Physicians and Machine-Learning Algorithm Performance in Predicting Left-Ventricular Systolic Dysfunction from a Standard 12-Lead-Electrocardiogram.
Tomer GolanyKira RadinskyNatalia KofmanIlya LitovchikRevital YoungAntoinette MonayerItamar LoveFaina TziporinIdo MinhaYakir YehudaTomer Ziv-BaranShmuel FuchsSa'ar MinhaPublished in: Journal of clinical medicine (2022)
Early detection of left ventricular systolic dysfunction (LVSD) may prompt early care and improve outcomes for asymptomatic patients. Standard 12-lead ECG may be used to predict LVSD. We aimed to compare the performance of Machine Learning Algorithms (MLA) and physicians in predicting LVSD from a standard 12-lead ECG. By utilizing a dataset of 13,820 pairs of ECGs and echocardiography, a deep residual convolutional neural network was trained for predicting LVSD (ejection fraction (EF) < 50%) from ECG. The ECGs of the test set ( n = 850) were assessed for LVSD by the MLA and six physicians. The performance was compared using sensitivity, specificity, and C-statistics. The interobserver agreement between the physicians for the prediction of LVSD was moderate (κ = 0.50), with average sensitivity and specificity of 70%. The C-statistic of the MLA was 0.85. Repeating this analysis with LVSD defined as EF < 35% resulted in an improvement in physicians' average sensitivity to 84% but their specificity decreased to 57%. The MLA C-statistic was 0.88 with this threshold. We conclude that although MLA outperformed physicians in predicting LVSD from standard ECG, prior to robust implementation of MLA in ECG machines, physicians should be encouraged to use this approach as a simple and readily available aid for LVSD screening.
Keyphrases
- primary care
- left ventricular
- machine learning
- ejection fraction
- aortic stenosis
- heart rate variability
- heart failure
- heart rate
- deep learning
- convolutional neural network
- blood pressure
- healthcare
- end stage renal disease
- acute myocardial infarction
- type diabetes
- cardiac resynchronization therapy
- chronic kidney disease
- oxidative stress
- quality improvement
- newly diagnosed
- computed tomography
- left atrial
- palliative care
- acute coronary syndrome
- peritoneal dialysis
- prognostic factors
- aortic valve
- coronary artery disease
- chronic pain