Machine learning approaches as an alternative to traditional statistical methods in cardiovascular risk prediction

Published: 29 September 2021
Abstract Views: 391
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Machine Learning algorithms have proven promising methodologies in improving Cardiovascular (CV) risk predictors based on traditional statistics. In the present work, two case studies are reported: CV risk prediction in patients affected by Inflammatory Arthritis, with attention to Psoriatic Arthritis, and patients who experienced Acute Coronary Syndrome.

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Sperti, M., D’Ascenzo, F. ., Navarini, L., Di Benedetto, G., Afeltra, A., Giacomelli, R., & Deriu, M. A. (2021). Machine learning approaches as an alternative to traditional statistical methods in cardiovascular risk prediction. Biomedical Science and Engineering, 2(1). https://doi.org/10.4081/bse.195

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