Department of Industrial Engineering and Informatics, Università degli Studi di Pavia, Pavia, Italy.
Clinical Pharmacology & Therapeutics Group, University College London, London, UK.
Br J Clin Pharmacol. 2022 Aug;88(8):3683-3694. doi: 10.1111/bcp.15290. Epub 2022 Mar 26.
To develop a drug-disease model describing iron overload and its effect on ferritin response in patients affected by transfusion-dependent haemoglobinopathies and investigate the contribution of interindividual differences in demographic and clinical factors on chelation therapy with deferiprone or deferasirox.
Individual and mean serum ferritin data were retrieved from 13 published studies in patients affected by haemoglobinopathies receiving deferiprone or deferasirox. A nonlinear mixed effects modelling approach was used to characterise iron homeostasis and serum ferritin production taking into account annual blood consumption, baseline demographic and clinical characteristics. The effect of chelation therapy was parameterised as an increase in the iron elimination rate. Internal and external validation procedures were used to assess model performance across different study populations.
An indirect response model was identified, including baseline ferritin concentrations and annual blood consumption as covariates. The effect of chelation on iron elimination rate was characterised by a linear function, with different slopes for each drug (0.0109 [90% CI: 0.0079-0.0131] vs. 0.0013 [90% CI: 0.0008-0.0018] L/mg mo). In addition to drug-specific differences in the magnitude of the ferritin response, simulation scenarios indicate that ferritin elimination rates depend on ferritin concentrations at baseline.
Modelling of serum ferritin following chronic blood transfusion enabled the evaluation of drug-induced changes in iron elimination rate and ferritin production. The use of a semi-mechanistic parameterisation allowed us to disentangle disease-specific factors from drug-specific properties. Despite comparable chelation mechanisms, deferiprone appears to have a significantly larger effect on the iron elimination rate than deferasirox.
建立一个药物-疾病模型,描述铁过载及其对依赖输血的血红蛋白病患者铁蛋白反应的影响,并研究个体间人口统计学和临床因素差异对去铁酮或地拉罗司螯合治疗的贡献。
从接受去铁酮或地拉罗司治疗的血红蛋白病患者的 13 项已发表研究中检索个体和平均血清铁蛋白数据。采用非线性混合效应建模方法,考虑年血液消耗、基线人口统计学和临床特征,描述铁稳态和血清铁蛋白生成。将螯合治疗的效果参数化为铁消除率的增加。使用内部和外部验证程序评估模型在不同研究人群中的性能。
确定了一个间接反应模型,包括基线铁蛋白浓度和年血液消耗作为协变量。螯合作用对铁消除率的影响由线性函数描述,两种药物的斜率不同(0.0109 [90%CI:0.0079-0.0131] 与 0.0013 [90%CI:0.0008-0.0018] L/mg·mo)。除了铁蛋白反应幅度的药物特异性差异外,模拟情景表明铁蛋白消除率取决于基线时的铁蛋白浓度。
对慢性输血后血清铁蛋白进行建模,能够评估药物诱导的铁消除率和铁蛋白生成变化。半机理参数化的使用使我们能够将疾病特异性因素与药物特异性特性区分开来。尽管螯合机制相似,但去铁酮似乎对铁消除率的影响明显大于地拉罗司。