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利用真实世界数据为 EMA 资格认证提供基于模型的生物标志物工具,以优化 1 型糖尿病预防研究。

Leveraging Real-World Data for EMA Qualification of a Model-Based Biomarker Tool to Optimize Type-1 Diabetes Prevention Studies.

机构信息

Critical Path Institute, Tucson, Arizona, USA.

出版信息

Clin Pharmacol Ther. 2022 May;111(5):1133-1141. doi: 10.1002/cpt.2559. Epub 2022 Mar 11.

Abstract

The development of therapies to prevent or delay the onset of type 1 diabetes (T1D) remains challenging, and there is a lack of qualified biomarkers to identify individuals at risk of developing T1D or to quantify the time-varying risk of conversion to a diagnosis of T1D. To address this drug development need, the T1D Consortium (i) acquired, remapped, integrated, and curated existing patient-level data from relevant observational studies, and (ii) used a model-based approach to evaluate the utility of islet autoantibodies (AAs) against insulin/proinsulin autoantibody, GAD65, IA-2, and ZnT8 as biomarkers to enrich subjects for T1D prevention. The aggregated dataset was used to construct an accelerated failure time model for predicting T1D diagnosis. The model quantifies presence of islet AA permutations as statistically significant predictors of the time-varying probability of conversion to a diagnosis of T1D. Additional sources of variability that greatly improved the accuracy of quantifying the time-varying probability of conversion to a T1D diagnosis included baseline age, sex, blood glucose measurements from the 120-minute timepoints of oral glucose tolerance tests, and hemoglobin A1c. The developed models represented the underlying evidence to qualify islet AAs as enrichment biomarkers through the qualification of novel methodologies for drug development pathway at the European Medicines Agency (EMA). Additionally, the models are intended as the foundation of a fully functioning end-user tool that will allow sponsors to optimize enrichment criteria for clinical trials in T1D prevention studies.

摘要

开发预防或延迟 1 型糖尿病 (T1D) 发作的疗法仍然具有挑战性,并且缺乏合格的生物标志物来识别有患 T1D 风险的个体,或量化转化为 T1D 诊断的时间变化风险。为了解决这一药物开发需求,T1D 联盟 (i) 获得、重新映射、整合和管理来自相关观察性研究的现有患者水平数据,(ii) 使用基于模型的方法来评估胰岛自身抗体 (AA) 对胰岛素/胰岛素原自身抗体、GAD65、IA-2 和 ZnT8 的作为生物标志物的效用,以富集 T1D 预防的受试者。聚合数据集用于构建加速失效时间模型,以预测 T1D 诊断。该模型量化了胰岛 AA 排列的存在,作为转换为 T1D 诊断的时间变化概率的统计学显著预测因子。大大提高了量化转换为 T1D 诊断的时间变化概率的准确性的其他来源的变异性包括基线年龄、性别、口服葡萄糖耐量试验 120 分钟时间点的血糖测量值和糖化血红蛋白。所开发的模型代表了通过欧洲药品管理局 (EMA) 的药物开发途径的新方法学资格证明胰岛 AA 作为富集生物标志物的基本证据。此外,这些模型旨在作为一个功能齐全的最终用户工具的基础,该工具将允许赞助商优化 T1D 预防研究中临床试验的富集标准。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/25df/9540150/04d62b11fa47/CPT-111-1133-g002.jpg

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