从行政健康记录中生成合成数据,用于药物安全性和有效性研究

O. Ayilara, Robert W. Platt, Matt Dahl, J. Coulombe, Pablo Gonzalez Ginestet, Dan Chateau, Lisa M. Lix
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摘要

导言:行政健康记录(AHR)用于开展基于人群的药品上市后安全性和比较有效性研究,为医疗决策提供信息。然而,数据提取的成本以及与隐私和审批相关的挑战,使得研究人员难以及时使用真实数据开展方法学研究。生成能合理代表真实世界数据的合成 AHR 有利于开发分析方法和培训分析人员快速实施研究方案。我们使用两种方法生成了合成 AHR,并将这些合成 AHR 与真实世界的 AHR 进行了比较。我们描述了使用合成 AHR 进行真实世界研究的相关挑战。方法真实世界的 AHR 包括加拿大马尼托巴省人口研究数据存储库(PRDR)中 2008 年至 2017 年这 10 年间有医疗保险的个人的处方药记录。合成数据使用观察性医疗数据集模拟器 II(OSIM2)和修改版(ModOSIM)生成。合成数据和真实世界数据使用频率和百分比进行描述。用一致性系数估算 PRDR、OSIM2 和 ModOSIM 中处方药使用测量的一致性。结果PRDR队列包括1,604,734人的169,586,633条药物记录和1,395种药物类型。使用 OSIM2 和 ModOSIM 生成了 1,000,000 人的合成数据。真实世界和合成 AHR 的性别和年龄组分布相似。但是,与 PRDR 相比,OSIM2 和 ModOSIM 的每人用药记录数和独特药物数存在明显差异。在平均用药天数方面,OSIM2 与 PRDR 的一致性为 16%(95% 置信区间 [CI]:12%-19%),ModOSIM 为 88%(95% 置信区间:87%-90%)。结论在许多指标上,ModOSIM 数据比 OSIM2 数据更接近 PRDR。使用 ModOSIM 可以生成与真实世界环境一致的合成 AHR。合成数据将有利于方法学研究的快速实施和数据分析师的培训。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generating synthetic data from administrative health records for drug safety and effectiveness studies
IntroductionAdministrative health records (AHRs) are used to conduct population-based post-market drug safety and comparative effectiveness studies to inform healthcare decision making. However, the cost of data extraction, and the challenges associated with privacy and securing approvals can make it challenging for researchers to conduct methodological research in a timely manner using real data. Generating synthetic AHRs that reasonably represent the real-world data are beneficial for developing analytic methods and training analysts to rapidly implement study protocols. We generated synthetic AHRs using two methods and compared these synthetic AHRs to real-world AHRs. We described the challenges associated with using synthetic AHRs for real-world study. MethodsThe real-world AHRs comprised prescription drug records for individuals with healthcare insurance coverage in the Population Research Data Repository (PRDR) from Manitoba, Canada for the 10-year period from 2008 to 2017. Synthetic data were generated using the Observational Medical Dataset Simulator II (OSIM2) and a modification (ModOSIM). Synthetic and real-world data were described using frequencies and percentages. Agreement of prescription drug use measures in PRDR, OSIM2 and ModOSIM was estimated with the concordance coefficient. ResultsThe PRDR cohort included 169,586,633 drug records and 1,395 drug types for 1,604,734 individuals. Synthetic data for 1,000,000 individuals were generated using OSIM2 and ModOSIM. Sex and age group distributions were similar in the real-world and synthetic AHRs. However, there were significant differences in the number of drug records and number of unique drugs per person for OSIM2 and ModOSIM when compared with PRDR. For the average number of days of drug use, concordance with the PRDR was 16% (95% confidence interval [CI]: 12%-19%) for OSIM2 and 88% (95% CI: 87%-90%) for ModOSIM. ConclusionsModOSIM data were more similar to PRDR than OSIM2 data on many measures. Synthetic AHRs consistent with those found in real-world settings can be generated using ModOSIM. Synthetic data will benefit rapid implementation of methodological studies and data analyst training.
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