| Literature DB >> 34534279 |
Zachi I Attia1, David M Harmon2, Elijah R Behr3,4, Paul A Friedman1.
Abstract
Artificial intelligence (AI) has given the electrocardiogram (ECG) and clinicians reading them super-human diagnostic abilities. Trained without hard-coded rules by finding often subclinical patterns in huge datasets, AI transforms the ECG, a ubiquitous, non-invasive cardiac test that is integrated into practice workflows, into a screening tool and predictor of cardiac and non-cardiac diseases, often in asymptomatic individuals. This review describes the mathematical background behind supervised AI algorithms, and discusses selected AI ECG cardiac screening algorithms including those for the detection of left ventricular dysfunction, episodic atrial fibrillation from a tracing recorded during normal sinus rhythm, and other structural and valvular diseases. The ability to learn from big data sets, without the need to understand the biological mechanism, has created opportunities for detecting non-cardiac diseases as COVID-19 and introduced challenges with regards to data privacy. Like all medical tests, the AI ECG must be carefully vetted and validated in real-world clinical environments. Finally, with mobile form factors that allow acquisition of medical-grade ECGs from smartphones and wearables, the use of AI may enable massive scalability to democratize healthcare. Published on behalf of the European Society of Cardiology. All rights reserved.Entities:
Keywords: Artificial intelligence; Digital health; Electrocardiograms; Machine learning
Mesh:
Year: 2021 PMID: 34534279 PMCID: PMC8500024 DOI: 10.1093/eurheartj/ehab649
Source DB: PubMed Journal: Eur Heart J ISSN: 0195-668X Impact factor: 29.983
Summary of artificial intelligence electrocardiogram algorithms and their performance and characteristics
| Model | Author/Group | Test geography hospital vs. development | Prospective or retrospective | Number of patients tested | Disease prevalence (%) | Description of controls | Hardware specification (12 lead vs. other; specify manufactures/performance of 12 lead) | Bias analysis: population reporting (age, sex, race, other) | AUC | Sensitivity (%) | Specificity (%) |
|---|---|---|---|---|---|---|---|---|---|---|---|
| LVSD/HF |
Attia Mayo | All Mayo Clinic Sites | Retrospective | 52 870 | 7.8 | Low EF confirmed by TTE | 12 Lead ECG (GE-Marquette) | No formal analysis | 0.93 | 86.3 | 85.7 |
| LVSD/HF |
Attia Mayo | All Mayo Clinic Sites | Prospective | 3874 | 7.0 | Low EF confirmed by TTE or HF prediction by NT-proBNP | 12 Lead ECG (GE-Marquette) | No formal analysis | 0.918 | 82.5 | 86.8 |
| LVSD/HF |
Adedinsewo Mayo | All Mayo Clinic Sites | Retrospective | 1606 | 10.2 | Low EF confirmed by TTE | 12 Lead ECG (GE-Marquette) | Age, Sex | 0.89 | 73.8 | 87.3 |
| LVSD/HF |
Noseworthy Mayo | All Mayo Clinic Sites | Retrospective | 52 870 | 7.8 | Low EF confirmed by TTE | 12 Lead ECG (GE-Marquette) | Race | >0.93 in all groups tested | — | — |
| LVSD/HF |
Attia Mayo | Mayo Rochester | Prospective | 100 | 7 | Low EF confirmed by TTE | AI-enhanced ECG-enabled stethoscope (Eko); single lead | No formal analysis | 0.906 | — | — |
| LVSD/HF |
Attia Mayo/Multi-Institution |
Know Your Heart Sites (Russia) | Retrospective | 4277 | 0.6 | Low EF confirmed by TTE | 12 Lead ECG (Cardiax; IMED Ltd, Hungary) | Age, sex | 0.82 | 26.9 | 97.4 |
| LVSD/HF |
Cho Sejong/Korea | Mediplex/Sejong (Korea) | Retrospective |
IV-2908 EV-4176 | 6.8 | Low EF confirmed by echo | 12 Lead ECG (Page Writer Cardiograph; Philips, Netherlands) | Age, sex, obesity |
IV-0.913 EV-0.961 |
IV-90.5 EV-91.5 |
IV-75.6 EV-91.1 |
| LVSD/HF |
Cho Sejong/Korea | Mediplex/Sejong (Korea) | Retrospective |
IV-2908 EV-4176 | 6.8 | Low EF confirmed by echo | Single lead (LI) from 12 lead ECG (Page Writer Cardiograph; Philips, Netherlands) | Performance of all single leads |
IV-0.874 EV-0.929 |
IV-93.2 EV-92.1 |
IV-63.2 EV-82.1 |
| LVSD/HF |
Kwon Sejong/Korea | Mediplex/Sejong (Korea) | Retrospective |
IV-3378 EV-5901 |
IV-9.7 EV-4.2 | Low EF confirmed by echo | 12 Lead ECG (Page Writer Cardiograph; Philips, Netherlands) | No formal analysis |
IV-0.843 EV-0.889 |
IV-n/a EV-90 |
IV-n/a EV-60.4 |
| HCM |
Ko Mayo | All Mayo Clinic Sites | Retrospective | 13 400 | 4.6 | Sex/age matched | 12 Lead ECG (GE-Marquette) | Age, sex, ECG finding | 0.96 | 87 | 90 |
| HCM |
Rahman Hopkins Queens (CA) |
Hopkins Baltimore | Retrospective | 762 | 29.0 | Patients with ICD and CM diagnosis | 12 Lead ECG (unspecified) | No formal analysis |
RF-0.94 SVM-0.94 |
RF-87 SVM-0.91 |
RF-92 SVF-0.91 |
| Hyperkalaemia |
Galloway Mayo | All Mayo Clinic Sites | Retrospective |
MN-50 099 AZ-5855 FL-6011 |
MN-2.6 AZ-4.6 FL-4.8 | Confirmation by serum potassium | 12 Lead ECG (GE-Marquette); 2 Lead evaluation LI/LII | No formal analysis |
MN-0.883 AZ-0.853 FL-0.860 |
MN-90.2 AZ-88.9 FL-91.3 |
MN-54.7 AZ-55.0 FL-54.7 |
| Sex and age >40 years |
Attia Mayo | All Mayo Clinic Sites | Retrospective | 275 056 | n/a | Confirmed age/sex in medical record | 12 Lead ECG (GE-Marquette) | Co-morbidity impact on ECG age |
Sex-0.968 Age-0.94 |
Sex-n/a Age-87.8 |
Sex-n/a Age-86.8 |
| Afib |
Attia Mayo | All Mayo Clinic Sites | Retrospective | 36 280 | 8.4 | Patients without Afib on prior EKG | 12 Lead ECG (GE-Marquette) | Analysis with ‘window of interest’ | 0.87 | 79.0 | 79.5 |
| Afib |
Tison UCSF | Remote study; UCSF | Prospective | 9750 | 3.4 | 12 lead EKG diagnosis of Afib | Apple Watch photoplethysmography (Apple Inc.) | No formal analysis | 0.97 | 98.0 | 90.2 |
| Afib |
Hill UK-Multi-institution | UK | Retrospective | 2 994 837 | 3.2 | CHARGE-AF score | Time-varying neural network; based on clinic data and risk scores | No formal analysis | 0.827 | 75.0 | 74.9 |
| Afib |
Jo Sejong/Korea | Multiple sites (Korea) | Retrospective |
IV-6287 EV-38 018 |
IV-13 EV-6.0 | Patients without afib | 12 lead, 6 lead, and single lead ECG (unspecified) | No formal analysis | IV/EV for 12, 6, single lead all >0.95 | All >98% | All >99% |
| Afib |
Poh Boston | Hong Kong | Retrospective | 1013 | 2.8 | Patients without afib | Photoplethysmographic pulse waveform | No formal analysis | 0.997 | 97.6 | 96.5 |
| Afib | Raghunath | Geisinger Clinic, PA, USA | Retrospective | 1.6M | Patients without afib | 12 lead ECG | Age, sex, race analysed | 0.85 | 69 | 81 | |
| Long QT (>500 ms) |
Giudicessi Mayo | Mayo Clinic Rochester | Both; | 686 | 3.6 | QT expert/lab over-read of 12 lead ECGs | 6 lead smartphone-enabled ECG (AliveCor Kardia Mobile 6L) | No formal analysis | 0.97 | 80.0 | 94.4 |
| Long QT |
Bos Mayo | Mayo Clinic Rochester | Retrospective | 2059 | 47 | Patients without LQTS | 12 Lead ECG (GE-Marquette) | LQTS genotype subgroup analysis | 0.900 | 83.7 | 80.6 |
| Multiple Pathologies |
Tison UCSF | UCSF | Retrospective | 36 816 (ECGs) |
HCM-27.4 PAH-29.8 Amyloid-28.3 MVP-21.0 | Individual pathologies determined by standard care (i.e. echo, biopsy) | 12 Lead ECG (GE-Marquette) | No formal analysis |
HCM-0.91 PAH-0.94 Amyloid-0.86 MVP-0.77 | — | — |
| Mod-Sev AS |
Cohen-Shelly Mayo | All Mayo Clinic Sites | Retrospective | 102 926 | 3.7 | Mod-Sev AS confirmed by TTE | 12 Lead ECG (GE-Marquette) | Age, sex | 0.85 | 78 | 74 |
| Significant AS |
Kwon Sejong/Korea | Mediplex/Sejong (Korea) | Retrospective |
IV-6453 EV-10 865 |
IV-3.8 EV-1.7 | Significant AS confirmed by echo | 12 Lead ECG (Unspecified) | No formal analysis |
IV-0.884 EV-0.861 |
IV-80.0 EV-80.0 |
IV-81.4 EV-78.3 |
| Significant AS |
Kwon Sejong/Korea | Mediplex/Sejong (Korea) | Retrospective |
IV-6453 EV-10 865 |
IV-3.8 EV-1.7 | Significant AS confirmed by echo | Single lead (L2) from 12 lead ECG (unspecified) | No formal analysis |
IV-0.845 EV-0.821 | — | — |
| Mod-Sev MR |
Kwon Sejong/Korea | Mediplex/Sejong (Korea) | Retrospective |
IV-3174 EV-10 865 |
IV-n/a EV-3.9 | Mod-Sev MR confirmed by echo | 12 Lead ECG (Unspecified) | No formal analysis |
IV 0.816 EV 0.877 |
IV 0.900 EV 0.901 |
IV 0.533 EV 0.699 |
| Mod-Sev MR |
Kwon Sejong/Korea | Mediplex/Sejong (Korea) | Retrospective |
IV-3174 EV-10 865 |
IV-n/a EV 3.9 | Mod-Sev MR confirmed by echo | Single lead (aVR) from 12 lead ECG (unspecified) | No formal analysis |
IV 0.758 EV 0.850 |
IV 0.900 EV 0.901 |
IV 0.408 EV 0.560 |
Afib, atrial fibrillation; AI, artificial intelligence; AUC, area under the curve; AZ, Arizona; CA, Canada; ECG, electrocardiogram; echo, echocardiography; EV, external validation; FL, Florida; HCM, hypertrophic cardiomyopathy; HF, heart failure; ICD, implantable cardiac defibrillator; IV, internal validation; LVSD, left ventricular systolic dysfunction; LQTS, long QT syndrome; MN, Minnesota; mod-sev AS, moderate to severe aortic stenosis; mod-sev MR, moderate to severe mitral regurgitation; MVP, mitral valve prolapse; NT-proBNP, N-terminus of brain natriuretic peptide; PAH, pulmonary arterial hypertension; RF, random forest classifier; SVM, support vector machine classifier; TTE, transthoracic echocardiogram.