Predicting Clinical Outcomes of SARS-CoV-2 Drug Efficacy with a High-Throughput Human Airway Microphysiological System

IF 3.2 3区 生物学 Q3 MATERIALS SCIENCE, BIOMATERIALS Advanced biology Pub Date : 2024-08-09 DOI:10.1002/adbi.202300511
Landys Lopez Quezada, Felix Mba Medie, Rebeccah J. Luu, Robert B. Gaibler, Elizabeth P. Gabriel, Logan D. Rubio, Thomas J. Mulhern, Elizabeth E. Marr, Jeffrey T. Borenstein, Christine R. Fisher, Ashley L. Gard
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Abstract

The average cost to bring a new drug from its initial discovery to a patient's bedside is estimated to surpass $2 billion and requires over a decade of research and development. There is a need for new drug screening technologies that can parse drug candidates with increased likelihood of clinical utility early in development in order to increase the cost-effectiveness of this pipeline. For example, during the COVID-19 pandemic, resources were rapidly mobilized to identify effective therapeutic treatments but many lead antiviral compounds failed to demonstrate efficacy when progressed to human trials. To address the lack of predictive preclinical drug screening tools, PREDICT96-ALI, a high-throughput (n = 96) microphysiological system (MPS)  that recapitulates primary human tracheobronchial tissue,is adapted for the evaluation of differential antiviral efficacy of native SARS-CoV-2 variants of concern. Here, PREDICT96-ALI resolves both the differential viral kinetics between variants and the efficacy of antiviral compounds over a range of drug doses. PREDICT96-ALI is able to distinguish clinically efficacious antiviral therapies like remdesivir and nirmatrelvir from promising lead compounds that do not show clinical efficacy. Importantly, results from this proof-of-concept study track with known clinical outcomes, demonstrate the feasibility of this technology as a prognostic drug discovery tool.

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利用高通量人体气道微生理系统预测 SARS-CoV-2 药物疗效的临床结果
据估计,一种新药从最初发现到病人用药的平均成本超过 20 亿美元,需要十多年的研发时间。我们需要新的药物筛选技术,以便在研发早期就能筛选出更有可能用于临床的候选药物,从而提高研发过程的成本效益。例如,在 COVID-19 大流行期间,为确定有效的治疗方法迅速调动了资源,但许多主要的抗病毒化合物在进入人体试验阶段时未能显示出疗效。为了解决缺乏预测性临床前药物筛选工具的问题,PREDICT96-ALI--一种高通量(n = 96)的微观生理系统(MPS)被改造成重现原生人类气管支气管组织,用于评估受关注的原生 SARS-CoV-2 变体的不同抗病毒疗效。在这里,PREDICT96-ALI 解决了不同变异体之间的病毒动力学差异以及抗病毒化合物在一系列药物剂量下的疗效问题。PREDICT96-ALI 能够区分临床疗效显著的抗病毒疗法(如雷米替韦和尼尔马替韦)和未显示临床疗效的有前途的先导化合物。重要的是,这项概念验证研究的结果与已知的临床结果相吻合,证明了这项技术作为预后药物发现工具的可行性。
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来源期刊
Advanced biology
Advanced biology Biochemistry, Genetics and Molecular Biology-Biochemistry, Genetics and Molecular Biology (all)
CiteScore
6.60
自引率
0.00%
发文量
130
期刊最新文献
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