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. 2022 Mar 30;111(9):1010–1017. doi: 10.1007/s00392-022-02012-3

Table 1.

Machine learning methods and corresponding applications in the detection and management of atrial fibrillation

Machine learning method Description Example application Reference
 Traditional machine learning
Cox regression Probability distribution estimating time to a pre-specified event Prediction of post-ablation AF recurrence [55]
 Support vector machine Utilizes hyperplane to separate two classes non-linearly AF detection through HRV analysis of photoplethysmography readings [23]
 Random forest Average of hierarchical decision trees’ interpretation Locating re-entrant drivers in AF [56]
Deep learning
 Convolutional neural network Mimics biological neural networks by incorporating nodes processing data in a hierarchical fashion Detection of AF from a sinus-rhythm 12-lead ECG [32]

AF atrial fibrillation, HRV heart rate variability