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Modelling conditions and health care processes in electronic health records:an application to severe mental illness with the clinical practice research datalink

机译:电子病历中的条件和医疗过程建模:通过临床实践研究数据链接在严重精神疾病中的应用

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摘要

Background The use of Electronic Health Records databases for medical research has become mainstream. In the UK, increasing use of Primary Care Databases is largely driven by almost complete computerisation and uniform standards within the National Health Service. Electronic Health Records research often begins with the development of a list of clinical codes with which to identify cases with a specific condition. We present a methodology and accompanying Stata and R commands (pcdsearch/Rpcdsearch) to help researchers in this task. We present severe mental illness as an example. Methods We used the Clinical Practice Research Datalink, a UK Primary Care Database in which clinical information is largely organised using Read codes, a hierarchical clinical coding system. Pcdsearch is used to identify potentially relevant clinical codes and/or product codes from word-stubs and code-stubs suggested by clinicians. The returned code-lists are reviewed and codes relevant to the condition of interest are selected. The final code-list is then used to identify patients. Results We identified 270 Read codes linked to SMI and used them to identify cases in the database. We observed that our approach identified cases that would have been missed with a simpler approach using SMI registers defined within the UK Quality and Outcomes Framework. Conclusion We described a framework for researchers of Electronic Health Records databases, for identifying patients with a particular condition or matching certain clinical criteria. The method is invariant to coding system or database and can be used with SNOMED CT, ICD or other medical classification code-lists.
机译:背景技术将电子病历数据库用于医学研究已成为主流。在英国,国家卫生局内部几乎完全的计算机化和统一的标准在很大程度上推动了基层医疗数据库的使用。电子病历的研究通常始于制定一系列临床代码,以识别出特定情况的病例。我们提供一种方法以及随附的Stata和R命令(pcdsearch / Rpcdsearch)来帮助研究人员完成此任务。我们以严重的精神疾病为例。方法我们使用了临床实践研究数据链,这是英国的初级保健数据库,其中临床信息主要使用阅读代码(一种分层的临床编码系统)进行组织。 Pcdsearch用于从临床医生建议的单词存根和代码存根中识别潜在相关的临床代码和/或产品代码。查看返回的代码列表,并选择与感兴趣条件相关的代码。然后使用最终的代码列表来识别患者。结果我们确定了270个链接到SMI的读取代码,并使用它们来识别数据库中的案例。我们观察到,我们的方法使用UK Quality and Outcomes Framework中定义的SMI寄存器确定了一种更简单的方法会遗漏的案例。结论我们为电子病历数据库的研究人员描述了一个框架,用于识别患有特定疾病或符合某些临床标准的患者。该方法对于编码系统或数据库是不变的,可以与SNOMED CT,ICD或其他医学分类代码列表一起使用。

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