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Machine learning prediction models for clinical management of blood-borne viral infections: a systematic review of current applications and future impact
4
Zitationen
8
Autoren
2023
Jahr
Abstract
Promising approaches for ML prediction models in blood-borne viral infections were identified, but the lack of robust validation, interpretability/explainability, and poor quality of reporting hampered their clinical relevance. Our findings highlight important considerations that can inform standard reporting guidelines for ML prediction models in the future (e.g., TRIPOD-AI), and provides critical data to inform robust evaluation of the models.
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