Life Science Institute, Daewoong Pharmaceutical, Yongin, South Korea.
College of Pharmacy, Chungnam National University, Daejeon, South Korea.
Clin Transl Sci. 2024 May;17(5):e13833. doi: 10.1111/cts.13833.
Niclosamide, a potent anthelmintic agent, has emerged as a candidate against COVID-19 in recent studies. Its formulation has been investigated extensively to address challenges related to systemic exposure. In this study, niclosamide was formulated as a long-acting intramuscular injection to achieve systemic exposure in the lungs for combating the virus. To establish the dose-exposure relationship, a hamster model was selected, given its utility in previous COVID-19 infection studies. Pharmacokinetic (PK) analysis was performed using NONMEM and PsN. Hamsters were administered doses of 55, 96, 128, and 240 mg/kg with each group comprising five animals. Two types of PK models were developed, linear models incorporating partition coefficients and power-law distributed models, to characterize the relationship between drug concentrations in the plasma and lungs of the hamsters. Numerical and visual diagnostics, including basic goodness-of-fit and visual predictive checks, were employed to assess the models. The power-law-based PK model not only demonstrated superior numerical performance compared with the linear model but also exhibited better agreement in visual diagnostic evaluations. This phenomenon was attributed to the nonlinear relationship between drug concentrations in the plasma and lungs, reflecting kinetic heterogeneity. Dose optimization, based on predicting lung exposure, was conducted iteratively across different drug doses, with the minimum effective dose estimated to be ~1115 mg/kg. The development of a power-law-based PK model proved successful and effectively captured the nonlinearities observed in this study. This method is expected to be applicable for investigating the drug disposition of specific formulations in the lungs.
尼氯硝唑是一种有效的驱虫药,最近的研究表明它可能是对抗 COVID-19 的候选药物。为了解决与全身暴露相关的挑战,人们对其制剂进行了广泛的研究。在这项研究中,将尼氯硝唑制成长效肌肉注射剂,以在肺部实现全身暴露,从而对抗病毒。为了建立剂量-暴露关系,选择了仓鼠模型,因为它在之前的 COVID-19 感染研究中具有实用性。使用 NONMEM 和 PsN 进行了药代动力学(PK)分析。给仓鼠注射 55、96、128 和 240mg/kg 剂量,每组 5 只动物。开发了两种 PK 模型,一种是包含分配系数的线性模型,另一种是幂律分布模型,以描述仓鼠血浆和肺部中药物浓度之间的关系。采用数值和可视化诊断方法,包括基本拟合优度和可视化预测检查,评估模型。基于幂律的 PK 模型不仅在数值性能上优于线性模型,而且在视觉诊断评估中也表现出更好的一致性。这种现象归因于血浆和肺部中药物浓度之间的非线性关系,反映了动力学异质性。基于预测肺部暴露的剂量优化在不同药物剂量下进行迭代,估计最小有效剂量约为 1115mg/kg。基于幂律的 PK 模型的开发取得了成功,有效地捕获了本研究中观察到的非线性。这种方法有望适用于研究特定制剂在肺部的药物分布。