Rory Leisegang, Hanna E Silber Baumann, Siân Lennon-Chrimes, Hajime Ito, Kazuhiro Miya, Jean-Christophe Genin, Elodie L Plan
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Longitudinal pharmacokinetic (PK) and ADA data from 154 NMOSD patients in two pivotal Phase 3 studies (NCT02028884, NCT02073279) and PK data from one Phase 1 study (SA-001JP) in 72 healthy volunteers were available for this analysis. An existing population PK model was adapted to derive steady-state concentration without ADA for each patient. A mixed hidden Markov model (mHMM) was developed whereby three different states were identified: one absorbing Markov state for non-ADA developer, and two dynamic and inter-connected Markov states-transient ADA negative and positive. Satralizumab exposure and body mass index impacted transition probabilities and, therefore, the likelihood of developing ADAs. 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引用次数: 0
摘要
免疫原性是指治疗性蛋白质对自身产生免疫反应的倾向。虽然有关抗药抗体(ADA)的报告越来越多,但很少对这些数据进行基于模型的分析。对影响 ADA 出现和消散的因素进行基于模型的特征描述可为药物开发提供信息和/或改善临床实践中的理解。本分析旨在预测皮下注射萨妥珠单抗后的 ADA 动态,包括单个协变量的潜在影响。Satralizumab是一种人源化IgG2单克隆回收IL-6受体拮抗剂抗体,已被批准用于治疗神经脊髓炎视频谱障碍(NMOSD)。本次分析获得了两项关键性 3 期研究(NCT02028884、NCT02073279)中 154 名 NMOSD 患者的纵向药代动力学(PK)和 ADA 数据,以及一项 1 期研究(SA-001JP)中 72 名健康志愿者的 PK 数据。对现有的群体 PK 模型进行了调整,以得出每位患者不含 ADA 的稳态浓度。我们建立了一个混合隐马尔可夫模型(mHMM),并据此确定了三种不同的状态:一种是非 ADA 显影剂的吸收马尔可夫状态,另一种是两个动态且相互关联的马尔可夫状态--瞬时 ADA 阴性和阳性。萨妥珠单抗暴露和体重指数会影响过渡概率,从而影响出现 ADA 的可能性。总之,mHMM 模型能够描述 NMOSD 患者在使用沙妥珠单抗治疗后出现 ADA 的时间过程,并确定 ADA 的发展模式,这有助于制定策略以减少 ADA 的出现或限制 ADA 在临床环境中的影响。
Immunogenicity dynamics and covariate effects after satralizumab administration predicted with a hidden Markov model.
Immunogenicity is the propensity of a therapeutic protein to generate an immune response to itself. While reporting of antidrug antibodies (ADAs) is increasing, model-based analysis of such data is seldom performed. Model-based characterization of factors affecting the emergence and dissipation of ADAs may inform drug development and/or improve understanding in clinical practice. This analysis aimed to predict ADA dynamics, including the potential influence of individual covariates, following subcutaneous satralizumab administration. Satralizumab is a humanized IgG2 monoclonal recycling IL-6 receptor antagonist antibody approved for treating neuromyelitis optica spectrum disorder (NMOSD). Longitudinal pharmacokinetic (PK) and ADA data from 154 NMOSD patients in two pivotal Phase 3 studies (NCT02028884, NCT02073279) and PK data from one Phase 1 study (SA-001JP) in 72 healthy volunteers were available for this analysis. An existing population PK model was adapted to derive steady-state concentration without ADA for each patient. A mixed hidden Markov model (mHMM) was developed whereby three different states were identified: one absorbing Markov state for non-ADA developer, and two dynamic and inter-connected Markov states-transient ADA negative and positive. Satralizumab exposure and body mass index impacted transition probabilities and, therefore, the likelihood of developing ADAs. In conclusion, the mHMM model was able to describe the time course of ADA development and identify patterns of ADA development in NMOSD patients following treatment with satralizumab, which may allow for the formulation of strategies to reduce the emergence or limit the impact of ADA in the clinical setting.