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基于亚组的模型选择以改善万古霉素浓度的预测。

Subgroup-based model selection to improve the prediction of vancomycin concentrations.

作者信息

Laas Hanna Kadri, Metsvaht Tuuli, Tamme Kadri, Karjagin Juri, Naber Kristiina, Afanasjev Artjom, Tiivel Carmen, Lutsar Irja, Soeorg Hiie

机构信息

Department of Microbiology, University of Tartu, Tartu, Estonia.

Anaesthesiology and Intensive Care Clinic, Tartu University Hospital, Tartu, Estonia.

出版信息

Antimicrob Agents Chemother. 2025 Sep 3;69(9):e0017425. doi: 10.1128/aac.00174-25. Epub 2025 Jul 23.

Abstract

Individualized dosing of vancomycin is recommended, model-informed precision dosing (MIPD) being the preferred method to improve efficacy and limit toxicity. However, its implementation poses challenges, including model selection and initiation dose determination. We developed a model selection tool (MST) and evaluated its potential to improve concentration prediction precision and reduce bias. Retrospective data from adult intensive care unit patients receiving intravenous vancomycin were collected and divided into training and validation data sets. Population predictions from published one-compartment models were computed, and the universally best-performing model (UBM) was selected. A genetic algorithm was used to create an MST. The ability to forecast the third concentration based on previous concentrations was evaluated. A total of 148 vancomycin treatment episodes were included in training and 67 in the validation data set. The MST showed 12% and 6% improved precision compared to the UBM in training and validation data sets, respectively (mean absolute percentage prediction error [mean PAPE] 22.8% vs 26.0% and 28.4% vs 30.2%). The UBM exhibited lower bias in both training and validation data sets (mean percentage prediction error [mean PPE] 5.8% vs 4.7% and -2.8% vs -1.5%, respectively). The MST showed improved performance in predicting the third concentration based on previous concentrations. In both data sets, accuracy was the best/highest when two prior measured concentrations were used (mean PAPE and PPE 17.0% and -3.0% in training and 18.9% and -1.0% in validation data set). Overall, the MST has the potential to enhance vancomycin dosing accuracy from the first dose and simplify model selection, facilitating the utilization of MIPD in clinical practice.

摘要

建议进行万古霉素的个体化给药,模型引导的精准给药(MIPD)是提高疗效和限制毒性的首选方法。然而,其实施面临挑战,包括模型选择和初始剂量确定。我们开发了一种模型选择工具(MST),并评估了其提高浓度预测精度和减少偏差的潜力。收集了接受静脉注射万古霉素的成人重症监护病房患者的回顾性数据,并将其分为训练和验证数据集。计算了已发表的单室模型的群体预测值,并选择了普遍表现最佳的模型(UBM)。使用遗传算法创建了一个MST。评估了根据先前浓度预测第三次浓度的能力。训练数据集中共纳入了148次万古霉素治疗事件,验证数据集中有67次。在训练和验证数据集中,MST的预测精度分别比UBM提高了12%和6%(平均绝对百分比预测误差[平均PAPE]分别为22.8%对26.0%和28.4%对30.2%)。在训练和验证数据集中,UBM的偏差均较低(平均百分比预测误差[平均PPE]分别为5.8%对4.7%和-2.8%对-1.5%)。MST在根据先前浓度预测第三次浓度方面表现出更好的性能。在两个数据集中,当使用两个先前测量的浓度时,准确性最佳/最高(训练数据集中平均PAPE和PPE分别为17.0%和-3.0%,验证数据集中为18.9%和-1.0%)。总体而言,MST有潜力从首剂开始提高万古霉素给药的准确性,并简化模型选择,促进MIPD在临床实践中的应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e36e/12406661/1105d5959825/aac.00174-25.f001.jpg

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