Prediction of teicoplanin plasma concentration in critically ill patients: a combination of machine learning and population pharmacokinetics.

IF 3.9 2区 医学 Q1 INFECTIOUS DISEASES
Pan Ma, Shenglan Shang, Ruixiang Liu, Yuzhu Dong, Jiangfan Wu, Wenrui Gu, Mengchen Yu, Jing Liu, Ying Li, Yongchuan Chen
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引用次数: 0

Abstract

Background: Teicoplanin has been widely used in patients with infections caused by Staphylococcus aureus, especially for critically ill patients. The pharmacokinetics (PK) of teicoplanin vary between individuals and within the same individual. We aim to establish a prediction model via a combination of machine learning and population PK (PPK) to support personalized medication decisions for critically ill patients.

Methods: A retrospective study was performed incorporating 33 variables, including PPK parameters (clearance and volume of distribution). Multiple algorithms and Shapley additive explanations were employed for feature selection of variables to determine the strongest driving factors.

Results: The performance of each algorithm with PPK parameters was superior to that without PPK parameters. The composition of support vector regression, categorical boosting and a backpropagation neural network (7:2:1) with the highest R2 (0.809) was determined as the final ensemble model. The model included 15 variables after feature selection, of which the predictive performance was superior to that of models considering all variables or using only PPK. The R2, mean absolute error, mean squared error, absolute accuracy (±5 mg/L) and relative accuracy (±30%) of external validation were 0.649, 3.913, 28.347, 76.12% and 76.12%, respectively.

Conclusions: Our study offers a non-invasive, fast and cost-effective prediction model of teicoplanin plasma concentration in critically ill patients. The model serves as a fundamental tool for clinicians to determine the effective plasma concentration range of teicoplanin and formulate individualized dosing regimens accordingly.

重症患者替考拉宁血浆浓度预测:机器学习与群体药代动力学的结合。
背景:替考拉宁已被广泛用于由金黄色葡萄球菌引起的感染患者,尤其是重症患者。替考拉宁的药代动力学(PK)因人而异,在同一人体内也是如此。我们的目标是通过机器学习和群体药代动力学(PPK)的结合建立一个预测模型,为危重病人的个性化用药决策提供支持:我们进行了一项回顾性研究,纳入了 33 个变量,包括 PPK 参数(清除率和分布容积)。在对变量进行特征选择时采用了多种算法和夏普利加法解释,以确定最强的驱动因素:结果:包含 PPK 参数的每种算法的性能都优于不包含 PPK 参数的算法。支持向量回归、分类提升和反向传播神经网络(7:2:1)组成的R2(0.809)最高,被确定为最终的集合模型。该模型在特征选择后包含 15 个变量,其预测性能优于考虑所有变量或仅使用 PPK 的模型。外部验证的 R2、平均绝对误差、平均平方误差、绝对准确度(±5 mg/L)和相对准确度(±30%)分别为 0.649、3.913、28.347、76.12% 和 76.12%:我们的研究提供了一种无创、快速且经济有效的重症患者替考拉宁血浆浓度预测模型。该模型是临床医生确定替考拉宁有效血浆浓度范围并据此制定个体化给药方案的基本工具。
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来源期刊
CiteScore
9.20
自引率
5.80%
发文量
423
审稿时长
2-4 weeks
期刊介绍: The Journal publishes articles that further knowledge and advance the science and application of antimicrobial chemotherapy with antibiotics and antifungal, antiviral and antiprotozoal agents. The Journal publishes primarily in human medicine, and articles in veterinary medicine likely to have an impact on global health.
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