim A M Lucassen; Henk C P M van Weert; Joris R de Groot; M Louis Handoko; Robin Nijveldt; Ralf E Harskamp
Journal:  Ann Fam Med       Date:  2019-09       Impact factor: 5.166

Review 5.  Remote and wearable ECG devices with diagnostic abilities in adults: A state-of-the-science scoping review.

Authors:  Zeineb Bouzid; Salah S Al-Zaiti; Raymond Bond; Ervin Sejdić
Journal:  Heart Rhythm       Date:  2022-03-09       Impact factor: 6.779

6.  Automated recognition of objects and types of forceps in surgical images using deep learning.

Authors:  Yoshiko Bamba; Shimpei Ogawa; Michio Itabashi; Shingo Kameoka; Takahiro Okamoto; Masakazu Yamamoto
Journal:  Sci Rep       Date:  2021-11-19       Impact factor: 4.379

7.  Screening of unknown atrial fibrillation through handheld device in the elderly.

Authors:  Francesco Rivezzi; Riccardo Vio; Claudio Bilato; Leopoldo Pagliani; Giampaolo Pasquetto; Salvatore Saccà; Roberto Verlato; Federico Migliore; Sabino Iliceto; Vito Bossone; Emanuele Bertaglia
Journal:  J Geriatr Cardiol       Date:  2020-08       Impact factor: 3.327

8.  Improving the quality of care for patients with or at risk of atrial fibrillation: an improvement initiative in UK general practices.

Authors:  Yewande Adeleke; Dionne Matthew; Bradley Porter; Thomas Woodcock; Jayne Yap; Sophia Hashmy; Ammu Mathew; Ron Grant; Agnes Kaba; Brigitte Unger-Graeber; Sadia Khan; Derek Bell; Martin R Cowie
Journal:  Open Heart       Date:  2019-10-15

9.  Opportunistic screening for atrial fibrillation with a single lead device in geriatric patients.

Authors:  Lennaert Ar Zwart; René Wmm Jansen; Jacob H Ruiter; Tjeerd Germans; Suat Simsek; Martin Ew Hemels
Journal:  J Geriatr Cardiol       Date:  2020-03       Impact factor: 3.327

10.  Pharmacy-Based Opportunistic Atrial Fibrillation Screening at a Community Level: A Real-Life Study.

Authors:  Stephane Olindo; Pauline Renou; François Martial; Nathalie Heyvang; Lea Milan; Sylvain Ledure; François Rouanet
Journal:  Healthcare (Basel)       Date:  2022-01-04
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