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Artificial intelligence in predicting chronic kidney disease prognosis. A systematic review and meta-analysis
14
Zitationen
2
Autoren
2024
Jahr
Abstract
This study demonstrates the promising potential of AI models in predicting CKD progression. However, further efforts are needed to optimize model performance, particularly in balancing sensitivity and specificity to ensure generalizability across diverse populations. Limitations of this study include the potential for overfitting in certain AI models due to imbalanced datasets. The high heterogeneity and the lack of standardized predictors limit the generalizability of findings across different populations.
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