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Advances in Electronic Phenotyping: From Rule-Based Definitions to Machine Learning Models

机译:电子表型的发展:从基于规则的定义到机器学习模型

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摘要

With the widespread adoption of electronic health records (EHRs), large repositories of structured and unstructured patient data are becoming available to conduct observational studies. Finding patients with specific conditions or outcomes, known as phenotyping, is one of the most fundamental research problems encountered when using these new EHR data. Phenotyping forms the basis of translational research, comparative effectiveness studies, clinical decision support, and population health analyses using routinely collected EHR data. We review the evolution of electronic phenotyping, from the early rule-based methods to the cutting edge of supervised and unsupervised machine learning models. We aim to cover the most influential papers in commensurate detail, with a focus on both methodology and implementation. Finally, future research directions are explored.
机译:随着电子健康记录(EHR)的广泛采用,结构化和非结构化患者数据的大型存储库可用于进行观察性研究。当使用这些新的EHR数据时,寻找具有特定状况或结果的患者(称为表型)是遇到的最基本的研究问题之一。表型分析是使用常规收集的EHR数据进行转化研究,比较有效性研究,临床决策支持和人群健康分析的基础。我们回顾了电子表型的发展,从基于规则的早期方法到有监督和无监督机器学习模型的前沿。我们旨在涵盖最有影响力的论文,并提供相应的详细信息,同时侧重于方法和实施。最后,探讨了未来的研究方向。

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