| Literature DB >> 30835243 |
Yong-Yan Fan1,2, Yan-Guang Li2, Jian Li2, Wen-Kun Cheng2, Zhao-Liang Shan2, Yu-Tang Wang1,3, Yu-Tao Guo2.
Abstract
BACKGROUND: Atrial fibrillation (AF) is the most common sustained cardiac arrhythmia. The asymptomatic nature and paroxysmal frequency of AF lead to suboptimal early detection. A novel technology, photoplethysmography (PPG), has been developed for AF screening. However, there has been limited validation of mobile phone and smart band apps with PPG compared to 12-lead electrocardiograms (ECG).Entities:
Keywords: accuracy; algorithm; atrial fibrillation; detection; mobile phone; photoplethysmography; smart band
Mesh:
Year: 2019 PMID: 30835243 PMCID: PMC6423467 DOI: 10.2196/11437
Source DB: PubMed Journal: JMIR Mhealth Uhealth ISSN: 2291-5222 Impact factor: 4.773
Figure 1A prototype for atrial fibrillation detection using HUAWEI mobile phones and smart bands. A: A patient is simultaneously checked with HUAWEI mobile phones (Mate 9, Honor 7X), HUAWEI smart bands (Band 2), and 12-lead ECG. B: A fingertip is placed in contact with the built-in camera lens of a HUAWEI Mate 9 mobile phone and is illuminated by the adjacent LED flash. C: A screenshot of the pulse waveform data collection app (Heartbeats) running on a HUAWEI Mate 9 mobile phone. D: Representative pulse waveform recording from a patient with normal sinus rhythm. E: Representative pulse waveform recording from a patient with persistent atrial fibrillation.
Figure 2A flowchart of the study. AF: atrial fibrillation; ECG: electrocardiogram; SR: sinus rhythm.
Baseline characteristics of participants (N=108).
| Characteristics | Sinus rhythm (n=56) | Persistent AFa (n=52) | ||
| Age (years), mean (SD) | 58 (14.78) | 66.56 (13.17) | .002 | |
| Female, n (%) | 26 (46) | 19 (37) | .30 | |
| Body mass index (kg/m2), mean (SD) | 24.44 (2.88) | 25.98 (3.97) | .02 | |
| Heart failure, n (%) | 2 (4) | 12 (23) | .006 | |
| Hypertension, n (%) | 29 (52) | 35 (67) | .10 | |
| Diabetes mellitus, n (%) | 15 (27) | 17 (33) | .50 | |
| Previous stroke/SEb/TIAc, n (%) | 4 (7) | 9 (17) | .19 | |
| Coronary artery disease, n (%) | 25 (45) | 19 (37) | .39 | |
| Vascular disease, n (%) | 31 (55) | 37 (71) | .09 | |
| COPDd, n (%) | 1 (2) | 3 (6) | .56 | |
| Renal dysfunction, n (%) | 2(4) | 8 (15) | .07 | |
| Hepatic dysfunction, n (%) | 0 | 2 (4) | .23 | |
| Sleep apnea, n (%) | 2 (4) | 6 (12) | .22 | |
| Hyperthyroidism, n (%) | 1 (2) | 4 (8) | .32 | |
| Current smoking, n (%) | 16 (29) | 17 (33) | .64 | |
| Current drinking, n (%) | 13 (21) | 11 (23) | .80 | |
| CHA2DS2-VASce score, median (IQRf) | 2 (1-3.75) | 3 (2-5) | .003 | |
| HAS-BLEDg score, median (IQR) | 1 (0-2) | 2 (1-2) | .005 | |
| Oral anticoagulant | 10 (18) | 40 (77) | <.001 | |
| Antiplatelet drug | 15 (27) | 23 (44) | .06 | |
| Calcium channel blockers | 17 (30) | 13 (25) | .54 | |
| ACEI/ARBh | 21 (38) | 16 (31) | .46 | |
| Diuretic | 5 (9) | 13 (25) | .03 | |
| Digoxin | 3 (5) | 11 (21) | .02 | |
| Class I | 6 (11) | 2 (4) | .32 | |
| Beta blocker | 27 (48) | 34 (65) | .07 | |
| Class III | 3 (5) | 20 (38) | <.001 | |
| Class IV | 3 (5) | 3 (6) | >.99 | |
aAF: atrial fibrillation.
bSE: systemic arterial embolism.
cTIA: transient ischemic attack.
dCOPD: chronic obstructive pulmonary disease.
eCHA2DS2-VASc: congestive heart failure, hypertension, age ≥75 years, diabetes mellitus, stroke (doubled), vascular disease, age 65-74, female sex.
fIQR: interquartile range.
gHAS-BLED: hypertension, abnormal renal function, abnormal liver function, stroke, bleeding, labile INR, age >65 years, drugs or alcohol.
hACEI/ARB: angiotensin-converting-enzyme inhibitor, angiotensin receptor blockers.
Detailed diagnostic performance of the photoplethysmography technology for atrial fibrillation screening in different smart devices.
| Index | Smart bands | Mobile phones | Mobile phone 1 | Mobile phone 2 |
| Sensitivity, % (95% CI) | 95.36 (92.00-97.40) | 94.96 (91.51-97.11) | 94.41 (88.91-97.38) | 95.56 (90.16-98.18) |
| Specificity, % (95% CI) | 99.70 (98.08-99.98) | 99.70 (98.07-99.98) | 100 (97.20-100) | 99.40 (96.18-99.97) |
| PPVa, % (95% CI) | 99.63 (97.61-99.98) | 99.62 (97.59-99.98) | 100 (96.55-100) | 99.23 (95.16-99.96) |
| NPVb, % (95% CI) | 96.24 (93.50-97.90) | 95.95 (93.15-97.68) | 95.43 (90.88-97.86) | 96.49 (92.17-98.57) |
| Accuracy, % (95% CI) | 97.72 (96.11-98.70) | 97.55 (95.89-98.57) | 97.42 (94.78-98.80) | 97.67 (95.05-98.97) |
aPPV: positive predictive value.
bNPV: negative predictive value.
Data from the literature on atrial fibrillation (AF) detection with different technologies.
| Study, year, and population studied | AF detection protocol | Sensitivity, % | Specificity, % | PPVa, % | NPVb, % | |
| 76 patients before and after cardioversion | An iPhone 4S, an algorithm combining RMSSDc and ShEd | 96.2 | 97.5 | —e | — | |
| 1013 patients | Cardiio Rhythm mobile phone app | 92.9 | 97.7 | 53.1 | 99.8 | |
| 1013 patients | AliveCor automated algorithm | 71.4 | 99.4 | 76.9 | 99.2 | |
| 80 consecutive patients | An iPhone 4S, an algorithm combining RMSSD and ShE | 80 | 95 | — | — | |
| 80 consecutive patients | An iPhone 4S, an algorithm combining RMSSD and PPAf | 95 | 95 | — | — | |
| 80 consecutive patients | An iPhone 4S, an algorithm combining ShE and PPA | 50 | 95 | — | — | |
| 97 patients before and after electrical cardioversion | An iPhone, Cardiio Rhythm mobile app | 93.1 | 90.9 | 92.2 | 92.0 | |
| 100 patients before and after cardioversion | Kardia Band from AliveCor paired with an Apple Smartwatch, AliveCor automated algorithm | 93 | 84 | — | — | |
| 51 sedentary participants undergoing cardioversion | Smartwatch PPGg coupled with a deep neural network | 98 | 90.2 | 90.9 | 97.8 | |
| 1617 ambulatory participants | Smartwatch PPG coupled with a deep neural network | 67.7 | 67.6 | 7.9 | 98.1 | |
aNPV: negative predictive value.
bPPV: positive predictive value.
cRMSSD: root mean square of successive difference of RR intervals.
dShE=Shannon entropy.
eMissing data.
fPPA: Poincaré plot analysis.
gPPG: photoplethysmography.