论文标题
采矿时标的电子健康记录使用参考序列
Mining Time-Stamped Electronic Health Records Using Referenced Sequences
论文作者
论文摘要
电子健康记录(EHRS)通常作为时间stamp的遭遇记录存储。观察病历之间的时间关系是解释信息的组成部分。因此,对EHR的统计分析要求创建临床知情的时间间依赖性分析变量(TIAV)。通常,这些变量的配方和创建是迭代的,需要自定义代码。我们描述了一种使用时间引用实体序列作为TIAV的构件的技术。这些序列以连续的方式代表了患者病史的不同方面。为了说明该方法的原理和应用,我们使用退伍军人卫生管理局的研究数据库提供了示例。在第一个示例中,代表药物暴露的序列用于评估治疗比较有效性研究的患者选择标准。在第二个示例中,使用查尔森合并症条件和住院或门诊的临床环境的序列用于创建变量,并揭示了数据异常和趋势。第三个示例证明了从药物暴露和合并症的时间依赖性得出的分析变量的创建。可以使用简单,可重复使用的代码从序列创建复杂的时间间依赖性分析变量,因此可以实现TIAV创建的无脚本或自动化。
Electronic Health Records (EHRs) are typically stored as time-stamped encounter records. Observing temporal relationship between medical records is an integral part of interpreting the information. Hence, statistical analysis of EHRs requires that clinically informed time-interdependent analysis variables (TIAV) be created. Often, formulation and creation of these variables are iterative and requiring custom codes. We describe a technique of using sequences of time-referenced entities as the building blocks for TIAVs. These sequences represent different aspects of patient's medical history in a contiguous fashion. To illustrate the principles and applications of the method, we provide examples using Veterans Health Administration's research databases. In the first example, sequences representing medication exposure were used to assess patient selection criteria for a treatment comparative effectiveness study. In the second example, sequences of Charlson Comorbidity conditions and clinical settings of inpatient or outpatient were used to create variables with which data anomalies and trends were revealed. The third example demonstrated the creation of an analysis variable derived from the temporal dependency of medication exposure and comorbidity. Complex time-interdependent analysis variables can be created from the sequences with simple, reusable codes, hence enable unscripted or automation of TIAV creation.