2024
DOI: 10.1038/s41598-024-76569-6
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Optimized robust learning framework based on big data for forecasting cardiovascular crises

Nadia G. Elseddeq,
Sally M. Elghamrawy,
Ali I. Eldesouky
et al.

Abstract: Numerous Deep Learning (DL) scenarios have been developed for evolving new healthcare systems that leverage large datasets, distributed computing, and the Internet of Things (IoT). However, the data used in these scenarios tend to be noisy, necessitating the incorporation of robust pre-processing techniques, including data cleaning, preparation, normalization, and addressing imbalances. These steps are crucial for generating a robust dataset for training. Designing frameworks capable of handling such data with… Show more

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