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bibliographicCitation Yang L, Zhang J, Yu J, Yu Z, Hao X, Gao F, Zhou C. Predicting plasma concentration of quetiapine in patients with depression using machine learning techniques based on real-world evidence. Expert Review of Clinical Pharmacology. 2023 Jul 25;16(8):741–50. doi: 10.1080/17512433.2023.2238604.
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title Predicting plasma concentration of quetiapine in patients with depression using machine learning techniques based on real-world evidence
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