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Application of a Bayesian method to monitor and adjust vancomycin dosage regimens.

机译:贝叶斯方法在监测和调整万古霉素剂量方案中的应用。

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摘要

A Bayesian method for monitoring vancomycin concentrations and adjusting regimens in patients with unstable renal function by using a two-compartment population model was evaluated with a personal computer. The population model was derived from data from 12 cardiac outpatients who received single doses of vancomycin. The performance of the method was then tested in 27 acutely ill patients who received multiple doses of vancomycin. Significant renal impairment was observed in 15 patients. Renal function changed in 15 patients. The vancomycin concentrations in the patients with changing renal function were not at steady state during the observation times. Two concentrations in serum (peak and then trough, or trough and then peak) were fitted along with the population model to individualize the parameter values for each patient. All the subsequent concentrations in serum for each patient were then predicted by using the parameter values for each patient. Future concentrations of 118 serum samples were predicted. The mean absolute prediction error was 3.6 +/- 4.5 micrograms/ml, and the mean prediction error was -0.7 +/- 5.3 micrograms/ml. These results confirm that a two-compartment pharmacokinetic model can be sufficiently individualized with the knowledge of just two concentrations of drug in patient serum; it is possible to predict closely subsequent concentrations in serum, and dosing regimens for individual patients can be well adjusted to achieve the chosen therapeutic goals.
机译:使用个人计算机对两室人群模型进行贝叶斯方法监测万古霉素浓度并调整肾功能不稳定患者的治疗方案。人口模型来自12名接受单剂量万古霉素的心脏病门诊患者的数据。然后在接受多剂万古霉素的27名急性病患者中测试了该方法的性能。在15名患者中观察到明显的肾功能损害。肾功能改变15例。在观察期间,肾功能改变的患者中万古霉素的浓度未处于稳定状态。将两个浓度的血清浓度(峰值然后为低谷,或为最低然后是峰值)与总体模型拟合,以针对每个患者个性化参数值。然后通过使用每个患者的参数值来预测每个患者的所有后续血清浓度。预计将来将有118个血清样品的浓度。平均绝对预测误差为3.6 +/- 4.5微克/毫升,平均预测误差为-0.7 +/- 5.3微克/毫升。这些结果证实,只要知道患者血清中只有两种浓度的药物,就可以充分个性化两室药代动力学模型。可以精确预测随后的血清浓度,并且可以对各个患者的给药方案进行适当调整,以实现所选的治疗目标。

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