Estimation of linezolid exposure in patients with hepatic impairment using machine learning based on a population pharmacokinetic model.

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
ACS Applied Bio Materials Pub Date : 2024-08-01 Epub Date: 2024-05-08 DOI:10.1007/s00228-024-03698-2
Ru Liao, Lihong Chen, Xiaoliang Cheng, Houli Li, Taotao Wang, Yalin Dong, Haiyan Dong
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引用次数: 0

Abstract

Purpose: To investigate the pharmacokinetic changes of linezolid in patients with hepatic impairment and to explore a method to predict linezolid exposure.

Methods: Patients with hepatic impairment who received linezolid were recruited. A population pharmacokinetic model (PPK) was then built using NONMEM software. And based on the final model, virtual patients with rich concentration values was constructed through Monte Carlo simulations (MCS), which were used to build machine learning (ML) models to predict linezolid exposure levels. Finally, we investigated the risk factors for thrombocytopenia in patients included.

Results: A PPK model with population typical values of 3.83 L/h and 34.1 L for clearance and volume of distribution was established, and the severe hepatic impairment was identified as a significant covariate of clearance. Then, we built a series of ML models to predict the area under 0 -24 h concentration-time curve (AUC0-24) of linezolid based on virtual patients from MCS. The results showed that the Xgboost models showed the best predictive performance and were superior to the methods for estimating linezolid AUC0-24 based on though concentration or daily dose. Finally, we found that baseline platelet count, linezolid AUC0-24, and combination with fluoroquinolones were independent risk factors for thrombocytopenia, and based on this, we proposed a method for calculating the toxicity threshold of linezolid.

Conclusion: In this study, we successfully constructed a PPK model for patients with hepatic impairment and used ML algorithm to estimate linezolid AUC0-24 based on limited data. Finally, we provided a method to determine the toxicity threshold of linezolid.

Abstract Image

利用基于群体药代动力学模型的机器学习估算肝功能受损患者的利奈唑胺暴露量。
目的:研究肝功能受损患者体内利奈唑胺的药代动力学变化,并探索预测利奈唑胺暴露量的方法:方法:招募接受利奈唑胺治疗的肝功能损害患者。方法:招募接受利奈唑胺治疗的肝功能损害患者,然后使用 NONMEM 软件建立群体药代动力学模型(PPK)。在最终模型的基础上,通过蒙特卡洛模拟(MCS)构建了具有丰富浓度值的虚拟患者,并以此建立机器学习(ML)模型来预测利奈唑胺的暴露水平。最后,我们研究了纳入患者中血小板减少症的风险因素:结果:我们建立了一个PPK模型,其清除率和分布容积的人群典型值分别为3.83升/小时和34.1升,并确定严重肝功能损害是清除率的一个重要协变量。然后,我们基于 MCS 虚拟患者建立了一系列 ML 模型来预测利奈唑胺的 0 -24 h 浓度-时间曲线下面积(AUC0-24)。结果表明,Xgboost 模型显示出最佳预测性能,优于基于虽然浓度或日剂量估算利奈唑胺 AUC0-24 的方法。最后,我们发现基线血小板计数、利奈唑胺 AUC0-24、与氟喹诺酮类药物合用是血小板减少症的独立风险因素,并据此提出了利奈唑胺毒性阈值的计算方法:本研究成功构建了肝功能损害患者的 PPK 模型,并根据有限的数据使用 ML 算法估算了利奈唑胺的 AUC0-24。最后,我们提供了一种确定利奈唑胺毒性阈值的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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