Opening the Door to Electronic Medical Records: Using Informatics to Overcome Terabytes

Michael Farnum, V. Lobanov, F. Defalco, S. Cepeda
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Abstract

Databases of medical records contain a wealth of information critical to many areas of research including drug safety, health outcomes, clinical epidemiology and translational medicine. Through commercially available databases, researchers can gain a better understanding of the impact of exposure to drugs and medical devices, identify populations at risk for adverse effects, estimate the prevalence and natural history of medical conditions, and assess drug utilization across different demographic groups. However, the daunting size and complexity of these databases as well as lack of convenient tools to mine them have made this information largely inaccessible to all but a few experts with advanced data management and statistical programming skills. Using a combination of a relational data management strategy and a graphical user front-end, we have developed an approach that allows any medical researcher to perform a number of common searches and analyses in a consistent, intuitive and interactive manner, without the assistance of an expert programmer. Moreover, the optimization work done on the database and application sides have dramatically reduced the time needed to analyze the data and, thus, increased the number of studies that can be performed. A crucial part of any such study is the selection of code lists for diseases, procedures, medications, etc., and we have supported this effort by allowing definitions to be queried using common ontologies and shared conveniently across the organization.
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打开电子医疗记录的大门:利用信息学克服tb
医疗记录数据库包含对许多研究领域至关重要的大量信息,包括药物安全、健康结果、临床流行病学和转化医学。通过可获得的商业数据库,研究人员可以更好地了解接触药物和医疗设备的影响,确定有不良影响风险的人群,估计医疗状况的患病率和自然历史,并评估不同人口群体的药物利用情况。然而,这些数据库令人生畏的规模和复杂性,以及缺乏方便的工具来挖掘它们,使得除了少数具有高级数据管理和统计编程技能的专家之外,大多数人都无法访问这些信息。结合使用关系数据管理策略和图形用户前端,我们开发了一种方法,允许任何医学研究人员以一致、直观和交互式的方式执行许多常见的搜索和分析,而无需专家程序员的帮助。此外,在数据库和应用程序端进行的优化工作大大减少了分析数据所需的时间,从而增加了可以执行的研究数量。任何此类研究的关键部分都是选择疾病、程序、药物等的代码列表,我们通过允许使用公共本体查询定义并在整个组织中方便地共享来支持这一工作。
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