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Developing a portable natural language processing based phenotyping system

机译:开发基于便携式自然语言处理的表型系统

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This paper presents a portable phenotyping system that is capable of integrating both rule-based and statistical machine learning based approaches. Our system utilizes UMLS to extract clinically relevant features from the unstructured text and then facilitates portability across different institutions and data systems by incorporating OHDSI’s OMOP Common Data Model (CDM) to standardize necessary data elements. Our system can also store the key components of rule-based systems (e.g., regular expression matches) in the format of OMOP CDM, thus enabling the reuse, adaptation and extension of many existing rule-based clinical NLP systems. We experimented with our system on the corpus from i2b2’s Obesity Challenge as a pilot study. Our system facilitates portable phenotyping of obesity and its 15 comorbidities based on the unstructured patient discharge summaries, while achieving a performance that often ranked among the top 10 of the challenge participants. Our system of standardization enables a consistent application of numerous rule-based and machine learning based classification techniques downstream across disparate datasets which may originate across different institutions and data systems.
机译:本文提出了一种便携式表型系统,该系统能够集成基于规则和基于统计机器学习的方法。我们的系统利用UMLS从非结构化文本中提取临床相关特征,然后通过合并OHDSI的OMOP通用数据模型(CDM)来标准化必要的数据元素,从而促进跨不同机构和数据系统的可移植性。我们的系统还可以OMOP CDM格式存储基于规则的系统的关键组件(例如,正则表达式匹配项),从而可以重用,改编和扩展许多现有的基于规则的临床NLP系统。我们以i2b2肥胖挑战赛的语料库为系统进行了实验研究。我们的系统基于非结构化的出院摘要,促进了肥胖症及其15种合并症的便携式表型分析,同时实现了通常被列为挑战参与者前十名的表现。我们的标准化系统能够在不同数据集的下游(可能源自不同机构和数据系统)一致地应用众多基于规则和基于机器学习的分类技术。

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