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Preclinical models used for immunogenicity prediction of therapeutic proteins

机译:临床前模型用于治疗蛋白的免疫原性预测

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摘要

All therapeutic proteins are potentially immunogenic. Antibodies formed against these drugs can decrease efficacy, leading to drastically increased therapeutic costs and in rare cases to serious and sometimes life threatening side-effects. Many efforts are therefore undertaken to develop therapeutic proteins with minimal immunogenicity. For this, immunogenicity prediction of candidate drugs during early drug development is essential. Several in silico, in vitro and in vivo models are used to predict immunogenicity of drug leads, to modify potentially immunogenic properties and to continue development of drug candidates with expected low immunogenicity. Despite the extensive use of these predictive models, their actual predictive value varies. Important reasons for this uncertainty are the limited/insufficient knowledge on the immune mechanisms underlying immunogenicity of therapeutic proteins, the fact that different predictive models explore different components of the immune system and the lack of an integrated clinical validation. In this review, we discuss the predictive models in use, summarize aspects of immunogenicity that these models predict and explore the merits and the limitations of each of the models.
机译:所有治疗性蛋白质均具有潜在的免疫原性。针对这些药物形成的抗体会降低药效,导致治疗费用急剧增加,在极少数情况下会导致严重的,有时甚至危及生命的副作用。因此,进行了许多努力来开发具有最小免疫原性的治疗性蛋白质。为此,在早期药物开发过程中预测候选药物的免疫原性至关重要。几种计算机模拟,体外和体内模型用于预测药物前导物的免疫原性,修饰潜在的免疫原性并继续开发具有预期的低免疫原性的候选药物。尽管广泛使用了这些预测模型,但是它们的实际预测值却有所不同。这种不确定性的重要原因是对治疗蛋白免疫原性的免疫机制了解有限/不足,不同的预测模型探索了免疫系统的不同组成部分,以及缺乏综合的临床验证。在这篇综述中,我们讨论了使用中的预测模型,总结了这些模型预测的免疫原性方面,并探讨了每种模型的优缺点。

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