Comparison of dose selection based on target engagement versus inhibition of receptor–ligand interaction for checkpoint inhibitors

IF 3.1 3区 医学 Q2 PHARMACOLOGY & PHARMACY
Sarah A. Head, Carter Johnson, Saheli Sarkar, Andrew Matteson, Diana H. Marcantonio, Fei Hua, John M. Burke, Joshua F. Apgar, David Flowers
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Abstract

Immune checkpoint inhibitors block the interaction between a receptor on one cell and its ligand on another cell, thus preventing the transduction of an immunosuppressive signal. While inhibition of the receptor–ligand interaction is key to the pharmacological activity of these drugs, it can be technically challenging to measure these intercellular interactions directly. Instead, target engagement (or receptor occupancy) is commonly measured, but may not always be an accurate predictor of receptor–ligand inhibition, and can be misleading when used to inform clinical dose projections for this class of drugs. In this study, a mathematical model explicitly representing the intercellular receptor–ligand interaction is used to compare dose prediction based on target engagement or receptor–ligand inhibition for two checkpoint inhibitors, atezolizumab and magrolimab. For atezolizumab, there is little difference between target engagement and receptor–ligand inhibition, but for magrolimab, the model predicts that receptor–ligand inhibition is significantly less than target engagement. The key variables explaining the difference between these two drugs are the relative concentrations of the target receptors and their ligands. Drug-target affinity and receptor–ligand affinity can also have divergent effects on target engagement and inhibition. These results suggest that it is important to consider ligand–receptor inhibition in addition to target engagement and demonstrate the impact of using modeling for efficacious dose estimation.

Abstract Image

比较检查点抑制剂基于靶点参与和抑制受体-配体相互作用的剂量选择。
免疫检查点抑制剂会阻断一个细胞上的受体与另一个细胞上的配体之间的相互作用,从而阻止免疫抑制信号的传导。虽然抑制受体与配体之间的相互作用是这类药物药理活性的关键,但直接测量这些细胞间相互作用在技术上具有挑战性。取而代之的是通常测量的靶点参与度(或受体占有率),但这并不总是受体配体抑制作用的准确预测指标,而且在用于这类药物的临床剂量预测时可能会产生误导。在本研究中,我们使用了一个明确表示细胞间受体-配体相互作用的数学模型,来比较基于靶点接合或受体-配体抑制对两种检查点抑制剂(atezolizumab和magrolimab)的剂量预测。对于阿特珠单抗,靶点接合与受体配体抑制之间的差异很小,但对于麦格列单抗,模型预测的受体配体抑制明显小于靶点接合。解释这两种药物之间差异的关键变量是靶受体及其配体的相对浓度。药物-靶点亲和力和受体-配体亲和力也会对靶点参与和抑制产生不同的影响。这些结果表明,除了靶标参与外,还必须考虑配体-受体的抑制作用,并证明了使用模型进行疗效剂量估算的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
5.00
自引率
11.40%
发文量
146
审稿时长
8 weeks
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