Prototyping neural networks to evaluate the risk of adverse cardiovascular outcomes in the population
Aim. To develop a neural network basis for the design of artificial intelligence software to predict adverse cardiovascular outcomes in the population.Materials and Methods. Neural networks were designed using the database of 1,525 participants of PURE (Prospective Urban Rural Epidemiology Study), a...
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| Main Authors: | L. A. Bogdanov, E. A. Komossky, V. V. Voronkova, D. E. Tolstosheev, G. V. Martsenyuk, A. S. Agienko, E. V. Indukaeva, A. G. Kutikhin, D. P. Tsygankova |
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| Format: | Article |
| Language: | Russian |
| Published: |
Kemerovo State Medical University
2021-12-01
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| Series: | Фундаментальная и клиническая медицина |
| Subjects: | |
| Online Access: | https://fcm.kemsmu.ru/jour/article/view/468 |
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