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CFTR 调节剂治疗分类:现状、差距和未来方向。

CFTR modulator theratyping: Current status, gaps and future directions.

机构信息

Cincinnati Children's Hospital Medical Center, Cincinnati, OH, United States.

Case Western Reserve University, United States.

出版信息

J Cyst Fibros. 2019 Jan;18(1):22-34. doi: 10.1016/j.jcf.2018.05.004. Epub 2018 Jun 20.

Abstract

BACKGROUND

New drugs that improve the function of the cystic fibrosis transmembrane conductance regulator (CFTR) protein with discreet disease-causing variants have been successfully developed for cystic fibrosis (CF) patients. Preclinical model systems have played a critical role in this process, and have the potential to inform researchers and CF healthcare providers regarding the nature of defects in rare CFTR variants, and to potentially support use of modulator therapies in new populations.

METHODS

The Cystic Fibrosis Foundation (CFF) assembled a workshop of international experts to discuss the use of preclinical model systems to examine the nature of CF-causing variants in CFTR and the role of in vitro CFTR modulator testing to inform in vivo modulator use. The theme of the workshop was centered on CFTR theratyping, a term that encompasses the use of CFTR modulators to define defects in CFTR in vitro, with application to both common and rare CFTR variants.

RESULTS

Several preclinical model systems were identified in various stages of maturity, ranging from the expression of CFTR variant cDNA in stable cell lines to examination of cells derived from CF patients, including the gastrointestinal tract, the respiratory tree, and the blood. Common themes included the ongoing need for standardization, validation, and defining the predictive capacity of data derived from model systems to estimate clinical outcomes from modulator-treated CF patients.

CONCLUSIONS

CFTR modulator theratyping is a novel and rapidly evolving field that has the potential to identify rare CFTR variants that are responsive to approved drugs or drugs in development.

摘要

背景

新的药物改善囊性纤维化跨膜电导调节因子 (CFTR) 蛋白的功能,对具有离散致病变体的囊性纤维化 (CF) 患者具有疗效。临床前模型系统在这一过程中发挥了关键作用,有可能为研究人员和 CF 医疗保健提供者提供有关罕见 CFTR 变体缺陷性质的信息,并有可能支持在新人群中使用调节剂治疗。

方法

囊性纤维化基金会 (CFF) 召集了一组国际专家,讨论使用临床前模型系统来研究 CFTR 中引起 CF 的变体的性质,以及体外 CFTR 调节剂测试在告知体内调节剂使用中的作用。研讨会的主题集中在 CFTR 分型上,这是一个术语,涵盖了使用 CFTR 调节剂来定义 CFTR 体外的缺陷,适用于常见和罕见的 CFTR 变体。

结果

确定了几种处于不同成熟阶段的临床前模型系统,范围从 CFTR 变体 cDNA 在稳定细胞系中的表达到 CF 患者来源的细胞的检查,包括胃肠道、呼吸道和血液。共同的主题包括对标准化、验证和定义从模型系统中获得的数据的预测能力的持续需求,以估计接受调节剂治疗的 CF 患者的临床结果。

结论

CFTR 调节剂分型是一个新颖且快速发展的领域,有可能识别出对已批准药物或正在开发中的药物有反应的罕见 CFTR 变体。

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