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Application of artificial intelligence ensemble learning model in early prediction of atrial fibrillation.

Cai WuMaxwell HwangTian-Hsiang HuangYen-Ming J ChenYiu-Jen ChangTsung-Han HoJian HuangKao-Shing HwangWen-Hsien Ho
Published in: BMC bioinformatics (2021)
In feature extraction, this paper combined P-wave morphology parameters and heart rate variability parameters as input parameters for model training, and validated the value of the proposed parameters combination for the improvement of the model's predicting effect. In the calculation of the P-wave morphology parameters, the hybrid Taguchi-genetic algorithm was used to obtain more accurate Gaussian function fitting parameters. The prediction model was trained using the Stacking ensemble learning method, so that the model accuracy had better results, which can further improve the early prediction of atrial fibrillation.
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