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Leveraging Population‐Based Clinical Quantitative Phenotyping for Drug Repositioning

机译:利用基于人群的临床定量表型进行药物重新定位

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Computational drug repositioning methods can scalably nominate approved drugs for new diseases, with reduced risk of unforeseen side effects. The majority of methods eschew individual‐level phenotypes despite the promise of biomarker‐driven repositioning. In this study, we propose a framework for discovering serendipitous interactions between drugs and routine clinical phenotypes in cross‐sectional observational studies. Key to our strategy is the use of a healthy and nondiabetic population derived from the National Health and Nutrition Examination Survey, mitigating risk for confounding by indication. We combine complementary diagnostic phenotypes (fasting glucose and glucose response) and associate them with prescription drug usage. We then sought confirmation of phenotype‐drug associations in unidentifiable member claims data from the Aetna Insurance company using a retrospective self‐controlled case analysis approach. We identify bupropion as a plausible glucose lowering agent, suggesting that surveying otherwise healthy individuals in cross‐sectional studies can discover new drug repositioning hypotheses that have applicability to longitudinal clinical practice.
机译:计算药物重新定位方法可以按比例提名提名用于新疾病的药物,从而降低不可预见的副作用的风险。尽管有生物标志物驱动的重新定位的希望,但大多数方法都避免了个体水平的表型。在这项研究中,我们提出了一个框架,用于在横断面观察研究中发现药物与常规临床表型之间的偶然相互作用。我们策略的关键是使用来自美国国家健康与营养调查局(National Health and Nutrition Examination Survey)的健康和非糖尿病人群,以减轻因适应症而混淆的风险。我们结合了互补的诊断表型(空腹血糖和葡萄糖反应),并将它们与处方药的使用相关联。然后,我们使用追溯自控案例分析方法,从Aetna Insurance Company的无法确定的会员索赔数据中寻求表型-药物关联的确认。我们将安非他酮确定为可能的降糖药,这表明,在横断面研究中调查其他健康个体可以发现适用于纵向临床实践的新药物重新定位假设。

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