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A multi-label learning prediction model for heart failure in patients with atrial fibrillation based on expert knowledge of disease duration

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Abstract

Patients with atrial fibrillation (AF) are prone to complications such as heart failure with preserved ejection fraction (HFpEF), which accelerates the progress of the disease and can lead to death. It is of great practical importance to predict the onset timing and probability of HFpEF, which can guide the personalized treatment of patients with AF and improve their survival rate. However, there are no models for predicting HFpEF in patients with AF at present. A multi-label learning prediction model based on expert knowledge of disease duration is proposed in this paper to achieve accurate prediction of HFpEF in patients with AF. First, the expert knowledge of the relationship between the duration of disease progression and outcome is adopted to divided the duration of AF disease into different periods. Next, multi-label decision tree models were used to build different multi-label prediction models for each stage. With the multi-label design, the model can learn the intrinsic correlation between different labels and achieve dual-task prediction of HFpEF attack time and probability. Finally, the results from different periods were fused and output. The proposed method considers the time dependence of medical data and the development pattern of the disease, which realizes 0.0352 hloss, 0.8571 micro-F1 score, and 0.90 average micro-AUC. The experimental results show that the proposed model achieved better prediction of onset time and outcomes in HFpEF patients, which will help the prognosis and personalize the treatment of patients.

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Acknowledgments

This work was supported by the National Natural Science Foundation of China (61973067, 61903071); Fundamental Research Funds for the Central Universities (N2104031).

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Correspondence to Hongru Li.

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Huang, Y., Zhang, R., Li, H. et al. A multi-label learning prediction model for heart failure in patients with atrial fibrillation based on expert knowledge of disease duration. Appl Intell 53, 20047–20058 (2023). https://doi.org/10.1007/s10489-023-04487-7

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