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Therapeutic drug monitoring of cyclosporine and area under the curve prediction using a single time point strategy: appraisal using peak concentration data

机译:使用单一时间点策略在曲线预测下的环孢菌素和面积的治疗药物监测:使用峰浓度数据进行评估

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There is an ongoing debate on the use of a single concentration time point C2 for therapeutic drug monitoring (TDM) and exposure prediction for cyclosporine. The objective of the present work was to evaluate the relationship between the peak concentration (C-max) versus area under the curve (AUC) for cyclosporine. Using published data from renal transplant patients from an 8-12 week study with two formulations, a simple linear regression model represented by AUC - cyclosporine = Cmax - Cyclosporine x 3.9965 + 384.5 (r = 0.9647; p < 0.001) was developed. Using the regression equation, predictions of AUC from the reported C-max data were performed; the fold difference between observed vs predicted AUC was computed and the root mean square error for the prediction was calculated. While all but one of the predicted AUCs were contained within a 0.5-2-fold difference (99.1%), a greater proportion of the AUC values were predicted within a narrower range of 0.75 to 1.5-fold difference (78.2%), suggesting the utility of C-max as the right surrogate for predicting the AUC for cyclosporine with a correlation coefficient of 0.8698 (n = 126; p < 0.001) and a RMSE of 26.2%. Since the time to C-max generally varies from 1 to 2 h, although the results validate the use of C2, there may be an opportunity to explore the suitability of C1 or C1.5 in a prospective study for the purpose of TDM and AUC prediction of cyclosporine. Copyright (C) 2015 John Wiley & Sons, Ltd.
机译:关于使用单一浓度时间点C2进行治疗药物监测(TDM)和预测环孢菌素的暴露的争论一直在进行。本工作的目的是评估环孢菌素的峰浓度(C-max)与曲线下面积(AUC)之间的关系。利用8种为期12周的肾脏移植患者的公开数据,采用两种配方,建立了一个以AUC-环孢素= Cmax-环孢素x 3.9965 + 384.5(r = 0.9647; p <0.001)表示的简单线性回归模型。使用回归方程,根据报告的C-max数据进行AUC预测;计算观察到的AUC与预测的AUC之间的倍数差,并计算预测的均方根误差。尽管除一个预测的AUC之外的所有AUC都包含在0.5-2倍的差异内(99.1%),但在0.75至1.5倍的较窄范围内(78.2%)可以预测到更大的AUC值, C-max作为预测环孢菌素AUC的正确替代者的效用,相关系数为0.8698(n = 126; p <0.001),RMSE为26.2%。由于达到C-max的时间通常在1-2小时内变化,尽管结果验证了使用C2的可能性,但在前瞻性研究中可能有机会探讨C1或C1.5是否适合TDM和AUC环孢霉素的预测。版权所有(C)2015 John Wiley&Sons,Ltd.

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