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Therapeutic drug dosing prediction using adaptive models and artificial neural networks

机译:使用自适应模型和人工神经网络的治疗药物剂量预测

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Using process control approaches, pharmacokinetic models are developed. All models presented are based on the one-compartment model. These neural network-based and adaptive versions of linear, nonlinear, and time-dependent models are tested on data sets collected from hemodialysis patients receiving anti-coagulant heparin during treatment. Results show that increased model complexity ensures improved quality of identification, while it decreases the initial quality of estimation.
机译:使用过程控制方法,开发了药代动力学模型。提出的所有模型均基于一室模型。这些线性,非线性和时间相关模型的基于神经网络的自适应版本在从治疗期间接受抗凝肝素的血液透析患者收集的数据集上进行了测试。结果表明,增加的模型复杂度可确保提高识别质量,同时会降低估计的初始质量。

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