Predictive Performance of Population Pharmacokinetic Models for Amikacin in Term Neonates.

IF 3.4 3区 医学 Q1 PEDIATRICS
Saikumar Matcha, Jayashree Dillibatcha, Arun Prasath Raju, Bhim Bahadur Chaudhari, Sudheer Moorkoth, Leslie E Lewis, Surulivelrajan Mallayasamy
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引用次数: 0

Abstract

Background and objective: Amikacin is preferred in treating Gram-negative infections in neonates and it has a narrow therapeutic window. The population pharmacokinetic modeling approach can aid in designing optimal dosage regimens for amikacin in neonates. In this study, we attempted to identify the suitable population pharmacokinetic model from the published reports for the study population from an Indian setting.

Methods: Published population pharmacokinetic studies for amikacin in neonates were identified. Data on structural models and typical pharmacokinetic parameters were extracted from the studies. For the clinical study, neonates who met the inclusion criteria were enrolled in the study from the NICU, Kasturba Medical College, Manipal, during Jan 2020 to March 2022. Drug concentrations were estimated, and demographic and clinical data were collected. Identified population pharmacokinetic models were used to predict the amikacin concentrations in neonates. Predicted concentrations were compared against the observed concentrations. Differences between predicted and observed concentrations were quantified using statistical measures. The population pharmacokinetic model, which was able to predict the data well, is considered a suitable model for the study population. Dosing regimens were suggested for neonates using the pharmacometric simulation approach generated by the selected model.

Results: A total of 43 plasma samples were collected from 31 neonates. Twelve population pharmacokinetic models were found for amikacin in neonates. The predictive performance of the 12 studies was performed using clinical data. A two-compartment model reported by Illamola et al. predicted the amikacin concentrations better than other models. Illamola et al. reported creatinine clearance and body weight as the significant covariates impacting the pharmacokinetic parameters of amikacin. This model was able to predict the clinical data with 29.97% and 0.686 of relative median absolute prediction error and relative root mean square error, respectively, which is the best among the published models. The Illamola et al. model was selected as the final model to perform pharmacometric simulations for the subjects with different combinations of creatinine clearance and body weight. Dosage regimens were designed to attain target therapeutic concentrations for the virtual subjects and a nomogram was developed.

Conclusions: The population pharmacokinetic model reported by the Illamola et al. model was selected as the final model to explain the clinical data with the lowest relative median absolute prediction error and relative root mean square error when compared with other models. An amikacin nomogram was developed for the neonates whose creatinine clearance and body weight ranged between 10 and 90 mL/min and between 2 and 4 kg, respectively. A developed nomogram can assist clinicians to design an optimal dosage regimen of amikacin for term neonates.

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足月新生儿阿米卡星群体药代动力学模型的预测性能。
背景与目的:阿米卡星是治疗新生儿革兰氏阴性感染的首选药物,治疗窗口期较窄。人群药代动力学建模方法可以帮助设计阿米卡星在新生儿的最佳剂量方案。在这项研究中,我们试图从已发表的报告中为印度的研究人群确定合适的人群药代动力学模型。方法:对已发表的新生儿阿米卡星人群药代动力学研究进行鉴定。从研究中提取结构模型和典型药代动力学参数的数据。在临床研究中,符合纳入标准的新生儿在2020年1月至2022年3月期间从马尼帕尔Kasturba医学院NICU入组。估计药物浓度,并收集人口统计学和临床数据。确定的人群药代动力学模型用于预测新生儿阿米卡星浓度。将预测浓度与观测浓度进行比较。预测浓度和观测浓度之间的差异使用统计方法进行量化。群体药代动力学模型能够很好地预测数据,被认为是适合研究人群的模型。使用所选模型生成的药物计量学模拟方法建议新生儿的给药方案。结果:31例新生儿共采集血浆43份。在新生儿中建立了12个阿米卡星群体药代动力学模型。12项研究的预测性能是使用临床数据进行的。Illamola等人报道的双室模型比其他模型更能预测阿米卡星浓度。Illamola等人报道肌酐清除率和体重是影响阿米卡星药代动力学参数的重要协变量。该模型预测临床数据的相对绝对预测误差中位数为29.97%,相对均方根误差中位数为0.686,在已发表的模型中表现最好。最后选择Illamola等人的模型,对不同肌酐清除率和体重组合的受试者进行药物计量学模拟。剂量方案的设计是为了达到虚拟受试者的目标治疗浓度,并开发了一种图。结论:选择Illamola等模型报道的人群药代动力学模型作为最终模型来解释与其他模型相比,相对中位绝对预测误差和相对均方根误差最低的临床数据。为肌酐清除率在10 ~ 90ml /min之间、体重在2 ~ 4kg之间的新生儿建立了阿米卡星形态图。一个发达的线图可以帮助临床医生为足月新生儿设计阿米卡星的最佳剂量方案。
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来源期刊
Pediatric Drugs
Pediatric Drugs PEDIATRICS-PHARMACOLOGY & PHARMACY
CiteScore
7.20
自引率
0.00%
发文量
54
审稿时长
>12 weeks
期刊介绍: Pediatric Drugs promotes the optimization and advancement of all aspects of pharmacotherapy for healthcare professionals interested in pediatric drug therapy (including vaccines). The program of review and original research articles provides healthcare decision makers with clinically applicable knowledge on issues relevant to drug therapy in all areas of neonatology and the care of children and adolescents. The Journal includes: -overviews of contentious or emerging issues. -comprehensive narrative reviews of topics relating to the effective and safe management of drug therapy through all stages of pediatric development. -practical reviews covering optimum drug management of specific clinical situations. -systematic reviews that collate empirical evidence to answer a specific research question, using explicit, systematic methods as outlined by the PRISMA statement. -Adis Drug Reviews of the properties and place in therapy of both newer and established drugs in the pediatric population. -original research articles reporting the results of well-designed studies with a strong link to clinical practice, such as clinical pharmacodynamic and pharmacokinetic studies, clinical trials, meta-analyses, outcomes research, and pharmacoeconomic and pharmacoepidemiological studies. Additional digital features (including animated abstracts, video abstracts, slide decks, audio slides, instructional videos, infographics, podcasts and animations) can be published with articles; these are designed to increase the visibility, readership and educational value of the journal’s content. In addition, articles published in Pediatric Drugs may be accompanied by plain language summaries to assist readers who have some knowledge of, but not in-depth expertise in, the area to understand important medical advances.
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