小体积血浆样品中泊沙康唑的HPLC-UV定量方法的建立:实验设计和机器学习模型

IF 4.3 2区 化学 Q2 CHEMISTRY, MULTIDISCIPLINARY
Fereshteh Bayat, Ali Hashemi Baghi, Zahra Abbasian, Simin Dadashzadeh, Reza Aboofazeli, Azadeh Haeri
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引用次数: 0

摘要

泊沙康唑(PCZ)是一种广谱活性的三唑类抗真菌药物。我们的研究旨在通过结合2水平分数析因设计和机器学习来优化色谱和提取实验,提出一种新的方法,允许在小体积血浆样品中开发一种具有低定量限(LOQ)的快速方法。优化条件(有机相58%,甲醇6%,流动pH = 7,柱温:39℃,流速为1.2 mL/min)下PCZ的保留时间为8.2±0.2 min,优化提取条件(提取溶剂500µL, NaCl 10% w/v,血浆pH = 11,提取时间= 10 min,离心时间= 1 min)下PCZ的回收率大于98%。机器学习模型的结果与实验设计的结果一致。根据ICH指南进行方法验证。该方法在50 ~ 2000 ng/mL范围内呈线性,定量限为50 ng/mL。并将该方法应用于PCZ纳米微束分析和大鼠药代动力学研究。半衰期(t1/2)、平均停留时间(MRT)和药物浓度-时间曲线下面积(AUC)分别为7.1±0.6 h、10.5±0.9 h和1725.7±44.1 ng × h/mL。图形抽象
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of an HPLC–UV method for quantification of posaconazole in low-volume plasma samples: design of experiments and machine learning models

Posaconazole (PCZ) is a triazole antifungal agent with a broad-spectrum activity. Our research aims to present a novel approach by combining a 2-level fractional factorial design and machine learning to optimize both chromatography and extraction experiments, allowing for the development of a rapid method with a low limit of quantification (LOQ) in low-volume plasma samples. The PCZ retention time at the optimized condition (organic phase 58%, methanol 6%, mobile pH = 7, column temperature: 39 °C, and flow rate of 1.2 mL/min) was found to be 8.2 ± 0.2 min, and the recovery of the PCZ at the optimized extraction condition (500 µL extraction solvent, NaCl 10% w/v, plasma pH = 11, extraction time = 10 min, and centrifuge time = 1 min) was calculated above 98%. The results of machine learning models were in line with the results of experimental design. Method validation was performed according to ICH guideline. The method was linear in the range of 50–2000 ng/mL and LOQ was found to be 50 ng/mL. Additionally, the validated method was applied to analyze PCZ nanomicelles and conduct pharmacokinetic studies on rats. Half-life (t1/2), mean residence time (MRT), and the area under the drug concentration–time curve (AUC) were found to be 7.1 ± 0.6 h, 10.5 ± 0.9 h, and 1725.7 ± 44.1 ng × h/mL, respectively.

Graphical Abstract

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来源期刊
BMC Chemistry
BMC Chemistry Chemistry-General Chemistry
CiteScore
5.30
自引率
2.20%
发文量
92
审稿时长
27 weeks
期刊介绍: BMC Chemistry, formerly known as Chemistry Central Journal, is now part of the BMC series journals family. Chemistry Central Journal has served the chemistry community as a trusted open access resource for more than 10 years – and we are delighted to announce the next step on its journey. In January 2019 the journal has been renamed BMC Chemistry and now strengthens the BMC series footprint in the physical sciences by publishing quality articles and by pushing the boundaries of open chemistry.
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