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Hybrid Regression Models for Predicting Hydration: A Case Study in Pediatric Hemodialysis Cover

Hybrid Regression Models for Predicting Hydration: A Case Study in Pediatric Hemodialysis

Open Access
|Sep 2025

References

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Language: English
Page range: 212 - 222
Submitted on: Jul 21, 2024
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Accepted on: Jul 14, 2025
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Published on: Sep 10, 2025
In partnership with: Paradigm Publishing Services
Publication frequency: Volume open

© 2025 Suzana Djordjevic, Mirjana Kostic, Blerina Zanaj, Danijela Milosevic, Vladimir Mladenovic, published by Slovak Academy of Sciences, Institute of Measurement Science
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 License.